{
  "results": [
    {
      "id": "26114c691a12ece574065d77856ac896",
      "title": "Cloud DevOps Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong, Singapore",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-06T03:47:30.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8452023002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Cloud DevOps Engineer Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Team & Role Overview We are seeking a highly skilled and experienced technologist to work in our Cloud Service & Tools team. This team is responsible for deploying, maintaining and supporting companywide tools available in a distributed cloud and on-premises environment. As part of the Service & Tools team, you'll be working on tools like Gitlab, Kubernetes, as well as in house systems, and more generally on AWS administration. Your present skillset - Kubernetes and container knowledge (EKS, Podman, Docker) - Developing and troubleshooting CI/CD (Gitlab CI is a plus) - Infrastructure as code, automated configuration languages and tools such as Terraform and Ansible - Experience of developing, monitoring and supporting distributed systems in production (tools like Cloudwatch, Coralogix or Open Telemetry are a plus) - Understanding of Linux OS, particularly RHEL/Rocky 9 - Good understanding of core AWS services - VPC security and networking - EC2 configuration and scaling - Storage services S3, EFS, EBS and FSx - IAM - Knowledge of administration for the following tools is a plus",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.36f18e0b0f34416b80",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "26114c691a12ece574065d77856ac896",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Cloud DevOps Engineer Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Team & Role Overview We are seeking a highly skilled and experienced technologist to work in our Cloud Service & Tools team. This team is responsible for deploying, maintaining and supporting companywide tools available in a distributed cloud and on-premises environment. As part of the Service & Tools team, you'll be working on tools like Gitlab, Kubernetes, as well as in house systems, and more generally on AWS administration. Your present skillset - Kubernetes and container knowledge (EKS, Podman, Docker) - Developing and troubleshooting CI/CD (Gitlab CI is a plus) - Infrastructure as code, automated configuration languages and tools such as Terraform and Ansible - Experience of developing, monitoring and supporting distributed systems in production (tools like Cloudwatch, Coralogix or Open Telemetry are a plus) - Understanding of Linux OS, particularly RHEL/Rocky 9 - Good understanding of core AWS services - VPC security and networking - EC2 configuration and scaling - Storage services S3, EFS, EBS and FSx - IAM - Knowledge of administration for the following tools is a plus",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:26114c691a12ece574065d77856ac896:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.8ed15590f28dc3354b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "26114c691a12ece574065d77856ac896",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Cloud DevOps Engineer Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Team & Role Overview We are seeking a highly skilled and experienced technologist to work in our Cloud Service & Tools team. This team is responsible for deploying, maintaining and supporting companywide tools available in a distributed cloud and on-premises environment. As part of the Service & Tools team, you'll be working on tools like Gitlab, Kubernetes, as well as in house systems, and more generally on AWS administration. Your present skillset - Kubernetes and container knowledge (EKS, Podman, Docker) - Developing and troubleshooting CI/CD (Gitlab CI is a plus) - Infrastructure as code, automated configuration languages and tools such as Terraform and Ansible - Experience of developing, monitoring and supporting distributed systems in production (tools like Cloudwatch, Coralogix or Open Telemetry are a plus) - Understanding of Linux OS, particularly RHEL/Rocky 9 - Good understanding of core AWS services - VPC security and networking - EC2 configuration and scaling - Storage services S3, EFS, EBS and FSx - IAM - Knowledge of administration for the following tools is a plus",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:26114c691a12ece574065d77856ac896:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c65668fd92c28487c9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "26114c691a12ece574065d77856ac896",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Cloud DevOps Engineer Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Team & Role Overview We are seeking a highly skilled and experienced technologist to work in our Cloud Service & Tools team. This team is responsible for deploying, maintaining and supporting companywide tools available in a distributed cloud and on-premises environment. As part of the Service & Tools team, you'll be working on tools like Gitlab, Kubernetes, as well as in house systems, and more generally on AWS administration. Your present skillset - Kubernetes and container knowledge (EKS, Podman, Docker) - Developing and troubleshooting CI/CD (Gitlab CI is a plus) - Infrastructure as code, automated configuration languages and tools such as Terraform and Ansible - Experience of developing, monitoring and supporting distributed systems in production (tools like Cloudwatch, Coralogix or Open Telemetry are a plus) - Understanding of Linux OS, particularly RHEL/Rocky 9 - Good understanding of core AWS services - VPC security and networking - EC2 configuration and scaling - Storage services S3, EFS, EBS and FSx - IAM - Knowledge of administration for the following tools is a plus",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:26114c691a12ece574065d77856ac896:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.189ad9515ebcdbf0b9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "26114c691a12ece574065d77856ac896",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:26114c691a12ece574065d77856ac896:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cc1ad7ee685d631080",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "26114c691a12ece574065d77856ac896",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:26114c691a12ece574065d77856ac896:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e4607c2eefc3d5f90c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "26114c691a12ece574065d77856ac896",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:26114c691a12ece574065d77856ac896:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4724de69cb6fa53fda",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "26114c691a12ece574065d77856ac896",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.99b65e4d9a510ea80e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "26114c691a12ece574065d77856ac896",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.fc7d6619fca0d155d0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "26114c691a12ece574065d77856ac896",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "2846b5553597e1e71dc00e10dba95eda",
      "title": "Data Operations Engineer - Python",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Mumbai",
      "country": "IN",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-19T06:25:19.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8555959002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Data Operations Engineer - Python Mumbai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. In this role, you will be involved managing data operations activities to onboard, maintain, and support new datasets within QRT. You will also be responsible for production monitoring and ensuring the smooth functioning of data pipelines and infrastructure systems. Your future role within QRT - Own and automate data operations processes, including coordination with external vendors and internal data teams - Enhance observability of data pipelines by creating and maintaining dashboards and implementing automated checks - Monitor data pipelines and provide Level 1 production support - Monitor framework and infrastructure systems to ensure operational stability - Maintain and update operational runbooks and process documentation Your present skillset - Bachelor's or master's degree in engineering or a related field. - 3+ years of Experience in data operations and production support - Strong Python scripting skills - Collaborative mindset with a positive and proactive attitude - Strong problem-solving skills, communication abilities, and attention to detail QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "masters",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.03b92cd5e5f4c35ee9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2846b5553597e1e71dc00e10dba95eda",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Data Operations Engineer - Python Mumbai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. In this role, you will be involved managing data operations activities to onboard, maintain, and support new datasets within QRT. You will also be responsible for production monitoring and ensuring the smooth functioning of data pipelines and infrastructure systems. Your future role within QRT - Own and automate data operations processes, including coordination with external vendors and internal data teams - Enhance observability of data pipelines by creating and maintaining dashboards and implementing automated checks - Monitor data pipelines and provide Level 1 production support - Monitor framework and infrastructure systems to ensure operational stability - Maintain and update operational runbooks and process documentation Your present skillset - Bachelor's or master's degree in engineering or a related field. - 3+ years of Experience in data operations and production support - Strong Python scripting skills - Collaborative mindset with a positive and proactive attitude - Strong problem-solving skills, communication abilities, and attention to detail QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2846b5553597e1e71dc00e10dba95eda:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.829b8fbedf353c03a3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2846b5553597e1e71dc00e10dba95eda",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Data Operations Engineer - Python Mumbai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. In this role, you will be involved managing data operations activities to onboard, maintain, and support new datasets within QRT. You will also be responsible for production monitoring and ensuring the smooth functioning of data pipelines and infrastructure systems. Your future role within QRT - Own and automate data operations processes, including coordination with external vendors and internal data teams - Enhance observability of data pipelines by creating and maintaining dashboards and implementing automated checks - Monitor data pipelines and provide Level 1 production support - Monitor framework and infrastructure systems to ensure operational stability - Maintain and update operational runbooks and process documentation Your present skillset - Bachelor's or master's degree in engineering or a related field. - 3+ years of Experience in data operations and production support - Strong Python scripting skills - Collaborative mindset with a positive and proactive attitude - Strong problem-solving skills, communication abilities, and attention to detail QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2846b5553597e1e71dc00e10dba95eda:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c58c1ec010dfcbe1bc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2846b5553597e1e71dc00e10dba95eda",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Data Operations Engineer - Python Mumbai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. In this role, you will be involved managing data operations activities to onboard, maintain, and support new datasets within QRT. You will also be responsible for production monitoring and ensuring the smooth functioning of data pipelines and infrastructure systems. Your future role within QRT - Own and automate data operations processes, including coordination with external vendors and internal data teams - Enhance observability of data pipelines by creating and maintaining dashboards and implementing automated checks - Monitor data pipelines and provide Level 1 production support - Monitor framework and infrastructure systems to ensure operational stability - Maintain and update operational runbooks and process documentation Your present skillset - Bachelor's or master's degree in engineering or a related field. - 3+ years of Experience in data operations and production support - Strong Python scripting skills - Collaborative mindset with a positive and proactive attitude - Strong problem-solving skills, communication abilities, and attention to detail QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2846b5553597e1e71dc00e10dba95eda:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4fe2a81074d8d02bcc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2846b5553597e1e71dc00e10dba95eda",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2846b5553597e1e71dc00e10dba95eda:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.84f0c0c7e85690812f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2846b5553597e1e71dc00e10dba95eda",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2846b5553597e1e71dc00e10dba95eda:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.aabb5d9b3cbdfee3ee",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2846b5553597e1e71dc00e10dba95eda",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2846b5553597e1e71dc00e10dba95eda:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5c82f576665bf13aee",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2846b5553597e1e71dc00e10dba95eda",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c51412b2b257a171ad",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2846b5553597e1e71dc00e10dba95eda",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e82d81510e5f2d51fe",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2846b5553597e1e71dc00e10dba95eda",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "2ab77829f6ce384a05efde25b9ed5f42",
      "title": "Storage Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-13T17:13:52.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8462564002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Storage Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: The successful candidate will join the infrastructure team at QRT. Collaborating with Windows, UNIX, Network and database teams the candidate will work on designing solutions to meet shared storage requirements to support QRT's needs - covering Windows file shares, NFS shares, performant storage attached networks for database clusters etc. The role will include building and maintaining vendor relationships, product selection, design and implementation. The role will also include development of a data backup solution and will involve contributing to QRTs business continuity plans. As well as design work the role is a technical, hands-on position. Your present skillset: - You will have 5+ years of experience in storage systems administration and platform engineering - You have delivered, tuned and maintained optimised enterprise grade storage solutions - You will have excellent working knowledge of storage protocols (SMB, NFS, S3) - You will have good working knowledge of Linux and Windows OS - You will have a proven track record of developing and implementing data backup strategies - You work well",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.0a52d99c6f5c027fb3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ab77829f6ce384a05efde25b9ed5f42",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Storage Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: The successful candidate will join the infrastructure team at QRT. Collaborating with Windows, UNIX, Network and database teams the candidate will work on designing solutions to meet shared storage requirements to support QRT's needs - covering Windows file shares, NFS shares, performant storage attached networks for database clusters etc. The role will include building and maintaining vendor relationships, product selection, design and implementation. The role will also include development of a data backup solution and will involve contributing to QRTs business continuity plans. As well as design work the role is a technical, hands-on position. Your present skillset: - You will have 5+ years of experience in storage systems administration and platform engineering - You have delivered, tuned and maintained optimised enterprise grade storage solutions - You will have excellent working knowledge of storage protocols (SMB, NFS, S3) - You will have good working knowledge of Linux and Windows OS - You will have a proven track record of developing and implementing data backup strategies - You work well",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ab77829f6ce384a05efde25b9ed5f42:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.23b8f2cbf44486a954",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ab77829f6ce384a05efde25b9ed5f42",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Storage Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: The successful candidate will join the infrastructure team at QRT. Collaborating with Windows, UNIX, Network and database teams the candidate will work on designing solutions to meet shared storage requirements to support QRT's needs - covering Windows file shares, NFS shares, performant storage attached networks for database clusters etc. The role will include building and maintaining vendor relationships, product selection, design and implementation. The role will also include development of a data backup solution and will involve contributing to QRTs business continuity plans. As well as design work the role is a technical, hands-on position. Your present skillset: - You will have 5+ years of experience in storage systems administration and platform engineering - You have delivered, tuned and maintained optimised enterprise grade storage solutions - You will have excellent working knowledge of storage protocols (SMB, NFS, S3) - You will have good working knowledge of Linux and Windows OS - You will have a proven track record of developing and implementing data backup strategies - You work well",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ab77829f6ce384a05efde25b9ed5f42:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.292c53064aa8e07412",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ab77829f6ce384a05efde25b9ed5f42",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Storage Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: The successful candidate will join the infrastructure team at QRT. Collaborating with Windows, UNIX, Network and database teams the candidate will work on designing solutions to meet shared storage requirements to support QRT's needs - covering Windows file shares, NFS shares, performant storage attached networks for database clusters etc. The role will include building and maintaining vendor relationships, product selection, design and implementation. The role will also include development of a data backup solution and will involve contributing to QRTs business continuity plans. As well as design work the role is a technical, hands-on position. Your present skillset: - You will have 5+ years of experience in storage systems administration and platform engineering - You have delivered, tuned and maintained optimised enterprise grade storage solutions - You will have excellent working knowledge of storage protocols (SMB, NFS, S3) - You will have good working knowledge of Linux and Windows OS - You will have a proven track record of developing and implementing data backup strategies - You work well",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ab77829f6ce384a05efde25b9ed5f42:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.340dea3d01a1fc8d1b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ab77829f6ce384a05efde25b9ed5f42",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ab77829f6ce384a05efde25b9ed5f42:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.defbab75d2f5169b44",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ab77829f6ce384a05efde25b9ed5f42",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ab77829f6ce384a05efde25b9ed5f42:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f4c7081d2103f55c79",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ab77829f6ce384a05efde25b9ed5f42",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ab77829f6ce384a05efde25b9ed5f42:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1802671bf46cd5bdd9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ab77829f6ce384a05efde25b9ed5f42",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5b07fde3bff594b549",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ab77829f6ce384a05efde25b9ed5f42",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8b82712dce060cce2f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ab77829f6ce384a05efde25b9ed5f42",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "4140b3b00aff8d388446ce29f08292c7",
      "title": "Platform Engineer (Cloud)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-09T16:21:06.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8454770002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Platform Engineer (Cloud) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The AWS Cloud Platform Engineering team designs and operates cloud-native platforms that support internal development teams across the firm. The team focuses on building and evolving an Internal Developer Platform that enables secure, automated, and self-service cloud capabilities. You will collaborate with Cloud Engineering, Security, and cloud users to improve developer experience and platform reliability. Your Future Role within QRT You will: - Design, develop, and manage platform APIs to automate cloud workflows and enable self-service capabilities - Build backend services in Go and/or Python to support automated provisioning and platform functionality - Write and maintain automated tests to ensure safe and reliable execution of platform workflows - Contribute to platform observability, including logging, monitoring, and tracing - Build and operate services on Kubernetes (EKS) - Collaborate with Cloud Engineering, Security, and internal users to deliver scalable and secure platform capabilities - Contribute to architectural and technical decisions as the platform evolves Your Present Skillset - 5+ years of experience as a Platform Engineer or in a similar role with a focus on AWS -",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9e3c920d315cc5b01a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4140b3b00aff8d388446ce29f08292c7",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Platform Engineer (Cloud) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The AWS Cloud Platform Engineering team designs and operates cloud-native platforms that support internal development teams across the firm. The team focuses on building and evolving an Internal Developer Platform that enables secure, automated, and self-service cloud capabilities. You will collaborate with Cloud Engineering, Security, and cloud users to improve developer experience and platform reliability. Your Future Role within QRT You will: - Design, develop, and manage platform APIs to automate cloud workflows and enable self-service capabilities - Build backend services in Go and/or Python to support automated provisioning and platform functionality - Write and maintain automated tests to ensure safe and reliable execution of platform workflows - Contribute to platform observability, including logging, monitoring, and tracing - Build and operate services on Kubernetes (EKS) - Collaborate with Cloud Engineering, Security, and internal users to deliver scalable and secure platform capabilities - Contribute to architectural and technical decisions as the platform evolves Your Present Skillset - 5+ years of experience as a Platform Engineer or in a similar role with a focus on AWS -",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4140b3b00aff8d388446ce29f08292c7:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f95cb2d83e78664f8e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4140b3b00aff8d388446ce29f08292c7",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Platform Engineer (Cloud) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The AWS Cloud Platform Engineering team designs and operates cloud-native platforms that support internal development teams across the firm. The team focuses on building and evolving an Internal Developer Platform that enables secure, automated, and self-service cloud capabilities. You will collaborate with Cloud Engineering, Security, and cloud users to improve developer experience and platform reliability. Your Future Role within QRT You will: - Design, develop, and manage platform APIs to automate cloud workflows and enable self-service capabilities - Build backend services in Go and/or Python to support automated provisioning and platform functionality - Write and maintain automated tests to ensure safe and reliable execution of platform workflows - Contribute to platform observability, including logging, monitoring, and tracing - Build and operate services on Kubernetes (EKS) - Collaborate with Cloud Engineering, Security, and internal users to deliver scalable and secure platform capabilities - Contribute to architectural and technical decisions as the platform evolves Your Present Skillset - 5+ years of experience as a Platform Engineer or in a similar role with a focus on AWS -",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4140b3b00aff8d388446ce29f08292c7:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.faa1e86ef7f0cb2845",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4140b3b00aff8d388446ce29f08292c7",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Platform Engineer (Cloud) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The AWS Cloud Platform Engineering team designs and operates cloud-native platforms that support internal development teams across the firm. The team focuses on building and evolving an Internal Developer Platform that enables secure, automated, and self-service cloud capabilities. You will collaborate with Cloud Engineering, Security, and cloud users to improve developer experience and platform reliability. Your Future Role within QRT You will: - Design, develop, and manage platform APIs to automate cloud workflows and enable self-service capabilities - Build backend services in Go and/or Python to support automated provisioning and platform functionality - Write and maintain automated tests to ensure safe and reliable execution of platform workflows - Contribute to platform observability, including logging, monitoring, and tracing - Build and operate services on Kubernetes (EKS) - Collaborate with Cloud Engineering, Security, and internal users to deliver scalable and secure platform capabilities - Contribute to architectural and technical decisions as the platform evolves Your Present Skillset - 5+ years of experience as a Platform Engineer or in a similar role with a focus on AWS -",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4140b3b00aff8d388446ce29f08292c7:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.26bf24201fc2193e48",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4140b3b00aff8d388446ce29f08292c7",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4140b3b00aff8d388446ce29f08292c7:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.afbc4a59046a6324c5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4140b3b00aff8d388446ce29f08292c7",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4140b3b00aff8d388446ce29f08292c7:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c5b6b58624632efd29",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4140b3b00aff8d388446ce29f08292c7",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4140b3b00aff8d388446ce29f08292c7:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.80b23a30c77199ae40",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4140b3b00aff8d388446ce29f08292c7",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c7e7b8fd83be034e38",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4140b3b00aff8d388446ce29f08292c7",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cd2dd2517be5efe9f3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4140b3b00aff8d388446ce29f08292c7",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "559e3d9b351c51b1f02cf5a5d24af92f",
      "title": "Senior Network Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Shanghai",
      "country": "CN",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-18T04:00:11.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8467221002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Network Engineer Shanghai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The successful candidate will join the global infrastructure team at QRT. You will be responsible for architecting, engineering and subsequent delivery oversight across all aspects of the QRT network estate but with particular focus on our colocation infrastructure. The trading infrastructure is a combination of wide area connectivity and ultra-low latency trading infrastructures. The team will deliver network solutions which enable full lifecycle management (architect, design, build, operate, retire) for our network components across core network switching, firewalls, load balancers, instrumentation/telemetry, network CMDB, and automation. It is crucial that any candidates must be able to demonstrate delivery of complex networks, at scale, which have been delivered through a software and automation-driven mindset. You will have deep knowledge of high-performance networking, including detailed knowledge of the product capabilities and roadmaps from the likes of Cisco, Arista and Fortinet. You will have direct experience of delivering and managing network solutions supporting corporate infrastructure and exchange specific ultra-low latency infrastructure with associated automation, telemetry and instrumentation frameworks. Your present skillset -",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.831825dd9372a0e0c9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "559e3d9b351c51b1f02cf5a5d24af92f",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Network Engineer Shanghai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The successful candidate will join the global infrastructure team at QRT. You will be responsible for architecting, engineering and subsequent delivery oversight across all aspects of the QRT network estate but with particular focus on our colocation infrastructure. The trading infrastructure is a combination of wide area connectivity and ultra-low latency trading infrastructures. The team will deliver network solutions which enable full lifecycle management (architect, design, build, operate, retire) for our network components across core network switching, firewalls, load balancers, instrumentation/telemetry, network CMDB, and automation. It is crucial that any candidates must be able to demonstrate delivery of complex networks, at scale, which have been delivered through a software and automation-driven mindset. You will have deep knowledge of high-performance networking, including detailed knowledge of the product capabilities and roadmaps from the likes of Cisco, Arista and Fortinet. You will have direct experience of delivering and managing network solutions supporting corporate infrastructure and exchange specific ultra-low latency infrastructure with associated automation, telemetry and instrumentation frameworks. Your present skillset -",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:559e3d9b351c51b1f02cf5a5d24af92f:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.990386bb4141a148a2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "559e3d9b351c51b1f02cf5a5d24af92f",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Network Engineer Shanghai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The successful candidate will join the global infrastructure team at QRT. You will be responsible for architecting, engineering and subsequent delivery oversight across all aspects of the QRT network estate but with particular focus on our colocation infrastructure. The trading infrastructure is a combination of wide area connectivity and ultra-low latency trading infrastructures. The team will deliver network solutions which enable full lifecycle management (architect, design, build, operate, retire) for our network components across core network switching, firewalls, load balancers, instrumentation/telemetry, network CMDB, and automation. It is crucial that any candidates must be able to demonstrate delivery of complex networks, at scale, which have been delivered through a software and automation-driven mindset. You will have deep knowledge of high-performance networking, including detailed knowledge of the product capabilities and roadmaps from the likes of Cisco, Arista and Fortinet. You will have direct experience of delivering and managing network solutions supporting corporate infrastructure and exchange specific ultra-low latency infrastructure with associated automation, telemetry and instrumentation frameworks. Your present skillset -",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:559e3d9b351c51b1f02cf5a5d24af92f:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.a97e9e0902a9fe342f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "559e3d9b351c51b1f02cf5a5d24af92f",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Network Engineer Shanghai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The successful candidate will join the global infrastructure team at QRT. You will be responsible for architecting, engineering and subsequent delivery oversight across all aspects of the QRT network estate but with particular focus on our colocation infrastructure. The trading infrastructure is a combination of wide area connectivity and ultra-low latency trading infrastructures. The team will deliver network solutions which enable full lifecycle management (architect, design, build, operate, retire) for our network components across core network switching, firewalls, load balancers, instrumentation/telemetry, network CMDB, and automation. It is crucial that any candidates must be able to demonstrate delivery of complex networks, at scale, which have been delivered through a software and automation-driven mindset. You will have deep knowledge of high-performance networking, including detailed knowledge of the product capabilities and roadmaps from the likes of Cisco, Arista and Fortinet. You will have direct experience of delivering and managing network solutions supporting corporate infrastructure and exchange specific ultra-low latency infrastructure with associated automation, telemetry and instrumentation frameworks. Your present skillset -",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:559e3d9b351c51b1f02cf5a5d24af92f:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.52de1b4c0ed5beb22f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "559e3d9b351c51b1f02cf5a5d24af92f",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:559e3d9b351c51b1f02cf5a5d24af92f:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bb93613baeefeb3cfb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "559e3d9b351c51b1f02cf5a5d24af92f",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:559e3d9b351c51b1f02cf5a5d24af92f:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ea9109eff0512d3138",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "559e3d9b351c51b1f02cf5a5d24af92f",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:559e3d9b351c51b1f02cf5a5d24af92f:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0b4836805e02b90fa0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "559e3d9b351c51b1f02cf5a5d24af92f",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8f3da1950a4b14324d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "559e3d9b351c51b1f02cf5a5d24af92f",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c120c75ad3b2186f7d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "559e3d9b351c51b1f02cf5a5d24af92f",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "616c20f02fa22c71ef66c0a3ad42c7aa",
      "title": "Senior Data Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-02-13T19:02:25.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/7862347002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Data Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - Building global and scalable Data Lakehouse solution used by multiple trading desks at QRT. - Contributing into software and infrastructure design and implementation in AWS cloud environment. - Developing data pipelines in Python using data libraries and cloud SDKs. - Data modelling within scope of Data Lake and OLAP - large volumes and highly concurrent data access. - Optimizing performance of the data lake as well as OLAP databases in cross-region environment. - Ensuring data completeness and quality across critical pipelines. - Build and support tailored data solutions for Quants and Traders. Your present skillset - 5+ year of experience and proven track record of building data platforms. - Python and SQL mastery are essential. C++ is a big plus. - Appetite to contribute into cloud infrastructure. - Ability to build a structured approach to problem-solving. - Independent and autonomous while still a strong team player. - Intellectual curiosity to learn rapidly. - Finance experience is highly desirable. QRT is an equal opportunity employer. We welcome diversity",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.3f19739e3f373120fd",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "616c20f02fa22c71ef66c0a3ad42c7aa",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Data Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - Building global and scalable Data Lakehouse solution used by multiple trading desks at QRT. - Contributing into software and infrastructure design and implementation in AWS cloud environment. - Developing data pipelines in Python using data libraries and cloud SDKs. - Data modelling within scope of Data Lake and OLAP - large volumes and highly concurrent data access. - Optimizing performance of the data lake as well as OLAP databases in cross-region environment. - Ensuring data completeness and quality across critical pipelines. - Build and support tailored data solutions for Quants and Traders. Your present skillset - 5+ year of experience and proven track record of building data platforms. - Python and SQL mastery are essential. C++ is a big plus. - Appetite to contribute into cloud infrastructure. - Ability to build a structured approach to problem-solving. - Independent and autonomous while still a strong team player. - Intellectual curiosity to learn rapidly. - Finance experience is highly desirable. QRT is an equal opportunity employer. We welcome diversity",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:616c20f02fa22c71ef66c0a3ad42c7aa:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9d7a2a573bdea365c0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "616c20f02fa22c71ef66c0a3ad42c7aa",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Data Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - Building global and scalable Data Lakehouse solution used by multiple trading desks at QRT. - Contributing into software and infrastructure design and implementation in AWS cloud environment. - Developing data pipelines in Python using data libraries and cloud SDKs. - Data modelling within scope of Data Lake and OLAP - large volumes and highly concurrent data access. - Optimizing performance of the data lake as well as OLAP databases in cross-region environment. - Ensuring data completeness and quality across critical pipelines. - Build and support tailored data solutions for Quants and Traders. Your present skillset - 5+ year of experience and proven track record of building data platforms. - Python and SQL mastery are essential. C++ is a big plus. - Appetite to contribute into cloud infrastructure. - Ability to build a structured approach to problem-solving. - Independent and autonomous while still a strong team player. - Intellectual curiosity to learn rapidly. - Finance experience is highly desirable. QRT is an equal opportunity employer. We welcome diversity",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:616c20f02fa22c71ef66c0a3ad42c7aa:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.bc74c12b241fcd09b3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "616c20f02fa22c71ef66c0a3ad42c7aa",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Data Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - Building global and scalable Data Lakehouse solution used by multiple trading desks at QRT. - Contributing into software and infrastructure design and implementation in AWS cloud environment. - Developing data pipelines in Python using data libraries and cloud SDKs. - Data modelling within scope of Data Lake and OLAP - large volumes and highly concurrent data access. - Optimizing performance of the data lake as well as OLAP databases in cross-region environment. - Ensuring data completeness and quality across critical pipelines. - Build and support tailored data solutions for Quants and Traders. Your present skillset - 5+ year of experience and proven track record of building data platforms. - Python and SQL mastery are essential. C++ is a big plus. - Appetite to contribute into cloud infrastructure. - Ability to build a structured approach to problem-solving. - Independent and autonomous while still a strong team player. - Intellectual curiosity to learn rapidly. - Finance experience is highly desirable. QRT is an equal opportunity employer. We welcome diversity",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:616c20f02fa22c71ef66c0a3ad42c7aa:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.09fab9037b6ab57684",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "616c20f02fa22c71ef66c0a3ad42c7aa",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:616c20f02fa22c71ef66c0a3ad42c7aa:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.55e732b2f9b5113756",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "616c20f02fa22c71ef66c0a3ad42c7aa",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:616c20f02fa22c71ef66c0a3ad42c7aa:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.afc6b03f311cdcb3b1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "616c20f02fa22c71ef66c0a3ad42c7aa",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:616c20f02fa22c71ef66c0a3ad42c7aa:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.265d6b6f7fb4d1f08e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "616c20f02fa22c71ef66c0a3ad42c7aa",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.377d7d95c7780d0f03",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "616c20f02fa22c71ef66c0a3ad42c7aa",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a5dfcfeff5a98806e0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "616c20f02fa22c71ef66c0a3ad42c7aa",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "6435e50b6c61c5a90ec966a1e1bd69f4",
      "title": "Production Support Engineer - AI & LLM",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Wrocław",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-27T16:44:19.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8483222002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Production Support Engineer - AI & LLM Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a group driven by technology and data, implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. You will work within a production support function responsible for maintaining the stability and performance of trading systems and supporting infrastructure. The role focuses on providing direct support to users, investigating system issues, and ensuring the reliability of trading workflows across multiple markets. You will interact with internal and external stakeholders to manage both trading infrastructure and supporting systems on a daily basis. Your future role within QRT - Provide user support for investigation and resolution of issues impacting front office trading flows and LLM based systems - Monitor and maintain trading infrastructure to ensure system availability and stability - Support trading platforms across Windows and Linux environments - Ensure all trading components are operational before the start of each trading day - Coordinate with engineering and business teams to resolve incidents and minimise disruption - Support release management processes to maintain a stable production environment - Maintain and support databases and associated processes - Develop tools to improve monitoring and operational visibility - Contribute to the design",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.6aee327216afccf431",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6435e50b6c61c5a90ec966a1e1bd69f4",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Support Engineer - AI & LLM Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a group driven by technology and data, implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. You will work within a production support function responsible for maintaining the stability and performance of trading systems and supporting infrastructure. The role focuses on providing direct support to users, investigating system issues, and ensuring the reliability of trading workflows across multiple markets. You will interact with internal and external stakeholders to manage both trading infrastructure and supporting systems on a daily basis. Your future role within QRT - Provide user support for investigation and resolution of issues impacting front office trading flows and LLM based systems - Monitor and maintain trading infrastructure to ensure system availability and stability - Support trading platforms across Windows and Linux environments - Ensure all trading components are operational before the start of each trading day - Coordinate with engineering and business teams to resolve incidents and minimise disruption - Support release management processes to maintain a stable production environment - Maintain and support databases and associated processes - Develop tools to improve monitoring and operational visibility - Contribute to the design",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6435e50b6c61c5a90ec966a1e1bd69f4:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.a0e3e9544517ba8de5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6435e50b6c61c5a90ec966a1e1bd69f4",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Support Engineer - AI & LLM Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a group driven by technology and data, implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. You will work within a production support function responsible for maintaining the stability and performance of trading systems and supporting infrastructure. The role focuses on providing direct support to users, investigating system issues, and ensuring the reliability of trading workflows across multiple markets. You will interact with internal and external stakeholders to manage both trading infrastructure and supporting systems on a daily basis. Your future role within QRT - Provide user support for investigation and resolution of issues impacting front office trading flows and LLM based systems - Monitor and maintain trading infrastructure to ensure system availability and stability - Support trading platforms across Windows and Linux environments - Ensure all trading components are operational before the start of each trading day - Coordinate with engineering and business teams to resolve incidents and minimise disruption - Support release management processes to maintain a stable production environment - Maintain and support databases and associated processes - Develop tools to improve monitoring and operational visibility - Contribute to the design",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6435e50b6c61c5a90ec966a1e1bd69f4:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.ce262573f983baa4f5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6435e50b6c61c5a90ec966a1e1bd69f4",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Support Engineer - AI & LLM Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a group driven by technology and data, implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. You will work within a production support function responsible for maintaining the stability and performance of trading systems and supporting infrastructure. The role focuses on providing direct support to users, investigating system issues, and ensuring the reliability of trading workflows across multiple markets. You will interact with internal and external stakeholders to manage both trading infrastructure and supporting systems on a daily basis. Your future role within QRT - Provide user support for investigation and resolution of issues impacting front office trading flows and LLM based systems - Monitor and maintain trading infrastructure to ensure system availability and stability - Support trading platforms across Windows and Linux environments - Ensure all trading components are operational before the start of each trading day - Coordinate with engineering and business teams to resolve incidents and minimise disruption - Support release management processes to maintain a stable production environment - Maintain and support databases and associated processes - Develop tools to improve monitoring and operational visibility - Contribute to the design",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6435e50b6c61c5a90ec966a1e1bd69f4:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.45d54fa22b57f47c5a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6435e50b6c61c5a90ec966a1e1bd69f4",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6435e50b6c61c5a90ec966a1e1bd69f4:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4649bff5990e46deb3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6435e50b6c61c5a90ec966a1e1bd69f4",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6435e50b6c61c5a90ec966a1e1bd69f4:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8db3ef30fc7f2e8c51",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6435e50b6c61c5a90ec966a1e1bd69f4",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6435e50b6c61c5a90ec966a1e1bd69f4:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4745d10bf5d49f9f55",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6435e50b6c61c5a90ec966a1e1bd69f4",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.81c7b51c13928f5a36",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6435e50b6c61c5a90ec966a1e1bd69f4",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8824f41ed56e810224",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6435e50b6c61c5a90ec966a1e1bd69f4",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "66a451a2566248fbaeee4831ce5a9370",
      "title": "Benefits Specialist (APAC)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-17T09:11:46.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8465396002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Benefits Specialist (APAC) Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Who we are looking for In this role, you will play an important part in supporting QRT's rapidly growing business by helping manage and evolve our employee benefits programmes across multiple APAC locations. Benefits are a key component of our employee value proposition, and your work will directly contribute to QRT's ability to attract and retain top talent in highly competitive markets. As part of the HR team, you will help ensure our benefits remain competitive, compliant, and aligned with the needs of a fast-growing global organisation. This role offers the opportunity to work across multiple jurisdictions while contributing to the delivery of a best-in-class benefits offering for our employees. Your future role within QRT - Support the management of QRT's benefits programmes across APAC, including health (medical and dental) insurance, retirement and other local benefits - Coordinate insurance renewals and support vendor and broker relationships across the region - Promote benefits programmes through effective employee communications and engagement initiatives - Support benefits benchmarking projects and maintain benefits data and analytics -",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "hr",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.769ebc816b200befa0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "66a451a2566248fbaeee4831ce5a9370",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Benefits Specialist (APAC) Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Who we are looking for In this role, you will play an important part in supporting QRT's rapidly growing business by helping manage and evolve our employee benefits programmes across multiple APAC locations. Benefits are a key component of our employee value proposition, and your work will directly contribute to QRT's ability to attract and retain top talent in highly competitive markets. As part of the HR team, you will help ensure our benefits remain competitive, compliant, and aligned with the needs of a fast-growing global organisation. This role offers the opportunity to work across multiple jurisdictions while contributing to the delivery of a best-in-class benefits offering for our employees. Your future role within QRT - Support the management of QRT's benefits programmes across APAC, including health (medical and dental) insurance, retirement and other local benefits - Coordinate insurance renewals and support vendor and broker relationships across the region - Promote benefits programmes through effective employee communications and engagement initiatives - Support benefits benchmarking projects and maintain benefits data and analytics -",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:66a451a2566248fbaeee4831ce5a9370:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.a2e9e0b56906cf4f68",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "66a451a2566248fbaeee4831ce5a9370",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Benefits Specialist (APAC) Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Who we are looking for In this role, you will play an important part in supporting QRT's rapidly growing business by helping manage and evolve our employee benefits programmes across multiple APAC locations. Benefits are a key component of our employee value proposition, and your work will directly contribute to QRT's ability to attract and retain top talent in highly competitive markets. As part of the HR team, you will help ensure our benefits remain competitive, compliant, and aligned with the needs of a fast-growing global organisation. This role offers the opportunity to work across multiple jurisdictions while contributing to the delivery of a best-in-class benefits offering for our employees. Your future role within QRT - Support the management of QRT's benefits programmes across APAC, including health (medical and dental) insurance, retirement and other local benefits - Coordinate insurance renewals and support vendor and broker relationships across the region - Promote benefits programmes through effective employee communications and engagement initiatives - Support benefits benchmarking projects and maintain benefits data and analytics -",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:66a451a2566248fbaeee4831ce5a9370:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.ae4c659fe1ec507d75",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "66a451a2566248fbaeee4831ce5a9370",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Benefits Specialist (APAC) Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Who we are looking for In this role, you will play an important part in supporting QRT's rapidly growing business by helping manage and evolve our employee benefits programmes across multiple APAC locations. Benefits are a key component of our employee value proposition, and your work will directly contribute to QRT's ability to attract and retain top talent in highly competitive markets. As part of the HR team, you will help ensure our benefits remain competitive, compliant, and aligned with the needs of a fast-growing global organisation. This role offers the opportunity to work across multiple jurisdictions while contributing to the delivery of a best-in-class benefits offering for our employees. Your future role within QRT - Support the management of QRT's benefits programmes across APAC, including health (medical and dental) insurance, retirement and other local benefits - Coordinate insurance renewals and support vendor and broker relationships across the region - Promote benefits programmes through effective employee communications and engagement initiatives - Support benefits benchmarking projects and maintain benefits data and analytics -",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:66a451a2566248fbaeee4831ce5a9370:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1dda45694523cf098c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "66a451a2566248fbaeee4831ce5a9370",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:66a451a2566248fbaeee4831ce5a9370:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.760f572279106dddf2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "66a451a2566248fbaeee4831ce5a9370",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:66a451a2566248fbaeee4831ce5a9370:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.79dba577636996698f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "66a451a2566248fbaeee4831ce5a9370",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:66a451a2566248fbaeee4831ce5a9370:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6f82bf409d80ee1402",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "66a451a2566248fbaeee4831ce5a9370",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.769bffdfb467ca47a6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "66a451a2566248fbaeee4831ce5a9370",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a74754ae3c60370c79",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "66a451a2566248fbaeee4831ce5a9370",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "672827b14e42364e06e73f825da5d423",
      "title": "SRE - Trading Platform and Automation",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Paris",
      "country": "FR",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-04-16T08:38:38.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/7959919002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "SRE - Trading Platform and Automation Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Site Reliability Engineer team to help evolve and scale our high-performance trading platform. You'll build tools, automation, and resilient systems that support the speed and reliability our business depends on. Your future role within QRT: - Build automation for operations, deployment, monitoring, and incident response. - Apply SRE fundamentals (SLIs/SLOs/Error Budgets) to improve service health. - Deliver and document system designs focused on resilience and performance. - Evaluate and implement the right tools for the job, balancing performance, complexity, and maintainability. - Own the observability stack (metrics, logs, tracing, alerts). - Lead incident response and drive continuous improvement across systems. - Collaborate with developers, quants, and platform teams on system evolution. Your Present Skill Set: - Hands-on experience in SRE or production engineering roles. - Strong Python skills for infrastructure tooling and automation. - Deep understanding of monitoring, incident response, and system architecture. - A commitment to code clarity and reducing technical debt. - Strong communication and collaboration skills across teams. - Experience designing and delivering scalable systems",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "bachelors",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.07421ad18520e3c17b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "672827b14e42364e06e73f825da5d423",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "SRE - Trading Platform and Automation Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Site Reliability Engineer team to help evolve and scale our high-performance trading platform. You'll build tools, automation, and resilient systems that support the speed and reliability our business depends on. Your future role within QRT: - Build automation for operations, deployment, monitoring, and incident response. - Apply SRE fundamentals (SLIs/SLOs/Error Budgets) to improve service health. - Deliver and document system designs focused on resilience and performance. - Evaluate and implement the right tools for the job, balancing performance, complexity, and maintainability. - Own the observability stack (metrics, logs, tracing, alerts). - Lead incident response and drive continuous improvement across systems. - Collaborate with developers, quants, and platform teams on system evolution. Your Present Skill Set: - Hands-on experience in SRE or production engineering roles. - Strong Python skills for infrastructure tooling and automation. - Deep understanding of monitoring, incident response, and system architecture. - A commitment to code clarity and reducing technical debt. - Strong communication and collaboration skills across teams. - Experience designing and delivering scalable systems",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:672827b14e42364e06e73f825da5d423:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c30eb6639ab71892e3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "672827b14e42364e06e73f825da5d423",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "SRE - Trading Platform and Automation Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Site Reliability Engineer team to help evolve and scale our high-performance trading platform. You'll build tools, automation, and resilient systems that support the speed and reliability our business depends on. Your future role within QRT: - Build automation for operations, deployment, monitoring, and incident response. - Apply SRE fundamentals (SLIs/SLOs/Error Budgets) to improve service health. - Deliver and document system designs focused on resilience and performance. - Evaluate and implement the right tools for the job, balancing performance, complexity, and maintainability. - Own the observability stack (metrics, logs, tracing, alerts). - Lead incident response and drive continuous improvement across systems. - Collaborate with developers, quants, and platform teams on system evolution. Your Present Skill Set: - Hands-on experience in SRE or production engineering roles. - Strong Python skills for infrastructure tooling and automation. - Deep understanding of monitoring, incident response, and system architecture. - A commitment to code clarity and reducing technical debt. - Strong communication and collaboration skills across teams. - Experience designing and delivering scalable systems",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:672827b14e42364e06e73f825da5d423:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f4dc9e64a19f5e0955",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "672827b14e42364e06e73f825da5d423",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "SRE - Trading Platform and Automation Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Site Reliability Engineer team to help evolve and scale our high-performance trading platform. You'll build tools, automation, and resilient systems that support the speed and reliability our business depends on. Your future role within QRT: - Build automation for operations, deployment, monitoring, and incident response. - Apply SRE fundamentals (SLIs/SLOs/Error Budgets) to improve service health. - Deliver and document system designs focused on resilience and performance. - Evaluate and implement the right tools for the job, balancing performance, complexity, and maintainability. - Own the observability stack (metrics, logs, tracing, alerts). - Lead incident response and drive continuous improvement across systems. - Collaborate with developers, quants, and platform teams on system evolution. Your Present Skill Set: - Hands-on experience in SRE or production engineering roles. - Strong Python skills for infrastructure tooling and automation. - Deep understanding of monitoring, incident response, and system architecture. - A commitment to code clarity and reducing technical debt. - Strong communication and collaboration skills across teams. - Experience designing and delivering scalable systems",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:672827b14e42364e06e73f825da5d423:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.27050cb1cbf4148624",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "672827b14e42364e06e73f825da5d423",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:672827b14e42364e06e73f825da5d423:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4d5f73f55f972e9b15",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "672827b14e42364e06e73f825da5d423",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:672827b14e42364e06e73f825da5d423:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5c880e5859add54982",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "672827b14e42364e06e73f825da5d423",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:672827b14e42364e06e73f825da5d423:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9a6800a3362c363664",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "672827b14e42364e06e73f825da5d423",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b854c38703086d4d23",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "672827b14e42364e06e73f825da5d423",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f91fb84059537db8f3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "672827b14e42364e06e73f825da5d423",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "73b072c12393660ed1d2db7b1dc648bf",
      "title": "Front Office Application Developer - Python",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-01-22T06:46:46.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/7824187002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Front Office Application Developer - Python Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - Design, develop, and maintain software solutions with clean, modern architecture - Partner with front office to drive technical solutions around new trading initiatives - Communicate with quants and traders regularly to deliver bespoke solutions - Bring in new ideas and insights using data driven pipelines and analytics Your present skillset - 2-8 years of software development experience - Solid experience in Python and core libraries such as Numpy, Pandas is a must - Proven understanding of modern software architecture - Strong computer science fundamentals - Experience with Linux environments, Cloud Platforms (AWS preferred) and Containerized applications (Docker preferred) - Experience with other programming languages such as Java, C++, C# is a plus, but not necessary - Agility to work in a fast-paced environment with varying demands - Strong team-player - Strong communication skills essential - Previous experience in finance is an advantage, but not a must QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.66780204c07ffef0d4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "73b072c12393660ed1d2db7b1dc648bf",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Front Office Application Developer - Python Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - Design, develop, and maintain software solutions with clean, modern architecture - Partner with front office to drive technical solutions around new trading initiatives - Communicate with quants and traders regularly to deliver bespoke solutions - Bring in new ideas and insights using data driven pipelines and analytics Your present skillset - 2-8 years of software development experience - Solid experience in Python and core libraries such as Numpy, Pandas is a must - Proven understanding of modern software architecture - Strong computer science fundamentals - Experience with Linux environments, Cloud Platforms (AWS preferred) and Containerized applications (Docker preferred) - Experience with other programming languages such as Java, C++, C# is a plus, but not necessary - Agility to work in a fast-paced environment with varying demands - Strong team-player - Strong communication skills essential - Previous experience in finance is an advantage, but not a must QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:73b072c12393660ed1d2db7b1dc648bf:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.ef6f420772758a67f0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "73b072c12393660ed1d2db7b1dc648bf",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Front Office Application Developer - Python Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - Design, develop, and maintain software solutions with clean, modern architecture - Partner with front office to drive technical solutions around new trading initiatives - Communicate with quants and traders regularly to deliver bespoke solutions - Bring in new ideas and insights using data driven pipelines and analytics Your present skillset - 2-8 years of software development experience - Solid experience in Python and core libraries such as Numpy, Pandas is a must - Proven understanding of modern software architecture - Strong computer science fundamentals - Experience with Linux environments, Cloud Platforms (AWS preferred) and Containerized applications (Docker preferred) - Experience with other programming languages such as Java, C++, C# is a plus, but not necessary - Agility to work in a fast-paced environment with varying demands - Strong team-player - Strong communication skills essential - Previous experience in finance is an advantage, but not a must QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:73b072c12393660ed1d2db7b1dc648bf:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f7b2eff67575f61176",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "73b072c12393660ed1d2db7b1dc648bf",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Front Office Application Developer - Python Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - Design, develop, and maintain software solutions with clean, modern architecture - Partner with front office to drive technical solutions around new trading initiatives - Communicate with quants and traders regularly to deliver bespoke solutions - Bring in new ideas and insights using data driven pipelines and analytics Your present skillset - 2-8 years of software development experience - Solid experience in Python and core libraries such as Numpy, Pandas is a must - Proven understanding of modern software architecture - Strong computer science fundamentals - Experience with Linux environments, Cloud Platforms (AWS preferred) and Containerized applications (Docker preferred) - Experience with other programming languages such as Java, C++, C# is a plus, but not necessary - Agility to work in a fast-paced environment with varying demands - Strong team-player - Strong communication skills essential - Previous experience in finance is an advantage, but not a must QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:73b072c12393660ed1d2db7b1dc648bf:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6eb13e2ff9bee5b9ef",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "73b072c12393660ed1d2db7b1dc648bf",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:73b072c12393660ed1d2db7b1dc648bf:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.85714117194092cc9f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "73b072c12393660ed1d2db7b1dc648bf",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:73b072c12393660ed1d2db7b1dc648bf:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c5ed6e39079853d18d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "73b072c12393660ed1d2db7b1dc648bf",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:73b072c12393660ed1d2db7b1dc648bf:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0869a3085100e93079",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "73b072c12393660ed1d2db7b1dc648bf",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.11a1010d1bb51b67aa",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "73b072c12393660ed1d2db7b1dc648bf",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.65a7700838af96f6a3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "73b072c12393660ed1d2db7b1dc648bf",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
      "title": "Software Developer – COO",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-26T10:55:23.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8561788002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Software Developer – COO London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Central Functions Development team in our London office as a Software Developer. In this role, you will build and enhance tools, data pipelines, reporting solutions, and workflow automation supporting the COO and Operations teams. Working closely with stakeholders across London and Hong Kong, you will oversee projects from design through to release. Your future role within QRT includes: - Building data pipelines from both internal and external sources as well as storing, normalising and aggregating that data. - Designing high quality dashboards and visualisations for COOs and senior business stakeholders. - Acting as a trusted partner and primary point of contact for the wider Operations and COO teams, building strong relationships with key stakeholders. - Contributing to the development of new features in the team's internal web application, expanding functionality and user experience, working on both frontend design and backend infrastructure and APIs. - Continuously reviewing and improving existing services as well as building new tools and services from scratch where required. Your present skillset: - 2+ years of software",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.0310c329f40cd445af",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Software Developer – COO London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Central Functions Development team in our London office as a Software Developer. In this role, you will build and enhance tools, data pipelines, reporting solutions, and workflow automation supporting the COO and Operations teams. Working closely with stakeholders across London and Hong Kong, you will oversee projects from design through to release. Your future role within QRT includes: - Building data pipelines from both internal and external sources as well as storing, normalising and aggregating that data. - Designing high quality dashboards and visualisations for COOs and senior business stakeholders. - Acting as a trusted partner and primary point of contact for the wider Operations and COO teams, building strong relationships with key stakeholders. - Contributing to the development of new features in the team's internal web application, expanding functionality and user experience, working on both frontend design and backend infrastructure and APIs. - Continuously reviewing and improving existing services as well as building new tools and services from scratch where required. Your present skillset: - 2+ years of software",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c830e4c9a1ca2c4bec363e3fd4fc339:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9c3e66006cfd70f3ba",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Software Developer – COO London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Central Functions Development team in our London office as a Software Developer. In this role, you will build and enhance tools, data pipelines, reporting solutions, and workflow automation supporting the COO and Operations teams. Working closely with stakeholders across London and Hong Kong, you will oversee projects from design through to release. Your future role within QRT includes: - Building data pipelines from both internal and external sources as well as storing, normalising and aggregating that data. - Designing high quality dashboards and visualisations for COOs and senior business stakeholders. - Acting as a trusted partner and primary point of contact for the wider Operations and COO teams, building strong relationships with key stakeholders. - Contributing to the development of new features in the team's internal web application, expanding functionality and user experience, working on both frontend design and backend infrastructure and APIs. - Continuously reviewing and improving existing services as well as building new tools and services from scratch where required. Your present skillset: - 2+ years of software",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c830e4c9a1ca2c4bec363e3fd4fc339:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.badf2a81ec42b8a5e1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Software Developer – COO London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Central Functions Development team in our London office as a Software Developer. In this role, you will build and enhance tools, data pipelines, reporting solutions, and workflow automation supporting the COO and Operations teams. Working closely with stakeholders across London and Hong Kong, you will oversee projects from design through to release. Your future role within QRT includes: - Building data pipelines from both internal and external sources as well as storing, normalising and aggregating that data. - Designing high quality dashboards and visualisations for COOs and senior business stakeholders. - Acting as a trusted partner and primary point of contact for the wider Operations and COO teams, building strong relationships with key stakeholders. - Contributing to the development of new features in the team's internal web application, expanding functionality and user experience, working on both frontend design and backend infrastructure and APIs. - Continuously reviewing and improving existing services as well as building new tools and services from scratch where required. Your present skillset: - 2+ years of software",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c830e4c9a1ca2c4bec363e3fd4fc339:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.2ad3540049b7c7c523",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c830e4c9a1ca2c4bec363e3fd4fc339:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cb3ba672917af62910",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c830e4c9a1ca2c4bec363e3fd4fc339:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cbdf33521b083b4cd3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c830e4c9a1ca2c4bec363e3fd4fc339:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.26008dee489723b315",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.962ecfd30419fc944e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d7590a8085dff671ca",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c830e4c9a1ca2c4bec363e3fd4fc339",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "7e279d7507f0ffc94b7d559bd01f021e",
      "title": "Low Latency C++ Developer - Sydney",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Sydney",
      "country": "AU",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-01-08T23:10:38.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8367504002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Low Latency C++ Developer - Sydney Sydney Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will have a Computer Science degree or equivalent and possess in-depth knowledge and experience in developing with C++. A strong background in Linux / C++ low latency optimizations is a must. A background in Linux kernel, FPGA, and network card offloading will also be advantageous. Your future role within QRT - The successful applicant will be a key member of the Low Latency Development team, building and enhancing trading systems for QRT. - The role will cover design, development, validation, deployment, and production support of QRT's trading system constellation of market data handlers, trading gateways, trading platforms, and other systems surrounding it. Your present skillset - 5+ years of experience in low latency Linux development using C/C++, STL, Boost. - Experience designing and implementing multithreaded and distributed systems. - Experience in a front-office trading desk-aligned role is an advantage. - Good knowledge of distributed network architecture. - Familiar with C++ optimization techniques. - Familiar with the Linux / GCC development toolchain. - Knowledge of market data feed handlers and",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.70af073ddf66f806ce",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e279d7507f0ffc94b7d559bd01f021e",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Low Latency C++ Developer - Sydney Sydney Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will have a Computer Science degree or equivalent and possess in-depth knowledge and experience in developing with C++. A strong background in Linux / C++ low latency optimizations is a must. A background in Linux kernel, FPGA, and network card offloading will also be advantageous. Your future role within QRT - The successful applicant will be a key member of the Low Latency Development team, building and enhancing trading systems for QRT. - The role will cover design, development, validation, deployment, and production support of QRT's trading system constellation of market data handlers, trading gateways, trading platforms, and other systems surrounding it. Your present skillset - 5+ years of experience in low latency Linux development using C/C++, STL, Boost. - Experience designing and implementing multithreaded and distributed systems. - Experience in a front-office trading desk-aligned role is an advantage. - Good knowledge of distributed network architecture. - Familiar with C++ optimization techniques. - Familiar with the Linux / GCC development toolchain. - Knowledge of market data feed handlers and",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e279d7507f0ffc94b7d559bd01f021e:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.88c0d8154808af3aae",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e279d7507f0ffc94b7d559bd01f021e",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Low Latency C++ Developer - Sydney Sydney Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will have a Computer Science degree or equivalent and possess in-depth knowledge and experience in developing with C++. A strong background in Linux / C++ low latency optimizations is a must. A background in Linux kernel, FPGA, and network card offloading will also be advantageous. Your future role within QRT - The successful applicant will be a key member of the Low Latency Development team, building and enhancing trading systems for QRT. - The role will cover design, development, validation, deployment, and production support of QRT's trading system constellation of market data handlers, trading gateways, trading platforms, and other systems surrounding it. Your present skillset - 5+ years of experience in low latency Linux development using C/C++, STL, Boost. - Experience designing and implementing multithreaded and distributed systems. - Experience in a front-office trading desk-aligned role is an advantage. - Good knowledge of distributed network architecture. - Familiar with C++ optimization techniques. - Familiar with the Linux / GCC development toolchain. - Knowledge of market data feed handlers and",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e279d7507f0ffc94b7d559bd01f021e:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f71d0861aff038c90a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e279d7507f0ffc94b7d559bd01f021e",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Low Latency C++ Developer - Sydney Sydney Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will have a Computer Science degree or equivalent and possess in-depth knowledge and experience in developing with C++. A strong background in Linux / C++ low latency optimizations is a must. A background in Linux kernel, FPGA, and network card offloading will also be advantageous. Your future role within QRT - The successful applicant will be a key member of the Low Latency Development team, building and enhancing trading systems for QRT. - The role will cover design, development, validation, deployment, and production support of QRT's trading system constellation of market data handlers, trading gateways, trading platforms, and other systems surrounding it. Your present skillset - 5+ years of experience in low latency Linux development using C/C++, STL, Boost. - Experience designing and implementing multithreaded and distributed systems. - Experience in a front-office trading desk-aligned role is an advantage. - Good knowledge of distributed network architecture. - Familiar with C++ optimization techniques. - Familiar with the Linux / GCC development toolchain. - Knowledge of market data feed handlers and",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e279d7507f0ffc94b7d559bd01f021e:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.061019a7519065f727",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e279d7507f0ffc94b7d559bd01f021e",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e279d7507f0ffc94b7d559bd01f021e:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.20576aee06010e2884",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e279d7507f0ffc94b7d559bd01f021e",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e279d7507f0ffc94b7d559bd01f021e:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.fe49a14aa46253f540",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e279d7507f0ffc94b7d559bd01f021e",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e279d7507f0ffc94b7d559bd01f021e:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.78b41cd1113ffb240e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e279d7507f0ffc94b7d559bd01f021e",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a37f67f49a27e821ec",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e279d7507f0ffc94b7d559bd01f021e",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cbbaea4a7664e3880a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e279d7507f0ffc94b7d559bd01f021e",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "81540e454408b00112d45439b1190e18",
      "title": "Network Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "New York",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": 170000,
      "salary_max": 240000,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "total_comp",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": "year",
      "base_salary_min": 170000,
      "base_salary_max": 240000,
      "salary_disclosed": true,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-02-02T14:34:03.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8364706002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Network Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will join the global infrastructure team at QRT. You will be responsible for architecting, engineering and subsequent delivery oversight across all aspects of the QRT network estate but with particular focus on our colocation infrastructure. The trading infrastructure is a combination of wide area connectivity and ultra-low latency trading infrastructures. Your future role within QRT: The team will deliver network solutions which enable full lifecycle management (architect, design, build, operate, retire) for our network components across core network switching, firewalls, load balancers, instrumentation/telemetry, network CMDB, and automation. It is crucial that any candidates must be able to demonstrate delivery of complex networks, at scale, which have been delivered through a software and automation-driven mindset. You will have deep knowledge of high-performance networking, including detailed knowledge of the product capabilities and roadmaps from the likes of Cisco, Arista and Fortinet. You will have direct experience of delivering and managing network solutions supporting corporate infrastructure and exchange specific ultra-low latency infrastructure with associated automation, telemetry and instrumentation frameworks. Your present skillset: - As a",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 44,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 55,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.500fd9fa0b7d25e4c8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81540e454408b00112d45439b1190e18",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Network Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will join the global infrastructure team at QRT. You will be responsible for architecting, engineering and subsequent delivery oversight across all aspects of the QRT network estate but with particular focus on our colocation infrastructure. The trading infrastructure is a combination of wide area connectivity and ultra-low latency trading infrastructures. Your future role within QRT: The team will deliver network solutions which enable full lifecycle management (architect, design, build, operate, retire) for our network components across core network switching, firewalls, load balancers, instrumentation/telemetry, network CMDB, and automation. It is crucial that any candidates must be able to demonstrate delivery of complex networks, at scale, which have been delivered through a software and automation-driven mindset. You will have deep knowledge of high-performance networking, including detailed knowledge of the product capabilities and roadmaps from the likes of Cisco, Arista and Fortinet. You will have direct experience of delivering and managing network solutions supporting corporate infrastructure and exchange specific ultra-low latency infrastructure with associated automation, telemetry and instrumentation frameworks. Your present skillset: - As a",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:81540e454408b00112d45439b1190e18:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.7150a4f6724f7a2ade",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81540e454408b00112d45439b1190e18",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Network Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will join the global infrastructure team at QRT. You will be responsible for architecting, engineering and subsequent delivery oversight across all aspects of the QRT network estate but with particular focus on our colocation infrastructure. The trading infrastructure is a combination of wide area connectivity and ultra-low latency trading infrastructures. Your future role within QRT: The team will deliver network solutions which enable full lifecycle management (architect, design, build, operate, retire) for our network components across core network switching, firewalls, load balancers, instrumentation/telemetry, network CMDB, and automation. It is crucial that any candidates must be able to demonstrate delivery of complex networks, at scale, which have been delivered through a software and automation-driven mindset. You will have deep knowledge of high-performance networking, including detailed knowledge of the product capabilities and roadmaps from the likes of Cisco, Arista and Fortinet. You will have direct experience of delivering and managing network solutions supporting corporate infrastructure and exchange specific ultra-low latency infrastructure with associated automation, telemetry and instrumentation frameworks. Your present skillset: - As a",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:81540e454408b00112d45439b1190e18:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e6bce3f9d6cd672742",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81540e454408b00112d45439b1190e18",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Network Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will join the global infrastructure team at QRT. You will be responsible for architecting, engineering and subsequent delivery oversight across all aspects of the QRT network estate but with particular focus on our colocation infrastructure. The trading infrastructure is a combination of wide area connectivity and ultra-low latency trading infrastructures. Your future role within QRT: The team will deliver network solutions which enable full lifecycle management (architect, design, build, operate, retire) for our network components across core network switching, firewalls, load balancers, instrumentation/telemetry, network CMDB, and automation. It is crucial that any candidates must be able to demonstrate delivery of complex networks, at scale, which have been delivered through a software and automation-driven mindset. You will have deep knowledge of high-performance networking, including detailed knowledge of the product capabilities and roadmaps from the likes of Cisco, Arista and Fortinet. You will have direct experience of delivering and managing network solutions supporting corporate infrastructure and exchange specific ultra-low latency infrastructure with associated automation, telemetry and instrumentation frameworks. Your present skillset: - As a",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:81540e454408b00112d45439b1190e18:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.773d3e925eef417c4b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81540e454408b00112d45439b1190e18",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:81540e454408b00112d45439b1190e18:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.887490b75fff87c488",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81540e454408b00112d45439b1190e18",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:81540e454408b00112d45439b1190e18:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f1819802e1b8c6652f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81540e454408b00112d45439b1190e18",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:81540e454408b00112d45439b1190e18:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1e655ab84b733d4ce6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81540e454408b00112d45439b1190e18",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a4218bed9fab0149f4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81540e454408b00112d45439b1190e18",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a90f5f13056052b0a9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81540e454408b00112d45439b1190e18",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "867cec510c4d5b6b1ee46c79bab2ee2a",
      "title": "Treasury Data Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-15T08:16:06.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8481047002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Treasury Data Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The Treasury function is the financing backbone of QRT, managing the firm's funding, collateral, margin, cash balances, and counterparty relationships across geographies and asset classes. The Treasury Analytics team builds the data infrastructure and tooling that gives the desk visibility into financing costs, margin requirements, and cash movements. The systems we build direct inform how the firm deploys its capital. Join our Treasury Analytics team in London as a Data Engineer, supporting and evolving the data infrastructure that powers Treasury's analytics platform, enabling the desk to analyse and optimise how the firm finances its positions in real time. Role responsibilities - Design, build and maintain data pipelines to ingest, transform, and serve Treasury data across multiple sources and analytics systems - Develop and maintain analytical tools to optimise margin, collateral, cash balances, and financing positions across counterparties - Build the datasets and APIs that power Treasury's analytics platform, enabling the desk to optimise financing costs, monitor counterparty exposure, and manage liquidity in real time - Evolve the infrastructure as the desk grows by",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.07bd94f1a53ada6721",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "867cec510c4d5b6b1ee46c79bab2ee2a",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Treasury Data Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The Treasury function is the financing backbone of QRT, managing the firm's funding, collateral, margin, cash balances, and counterparty relationships across geographies and asset classes. The Treasury Analytics team builds the data infrastructure and tooling that gives the desk visibility into financing costs, margin requirements, and cash movements. The systems we build direct inform how the firm deploys its capital. Join our Treasury Analytics team in London as a Data Engineer, supporting and evolving the data infrastructure that powers Treasury's analytics platform, enabling the desk to analyse and optimise how the firm finances its positions in real time. Role responsibilities - Design, build and maintain data pipelines to ingest, transform, and serve Treasury data across multiple sources and analytics systems - Develop and maintain analytical tools to optimise margin, collateral, cash balances, and financing positions across counterparties - Build the datasets and APIs that power Treasury's analytics platform, enabling the desk to optimise financing costs, monitor counterparty exposure, and manage liquidity in real time - Evolve the infrastructure as the desk grows by",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:867cec510c4d5b6b1ee46c79bab2ee2a:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.3b8d841b55d8689ade",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "867cec510c4d5b6b1ee46c79bab2ee2a",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Treasury Data Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The Treasury function is the financing backbone of QRT, managing the firm's funding, collateral, margin, cash balances, and counterparty relationships across geographies and asset classes. The Treasury Analytics team builds the data infrastructure and tooling that gives the desk visibility into financing costs, margin requirements, and cash movements. The systems we build direct inform how the firm deploys its capital. Join our Treasury Analytics team in London as a Data Engineer, supporting and evolving the data infrastructure that powers Treasury's analytics platform, enabling the desk to analyse and optimise how the firm finances its positions in real time. Role responsibilities - Design, build and maintain data pipelines to ingest, transform, and serve Treasury data across multiple sources and analytics systems - Develop and maintain analytical tools to optimise margin, collateral, cash balances, and financing positions across counterparties - Build the datasets and APIs that power Treasury's analytics platform, enabling the desk to optimise financing costs, monitor counterparty exposure, and manage liquidity in real time - Evolve the infrastructure as the desk grows by",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:867cec510c4d5b6b1ee46c79bab2ee2a:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.535bf3c8f2b5b090d3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "867cec510c4d5b6b1ee46c79bab2ee2a",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Treasury Data Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The Treasury function is the financing backbone of QRT, managing the firm's funding, collateral, margin, cash balances, and counterparty relationships across geographies and asset classes. The Treasury Analytics team builds the data infrastructure and tooling that gives the desk visibility into financing costs, margin requirements, and cash movements. The systems we build direct inform how the firm deploys its capital. Join our Treasury Analytics team in London as a Data Engineer, supporting and evolving the data infrastructure that powers Treasury's analytics platform, enabling the desk to analyse and optimise how the firm finances its positions in real time. Role responsibilities - Design, build and maintain data pipelines to ingest, transform, and serve Treasury data across multiple sources and analytics systems - Develop and maintain analytical tools to optimise margin, collateral, cash balances, and financing positions across counterparties - Build the datasets and APIs that power Treasury's analytics platform, enabling the desk to optimise financing costs, monitor counterparty exposure, and manage liquidity in real time - Evolve the infrastructure as the desk grows by",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:867cec510c4d5b6b1ee46c79bab2ee2a:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.2b63eadb3855230115",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "867cec510c4d5b6b1ee46c79bab2ee2a",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:867cec510c4d5b6b1ee46c79bab2ee2a:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.45e7fb992288376982",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "867cec510c4d5b6b1ee46c79bab2ee2a",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:867cec510c4d5b6b1ee46c79bab2ee2a:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b5d71cce9cab44658d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "867cec510c4d5b6b1ee46c79bab2ee2a",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:867cec510c4d5b6b1ee46c79bab2ee2a:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3f390c32fd97cba5b3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "867cec510c4d5b6b1ee46c79bab2ee2a",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a4119f5623e4672f4d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "867cec510c4d5b6b1ee46c79bab2ee2a",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e3ddcfe8d4f318b439",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "867cec510c4d5b6b1ee46c79bab2ee2a",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "9128144e829821886937acbef9362257",
      "title": "Accounts Payable Executive",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Singapore",
      "country": "SG",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-29T09:01:45.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8570394002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Accounts Payable Executive Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Global Finance Team in Singapore as an Accounts Payable Executive, managing accounts payable responsibilities across several jurisdictions, including Singapore, Hong Kong, China, and Dubai. Your future role within QRT: - Process and verify vendor invoices, ensuring accurate cost allocation and performing callback verifications of bank details - Prepare payment voucher summaries and coordinate approval workflows - Execute payments via telegraphic and interbank transfers - Prepare invoices for intercompany billings - Liaise with vendors and internal stakeholders across jurisdictions to resolve queries and ensure smooth operations - Perform any other duties and responsibilities that may be assigned Your present skillset: - A diploma or degree in Accounting, Finance, or a related field is preferred - Minimum of 8 years' current and hands-on Accounts Payable experience, with a clear specialism in Accounts Payable - Current experience processing invoices and payments, including end-to-end payment execution - Exposure to Accounts Receivable or full set of accounts is considered an advantage, however the role requires a primary and current focus on Accounts Payable expertise - Proficient",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "finance",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.61e8efe2393083d228",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9128144e829821886937acbef9362257",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Accounts Payable Executive Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Global Finance Team in Singapore as an Accounts Payable Executive, managing accounts payable responsibilities across several jurisdictions, including Singapore, Hong Kong, China, and Dubai. Your future role within QRT: - Process and verify vendor invoices, ensuring accurate cost allocation and performing callback verifications of bank details - Prepare payment voucher summaries and coordinate approval workflows - Execute payments via telegraphic and interbank transfers - Prepare invoices for intercompany billings - Liaise with vendors and internal stakeholders across jurisdictions to resolve queries and ensure smooth operations - Perform any other duties and responsibilities that may be assigned Your present skillset: - A diploma or degree in Accounting, Finance, or a related field is preferred - Minimum of 8 years' current and hands-on Accounts Payable experience, with a clear specialism in Accounts Payable - Current experience processing invoices and payments, including end-to-end payment execution - Exposure to Accounts Receivable or full set of accounts is considered an advantage, however the role requires a primary and current focus on Accounts Payable expertise - Proficient",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:9128144e829821886937acbef9362257:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f996473ff9d2824e51",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9128144e829821886937acbef9362257",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Accounts Payable Executive Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Global Finance Team in Singapore as an Accounts Payable Executive, managing accounts payable responsibilities across several jurisdictions, including Singapore, Hong Kong, China, and Dubai. Your future role within QRT: - Process and verify vendor invoices, ensuring accurate cost allocation and performing callback verifications of bank details - Prepare payment voucher summaries and coordinate approval workflows - Execute payments via telegraphic and interbank transfers - Prepare invoices for intercompany billings - Liaise with vendors and internal stakeholders across jurisdictions to resolve queries and ensure smooth operations - Perform any other duties and responsibilities that may be assigned Your present skillset: - A diploma or degree in Accounting, Finance, or a related field is preferred - Minimum of 8 years' current and hands-on Accounts Payable experience, with a clear specialism in Accounts Payable - Current experience processing invoices and payments, including end-to-end payment execution - Exposure to Accounts Receivable or full set of accounts is considered an advantage, however the role requires a primary and current focus on Accounts Payable expertise - Proficient",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:9128144e829821886937acbef9362257:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.fc6d0fd5d46c7e9f2b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9128144e829821886937acbef9362257",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Accounts Payable Executive Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Global Finance Team in Singapore as an Accounts Payable Executive, managing accounts payable responsibilities across several jurisdictions, including Singapore, Hong Kong, China, and Dubai. Your future role within QRT: - Process and verify vendor invoices, ensuring accurate cost allocation and performing callback verifications of bank details - Prepare payment voucher summaries and coordinate approval workflows - Execute payments via telegraphic and interbank transfers - Prepare invoices for intercompany billings - Liaise with vendors and internal stakeholders across jurisdictions to resolve queries and ensure smooth operations - Perform any other duties and responsibilities that may be assigned Your present skillset: - A diploma or degree in Accounting, Finance, or a related field is preferred - Minimum of 8 years' current and hands-on Accounts Payable experience, with a clear specialism in Accounts Payable - Current experience processing invoices and payments, including end-to-end payment execution - Exposure to Accounts Receivable or full set of accounts is considered an advantage, however the role requires a primary and current focus on Accounts Payable expertise - Proficient",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:9128144e829821886937acbef9362257:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c02d6bb96b6204a8bc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9128144e829821886937acbef9362257",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:9128144e829821886937acbef9362257:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d96818b4783bf8d71e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9128144e829821886937acbef9362257",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:9128144e829821886937acbef9362257:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.dabad1a7bb3d8cc13c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9128144e829821886937acbef9362257",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:9128144e829821886937acbef9362257:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.26451ead3bace0e0af",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9128144e829821886937acbef9362257",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7c982f3042fc756743",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9128144e829821886937acbef9362257",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9031ae54c27637bcda",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9128144e829821886937acbef9362257",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "b44d0e989f2606503ca1217a35fa2261",
      "title": "Junior Risk Manager",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-27T11:38:52.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8481885002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Junior Risk Manager London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Our Risk team is expanding in London. We are searching for a Junior Risk Manager to join the firm, supporting on a range of risk related tasks, specific to the volatility desk. Your future role at QRT: - Responsible for daily production of risk reports, analytics, and monitoring of trades, identifying issues when they occur and actioning robust solutions. - Reconcile data, pricing and stress testing against trading positions and ensure they are accurate. - Take part in developing the risk management framework strategically to create and maintain a suite of risk metrics that accurately reflect the strategies' risk profile. - Vigilant checks on each running process every day, escalating issues where necessary. - Liaise with all levels of the firm, including senior leadership. - Interact with a wide range of stakeholders including the volatility trading and risk team, wider risk team and operations. Your present skillset: - A Degree in Mathematics, Physics, Statistics, Engineering or an equivalent in other science dis-ciplines - Strong skills in Python and excellent problem-solving skills. - 0-3",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "finance",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.735a91ebd898c392f1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b44d0e989f2606503ca1217a35fa2261",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Junior Risk Manager London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Our Risk team is expanding in London. We are searching for a Junior Risk Manager to join the firm, supporting on a range of risk related tasks, specific to the volatility desk. Your future role at QRT: - Responsible for daily production of risk reports, analytics, and monitoring of trades, identifying issues when they occur and actioning robust solutions. - Reconcile data, pricing and stress testing against trading positions and ensure they are accurate. - Take part in developing the risk management framework strategically to create and maintain a suite of risk metrics that accurately reflect the strategies' risk profile. - Vigilant checks on each running process every day, escalating issues where necessary. - Liaise with all levels of the firm, including senior leadership. - Interact with a wide range of stakeholders including the volatility trading and risk team, wider risk team and operations. Your present skillset: - A Degree in Mathematics, Physics, Statistics, Engineering or an equivalent in other science dis-ciplines - Strong skills in Python and excellent problem-solving skills. - 0-3",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b44d0e989f2606503ca1217a35fa2261:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.a3d716d01f311656ac",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b44d0e989f2606503ca1217a35fa2261",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Junior Risk Manager London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Our Risk team is expanding in London. We are searching for a Junior Risk Manager to join the firm, supporting on a range of risk related tasks, specific to the volatility desk. Your future role at QRT: - Responsible for daily production of risk reports, analytics, and monitoring of trades, identifying issues when they occur and actioning robust solutions. - Reconcile data, pricing and stress testing against trading positions and ensure they are accurate. - Take part in developing the risk management framework strategically to create and maintain a suite of risk metrics that accurately reflect the strategies' risk profile. - Vigilant checks on each running process every day, escalating issues where necessary. - Liaise with all levels of the firm, including senior leadership. - Interact with a wide range of stakeholders including the volatility trading and risk team, wider risk team and operations. Your present skillset: - A Degree in Mathematics, Physics, Statistics, Engineering or an equivalent in other science dis-ciplines - Strong skills in Python and excellent problem-solving skills. - 0-3",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b44d0e989f2606503ca1217a35fa2261:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.fc755384158d4d9c58",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b44d0e989f2606503ca1217a35fa2261",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Junior Risk Manager London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Our Risk team is expanding in London. We are searching for a Junior Risk Manager to join the firm, supporting on a range of risk related tasks, specific to the volatility desk. Your future role at QRT: - Responsible for daily production of risk reports, analytics, and monitoring of trades, identifying issues when they occur and actioning robust solutions. - Reconcile data, pricing and stress testing against trading positions and ensure they are accurate. - Take part in developing the risk management framework strategically to create and maintain a suite of risk metrics that accurately reflect the strategies' risk profile. - Vigilant checks on each running process every day, escalating issues where necessary. - Liaise with all levels of the firm, including senior leadership. - Interact with a wide range of stakeholders including the volatility trading and risk team, wider risk team and operations. Your present skillset: - A Degree in Mathematics, Physics, Statistics, Engineering or an equivalent in other science dis-ciplines - Strong skills in Python and excellent problem-solving skills. - 0-3",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b44d0e989f2606503ca1217a35fa2261:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0dc4c9c9910365972d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b44d0e989f2606503ca1217a35fa2261",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b44d0e989f2606503ca1217a35fa2261:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.376bb9f74436ae6f94",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b44d0e989f2606503ca1217a35fa2261",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b44d0e989f2606503ca1217a35fa2261:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7c08607705fbde0ae9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b44d0e989f2606503ca1217a35fa2261",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b44d0e989f2606503ca1217a35fa2261:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3b7bb39c6091a85c10",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b44d0e989f2606503ca1217a35fa2261",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.63100d3caf7a8fd329",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b44d0e989f2606503ca1217a35fa2261",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ca5af2d34221dcf219",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b44d0e989f2606503ca1217a35fa2261",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "b9b6f838bb397e63752b5f295af61182",
      "title": "Lead Database Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-18T09:48:14.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8467368002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Lead Database Engineer Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT This person will be a key member of the global DB team to help support, administrate, and secure databases for QRT. Exposure to many aspects of DB projects, including but not limited to Administration, Always-on/High Availability, Capacity-Planning, Data Warehouse, DB design, etc. What you will do: - Work closely with users from all parts of business to define and resolve information flow and content issues - Enable and support the transformation of business requirements into database solutions - Design and develop robust cutting edge systems to keep QRT business at the forefront of its field Requirements - Experience in database administration within a production environment for below DB product is preferred: clickhouse, snowflake, - Through understanding of DB monitoring, analysis, disaster recovery, and performance tuning - Familiarity with UNIX/LinuxExperience in one or more database programming languages (SQL, T-SQL, PL/SQL etc.) for design, maintain, administrate, secure, backup and recovery across production, back test, UAT and development environments - Experience of managing security and permissionsKnowledge of industry best practices",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.62eff1c049b89deef0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b9b6f838bb397e63752b5f295af61182",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Lead Database Engineer Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT This person will be a key member of the global DB team to help support, administrate, and secure databases for QRT. Exposure to many aspects of DB projects, including but not limited to Administration, Always-on/High Availability, Capacity-Planning, Data Warehouse, DB design, etc. What you will do: - Work closely with users from all parts of business to define and resolve information flow and content issues - Enable and support the transformation of business requirements into database solutions - Design and develop robust cutting edge systems to keep QRT business at the forefront of its field Requirements - Experience in database administration within a production environment for below DB product is preferred: clickhouse, snowflake, - Through understanding of DB monitoring, analysis, disaster recovery, and performance tuning - Familiarity with UNIX/LinuxExperience in one or more database programming languages (SQL, T-SQL, PL/SQL etc.) for design, maintain, administrate, secure, backup and recovery across production, back test, UAT and development environments - Experience of managing security and permissionsKnowledge of industry best practices",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b9b6f838bb397e63752b5f295af61182:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d996c8fd759e2ff821",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b9b6f838bb397e63752b5f295af61182",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Lead Database Engineer Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT This person will be a key member of the global DB team to help support, administrate, and secure databases for QRT. Exposure to many aspects of DB projects, including but not limited to Administration, Always-on/High Availability, Capacity-Planning, Data Warehouse, DB design, etc. What you will do: - Work closely with users from all parts of business to define and resolve information flow and content issues - Enable and support the transformation of business requirements into database solutions - Design and develop robust cutting edge systems to keep QRT business at the forefront of its field Requirements - Experience in database administration within a production environment for below DB product is preferred: clickhouse, snowflake, - Through understanding of DB monitoring, analysis, disaster recovery, and performance tuning - Familiarity with UNIX/LinuxExperience in one or more database programming languages (SQL, T-SQL, PL/SQL etc.) for design, maintain, administrate, secure, backup and recovery across production, back test, UAT and development environments - Experience of managing security and permissionsKnowledge of industry best practices",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b9b6f838bb397e63752b5f295af61182:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f647169bd5d3d55cb6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b9b6f838bb397e63752b5f295af61182",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Lead Database Engineer Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT This person will be a key member of the global DB team to help support, administrate, and secure databases for QRT. Exposure to many aspects of DB projects, including but not limited to Administration, Always-on/High Availability, Capacity-Planning, Data Warehouse, DB design, etc. What you will do: - Work closely with users from all parts of business to define and resolve information flow and content issues - Enable and support the transformation of business requirements into database solutions - Design and develop robust cutting edge systems to keep QRT business at the forefront of its field Requirements - Experience in database administration within a production environment for below DB product is preferred: clickhouse, snowflake, - Through understanding of DB monitoring, analysis, disaster recovery, and performance tuning - Familiarity with UNIX/LinuxExperience in one or more database programming languages (SQL, T-SQL, PL/SQL etc.) for design, maintain, administrate, secure, backup and recovery across production, back test, UAT and development environments - Experience of managing security and permissionsKnowledge of industry best practices",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b9b6f838bb397e63752b5f295af61182:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4d621bde0979ad81fc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b9b6f838bb397e63752b5f295af61182",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b9b6f838bb397e63752b5f295af61182:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.56f8bfb2cb6a923c0b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b9b6f838bb397e63752b5f295af61182",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b9b6f838bb397e63752b5f295af61182:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.de49aeea4f058490a7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b9b6f838bb397e63752b5f295af61182",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b9b6f838bb397e63752b5f295af61182:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4b8c8855151bdc340a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b9b6f838bb397e63752b5f295af61182",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9e72286ccf5bb06fab",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b9b6f838bb397e63752b5f295af61182",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c168ffe36727d85ba7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b9b6f838bb397e63752b5f295af61182",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "c5eb800f50e402e9b06f03fde39c62d2",
      "title": "Cyber Risk Specialist",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "base",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-20T11:07:49.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8557843002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Cyber Risk Specialist London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. As a Cyber Risk Specialist, you'll provide strategic guidance across risk and governance remits within the security team. You'll collaborate with different teams and stakeholders across the business to ensure our security governance is robust, scalable, and deployable. This position has high visibility across the business and exposure to all parts of the trading lifecycle. Your future role at QRT - Cyber Risk Management - Maintain and enhance the Information Security risk register as a live, decision-useful tool. - Work with stakeholders to assess, track, and manage risks across systems, processes, and third parties. - Develop clear, data-led risk narratives for leadership. - Track remediation actions and support risk-based prioritisation. - Governance and Policy - Maintain and improve security policies, standards, and supporting documentation. - Align internal requirements with relevant frameworks, regulations, and business needs. - Ensure documentation is clear, current, and accessible to technical and business stakeholders. - Support practical and scalable security governance. - Audit and Assurance - Coordinate external reviews, client assurance requests, regulatory enquiries, and internal audits. - Gather",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "finance",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c823db3704b69c2b6b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c5eb800f50e402e9b06f03fde39c62d2",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Cyber Risk Specialist London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. As a Cyber Risk Specialist, you'll provide strategic guidance across risk and governance remits within the security team. You'll collaborate with different teams and stakeholders across the business to ensure our security governance is robust, scalable, and deployable. This position has high visibility across the business and exposure to all parts of the trading lifecycle. Your future role at QRT - Cyber Risk Management - Maintain and enhance the Information Security risk register as a live, decision-useful tool. - Work with stakeholders to assess, track, and manage risks across systems, processes, and third parties. - Develop clear, data-led risk narratives for leadership. - Track remediation actions and support risk-based prioritisation. - Governance and Policy - Maintain and improve security policies, standards, and supporting documentation. - Align internal requirements with relevant frameworks, regulations, and business needs. - Ensure documentation is clear, current, and accessible to technical and business stakeholders. - Support practical and scalable security governance. - Audit and Assurance - Coordinate external reviews, client assurance requests, regulatory enquiries, and internal audits. - Gather",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c5eb800f50e402e9b06f03fde39c62d2:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.cc75186b7780c2e2f9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c5eb800f50e402e9b06f03fde39c62d2",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Cyber Risk Specialist London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. As a Cyber Risk Specialist, you'll provide strategic guidance across risk and governance remits within the security team. You'll collaborate with different teams and stakeholders across the business to ensure our security governance is robust, scalable, and deployable. This position has high visibility across the business and exposure to all parts of the trading lifecycle. Your future role at QRT - Cyber Risk Management - Maintain and enhance the Information Security risk register as a live, decision-useful tool. - Work with stakeholders to assess, track, and manage risks across systems, processes, and third parties. - Develop clear, data-led risk narratives for leadership. - Track remediation actions and support risk-based prioritisation. - Governance and Policy - Maintain and improve security policies, standards, and supporting documentation. - Align internal requirements with relevant frameworks, regulations, and business needs. - Ensure documentation is clear, current, and accessible to technical and business stakeholders. - Support practical and scalable security governance. - Audit and Assurance - Coordinate external reviews, client assurance requests, regulatory enquiries, and internal audits. - Gather",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c5eb800f50e402e9b06f03fde39c62d2:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.dc0900ad6c40cf325e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c5eb800f50e402e9b06f03fde39c62d2",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Cyber Risk Specialist London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. As a Cyber Risk Specialist, you'll provide strategic guidance across risk and governance remits within the security team. You'll collaborate with different teams and stakeholders across the business to ensure our security governance is robust, scalable, and deployable. This position has high visibility across the business and exposure to all parts of the trading lifecycle. Your future role at QRT - Cyber Risk Management - Maintain and enhance the Information Security risk register as a live, decision-useful tool. - Work with stakeholders to assess, track, and manage risks across systems, processes, and third parties. - Develop clear, data-led risk narratives for leadership. - Track remediation actions and support risk-based prioritisation. - Governance and Policy - Maintain and improve security policies, standards, and supporting documentation. - Align internal requirements with relevant frameworks, regulations, and business needs. - Ensure documentation is clear, current, and accessible to technical and business stakeholders. - Support practical and scalable security governance. - Audit and Assurance - Coordinate external reviews, client assurance requests, regulatory enquiries, and internal audits. - Gather",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c5eb800f50e402e9b06f03fde39c62d2:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4476e82e1ec4ac2f77",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c5eb800f50e402e9b06f03fde39c62d2",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c5eb800f50e402e9b06f03fde39c62d2:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5b5bc482bf7aa3f7a4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c5eb800f50e402e9b06f03fde39c62d2",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c5eb800f50e402e9b06f03fde39c62d2:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.797d88ea50ccd657c4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c5eb800f50e402e9b06f03fde39c62d2",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c5eb800f50e402e9b06f03fde39c62d2:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.2901d6103a822bcc24",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c5eb800f50e402e9b06f03fde39c62d2",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6fbc09d1b18c1a242c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c5eb800f50e402e9b06f03fde39c62d2",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.73ff248baeb4279465",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c5eb800f50e402e9b06f03fde39c62d2",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
      "title": "APAC Mobility and Immigration Specialist",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong, Singapore",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-07T11:51:21.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8539044002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "APAC Mobility and Immigration Specialist Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Human Resources team as an APAC Mobility and Immigration Specialist, to be based in Hong Kong or Singapore, partnering with global HR colleagues, Finance, Compliance, and external providers to deliver effective mobility solutions. Your future role at QRT: - Manage and coordinate the end-to-end immigration process (of new hires and mobility cases, including monitoring expirations and renewals) for the APAC countries, ensuring compliance with regulatory requirements - Oversee and coordinate international secondments and transfers into the region, and advise on the implementation and optimization of the mobility policy - Identify and implement process improvements and automation to elevate the global mobility function - Manage day-to-day BAU, including system updates and management of external service providers - Facilitate comprehensive tax, immigration, and relocation briefings for candidates, secondees, and transferees - Conduct internal audits on global mobility and immigration processes - Collaborate with global HR teams and leadership to design, implement, and adapt the global mobility policies and programs that meet both local and international business needs - Provide",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "other",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "bachelors",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.11148846b0a8f494e5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "APAC Mobility and Immigration Specialist Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Human Resources team as an APAC Mobility and Immigration Specialist, to be based in Hong Kong or Singapore, partnering with global HR colleagues, Finance, Compliance, and external providers to deliver effective mobility solutions. Your future role at QRT: - Manage and coordinate the end-to-end immigration process (of new hires and mobility cases, including monitoring expirations and renewals) for the APAC countries, ensuring compliance with regulatory requirements - Oversee and coordinate international secondments and transfers into the region, and advise on the implementation and optimization of the mobility policy - Identify and implement process improvements and automation to elevate the global mobility function - Manage day-to-day BAU, including system updates and management of external service providers - Facilitate comprehensive tax, immigration, and relocation briefings for candidates, secondees, and transferees - Conduct internal audits on global mobility and immigration processes - Collaborate with global HR teams and leadership to design, implement, and adapt the global mobility policies and programs that meet both local and international business needs - Provide",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e6edbf56602e90a2bf2a2f7d76bc0fa4:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.6a3fe33e23bc5d7778",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "APAC Mobility and Immigration Specialist Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Human Resources team as an APAC Mobility and Immigration Specialist, to be based in Hong Kong or Singapore, partnering with global HR colleagues, Finance, Compliance, and external providers to deliver effective mobility solutions. Your future role at QRT: - Manage and coordinate the end-to-end immigration process (of new hires and mobility cases, including monitoring expirations and renewals) for the APAC countries, ensuring compliance with regulatory requirements - Oversee and coordinate international secondments and transfers into the region, and advise on the implementation and optimization of the mobility policy - Identify and implement process improvements and automation to elevate the global mobility function - Manage day-to-day BAU, including system updates and management of external service providers - Facilitate comprehensive tax, immigration, and relocation briefings for candidates, secondees, and transferees - Conduct internal audits on global mobility and immigration processes - Collaborate with global HR teams and leadership to design, implement, and adapt the global mobility policies and programs that meet both local and international business needs - Provide",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e6edbf56602e90a2bf2a2f7d76bc0fa4:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d60aafc352b28e6722",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "APAC Mobility and Immigration Specialist Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Human Resources team as an APAC Mobility and Immigration Specialist, to be based in Hong Kong or Singapore, partnering with global HR colleagues, Finance, Compliance, and external providers to deliver effective mobility solutions. Your future role at QRT: - Manage and coordinate the end-to-end immigration process (of new hires and mobility cases, including monitoring expirations and renewals) for the APAC countries, ensuring compliance with regulatory requirements - Oversee and coordinate international secondments and transfers into the region, and advise on the implementation and optimization of the mobility policy - Identify and implement process improvements and automation to elevate the global mobility function - Manage day-to-day BAU, including system updates and management of external service providers - Facilitate comprehensive tax, immigration, and relocation briefings for candidates, secondees, and transferees - Conduct internal audits on global mobility and immigration processes - Collaborate with global HR teams and leadership to design, implement, and adapt the global mobility policies and programs that meet both local and international business needs - Provide",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e6edbf56602e90a2bf2a2f7d76bc0fa4:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4653408718eb0cd88f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e6edbf56602e90a2bf2a2f7d76bc0fa4:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4cd525e2b9ff2ca6d4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e6edbf56602e90a2bf2a2f7d76bc0fa4:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9bb235a0424c7d42dd",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e6edbf56602e90a2bf2a2f7d76bc0fa4:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.95ea0c32d2acca3ec1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d82d2da59dcdf988d4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ebb8de6cfe918fb576",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e6edbf56602e90a2bf2a2f7d76bc0fa4",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "09f5639ae31ef86287711e73616dac4f",
      "title": "DevOps / Platform Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Wrocław",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-01T10:51:23.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8572592002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "DevOps / Platform Engineer Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. As a DevOps / Platform Engineer, you will build and operate the infrastructure that powers QRT's internal AI platform. You will be responsible for the Kubernetes and AWS environments supporting model serving, observability, and developer tooling, ensuring they remain reliable, secure, and scalable. Working closely with AI Platform Engineers, Researchers, and Data Scientists, you will own core infrastructure services and help shape how AI capabilities are delivered across the firm. Your future role within QRT: Infrastructure & Cloud - Design and operate infrastructure across AWS and on-premise Kubernetes environments supporting AI and LLM workloads - Manage Kubernetes clusters, including scheduling, multi-tenancy, resource isolation, and GPU-backed workloads - Develop hybrid cloud strategies balancing performance, cost, and data residency requirements - Own AWS infrastructure, including networking, IAM, security, and cost management - Build and maintain infrastructure as code using reusable, version-controlled tooling Platform Operations - Implement and maintain CI/CD and GitOps deployment workflows - Build observability solutions covering system health, utilisation, latency, and platform performance - Automate scaling and capacity management - Enforce authentication, rate limiting,",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 4,
      "years_experience_max": 8,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.1f40635eeff4344511",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09f5639ae31ef86287711e73616dac4f",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "DevOps / Platform Engineer Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. As a DevOps / Platform Engineer, you will build and operate the infrastructure that powers QRT's internal AI platform. You will be responsible for the Kubernetes and AWS environments supporting model serving, observability, and developer tooling, ensuring they remain reliable, secure, and scalable. Working closely with AI Platform Engineers, Researchers, and Data Scientists, you will own core infrastructure services and help shape how AI capabilities are delivered across the firm. Your future role within QRT: Infrastructure & Cloud - Design and operate infrastructure across AWS and on-premise Kubernetes environments supporting AI and LLM workloads - Manage Kubernetes clusters, including scheduling, multi-tenancy, resource isolation, and GPU-backed workloads - Develop hybrid cloud strategies balancing performance, cost, and data residency requirements - Own AWS infrastructure, including networking, IAM, security, and cost management - Build and maintain infrastructure as code using reusable, version-controlled tooling Platform Operations - Implement and maintain CI/CD and GitOps deployment workflows - Build observability solutions covering system health, utilisation, latency, and platform performance - Automate scaling and capacity management - Enforce authentication, rate limiting,",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09f5639ae31ef86287711e73616dac4f:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9b224410914d14f631",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09f5639ae31ef86287711e73616dac4f",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "DevOps / Platform Engineer Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. As a DevOps / Platform Engineer, you will build and operate the infrastructure that powers QRT's internal AI platform. You will be responsible for the Kubernetes and AWS environments supporting model serving, observability, and developer tooling, ensuring they remain reliable, secure, and scalable. Working closely with AI Platform Engineers, Researchers, and Data Scientists, you will own core infrastructure services and help shape how AI capabilities are delivered across the firm. Your future role within QRT: Infrastructure & Cloud - Design and operate infrastructure across AWS and on-premise Kubernetes environments supporting AI and LLM workloads - Manage Kubernetes clusters, including scheduling, multi-tenancy, resource isolation, and GPU-backed workloads - Develop hybrid cloud strategies balancing performance, cost, and data residency requirements - Own AWS infrastructure, including networking, IAM, security, and cost management - Build and maintain infrastructure as code using reusable, version-controlled tooling Platform Operations - Implement and maintain CI/CD and GitOps deployment workflows - Build observability solutions covering system health, utilisation, latency, and platform performance - Automate scaling and capacity management - Enforce authentication, rate limiting,",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09f5639ae31ef86287711e73616dac4f:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b1c3271f47e0f60582",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09f5639ae31ef86287711e73616dac4f",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "DevOps / Platform Engineer Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. As a DevOps / Platform Engineer, you will build and operate the infrastructure that powers QRT's internal AI platform. You will be responsible for the Kubernetes and AWS environments supporting model serving, observability, and developer tooling, ensuring they remain reliable, secure, and scalable. Working closely with AI Platform Engineers, Researchers, and Data Scientists, you will own core infrastructure services and help shape how AI capabilities are delivered across the firm. Your future role within QRT: Infrastructure & Cloud - Design and operate infrastructure across AWS and on-premise Kubernetes environments supporting AI and LLM workloads - Manage Kubernetes clusters, including scheduling, multi-tenancy, resource isolation, and GPU-backed workloads - Develop hybrid cloud strategies balancing performance, cost, and data residency requirements - Own AWS infrastructure, including networking, IAM, security, and cost management - Build and maintain infrastructure as code using reusable, version-controlled tooling Platform Operations - Implement and maintain CI/CD and GitOps deployment workflows - Build observability solutions covering system health, utilisation, latency, and platform performance - Automate scaling and capacity management - Enforce authentication, rate limiting,",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09f5639ae31ef86287711e73616dac4f:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.38a8093e9d1d7dcd0e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09f5639ae31ef86287711e73616dac4f",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09f5639ae31ef86287711e73616dac4f:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.71af35a8b88201ed61",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09f5639ae31ef86287711e73616dac4f",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09f5639ae31ef86287711e73616dac4f:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.91f845607bcfcdd8a2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09f5639ae31ef86287711e73616dac4f",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09f5639ae31ef86287711e73616dac4f:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.136963189f8d3b8004",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09f5639ae31ef86287711e73616dac4f",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.2823be9328a2c4edd3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09f5639ae31ef86287711e73616dac4f",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.586e285e5d4c9c871a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09f5639ae31ef86287711e73616dac4f",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "2d366e6952773051484afde2bfc6a666",
      "title": "Fixed Income Risk Engineer (Python)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-20T17:24:04.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8515254002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Fixed Income Risk Engineer (Python) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The Risk team build and maintain tools to support risk analysis and reporting for QRT's trading businesses. This includes close collaboration with Risk Managers, Quantitative Traders, and Quantitative Researchers, across multiple asset classes, to ensure robust and scalable risk infrastructure. This particular opportunity will provide significant contributions for our Fixed Income function. - Design, build, and maintain production risk analytics tools and data services - Develop and support data pipelines and reporting systems used by trading and risk teams - Partner with trading desks, risk, and operations to understand requirements and deliver solutions - Investigate and resolve data discrepancies, risk inconsistencies, and production issues - Improve system reliability, performance, and scalability - Contribute to the evolution of risk and analytics infrastructure Your present skillset - Fixed Income Knowledge - - Solid understanding of Fixed Income products, including bonds, interest rate swaps, bond futures, repos - - Experience working with trading desks and/or risk teams - - Understanding of Trade lifecycle; Risk measures (e.g. DV01, sensitivities, stress",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.8dce538bfef59ffa0a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2d366e6952773051484afde2bfc6a666",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Fixed Income Risk Engineer (Python) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The Risk team build and maintain tools to support risk analysis and reporting for QRT's trading businesses. This includes close collaboration with Risk Managers, Quantitative Traders, and Quantitative Researchers, across multiple asset classes, to ensure robust and scalable risk infrastructure. This particular opportunity will provide significant contributions for our Fixed Income function. - Design, build, and maintain production risk analytics tools and data services - Develop and support data pipelines and reporting systems used by trading and risk teams - Partner with trading desks, risk, and operations to understand requirements and deliver solutions - Investigate and resolve data discrepancies, risk inconsistencies, and production issues - Improve system reliability, performance, and scalability - Contribute to the evolution of risk and analytics infrastructure Your present skillset - Fixed Income Knowledge - - Solid understanding of Fixed Income products, including bonds, interest rate swaps, bond futures, repos - - Experience working with trading desks and/or risk teams - - Understanding of Trade lifecycle; Risk measures (e.g. DV01, sensitivities, stress",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2d366e6952773051484afde2bfc6a666:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.cef9d16f7025028f7a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2d366e6952773051484afde2bfc6a666",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Fixed Income Risk Engineer (Python) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The Risk team build and maintain tools to support risk analysis and reporting for QRT's trading businesses. This includes close collaboration with Risk Managers, Quantitative Traders, and Quantitative Researchers, across multiple asset classes, to ensure robust and scalable risk infrastructure. This particular opportunity will provide significant contributions for our Fixed Income function. - Design, build, and maintain production risk analytics tools and data services - Develop and support data pipelines and reporting systems used by trading and risk teams - Partner with trading desks, risk, and operations to understand requirements and deliver solutions - Investigate and resolve data discrepancies, risk inconsistencies, and production issues - Improve system reliability, performance, and scalability - Contribute to the evolution of risk and analytics infrastructure Your present skillset - Fixed Income Knowledge - - Solid understanding of Fixed Income products, including bonds, interest rate swaps, bond futures, repos - - Experience working with trading desks and/or risk teams - - Understanding of Trade lifecycle; Risk measures (e.g. DV01, sensitivities, stress",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2d366e6952773051484afde2bfc6a666:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f70794ad76873ed4a4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2d366e6952773051484afde2bfc6a666",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Fixed Income Risk Engineer (Python) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The Risk team build and maintain tools to support risk analysis and reporting for QRT's trading businesses. This includes close collaboration with Risk Managers, Quantitative Traders, and Quantitative Researchers, across multiple asset classes, to ensure robust and scalable risk infrastructure. This particular opportunity will provide significant contributions for our Fixed Income function. - Design, build, and maintain production risk analytics tools and data services - Develop and support data pipelines and reporting systems used by trading and risk teams - Partner with trading desks, risk, and operations to understand requirements and deliver solutions - Investigate and resolve data discrepancies, risk inconsistencies, and production issues - Improve system reliability, performance, and scalability - Contribute to the evolution of risk and analytics infrastructure Your present skillset - Fixed Income Knowledge - - Solid understanding of Fixed Income products, including bonds, interest rate swaps, bond futures, repos - - Experience working with trading desks and/or risk teams - - Understanding of Trade lifecycle; Risk measures (e.g. DV01, sensitivities, stress",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2d366e6952773051484afde2bfc6a666:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0fdd9bfa88ccb6bdbe",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2d366e6952773051484afde2bfc6a666",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2d366e6952773051484afde2bfc6a666:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1b91415c5ee73a5e09",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2d366e6952773051484afde2bfc6a666",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2d366e6952773051484afde2bfc6a666:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7d9ae5a63506d489d0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2d366e6952773051484afde2bfc6a666",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2d366e6952773051484afde2bfc6a666:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0f5067d4546a798442",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2d366e6952773051484afde2bfc6a666",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c8d7c8bf3f21e29b38",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2d366e6952773051484afde2bfc6a666",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f164815e26ec876eed",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2d366e6952773051484afde2bfc6a666",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "48378bafaaa4331cfc03f7953055014d",
      "title": "Production Support Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Paris",
      "country": "FR",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-22T09:25:59.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8561849002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Production Support Engineer Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: You will play a key role in ensuring the stability, reliability, and performance of QRT's trading platforms and low-latency automated trading systems. Your responsibilities will include: - Monitoring and supporting real-time trading systems and production infrastructure - Acting as a first point of contact for production incidents impacting trading activities - Investigating and resolving issues related to order flow, exchange connectivity, and internal services - Performing pre-market health checks to ensure trading platform readiness - Troubleshooting issues across Linux/Windows environments and distributed systems - Analysing logs, system behaviour, and application performance to identify root causes - Improving monitoring, operational tooling, and automation - Supporting production deployments and release activities - Collaborating closely with developers, researchers, and infrastructure teams - Participating in a remote on-call rotation Your present skillset: - 3+ years of experience in Production Support, Trading Support, or Application Support within a trading environment - Strong understanding of the trade lifecycle and electronic trading workflows - Experience supporting low-latency or automated trading systems - Strong Linux knowledge",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.00976ebaf49ceeb06e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "48378bafaaa4331cfc03f7953055014d",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Support Engineer Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: You will play a key role in ensuring the stability, reliability, and performance of QRT's trading platforms and low-latency automated trading systems. Your responsibilities will include: - Monitoring and supporting real-time trading systems and production infrastructure - Acting as a first point of contact for production incidents impacting trading activities - Investigating and resolving issues related to order flow, exchange connectivity, and internal services - Performing pre-market health checks to ensure trading platform readiness - Troubleshooting issues across Linux/Windows environments and distributed systems - Analysing logs, system behaviour, and application performance to identify root causes - Improving monitoring, operational tooling, and automation - Supporting production deployments and release activities - Collaborating closely with developers, researchers, and infrastructure teams - Participating in a remote on-call rotation Your present skillset: - 3+ years of experience in Production Support, Trading Support, or Application Support within a trading environment - Strong understanding of the trade lifecycle and electronic trading workflows - Experience supporting low-latency or automated trading systems - Strong Linux knowledge",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:48378bafaaa4331cfc03f7953055014d:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.960da6a544ee192a16",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "48378bafaaa4331cfc03f7953055014d",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Support Engineer Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: You will play a key role in ensuring the stability, reliability, and performance of QRT's trading platforms and low-latency automated trading systems. Your responsibilities will include: - Monitoring and supporting real-time trading systems and production infrastructure - Acting as a first point of contact for production incidents impacting trading activities - Investigating and resolving issues related to order flow, exchange connectivity, and internal services - Performing pre-market health checks to ensure trading platform readiness - Troubleshooting issues across Linux/Windows environments and distributed systems - Analysing logs, system behaviour, and application performance to identify root causes - Improving monitoring, operational tooling, and automation - Supporting production deployments and release activities - Collaborating closely with developers, researchers, and infrastructure teams - Participating in a remote on-call rotation Your present skillset: - 3+ years of experience in Production Support, Trading Support, or Application Support within a trading environment - Strong understanding of the trade lifecycle and electronic trading workflows - Experience supporting low-latency or automated trading systems - Strong Linux knowledge",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:48378bafaaa4331cfc03f7953055014d:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b35f339c25bc75a856",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "48378bafaaa4331cfc03f7953055014d",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Support Engineer Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: You will play a key role in ensuring the stability, reliability, and performance of QRT's trading platforms and low-latency automated trading systems. Your responsibilities will include: - Monitoring and supporting real-time trading systems and production infrastructure - Acting as a first point of contact for production incidents impacting trading activities - Investigating and resolving issues related to order flow, exchange connectivity, and internal services - Performing pre-market health checks to ensure trading platform readiness - Troubleshooting issues across Linux/Windows environments and distributed systems - Analysing logs, system behaviour, and application performance to identify root causes - Improving monitoring, operational tooling, and automation - Supporting production deployments and release activities - Collaborating closely with developers, researchers, and infrastructure teams - Participating in a remote on-call rotation Your present skillset: - 3+ years of experience in Production Support, Trading Support, or Application Support within a trading environment - Strong understanding of the trade lifecycle and electronic trading workflows - Experience supporting low-latency or automated trading systems - Strong Linux knowledge",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:48378bafaaa4331cfc03f7953055014d:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4bf9b48dc6eb040600",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "48378bafaaa4331cfc03f7953055014d",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:48378bafaaa4331cfc03f7953055014d:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6ccca47d24d1296b21",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "48378bafaaa4331cfc03f7953055014d",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:48378bafaaa4331cfc03f7953055014d:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ccc39d6b62451cce0b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "48378bafaaa4331cfc03f7953055014d",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:48378bafaaa4331cfc03f7953055014d:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3b7cc59c92a4d184c8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "48378bafaaa4331cfc03f7953055014d",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9c0972d9fe02a872d2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "48378bafaaa4331cfc03f7953055014d",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e8ecee123474c00983",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "48378bafaaa4331cfc03f7953055014d",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "928cdce11de159859e525be57b1f1534",
      "title": "Quantitative Developer - Production",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong, Singapore",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-24T08:20:30.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8522136002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Quantitative Developer - Production Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT is seeking a Quantitative Developer with strong Python skills and a deep understanding of systems design and reliability principles to help evolve and scale our high-performance trading platform. You'll build tools, automation, and design systems that support the speed and reliability our business depends on. Your future role within QRT - Collaborate with developers, researchers, traders, and platform teams to build and improve business-critical systems - Build automation for operations, deployment, monitoring, and incident response - Evaluate and implement tools that balance performance, complexity, and maintainability - Own and evolve our observability stack: metrics, logs, tracing, and alerts Your Present Skill Set - Bachelor's degree in Computer Science or a strongly related field - Strong Python programming skills - Strong problem-solving skills and deep understanding of computer science fundamentals - Commitment to code clarity, documentation, and reducing technical debt - Hands-on experience with Linux/Unix systems in production environments - Proven track record designing and delivering scalable systems in production environments - Knowledge of low-latency systems, trading environments, market data,",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "operations",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "bachelors",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.5c8b817b4136472cf5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "928cdce11de159859e525be57b1f1534",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Production Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT is seeking a Quantitative Developer with strong Python skills and a deep understanding of systems design and reliability principles to help evolve and scale our high-performance trading platform. You'll build tools, automation, and design systems that support the speed and reliability our business depends on. Your future role within QRT - Collaborate with developers, researchers, traders, and platform teams to build and improve business-critical systems - Build automation for operations, deployment, monitoring, and incident response - Evaluate and implement tools that balance performance, complexity, and maintainability - Own and evolve our observability stack: metrics, logs, tracing, and alerts Your Present Skill Set - Bachelor's degree in Computer Science or a strongly related field - Strong Python programming skills - Strong problem-solving skills and deep understanding of computer science fundamentals - Commitment to code clarity, documentation, and reducing technical debt - Hands-on experience with Linux/Unix systems in production environments - Proven track record designing and delivering scalable systems in production environments - Knowledge of low-latency systems, trading environments, market data,",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:928cdce11de159859e525be57b1f1534:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.68047ae700ef5eb629",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "928cdce11de159859e525be57b1f1534",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Production Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT is seeking a Quantitative Developer with strong Python skills and a deep understanding of systems design and reliability principles to help evolve and scale our high-performance trading platform. You'll build tools, automation, and design systems that support the speed and reliability our business depends on. Your future role within QRT - Collaborate with developers, researchers, traders, and platform teams to build and improve business-critical systems - Build automation for operations, deployment, monitoring, and incident response - Evaluate and implement tools that balance performance, complexity, and maintainability - Own and evolve our observability stack: metrics, logs, tracing, and alerts Your Present Skill Set - Bachelor's degree in Computer Science or a strongly related field - Strong Python programming skills - Strong problem-solving skills and deep understanding of computer science fundamentals - Commitment to code clarity, documentation, and reducing technical debt - Hands-on experience with Linux/Unix systems in production environments - Proven track record designing and delivering scalable systems in production environments - Knowledge of low-latency systems, trading environments, market data,",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:928cdce11de159859e525be57b1f1534:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.dae70c63091005d1c5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "928cdce11de159859e525be57b1f1534",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Production Hong Kong, Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT is seeking a Quantitative Developer with strong Python skills and a deep understanding of systems design and reliability principles to help evolve and scale our high-performance trading platform. You'll build tools, automation, and design systems that support the speed and reliability our business depends on. Your future role within QRT - Collaborate with developers, researchers, traders, and platform teams to build and improve business-critical systems - Build automation for operations, deployment, monitoring, and incident response - Evaluate and implement tools that balance performance, complexity, and maintainability - Own and evolve our observability stack: metrics, logs, tracing, and alerts Your Present Skill Set - Bachelor's degree in Computer Science or a strongly related field - Strong Python programming skills - Strong problem-solving skills and deep understanding of computer science fundamentals - Commitment to code clarity, documentation, and reducing technical debt - Hands-on experience with Linux/Unix systems in production environments - Proven track record designing and delivering scalable systems in production environments - Knowledge of low-latency systems, trading environments, market data,",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:928cdce11de159859e525be57b1f1534:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.029d4776e6fd8762a2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "928cdce11de159859e525be57b1f1534",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:928cdce11de159859e525be57b1f1534:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3abfe35f240541efb8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "928cdce11de159859e525be57b1f1534",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:928cdce11de159859e525be57b1f1534:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6c08b3004000a0bec4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "928cdce11de159859e525be57b1f1534",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:928cdce11de159859e525be57b1f1534:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.09be3a1f0edecd207e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "928cdce11de159859e525be57b1f1534",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0d6c933e3a649b9542",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "928cdce11de159859e525be57b1f1534",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3d66f04dbfabfe80a4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "928cdce11de159859e525be57b1f1534",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "a5afde61ed5140a8084b386bb0d7205c",
      "title": "Software Engineer - Site Reliability Engineering",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Paris",
      "country": "FR",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-05-09T16:40:11.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/7991214002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Software Engineer - Site Reliability Engineering Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT is seeking a Software Engineer with strong Python skills and a deep understanding of systems design and reliability principles to help evolve and scale our high-performance trading platform. You'll build tools, automation, and design systems that support the speed and reliability our business depends on. Your future role within QRT - Collaborate with developers, researchers, traders, and platform teams to build and improve business-critical systems - Build automation for operations, deployment, monitoring, and incident response - Evaluate and implement tools that balance performance, complexity, and maintainability - Own and evolve our observability stack: metrics, logs, tracing, and alerts - Participate in the team oncall rota, leading incident response and driving continuous improvement through postmortems and root cause analysis Your Present Skill Set - Bachelor's degree in Computer Science or a strongly related field - Strong Python programming skills - Strong problem-solving skills and deep understanding of computer science fundamentals - Commitment to code clarity, documentation, and reducing technical debt - Hands-on experience with Linux/Unix systems in production environments -",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "bachelors",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.388b15955791308e8e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a5afde61ed5140a8084b386bb0d7205c",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Software Engineer - Site Reliability Engineering Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT is seeking a Software Engineer with strong Python skills and a deep understanding of systems design and reliability principles to help evolve and scale our high-performance trading platform. You'll build tools, automation, and design systems that support the speed and reliability our business depends on. Your future role within QRT - Collaborate with developers, researchers, traders, and platform teams to build and improve business-critical systems - Build automation for operations, deployment, monitoring, and incident response - Evaluate and implement tools that balance performance, complexity, and maintainability - Own and evolve our observability stack: metrics, logs, tracing, and alerts - Participate in the team oncall rota, leading incident response and driving continuous improvement through postmortems and root cause analysis Your Present Skill Set - Bachelor's degree in Computer Science or a strongly related field - Strong Python programming skills - Strong problem-solving skills and deep understanding of computer science fundamentals - Commitment to code clarity, documentation, and reducing technical debt - Hands-on experience with Linux/Unix systems in production environments -",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a5afde61ed5140a8084b386bb0d7205c:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.40a6e72976905c749f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a5afde61ed5140a8084b386bb0d7205c",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Software Engineer - Site Reliability Engineering Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT is seeking a Software Engineer with strong Python skills and a deep understanding of systems design and reliability principles to help evolve and scale our high-performance trading platform. You'll build tools, automation, and design systems that support the speed and reliability our business depends on. Your future role within QRT - Collaborate with developers, researchers, traders, and platform teams to build and improve business-critical systems - Build automation for operations, deployment, monitoring, and incident response - Evaluate and implement tools that balance performance, complexity, and maintainability - Own and evolve our observability stack: metrics, logs, tracing, and alerts - Participate in the team oncall rota, leading incident response and driving continuous improvement through postmortems and root cause analysis Your Present Skill Set - Bachelor's degree in Computer Science or a strongly related field - Strong Python programming skills - Strong problem-solving skills and deep understanding of computer science fundamentals - Commitment to code clarity, documentation, and reducing technical debt - Hands-on experience with Linux/Unix systems in production environments -",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a5afde61ed5140a8084b386bb0d7205c:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b3fd2e0a49ada85896",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a5afde61ed5140a8084b386bb0d7205c",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Software Engineer - Site Reliability Engineering Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT is seeking a Software Engineer with strong Python skills and a deep understanding of systems design and reliability principles to help evolve and scale our high-performance trading platform. You'll build tools, automation, and design systems that support the speed and reliability our business depends on. Your future role within QRT - Collaborate with developers, researchers, traders, and platform teams to build and improve business-critical systems - Build automation for operations, deployment, monitoring, and incident response - Evaluate and implement tools that balance performance, complexity, and maintainability - Own and evolve our observability stack: metrics, logs, tracing, and alerts - Participate in the team oncall rota, leading incident response and driving continuous improvement through postmortems and root cause analysis Your Present Skill Set - Bachelor's degree in Computer Science or a strongly related field - Strong Python programming skills - Strong problem-solving skills and deep understanding of computer science fundamentals - Commitment to code clarity, documentation, and reducing technical debt - Hands-on experience with Linux/Unix systems in production environments -",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a5afde61ed5140a8084b386bb0d7205c:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.21d732b2a17c3375ba",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a5afde61ed5140a8084b386bb0d7205c",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a5afde61ed5140a8084b386bb0d7205c:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6cfff25ab6377ec7b7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a5afde61ed5140a8084b386bb0d7205c",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a5afde61ed5140a8084b386bb0d7205c:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b6bc35f7a19e2cc9d3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a5afde61ed5140a8084b386bb0d7205c",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a5afde61ed5140a8084b386bb0d7205c:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.27529e7997c15ba2cb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a5afde61ed5140a8084b386bb0d7205c",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.98fe692df1c546790b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a5afde61ed5140a8084b386bb0d7205c",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ecfb3f0d856c5fc016",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a5afde61ed5140a8084b386bb0d7205c",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "c446afc20c4e25fb51f6c6788eff53d1",
      "title": "Senior DevOps Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-15T08:43:33.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8507705002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior DevOps Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Engineering function is responsible for the design, reliability, and optimisation of QRT's wide-area network. The team supports large-scale routing infrastructure and collaborates closely with stakeholders across operations, systems engineering, and automation to ensure robust connectivity for global research and trading activities. Your Future Role within QRT You will: - Design, build, and operate scalable, resilient infrastructure configuration and platform services - Develop and maintain CI/CD pipelines to enable efficient and reliable software delivery - Implement and evolve observability systems using OpenTelemetry (OTel), including distributed tracing, metrics, and logging - Troubleshoot complex system issues, perform root cause analysis, and implement long-term fixes - Automate infrastructure provisioning and configuration using scripting and infrastructure-as-code approaches - Work closely with engineers to improve system design, deployment processes, and runtime performance - Operate and optimise containerised environments and orchestration platforms (e.g. Kubernetes) - Take ownership of services and features from implementation through production support and continuous improvement - Collaborate with stakeholders to understand requirements and deliver effective technical solutions Your Present Skillset - Strong Linux systems expertise, including",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.2ea4451a7131339a2f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c446afc20c4e25fb51f6c6788eff53d1",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior DevOps Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Engineering function is responsible for the design, reliability, and optimisation of QRT's wide-area network. The team supports large-scale routing infrastructure and collaborates closely with stakeholders across operations, systems engineering, and automation to ensure robust connectivity for global research and trading activities. Your Future Role within QRT You will: - Design, build, and operate scalable, resilient infrastructure configuration and platform services - Develop and maintain CI/CD pipelines to enable efficient and reliable software delivery - Implement and evolve observability systems using OpenTelemetry (OTel), including distributed tracing, metrics, and logging - Troubleshoot complex system issues, perform root cause analysis, and implement long-term fixes - Automate infrastructure provisioning and configuration using scripting and infrastructure-as-code approaches - Work closely with engineers to improve system design, deployment processes, and runtime performance - Operate and optimise containerised environments and orchestration platforms (e.g. Kubernetes) - Take ownership of services and features from implementation through production support and continuous improvement - Collaborate with stakeholders to understand requirements and deliver effective technical solutions Your Present Skillset - Strong Linux systems expertise, including",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c446afc20c4e25fb51f6c6788eff53d1:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.466f0069e0c5159cfc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c446afc20c4e25fb51f6c6788eff53d1",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior DevOps Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Engineering function is responsible for the design, reliability, and optimisation of QRT's wide-area network. The team supports large-scale routing infrastructure and collaborates closely with stakeholders across operations, systems engineering, and automation to ensure robust connectivity for global research and trading activities. Your Future Role within QRT You will: - Design, build, and operate scalable, resilient infrastructure configuration and platform services - Develop and maintain CI/CD pipelines to enable efficient and reliable software delivery - Implement and evolve observability systems using OpenTelemetry (OTel), including distributed tracing, metrics, and logging - Troubleshoot complex system issues, perform root cause analysis, and implement long-term fixes - Automate infrastructure provisioning and configuration using scripting and infrastructure-as-code approaches - Work closely with engineers to improve system design, deployment processes, and runtime performance - Operate and optimise containerised environments and orchestration platforms (e.g. Kubernetes) - Take ownership of services and features from implementation through production support and continuous improvement - Collaborate with stakeholders to understand requirements and deliver effective technical solutions Your Present Skillset - Strong Linux systems expertise, including",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c446afc20c4e25fb51f6c6788eff53d1:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.ca99590d46e1bbd285",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c446afc20c4e25fb51f6c6788eff53d1",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior DevOps Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Engineering function is responsible for the design, reliability, and optimisation of QRT's wide-area network. The team supports large-scale routing infrastructure and collaborates closely with stakeholders across operations, systems engineering, and automation to ensure robust connectivity for global research and trading activities. Your Future Role within QRT You will: - Design, build, and operate scalable, resilient infrastructure configuration and platform services - Develop and maintain CI/CD pipelines to enable efficient and reliable software delivery - Implement and evolve observability systems using OpenTelemetry (OTel), including distributed tracing, metrics, and logging - Troubleshoot complex system issues, perform root cause analysis, and implement long-term fixes - Automate infrastructure provisioning and configuration using scripting and infrastructure-as-code approaches - Work closely with engineers to improve system design, deployment processes, and runtime performance - Operate and optimise containerised environments and orchestration platforms (e.g. Kubernetes) - Take ownership of services and features from implementation through production support and continuous improvement - Collaborate with stakeholders to understand requirements and deliver effective technical solutions Your Present Skillset - Strong Linux systems expertise, including",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c446afc20c4e25fb51f6c6788eff53d1:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.57e45ad3da8a06e274",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c446afc20c4e25fb51f6c6788eff53d1",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c446afc20c4e25fb51f6c6788eff53d1:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7a271f4f647b53ccc5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c446afc20c4e25fb51f6c6788eff53d1",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c446afc20c4e25fb51f6c6788eff53d1:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ed4cd39a03f027c207",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c446afc20c4e25fb51f6c6788eff53d1",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c446afc20c4e25fb51f6c6788eff53d1:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0451f1ee50fd208b77",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c446afc20c4e25fb51f6c6788eff53d1",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cea1672404cc7371cc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c446afc20c4e25fb51f6c6788eff53d1",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e5fe79ad1247a19fda",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c446afc20c4e25fb51f6c6788eff53d1",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "14578d8f28ea5f58099e94a287c129c3",
      "title": "Linux Operations Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "New York",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": 150000,
      "salary_max": 200000,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "total_comp",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": "year",
      "base_salary_min": 150000,
      "base_salary_max": 200000,
      "salary_disclosed": true,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-02-02T14:34:28.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8364751002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Linux Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Infrastructure Operations Team ensures the stability and performance of QRT's global Linux estate, which underpins both trading and research platforms. The team works closely with end users, application teams, and engineering groups to provide day-to-day operational support, while also driving automation, monitoring, and deployment initiatives across a high-performance computing environment. Your Future Role within QRT - Administer, support, and upgrade Linux-based trading and research platforms - Deploy new servers and manage end-to-end build processes - Collaborate with engineering teams on automation and monitoring initiatives - Troubleshoot incidents and carry out root-cause analysis to ensure long-term stability - Contribute to process documentation and knowledge sharing - Perform occasional out-of-hours work and participate in an on-call rota (primarily remote) Your Present Skillset - Strong Linux administration experience (Red Hat, CentOS) - Experience with full lifecycle server deployments (hardware to OS build) - Knowledge of AMD/Intel server hardware and components - Understanding of networking fundamentals (TCP/UDP, LAN/WAN) - Experience with automation tools (e.g. Ansible) - Familiarity with scripting languages (Python, Bash) - Problem-solving mindset with strong",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 44,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 55,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.81ecf33dabb87c431e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14578d8f28ea5f58099e94a287c129c3",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Linux Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Infrastructure Operations Team ensures the stability and performance of QRT's global Linux estate, which underpins both trading and research platforms. The team works closely with end users, application teams, and engineering groups to provide day-to-day operational support, while also driving automation, monitoring, and deployment initiatives across a high-performance computing environment. Your Future Role within QRT - Administer, support, and upgrade Linux-based trading and research platforms - Deploy new servers and manage end-to-end build processes - Collaborate with engineering teams on automation and monitoring initiatives - Troubleshoot incidents and carry out root-cause analysis to ensure long-term stability - Contribute to process documentation and knowledge sharing - Perform occasional out-of-hours work and participate in an on-call rota (primarily remote) Your Present Skillset - Strong Linux administration experience (Red Hat, CentOS) - Experience with full lifecycle server deployments (hardware to OS build) - Knowledge of AMD/Intel server hardware and components - Understanding of networking fundamentals (TCP/UDP, LAN/WAN) - Experience with automation tools (e.g. Ansible) - Familiarity with scripting languages (Python, Bash) - Problem-solving mindset with strong",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14578d8f28ea5f58099e94a287c129c3:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d9eb760ae16e06e2c4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14578d8f28ea5f58099e94a287c129c3",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Linux Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Infrastructure Operations Team ensures the stability and performance of QRT's global Linux estate, which underpins both trading and research platforms. The team works closely with end users, application teams, and engineering groups to provide day-to-day operational support, while also driving automation, monitoring, and deployment initiatives across a high-performance computing environment. Your Future Role within QRT - Administer, support, and upgrade Linux-based trading and research platforms - Deploy new servers and manage end-to-end build processes - Collaborate with engineering teams on automation and monitoring initiatives - Troubleshoot incidents and carry out root-cause analysis to ensure long-term stability - Contribute to process documentation and knowledge sharing - Perform occasional out-of-hours work and participate in an on-call rota (primarily remote) Your Present Skillset - Strong Linux administration experience (Red Hat, CentOS) - Experience with full lifecycle server deployments (hardware to OS build) - Knowledge of AMD/Intel server hardware and components - Understanding of networking fundamentals (TCP/UDP, LAN/WAN) - Experience with automation tools (e.g. Ansible) - Familiarity with scripting languages (Python, Bash) - Problem-solving mindset with strong",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14578d8f28ea5f58099e94a287c129c3:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f4ec9375b557a35a77",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14578d8f28ea5f58099e94a287c129c3",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Linux Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Infrastructure Operations Team ensures the stability and performance of QRT's global Linux estate, which underpins both trading and research platforms. The team works closely with end users, application teams, and engineering groups to provide day-to-day operational support, while also driving automation, monitoring, and deployment initiatives across a high-performance computing environment. Your Future Role within QRT - Administer, support, and upgrade Linux-based trading and research platforms - Deploy new servers and manage end-to-end build processes - Collaborate with engineering teams on automation and monitoring initiatives - Troubleshoot incidents and carry out root-cause analysis to ensure long-term stability - Contribute to process documentation and knowledge sharing - Perform occasional out-of-hours work and participate in an on-call rota (primarily remote) Your Present Skillset - Strong Linux administration experience (Red Hat, CentOS) - Experience with full lifecycle server deployments (hardware to OS build) - Knowledge of AMD/Intel server hardware and components - Understanding of networking fundamentals (TCP/UDP, LAN/WAN) - Experience with automation tools (e.g. Ansible) - Familiarity with scripting languages (Python, Bash) - Problem-solving mindset with strong",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14578d8f28ea5f58099e94a287c129c3:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.55725e9a3d03bc7c83",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14578d8f28ea5f58099e94a287c129c3",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14578d8f28ea5f58099e94a287c129c3:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c797dcb0c0c694b7a5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14578d8f28ea5f58099e94a287c129c3",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14578d8f28ea5f58099e94a287c129c3:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e6d9eeae6c477e3a8c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14578d8f28ea5f58099e94a287c129c3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14578d8f28ea5f58099e94a287c129c3:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9a3b270daecd864bba",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14578d8f28ea5f58099e94a287c129c3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.befb7f9fc1ea71e9d8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14578d8f28ea5f58099e94a287c129c3",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c70e31a32c525f07f4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14578d8f28ea5f58099e94a287c129c3",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
      "title": "Front Office Core Developer – Crypto",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-06-26T09:24:22.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8052117002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Front Office Core Developer – Crypto London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - A key member of the QRT Crypto desk, building and enhancing the core technology stack for our systematic trading - Building the front-office systems for algorithmic trading, including PMS, risk engine, reconciliation, and connectivity - Working with traders and quants to roll-out, support, and automate 24/7 trading strategies - Designing clean architecture and leveraging state of the art tools and components - Bringing new ideas and experimenting with new technologies Your present skillset - 5-10 years' professional experience - Strong Python skills; C++ or Rust experience would be a plus - Very high standards in code quality and good development practices - Knowledge of real-time, robust, scalable and quantitative applications - Ability to architect high-throughput end-to-end systems - Strong team-player and communication skills - Experience with DevOps, CICD, AWS advantageous QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to work openly and respectfully to achieve collective success. In addition to professional achievement, we are offering",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.03576729503734146d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Front Office Core Developer – Crypto London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - A key member of the QRT Crypto desk, building and enhancing the core technology stack for our systematic trading - Building the front-office systems for algorithmic trading, including PMS, risk engine, reconciliation, and connectivity - Working with traders and quants to roll-out, support, and automate 24/7 trading strategies - Designing clean architecture and leveraging state of the art tools and components - Bringing new ideas and experimenting with new technologies Your present skillset - 5-10 years' professional experience - Strong Python skills; C++ or Rust experience would be a plus - Very high standards in code quality and good development practices - Knowledge of real-time, robust, scalable and quantitative applications - Ability to architect high-throughput end-to-end systems - Strong team-player and communication skills - Experience with DevOps, CICD, AWS advantageous QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to work openly and respectfully to achieve collective success. In addition to professional achievement, we are offering",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0d0c86d98cc4f4a7cd90c2f56c4ad9b1:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.368df0afaf94fe080b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Front Office Core Developer – Crypto London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - A key member of the QRT Crypto desk, building and enhancing the core technology stack for our systematic trading - Building the front-office systems for algorithmic trading, including PMS, risk engine, reconciliation, and connectivity - Working with traders and quants to roll-out, support, and automate 24/7 trading strategies - Designing clean architecture and leveraging state of the art tools and components - Bringing new ideas and experimenting with new technologies Your present skillset - 5-10 years' professional experience - Strong Python skills; C++ or Rust experience would be a plus - Very high standards in code quality and good development practices - Knowledge of real-time, robust, scalable and quantitative applications - Ability to architect high-throughput end-to-end systems - Strong team-player and communication skills - Experience with DevOps, CICD, AWS advantageous QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to work openly and respectfully to achieve collective success. In addition to professional achievement, we are offering",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0d0c86d98cc4f4a7cd90c2f56c4ad9b1:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.6cc3b695d27d698f6c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Front Office Core Developer – Crypto London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - A key member of the QRT Crypto desk, building and enhancing the core technology stack for our systematic trading - Building the front-office systems for algorithmic trading, including PMS, risk engine, reconciliation, and connectivity - Working with traders and quants to roll-out, support, and automate 24/7 trading strategies - Designing clean architecture and leveraging state of the art tools and components - Bringing new ideas and experimenting with new technologies Your present skillset - 5-10 years' professional experience - Strong Python skills; C++ or Rust experience would be a plus - Very high standards in code quality and good development practices - Knowledge of real-time, robust, scalable and quantitative applications - Ability to architect high-throughput end-to-end systems - Strong team-player and communication skills - Experience with DevOps, CICD, AWS advantageous QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to work openly and respectfully to achieve collective success. In addition to professional achievement, we are offering",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0d0c86d98cc4f4a7cd90c2f56c4ad9b1:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4df81d3c7c2cb9d1a1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0d0c86d98cc4f4a7cd90c2f56c4ad9b1:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.aa0746e3e85d1b0a6a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0d0c86d98cc4f4a7cd90c2f56c4ad9b1:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e68f069e718c5356a4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0d0c86d98cc4f4a7cd90c2f56c4ad9b1:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.23fa10f9b5c4e087ed",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bb6fe2454f2bf0e87c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cdf87ecd3b1709b905",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0d0c86d98cc4f4a7cd90c2f56c4ad9b1",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "76dbe98122165b94addf67d73a1ffd18",
      "title": "Market Access Developer - C++",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "New York",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": 180000,
      "salary_max": 300000,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "total_comp",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": "year",
      "base_salary_min": 180000,
      "base_salary_max": 300000,
      "salary_disclosed": true,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-02-02T14:34:22.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8365889002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Market Access Developer - C++ New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Market Access is responsible for building and maintaining the cutting-edge technology systems that connect QRT to global financial markets, brokers, and third-party providers. These systems are critical for delivering real-time market data and executing orders with speed, reliability, and precision. By enabling our strategies and traders to operate seamlessly, the team plays a pivotal role in supporting QRT's rapidly expanding business needs and ensuring we maintain our competitive edge through world-class trading technology. Your future role within QRT - A key member of the development team building and enhancing low latency algorithmic trading strategies for QRT - Coverage of all aspects of the algorithmic trading strategy, including the exchange price feeds, financial indicators, market making algorithms, back-testing engine, tick data management, exchange simulators and trading gateways, as well as support of the production environment and the processes surrounding it - You will work closely with a range of investment management professionals including quantitative analysts/developers, traders and operations staff, in order to design and develop cutting edge systems to keep QRT's business at",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 44,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "marketing",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 55,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.239126df536e80f40f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "76dbe98122165b94addf67d73a1ffd18",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Market Access Developer - C++ New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Market Access is responsible for building and maintaining the cutting-edge technology systems that connect QRT to global financial markets, brokers, and third-party providers. These systems are critical for delivering real-time market data and executing orders with speed, reliability, and precision. By enabling our strategies and traders to operate seamlessly, the team plays a pivotal role in supporting QRT's rapidly expanding business needs and ensuring we maintain our competitive edge through world-class trading technology. Your future role within QRT - A key member of the development team building and enhancing low latency algorithmic trading strategies for QRT - Coverage of all aspects of the algorithmic trading strategy, including the exchange price feeds, financial indicators, market making algorithms, back-testing engine, tick data management, exchange simulators and trading gateways, as well as support of the production environment and the processes surrounding it - You will work closely with a range of investment management professionals including quantitative analysts/developers, traders and operations staff, in order to design and develop cutting edge systems to keep QRT's business at",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:76dbe98122165b94addf67d73a1ffd18:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.8553a0bf7b831667a4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "76dbe98122165b94addf67d73a1ffd18",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Market Access Developer - C++ New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Market Access is responsible for building and maintaining the cutting-edge technology systems that connect QRT to global financial markets, brokers, and third-party providers. These systems are critical for delivering real-time market data and executing orders with speed, reliability, and precision. By enabling our strategies and traders to operate seamlessly, the team plays a pivotal role in supporting QRT's rapidly expanding business needs and ensuring we maintain our competitive edge through world-class trading technology. Your future role within QRT - A key member of the development team building and enhancing low latency algorithmic trading strategies for QRT - Coverage of all aspects of the algorithmic trading strategy, including the exchange price feeds, financial indicators, market making algorithms, back-testing engine, tick data management, exchange simulators and trading gateways, as well as support of the production environment and the processes surrounding it - You will work closely with a range of investment management professionals including quantitative analysts/developers, traders and operations staff, in order to design and develop cutting edge systems to keep QRT's business at",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:76dbe98122165b94addf67d73a1ffd18:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f8d954b1454f721587",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "76dbe98122165b94addf67d73a1ffd18",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Market Access Developer - C++ New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Market Access is responsible for building and maintaining the cutting-edge technology systems that connect QRT to global financial markets, brokers, and third-party providers. These systems are critical for delivering real-time market data and executing orders with speed, reliability, and precision. By enabling our strategies and traders to operate seamlessly, the team plays a pivotal role in supporting QRT's rapidly expanding business needs and ensuring we maintain our competitive edge through world-class trading technology. Your future role within QRT - A key member of the development team building and enhancing low latency algorithmic trading strategies for QRT - Coverage of all aspects of the algorithmic trading strategy, including the exchange price feeds, financial indicators, market making algorithms, back-testing engine, tick data management, exchange simulators and trading gateways, as well as support of the production environment and the processes surrounding it - You will work closely with a range of investment management professionals including quantitative analysts/developers, traders and operations staff, in order to design and develop cutting edge systems to keep QRT's business at",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:76dbe98122165b94addf67d73a1ffd18:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.338f7408872e14c461",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "76dbe98122165b94addf67d73a1ffd18",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:76dbe98122165b94addf67d73a1ffd18:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5f83747f7b7b82dbbe",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "76dbe98122165b94addf67d73a1ffd18",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:76dbe98122165b94addf67d73a1ffd18:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f7f05009c5135f8f50",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "76dbe98122165b94addf67d73a1ffd18",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:76dbe98122165b94addf67d73a1ffd18:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.08799660f6511b9546",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "76dbe98122165b94addf67d73a1ffd18",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.99b491dcd88c5570d0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "76dbe98122165b94addf67d73a1ffd18",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f01ebefc866d7f1479",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "76dbe98122165b94addf67d73a1ffd18",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "cb2d4c07f8c8fe85515053c806c2b357",
      "title": "Senior Technical Business Analyst",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-10-08T09:34:11.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8201764002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Technical Business Analyst London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Compliance Technology team are responsible for designing and implementing scalable solutions that enable QRT to meet its regulatory obligations and maintain robust control frameworks. This role collaborates with compliance, technology, and business stakeholders to deliver scalable and effective solutions that support regulatory requirements, operational controls, and business goals. The successful candidate will combine strong technical business analysis skills with process design expertise. Responsibilities include gathering and analysing requirements, working closely with developers to translate business needs into technical solutions, and ensuring delivery of these solutions into production. The role also includes aspects of Scrum Master responsibilities, ensuring agile practices are followed and delivery is well-coordinated. Your Future Role within QRT - Work with Trade Surveillance and Electronic Communications Surveillance teams to gather and document business and regulatory requirements. - Translate surveillance requirements into clear functional specifications, including alert logic, data inputs, workflows, and control expectations. - Support the analysis and improvement of surveillance processes, helping identify control gaps and efficiency opportunities. - Partner with engineering teams to ensure requirements are correctly implemented and",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "masters",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.06ba613c530fa22953",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cb2d4c07f8c8fe85515053c806c2b357",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Technical Business Analyst London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Compliance Technology team are responsible for designing and implementing scalable solutions that enable QRT to meet its regulatory obligations and maintain robust control frameworks. This role collaborates with compliance, technology, and business stakeholders to deliver scalable and effective solutions that support regulatory requirements, operational controls, and business goals. The successful candidate will combine strong technical business analysis skills with process design expertise. Responsibilities include gathering and analysing requirements, working closely with developers to translate business needs into technical solutions, and ensuring delivery of these solutions into production. The role also includes aspects of Scrum Master responsibilities, ensuring agile practices are followed and delivery is well-coordinated. Your Future Role within QRT - Work with Trade Surveillance and Electronic Communications Surveillance teams to gather and document business and regulatory requirements. - Translate surveillance requirements into clear functional specifications, including alert logic, data inputs, workflows, and control expectations. - Support the analysis and improvement of surveillance processes, helping identify control gaps and efficiency opportunities. - Partner with engineering teams to ensure requirements are correctly implemented and",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cb2d4c07f8c8fe85515053c806c2b357:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b85aa8e1a6f68575fc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cb2d4c07f8c8fe85515053c806c2b357",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Technical Business Analyst London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Compliance Technology team are responsible for designing and implementing scalable solutions that enable QRT to meet its regulatory obligations and maintain robust control frameworks. This role collaborates with compliance, technology, and business stakeholders to deliver scalable and effective solutions that support regulatory requirements, operational controls, and business goals. The successful candidate will combine strong technical business analysis skills with process design expertise. Responsibilities include gathering and analysing requirements, working closely with developers to translate business needs into technical solutions, and ensuring delivery of these solutions into production. The role also includes aspects of Scrum Master responsibilities, ensuring agile practices are followed and delivery is well-coordinated. Your Future Role within QRT - Work with Trade Surveillance and Electronic Communications Surveillance teams to gather and document business and regulatory requirements. - Translate surveillance requirements into clear functional specifications, including alert logic, data inputs, workflows, and control expectations. - Support the analysis and improvement of surveillance processes, helping identify control gaps and efficiency opportunities. - Partner with engineering teams to ensure requirements are correctly implemented and",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cb2d4c07f8c8fe85515053c806c2b357:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e598214fef50af2867",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cb2d4c07f8c8fe85515053c806c2b357",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Technical Business Analyst London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Compliance Technology team are responsible for designing and implementing scalable solutions that enable QRT to meet its regulatory obligations and maintain robust control frameworks. This role collaborates with compliance, technology, and business stakeholders to deliver scalable and effective solutions that support regulatory requirements, operational controls, and business goals. The successful candidate will combine strong technical business analysis skills with process design expertise. Responsibilities include gathering and analysing requirements, working closely with developers to translate business needs into technical solutions, and ensuring delivery of these solutions into production. The role also includes aspects of Scrum Master responsibilities, ensuring agile practices are followed and delivery is well-coordinated. Your Future Role within QRT - Work with Trade Surveillance and Electronic Communications Surveillance teams to gather and document business and regulatory requirements. - Translate surveillance requirements into clear functional specifications, including alert logic, data inputs, workflows, and control expectations. - Support the analysis and improvement of surveillance processes, helping identify control gaps and efficiency opportunities. - Partner with engineering teams to ensure requirements are correctly implemented and",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cb2d4c07f8c8fe85515053c806c2b357:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.83f31500a5cac9f7ae",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cb2d4c07f8c8fe85515053c806c2b357",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cb2d4c07f8c8fe85515053c806c2b357:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9012b6a79b6ece1ceb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cb2d4c07f8c8fe85515053c806c2b357",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cb2d4c07f8c8fe85515053c806c2b357:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b99b62412cd7b65efe",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cb2d4c07f8c8fe85515053c806c2b357",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cb2d4c07f8c8fe85515053c806c2b357:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.10cdcfff8b0a8254b9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cb2d4c07f8c8fe85515053c806c2b357",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.69105891b94426158a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cb2d4c07f8c8fe85515053c806c2b357",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e24afdcde358b7859d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cb2d4c07f8c8fe85515053c806c2b357",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "cd0ac154945738237a9b34e7b2f38a5b",
      "title": "Senior Security Assurance Engineer (Internal Penetration Testing)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-05T08:58:27.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8579919002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Security Assurance Engineer (Internal Penetration Testing) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The Security Assurance team is responsible for identifying, assessing, and validating security risks across QRT's technology environment. The team works closely with Security Engineers, Software Engineers, Infrastructure Engineers, Cloud Engineers, and Technology stakeholders to evaluate the effectiveness of security controls and strengthen the firm's overall security posture through adversarial testing and assurance activities. Your Future Role within QRT You will: - Conduct internal penetration testing across a wide range of systems, including trading infrastructure, cloud platforms, APIs, and business applications in both Windows and Linux environments. - Perform red team-style assessments and adversarial simulations to identify weaknesses in detection, response, and resilience capabilities. - Design and execute security assurance strategies to validate the effectiveness of security controls across applications, infrastructure, and cloud environments. - Coordinate external penetration testing engagements with third-party security vendors, including scoping, execution oversight, validation of findings, and remediation tracking across cloud, infrastructure, and application environments. - Identify, exploit, and clearly document vulnerabilities, providing actionable remediation guidance tailored to engineering teams. - Collaborate with product security",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.1c8a310a48bdabd939",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cd0ac154945738237a9b34e7b2f38a5b",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Security Assurance Engineer (Internal Penetration Testing) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The Security Assurance team is responsible for identifying, assessing, and validating security risks across QRT's technology environment. The team works closely with Security Engineers, Software Engineers, Infrastructure Engineers, Cloud Engineers, and Technology stakeholders to evaluate the effectiveness of security controls and strengthen the firm's overall security posture through adversarial testing and assurance activities. Your Future Role within QRT You will: - Conduct internal penetration testing across a wide range of systems, including trading infrastructure, cloud platforms, APIs, and business applications in both Windows and Linux environments. - Perform red team-style assessments and adversarial simulations to identify weaknesses in detection, response, and resilience capabilities. - Design and execute security assurance strategies to validate the effectiveness of security controls across applications, infrastructure, and cloud environments. - Coordinate external penetration testing engagements with third-party security vendors, including scoping, execution oversight, validation of findings, and remediation tracking across cloud, infrastructure, and application environments. - Identify, exploit, and clearly document vulnerabilities, providing actionable remediation guidance tailored to engineering teams. - Collaborate with product security",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cd0ac154945738237a9b34e7b2f38a5b:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.5c3df20a942e8b6c94",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cd0ac154945738237a9b34e7b2f38a5b",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Security Assurance Engineer (Internal Penetration Testing) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The Security Assurance team is responsible for identifying, assessing, and validating security risks across QRT's technology environment. The team works closely with Security Engineers, Software Engineers, Infrastructure Engineers, Cloud Engineers, and Technology stakeholders to evaluate the effectiveness of security controls and strengthen the firm's overall security posture through adversarial testing and assurance activities. Your Future Role within QRT You will: - Conduct internal penetration testing across a wide range of systems, including trading infrastructure, cloud platforms, APIs, and business applications in both Windows and Linux environments. - Perform red team-style assessments and adversarial simulations to identify weaknesses in detection, response, and resilience capabilities. - Design and execute security assurance strategies to validate the effectiveness of security controls across applications, infrastructure, and cloud environments. - Coordinate external penetration testing engagements with third-party security vendors, including scoping, execution oversight, validation of findings, and remediation tracking across cloud, infrastructure, and application environments. - Identify, exploit, and clearly document vulnerabilities, providing actionable remediation guidance tailored to engineering teams. - Collaborate with product security",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cd0ac154945738237a9b34e7b2f38a5b:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.cab6b9822112357b10",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cd0ac154945738237a9b34e7b2f38a5b",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Security Assurance Engineer (Internal Penetration Testing) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The Security Assurance team is responsible for identifying, assessing, and validating security risks across QRT's technology environment. The team works closely with Security Engineers, Software Engineers, Infrastructure Engineers, Cloud Engineers, and Technology stakeholders to evaluate the effectiveness of security controls and strengthen the firm's overall security posture through adversarial testing and assurance activities. Your Future Role within QRT You will: - Conduct internal penetration testing across a wide range of systems, including trading infrastructure, cloud platforms, APIs, and business applications in both Windows and Linux environments. - Perform red team-style assessments and adversarial simulations to identify weaknesses in detection, response, and resilience capabilities. - Design and execute security assurance strategies to validate the effectiveness of security controls across applications, infrastructure, and cloud environments. - Coordinate external penetration testing engagements with third-party security vendors, including scoping, execution oversight, validation of findings, and remediation tracking across cloud, infrastructure, and application environments. - Identify, exploit, and clearly document vulnerabilities, providing actionable remediation guidance tailored to engineering teams. - Collaborate with product security",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cd0ac154945738237a9b34e7b2f38a5b:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4d3a1b2f606e0e3e76",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cd0ac154945738237a9b34e7b2f38a5b",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cd0ac154945738237a9b34e7b2f38a5b:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8c49c1c9aa0f1ffa30",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cd0ac154945738237a9b34e7b2f38a5b",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cd0ac154945738237a9b34e7b2f38a5b:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9690f0a34416354e2e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cd0ac154945738237a9b34e7b2f38a5b",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:cd0ac154945738237a9b34e7b2f38a5b:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.035d482353ff30373d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cd0ac154945738237a9b34e7b2f38a5b",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b3b0f47f0d419b039f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cd0ac154945738237a9b34e7b2f38a5b",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d547acbc685799736d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "cd0ac154945738237a9b34e7b2f38a5b",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "0ccf85b4ff8a33cbc01af93af69c2f74",
      "title": "Linux Patching Programme Manager",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-09T15:35:15.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8584033002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Linux Patching Programme Manager London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Infrastructure team is responsible for the management, security, and reliability of QRT's global technology platforms. The team works closely with Infrastructure Engineering, Security, Operations, Compliance, and Trading Support teams to ensure infrastructure services remain secure, compliant, and operationally resilient. This role focuses on coordinating Linux patching and lifecycle management activities across a global Linux estate, ensuring security, stability, and compliance requirements are met while minimising operational risk. Your Future Role within QRT You will: - Own and coordinate Linux patching and security lifecycle activities across the global Linux estate. - Work with Infrastructure, Engineering, Operations, Trading Support, and Security teams to plan and execute patching activities aligned with business requirements. - Coordinate patching schedules, priorities, dependencies, and remediation activities across multiple stakeholders. - Support change management processes to ensure patching activities are delivered in a controlled and auditable manner. - Maintain documentation covering patching policies, schedules, ownership, processes, and escalation paths. - Collaborate with engineering teams to improve automation, tooling, reporting, and patch deployment processes. - Coordinate patching activities delivered by third-party service",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "other",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.37aee2787ea2767201",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0ccf85b4ff8a33cbc01af93af69c2f74",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Linux Patching Programme Manager London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Infrastructure team is responsible for the management, security, and reliability of QRT's global technology platforms. The team works closely with Infrastructure Engineering, Security, Operations, Compliance, and Trading Support teams to ensure infrastructure services remain secure, compliant, and operationally resilient. This role focuses on coordinating Linux patching and lifecycle management activities across a global Linux estate, ensuring security, stability, and compliance requirements are met while minimising operational risk. Your Future Role within QRT You will: - Own and coordinate Linux patching and security lifecycle activities across the global Linux estate. - Work with Infrastructure, Engineering, Operations, Trading Support, and Security teams to plan and execute patching activities aligned with business requirements. - Coordinate patching schedules, priorities, dependencies, and remediation activities across multiple stakeholders. - Support change management processes to ensure patching activities are delivered in a controlled and auditable manner. - Maintain documentation covering patching policies, schedules, ownership, processes, and escalation paths. - Collaborate with engineering teams to improve automation, tooling, reporting, and patch deployment processes. - Coordinate patching activities delivered by third-party service",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0ccf85b4ff8a33cbc01af93af69c2f74:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9c470d9fc47d7acd9b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0ccf85b4ff8a33cbc01af93af69c2f74",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Linux Patching Programme Manager London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Infrastructure team is responsible for the management, security, and reliability of QRT's global technology platforms. The team works closely with Infrastructure Engineering, Security, Operations, Compliance, and Trading Support teams to ensure infrastructure services remain secure, compliant, and operationally resilient. This role focuses on coordinating Linux patching and lifecycle management activities across a global Linux estate, ensuring security, stability, and compliance requirements are met while minimising operational risk. Your Future Role within QRT You will: - Own and coordinate Linux patching and security lifecycle activities across the global Linux estate. - Work with Infrastructure, Engineering, Operations, Trading Support, and Security teams to plan and execute patching activities aligned with business requirements. - Coordinate patching schedules, priorities, dependencies, and remediation activities across multiple stakeholders. - Support change management processes to ensure patching activities are delivered in a controlled and auditable manner. - Maintain documentation covering patching policies, schedules, ownership, processes, and escalation paths. - Collaborate with engineering teams to improve automation, tooling, reporting, and patch deployment processes. - Coordinate patching activities delivered by third-party service",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0ccf85b4ff8a33cbc01af93af69c2f74:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e0927757191c6511d0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0ccf85b4ff8a33cbc01af93af69c2f74",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Linux Patching Programme Manager London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Infrastructure team is responsible for the management, security, and reliability of QRT's global technology platforms. The team works closely with Infrastructure Engineering, Security, Operations, Compliance, and Trading Support teams to ensure infrastructure services remain secure, compliant, and operationally resilient. This role focuses on coordinating Linux patching and lifecycle management activities across a global Linux estate, ensuring security, stability, and compliance requirements are met while minimising operational risk. Your Future Role within QRT You will: - Own and coordinate Linux patching and security lifecycle activities across the global Linux estate. - Work with Infrastructure, Engineering, Operations, Trading Support, and Security teams to plan and execute patching activities aligned with business requirements. - Coordinate patching schedules, priorities, dependencies, and remediation activities across multiple stakeholders. - Support change management processes to ensure patching activities are delivered in a controlled and auditable manner. - Maintain documentation covering patching policies, schedules, ownership, processes, and escalation paths. - Collaborate with engineering teams to improve automation, tooling, reporting, and patch deployment processes. - Coordinate patching activities delivered by third-party service",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0ccf85b4ff8a33cbc01af93af69c2f74:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.29df02f9c15fcd0550",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0ccf85b4ff8a33cbc01af93af69c2f74",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0ccf85b4ff8a33cbc01af93af69c2f74:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.57d9df6d79570aa964",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0ccf85b4ff8a33cbc01af93af69c2f74",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0ccf85b4ff8a33cbc01af93af69c2f74:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.67c0cb3608e6f32676",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0ccf85b4ff8a33cbc01af93af69c2f74",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0ccf85b4ff8a33cbc01af93af69c2f74:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4b43aaf2d8341318ed",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0ccf85b4ff8a33cbc01af93af69c2f74",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.92f1adb02183485e51",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0ccf85b4ff8a33cbc01af93af69c2f74",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.94894efce85453d462",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0ccf85b4ff8a33cbc01af93af69c2f74",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "198ff5430226a4edd47aac40e91e2e13",
      "title": "Operations Associate, Rates",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-21T08:43:36.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8516272002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Operations Associate, Rates London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as an Operations Associate in London, supporting trading desks and ensuring the integrity of post-trade processes across Rates. Your future role within QRT includes: - Supporting trading desks with end-to-end lifecycle management of Interest Rate Derivatives. - Monitoring and validating trade capture and bookings, ensuring accuracy across front-to-back systems - Managing trade confirmations via platforms such as MarkitWire, ensuring timely matching and resolution of discrepancies - Overseeing clearing processes across CCPs (e.g. LCH, CME), ensuring trades are accurately processed and maintained - Managing lifecycle events including rate resets, fixings, novations, compressions, and terminations - Investigating and resolving trade breaks across internal systems and external counterparties, including prime brokers and clearing brokers - Monitoring settlements and cash flows related to rates products, ensuring timely and accurate processing - Liaising closely with traders and external counterparties to resolve issues and support trading activity - Supporting new product onboarding and process improvements, working closely with Technology and the COO function - Contributing to the enhancement of operational controls, processes, and automation",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "operations",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.76ee27fbe567cb98fc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "198ff5430226a4edd47aac40e91e2e13",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate, Rates London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as an Operations Associate in London, supporting trading desks and ensuring the integrity of post-trade processes across Rates. Your future role within QRT includes: - Supporting trading desks with end-to-end lifecycle management of Interest Rate Derivatives. - Monitoring and validating trade capture and bookings, ensuring accuracy across front-to-back systems - Managing trade confirmations via platforms such as MarkitWire, ensuring timely matching and resolution of discrepancies - Overseeing clearing processes across CCPs (e.g. LCH, CME), ensuring trades are accurately processed and maintained - Managing lifecycle events including rate resets, fixings, novations, compressions, and terminations - Investigating and resolving trade breaks across internal systems and external counterparties, including prime brokers and clearing brokers - Monitoring settlements and cash flows related to rates products, ensuring timely and accurate processing - Liaising closely with traders and external counterparties to resolve issues and support trading activity - Supporting new product onboarding and process improvements, working closely with Technology and the COO function - Contributing to the enhancement of operational controls, processes, and automation",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:198ff5430226a4edd47aac40e91e2e13:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.869c2c1aecf225a1f9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "198ff5430226a4edd47aac40e91e2e13",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate, Rates London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as an Operations Associate in London, supporting trading desks and ensuring the integrity of post-trade processes across Rates. Your future role within QRT includes: - Supporting trading desks with end-to-end lifecycle management of Interest Rate Derivatives. - Monitoring and validating trade capture and bookings, ensuring accuracy across front-to-back systems - Managing trade confirmations via platforms such as MarkitWire, ensuring timely matching and resolution of discrepancies - Overseeing clearing processes across CCPs (e.g. LCH, CME), ensuring trades are accurately processed and maintained - Managing lifecycle events including rate resets, fixings, novations, compressions, and terminations - Investigating and resolving trade breaks across internal systems and external counterparties, including prime brokers and clearing brokers - Monitoring settlements and cash flows related to rates products, ensuring timely and accurate processing - Liaising closely with traders and external counterparties to resolve issues and support trading activity - Supporting new product onboarding and process improvements, working closely with Technology and the COO function - Contributing to the enhancement of operational controls, processes, and automation",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:198ff5430226a4edd47aac40e91e2e13:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f36e14c0d98b83d74d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "198ff5430226a4edd47aac40e91e2e13",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate, Rates London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as an Operations Associate in London, supporting trading desks and ensuring the integrity of post-trade processes across Rates. Your future role within QRT includes: - Supporting trading desks with end-to-end lifecycle management of Interest Rate Derivatives. - Monitoring and validating trade capture and bookings, ensuring accuracy across front-to-back systems - Managing trade confirmations via platforms such as MarkitWire, ensuring timely matching and resolution of discrepancies - Overseeing clearing processes across CCPs (e.g. LCH, CME), ensuring trades are accurately processed and maintained - Managing lifecycle events including rate resets, fixings, novations, compressions, and terminations - Investigating and resolving trade breaks across internal systems and external counterparties, including prime brokers and clearing brokers - Monitoring settlements and cash flows related to rates products, ensuring timely and accurate processing - Liaising closely with traders and external counterparties to resolve issues and support trading activity - Supporting new product onboarding and process improvements, working closely with Technology and the COO function - Contributing to the enhancement of operational controls, processes, and automation",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:198ff5430226a4edd47aac40e91e2e13:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.315f2ad41769807a72",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "198ff5430226a4edd47aac40e91e2e13",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:198ff5430226a4edd47aac40e91e2e13:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.84680fd80888edc87f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "198ff5430226a4edd47aac40e91e2e13",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:198ff5430226a4edd47aac40e91e2e13:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9e8d0796b2c92c8538",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "198ff5430226a4edd47aac40e91e2e13",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:198ff5430226a4edd47aac40e91e2e13:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1ef31b336996c4043f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "198ff5430226a4edd47aac40e91e2e13",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.775610363713442599",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "198ff5430226a4edd47aac40e91e2e13",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.fa3b29b3016019e474",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "198ff5430226a4edd47aac40e91e2e13",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "40dcc3ed8ae893b742bf0128f5b00fc2",
      "title": "Senior Software Engineer - Market Access",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Shanghai",
      "country": "CN",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-09-24T06:00:35.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8183365002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Software Engineer - Market Access Shanghai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT We are seeking a hands-on Senior Software Engineer to join our Market Access team to design and develop cutting-edge, high-performance systems that power our trading capabilities. As a senior engineer, you will: - Architect and Develop : Design, develop, and maintain high-performance C++ applications for trading systems, ensuring scalability, robustness, and low-latency performance. - Collaborate : Work closely with FPGA engineers, DevOps professionals, and other software engineers to deliver integrated solutions that meet the needs of our trading environment. - Code Excellence : Participate in code reviews, debugging, and rigorous optimization to ensure the delivery of high-quality, maintainable code. - Drive Architecture : Lead and contribute to architectural discussions, ensuring the evolution of our software systems aligns with business and technological goals. - Optimize Systems : Partner with system administrators and network engineers to fine-tune deployment environments for maximum efficiency and performance. - Mentor and Innovate : Mentor team members in best practices and contribute to the continuous improvement of our software development processes. Your",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.34a4a86e950570a58a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40dcc3ed8ae893b742bf0128f5b00fc2",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Software Engineer - Market Access Shanghai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT We are seeking a hands-on Senior Software Engineer to join our Market Access team to design and develop cutting-edge, high-performance systems that power our trading capabilities. As a senior engineer, you will: - Architect and Develop : Design, develop, and maintain high-performance C++ applications for trading systems, ensuring scalability, robustness, and low-latency performance. - Collaborate : Work closely with FPGA engineers, DevOps professionals, and other software engineers to deliver integrated solutions that meet the needs of our trading environment. - Code Excellence : Participate in code reviews, debugging, and rigorous optimization to ensure the delivery of high-quality, maintainable code. - Drive Architecture : Lead and contribute to architectural discussions, ensuring the evolution of our software systems aligns with business and technological goals. - Optimize Systems : Partner with system administrators and network engineers to fine-tune deployment environments for maximum efficiency and performance. - Mentor and Innovate : Mentor team members in best practices and contribute to the continuous improvement of our software development processes. Your",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:40dcc3ed8ae893b742bf0128f5b00fc2:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e95eb0b2ca7e585a1b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40dcc3ed8ae893b742bf0128f5b00fc2",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Software Engineer - Market Access Shanghai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT We are seeking a hands-on Senior Software Engineer to join our Market Access team to design and develop cutting-edge, high-performance systems that power our trading capabilities. As a senior engineer, you will: - Architect and Develop : Design, develop, and maintain high-performance C++ applications for trading systems, ensuring scalability, robustness, and low-latency performance. - Collaborate : Work closely with FPGA engineers, DevOps professionals, and other software engineers to deliver integrated solutions that meet the needs of our trading environment. - Code Excellence : Participate in code reviews, debugging, and rigorous optimization to ensure the delivery of high-quality, maintainable code. - Drive Architecture : Lead and contribute to architectural discussions, ensuring the evolution of our software systems aligns with business and technological goals. - Optimize Systems : Partner with system administrators and network engineers to fine-tune deployment environments for maximum efficiency and performance. - Mentor and Innovate : Mentor team members in best practices and contribute to the continuous improvement of our software development processes. Your",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:40dcc3ed8ae893b742bf0128f5b00fc2:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f6110151f835d39443",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40dcc3ed8ae893b742bf0128f5b00fc2",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Software Engineer - Market Access Shanghai Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT We are seeking a hands-on Senior Software Engineer to join our Market Access team to design and develop cutting-edge, high-performance systems that power our trading capabilities. As a senior engineer, you will: - Architect and Develop : Design, develop, and maintain high-performance C++ applications for trading systems, ensuring scalability, robustness, and low-latency performance. - Collaborate : Work closely with FPGA engineers, DevOps professionals, and other software engineers to deliver integrated solutions that meet the needs of our trading environment. - Code Excellence : Participate in code reviews, debugging, and rigorous optimization to ensure the delivery of high-quality, maintainable code. - Drive Architecture : Lead and contribute to architectural discussions, ensuring the evolution of our software systems aligns with business and technological goals. - Optimize Systems : Partner with system administrators and network engineers to fine-tune deployment environments for maximum efficiency and performance. - Mentor and Innovate : Mentor team members in best practices and contribute to the continuous improvement of our software development processes. Your",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:40dcc3ed8ae893b742bf0128f5b00fc2:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.376b6a9e3b2c2b3458",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40dcc3ed8ae893b742bf0128f5b00fc2",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:40dcc3ed8ae893b742bf0128f5b00fc2:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4f113259ba0dcec47b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40dcc3ed8ae893b742bf0128f5b00fc2",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:40dcc3ed8ae893b742bf0128f5b00fc2:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f5c7a1a955a843d8d1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40dcc3ed8ae893b742bf0128f5b00fc2",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:40dcc3ed8ae893b742bf0128f5b00fc2:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.022a58cea58149c3d9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40dcc3ed8ae893b742bf0128f5b00fc2",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9e8d655455e7ee2a17",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40dcc3ed8ae893b742bf0128f5b00fc2",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ca81a272068930f183",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40dcc3ed8ae893b742bf0128f5b00fc2",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "866f13a6f6a5ac8db83deb875f37f740",
      "title": "Technical Author & Process Analyst (Network Infrastructure)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-01-20T11:08:31.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8380973002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Technical Author & Process Analyst (Network Infrastructure) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Infrastructure team designs, builds, and supports the networking environment that underpins QRT's global technology platforms. The team ensures secure, scalable, and resilient connectivity across all regions and collaborates closely with Infrastructure, Security, and Engineering groups. Your Future Role within QRT You will take ownership of the Network Infrastructure team's documentation and process library within Confluence. The role combines technical writing, content governance, and process analysis to ensure clarity, consistency, and continuous improvement in how information and workflows are structured. - Review and assess existing Confluence documentation to identify outdated, duplicated, or unclear content - Redesign and maintain a logical structure for the Confluence space - Develop and apply documentation templates, naming conventions, and style standards - Rewrite and consolidate content to ensure technical accuracy and consistency - Define documentation ownership and review cycles - Create supporting visual materials such as diagrams and flowcharts - Work with Engineers and Project Managers to capture and document operational and delivery processes - Identify inefficiencies and improvement opportunities within current workflows - Contribute",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.8ddce42526d2019ffe",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "866f13a6f6a5ac8db83deb875f37f740",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Technical Author & Process Analyst (Network Infrastructure) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Infrastructure team designs, builds, and supports the networking environment that underpins QRT's global technology platforms. The team ensures secure, scalable, and resilient connectivity across all regions and collaborates closely with Infrastructure, Security, and Engineering groups. Your Future Role within QRT You will take ownership of the Network Infrastructure team's documentation and process library within Confluence. The role combines technical writing, content governance, and process analysis to ensure clarity, consistency, and continuous improvement in how information and workflows are structured. - Review and assess existing Confluence documentation to identify outdated, duplicated, or unclear content - Redesign and maintain a logical structure for the Confluence space - Develop and apply documentation templates, naming conventions, and style standards - Rewrite and consolidate content to ensure technical accuracy and consistency - Define documentation ownership and review cycles - Create supporting visual materials such as diagrams and flowcharts - Work with Engineers and Project Managers to capture and document operational and delivery processes - Identify inefficiencies and improvement opportunities within current workflows - Contribute",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:866f13a6f6a5ac8db83deb875f37f740:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.bf297cd904b5a09113",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "866f13a6f6a5ac8db83deb875f37f740",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Technical Author & Process Analyst (Network Infrastructure) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Infrastructure team designs, builds, and supports the networking environment that underpins QRT's global technology platforms. The team ensures secure, scalable, and resilient connectivity across all regions and collaborates closely with Infrastructure, Security, and Engineering groups. Your Future Role within QRT You will take ownership of the Network Infrastructure team's documentation and process library within Confluence. The role combines technical writing, content governance, and process analysis to ensure clarity, consistency, and continuous improvement in how information and workflows are structured. - Review and assess existing Confluence documentation to identify outdated, duplicated, or unclear content - Redesign and maintain a logical structure for the Confluence space - Develop and apply documentation templates, naming conventions, and style standards - Rewrite and consolidate content to ensure technical accuracy and consistency - Define documentation ownership and review cycles - Create supporting visual materials such as diagrams and flowcharts - Work with Engineers and Project Managers to capture and document operational and delivery processes - Identify inefficiencies and improvement opportunities within current workflows - Contribute",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:866f13a6f6a5ac8db83deb875f37f740:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.eba80b1ff1a3e4ea22",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "866f13a6f6a5ac8db83deb875f37f740",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Technical Author & Process Analyst (Network Infrastructure) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Infrastructure team designs, builds, and supports the networking environment that underpins QRT's global technology platforms. The team ensures secure, scalable, and resilient connectivity across all regions and collaborates closely with Infrastructure, Security, and Engineering groups. Your Future Role within QRT You will take ownership of the Network Infrastructure team's documentation and process library within Confluence. The role combines technical writing, content governance, and process analysis to ensure clarity, consistency, and continuous improvement in how information and workflows are structured. - Review and assess existing Confluence documentation to identify outdated, duplicated, or unclear content - Redesign and maintain a logical structure for the Confluence space - Develop and apply documentation templates, naming conventions, and style standards - Rewrite and consolidate content to ensure technical accuracy and consistency - Define documentation ownership and review cycles - Create supporting visual materials such as diagrams and flowcharts - Work with Engineers and Project Managers to capture and document operational and delivery processes - Identify inefficiencies and improvement opportunities within current workflows - Contribute",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:866f13a6f6a5ac8db83deb875f37f740:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.09023fa9b234c0f4e1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "866f13a6f6a5ac8db83deb875f37f740",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:866f13a6f6a5ac8db83deb875f37f740:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4fc1b51af61bc5452a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "866f13a6f6a5ac8db83deb875f37f740",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:866f13a6f6a5ac8db83deb875f37f740:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9f4bab63014a60dabd",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "866f13a6f6a5ac8db83deb875f37f740",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:866f13a6f6a5ac8db83deb875f37f740:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4d2e57ccba80532ef5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "866f13a6f6a5ac8db83deb875f37f740",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6d29613c14c4cb664d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "866f13a6f6a5ac8db83deb875f37f740",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cd27d2865e7833dea9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "866f13a6f6a5ac8db83deb875f37f740",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "8beef153c82485b39d71cdf2d5d5136d",
      "title": "Quantitative Developer - Crypto (C++)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Zurich",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-01-21T13:19:07.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/7822690002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Quantitative Developer - Crypto (C++) Zurich Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - A key member of the QRT Crypto desk, building and enhancing the quant technology stack for our systematic trading - Building the front-office systems for algorithmic trading, across data, risk, live trading, post-trade, and infrastructure - Working with traders and quants to roll-out, support and automate 24/7 trading strategies - Integrating with DeFi venues, including onboarding real-time on-chain data feeds - Working on greenfield projects as well as QRT's existing sophisticated tech stack - Mentoring junior members of the team and helping to set high quality standards for code Your present skillset - 3-10 years' professional experience - Strong C++ experience, Python skills would be a plus - Background in systematic trading advantageous - Passionate about crypto and DeFi - Very high standards in code quality and good development practices - Knowledge of real-time, robust, scalable and quantitative applications - Ability to architect high-throughput end-to-end systems - Strong team-player and communication skills - Experience with DevOps, CICD, AWS advantageous QRT is an equal opportunity employer.",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.3b7779c0f7192a0bb5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8beef153c82485b39d71cdf2d5d5136d",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Crypto (C++) Zurich Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - A key member of the QRT Crypto desk, building and enhancing the quant technology stack for our systematic trading - Building the front-office systems for algorithmic trading, across data, risk, live trading, post-trade, and infrastructure - Working with traders and quants to roll-out, support and automate 24/7 trading strategies - Integrating with DeFi venues, including onboarding real-time on-chain data feeds - Working on greenfield projects as well as QRT's existing sophisticated tech stack - Mentoring junior members of the team and helping to set high quality standards for code Your present skillset - 3-10 years' professional experience - Strong C++ experience, Python skills would be a plus - Background in systematic trading advantageous - Passionate about crypto and DeFi - Very high standards in code quality and good development practices - Knowledge of real-time, robust, scalable and quantitative applications - Ability to architect high-throughput end-to-end systems - Strong team-player and communication skills - Experience with DevOps, CICD, AWS advantageous QRT is an equal opportunity employer.",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8beef153c82485b39d71cdf2d5d5136d:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d5f69fc96f37986ea5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8beef153c82485b39d71cdf2d5d5136d",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Crypto (C++) Zurich Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - A key member of the QRT Crypto desk, building and enhancing the quant technology stack for our systematic trading - Building the front-office systems for algorithmic trading, across data, risk, live trading, post-trade, and infrastructure - Working with traders and quants to roll-out, support and automate 24/7 trading strategies - Integrating with DeFi venues, including onboarding real-time on-chain data feeds - Working on greenfield projects as well as QRT's existing sophisticated tech stack - Mentoring junior members of the team and helping to set high quality standards for code Your present skillset - 3-10 years' professional experience - Strong C++ experience, Python skills would be a plus - Background in systematic trading advantageous - Passionate about crypto and DeFi - Very high standards in code quality and good development practices - Knowledge of real-time, robust, scalable and quantitative applications - Ability to architect high-throughput end-to-end systems - Strong team-player and communication skills - Experience with DevOps, CICD, AWS advantageous QRT is an equal opportunity employer.",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8beef153c82485b39d71cdf2d5d5136d:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.ee5cccf7114795391d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8beef153c82485b39d71cdf2d5d5136d",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Crypto (C++) Zurich Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT - A key member of the QRT Crypto desk, building and enhancing the quant technology stack for our systematic trading - Building the front-office systems for algorithmic trading, across data, risk, live trading, post-trade, and infrastructure - Working with traders and quants to roll-out, support and automate 24/7 trading strategies - Integrating with DeFi venues, including onboarding real-time on-chain data feeds - Working on greenfield projects as well as QRT's existing sophisticated tech stack - Mentoring junior members of the team and helping to set high quality standards for code Your present skillset - 3-10 years' professional experience - Strong C++ experience, Python skills would be a plus - Background in systematic trading advantageous - Passionate about crypto and DeFi - Very high standards in code quality and good development practices - Knowledge of real-time, robust, scalable and quantitative applications - Ability to architect high-throughput end-to-end systems - Strong team-player and communication skills - Experience with DevOps, CICD, AWS advantageous QRT is an equal opportunity employer.",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8beef153c82485b39d71cdf2d5d5136d:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.33f782bacd2f01ec08",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8beef153c82485b39d71cdf2d5d5136d",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8beef153c82485b39d71cdf2d5d5136d:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.74ba3cdeaaa1371b35",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8beef153c82485b39d71cdf2d5d5136d",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8beef153c82485b39d71cdf2d5d5136d:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.aa7f0228025ab97c51",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8beef153c82485b39d71cdf2d5d5136d",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8beef153c82485b39d71cdf2d5d5136d:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6469c382b9b0072e2f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8beef153c82485b39d71cdf2d5d5136d",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9276151ac960bc6b00",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8beef153c82485b39d71cdf2d5d5136d",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.caaa1e38fef6745292",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8beef153c82485b39d71cdf2d5d5136d",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "8d83a270713bfb6beda07fe78a4d98d0",
      "title": "Senior Security Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-28T03:20:26.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8517789002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Security Engineer Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT As a Senior Security Engineer, you will play a hands-on role in building, operating, uplifting, and evolving core security platforms and controls across hybrid, multicloud, and on-prem environments. You will act as a subject matter expert for key security solutions, ensuring security controls are observable, scalable, and well integrated across the wider technology ecosystem. You will actively partner with stakeholders, build strong relationships with engineering, infrastructure, and wider business teams, and collaborate across functions to help shape a modern, scalable security function from the ground up. Key Responsibilities - Perform the hands-on implementation, operation, and continuous improvement of core security platforms and key security controls, including responsibility for platform health, effectiveness, and ongoing evolution - Act as subject matter expert for assigned security solutions, championing their roadmap, integration, and operational performance - Support hands-on BAU operation of security products within a global, 24/7 follow-the-sun Security Operations model, including participation in rotational weekend coverage, in depth troubleshooting, and responding to security events that impact system availability, stability, or",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.02bec6bcdc9dd2444c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8d83a270713bfb6beda07fe78a4d98d0",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Security Engineer Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT As a Senior Security Engineer, you will play a hands-on role in building, operating, uplifting, and evolving core security platforms and controls across hybrid, multicloud, and on-prem environments. You will act as a subject matter expert for key security solutions, ensuring security controls are observable, scalable, and well integrated across the wider technology ecosystem. You will actively partner with stakeholders, build strong relationships with engineering, infrastructure, and wider business teams, and collaborate across functions to help shape a modern, scalable security function from the ground up. Key Responsibilities - Perform the hands-on implementation, operation, and continuous improvement of core security platforms and key security controls, including responsibility for platform health, effectiveness, and ongoing evolution - Act as subject matter expert for assigned security solutions, championing their roadmap, integration, and operational performance - Support hands-on BAU operation of security products within a global, 24/7 follow-the-sun Security Operations model, including participation in rotational weekend coverage, in depth troubleshooting, and responding to security events that impact system availability, stability, or",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8d83a270713bfb6beda07fe78a4d98d0:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.66e6c54a8a3bc10603",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8d83a270713bfb6beda07fe78a4d98d0",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Security Engineer Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT As a Senior Security Engineer, you will play a hands-on role in building, operating, uplifting, and evolving core security platforms and controls across hybrid, multicloud, and on-prem environments. You will act as a subject matter expert for key security solutions, ensuring security controls are observable, scalable, and well integrated across the wider technology ecosystem. You will actively partner with stakeholders, build strong relationships with engineering, infrastructure, and wider business teams, and collaborate across functions to help shape a modern, scalable security function from the ground up. Key Responsibilities - Perform the hands-on implementation, operation, and continuous improvement of core security platforms and key security controls, including responsibility for platform health, effectiveness, and ongoing evolution - Act as subject matter expert for assigned security solutions, championing their roadmap, integration, and operational performance - Support hands-on BAU operation of security products within a global, 24/7 follow-the-sun Security Operations model, including participation in rotational weekend coverage, in depth troubleshooting, and responding to security events that impact system availability, stability, or",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8d83a270713bfb6beda07fe78a4d98d0:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f0f6e9743cb3766f4c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8d83a270713bfb6beda07fe78a4d98d0",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Security Engineer Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT As a Senior Security Engineer, you will play a hands-on role in building, operating, uplifting, and evolving core security platforms and controls across hybrid, multicloud, and on-prem environments. You will act as a subject matter expert for key security solutions, ensuring security controls are observable, scalable, and well integrated across the wider technology ecosystem. You will actively partner with stakeholders, build strong relationships with engineering, infrastructure, and wider business teams, and collaborate across functions to help shape a modern, scalable security function from the ground up. Key Responsibilities - Perform the hands-on implementation, operation, and continuous improvement of core security platforms and key security controls, including responsibility for platform health, effectiveness, and ongoing evolution - Act as subject matter expert for assigned security solutions, championing their roadmap, integration, and operational performance - Support hands-on BAU operation of security products within a global, 24/7 follow-the-sun Security Operations model, including participation in rotational weekend coverage, in depth troubleshooting, and responding to security events that impact system availability, stability, or",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8d83a270713bfb6beda07fe78a4d98d0:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6aac23bda271fde159",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8d83a270713bfb6beda07fe78a4d98d0",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8d83a270713bfb6beda07fe78a4d98d0:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9ed1e029cdab2f0fcc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8d83a270713bfb6beda07fe78a4d98d0",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8d83a270713bfb6beda07fe78a4d98d0:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ed984137d06ab6dea0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8d83a270713bfb6beda07fe78a4d98d0",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8d83a270713bfb6beda07fe78a4d98d0:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1dfd1ff9ce8175816a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8d83a270713bfb6beda07fe78a4d98d0",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4567ba489287aea115",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8d83a270713bfb6beda07fe78a4d98d0",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.45c8722eeefebf2caf",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8d83a270713bfb6beda07fe78a4d98d0",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "c1613275ae536e440195296408860e9d",
      "title": "Network Operations Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "New York",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": 150000,
      "salary_max": 200000,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "total_comp",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": "year",
      "base_salary_min": 150000,
      "base_salary_max": 200000,
      "salary_disclosed": true,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-02-02T14:33:57.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8364463002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Network Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Operations team is part of QRT's global infrastructure function and ensures the stability and reliability of the firm's global network. The team provides 24/7 operational support, covering monitoring, incident triage, and troubleshooting across a diverse set of environments including low-latency trading, high-performance computing, and global WAN technologies. Your Future Role within QRT - Ensuring the smooth and efficient operation of the QRT Network in Trading, High Performance Compute, WAN, and other environments. - Using modern monitoring techniques and tooling to detect and react to incidents, ensuring a fast response within the target SLA. - Provide initial triage of incidents reported by internal teams or detected through monitoring tooling. - Support and assist SMEs and vendor support teams through deeper and high priority incidents through to resolution. - Owning end-to-end hardware failure process, collaborating with vendors to obtain replacement parts and put into operation. - Drive proactively detection of potential incidents using monitoring tooling and trend analysis. - Perform operational BAU changes during out of hours change windows such as, ACL updates, port",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 44,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 55,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.0c2948142f4bdd5948",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c1613275ae536e440195296408860e9d",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Network Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Operations team is part of QRT's global infrastructure function and ensures the stability and reliability of the firm's global network. The team provides 24/7 operational support, covering monitoring, incident triage, and troubleshooting across a diverse set of environments including low-latency trading, high-performance computing, and global WAN technologies. Your Future Role within QRT - Ensuring the smooth and efficient operation of the QRT Network in Trading, High Performance Compute, WAN, and other environments. - Using modern monitoring techniques and tooling to detect and react to incidents, ensuring a fast response within the target SLA. - Provide initial triage of incidents reported by internal teams or detected through monitoring tooling. - Support and assist SMEs and vendor support teams through deeper and high priority incidents through to resolution. - Owning end-to-end hardware failure process, collaborating with vendors to obtain replacement parts and put into operation. - Drive proactively detection of potential incidents using monitoring tooling and trend analysis. - Perform operational BAU changes during out of hours change windows such as, ACL updates, port",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c1613275ae536e440195296408860e9d:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.2b7a6ae504aeccc971",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c1613275ae536e440195296408860e9d",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Network Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Operations team is part of QRT's global infrastructure function and ensures the stability and reliability of the firm's global network. The team provides 24/7 operational support, covering monitoring, incident triage, and troubleshooting across a diverse set of environments including low-latency trading, high-performance computing, and global WAN technologies. Your Future Role within QRT - Ensuring the smooth and efficient operation of the QRT Network in Trading, High Performance Compute, WAN, and other environments. - Using modern monitoring techniques and tooling to detect and react to incidents, ensuring a fast response within the target SLA. - Provide initial triage of incidents reported by internal teams or detected through monitoring tooling. - Support and assist SMEs and vendor support teams through deeper and high priority incidents through to resolution. - Owning end-to-end hardware failure process, collaborating with vendors to obtain replacement parts and put into operation. - Drive proactively detection of potential incidents using monitoring tooling and trend analysis. - Perform operational BAU changes during out of hours change windows such as, ACL updates, port",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c1613275ae536e440195296408860e9d:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.3814eec7282711c479",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c1613275ae536e440195296408860e9d",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Network Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Network Operations team is part of QRT's global infrastructure function and ensures the stability and reliability of the firm's global network. The team provides 24/7 operational support, covering monitoring, incident triage, and troubleshooting across a diverse set of environments including low-latency trading, high-performance computing, and global WAN technologies. Your Future Role within QRT - Ensuring the smooth and efficient operation of the QRT Network in Trading, High Performance Compute, WAN, and other environments. - Using modern monitoring techniques and tooling to detect and react to incidents, ensuring a fast response within the target SLA. - Provide initial triage of incidents reported by internal teams or detected through monitoring tooling. - Support and assist SMEs and vendor support teams through deeper and high priority incidents through to resolution. - Owning end-to-end hardware failure process, collaborating with vendors to obtain replacement parts and put into operation. - Drive proactively detection of potential incidents using monitoring tooling and trend analysis. - Perform operational BAU changes during out of hours change windows such as, ACL updates, port",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c1613275ae536e440195296408860e9d:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.36bbdd61cb65a5a9a5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c1613275ae536e440195296408860e9d",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c1613275ae536e440195296408860e9d:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a1c325580bc73a8ce8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c1613275ae536e440195296408860e9d",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c1613275ae536e440195296408860e9d:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f363abb79c2cd3c2a4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c1613275ae536e440195296408860e9d",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:c1613275ae536e440195296408860e9d:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.2ee4370f9a77ab4a3e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c1613275ae536e440195296408860e9d",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ca829070e71460a98e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c1613275ae536e440195296408860e9d",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d657758f43a4a001e5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "c1613275ae536e440195296408860e9d",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
      "title": "Operations Associate",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-02T12:55:58.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8489552002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Operations Associate London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as an Operations Analyst in London, supporting the managed account platform and ensuring the integrity of post-trade processes, reconciliations, and external vendor oversight. Your future role within QRT includes: - Oversee the third-party vendor platform (Arcesium) FINOP services, ensuring accurate and timely operational delivery - Perform start-of-day position reconciliations against fund administrators, investigating and resolving breaks promptly - Conduct T+1 transaction and position reconciliations against prime brokers, identifying and resolving discrepancies - Manage broker matching processes and ensure alignment across counterparties - Review and resolve STP trade file exceptions in a timely manner - Monitor late trade files and follow up with relevant stakeholders to ensure completeness of data - Manage operational inbox queries, ensuring efficient and accurate resolution - Support month-end NAV sign-off processes in coordination with fund administrators - Liaise with external investment managers, prime brokers, fund administrators, and internal teams including Technology and the COO function - Coordinate the onboarding of new investment managers, including leading calls and managing UAT and parallel testing processes Your present",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "operations",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.bb37cdd051a75d0051",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as an Operations Analyst in London, supporting the managed account platform and ensuring the integrity of post-trade processes, reconciliations, and external vendor oversight. Your future role within QRT includes: - Oversee the third-party vendor platform (Arcesium) FINOP services, ensuring accurate and timely operational delivery - Perform start-of-day position reconciliations against fund administrators, investigating and resolving breaks promptly - Conduct T+1 transaction and position reconciliations against prime brokers, identifying and resolving discrepancies - Manage broker matching processes and ensure alignment across counterparties - Review and resolve STP trade file exceptions in a timely manner - Monitor late trade files and follow up with relevant stakeholders to ensure completeness of data - Manage operational inbox queries, ensuring efficient and accurate resolution - Support month-end NAV sign-off processes in coordination with fund administrators - Liaise with external investment managers, prime brokers, fund administrators, and internal teams including Technology and the COO function - Coordinate the onboarding of new investment managers, including leading calls and managing UAT and parallel testing processes Your present",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f46eb0c946ea87bcfe7e4fdf12a9dda2:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d19c807a83c8d6d1d3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as an Operations Analyst in London, supporting the managed account platform and ensuring the integrity of post-trade processes, reconciliations, and external vendor oversight. Your future role within QRT includes: - Oversee the third-party vendor platform (Arcesium) FINOP services, ensuring accurate and timely operational delivery - Perform start-of-day position reconciliations against fund administrators, investigating and resolving breaks promptly - Conduct T+1 transaction and position reconciliations against prime brokers, identifying and resolving discrepancies - Manage broker matching processes and ensure alignment across counterparties - Review and resolve STP trade file exceptions in a timely manner - Monitor late trade files and follow up with relevant stakeholders to ensure completeness of data - Manage operational inbox queries, ensuring efficient and accurate resolution - Support month-end NAV sign-off processes in coordination with fund administrators - Liaise with external investment managers, prime brokers, fund administrators, and internal teams including Technology and the COO function - Coordinate the onboarding of new investment managers, including leading calls and managing UAT and parallel testing processes Your present",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f46eb0c946ea87bcfe7e4fdf12a9dda2:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d6190b4fdfa09ea34e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as an Operations Analyst in London, supporting the managed account platform and ensuring the integrity of post-trade processes, reconciliations, and external vendor oversight. Your future role within QRT includes: - Oversee the third-party vendor platform (Arcesium) FINOP services, ensuring accurate and timely operational delivery - Perform start-of-day position reconciliations against fund administrators, investigating and resolving breaks promptly - Conduct T+1 transaction and position reconciliations against prime brokers, identifying and resolving discrepancies - Manage broker matching processes and ensure alignment across counterparties - Review and resolve STP trade file exceptions in a timely manner - Monitor late trade files and follow up with relevant stakeholders to ensure completeness of data - Manage operational inbox queries, ensuring efficient and accurate resolution - Support month-end NAV sign-off processes in coordination with fund administrators - Liaise with external investment managers, prime brokers, fund administrators, and internal teams including Technology and the COO function - Coordinate the onboarding of new investment managers, including leading calls and managing UAT and parallel testing processes Your present",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f46eb0c946ea87bcfe7e4fdf12a9dda2:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.05d21756c09d2810b7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f46eb0c946ea87bcfe7e4fdf12a9dda2:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5466e7149acdcf0c2f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f46eb0c946ea87bcfe7e4fdf12a9dda2:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.71c1951669b6601a8b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f46eb0c946ea87bcfe7e4fdf12a9dda2:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5a44686f99b9f47e80",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8a88722f25af7c2c6d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.be1a71d467bc475561",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f46eb0c946ea87bcfe7e4fdf12a9dda2",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "035cc2abd6cb6bccc49b4ee2798588c5",
      "title": "Linux Production Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Sydney",
      "country": "AU",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-01-28T03:48:55.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8393716002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Linux Production Engineer Sydney Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Join our global infrastructure support team at QRT, supporting the growing Linux on-prem estate. Engage with end users, application teams, and engineering teams to meet complex business requirements. This role involves both day-to-day support and project-based activities like new deployments, general administration tasks, and upgrades, working closely with engineering teams to enhance platform automation and monitoring initiatives. Your future role within QRT: - Be a key member of the infrastructure support team working with high-performance Linux-based trading and research platforms. - Build, administer, upgrade, and support QRT's Linux estate. - Contribute to monitoring and automation initiatives. - Collaborate with engineering teams to document and improve processes. - Participate in out-of-hours work and an on-call rota (typically performed remotely). - Leverage experience in Python and bash scripting. Your Current Skillset: - Hands-on experience working with Linux-based platforms. - Excellent Linux administration skills, with knowledge of RedHat, Centos, and Rocky. - Experience with end-to-end server deployments. - Proficiency in automation technologies (e.g., Ansible). - Working knowledge of AMD/Intel server hardware and physical components. - Strong problem-solving, communication,",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.74708d523076530e8f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "035cc2abd6cb6bccc49b4ee2798588c5",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Linux Production Engineer Sydney Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Join our global infrastructure support team at QRT, supporting the growing Linux on-prem estate. Engage with end users, application teams, and engineering teams to meet complex business requirements. This role involves both day-to-day support and project-based activities like new deployments, general administration tasks, and upgrades, working closely with engineering teams to enhance platform automation and monitoring initiatives. Your future role within QRT: - Be a key member of the infrastructure support team working with high-performance Linux-based trading and research platforms. - Build, administer, upgrade, and support QRT's Linux estate. - Contribute to monitoring and automation initiatives. - Collaborate with engineering teams to document and improve processes. - Participate in out-of-hours work and an on-call rota (typically performed remotely). - Leverage experience in Python and bash scripting. Your Current Skillset: - Hands-on experience working with Linux-based platforms. - Excellent Linux administration skills, with knowledge of RedHat, Centos, and Rocky. - Experience with end-to-end server deployments. - Proficiency in automation technologies (e.g., Ansible). - Working knowledge of AMD/Intel server hardware and physical components. - Strong problem-solving, communication,",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:035cc2abd6cb6bccc49b4ee2798588c5:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.a604dccf85bf5c03d5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "035cc2abd6cb6bccc49b4ee2798588c5",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Linux Production Engineer Sydney Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Join our global infrastructure support team at QRT, supporting the growing Linux on-prem estate. Engage with end users, application teams, and engineering teams to meet complex business requirements. This role involves both day-to-day support and project-based activities like new deployments, general administration tasks, and upgrades, working closely with engineering teams to enhance platform automation and monitoring initiatives. Your future role within QRT: - Be a key member of the infrastructure support team working with high-performance Linux-based trading and research platforms. - Build, administer, upgrade, and support QRT's Linux estate. - Contribute to monitoring and automation initiatives. - Collaborate with engineering teams to document and improve processes. - Participate in out-of-hours work and an on-call rota (typically performed remotely). - Leverage experience in Python and bash scripting. Your Current Skillset: - Hands-on experience working with Linux-based platforms. - Excellent Linux administration skills, with knowledge of RedHat, Centos, and Rocky. - Experience with end-to-end server deployments. - Proficiency in automation technologies (e.g., Ansible). - Working knowledge of AMD/Intel server hardware and physical components. - Strong problem-solving, communication,",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:035cc2abd6cb6bccc49b4ee2798588c5:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f41d22efb9ea8d4030",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "035cc2abd6cb6bccc49b4ee2798588c5",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Linux Production Engineer Sydney Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Join our global infrastructure support team at QRT, supporting the growing Linux on-prem estate. Engage with end users, application teams, and engineering teams to meet complex business requirements. This role involves both day-to-day support and project-based activities like new deployments, general administration tasks, and upgrades, working closely with engineering teams to enhance platform automation and monitoring initiatives. Your future role within QRT: - Be a key member of the infrastructure support team working with high-performance Linux-based trading and research platforms. - Build, administer, upgrade, and support QRT's Linux estate. - Contribute to monitoring and automation initiatives. - Collaborate with engineering teams to document and improve processes. - Participate in out-of-hours work and an on-call rota (typically performed remotely). - Leverage experience in Python and bash scripting. Your Current Skillset: - Hands-on experience working with Linux-based platforms. - Excellent Linux administration skills, with knowledge of RedHat, Centos, and Rocky. - Experience with end-to-end server deployments. - Proficiency in automation technologies (e.g., Ansible). - Working knowledge of AMD/Intel server hardware and physical components. - Strong problem-solving, communication,",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:035cc2abd6cb6bccc49b4ee2798588c5:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.402ec8d6c55fdc6fae",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "035cc2abd6cb6bccc49b4ee2798588c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:035cc2abd6cb6bccc49b4ee2798588c5:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4f799fa95f2998ed84",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "035cc2abd6cb6bccc49b4ee2798588c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:035cc2abd6cb6bccc49b4ee2798588c5:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ed2de1fa4c4721db82",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "035cc2abd6cb6bccc49b4ee2798588c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:035cc2abd6cb6bccc49b4ee2798588c5:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.442b1716b3c501bb15",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "035cc2abd6cb6bccc49b4ee2798588c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4962407993d26d557d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "035cc2abd6cb6bccc49b4ee2798588c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.87d100b5883d9178c0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "035cc2abd6cb6bccc49b4ee2798588c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "ac32cb6f3df7737cdd0a963f28b0c788",
      "title": "Network Engineer (Service Provider WAN)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-01-20T11:09:50.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8380970002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Network Engineer (Service Provider WAN) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Network Engineering function responsible for the design, reliability, and optimisation of QRT's wide-area network. The team supports large-scale routing infrastructure and collaborates closely with stakeholders across operations, systems engineering, and automation to ensure robust connectivity for global research and trading activities. Your Future Role within QRT - Operate, troubleshoot, and enhance large-scale WAN environments to ensure availability and performance. - Design, implement, and support MPLS-based solutions - Configure and maintain routing services across multiple BGP address families. - Design, implement, and troubleshoot multicast services using technologies such as MVPN. - Analyse and validate MPLS label operations and end-to-end forwarding behaviour. - Support TCP/IP-based services and traffic flows across a multi-site network footprint. - Produce and maintain accurate technical documentation, including design artefacts and operational procedures. - Collaborate with engineering and operations stakeholders to progress projects and BAU activities. - Act as an escalation point for complex network issues requiring deep technical investigation. Your Present Skillset - Strong operational experience with MPLS environments. - Deep knowledge of: - BGP (including",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.582ad02671aa16448b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "ac32cb6f3df7737cdd0a963f28b0c788",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Network Engineer (Service Provider WAN) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Network Engineering function responsible for the design, reliability, and optimisation of QRT's wide-area network. The team supports large-scale routing infrastructure and collaborates closely with stakeholders across operations, systems engineering, and automation to ensure robust connectivity for global research and trading activities. Your Future Role within QRT - Operate, troubleshoot, and enhance large-scale WAN environments to ensure availability and performance. - Design, implement, and support MPLS-based solutions - Configure and maintain routing services across multiple BGP address families. - Design, implement, and troubleshoot multicast services using technologies such as MVPN. - Analyse and validate MPLS label operations and end-to-end forwarding behaviour. - Support TCP/IP-based services and traffic flows across a multi-site network footprint. - Produce and maintain accurate technical documentation, including design artefacts and operational procedures. - Collaborate with engineering and operations stakeholders to progress projects and BAU activities. - Act as an escalation point for complex network issues requiring deep technical investigation. Your Present Skillset - Strong operational experience with MPLS environments. - Deep knowledge of: - BGP (including",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:ac32cb6f3df7737cdd0a963f28b0c788:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.742e2cdda73eca646e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "ac32cb6f3df7737cdd0a963f28b0c788",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Network Engineer (Service Provider WAN) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Network Engineering function responsible for the design, reliability, and optimisation of QRT's wide-area network. The team supports large-scale routing infrastructure and collaborates closely with stakeholders across operations, systems engineering, and automation to ensure robust connectivity for global research and trading activities. Your Future Role within QRT - Operate, troubleshoot, and enhance large-scale WAN environments to ensure availability and performance. - Design, implement, and support MPLS-based solutions - Configure and maintain routing services across multiple BGP address families. - Design, implement, and troubleshoot multicast services using technologies such as MVPN. - Analyse and validate MPLS label operations and end-to-end forwarding behaviour. - Support TCP/IP-based services and traffic flows across a multi-site network footprint. - Produce and maintain accurate technical documentation, including design artefacts and operational procedures. - Collaborate with engineering and operations stakeholders to progress projects and BAU activities. - Act as an escalation point for complex network issues requiring deep technical investigation. Your Present Skillset - Strong operational experience with MPLS environments. - Deep knowledge of: - BGP (including",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:ac32cb6f3df7737cdd0a963f28b0c788:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.994ab70d389d125c8c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "ac32cb6f3df7737cdd0a963f28b0c788",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Network Engineer (Service Provider WAN) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Network Engineering function responsible for the design, reliability, and optimisation of QRT's wide-area network. The team supports large-scale routing infrastructure and collaborates closely with stakeholders across operations, systems engineering, and automation to ensure robust connectivity for global research and trading activities. Your Future Role within QRT - Operate, troubleshoot, and enhance large-scale WAN environments to ensure availability and performance. - Design, implement, and support MPLS-based solutions - Configure and maintain routing services across multiple BGP address families. - Design, implement, and troubleshoot multicast services using technologies such as MVPN. - Analyse and validate MPLS label operations and end-to-end forwarding behaviour. - Support TCP/IP-based services and traffic flows across a multi-site network footprint. - Produce and maintain accurate technical documentation, including design artefacts and operational procedures. - Collaborate with engineering and operations stakeholders to progress projects and BAU activities. - Act as an escalation point for complex network issues requiring deep technical investigation. Your Present Skillset - Strong operational experience with MPLS environments. - Deep knowledge of: - BGP (including",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:ac32cb6f3df7737cdd0a963f28b0c788:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c15e234a5da3c1f307",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "ac32cb6f3df7737cdd0a963f28b0c788",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:ac32cb6f3df7737cdd0a963f28b0c788:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c2a663423da9e5a4d8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "ac32cb6f3df7737cdd0a963f28b0c788",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:ac32cb6f3df7737cdd0a963f28b0c788:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e01ae49b00e5ec3503",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "ac32cb6f3df7737cdd0a963f28b0c788",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:ac32cb6f3df7737cdd0a963f28b0c788:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.745d5fc363a68b8520",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "ac32cb6f3df7737cdd0a963f28b0c788",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e7733106a80a416598",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "ac32cb6f3df7737cdd0a963f28b0c788",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f6b7f02936ec78962d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "ac32cb6f3df7737cdd0a963f28b0c788",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "09ab3f0cbda4a2b29521ac863cef72d3",
      "title": "Production Support Engineer - Risk/ PnL",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Paris",
      "country": "FR",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2023-11-02T11:03:29.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/7004253002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Production Support Engineer - Risk/ PnL Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: - Monitor and support real-time risk systems (Greeks, exposure, limits) - Own end-of-day PnL and resolve discrepancies (flash vs official) - Investigate trade and position breaks across internal systems, brokers, and exchanges - Ensure market data (prices, vol, curves) is accurate for risk/PnL calculations - Explain PnL moves with traders and quants (delta, gamma, vega, etc.) - Ensure systems are ready before market open (health checks, sign-off) - Manage incidents and communicate clearly under time pressure - Improve processes through automation (scripts, monitoring tools) - Support releases and validate risk/PnL outputs - Participate in on-call rotation (evenings/weekends, remote) Your present skillset: - 2+ years in risk, PnL, or quant support (trading firm, hedge fund, or bank) - Strong understanding of risk metrics (delta, gamma, vega, theta, DV01) - Experience with PnL production and reconciliation - Exposure to at least two asset classes (e.g. equities, FX, rates, commodities) - Strong SQL skills (SQL Server or Postgres) - ~1 year scripting (Python, Bash, or PowerShell) - Strong",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.190ffc62c3ea22ae55",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09ab3f0cbda4a2b29521ac863cef72d3",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Support Engineer - Risk/ PnL Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: - Monitor and support real-time risk systems (Greeks, exposure, limits) - Own end-of-day PnL and resolve discrepancies (flash vs official) - Investigate trade and position breaks across internal systems, brokers, and exchanges - Ensure market data (prices, vol, curves) is accurate for risk/PnL calculations - Explain PnL moves with traders and quants (delta, gamma, vega, etc.) - Ensure systems are ready before market open (health checks, sign-off) - Manage incidents and communicate clearly under time pressure - Improve processes through automation (scripts, monitoring tools) - Support releases and validate risk/PnL outputs - Participate in on-call rotation (evenings/weekends, remote) Your present skillset: - 2+ years in risk, PnL, or quant support (trading firm, hedge fund, or bank) - Strong understanding of risk metrics (delta, gamma, vega, theta, DV01) - Experience with PnL production and reconciliation - Exposure to at least two asset classes (e.g. equities, FX, rates, commodities) - Strong SQL skills (SQL Server or Postgres) - ~1 year scripting (Python, Bash, or PowerShell) - Strong",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09ab3f0cbda4a2b29521ac863cef72d3:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.250b61102c6e921cb1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09ab3f0cbda4a2b29521ac863cef72d3",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Support Engineer - Risk/ PnL Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: - Monitor and support real-time risk systems (Greeks, exposure, limits) - Own end-of-day PnL and resolve discrepancies (flash vs official) - Investigate trade and position breaks across internal systems, brokers, and exchanges - Ensure market data (prices, vol, curves) is accurate for risk/PnL calculations - Explain PnL moves with traders and quants (delta, gamma, vega, etc.) - Ensure systems are ready before market open (health checks, sign-off) - Manage incidents and communicate clearly under time pressure - Improve processes through automation (scripts, monitoring tools) - Support releases and validate risk/PnL outputs - Participate in on-call rotation (evenings/weekends, remote) Your present skillset: - 2+ years in risk, PnL, or quant support (trading firm, hedge fund, or bank) - Strong understanding of risk metrics (delta, gamma, vega, theta, DV01) - Experience with PnL production and reconciliation - Exposure to at least two asset classes (e.g. equities, FX, rates, commodities) - Strong SQL skills (SQL Server or Postgres) - ~1 year scripting (Python, Bash, or PowerShell) - Strong",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09ab3f0cbda4a2b29521ac863cef72d3:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.fb895776ec90d1fcb2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09ab3f0cbda4a2b29521ac863cef72d3",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Support Engineer - Risk/ PnL Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: - Monitor and support real-time risk systems (Greeks, exposure, limits) - Own end-of-day PnL and resolve discrepancies (flash vs official) - Investigate trade and position breaks across internal systems, brokers, and exchanges - Ensure market data (prices, vol, curves) is accurate for risk/PnL calculations - Explain PnL moves with traders and quants (delta, gamma, vega, etc.) - Ensure systems are ready before market open (health checks, sign-off) - Manage incidents and communicate clearly under time pressure - Improve processes through automation (scripts, monitoring tools) - Support releases and validate risk/PnL outputs - Participate in on-call rotation (evenings/weekends, remote) Your present skillset: - 2+ years in risk, PnL, or quant support (trading firm, hedge fund, or bank) - Strong understanding of risk metrics (delta, gamma, vega, theta, DV01) - Experience with PnL production and reconciliation - Exposure to at least two asset classes (e.g. equities, FX, rates, commodities) - Strong SQL skills (SQL Server or Postgres) - ~1 year scripting (Python, Bash, or PowerShell) - Strong",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09ab3f0cbda4a2b29521ac863cef72d3:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.33167fcf19acca16c0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09ab3f0cbda4a2b29521ac863cef72d3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09ab3f0cbda4a2b29521ac863cef72d3:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9d8bd24b9b879b6b03",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09ab3f0cbda4a2b29521ac863cef72d3",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09ab3f0cbda4a2b29521ac863cef72d3:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e4fd81dbceb7a2d9be",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09ab3f0cbda4a2b29521ac863cef72d3",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:09ab3f0cbda4a2b29521ac863cef72d3:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.42100b93ab651a1840",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09ab3f0cbda4a2b29521ac863cef72d3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.70597dcbfa7c375460",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09ab3f0cbda4a2b29521ac863cef72d3",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8c11cada141f4bf643",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "09ab3f0cbda4a2b29521ac863cef72d3",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "0c3bd5371f81b7069a31500eb61e6f53",
      "title": "Production Trading Services",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-10-17T04:04:54.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8216542002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Production Trading Services Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The Production Trading Operations role focuses on managing the order flow and ensuring smooth operations within the trading environment. The role involves proactive collaboration with trading desks, compliance, and IT to pre-empt intraday issues and maintain market-making programs. Your future role within QRT includes: - Your core objective is to deliver high quality, reactive production trading services. - Build relationships and coordinate between various stakeholders across the business. - Liaise effectively with internal teams to address and resolve trading-related issues. - Proactively monitor trade flows and trading limit utilisation. - Manage trading session access and ensure limit compliance - Develop a deep understanding of the trading platform. - Identify and drive improvements across trading processes, particularly in equities and futures. - Contribute to operational resilience and scalability initiatives. Your present skillset: - Approximately 5 years of experience supporting or working within a live trading environment. - Strong Problem Solving and confident communicator. - Degree preferably in a quantitative or technical discipline (e.g., mathematics, physics, engineering, computer science).",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.587b75641f8e9cbafe",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0c3bd5371f81b7069a31500eb61e6f53",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Trading Services Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The Production Trading Operations role focuses on managing the order flow and ensuring smooth operations within the trading environment. The role involves proactive collaboration with trading desks, compliance, and IT to pre-empt intraday issues and maintain market-making programs. Your future role within QRT includes: - Your core objective is to deliver high quality, reactive production trading services. - Build relationships and coordinate between various stakeholders across the business. - Liaise effectively with internal teams to address and resolve trading-related issues. - Proactively monitor trade flows and trading limit utilisation. - Manage trading session access and ensure limit compliance - Develop a deep understanding of the trading platform. - Identify and drive improvements across trading processes, particularly in equities and futures. - Contribute to operational resilience and scalability initiatives. Your present skillset: - Approximately 5 years of experience supporting or working within a live trading environment. - Strong Problem Solving and confident communicator. - Degree preferably in a quantitative or technical discipline (e.g., mathematics, physics, engineering, computer science).",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0c3bd5371f81b7069a31500eb61e6f53:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.cb409af259bf10af14",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0c3bd5371f81b7069a31500eb61e6f53",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Trading Services Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The Production Trading Operations role focuses on managing the order flow and ensuring smooth operations within the trading environment. The role involves proactive collaboration with trading desks, compliance, and IT to pre-empt intraday issues and maintain market-making programs. Your future role within QRT includes: - Your core objective is to deliver high quality, reactive production trading services. - Build relationships and coordinate between various stakeholders across the business. - Liaise effectively with internal teams to address and resolve trading-related issues. - Proactively monitor trade flows and trading limit utilisation. - Manage trading session access and ensure limit compliance - Develop a deep understanding of the trading platform. - Identify and drive improvements across trading processes, particularly in equities and futures. - Contribute to operational resilience and scalability initiatives. Your present skillset: - Approximately 5 years of experience supporting or working within a live trading environment. - Strong Problem Solving and confident communicator. - Degree preferably in a quantitative or technical discipline (e.g., mathematics, physics, engineering, computer science).",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0c3bd5371f81b7069a31500eb61e6f53:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f3719659e2696fd469",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0c3bd5371f81b7069a31500eb61e6f53",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Production Trading Services Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT The Production Trading Operations role focuses on managing the order flow and ensuring smooth operations within the trading environment. The role involves proactive collaboration with trading desks, compliance, and IT to pre-empt intraday issues and maintain market-making programs. Your future role within QRT includes: - Your core objective is to deliver high quality, reactive production trading services. - Build relationships and coordinate between various stakeholders across the business. - Liaise effectively with internal teams to address and resolve trading-related issues. - Proactively monitor trade flows and trading limit utilisation. - Manage trading session access and ensure limit compliance - Develop a deep understanding of the trading platform. - Identify and drive improvements across trading processes, particularly in equities and futures. - Contribute to operational resilience and scalability initiatives. Your present skillset: - Approximately 5 years of experience supporting or working within a live trading environment. - Strong Problem Solving and confident communicator. - Degree preferably in a quantitative or technical discipline (e.g., mathematics, physics, engineering, computer science).",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0c3bd5371f81b7069a31500eb61e6f53:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.554252b1d26b956d0a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0c3bd5371f81b7069a31500eb61e6f53",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0c3bd5371f81b7069a31500eb61e6f53:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.97b182269c584af99d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0c3bd5371f81b7069a31500eb61e6f53",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0c3bd5371f81b7069a31500eb61e6f53:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f258beb58aad977fd8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0c3bd5371f81b7069a31500eb61e6f53",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0c3bd5371f81b7069a31500eb61e6f53:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1196c98eda6b1b4565",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0c3bd5371f81b7069a31500eb61e6f53",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.220099a8fa1d33a2b5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0c3bd5371f81b7069a31500eb61e6f53",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cd4ab09fb43cbba4b4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0c3bd5371f81b7069a31500eb61e6f53",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "0cf4297d5825ed1fd7d2a1a42de57614",
      "title": "Risk Analyst",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-24T06:56:54.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8476607002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Risk Analyst Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors Your responsibilities will include: - Based within the Risk department in Hong Kong, supporting the day-to-day operations of the Risk function across APAC - Supporting senior risk managers in daily P&L attribution, risk profile monitoring, and market color discussions with regional Portfolio Managers - Assisting in managing and monitoring trading limits across Asia Pacific trading strategies - Producing and maintaining risk reports with accuracy and attention to detail - Handling ad-hoc risk requests from FO, COO and senior management in a timely and organized manner - Diving deep into margin analysis, identifying discrepancies, monitoring margin utilization, and flagging unusual movements - Automating and enhancing existing risk processes using Python, including reporting pipelines, risk dashboards, P&L attribution tools, and data workflows Your Present Skillset: - 1 - 4 years of Market risk experience in financial markets, preferably with buy-side experience - Advanced mathematics academic background - Proficient in both Python and SQL - Excellent team-player - Excellent communication skills QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "finance",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.4cd21c9ca2e6a6da0d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0cf4297d5825ed1fd7d2a1a42de57614",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Risk Analyst Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors Your responsibilities will include: - Based within the Risk department in Hong Kong, supporting the day-to-day operations of the Risk function across APAC - Supporting senior risk managers in daily P&L attribution, risk profile monitoring, and market color discussions with regional Portfolio Managers - Assisting in managing and monitoring trading limits across Asia Pacific trading strategies - Producing and maintaining risk reports with accuracy and attention to detail - Handling ad-hoc risk requests from FO, COO and senior management in a timely and organized manner - Diving deep into margin analysis, identifying discrepancies, monitoring margin utilization, and flagging unusual movements - Automating and enhancing existing risk processes using Python, including reporting pipelines, risk dashboards, P&L attribution tools, and data workflows Your Present Skillset: - 1 - 4 years of Market risk experience in financial markets, preferably with buy-side experience - Advanced mathematics academic background - Proficient in both Python and SQL - Excellent team-player - Excellent communication skills QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0cf4297d5825ed1fd7d2a1a42de57614:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.beb12d3538e987e3df",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0cf4297d5825ed1fd7d2a1a42de57614",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Risk Analyst Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors Your responsibilities will include: - Based within the Risk department in Hong Kong, supporting the day-to-day operations of the Risk function across APAC - Supporting senior risk managers in daily P&L attribution, risk profile monitoring, and market color discussions with regional Portfolio Managers - Assisting in managing and monitoring trading limits across Asia Pacific trading strategies - Producing and maintaining risk reports with accuracy and attention to detail - Handling ad-hoc risk requests from FO, COO and senior management in a timely and organized manner - Diving deep into margin analysis, identifying discrepancies, monitoring margin utilization, and flagging unusual movements - Automating and enhancing existing risk processes using Python, including reporting pipelines, risk dashboards, P&L attribution tools, and data workflows Your Present Skillset: - 1 - 4 years of Market risk experience in financial markets, preferably with buy-side experience - Advanced mathematics academic background - Proficient in both Python and SQL - Excellent team-player - Excellent communication skills QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0cf4297d5825ed1fd7d2a1a42de57614:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d90e50c13e69cc894b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0cf4297d5825ed1fd7d2a1a42de57614",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Risk Analyst Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors Your responsibilities will include: - Based within the Risk department in Hong Kong, supporting the day-to-day operations of the Risk function across APAC - Supporting senior risk managers in daily P&L attribution, risk profile monitoring, and market color discussions with regional Portfolio Managers - Assisting in managing and monitoring trading limits across Asia Pacific trading strategies - Producing and maintaining risk reports with accuracy and attention to detail - Handling ad-hoc risk requests from FO, COO and senior management in a timely and organized manner - Diving deep into margin analysis, identifying discrepancies, monitoring margin utilization, and flagging unusual movements - Automating and enhancing existing risk processes using Python, including reporting pipelines, risk dashboards, P&L attribution tools, and data workflows Your Present Skillset: - 1 - 4 years of Market risk experience in financial markets, preferably with buy-side experience - Advanced mathematics academic background - Proficient in both Python and SQL - Excellent team-player - Excellent communication skills QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0cf4297d5825ed1fd7d2a1a42de57614:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3f2603339d83f919e5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0cf4297d5825ed1fd7d2a1a42de57614",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0cf4297d5825ed1fd7d2a1a42de57614:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7d41fbc4482d230eeb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0cf4297d5825ed1fd7d2a1a42de57614",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0cf4297d5825ed1fd7d2a1a42de57614:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c0e81001b0aed235ae",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0cf4297d5825ed1fd7d2a1a42de57614",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0cf4297d5825ed1fd7d2a1a42de57614:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4e406f60606b2d3779",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0cf4297d5825ed1fd7d2a1a42de57614",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8038b5bb9a320eb56b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0cf4297d5825ed1fd7d2a1a42de57614",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9f9fdd569435894a83",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0cf4297d5825ed1fd7d2a1a42de57614",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "226297a8471d8aec282a5421cd347174",
      "title": "Operations Strategy Associate",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-04T15:11:49.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8578675002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Operations Strategy Associate Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Operations Strategy team in Hong Kong to drive process improvements and deliver solutions for Operations & COO in collaboration with IT. Your future role at QRT - Leading and supporting projects aimed at streamlining processes, from initial planning and requirements gathering through to implementation - Collaborating with IT to design and deliver effective solutions to operational challenges - Identifying inefficiencies and manual pain points, challenging existing processes, and proposing data-driven improvements - Supporting new product development and change initiatives within the Operations function - Managing the book of work, including tracking and resolving OMS-related bug reports and overseeing feature requests - Engaging with stakeholders to understand business needs and ensure alignment with broader operational goals - Understanding end-to-end processes across Operations and the COO team - Contributing to business requirements and cases (training provided if needed) - Developing strong systems and process knowledge to support long-term improvements Your present skillset - 3+ years of experience in Middle Office, Trade Support, or Operations within a hedge fund or asset manager, with",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "product",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.36e3da4d03c5cdffa1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "226297a8471d8aec282a5421cd347174",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Strategy Associate Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Operations Strategy team in Hong Kong to drive process improvements and deliver solutions for Operations & COO in collaboration with IT. Your future role at QRT - Leading and supporting projects aimed at streamlining processes, from initial planning and requirements gathering through to implementation - Collaborating with IT to design and deliver effective solutions to operational challenges - Identifying inefficiencies and manual pain points, challenging existing processes, and proposing data-driven improvements - Supporting new product development and change initiatives within the Operations function - Managing the book of work, including tracking and resolving OMS-related bug reports and overseeing feature requests - Engaging with stakeholders to understand business needs and ensure alignment with broader operational goals - Understanding end-to-end processes across Operations and the COO team - Contributing to business requirements and cases (training provided if needed) - Developing strong systems and process knowledge to support long-term improvements Your present skillset - 3+ years of experience in Middle Office, Trade Support, or Operations within a hedge fund or asset manager, with",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:226297a8471d8aec282a5421cd347174:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.3a3dcf2905f2158f61",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "226297a8471d8aec282a5421cd347174",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Strategy Associate Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Operations Strategy team in Hong Kong to drive process improvements and deliver solutions for Operations & COO in collaboration with IT. Your future role at QRT - Leading and supporting projects aimed at streamlining processes, from initial planning and requirements gathering through to implementation - Collaborating with IT to design and deliver effective solutions to operational challenges - Identifying inefficiencies and manual pain points, challenging existing processes, and proposing data-driven improvements - Supporting new product development and change initiatives within the Operations function - Managing the book of work, including tracking and resolving OMS-related bug reports and overseeing feature requests - Engaging with stakeholders to understand business needs and ensure alignment with broader operational goals - Understanding end-to-end processes across Operations and the COO team - Contributing to business requirements and cases (training provided if needed) - Developing strong systems and process knowledge to support long-term improvements Your present skillset - 3+ years of experience in Middle Office, Trade Support, or Operations within a hedge fund or asset manager, with",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:226297a8471d8aec282a5421cd347174:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.6f84ba094667b75500",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "226297a8471d8aec282a5421cd347174",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Strategy Associate Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Operations Strategy team in Hong Kong to drive process improvements and deliver solutions for Operations & COO in collaboration with IT. Your future role at QRT - Leading and supporting projects aimed at streamlining processes, from initial planning and requirements gathering through to implementation - Collaborating with IT to design and deliver effective solutions to operational challenges - Identifying inefficiencies and manual pain points, challenging existing processes, and proposing data-driven improvements - Supporting new product development and change initiatives within the Operations function - Managing the book of work, including tracking and resolving OMS-related bug reports and overseeing feature requests - Engaging with stakeholders to understand business needs and ensure alignment with broader operational goals - Understanding end-to-end processes across Operations and the COO team - Contributing to business requirements and cases (training provided if needed) - Developing strong systems and process knowledge to support long-term improvements Your present skillset - 3+ years of experience in Middle Office, Trade Support, or Operations within a hedge fund or asset manager, with",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:226297a8471d8aec282a5421cd347174:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.695c78ee30a9772294",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "226297a8471d8aec282a5421cd347174",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:226297a8471d8aec282a5421cd347174:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c3228f52e418ccf76c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "226297a8471d8aec282a5421cd347174",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:226297a8471d8aec282a5421cd347174:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d221eb73fdc9838529",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "226297a8471d8aec282a5421cd347174",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:226297a8471d8aec282a5421cd347174:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9b458969fb8298de0f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "226297a8471d8aec282a5421cd347174",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.be0b5c89c8e46b6a3e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "226297a8471d8aec282a5421cd347174",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c250c72576f3cc9833",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "226297a8471d8aec282a5421cd347174",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "264338cb583e7a114bb64cc140a2ce10",
      "title": "Senior Linux Platform Engineer - Trading Infrastructure",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-09-25T11:55:50.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8185063002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Linux Platform Engineer - Trading Infrastructure London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Your Future Role within QRT You will join the global infrastructure team, responsible for QRT's Linux estate, including trading infrastructure and low-latency platforms. The team works closely with application and support functions to deliver secure, high-performance, and scalable solutions for the business. - Manage and evolve QRT's Linux platform to support global trading environments - Work with application and support teams to maintain a secure and scalable infrastructure - Lead the design and implementation of automation frameworks, tools, and processes - Contribute to the development of monitoring and observability capabilities - Analyse and tune performance across systems, networks, and applications - Support build/release management processes - Collaborate within a version-controlled development environment Your Present Skillset - Strong expertise in Linux (preferably Red Hat-based distributions) - Experience building and administering large-scale or latency-sensitive platforms - Extensive experience with architecture and long-term evolution of automation and configuration management systems (e.g. Ansible, Puppet, Chef) - Experience with monitoring and observability tools (e.g. Splunk, Elastic, Prometheus, Grafana) - Experience with build/release management systems. - Solid",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.0a6dba0d776105e1ec",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "264338cb583e7a114bb64cc140a2ce10",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Linux Platform Engineer - Trading Infrastructure London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Your Future Role within QRT You will join the global infrastructure team, responsible for QRT's Linux estate, including trading infrastructure and low-latency platforms. The team works closely with application and support functions to deliver secure, high-performance, and scalable solutions for the business. - Manage and evolve QRT's Linux platform to support global trading environments - Work with application and support teams to maintain a secure and scalable infrastructure - Lead the design and implementation of automation frameworks, tools, and processes - Contribute to the development of monitoring and observability capabilities - Analyse and tune performance across systems, networks, and applications - Support build/release management processes - Collaborate within a version-controlled development environment Your Present Skillset - Strong expertise in Linux (preferably Red Hat-based distributions) - Experience building and administering large-scale or latency-sensitive platforms - Extensive experience with architecture and long-term evolution of automation and configuration management systems (e.g. Ansible, Puppet, Chef) - Experience with monitoring and observability tools (e.g. Splunk, Elastic, Prometheus, Grafana) - Experience with build/release management systems. - Solid",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:264338cb583e7a114bb64cc140a2ce10:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.6368b4a814ba624b53",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "264338cb583e7a114bb64cc140a2ce10",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Linux Platform Engineer - Trading Infrastructure London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Your Future Role within QRT You will join the global infrastructure team, responsible for QRT's Linux estate, including trading infrastructure and low-latency platforms. The team works closely with application and support functions to deliver secure, high-performance, and scalable solutions for the business. - Manage and evolve QRT's Linux platform to support global trading environments - Work with application and support teams to maintain a secure and scalable infrastructure - Lead the design and implementation of automation frameworks, tools, and processes - Contribute to the development of monitoring and observability capabilities - Analyse and tune performance across systems, networks, and applications - Support build/release management processes - Collaborate within a version-controlled development environment Your Present Skillset - Strong expertise in Linux (preferably Red Hat-based distributions) - Experience building and administering large-scale or latency-sensitive platforms - Extensive experience with architecture and long-term evolution of automation and configuration management systems (e.g. Ansible, Puppet, Chef) - Experience with monitoring and observability tools (e.g. Splunk, Elastic, Prometheus, Grafana) - Experience with build/release management systems. - Solid",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:264338cb583e7a114bb64cc140a2ce10:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c655edd42ffd4e4ec6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "264338cb583e7a114bb64cc140a2ce10",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Linux Platform Engineer - Trading Infrastructure London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Your Future Role within QRT You will join the global infrastructure team, responsible for QRT's Linux estate, including trading infrastructure and low-latency platforms. The team works closely with application and support functions to deliver secure, high-performance, and scalable solutions for the business. - Manage and evolve QRT's Linux platform to support global trading environments - Work with application and support teams to maintain a secure and scalable infrastructure - Lead the design and implementation of automation frameworks, tools, and processes - Contribute to the development of monitoring and observability capabilities - Analyse and tune performance across systems, networks, and applications - Support build/release management processes - Collaborate within a version-controlled development environment Your Present Skillset - Strong expertise in Linux (preferably Red Hat-based distributions) - Experience building and administering large-scale or latency-sensitive platforms - Extensive experience with architecture and long-term evolution of automation and configuration management systems (e.g. Ansible, Puppet, Chef) - Experience with monitoring and observability tools (e.g. Splunk, Elastic, Prometheus, Grafana) - Experience with build/release management systems. - Solid",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:264338cb583e7a114bb64cc140a2ce10:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.2ed436355dc824c257",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "264338cb583e7a114bb64cc140a2ce10",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:264338cb583e7a114bb64cc140a2ce10:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.974aa9fbaad2642dd4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "264338cb583e7a114bb64cc140a2ce10",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:264338cb583e7a114bb64cc140a2ce10:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.fe5db4cd0256eac17d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "264338cb583e7a114bb64cc140a2ce10",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:264338cb583e7a114bb64cc140a2ce10:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7bb8c5531ce3d42995",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "264338cb583e7a114bb64cc140a2ce10",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.833025ae6b29fc379f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "264338cb583e7a114bb64cc140a2ce10",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8ff3cd66d429975c04",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "264338cb583e7a114bb64cc140a2ce10",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "2ca4efe3fb7cedba61d73ce82977aa13",
      "title": "Senior Frontend Developer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-02-27T14:44:57.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8439664002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Frontend Developer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the engineering function responsible for delivering frontend applications that support core infrastructure and operational capabilities. The team partners with engineers across platforms, applications, and operations to build clear, reliable, and scalable user interfaces for internal systems. Your Future Role within QRT - Design and develop scalable, modular frontend applications using React and TypeScript. - Own frontend architecture, including component structure, state management, and performance optimisation. - Build data-driven visualisation features such as dashboards, monitoring views, and system insight tools. - Maintain strong standards for code quality, testing practices, and documentation. - Work closely with engineering and operational stakeholders to define requirements and translate them into deliverables. - Communicate technical decisions, progress, and risks clearly to both technical and non-technical audiences. - Collaborate with backend engineers to integrate APIs and data models effectively. - Contribute to Agile delivery processes, including planning, estimation, and iterative releases. - Promote best practices across UI design, testing, CI/CD, and tooling. Your Present Skillset - Extensive professional experience building frontend applications with React. - Strong proficiency in TypeScript.",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.1c5fb0f25308670d4a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ca4efe3fb7cedba61d73ce82977aa13",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Frontend Developer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the engineering function responsible for delivering frontend applications that support core infrastructure and operational capabilities. The team partners with engineers across platforms, applications, and operations to build clear, reliable, and scalable user interfaces for internal systems. Your Future Role within QRT - Design and develop scalable, modular frontend applications using React and TypeScript. - Own frontend architecture, including component structure, state management, and performance optimisation. - Build data-driven visualisation features such as dashboards, monitoring views, and system insight tools. - Maintain strong standards for code quality, testing practices, and documentation. - Work closely with engineering and operational stakeholders to define requirements and translate them into deliverables. - Communicate technical decisions, progress, and risks clearly to both technical and non-technical audiences. - Collaborate with backend engineers to integrate APIs and data models effectively. - Contribute to Agile delivery processes, including planning, estimation, and iterative releases. - Promote best practices across UI design, testing, CI/CD, and tooling. Your Present Skillset - Extensive professional experience building frontend applications with React. - Strong proficiency in TypeScript.",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ca4efe3fb7cedba61d73ce82977aa13:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.688bd5bd7002ebfa26",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ca4efe3fb7cedba61d73ce82977aa13",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Frontend Developer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the engineering function responsible for delivering frontend applications that support core infrastructure and operational capabilities. The team partners with engineers across platforms, applications, and operations to build clear, reliable, and scalable user interfaces for internal systems. Your Future Role within QRT - Design and develop scalable, modular frontend applications using React and TypeScript. - Own frontend architecture, including component structure, state management, and performance optimisation. - Build data-driven visualisation features such as dashboards, monitoring views, and system insight tools. - Maintain strong standards for code quality, testing practices, and documentation. - Work closely with engineering and operational stakeholders to define requirements and translate them into deliverables. - Communicate technical decisions, progress, and risks clearly to both technical and non-technical audiences. - Collaborate with backend engineers to integrate APIs and data models effectively. - Contribute to Agile delivery processes, including planning, estimation, and iterative releases. - Promote best practices across UI design, testing, CI/CD, and tooling. Your Present Skillset - Extensive professional experience building frontend applications with React. - Strong proficiency in TypeScript.",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ca4efe3fb7cedba61d73ce82977aa13:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.7afbca34165be9b8d2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ca4efe3fb7cedba61d73ce82977aa13",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Frontend Developer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the engineering function responsible for delivering frontend applications that support core infrastructure and operational capabilities. The team partners with engineers across platforms, applications, and operations to build clear, reliable, and scalable user interfaces for internal systems. Your Future Role within QRT - Design and develop scalable, modular frontend applications using React and TypeScript. - Own frontend architecture, including component structure, state management, and performance optimisation. - Build data-driven visualisation features such as dashboards, monitoring views, and system insight tools. - Maintain strong standards for code quality, testing practices, and documentation. - Work closely with engineering and operational stakeholders to define requirements and translate them into deliverables. - Communicate technical decisions, progress, and risks clearly to both technical and non-technical audiences. - Collaborate with backend engineers to integrate APIs and data models effectively. - Contribute to Agile delivery processes, including planning, estimation, and iterative releases. - Promote best practices across UI design, testing, CI/CD, and tooling. Your Present Skillset - Extensive professional experience building frontend applications with React. - Strong proficiency in TypeScript.",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ca4efe3fb7cedba61d73ce82977aa13:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.30ac532c060e1c5bd8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ca4efe3fb7cedba61d73ce82977aa13",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ca4efe3fb7cedba61d73ce82977aa13:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.486715b819d90761ac",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ca4efe3fb7cedba61d73ce82977aa13",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ca4efe3fb7cedba61d73ce82977aa13:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4eed8078f97aca89de",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ca4efe3fb7cedba61d73ce82977aa13",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:2ca4efe3fb7cedba61d73ce82977aa13:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8dcfe1d2a4aecb644c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ca4efe3fb7cedba61d73ce82977aa13",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b69ff04c387e5cb19c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ca4efe3fb7cedba61d73ce82977aa13",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ea5c91efc866cac5ad",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "2ca4efe3fb7cedba61d73ce82977aa13",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "3976a50eaeecb109ed842afd73e1ddf0",
      "title": "Senior Identity and Access Management (IAM) Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-13T13:21:44.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8460881002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Identity and Access Management (IAM) Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Security team, responsible for protecting systems, data, and access across the organisation. The team works closely with application owners, IT Engineering, HR, and Security stakeholders to design and operate secure, automated identity and access management processes across enterprise platforms. Your Future Role within QRT - Identity Lifecycle Management - Design, implement, and maintain automated processes for user provisioning, modification, and deprovisioning. - Ensure alignment between identity lifecycle policies and organisational access control requirements. - Integrate IAM solutions with HR systems, directories, cloud platforms, and enterprise applications. - Drive automation to eliminate manual identity and access management processes. - Application Integration & Identity Engineering - Design, develop, and maintain custom identity integrations, including SCIM 2.0 provisioning bridges. - Build and maintain connectors between IAM platforms and enterprise applications (cloud and on premises). - Engineer integration solutions for applications that do not natively support modern identity standards (SCIM, SAML, OIDC, REST APIs). - Facilitate redesign or refactoring of legacy or non-integrated applications to enable automated lifecycle management. - Develop",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "bachelors",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.0d6dba29e7426c0fcc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3976a50eaeecb109ed842afd73e1ddf0",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Identity and Access Management (IAM) Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Security team, responsible for protecting systems, data, and access across the organisation. The team works closely with application owners, IT Engineering, HR, and Security stakeholders to design and operate secure, automated identity and access management processes across enterprise platforms. Your Future Role within QRT - Identity Lifecycle Management - Design, implement, and maintain automated processes for user provisioning, modification, and deprovisioning. - Ensure alignment between identity lifecycle policies and organisational access control requirements. - Integrate IAM solutions with HR systems, directories, cloud platforms, and enterprise applications. - Drive automation to eliminate manual identity and access management processes. - Application Integration & Identity Engineering - Design, develop, and maintain custom identity integrations, including SCIM 2.0 provisioning bridges. - Build and maintain connectors between IAM platforms and enterprise applications (cloud and on premises). - Engineer integration solutions for applications that do not natively support modern identity standards (SCIM, SAML, OIDC, REST APIs). - Facilitate redesign or refactoring of legacy or non-integrated applications to enable automated lifecycle management. - Develop",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3976a50eaeecb109ed842afd73e1ddf0:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.74584cc9935a0b79be",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3976a50eaeecb109ed842afd73e1ddf0",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Identity and Access Management (IAM) Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Security team, responsible for protecting systems, data, and access across the organisation. The team works closely with application owners, IT Engineering, HR, and Security stakeholders to design and operate secure, automated identity and access management processes across enterprise platforms. Your Future Role within QRT - Identity Lifecycle Management - Design, implement, and maintain automated processes for user provisioning, modification, and deprovisioning. - Ensure alignment between identity lifecycle policies and organisational access control requirements. - Integrate IAM solutions with HR systems, directories, cloud platforms, and enterprise applications. - Drive automation to eliminate manual identity and access management processes. - Application Integration & Identity Engineering - Design, develop, and maintain custom identity integrations, including SCIM 2.0 provisioning bridges. - Build and maintain connectors between IAM platforms and enterprise applications (cloud and on premises). - Engineer integration solutions for applications that do not natively support modern identity standards (SCIM, SAML, OIDC, REST APIs). - Facilitate redesign or refactoring of legacy or non-integrated applications to enable automated lifecycle management. - Develop",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3976a50eaeecb109ed842afd73e1ddf0:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f7c6eee85d933546dc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3976a50eaeecb109ed842afd73e1ddf0",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Identity and Access Management (IAM) Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Security team, responsible for protecting systems, data, and access across the organisation. The team works closely with application owners, IT Engineering, HR, and Security stakeholders to design and operate secure, automated identity and access management processes across enterprise platforms. Your Future Role within QRT - Identity Lifecycle Management - Design, implement, and maintain automated processes for user provisioning, modification, and deprovisioning. - Ensure alignment between identity lifecycle policies and organisational access control requirements. - Integrate IAM solutions with HR systems, directories, cloud platforms, and enterprise applications. - Drive automation to eliminate manual identity and access management processes. - Application Integration & Identity Engineering - Design, develop, and maintain custom identity integrations, including SCIM 2.0 provisioning bridges. - Build and maintain connectors between IAM platforms and enterprise applications (cloud and on premises). - Engineer integration solutions for applications that do not natively support modern identity standards (SCIM, SAML, OIDC, REST APIs). - Facilitate redesign or refactoring of legacy or non-integrated applications to enable automated lifecycle management. - Develop",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3976a50eaeecb109ed842afd73e1ddf0:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.12fa346e7aaa21580a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3976a50eaeecb109ed842afd73e1ddf0",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3976a50eaeecb109ed842afd73e1ddf0:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3935fe15b7d84009c8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3976a50eaeecb109ed842afd73e1ddf0",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3976a50eaeecb109ed842afd73e1ddf0:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c58b7f0d0cd8aa539e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3976a50eaeecb109ed842afd73e1ddf0",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3976a50eaeecb109ed842afd73e1ddf0:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.05607940eff5eb4213",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3976a50eaeecb109ed842afd73e1ddf0",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.2beaa360ef2fe60648",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3976a50eaeecb109ed842afd73e1ddf0",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.75a54fdc3d58c59620",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3976a50eaeecb109ed842afd73e1ddf0",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "4212acf7f38eb0b229f5c6e8e269552a",
      "title": "Quantitative Developer - Trade Ideas, C#",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": true,
      "equity_included_source": null,
      "equity_type": [
        "options"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-04T19:25:01.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8449478002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Quantitative Developer - Trade Ideas, C# London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join a development team building a new platform for managing and interpreting investment trade ideas from external contributors. The system is designed to enhance visibility into global equity opportunities and improve the firm's ability to assess risk and reward. You'll work on a real-time, always-on application, delivering iteratively in close collaboration with internal stakeholders. This is a fast-paced environment where technical ownership and user feedback shape the evolution of the platform. Your future role within QRT - Build a real-time application for capturing and analysing investment trade ideas from external sources - Design and operate a high-availability system with continuous data ingestion and processing - Deliver iterative improvements in close collaboration with end users and stakeholders - Own architectural and design decisions with an eye on long-term business outcomes - Contribute to the evolution of the tech stack in line with platform needs and QRT-wide engineering standards Your present skillset - 2+ years of experience as a software engineer - Expertise in C# or a similar compiled, strongly typed, object-oriented",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 2,
      "years_experience_max": 6,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.4b681261fc2d1ffec9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4212acf7f38eb0b229f5c6e8e269552a",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Trade Ideas, C# London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join a development team building a new platform for managing and interpreting investment trade ideas from external contributors. The system is designed to enhance visibility into global equity opportunities and improve the firm's ability to assess risk and reward. You'll work on a real-time, always-on application, delivering iteratively in close collaboration with internal stakeholders. This is a fast-paced environment where technical ownership and user feedback shape the evolution of the platform. Your future role within QRT - Build a real-time application for capturing and analysing investment trade ideas from external sources - Design and operate a high-availability system with continuous data ingestion and processing - Deliver iterative improvements in close collaboration with end users and stakeholders - Own architectural and design decisions with an eye on long-term business outcomes - Contribute to the evolution of the tech stack in line with platform needs and QRT-wide engineering standards Your present skillset - 2+ years of experience as a software engineer - Expertise in C# or a similar compiled, strongly typed, object-oriented",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4212acf7f38eb0b229f5c6e8e269552a:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.8c259a7b562a488014",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4212acf7f38eb0b229f5c6e8e269552a",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Trade Ideas, C# London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join a development team building a new platform for managing and interpreting investment trade ideas from external contributors. The system is designed to enhance visibility into global equity opportunities and improve the firm's ability to assess risk and reward. You'll work on a real-time, always-on application, delivering iteratively in close collaboration with internal stakeholders. This is a fast-paced environment where technical ownership and user feedback shape the evolution of the platform. Your future role within QRT - Build a real-time application for capturing and analysing investment trade ideas from external sources - Design and operate a high-availability system with continuous data ingestion and processing - Deliver iterative improvements in close collaboration with end users and stakeholders - Own architectural and design decisions with an eye on long-term business outcomes - Contribute to the evolution of the tech stack in line with platform needs and QRT-wide engineering standards Your present skillset - 2+ years of experience as a software engineer - Expertise in C# or a similar compiled, strongly typed, object-oriented",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4212acf7f38eb0b229f5c6e8e269552a:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.bb9db7b93ede5112e3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4212acf7f38eb0b229f5c6e8e269552a",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Trade Ideas, C# London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join a development team building a new platform for managing and interpreting investment trade ideas from external contributors. The system is designed to enhance visibility into global equity opportunities and improve the firm's ability to assess risk and reward. You'll work on a real-time, always-on application, delivering iteratively in close collaboration with internal stakeholders. This is a fast-paced environment where technical ownership and user feedback shape the evolution of the platform. Your future role within QRT - Build a real-time application for capturing and analysing investment trade ideas from external sources - Design and operate a high-availability system with continuous data ingestion and processing - Deliver iterative improvements in close collaboration with end users and stakeholders - Own architectural and design decisions with an eye on long-term business outcomes - Contribute to the evolution of the tech stack in line with platform needs and QRT-wide engineering standards Your present skillset - 2+ years of experience as a software engineer - Expertise in C# or a similar compiled, strongly typed, object-oriented",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4212acf7f38eb0b229f5c6e8e269552a:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.2f68c3e5db60c2ffb9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4212acf7f38eb0b229f5c6e8e269552a",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4212acf7f38eb0b229f5c6e8e269552a:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c8ea1eebfda5484b87",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4212acf7f38eb0b229f5c6e8e269552a",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4212acf7f38eb0b229f5c6e8e269552a:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f17c89de52143fc777",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4212acf7f38eb0b229f5c6e8e269552a",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4212acf7f38eb0b229f5c6e8e269552a:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1fd13b7bd2c41cfaca",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4212acf7f38eb0b229f5c6e8e269552a",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.41e9c3b8f44cc67363",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4212acf7f38eb0b229f5c6e8e269552a",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d1d518ed401b025b71",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4212acf7f38eb0b229f5c6e8e269552a",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "4e6ea56da3bc0f720043f8940b46ea88",
      "title": "Operations Associate, Cash Management",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Wroclaw",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-30T10:00:59.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8530908002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Operations Associate, Cash Management Wroclaw Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as a Cash Management Operations Analyst in Wrocław, supporting the build-out of a centralised cash management function with a focus on oversight, control, and visibility of payment flows across funds and corporate entities. Your future role within QRT includes: - Oversee daily cash wire activity across funds and entities, including prioritisation, approvals, cut-off adherence, and payment status monitoring across internal and bank platforms - Maintain oversight of OTC-related cash flows and act as a control point across all cash activities, ensuring accuracy, completeness, and adherence to governance frameworks - Maintain oversight of cash accounts, including permissions, authorised signatory lists, and support for account setup, mandates, and access controls - Partner closely with Treasury (including Citco) to review cash forecasts, funding requirements, and provide visibility across cash positions and liquidity - Liaise with trading desks, Treasury, Fund Accounting, Legal, and external counterparties to ensure alignment and transparency across cash processes - Support the centralisation of cash activities into a consistent, scalable operating model, identifying control gaps and driving",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "finance",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.8ad3778f11035780eb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4e6ea56da3bc0f720043f8940b46ea88",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate, Cash Management Wroclaw Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as a Cash Management Operations Analyst in Wrocław, supporting the build-out of a centralised cash management function with a focus on oversight, control, and visibility of payment flows across funds and corporate entities. Your future role within QRT includes: - Oversee daily cash wire activity across funds and entities, including prioritisation, approvals, cut-off adherence, and payment status monitoring across internal and bank platforms - Maintain oversight of OTC-related cash flows and act as a control point across all cash activities, ensuring accuracy, completeness, and adherence to governance frameworks - Maintain oversight of cash accounts, including permissions, authorised signatory lists, and support for account setup, mandates, and access controls - Partner closely with Treasury (including Citco) to review cash forecasts, funding requirements, and provide visibility across cash positions and liquidity - Liaise with trading desks, Treasury, Fund Accounting, Legal, and external counterparties to ensure alignment and transparency across cash processes - Support the centralisation of cash activities into a consistent, scalable operating model, identifying control gaps and driving",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4e6ea56da3bc0f720043f8940b46ea88:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.bb529786db2366f566",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4e6ea56da3bc0f720043f8940b46ea88",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate, Cash Management Wroclaw Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as a Cash Management Operations Analyst in Wrocław, supporting the build-out of a centralised cash management function with a focus on oversight, control, and visibility of payment flows across funds and corporate entities. Your future role within QRT includes: - Oversee daily cash wire activity across funds and entities, including prioritisation, approvals, cut-off adherence, and payment status monitoring across internal and bank platforms - Maintain oversight of OTC-related cash flows and act as a control point across all cash activities, ensuring accuracy, completeness, and adherence to governance frameworks - Maintain oversight of cash accounts, including permissions, authorised signatory lists, and support for account setup, mandates, and access controls - Partner closely with Treasury (including Citco) to review cash forecasts, funding requirements, and provide visibility across cash positions and liquidity - Liaise with trading desks, Treasury, Fund Accounting, Legal, and external counterparties to ensure alignment and transparency across cash processes - Support the centralisation of cash activities into a consistent, scalable operating model, identifying control gaps and driving",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4e6ea56da3bc0f720043f8940b46ea88:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c1cffeedd5b21006a2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4e6ea56da3bc0f720043f8940b46ea88",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate, Cash Management Wroclaw Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our global Operations team as a Cash Management Operations Analyst in Wrocław, supporting the build-out of a centralised cash management function with a focus on oversight, control, and visibility of payment flows across funds and corporate entities. Your future role within QRT includes: - Oversee daily cash wire activity across funds and entities, including prioritisation, approvals, cut-off adherence, and payment status monitoring across internal and bank platforms - Maintain oversight of OTC-related cash flows and act as a control point across all cash activities, ensuring accuracy, completeness, and adherence to governance frameworks - Maintain oversight of cash accounts, including permissions, authorised signatory lists, and support for account setup, mandates, and access controls - Partner closely with Treasury (including Citco) to review cash forecasts, funding requirements, and provide visibility across cash positions and liquidity - Liaise with trading desks, Treasury, Fund Accounting, Legal, and external counterparties to ensure alignment and transparency across cash processes - Support the centralisation of cash activities into a consistent, scalable operating model, identifying control gaps and driving",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4e6ea56da3bc0f720043f8940b46ea88:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.162e1d62161f809900",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4e6ea56da3bc0f720043f8940b46ea88",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4e6ea56da3bc0f720043f8940b46ea88:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.48c844310a3aaa4452",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4e6ea56da3bc0f720043f8940b46ea88",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4e6ea56da3bc0f720043f8940b46ea88:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4d277c96d7db686176",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4e6ea56da3bc0f720043f8940b46ea88",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4e6ea56da3bc0f720043f8940b46ea88:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.05fad8c87142a6cae8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4e6ea56da3bc0f720043f8940b46ea88",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9d13cc5af1c15a56da",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4e6ea56da3bc0f720043f8940b46ea88",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d6a51f71c252ab25ac",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4e6ea56da3bc0f720043f8940b46ea88",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "4ebf503acd175b64a23f7200ea337517",
      "title": "Data Center Operations Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "New York",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": 150000,
      "salary_max": 180000,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "total_comp",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": "year",
      "base_salary_min": 150000,
      "base_salary_max": 180000,
      "salary_disclosed": true,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-02-02T14:34:46.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8363101002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Data Center Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The successful candidate will join the established DCO team at QRT, working closely with Network Engineering and infrastructure teams you will be responsible for the implementation and physical deployment of electronic trading infrastructure in support of the firm's trading activities. Your Future Role within QRT - Contribute to the design and planning of new equipment deployments in line with data centre best practices - Deploy, maintain, and decommission trading infrastructure hardware, including FPGA platforms, ultra-low-latency servers, and high-performance network switches, across a global colocation footprint - Ensure consistent build quality across structured cabling, rack layouts, power distribution, cooling infrastructure, and environmental monitoring - Coordinate installations, upgrades, capacity expansions, and decommissions with exchanges, colocation providers, hardware vendors, and onsite engineers - Support procurement, logistics, inventory management, and the movement of hardware and components between sites - Maintain accurate and up-to-date infrastructure documentation (rack elevations, patching matrices, connectivity layouts) using CMDB tools such as NetBox - Work closely with network engineering and trading teams to ensure physical infrastructure meets performance and operational requirements",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 44,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 55,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.6793c0a3151e306ecd",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4ebf503acd175b64a23f7200ea337517",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Data Center Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The successful candidate will join the established DCO team at QRT, working closely with Network Engineering and infrastructure teams you will be responsible for the implementation and physical deployment of electronic trading infrastructure in support of the firm's trading activities. Your Future Role within QRT - Contribute to the design and planning of new equipment deployments in line with data centre best practices - Deploy, maintain, and decommission trading infrastructure hardware, including FPGA platforms, ultra-low-latency servers, and high-performance network switches, across a global colocation footprint - Ensure consistent build quality across structured cabling, rack layouts, power distribution, cooling infrastructure, and environmental monitoring - Coordinate installations, upgrades, capacity expansions, and decommissions with exchanges, colocation providers, hardware vendors, and onsite engineers - Support procurement, logistics, inventory management, and the movement of hardware and components between sites - Maintain accurate and up-to-date infrastructure documentation (rack elevations, patching matrices, connectivity layouts) using CMDB tools such as NetBox - Work closely with network engineering and trading teams to ensure physical infrastructure meets performance and operational requirements",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4ebf503acd175b64a23f7200ea337517:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9dcccdcf4b7b06d383",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4ebf503acd175b64a23f7200ea337517",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Data Center Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The successful candidate will join the established DCO team at QRT, working closely with Network Engineering and infrastructure teams you will be responsible for the implementation and physical deployment of electronic trading infrastructure in support of the firm's trading activities. Your Future Role within QRT - Contribute to the design and planning of new equipment deployments in line with data centre best practices - Deploy, maintain, and decommission trading infrastructure hardware, including FPGA platforms, ultra-low-latency servers, and high-performance network switches, across a global colocation footprint - Ensure consistent build quality across structured cabling, rack layouts, power distribution, cooling infrastructure, and environmental monitoring - Coordinate installations, upgrades, capacity expansions, and decommissions with exchanges, colocation providers, hardware vendors, and onsite engineers - Support procurement, logistics, inventory management, and the movement of hardware and components between sites - Maintain accurate and up-to-date infrastructure documentation (rack elevations, patching matrices, connectivity layouts) using CMDB tools such as NetBox - Work closely with network engineering and trading teams to ensure physical infrastructure meets performance and operational requirements",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4ebf503acd175b64a23f7200ea337517:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.a82a2cccbfc3abc8af",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4ebf503acd175b64a23f7200ea337517",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Data Center Operations Engineer New York Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. The successful candidate will join the established DCO team at QRT, working closely with Network Engineering and infrastructure teams you will be responsible for the implementation and physical deployment of electronic trading infrastructure in support of the firm's trading activities. Your Future Role within QRT - Contribute to the design and planning of new equipment deployments in line with data centre best practices - Deploy, maintain, and decommission trading infrastructure hardware, including FPGA platforms, ultra-low-latency servers, and high-performance network switches, across a global colocation footprint - Ensure consistent build quality across structured cabling, rack layouts, power distribution, cooling infrastructure, and environmental monitoring - Coordinate installations, upgrades, capacity expansions, and decommissions with exchanges, colocation providers, hardware vendors, and onsite engineers - Support procurement, logistics, inventory management, and the movement of hardware and components between sites - Maintain accurate and up-to-date infrastructure documentation (rack elevations, patching matrices, connectivity layouts) using CMDB tools such as NetBox - Work closely with network engineering and trading teams to ensure physical infrastructure meets performance and operational requirements",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4ebf503acd175b64a23f7200ea337517:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1f6b275756d2d21f70",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4ebf503acd175b64a23f7200ea337517",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4ebf503acd175b64a23f7200ea337517:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.530786bcd43721c59f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4ebf503acd175b64a23f7200ea337517",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4ebf503acd175b64a23f7200ea337517:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d0c169566ad8da5712",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4ebf503acd175b64a23f7200ea337517",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4ebf503acd175b64a23f7200ea337517:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a2ce5d5a4d191e597f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4ebf503acd175b64a23f7200ea337517",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e8b12a4317458e3dce",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4ebf503acd175b64a23f7200ea337517",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f1acbdb4793f6b64c5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4ebf503acd175b64a23f7200ea337517",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "6cba465a8c2d1857a968a57f7a547c70",
      "title": "Risk Reporting & Analytics Lead",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-09T12:12:08.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8416038002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Risk Reporting & Analytics Lead London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our risk team in London as a Risk Analytics Associate, supporting some of the firm's most complex and high-impact initiatives. Role responsibilities - Perform detailed analysis of VaR, stress and scenario results, identifying key drivers and escalating material risks in partnership with trading and risk management teams - Produce, enhance and interpret sophisticated risk analytics and reporting across multi-asset portfolios, including systematic strategies - Support day-to-day risk monitoring processes while contributing to longer-term enhancements of the risk analytics framework - Work closely with front office traders, quants and senior risk stakeholders to provide actionable risk insight - Liaise with further stakeholders across the firm, including the wider risk function, operations, and senior leadership Required experience and skills - Degree in Mathematics, Physics, Statistics, Engineering, or a related scientific discipline - 5-10 years' experience in a comparable risk, analytics, or quantitative role - High level of technical proficiency, including Python - Experience in market risk management is advantageous - Strong attention to detail and a high standard of analytical accuracy -",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.426314e68b0cec81e7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6cba465a8c2d1857a968a57f7a547c70",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Risk Reporting & Analytics Lead London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our risk team in London as a Risk Analytics Associate, supporting some of the firm's most complex and high-impact initiatives. Role responsibilities - Perform detailed analysis of VaR, stress and scenario results, identifying key drivers and escalating material risks in partnership with trading and risk management teams - Produce, enhance and interpret sophisticated risk analytics and reporting across multi-asset portfolios, including systematic strategies - Support day-to-day risk monitoring processes while contributing to longer-term enhancements of the risk analytics framework - Work closely with front office traders, quants and senior risk stakeholders to provide actionable risk insight - Liaise with further stakeholders across the firm, including the wider risk function, operations, and senior leadership Required experience and skills - Degree in Mathematics, Physics, Statistics, Engineering, or a related scientific discipline - 5-10 years' experience in a comparable risk, analytics, or quantitative role - High level of technical proficiency, including Python - Experience in market risk management is advantageous - Strong attention to detail and a high standard of analytical accuracy -",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6cba465a8c2d1857a968a57f7a547c70:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9e9b6392723ee48c82",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6cba465a8c2d1857a968a57f7a547c70",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Risk Reporting & Analytics Lead London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our risk team in London as a Risk Analytics Associate, supporting some of the firm's most complex and high-impact initiatives. Role responsibilities - Perform detailed analysis of VaR, stress and scenario results, identifying key drivers and escalating material risks in partnership with trading and risk management teams - Produce, enhance and interpret sophisticated risk analytics and reporting across multi-asset portfolios, including systematic strategies - Support day-to-day risk monitoring processes while contributing to longer-term enhancements of the risk analytics framework - Work closely with front office traders, quants and senior risk stakeholders to provide actionable risk insight - Liaise with further stakeholders across the firm, including the wider risk function, operations, and senior leadership Required experience and skills - Degree in Mathematics, Physics, Statistics, Engineering, or a related scientific discipline - 5-10 years' experience in a comparable risk, analytics, or quantitative role - High level of technical proficiency, including Python - Experience in market risk management is advantageous - Strong attention to detail and a high standard of analytical accuracy -",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6cba465a8c2d1857a968a57f7a547c70:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.df7ccf36cd909457be",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6cba465a8c2d1857a968a57f7a547c70",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Risk Reporting & Analytics Lead London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our risk team in London as a Risk Analytics Associate, supporting some of the firm's most complex and high-impact initiatives. Role responsibilities - Perform detailed analysis of VaR, stress and scenario results, identifying key drivers and escalating material risks in partnership with trading and risk management teams - Produce, enhance and interpret sophisticated risk analytics and reporting across multi-asset portfolios, including systematic strategies - Support day-to-day risk monitoring processes while contributing to longer-term enhancements of the risk analytics framework - Work closely with front office traders, quants and senior risk stakeholders to provide actionable risk insight - Liaise with further stakeholders across the firm, including the wider risk function, operations, and senior leadership Required experience and skills - Degree in Mathematics, Physics, Statistics, Engineering, or a related scientific discipline - 5-10 years' experience in a comparable risk, analytics, or quantitative role - High level of technical proficiency, including Python - Experience in market risk management is advantageous - Strong attention to detail and a high standard of analytical accuracy -",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6cba465a8c2d1857a968a57f7a547c70:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.044a6e6559c6af05f2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6cba465a8c2d1857a968a57f7a547c70",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6cba465a8c2d1857a968a57f7a547c70:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0880fd1be830f40b88",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6cba465a8c2d1857a968a57f7a547c70",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6cba465a8c2d1857a968a57f7a547c70:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.eddef4b8191abb4912",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6cba465a8c2d1857a968a57f7a547c70",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:6cba465a8c2d1857a968a57f7a547c70:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1e3f16e3060f3bdb28",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6cba465a8c2d1857a968a57f7a547c70",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.22da87fe4dff8a4eb4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6cba465a8c2d1857a968a57f7a547c70",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3d64435bd213a6caef",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "6cba465a8c2d1857a968a57f7a547c70",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "7e5fe29524f70bdbeef65565f8cd7b10",
      "title": "Data Platform Engineer - Database & Infrastructure",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Paris",
      "country": "FR",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-01-20T16:20:29.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8381542002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Data Platform Engineer - Database & Infrastructure Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. We operate one of the most demanding data infrastructures in finance, supporting mission-critical distributed systems across multiple database and streaming platforms, with strict requirements around availability and performance. Our environment spans both on-prem infrastructure and AWS, with a strong focus on standardization, automation, and Kubernetes-based orchestration. We are looking for an experienced Data Platform Engineer to join our DevOps team in Paris. This role is fully on-site , with a strong focus on ensuring the reliability and scalability of our production data infrastructure. Your future role within QRT: This role sits at the intersection of data engineering and infrastructure engineering, focused on building reliable, scalable, and high-performance data platforms. Your responsibilities will include: - Ensuring reliability and performance of production data systems (ClickHouse, CockroachDB, Trino, etc.) - Designing and operating database clusters on Kubernetes (via operators) - Building and maintaining data pipelines (ingestion, transformation, replication) - Driving Infrastructure-as-Code practices (Terraform, Helm) - Operating storage and data platforms across on-prem (VAST) and AWS (S3, EMR, MSK, RDS, EKS) - Managing",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.0e833db03534123266",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e5fe29524f70bdbeef65565f8cd7b10",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Data Platform Engineer - Database & Infrastructure Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. We operate one of the most demanding data infrastructures in finance, supporting mission-critical distributed systems across multiple database and streaming platforms, with strict requirements around availability and performance. Our environment spans both on-prem infrastructure and AWS, with a strong focus on standardization, automation, and Kubernetes-based orchestration. We are looking for an experienced Data Platform Engineer to join our DevOps team in Paris. This role is fully on-site , with a strong focus on ensuring the reliability and scalability of our production data infrastructure. Your future role within QRT: This role sits at the intersection of data engineering and infrastructure engineering, focused on building reliable, scalable, and high-performance data platforms. Your responsibilities will include: - Ensuring reliability and performance of production data systems (ClickHouse, CockroachDB, Trino, etc.) - Designing and operating database clusters on Kubernetes (via operators) - Building and maintaining data pipelines (ingestion, transformation, replication) - Driving Infrastructure-as-Code practices (Terraform, Helm) - Operating storage and data platforms across on-prem (VAST) and AWS (S3, EMR, MSK, RDS, EKS) - Managing",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e5fe29524f70bdbeef65565f8cd7b10:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.7fc72d061608738ec8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e5fe29524f70bdbeef65565f8cd7b10",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Data Platform Engineer - Database & Infrastructure Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. We operate one of the most demanding data infrastructures in finance, supporting mission-critical distributed systems across multiple database and streaming platforms, with strict requirements around availability and performance. Our environment spans both on-prem infrastructure and AWS, with a strong focus on standardization, automation, and Kubernetes-based orchestration. We are looking for an experienced Data Platform Engineer to join our DevOps team in Paris. This role is fully on-site , with a strong focus on ensuring the reliability and scalability of our production data infrastructure. Your future role within QRT: This role sits at the intersection of data engineering and infrastructure engineering, focused on building reliable, scalable, and high-performance data platforms. Your responsibilities will include: - Ensuring reliability and performance of production data systems (ClickHouse, CockroachDB, Trino, etc.) - Designing and operating database clusters on Kubernetes (via operators) - Building and maintaining data pipelines (ingestion, transformation, replication) - Driving Infrastructure-as-Code practices (Terraform, Helm) - Operating storage and data platforms across on-prem (VAST) and AWS (S3, EMR, MSK, RDS, EKS) - Managing",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e5fe29524f70bdbeef65565f8cd7b10:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e3c5d647f5c3d79b59",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e5fe29524f70bdbeef65565f8cd7b10",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Data Platform Engineer - Database & Infrastructure Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. We operate one of the most demanding data infrastructures in finance, supporting mission-critical distributed systems across multiple database and streaming platforms, with strict requirements around availability and performance. Our environment spans both on-prem infrastructure and AWS, with a strong focus on standardization, automation, and Kubernetes-based orchestration. We are looking for an experienced Data Platform Engineer to join our DevOps team in Paris. This role is fully on-site , with a strong focus on ensuring the reliability and scalability of our production data infrastructure. Your future role within QRT: This role sits at the intersection of data engineering and infrastructure engineering, focused on building reliable, scalable, and high-performance data platforms. Your responsibilities will include: - Ensuring reliability and performance of production data systems (ClickHouse, CockroachDB, Trino, etc.) - Designing and operating database clusters on Kubernetes (via operators) - Building and maintaining data pipelines (ingestion, transformation, replication) - Driving Infrastructure-as-Code practices (Terraform, Helm) - Operating storage and data platforms across on-prem (VAST) and AWS (S3, EMR, MSK, RDS, EKS) - Managing",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e5fe29524f70bdbeef65565f8cd7b10:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1222af6c549f37b85b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e5fe29524f70bdbeef65565f8cd7b10",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e5fe29524f70bdbeef65565f8cd7b10:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7a93c048d674d01094",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e5fe29524f70bdbeef65565f8cd7b10",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e5fe29524f70bdbeef65565f8cd7b10:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.858fd40d4457b74687",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e5fe29524f70bdbeef65565f8cd7b10",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7e5fe29524f70bdbeef65565f8cd7b10:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8d87c97d9db7fc8086",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e5fe29524f70bdbeef65565f8cd7b10",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c4437101f1ff335540",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e5fe29524f70bdbeef65565f8cd7b10",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f0fd3cfe819cdd4b49",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7e5fe29524f70bdbeef65565f8cd7b10",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "910030eaebc094d944c917ae61385c5c",
      "title": "IAM Engineer – Privileged Access & Secrets Management",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-09-23T14:41:25.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8182022002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "IAM Engineer – Privileged Access & Secrets Management London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Identity and Access Management team, responsible for safeguarding QRT's systems and data by managing authentication, authorization, and privileged access controls. The team works closely with infrastructure, application, and security specialists to enforce least privilege principles and maintain compliance with security standards. Your Future Role within QRT - Privileged Access Management (PAM) - Lead the deployment, configuration, and operation of PAM tools (e.g., CyberArk, BeyondTrust). - Define and enforce policies for privileged account usage, session monitoring, and credential rotation. - Collaborate with system owners to onboard privileged accounts and enforce least privilege principles. - Monitor and audit privileged access activities, investigate anomalies, and support incident response. - Maintain documentation and evidence for internal and external audits related to privileged access. - Secrets Management - Implement and manage secrets management platforms (e.g., HashiCorp Vault, AWS Secrets Manager). - Define secure storage, access, and rotation policies for application secrets, API keys, and credentials. - Integrate secrets management tools with CI/CD pipelines, cloud platforms, and enterprise applications. - Ensure secrets",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.468c8a0dc8e33840b6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "910030eaebc094d944c917ae61385c5c",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "IAM Engineer – Privileged Access & Secrets Management London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Identity and Access Management team, responsible for safeguarding QRT's systems and data by managing authentication, authorization, and privileged access controls. The team works closely with infrastructure, application, and security specialists to enforce least privilege principles and maintain compliance with security standards. Your Future Role within QRT - Privileged Access Management (PAM) - Lead the deployment, configuration, and operation of PAM tools (e.g., CyberArk, BeyondTrust). - Define and enforce policies for privileged account usage, session monitoring, and credential rotation. - Collaborate with system owners to onboard privileged accounts and enforce least privilege principles. - Monitor and audit privileged access activities, investigate anomalies, and support incident response. - Maintain documentation and evidence for internal and external audits related to privileged access. - Secrets Management - Implement and manage secrets management platforms (e.g., HashiCorp Vault, AWS Secrets Manager). - Define secure storage, access, and rotation policies for application secrets, API keys, and credentials. - Integrate secrets management tools with CI/CD pipelines, cloud platforms, and enterprise applications. - Ensure secrets",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:910030eaebc094d944c917ae61385c5c:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.4ee4aa22e605867972",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "910030eaebc094d944c917ae61385c5c",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "IAM Engineer – Privileged Access & Secrets Management London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Identity and Access Management team, responsible for safeguarding QRT's systems and data by managing authentication, authorization, and privileged access controls. The team works closely with infrastructure, application, and security specialists to enforce least privilege principles and maintain compliance with security standards. Your Future Role within QRT - Privileged Access Management (PAM) - Lead the deployment, configuration, and operation of PAM tools (e.g., CyberArk, BeyondTrust). - Define and enforce policies for privileged account usage, session monitoring, and credential rotation. - Collaborate with system owners to onboard privileged accounts and enforce least privilege principles. - Monitor and audit privileged access activities, investigate anomalies, and support incident response. - Maintain documentation and evidence for internal and external audits related to privileged access. - Secrets Management - Implement and manage secrets management platforms (e.g., HashiCorp Vault, AWS Secrets Manager). - Define secure storage, access, and rotation policies for application secrets, API keys, and credentials. - Integrate secrets management tools with CI/CD pipelines, cloud platforms, and enterprise applications. - Ensure secrets",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:910030eaebc094d944c917ae61385c5c:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.8b30fb9373e5c13d24",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "910030eaebc094d944c917ae61385c5c",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "IAM Engineer – Privileged Access & Secrets Management London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Identity and Access Management team, responsible for safeguarding QRT's systems and data by managing authentication, authorization, and privileged access controls. The team works closely with infrastructure, application, and security specialists to enforce least privilege principles and maintain compliance with security standards. Your Future Role within QRT - Privileged Access Management (PAM) - Lead the deployment, configuration, and operation of PAM tools (e.g., CyberArk, BeyondTrust). - Define and enforce policies for privileged account usage, session monitoring, and credential rotation. - Collaborate with system owners to onboard privileged accounts and enforce least privilege principles. - Monitor and audit privileged access activities, investigate anomalies, and support incident response. - Maintain documentation and evidence for internal and external audits related to privileged access. - Secrets Management - Implement and manage secrets management platforms (e.g., HashiCorp Vault, AWS Secrets Manager). - Define secure storage, access, and rotation policies for application secrets, API keys, and credentials. - Integrate secrets management tools with CI/CD pipelines, cloud platforms, and enterprise applications. - Ensure secrets",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:910030eaebc094d944c917ae61385c5c:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a0e7f6536999c24fa8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "910030eaebc094d944c917ae61385c5c",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:910030eaebc094d944c917ae61385c5c:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f405f5c490ce799f1d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "910030eaebc094d944c917ae61385c5c",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:910030eaebc094d944c917ae61385c5c:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ff9d37cce5cd544d4e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "910030eaebc094d944c917ae61385c5c",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:910030eaebc094d944c917ae61385c5c:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.216f7ae537e3cc6e2a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "910030eaebc094d944c917ae61385c5c",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.61818feb08cc85a72e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "910030eaebc094d944c917ae61385c5c",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9fd35d335c5fa983ec",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "910030eaebc094d944c917ae61385c5c",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "a6857888735d592e03fc134988991854",
      "title": "HR Operations Specialist",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Singapore",
      "country": "SG",
      "employment_type": "contract",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-18T09:20:47.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8554514002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "HR Operations Specialist Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. We are seeking an exceptional HR Operations Specialist, who is a strategic thinker, innovative problem solver, and passionate about ensuring operational excellence. You will join a dynamic and flexible team that is enabling QRT's fast scaling by leveraging modern HR tools and processes. Your future role at QRT - Facilitating all operational processes across the employee lifecycle including contract preparation, background screenings, immigration support, onboarding, offboarding, transfers and HRIS changes. - Delivering best-in-class support to employees and HR Business Partners across a wide range of employee experience areas. - Working closely with our Compensation, Payroll, Global Mobility, and Talent Development teams to drive impactful cross-functional projects. - Maintaining high quality data and regularly reviewing data quality for employee related processes. - Driving process enhancements and automation initiatives that support our ability to scale effectively and efficiently. Your present skillset - Awareness of multi-jurisdictional employment law, specifically within the APAC region - Experience using modern HR ops tools across HRIS, ticket management and automation - Demonstrated problem solving and project management skills - High",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "hr",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.091848873bec82884b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a6857888735d592e03fc134988991854",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "HR Operations Specialist Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. We are seeking an exceptional HR Operations Specialist, who is a strategic thinker, innovative problem solver, and passionate about ensuring operational excellence. You will join a dynamic and flexible team that is enabling QRT's fast scaling by leveraging modern HR tools and processes. Your future role at QRT - Facilitating all operational processes across the employee lifecycle including contract preparation, background screenings, immigration support, onboarding, offboarding, transfers and HRIS changes. - Delivering best-in-class support to employees and HR Business Partners across a wide range of employee experience areas. - Working closely with our Compensation, Payroll, Global Mobility, and Talent Development teams to drive impactful cross-functional projects. - Maintaining high quality data and regularly reviewing data quality for employee related processes. - Driving process enhancements and automation initiatives that support our ability to scale effectively and efficiently. Your present skillset - Awareness of multi-jurisdictional employment law, specifically within the APAC region - Experience using modern HR ops tools across HRIS, ticket management and automation - Demonstrated problem solving and project management skills - High",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a6857888735d592e03fc134988991854:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b5f4b883c210c042b9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a6857888735d592e03fc134988991854",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "HR Operations Specialist Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. We are seeking an exceptional HR Operations Specialist, who is a strategic thinker, innovative problem solver, and passionate about ensuring operational excellence. You will join a dynamic and flexible team that is enabling QRT's fast scaling by leveraging modern HR tools and processes. Your future role at QRT - Facilitating all operational processes across the employee lifecycle including contract preparation, background screenings, immigration support, onboarding, offboarding, transfers and HRIS changes. - Delivering best-in-class support to employees and HR Business Partners across a wide range of employee experience areas. - Working closely with our Compensation, Payroll, Global Mobility, and Talent Development teams to drive impactful cross-functional projects. - Maintaining high quality data and regularly reviewing data quality for employee related processes. - Driving process enhancements and automation initiatives that support our ability to scale effectively and efficiently. Your present skillset - Awareness of multi-jurisdictional employment law, specifically within the APAC region - Experience using modern HR ops tools across HRIS, ticket management and automation - Demonstrated problem solving and project management skills - High",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a6857888735d592e03fc134988991854:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c4491c233074bcb2c9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a6857888735d592e03fc134988991854",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "HR Operations Specialist Singapore Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. We are seeking an exceptional HR Operations Specialist, who is a strategic thinker, innovative problem solver, and passionate about ensuring operational excellence. You will join a dynamic and flexible team that is enabling QRT's fast scaling by leveraging modern HR tools and processes. Your future role at QRT - Facilitating all operational processes across the employee lifecycle including contract preparation, background screenings, immigration support, onboarding, offboarding, transfers and HRIS changes. - Delivering best-in-class support to employees and HR Business Partners across a wide range of employee experience areas. - Working closely with our Compensation, Payroll, Global Mobility, and Talent Development teams to drive impactful cross-functional projects. - Maintaining high quality data and regularly reviewing data quality for employee related processes. - Driving process enhancements and automation initiatives that support our ability to scale effectively and efficiently. Your present skillset - Awareness of multi-jurisdictional employment law, specifically within the APAC region - Experience using modern HR ops tools across HRIS, ticket management and automation - Demonstrated problem solving and project management skills - High",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a6857888735d592e03fc134988991854:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5e2ca58438fe62be44",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a6857888735d592e03fc134988991854",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a6857888735d592e03fc134988991854:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f4d024e4cae06a95ce",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a6857888735d592e03fc134988991854",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a6857888735d592e03fc134988991854:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f9f4e917e9b5cb9261",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a6857888735d592e03fc134988991854",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a6857888735d592e03fc134988991854:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.006e5dc0d839c378ad",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a6857888735d592e03fc134988991854",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.54803f29f66dfb9911",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a6857888735d592e03fc134988991854",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ce1b5ab20966623ede",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a6857888735d592e03fc134988991854",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "e108af47042b5f45336e5106cd3cedcb",
      "title": "Quantitative Developer - Python, C#",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Paris",
      "country": "FR",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-02-04T10:10:28.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8392975002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Quantitative Developer - Python, C# Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: - Collaborate closely with quantitative traders to design and build systematic, data-driven trading strategies - Develop and maintain real-time tools used to compute indicators that drive these strategies Your present skillset: - Strong experience delivering production-quality Python applications - Hands-on production experience in C# or a similar language (C / C++ / Java) - Proven experience building, deploying, and supporting production systems - Ability to manage priorities effectively and work collaboratively in a fast-paced environment - Excellent communication and interpersonal skills Nice to have: - Previous experience in finance, particularly within a hedge fund environment - Exposure to a technical leadership or architectural role - Knowledge of AWS or a comparable cloud platform - Experience building dashboards or working with data visualization tools QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to work openly and respectfully to achieve collective success. In addition to professional achievement, we are offering initiatives and programs to enable employees achieve a healthy",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.3c11ef5ef0b93c3dbd",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e108af47042b5f45336e5106cd3cedcb",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Python, C# Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: - Collaborate closely with quantitative traders to design and build systematic, data-driven trading strategies - Develop and maintain real-time tools used to compute indicators that drive these strategies Your present skillset: - Strong experience delivering production-quality Python applications - Hands-on production experience in C# or a similar language (C / C++ / Java) - Proven experience building, deploying, and supporting production systems - Ability to manage priorities effectively and work collaboratively in a fast-paced environment - Excellent communication and interpersonal skills Nice to have: - Previous experience in finance, particularly within a hedge fund environment - Exposure to a technical leadership or architectural role - Knowledge of AWS or a comparable cloud platform - Experience building dashboards or working with data visualization tools QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to work openly and respectfully to achieve collective success. In addition to professional achievement, we are offering initiatives and programs to enable employees achieve a healthy",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e108af47042b5f45336e5106cd3cedcb:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.94769bd9e78af82df3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e108af47042b5f45336e5106cd3cedcb",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Python, C# Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: - Collaborate closely with quantitative traders to design and build systematic, data-driven trading strategies - Develop and maintain real-time tools used to compute indicators that drive these strategies Your present skillset: - Strong experience delivering production-quality Python applications - Hands-on production experience in C# or a similar language (C / C++ / Java) - Proven experience building, deploying, and supporting production systems - Ability to manage priorities effectively and work collaboratively in a fast-paced environment - Excellent communication and interpersonal skills Nice to have: - Previous experience in finance, particularly within a hedge fund environment - Exposure to a technical leadership or architectural role - Knowledge of AWS or a comparable cloud platform - Experience building dashboards or working with data visualization tools QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to work openly and respectfully to achieve collective success. In addition to professional achievement, we are offering initiatives and programs to enable employees achieve a healthy",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e108af47042b5f45336e5106cd3cedcb:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.a3043357f6593f35db",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e108af47042b5f45336e5106cd3cedcb",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Python, C# Paris Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT: - Collaborate closely with quantitative traders to design and build systematic, data-driven trading strategies - Develop and maintain real-time tools used to compute indicators that drive these strategies Your present skillset: - Strong experience delivering production-quality Python applications - Hands-on production experience in C# or a similar language (C / C++ / Java) - Proven experience building, deploying, and supporting production systems - Ability to manage priorities effectively and work collaboratively in a fast-paced environment - Excellent communication and interpersonal skills Nice to have: - Previous experience in finance, particularly within a hedge fund environment - Exposure to a technical leadership or architectural role - Knowledge of AWS or a comparable cloud platform - Experience building dashboards or working with data visualization tools QRT is an equal opportunity employer. We welcome diversity as essential to our success. QRT empowers employees to work openly and respectfully to achieve collective success. In addition to professional achievement, we are offering initiatives and programs to enable employees achieve a healthy",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e108af47042b5f45336e5106cd3cedcb:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.421cc0b23e0504b17c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e108af47042b5f45336e5106cd3cedcb",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e108af47042b5f45336e5106cd3cedcb:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bf06eb1916802a1476",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e108af47042b5f45336e5106cd3cedcb",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e108af47042b5f45336e5106cd3cedcb:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cb1c57f910c1f93000",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e108af47042b5f45336e5106cd3cedcb",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e108af47042b5f45336e5106cd3cedcb:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0c9d0e893ae4875870",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e108af47042b5f45336e5106cd3cedcb",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.91b23a7506a6aca8ba",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e108af47042b5f45336e5106cd3cedcb",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9b943e4550769edc46",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e108af47042b5f45336e5106cd3cedcb",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "eb39812226458b055959bd32c5b3d461",
      "title": "Business Data Analyst",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-21T16:07:08.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8560275002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Business Data Analyst London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will join a growing Business Data & Analytics (BDA) team playing a key role in supporting the development of our applications. In this role, you will collaborate with cross functional teams to transform internal and external data into high-value insight for senior stakeholder Your Future Role within QRT · Partner with talent and business teams to create and deliver people analytics solutions · Conduct advanced analysis across internal and external datasets to uncover trends, insights, and new perspectives on people data · Develop and enhance analytical tools and prototype features that provide clear and actionable insights for senior stakeholders · Apply creative and analytical thinking to explore new ways of structuring, visualising, and communicating complex datasets and ideas · Manage the end-to-end analytics lifecycle, from data collection and validation through to reporting and visualisation, ensuring strong data integrity and reliability · Work cross-functionally to improve existing analytics capabilities and identify new opportunities for insight generation and workflow enhancement Your Present Skill Set · 1-3 years of experience in Data Science, Analytics,",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.412f7e92254fc98916",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "eb39812226458b055959bd32c5b3d461",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Business Data Analyst London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will join a growing Business Data & Analytics (BDA) team playing a key role in supporting the development of our applications. In this role, you will collaborate with cross functional teams to transform internal and external data into high-value insight for senior stakeholder Your Future Role within QRT · Partner with talent and business teams to create and deliver people analytics solutions · Conduct advanced analysis across internal and external datasets to uncover trends, insights, and new perspectives on people data · Develop and enhance analytical tools and prototype features that provide clear and actionable insights for senior stakeholders · Apply creative and analytical thinking to explore new ways of structuring, visualising, and communicating complex datasets and ideas · Manage the end-to-end analytics lifecycle, from data collection and validation through to reporting and visualisation, ensuring strong data integrity and reliability · Work cross-functionally to improve existing analytics capabilities and identify new opportunities for insight generation and workflow enhancement Your Present Skill Set · 1-3 years of experience in Data Science, Analytics,",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:eb39812226458b055959bd32c5b3d461:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b0852cad6e408e5011",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "eb39812226458b055959bd32c5b3d461",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Business Data Analyst London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will join a growing Business Data & Analytics (BDA) team playing a key role in supporting the development of our applications. In this role, you will collaborate with cross functional teams to transform internal and external data into high-value insight for senior stakeholder Your Future Role within QRT · Partner with talent and business teams to create and deliver people analytics solutions · Conduct advanced analysis across internal and external datasets to uncover trends, insights, and new perspectives on people data · Develop and enhance analytical tools and prototype features that provide clear and actionable insights for senior stakeholders · Apply creative and analytical thinking to explore new ways of structuring, visualising, and communicating complex datasets and ideas · Manage the end-to-end analytics lifecycle, from data collection and validation through to reporting and visualisation, ensuring strong data integrity and reliability · Work cross-functionally to improve existing analytics capabilities and identify new opportunities for insight generation and workflow enhancement Your Present Skill Set · 1-3 years of experience in Data Science, Analytics,",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:eb39812226458b055959bd32c5b3d461:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b8a52546078cada7e2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "eb39812226458b055959bd32c5b3d461",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Business Data Analyst London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The successful candidate will join a growing Business Data & Analytics (BDA) team playing a key role in supporting the development of our applications. In this role, you will collaborate with cross functional teams to transform internal and external data into high-value insight for senior stakeholder Your Future Role within QRT · Partner with talent and business teams to create and deliver people analytics solutions · Conduct advanced analysis across internal and external datasets to uncover trends, insights, and new perspectives on people data · Develop and enhance analytical tools and prototype features that provide clear and actionable insights for senior stakeholders · Apply creative and analytical thinking to explore new ways of structuring, visualising, and communicating complex datasets and ideas · Manage the end-to-end analytics lifecycle, from data collection and validation through to reporting and visualisation, ensuring strong data integrity and reliability · Work cross-functionally to improve existing analytics capabilities and identify new opportunities for insight generation and workflow enhancement Your Present Skill Set · 1-3 years of experience in Data Science, Analytics,",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:eb39812226458b055959bd32c5b3d461:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a2d18f06eb974aab8d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "eb39812226458b055959bd32c5b3d461",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:eb39812226458b055959bd32c5b3d461:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b0106dd477aecab9b7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "eb39812226458b055959bd32c5b3d461",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:eb39812226458b055959bd32c5b3d461:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ba1ded0a1f26b01c15",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "eb39812226458b055959bd32c5b3d461",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:eb39812226458b055959bd32c5b3d461:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.018091f705b368df53",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "eb39812226458b055959bd32c5b3d461",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.90ad909fa226b8bc62",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "eb39812226458b055959bd32c5b3d461",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ec3bd3d7f2f62c90fc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "eb39812226458b055959bd32c5b3d461",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "f7e47a9f0a13aa5c356da156965e794b",
      "title": "Legal Counsel (Employment Lawyer)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-11T09:50:35.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8517159002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Legal Counsel (Employment Lawyer) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Legal team in London as an Employment Lawyer, partnering closely with HR and business stakeholders and supporting employment law matters across the firm's global offices. Your future role within QRT: - Work as part of the legal team in London, contributing to coverage across the firm's global offices - Provide pragmatic, business-focused legal advice across employment law matters, with a focus on UK law and broader global considerations - Act as a key point of contact for designated stakeholders across the business - Partner closely with HR to provide proactive legal input on people-related initiatives and risk management - Support the management of employment-related disputes and litigation, working with external counsel where required - Work closely with colleagues across regions on employment-related matters globally - Advise the business, delivering clear and commercially focused legal guidance - Assist with the management and coordination of external legal counsel on broader employment matters - Contribute to the development and implementation of employment-related policies and practices Your present skillset: - Qualified lawyer with 5+",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "legal",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e1160a781ed0e0e765",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f7e47a9f0a13aa5c356da156965e794b",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Legal Counsel (Employment Lawyer) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Legal team in London as an Employment Lawyer, partnering closely with HR and business stakeholders and supporting employment law matters across the firm's global offices. Your future role within QRT: - Work as part of the legal team in London, contributing to coverage across the firm's global offices - Provide pragmatic, business-focused legal advice across employment law matters, with a focus on UK law and broader global considerations - Act as a key point of contact for designated stakeholders across the business - Partner closely with HR to provide proactive legal input on people-related initiatives and risk management - Support the management of employment-related disputes and litigation, working with external counsel where required - Work closely with colleagues across regions on employment-related matters globally - Advise the business, delivering clear and commercially focused legal guidance - Assist with the management and coordination of external legal counsel on broader employment matters - Contribute to the development and implementation of employment-related policies and practices Your present skillset: - Qualified lawyer with 5+",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f7e47a9f0a13aa5c356da156965e794b:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e31a830209de422205",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f7e47a9f0a13aa5c356da156965e794b",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Legal Counsel (Employment Lawyer) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Legal team in London as an Employment Lawyer, partnering closely with HR and business stakeholders and supporting employment law matters across the firm's global offices. Your future role within QRT: - Work as part of the legal team in London, contributing to coverage across the firm's global offices - Provide pragmatic, business-focused legal advice across employment law matters, with a focus on UK law and broader global considerations - Act as a key point of contact for designated stakeholders across the business - Partner closely with HR to provide proactive legal input on people-related initiatives and risk management - Support the management of employment-related disputes and litigation, working with external counsel where required - Work closely with colleagues across regions on employment-related matters globally - Advise the business, delivering clear and commercially focused legal guidance - Assist with the management and coordination of external legal counsel on broader employment matters - Contribute to the development and implementation of employment-related policies and practices Your present skillset: - Qualified lawyer with 5+",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f7e47a9f0a13aa5c356da156965e794b:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f15b117fedd67f2ca6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f7e47a9f0a13aa5c356da156965e794b",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Legal Counsel (Employment Lawyer) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Legal team in London as an Employment Lawyer, partnering closely with HR and business stakeholders and supporting employment law matters across the firm's global offices. Your future role within QRT: - Work as part of the legal team in London, contributing to coverage across the firm's global offices - Provide pragmatic, business-focused legal advice across employment law matters, with a focus on UK law and broader global considerations - Act as a key point of contact for designated stakeholders across the business - Partner closely with HR to provide proactive legal input on people-related initiatives and risk management - Support the management of employment-related disputes and litigation, working with external counsel where required - Work closely with colleagues across regions on employment-related matters globally - Advise the business, delivering clear and commercially focused legal guidance - Assist with the management and coordination of external legal counsel on broader employment matters - Contribute to the development and implementation of employment-related policies and practices Your present skillset: - Qualified lawyer with 5+",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f7e47a9f0a13aa5c356da156965e794b:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.13748cad5e656c1da7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f7e47a9f0a13aa5c356da156965e794b",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f7e47a9f0a13aa5c356da156965e794b:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3b942b50796a631849",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f7e47a9f0a13aa5c356da156965e794b",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f7e47a9f0a13aa5c356da156965e794b:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5c91f81f1e868632ab",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f7e47a9f0a13aa5c356da156965e794b",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f7e47a9f0a13aa5c356da156965e794b:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.27678fd22e75405326",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f7e47a9f0a13aa5c356da156965e794b",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b9eee83e299f97c30d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f7e47a9f0a13aa5c356da156965e794b",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bcb8e94a25ddaad6d7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f7e47a9f0a13aa5c356da156965e794b",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "fe6b90f9277c5acc135718033ddfcbe5",
      "title": "Operations Associate",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-04T09:30:19.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8572263002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Operations Associate London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Global Operations team in London, taking ownership of Brokerage Commissions, Fees & Expenses across multiple asset classes. Working closely with Trading Desks, COOs, Operations teams, and external brokers, the role combines hands-on brokerage fee and commission oversight with stakeholder management, reporting, analysis, and process improvement initiatives across the function. Your future role within QRT: - Reconcile and oversee brokerage commissions, execution costs, and trading-related expenses across multiple asset classes. - Investigate and resolve commission and fee-related breaks with internal teams and external brokers. - Partner closely with Trading Desks, COOs, Operations teams, and brokers to provide reporting, analysis, and insights around brokerage costs and execution trends. - Build and maintain reporting, metrics, and analysis to support cost oversight, operational decision-making, and stakeholder discussions. - Develop strong relationships with internal stakeholders and external brokers across global teams. - Support process improvements, controls, automation initiatives, and workflow enhancements across the function. - Work closely with Operations Development teams on reporting and process scalability initiatives. - Take ownership of stakeholder groups and product coverage areas.",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "operations",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b1e8830aa87dec6f3a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fe6b90f9277c5acc135718033ddfcbe5",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Global Operations team in London, taking ownership of Brokerage Commissions, Fees & Expenses across multiple asset classes. Working closely with Trading Desks, COOs, Operations teams, and external brokers, the role combines hands-on brokerage fee and commission oversight with stakeholder management, reporting, analysis, and process improvement initiatives across the function. Your future role within QRT: - Reconcile and oversee brokerage commissions, execution costs, and trading-related expenses across multiple asset classes. - Investigate and resolve commission and fee-related breaks with internal teams and external brokers. - Partner closely with Trading Desks, COOs, Operations teams, and brokers to provide reporting, analysis, and insights around brokerage costs and execution trends. - Build and maintain reporting, metrics, and analysis to support cost oversight, operational decision-making, and stakeholder discussions. - Develop strong relationships with internal stakeholders and external brokers across global teams. - Support process improvements, controls, automation initiatives, and workflow enhancements across the function. - Work closely with Operations Development teams on reporting and process scalability initiatives. - Take ownership of stakeholder groups and product coverage areas.",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:fe6b90f9277c5acc135718033ddfcbe5:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e37a28b237066eadcb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fe6b90f9277c5acc135718033ddfcbe5",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Global Operations team in London, taking ownership of Brokerage Commissions, Fees & Expenses across multiple asset classes. Working closely with Trading Desks, COOs, Operations teams, and external brokers, the role combines hands-on brokerage fee and commission oversight with stakeholder management, reporting, analysis, and process improvement initiatives across the function. Your future role within QRT: - Reconcile and oversee brokerage commissions, execution costs, and trading-related expenses across multiple asset classes. - Investigate and resolve commission and fee-related breaks with internal teams and external brokers. - Partner closely with Trading Desks, COOs, Operations teams, and brokers to provide reporting, analysis, and insights around brokerage costs and execution trends. - Build and maintain reporting, metrics, and analysis to support cost oversight, operational decision-making, and stakeholder discussions. - Develop strong relationships with internal stakeholders and external brokers across global teams. - Support process improvements, controls, automation initiatives, and workflow enhancements across the function. - Work closely with Operations Development teams on reporting and process scalability initiatives. - Take ownership of stakeholder groups and product coverage areas.",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:fe6b90f9277c5acc135718033ddfcbe5:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.ee52613412298798c4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fe6b90f9277c5acc135718033ddfcbe5",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our Global Operations team in London, taking ownership of Brokerage Commissions, Fees & Expenses across multiple asset classes. Working closely with Trading Desks, COOs, Operations teams, and external brokers, the role combines hands-on brokerage fee and commission oversight with stakeholder management, reporting, analysis, and process improvement initiatives across the function. Your future role within QRT: - Reconcile and oversee brokerage commissions, execution costs, and trading-related expenses across multiple asset classes. - Investigate and resolve commission and fee-related breaks with internal teams and external brokers. - Partner closely with Trading Desks, COOs, Operations teams, and brokers to provide reporting, analysis, and insights around brokerage costs and execution trends. - Build and maintain reporting, metrics, and analysis to support cost oversight, operational decision-making, and stakeholder discussions. - Develop strong relationships with internal stakeholders and external brokers across global teams. - Support process improvements, controls, automation initiatives, and workflow enhancements across the function. - Work closely with Operations Development teams on reporting and process scalability initiatives. - Take ownership of stakeholder groups and product coverage areas.",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:fe6b90f9277c5acc135718033ddfcbe5:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5c7327fe9b6b2dbdfa",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fe6b90f9277c5acc135718033ddfcbe5",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:fe6b90f9277c5acc135718033ddfcbe5:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.738c9daca4929b6e39",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fe6b90f9277c5acc135718033ddfcbe5",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:fe6b90f9277c5acc135718033ddfcbe5:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bf9bb31aed0a751da3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fe6b90f9277c5acc135718033ddfcbe5",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:fe6b90f9277c5acc135718033ddfcbe5:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3ead1b781e8077e7ae",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fe6b90f9277c5acc135718033ddfcbe5",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7c07f537ef58ce0644",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fe6b90f9277c5acc135718033ddfcbe5",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a7f972f3bb3dd932c5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fe6b90f9277c5acc135718033ddfcbe5",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "505bde015e3847141eed32d7d7bae0a9",
      "title": "VIE in Research",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2020-08-03T10:08:58.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/4812537002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "VIE in Research London Your future role within QRT - Your core objective is to create high quality predictive signals. - By leveraging access to large and diversified datasets you will identify statistical patterns and opportunities. - Share and discuss research results, methodology, data sets and processes with other researchers. Your present skillset - Pursuing an advanced degree in a quantitative field such as data science, statistics, mathematics, physics or engineering. - Strong knowledge in statistics, machine learning, NLP or AI techniques is a plus. - Capacity to multi-task in a fast paced environment while keeping strong attention to detail. - Coding skills required in at least one leading programing language (Python, R, Matlab and /or C++, C#). - Experience in exploring large datasets across multiple time frames is a plus. To apply please submit your details below and on https://mon-vie-via.businessfrance.fr/",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.cd9fb79ce08f567ad4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "505bde015e3847141eed32d7d7bae0a9",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "VIE in Research London Your future role within QRT - Your core objective is to create high quality predictive signals. - By leveraging access to large and diversified datasets you will identify statistical patterns and opportunities. - Share and discuss research results, methodology, data sets and processes with other researchers. Your present skillset - Pursuing an advanced degree in a quantitative field such as data science, statistics, mathematics, physics or engineering. - Strong knowledge in statistics, machine learning, NLP or AI techniques is a plus. - Capacity to multi-task in a fast paced environment while keeping strong attention to detail. - Coding skills required in at least one leading programing language (Python, R, Matlab and /or C++, C#). - Experience in exploring large datasets across multiple time frames is a plus. To apply please submit your details below and on https://mon-vie-via.businessfrance.fr/",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:505bde015e3847141eed32d7d7bae0a9:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.28a5f0e2f4f489755d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "505bde015e3847141eed32d7d7bae0a9",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:505bde015e3847141eed32d7d7bae0a9:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bdc4c9fb3c6de356c1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "505bde015e3847141eed32d7d7bae0a9",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:505bde015e3847141eed32d7d7bae0a9:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d61e62d3cd4fac3fbf",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "505bde015e3847141eed32d7d7bae0a9",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:505bde015e3847141eed32d7d7bae0a9:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.c447caa1cc4c4398a6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "505bde015e3847141eed32d7d7bae0a9",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "VIE in Research",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:505bde015e3847141eed32d7d7bae0a9:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.2c1c988938bde24f45",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "505bde015e3847141eed32d7d7bae0a9",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.dd80be2464cce34bf6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "505bde015e3847141eed32d7d7bae0a9",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.ca304f6e672ee1ebbd",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "505bde015e3847141eed32d7d7bae0a9",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "VIE in Research",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "7c9528ccca08999a87fb8d33f7cd8832",
      "title": "APAC COO Trading Implementation Analyst",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-04T09:36:33.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8576094002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "APAC COO Trading Implementation Analyst Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, enabling us to solve complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Join our COO team in Hong Kong as a Trading Implementation Specialist, responsible for delivering strategic and operational initiatives across QRT's electronic trading environment. Working closely with Trading, Technology, Infrastructure, Operations, Product and Compliance teams, you will coordinate and deliver projects that support the expansion and optimisation of our trading capabilities across APAC markets. Your future role at QRT: - Lead strategic projects across Trading, Technology, Infrastructure and Operations teams. - Coordinate the implementation of new trading capabilities, markets, brokers, exchanges, trading venues and products. - Drive electronic trading infrastructure initiatives and ensure alignment across trading desks and supporting teams. - Support market access, exchange connectivity, venue onboarding, low-latency and co-location projects across APAC. - Partner with exchanges, broker-dealers, vendors and internal stakeholders to evaluate and implement trading solutions. - Manage project timelines, dependencies, risks, testing and deployment activities. - Facilitate communication between Trading, Technology, Infrastructure, Product, Legal, Compliance, Risk and Operations teams. - Support day-to-day trading desk initiatives and contribute to the ongoing optimisation of QRT's electronic trading platform. Your present skillset: - Bachelor's",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "operations",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "bachelors",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c42f6ff3f484b4cbbc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c9528ccca08999a87fb8d33f7cd8832",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "APAC COO Trading Implementation Analyst Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, enabling us to solve complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Join our COO team in Hong Kong as a Trading Implementation Specialist, responsible for delivering strategic and operational initiatives across QRT's electronic trading environment. Working closely with Trading, Technology, Infrastructure, Operations, Product and Compliance teams, you will coordinate and deliver projects that support the expansion and optimisation of our trading capabilities across APAC markets. Your future role at QRT: - Lead strategic projects across Trading, Technology, Infrastructure and Operations teams. - Coordinate the implementation of new trading capabilities, markets, brokers, exchanges, trading venues and products. - Drive electronic trading infrastructure initiatives and ensure alignment across trading desks and supporting teams. - Support market access, exchange connectivity, venue onboarding, low-latency and co-location projects across APAC. - Partner with exchanges, broker-dealers, vendors and internal stakeholders to evaluate and implement trading solutions. - Manage project timelines, dependencies, risks, testing and deployment activities. - Facilitate communication between Trading, Technology, Infrastructure, Product, Legal, Compliance, Risk and Operations teams. - Support day-to-day trading desk initiatives and contribute to the ongoing optimisation of QRT's electronic trading platform. Your present skillset: - Bachelor's",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c9528ccca08999a87fb8d33f7cd8832:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.df505d940fe83a6cb7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c9528ccca08999a87fb8d33f7cd8832",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "APAC COO Trading Implementation Analyst Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, enabling us to solve complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Join our COO team in Hong Kong as a Trading Implementation Specialist, responsible for delivering strategic and operational initiatives across QRT's electronic trading environment. Working closely with Trading, Technology, Infrastructure, Operations, Product and Compliance teams, you will coordinate and deliver projects that support the expansion and optimisation of our trading capabilities across APAC markets. Your future role at QRT: - Lead strategic projects across Trading, Technology, Infrastructure and Operations teams. - Coordinate the implementation of new trading capabilities, markets, brokers, exchanges, trading venues and products. - Drive electronic trading infrastructure initiatives and ensure alignment across trading desks and supporting teams. - Support market access, exchange connectivity, venue onboarding, low-latency and co-location projects across APAC. - Partner with exchanges, broker-dealers, vendors and internal stakeholders to evaluate and implement trading solutions. - Manage project timelines, dependencies, risks, testing and deployment activities. - Facilitate communication between Trading, Technology, Infrastructure, Product, Legal, Compliance, Risk and Operations teams. - Support day-to-day trading desk initiatives and contribute to the ongoing optimisation of QRT's electronic trading platform. Your present skillset: - Bachelor's",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c9528ccca08999a87fb8d33f7cd8832:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.fb8176bee291f3eb26",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c9528ccca08999a87fb8d33f7cd8832",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "APAC COO Trading Implementation Analyst Hong Kong Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, enabling us to solve complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. Join our COO team in Hong Kong as a Trading Implementation Specialist, responsible for delivering strategic and operational initiatives across QRT's electronic trading environment. Working closely with Trading, Technology, Infrastructure, Operations, Product and Compliance teams, you will coordinate and deliver projects that support the expansion and optimisation of our trading capabilities across APAC markets. Your future role at QRT: - Lead strategic projects across Trading, Technology, Infrastructure and Operations teams. - Coordinate the implementation of new trading capabilities, markets, brokers, exchanges, trading venues and products. - Drive electronic trading infrastructure initiatives and ensure alignment across trading desks and supporting teams. - Support market access, exchange connectivity, venue onboarding, low-latency and co-location projects across APAC. - Partner with exchanges, broker-dealers, vendors and internal stakeholders to evaluate and implement trading solutions. - Manage project timelines, dependencies, risks, testing and deployment activities. - Facilitate communication between Trading, Technology, Infrastructure, Product, Legal, Compliance, Risk and Operations teams. - Support day-to-day trading desk initiatives and contribute to the ongoing optimisation of QRT's electronic trading platform. Your present skillset: - Bachelor's",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c9528ccca08999a87fb8d33f7cd8832:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0e1bfe47bd966d6e0c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c9528ccca08999a87fb8d33f7cd8832",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c9528ccca08999a87fb8d33f7cd8832:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5c65b5357b684b7a25",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c9528ccca08999a87fb8d33f7cd8832",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c9528ccca08999a87fb8d33f7cd8832:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.909af45113064ff461",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c9528ccca08999a87fb8d33f7cd8832",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7c9528ccca08999a87fb8d33f7cd8832:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9632cd9395794199b4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c9528ccca08999a87fb8d33f7cd8832",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d6e1abf5d8714719bf",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c9528ccca08999a87fb8d33f7cd8832",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.efcb582896929b0e6b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7c9528ccca08999a87fb8d33f7cd8832",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "3be4c508251f10c4de3aa50e53f774da",
      "title": "Senior Developer - Core Trading Technology",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-08-13T17:09:37.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8117154002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Developer - Core Trading Technology London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Core Trading Platform team, which is responsible for the design and operation of QRT's global electronic trading infrastructure. This team builds and maintains the ultra-low latency systems that underpin real-time trading, managing performance-critical workflows across global markets. You will work closely with developers, traders, and operations to optimise system behaviour, reduce latency, and ensure platform reliability at scale. Your future role within QRT - Design and implement low-latency trading systems on Linux, focused on throughput, reliability, and determinism - Engineer scalable, high-performance distributed systems that support global real-time trading workflows - Analyse system behaviour using low-level tools such as packet captures, core dumps, and runtime profilers - Apply deep expertise in TCP, UDP, and multicast to understanding trade-offs in short-haul vs long-haul networks - Continuously profile, benchmark, and optimise code to reduce latency and increase throughput - Engage across the full software lifecycle: from architecture to debugging in live trading environments Your present skillset - 5+ years of professional C++/C development experience on Linux, including modern C++ and",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "product",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.0a3d53ef0b762114a9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3be4c508251f10c4de3aa50e53f774da",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Developer - Core Trading Technology London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Core Trading Platform team, which is responsible for the design and operation of QRT's global electronic trading infrastructure. This team builds and maintains the ultra-low latency systems that underpin real-time trading, managing performance-critical workflows across global markets. You will work closely with developers, traders, and operations to optimise system behaviour, reduce latency, and ensure platform reliability at scale. Your future role within QRT - Design and implement low-latency trading systems on Linux, focused on throughput, reliability, and determinism - Engineer scalable, high-performance distributed systems that support global real-time trading workflows - Analyse system behaviour using low-level tools such as packet captures, core dumps, and runtime profilers - Apply deep expertise in TCP, UDP, and multicast to understanding trade-offs in short-haul vs long-haul networks - Continuously profile, benchmark, and optimise code to reduce latency and increase throughput - Engage across the full software lifecycle: from architecture to debugging in live trading environments Your present skillset - 5+ years of professional C++/C development experience on Linux, including modern C++ and",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3be4c508251f10c4de3aa50e53f774da:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.95f5ac5db4d1cc9f74",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3be4c508251f10c4de3aa50e53f774da",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Developer - Core Trading Technology London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Core Trading Platform team, which is responsible for the design and operation of QRT's global electronic trading infrastructure. This team builds and maintains the ultra-low latency systems that underpin real-time trading, managing performance-critical workflows across global markets. You will work closely with developers, traders, and operations to optimise system behaviour, reduce latency, and ensure platform reliability at scale. Your future role within QRT - Design and implement low-latency trading systems on Linux, focused on throughput, reliability, and determinism - Engineer scalable, high-performance distributed systems that support global real-time trading workflows - Analyse system behaviour using low-level tools such as packet captures, core dumps, and runtime profilers - Apply deep expertise in TCP, UDP, and multicast to understanding trade-offs in short-haul vs long-haul networks - Continuously profile, benchmark, and optimise code to reduce latency and increase throughput - Engage across the full software lifecycle: from architecture to debugging in live trading environments Your present skillset - 5+ years of professional C++/C development experience on Linux, including modern C++ and",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3be4c508251f10c4de3aa50e53f774da:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.fc0053da15307a4ddf",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3be4c508251f10c4de3aa50e53f774da",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Developer - Core Trading Technology London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Core Trading Platform team, which is responsible for the design and operation of QRT's global electronic trading infrastructure. This team builds and maintains the ultra-low latency systems that underpin real-time trading, managing performance-critical workflows across global markets. You will work closely with developers, traders, and operations to optimise system behaviour, reduce latency, and ensure platform reliability at scale. Your future role within QRT - Design and implement low-latency trading systems on Linux, focused on throughput, reliability, and determinism - Engineer scalable, high-performance distributed systems that support global real-time trading workflows - Analyse system behaviour using low-level tools such as packet captures, core dumps, and runtime profilers - Apply deep expertise in TCP, UDP, and multicast to understanding trade-offs in short-haul vs long-haul networks - Continuously profile, benchmark, and optimise code to reduce latency and increase throughput - Engage across the full software lifecycle: from architecture to debugging in live trading environments Your present skillset - 5+ years of professional C++/C development experience on Linux, including modern C++ and",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3be4c508251f10c4de3aa50e53f774da:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7590c7842fbf106d94",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3be4c508251f10c4de3aa50e53f774da",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3be4c508251f10c4de3aa50e53f774da:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.886e9c637350e77a6f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3be4c508251f10c4de3aa50e53f774da",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3be4c508251f10c4de3aa50e53f774da:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8d618596ca4d150bfc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3be4c508251f10c4de3aa50e53f774da",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3be4c508251f10c4de3aa50e53f774da:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.18e679f56e9ff214d6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3be4c508251f10c4de3aa50e53f774da",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1e65ad6282ec51c996",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3be4c508251f10c4de3aa50e53f774da",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ab7f2091ca31b449c1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3be4c508251f10c4de3aa50e53f774da",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "13414455fe73999ccb9f703d2e9099c5",
      "title": "Senior Product Security Engineer - AI & LLM",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Wrocław",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-24T17:44:06.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8477415002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Product Security Engineer - AI & LLM Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will work on securing AI systems across the firm, including LLM-powered applications, AI tooling, agents, and supporting infrastructure. The role focuses on embedding security into the design, development, and operation of AI systems, working closely with engineering and platform teams to enable safe and scalable adoption. This is a hands-on role covering threat modelling, architecture review, and implementation of security controls across complex, evolving systems. Your future role within QRT - Partner with engineering and platform teams to define and implement security for AI and LLM-based systems - Perform threat modelling, architecture reviews, and security assessments for AI use cases - Design and implement security controls for AI applications, agents, model integrations, and data flows - Define secure patterns for access control, secrets management, logging, monitoring, and safe execution - Assess risks including prompt injection, data leakage, excessive permissions, and third-party AI dependencies - Contribute to reusable security patterns, guidance, and guardrails for teams building AI systems - Support security testing, vendor assessments, and incident response for AI-enabled applications",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.57eb2a94153f0c76cf",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "13414455fe73999ccb9f703d2e9099c5",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Product Security Engineer - AI & LLM Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will work on securing AI systems across the firm, including LLM-powered applications, AI tooling, agents, and supporting infrastructure. The role focuses on embedding security into the design, development, and operation of AI systems, working closely with engineering and platform teams to enable safe and scalable adoption. This is a hands-on role covering threat modelling, architecture review, and implementation of security controls across complex, evolving systems. Your future role within QRT - Partner with engineering and platform teams to define and implement security for AI and LLM-based systems - Perform threat modelling, architecture reviews, and security assessments for AI use cases - Design and implement security controls for AI applications, agents, model integrations, and data flows - Define secure patterns for access control, secrets management, logging, monitoring, and safe execution - Assess risks including prompt injection, data leakage, excessive permissions, and third-party AI dependencies - Contribute to reusable security patterns, guidance, and guardrails for teams building AI systems - Support security testing, vendor assessments, and incident response for AI-enabled applications",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:13414455fe73999ccb9f703d2e9099c5:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d8fbde07663e580197",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "13414455fe73999ccb9f703d2e9099c5",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Product Security Engineer - AI & LLM Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will work on securing AI systems across the firm, including LLM-powered applications, AI tooling, agents, and supporting infrastructure. The role focuses on embedding security into the design, development, and operation of AI systems, working closely with engineering and platform teams to enable safe and scalable adoption. This is a hands-on role covering threat modelling, architecture review, and implementation of security controls across complex, evolving systems. Your future role within QRT - Partner with engineering and platform teams to define and implement security for AI and LLM-based systems - Perform threat modelling, architecture reviews, and security assessments for AI use cases - Design and implement security controls for AI applications, agents, model integrations, and data flows - Define secure patterns for access control, secrets management, logging, monitoring, and safe execution - Assess risks including prompt injection, data leakage, excessive permissions, and third-party AI dependencies - Contribute to reusable security patterns, guidance, and guardrails for teams building AI systems - Support security testing, vendor assessments, and incident response for AI-enabled applications",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:13414455fe73999ccb9f703d2e9099c5:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.ebdf7a63d657b8d2e6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "13414455fe73999ccb9f703d2e9099c5",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Product Security Engineer - AI & LLM Wrocław Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will work on securing AI systems across the firm, including LLM-powered applications, AI tooling, agents, and supporting infrastructure. The role focuses on embedding security into the design, development, and operation of AI systems, working closely with engineering and platform teams to enable safe and scalable adoption. This is a hands-on role covering threat modelling, architecture review, and implementation of security controls across complex, evolving systems. Your future role within QRT - Partner with engineering and platform teams to define and implement security for AI and LLM-based systems - Perform threat modelling, architecture reviews, and security assessments for AI use cases - Design and implement security controls for AI applications, agents, model integrations, and data flows - Define secure patterns for access control, secrets management, logging, monitoring, and safe execution - Assess risks including prompt injection, data leakage, excessive permissions, and third-party AI dependencies - Contribute to reusable security patterns, guidance, and guardrails for teams building AI systems - Support security testing, vendor assessments, and incident response for AI-enabled applications",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:13414455fe73999ccb9f703d2e9099c5:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1b631fa12e754a9ec2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "13414455fe73999ccb9f703d2e9099c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:13414455fe73999ccb9f703d2e9099c5:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.75f88427d081d0223a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "13414455fe73999ccb9f703d2e9099c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:13414455fe73999ccb9f703d2e9099c5:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f4fb58c30c8fa0cab5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "13414455fe73999ccb9f703d2e9099c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:13414455fe73999ccb9f703d2e9099c5:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0764b1a43b549a877d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "13414455fe73999ccb9f703d2e9099c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9239ebe3889150e9dd",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "13414455fe73999ccb9f703d2e9099c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.dbd687024ddd50f34b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "13414455fe73999ccb9f703d2e9099c5",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "593d9b5237f559158ff7add6a39937b3",
      "title": "Security & Platform Engineer (Windows Infrastructure)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-01-19T10:32:39.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8379973002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Security & Platform Engineer (Windows Infrastructure) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Windows Infrastructure team, responsible for building and operating Windows and end-user platforms with a strong focus on secure-by-design engineering across Azure, Microsoft 365, Intune, and Citrix VDI. You will work closely with Security stakeholders as the Windows and end-user platform security specialist. Your Future Role within QRT You will: - Design, optimise, and enhance a highly available, scalable, and secure Windows-based platform across Microsoft Azure, Microsoft 365, Intune, and Citrix VDI - Own and evolve the Citrix DaaS / Virtual Apps and Desktops platform, ensuring performance, availability, and security requirements are met - Drive standardisation and platform hardening across Windows 10/11, VDI images, and cloud-hosted workloads - Monitor and improve performance, reliability, and cost-effectiveness across Azure, Citrix, Microsoft 365, and Intune - Act as the primary security point of contact for Windows and end-user platforms, partnering closely with Security stakeholders - Embed secure-by-design principles into Windows, cloud, identity, and VDI platform engineering - Implement and maintain endpoint and identity security controls, including Intune security baselines/configuration profiles, Conditional Access,",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.0899a01dd9dcfe0052",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "593d9b5237f559158ff7add6a39937b3",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Security & Platform Engineer (Windows Infrastructure) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Windows Infrastructure team, responsible for building and operating Windows and end-user platforms with a strong focus on secure-by-design engineering across Azure, Microsoft 365, Intune, and Citrix VDI. You will work closely with Security stakeholders as the Windows and end-user platform security specialist. Your Future Role within QRT You will: - Design, optimise, and enhance a highly available, scalable, and secure Windows-based platform across Microsoft Azure, Microsoft 365, Intune, and Citrix VDI - Own and evolve the Citrix DaaS / Virtual Apps and Desktops platform, ensuring performance, availability, and security requirements are met - Drive standardisation and platform hardening across Windows 10/11, VDI images, and cloud-hosted workloads - Monitor and improve performance, reliability, and cost-effectiveness across Azure, Citrix, Microsoft 365, and Intune - Act as the primary security point of contact for Windows and end-user platforms, partnering closely with Security stakeholders - Embed secure-by-design principles into Windows, cloud, identity, and VDI platform engineering - Implement and maintain endpoint and identity security controls, including Intune security baselines/configuration profiles, Conditional Access,",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:593d9b5237f559158ff7add6a39937b3:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.192f309496bc15f996",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "593d9b5237f559158ff7add6a39937b3",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Security & Platform Engineer (Windows Infrastructure) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Windows Infrastructure team, responsible for building and operating Windows and end-user platforms with a strong focus on secure-by-design engineering across Azure, Microsoft 365, Intune, and Citrix VDI. You will work closely with Security stakeholders as the Windows and end-user platform security specialist. Your Future Role within QRT You will: - Design, optimise, and enhance a highly available, scalable, and secure Windows-based platform across Microsoft Azure, Microsoft 365, Intune, and Citrix VDI - Own and evolve the Citrix DaaS / Virtual Apps and Desktops platform, ensuring performance, availability, and security requirements are met - Drive standardisation and platform hardening across Windows 10/11, VDI images, and cloud-hosted workloads - Monitor and improve performance, reliability, and cost-effectiveness across Azure, Citrix, Microsoft 365, and Intune - Act as the primary security point of contact for Windows and end-user platforms, partnering closely with Security stakeholders - Embed secure-by-design principles into Windows, cloud, identity, and VDI platform engineering - Implement and maintain endpoint and identity security controls, including Intune security baselines/configuration profiles, Conditional Access,",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:593d9b5237f559158ff7add6a39937b3:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.20cfd42ce16ab01fb5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "593d9b5237f559158ff7add6a39937b3",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Security & Platform Engineer (Windows Infrastructure) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Windows Infrastructure team, responsible for building and operating Windows and end-user platforms with a strong focus on secure-by-design engineering across Azure, Microsoft 365, Intune, and Citrix VDI. You will work closely with Security stakeholders as the Windows and end-user platform security specialist. Your Future Role within QRT You will: - Design, optimise, and enhance a highly available, scalable, and secure Windows-based platform across Microsoft Azure, Microsoft 365, Intune, and Citrix VDI - Own and evolve the Citrix DaaS / Virtual Apps and Desktops platform, ensuring performance, availability, and security requirements are met - Drive standardisation and platform hardening across Windows 10/11, VDI images, and cloud-hosted workloads - Monitor and improve performance, reliability, and cost-effectiveness across Azure, Citrix, Microsoft 365, and Intune - Act as the primary security point of contact for Windows and end-user platforms, partnering closely with Security stakeholders - Embed secure-by-design principles into Windows, cloud, identity, and VDI platform engineering - Implement and maintain endpoint and identity security controls, including Intune security baselines/configuration profiles, Conditional Access,",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:593d9b5237f559158ff7add6a39937b3:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1f4338c938dbc0ab9a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "593d9b5237f559158ff7add6a39937b3",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:593d9b5237f559158ff7add6a39937b3:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b271f886da101d6d97",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "593d9b5237f559158ff7add6a39937b3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:593d9b5237f559158ff7add6a39937b3:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f753259929046d12d0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "593d9b5237f559158ff7add6a39937b3",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:593d9b5237f559158ff7add6a39937b3:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1882438ffa3e78d8ea",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "593d9b5237f559158ff7add6a39937b3",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.33b2ee4f57be4471ce",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "593d9b5237f559158ff7add6a39937b3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.89201f88b5e102d806",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "593d9b5237f559158ff7add6a39937b3",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "80f444b8539c3a1d48a1be31f0ceff76",
      "title": "Quantitative Developer - HFT (C++)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-10-08T13:28:26.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8203078002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Quantitative Developer - HFT (C++) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT's High-Frequency Trading team designs and operates ultra-low-latency systems at global scale. We're hiring experienced C++ engineers who are passionate about performance, efficiency, and building highly optimized systems. You'll work on performance-critical systems with direct impact on live trading outcomes. Your future role at QRT: You'll work across our latency-critical stack - from kernel-level tuning and network optimization to highly efficient C++ components. This role involves close collaboration with our FPGA engineering team as well as our hardware and infrastructure engineers to design end-to-end architectures where every single nanosecond counts. - Design and optimize C++ systems for trading, market data, and infrastructure - Profile and fine-tune performance across CPU, cache, and memory layers - Collaborate with FPGA engineers to integrate hardware and software pathways Your present skillset: - 5+ years of experience in performance-critical C++ (C++17 or newer) - Strong grasp of systems programming, low-level understanding including memory management and CPU's architectures - Deep familiarity with Linux internals, kernel parameters, and low-level profiling - Curiosity about hardware, networking, and how systems",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.27fd0f61d1f42748a7",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "80f444b8539c3a1d48a1be31f0ceff76",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - HFT (C++) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT's High-Frequency Trading team designs and operates ultra-low-latency systems at global scale. We're hiring experienced C++ engineers who are passionate about performance, efficiency, and building highly optimized systems. You'll work on performance-critical systems with direct impact on live trading outcomes. Your future role at QRT: You'll work across our latency-critical stack - from kernel-level tuning and network optimization to highly efficient C++ components. This role involves close collaboration with our FPGA engineering team as well as our hardware and infrastructure engineers to design end-to-end architectures where every single nanosecond counts. - Design and optimize C++ systems for trading, market data, and infrastructure - Profile and fine-tune performance across CPU, cache, and memory layers - Collaborate with FPGA engineers to integrate hardware and software pathways Your present skillset: - 5+ years of experience in performance-critical C++ (C++17 or newer) - Strong grasp of systems programming, low-level understanding including memory management and CPU's architectures - Deep familiarity with Linux internals, kernel parameters, and low-level profiling - Curiosity about hardware, networking, and how systems",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:80f444b8539c3a1d48a1be31f0ceff76:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.914ff784559472b86b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "80f444b8539c3a1d48a1be31f0ceff76",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - HFT (C++) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT's High-Frequency Trading team designs and operates ultra-low-latency systems at global scale. We're hiring experienced C++ engineers who are passionate about performance, efficiency, and building highly optimized systems. You'll work on performance-critical systems with direct impact on live trading outcomes. Your future role at QRT: You'll work across our latency-critical stack - from kernel-level tuning and network optimization to highly efficient C++ components. This role involves close collaboration with our FPGA engineering team as well as our hardware and infrastructure engineers to design end-to-end architectures where every single nanosecond counts. - Design and optimize C++ systems for trading, market data, and infrastructure - Profile and fine-tune performance across CPU, cache, and memory layers - Collaborate with FPGA engineers to integrate hardware and software pathways Your present skillset: - 5+ years of experience in performance-critical C++ (C++17 or newer) - Strong grasp of systems programming, low-level understanding including memory management and CPU's architectures - Deep familiarity with Linux internals, kernel parameters, and low-level profiling - Curiosity about hardware, networking, and how systems",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:80f444b8539c3a1d48a1be31f0ceff76:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9352b188f2a370ccec",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "80f444b8539c3a1d48a1be31f0ceff76",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - HFT (C++) London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. QRT's High-Frequency Trading team designs and operates ultra-low-latency systems at global scale. We're hiring experienced C++ engineers who are passionate about performance, efficiency, and building highly optimized systems. You'll work on performance-critical systems with direct impact on live trading outcomes. Your future role at QRT: You'll work across our latency-critical stack - from kernel-level tuning and network optimization to highly efficient C++ components. This role involves close collaboration with our FPGA engineering team as well as our hardware and infrastructure engineers to design end-to-end architectures where every single nanosecond counts. - Design and optimize C++ systems for trading, market data, and infrastructure - Profile and fine-tune performance across CPU, cache, and memory layers - Collaborate with FPGA engineers to integrate hardware and software pathways Your present skillset: - 5+ years of experience in performance-critical C++ (C++17 or newer) - Strong grasp of systems programming, low-level understanding including memory management and CPU's architectures - Deep familiarity with Linux internals, kernel parameters, and low-level profiling - Curiosity about hardware, networking, and how systems",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:80f444b8539c3a1d48a1be31f0ceff76:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.18b51430727c1100e0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "80f444b8539c3a1d48a1be31f0ceff76",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:80f444b8539c3a1d48a1be31f0ceff76:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.57a276c2e42c312ba8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "80f444b8539c3a1d48a1be31f0ceff76",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:80f444b8539c3a1d48a1be31f0ceff76:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5d8377b33ce72d92b2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "80f444b8539c3a1d48a1be31f0ceff76",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:80f444b8539c3a1d48a1be31f0ceff76:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.959eadecbf816e0b86",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "80f444b8539c3a1d48a1be31f0ceff76",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ef6b5796738686f4e1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "80f444b8539c3a1d48a1be31f0ceff76",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.f46c19efcf627d96e3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "80f444b8539c3a1d48a1be31f0ceff76",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "dec8e2a0368e649413c7d43e9ccf8bdf",
      "title": "Senior Product Security Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-01-20T18:22:27.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8381639002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Product Security Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT QRT is hiring a Senior Product Security Engineer to protect diverse tech systems across cloud, business apps, and core infrastructure. In this role, you'll drive automated security processes, influence architecture, and lead strategic security projects. Working closely with IT, cloud, and engineering teams, you'll implement security solutions for low-latency systems and multi-cloud platforms, including AWS, Azure, and Alibaba Cloud. You'll also secure hybrid infrastructures across Python, C++, and Kotlin/Java environments, ensuring robust protection that supports QRT's high-speed, data-driven operations. - Support the implementation of security controls and processes for product security, focusing on a broad range of systems, including core trading infrastructure, cloud services, and business applications across both Windows and Linux environments. - Collaborate with engineering and product teams to integrate security into product design and development, applying your experience in securing large-scale software systems in a fast-moving environment. - Contribute to the development and maintenance of a secure software development lifecycle (SDLC) with a focus on secure coding practices in languages like Python, C++, Rust,",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 7,
      "years_experience_max": 11,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.94d8c84db315125fa1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "dec8e2a0368e649413c7d43e9ccf8bdf",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Product Security Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT QRT is hiring a Senior Product Security Engineer to protect diverse tech systems across cloud, business apps, and core infrastructure. In this role, you'll drive automated security processes, influence architecture, and lead strategic security projects. Working closely with IT, cloud, and engineering teams, you'll implement security solutions for low-latency systems and multi-cloud platforms, including AWS, Azure, and Alibaba Cloud. You'll also secure hybrid infrastructures across Python, C++, and Kotlin/Java environments, ensuring robust protection that supports QRT's high-speed, data-driven operations. - Support the implementation of security controls and processes for product security, focusing on a broad range of systems, including core trading infrastructure, cloud services, and business applications across both Windows and Linux environments. - Collaborate with engineering and product teams to integrate security into product design and development, applying your experience in securing large-scale software systems in a fast-moving environment. - Contribute to the development and maintenance of a secure software development lifecycle (SDLC) with a focus on secure coding practices in languages like Python, C++, Rust,",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:dec8e2a0368e649413c7d43e9ccf8bdf:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.a30f02ea40bd5be6f3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "dec8e2a0368e649413c7d43e9ccf8bdf",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Product Security Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT QRT is hiring a Senior Product Security Engineer to protect diverse tech systems across cloud, business apps, and core infrastructure. In this role, you'll drive automated security processes, influence architecture, and lead strategic security projects. Working closely with IT, cloud, and engineering teams, you'll implement security solutions for low-latency systems and multi-cloud platforms, including AWS, Azure, and Alibaba Cloud. You'll also secure hybrid infrastructures across Python, C++, and Kotlin/Java environments, ensuring robust protection that supports QRT's high-speed, data-driven operations. - Support the implementation of security controls and processes for product security, focusing on a broad range of systems, including core trading infrastructure, cloud services, and business applications across both Windows and Linux environments. - Collaborate with engineering and product teams to integrate security into product design and development, applying your experience in securing large-scale software systems in a fast-moving environment. - Contribute to the development and maintenance of a secure software development lifecycle (SDLC) with a focus on secure coding practices in languages like Python, C++, Rust,",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:dec8e2a0368e649413c7d43e9ccf8bdf:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c623862a777f418d1a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "dec8e2a0368e649413c7d43e9ccf8bdf",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Product Security Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Your future role within QRT QRT is hiring a Senior Product Security Engineer to protect diverse tech systems across cloud, business apps, and core infrastructure. In this role, you'll drive automated security processes, influence architecture, and lead strategic security projects. Working closely with IT, cloud, and engineering teams, you'll implement security solutions for low-latency systems and multi-cloud platforms, including AWS, Azure, and Alibaba Cloud. You'll also secure hybrid infrastructures across Python, C++, and Kotlin/Java environments, ensuring robust protection that supports QRT's high-speed, data-driven operations. - Support the implementation of security controls and processes for product security, focusing on a broad range of systems, including core trading infrastructure, cloud services, and business applications across both Windows and Linux environments. - Collaborate with engineering and product teams to integrate security into product design and development, applying your experience in securing large-scale software systems in a fast-moving environment. - Contribute to the development and maintenance of a secure software development lifecycle (SDLC) with a focus on secure coding practices in languages like Python, C++, Rust,",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:dec8e2a0368e649413c7d43e9ccf8bdf:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.733f56ff18fd5f17ef",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "dec8e2a0368e649413c7d43e9ccf8bdf",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:dec8e2a0368e649413c7d43e9ccf8bdf:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c11d40181b5b113a03",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "dec8e2a0368e649413c7d43e9ccf8bdf",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:dec8e2a0368e649413c7d43e9ccf8bdf:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cb44c238d538c49c67",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "dec8e2a0368e649413c7d43e9ccf8bdf",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:dec8e2a0368e649413c7d43e9ccf8bdf:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9fc2e20c06246d689b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "dec8e2a0368e649413c7d43e9ccf8bdf",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b2e2cc4df4e475d766",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "dec8e2a0368e649413c7d43e9ccf8bdf",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d67a1a251abd4d448c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "dec8e2a0368e649413c7d43e9ccf8bdf",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "f0b672c955b1bd5064084e44d546baeb",
      "title": "Operations Associate, OTC Derivatives",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": true,
      "equity_included_source": null,
      "equity_type": [
        "options"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-01T13:23:54.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8570506002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Operations Associate, OTC Derivatives London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our London Operations team as an OTC Derivatives Operations Associate, a hands-on role supporting the trading desks with regular interaction with Prime Brokers, fund administrators, and other external counterparties Your future role at QRT: - Managing end-to-end post-trade workflows for OTC Derivatives, including exotic Equities, Rates, and FX products - Performing trade booking, affirmation, confirmation, and settlement across OTC derivative products, ensuring accuracy and timeliness - Handling lifecycle events including expiries, knock-outs, corporate actions and cashflow events. - Interpreting terms sheets and OTC long form paper confirmations to ensure trades are correctly captured and processed - Monitoring reconciliations across internal systems, brokers, and fund administrators, resolving breaks quickly and efficiently - Liaising with multiple trading desks, Treasury, Senior Managers, Risk, Compliance & COO teams regarding trade issues and queries - Supporting process improvements and automation initiatives to enhance OTC workflows Your present skillset: - 3 + years' OTC Derivatives Operations/Trade Support experience (Equity Derivatives essential; Rates and FX Derivatives experience advantageous) - Strong knowledge of OTC derivative products, including volatility instruments,",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "operations",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d236529ea19de4675d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f0b672c955b1bd5064084e44d546baeb",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate, OTC Derivatives London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our London Operations team as an OTC Derivatives Operations Associate, a hands-on role supporting the trading desks with regular interaction with Prime Brokers, fund administrators, and other external counterparties Your future role at QRT: - Managing end-to-end post-trade workflows for OTC Derivatives, including exotic Equities, Rates, and FX products - Performing trade booking, affirmation, confirmation, and settlement across OTC derivative products, ensuring accuracy and timeliness - Handling lifecycle events including expiries, knock-outs, corporate actions and cashflow events. - Interpreting terms sheets and OTC long form paper confirmations to ensure trades are correctly captured and processed - Monitoring reconciliations across internal systems, brokers, and fund administrators, resolving breaks quickly and efficiently - Liaising with multiple trading desks, Treasury, Senior Managers, Risk, Compliance & COO teams regarding trade issues and queries - Supporting process improvements and automation initiatives to enhance OTC workflows Your present skillset: - 3 + years' OTC Derivatives Operations/Trade Support experience (Equity Derivatives essential; Rates and FX Derivatives experience advantageous) - Strong knowledge of OTC derivative products, including volatility instruments,",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f0b672c955b1bd5064084e44d546baeb:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e9dbec8e86ddce584a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f0b672c955b1bd5064084e44d546baeb",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate, OTC Derivatives London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our London Operations team as an OTC Derivatives Operations Associate, a hands-on role supporting the trading desks with regular interaction with Prime Brokers, fund administrators, and other external counterparties Your future role at QRT: - Managing end-to-end post-trade workflows for OTC Derivatives, including exotic Equities, Rates, and FX products - Performing trade booking, affirmation, confirmation, and settlement across OTC derivative products, ensuring accuracy and timeliness - Handling lifecycle events including expiries, knock-outs, corporate actions and cashflow events. - Interpreting terms sheets and OTC long form paper confirmations to ensure trades are correctly captured and processed - Monitoring reconciliations across internal systems, brokers, and fund administrators, resolving breaks quickly and efficiently - Liaising with multiple trading desks, Treasury, Senior Managers, Risk, Compliance & COO teams regarding trade issues and queries - Supporting process improvements and automation initiatives to enhance OTC workflows Your present skillset: - 3 + years' OTC Derivatives Operations/Trade Support experience (Equity Derivatives essential; Rates and FX Derivatives experience advantageous) - Strong knowledge of OTC derivative products, including volatility instruments,",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f0b672c955b1bd5064084e44d546baeb:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f53a7c7a2175e49779",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f0b672c955b1bd5064084e44d546baeb",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Operations Associate, OTC Derivatives London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology and data driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped QRT's collaborative mindset which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high quality returns for our investors. Join our London Operations team as an OTC Derivatives Operations Associate, a hands-on role supporting the trading desks with regular interaction with Prime Brokers, fund administrators, and other external counterparties Your future role at QRT: - Managing end-to-end post-trade workflows for OTC Derivatives, including exotic Equities, Rates, and FX products - Performing trade booking, affirmation, confirmation, and settlement across OTC derivative products, ensuring accuracy and timeliness - Handling lifecycle events including expiries, knock-outs, corporate actions and cashflow events. - Interpreting terms sheets and OTC long form paper confirmations to ensure trades are correctly captured and processed - Monitoring reconciliations across internal systems, brokers, and fund administrators, resolving breaks quickly and efficiently - Liaising with multiple trading desks, Treasury, Senior Managers, Risk, Compliance & COO teams regarding trade issues and queries - Supporting process improvements and automation initiatives to enhance OTC workflows Your present skillset: - 3 + years' OTC Derivatives Operations/Trade Support experience (Equity Derivatives essential; Rates and FX Derivatives experience advantageous) - Strong knowledge of OTC derivative products, including volatility instruments,",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f0b672c955b1bd5064084e44d546baeb:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.43a8beb8bbbd370446",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f0b672c955b1bd5064084e44d546baeb",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f0b672c955b1bd5064084e44d546baeb:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8f3d5d321ebd7d76b5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f0b672c955b1bd5064084e44d546baeb",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f0b672c955b1bd5064084e44d546baeb:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.fc0906d9714e90b58e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f0b672c955b1bd5064084e44d546baeb",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f0b672c955b1bd5064084e44d546baeb:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3045746e478d719fac",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f0b672c955b1bd5064084e44d546baeb",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9d2b3a21e27c7fd4a2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f0b672c955b1bd5064084e44d546baeb",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a32e8dcf82fbbbd5d2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f0b672c955b1bd5064084e44d546baeb",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "f51c62d60190306b0704025f8f00eafe",
      "title": "Compute Operations Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-13T12:45:35.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8517443002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Compute Operations Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Compute Operations team support the day-to-day operation of on-prem compute infrastructure, covering HPC server hardware, Linux-based platforms, and user-facing support. You will work closely with the Compute Ops Team Lead, Linux engineers, and other platform groups to maintain reliable, performant compute services across Slurm, Kubernetes, and control-plane environments. Your Future Role within QRT You will: - Provide hands-on support for HPC server hardware, including diagnostics, issue investigation, and coordination with vendors for repairs - Monitor system health and respond to alerts using infrastructure monitoring tools - Support hardware lifecycle activities, including provisioning, maintenance, and decommissioning - Troubleshoot Linux-based systems across OS, networking, and storage layers - Triage and resolve user-facing issues across compute platforms such as Slurm and Kubernetes - Coordinate with internal teams and vendors on maintenance and incident resolution - Execute scheduled maintenance and change activities - Maintain accurate infrastructure records and documentation - Contribute to runbooks and continuous improvement of operational processes - Participate in on-call rotations and incident response Your Present Skillset - 2-5 years of experience in compute infrastructure,",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": true,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.3018ddfe94133b16e9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f51c62d60190306b0704025f8f00eafe",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Compute Operations Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Compute Operations team support the day-to-day operation of on-prem compute infrastructure, covering HPC server hardware, Linux-based platforms, and user-facing support. You will work closely with the Compute Ops Team Lead, Linux engineers, and other platform groups to maintain reliable, performant compute services across Slurm, Kubernetes, and control-plane environments. Your Future Role within QRT You will: - Provide hands-on support for HPC server hardware, including diagnostics, issue investigation, and coordination with vendors for repairs - Monitor system health and respond to alerts using infrastructure monitoring tools - Support hardware lifecycle activities, including provisioning, maintenance, and decommissioning - Troubleshoot Linux-based systems across OS, networking, and storage layers - Triage and resolve user-facing issues across compute platforms such as Slurm and Kubernetes - Coordinate with internal teams and vendors on maintenance and incident resolution - Execute scheduled maintenance and change activities - Maintain accurate infrastructure records and documentation - Contribute to runbooks and continuous improvement of operational processes - Participate in on-call rotations and incident response Your Present Skillset - 2-5 years of experience in compute infrastructure,",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f51c62d60190306b0704025f8f00eafe:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.43a0815d354731d1d3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f51c62d60190306b0704025f8f00eafe",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Compute Operations Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Compute Operations team support the day-to-day operation of on-prem compute infrastructure, covering HPC server hardware, Linux-based platforms, and user-facing support. You will work closely with the Compute Ops Team Lead, Linux engineers, and other platform groups to maintain reliable, performant compute services across Slurm, Kubernetes, and control-plane environments. Your Future Role within QRT You will: - Provide hands-on support for HPC server hardware, including diagnostics, issue investigation, and coordination with vendors for repairs - Monitor system health and respond to alerts using infrastructure monitoring tools - Support hardware lifecycle activities, including provisioning, maintenance, and decommissioning - Troubleshoot Linux-based systems across OS, networking, and storage layers - Triage and resolve user-facing issues across compute platforms such as Slurm and Kubernetes - Coordinate with internal teams and vendors on maintenance and incident resolution - Execute scheduled maintenance and change activities - Maintain accurate infrastructure records and documentation - Contribute to runbooks and continuous improvement of operational processes - Participate in on-call rotations and incident response Your Present Skillset - 2-5 years of experience in compute infrastructure,",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f51c62d60190306b0704025f8f00eafe:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e4b3d4c5355c503fbe",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f51c62d60190306b0704025f8f00eafe",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Compute Operations Engineer London Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. The Compute Operations team support the day-to-day operation of on-prem compute infrastructure, covering HPC server hardware, Linux-based platforms, and user-facing support. You will work closely with the Compute Ops Team Lead, Linux engineers, and other platform groups to maintain reliable, performant compute services across Slurm, Kubernetes, and control-plane environments. Your Future Role within QRT You will: - Provide hands-on support for HPC server hardware, including diagnostics, issue investigation, and coordination with vendors for repairs - Monitor system health and respond to alerts using infrastructure monitoring tools - Support hardware lifecycle activities, including provisioning, maintenance, and decommissioning - Troubleshoot Linux-based systems across OS, networking, and storage layers - Triage and resolve user-facing issues across compute platforms such as Slurm and Kubernetes - Coordinate with internal teams and vendors on maintenance and incident resolution - Execute scheduled maintenance and change activities - Maintain accurate infrastructure records and documentation - Contribute to runbooks and continuous improvement of operational processes - Participate in on-call rotations and incident response Your Present Skillset - 2-5 years of experience in compute infrastructure,",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f51c62d60190306b0704025f8f00eafe:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4c938273a9c4c05485",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f51c62d60190306b0704025f8f00eafe",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f51c62d60190306b0704025f8f00eafe:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.896fdc90f42974de9b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f51c62d60190306b0704025f8f00eafe",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f51c62d60190306b0704025f8f00eafe:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e8358a820a410aaadd",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f51c62d60190306b0704025f8f00eafe",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f51c62d60190306b0704025f8f00eafe:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.085e7210cf2a4b7a19",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f51c62d60190306b0704025f8f00eafe",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.63e9e40665fa453777",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f51c62d60190306b0704025f8f00eafe",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.963373f81f1b3aedde",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f51c62d60190306b0704025f8f00eafe",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "14d30cdca109981850f73019820fc79f",
      "title": "Product Security Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-01-23T15:28:08.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8381640002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Product Security Engineer London *]:pointer-events-auto [content-visibility:auto] supports-[content-visibility:auto]:[contain-intrinsic-size:auto_100lvh] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"bd2548e5-6889-4b5d-bc50-75384f9f76b9\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"true\" data-turn=\"assistant\"> Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Security team, working closely with Software Engineers and Infrastructure teams to embed security into the design, development, and operation of systems across cloud services, business applications, and core infrastructure. Your Future Role within QRT You will: - Support the implementation and operation of product security controls across cloud services, core infrastructure, and business applications on Windows and Linux platforms - Work with engineering teams to integrate security into system design and development, applying practical approaches suitable for fast-moving environments - Contribute to secure software development practices, including supporting security reviews across languages such as Python, C++, Rust, Go, and Kotlin/Java - Perform threat modelling, vulnerability assessments, and security code reviews with guidance from senior team members - Assist with integrating and operating security tooling (e.g., SAST, DAST, dependency scanning) within CI/CD pipelines and runtime environments - Identify security risks and contribute to remediation and mitigation plans with engineering teams - Perform vendor security reviews to assess third-party security practices against internal standards -",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.4fbf9d16bc4a5967b6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14d30cdca109981850f73019820fc79f",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Product Security Engineer London *]:pointer-events-auto [content-visibility:auto] supports-[content-visibility:auto]:[contain-intrinsic-size:auto_100lvh] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"bd2548e5-6889-4b5d-bc50-75384f9f76b9\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"true\" data-turn=\"assistant\"> Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Security team, working closely with Software Engineers and Infrastructure teams to embed security into the design, development, and operation of systems across cloud services, business applications, and core infrastructure. Your Future Role within QRT You will: - Support the implementation and operation of product security controls across cloud services, core infrastructure, and business applications on Windows and Linux platforms - Work with engineering teams to integrate security into system design and development, applying practical approaches suitable for fast-moving environments - Contribute to secure software development practices, including supporting security reviews across languages such as Python, C++, Rust, Go, and Kotlin/Java - Perform threat modelling, vulnerability assessments, and security code reviews with guidance from senior team members - Assist with integrating and operating security tooling (e.g., SAST, DAST, dependency scanning) within CI/CD pipelines and runtime environments - Identify security risks and contribute to remediation and mitigation plans with engineering teams - Perform vendor security reviews to assess third-party security practices against internal standards -",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14d30cdca109981850f73019820fc79f:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.5fb3741b0823244267",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14d30cdca109981850f73019820fc79f",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Product Security Engineer London *]:pointer-events-auto [content-visibility:auto] supports-[content-visibility:auto]:[contain-intrinsic-size:auto_100lvh] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"bd2548e5-6889-4b5d-bc50-75384f9f76b9\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"true\" data-turn=\"assistant\"> Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Security team, working closely with Software Engineers and Infrastructure teams to embed security into the design, development, and operation of systems across cloud services, business applications, and core infrastructure. Your Future Role within QRT You will: - Support the implementation and operation of product security controls across cloud services, core infrastructure, and business applications on Windows and Linux platforms - Work with engineering teams to integrate security into system design and development, applying practical approaches suitable for fast-moving environments - Contribute to secure software development practices, including supporting security reviews across languages such as Python, C++, Rust, Go, and Kotlin/Java - Perform threat modelling, vulnerability assessments, and security code reviews with guidance from senior team members - Assist with integrating and operating security tooling (e.g., SAST, DAST, dependency scanning) within CI/CD pipelines and runtime environments - Identify security risks and contribute to remediation and mitigation plans with engineering teams - Perform vendor security reviews to assess third-party security practices against internal standards -",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14d30cdca109981850f73019820fc79f:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b798852907425ac349",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14d30cdca109981850f73019820fc79f",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Product Security Engineer London *]:pointer-events-auto [content-visibility:auto] supports-[content-visibility:auto]:[contain-intrinsic-size:auto_100lvh] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"bd2548e5-6889-4b5d-bc50-75384f9f76b9\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"true\" data-turn=\"assistant\"> Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will join the Security team, working closely with Software Engineers and Infrastructure teams to embed security into the design, development, and operation of systems across cloud services, business applications, and core infrastructure. Your Future Role within QRT You will: - Support the implementation and operation of product security controls across cloud services, core infrastructure, and business applications on Windows and Linux platforms - Work with engineering teams to integrate security into system design and development, applying practical approaches suitable for fast-moving environments - Contribute to secure software development practices, including supporting security reviews across languages such as Python, C++, Rust, Go, and Kotlin/Java - Perform threat modelling, vulnerability assessments, and security code reviews with guidance from senior team members - Assist with integrating and operating security tooling (e.g., SAST, DAST, dependency scanning) within CI/CD pipelines and runtime environments - Identify security risks and contribute to remediation and mitigation plans with engineering teams - Perform vendor security reviews to assess third-party security practices against internal standards -",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14d30cdca109981850f73019820fc79f:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.585725a7fc893b5856",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14d30cdca109981850f73019820fc79f",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14d30cdca109981850f73019820fc79f:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.86d2981eccedb1fbf4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14d30cdca109981850f73019820fc79f",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14d30cdca109981850f73019820fc79f:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e0e48430f9bd605a49",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14d30cdca109981850f73019820fc79f",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:14d30cdca109981850f73019820fc79f:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5def857d24e4786f4d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14d30cdca109981850f73019820fc79f",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.9f2077b9e4487c4409",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14d30cdca109981850f73019820fc79f",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.e81855375461b8aac6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "14d30cdca109981850f73019820fc79f",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "296f543da7b61190cbbac8a3c8347134",
      "title": "Quantitative Developer - Energy",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Houston",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-10-27T16:33:14.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8076150002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Quantitative Developer - Energy Houston We are looking for an exceptional Quantitative Developer to join our expanding Energy Desk. In this role, you will work between the Research and Trading desks, and the Engineering team to ensure the successful leveraging of tooling and reporting for the Desk. Your future role within Q-TX - Collaborate with researchers and traders to develop tools, statistical models, and reports for energy supply and demand analysis. - Translate complex market dynamics into actionable insights using robust quantitative methods. - Work closely with global technology teams to leverage Q-TX systems and cloud platforms for scalable and maintainable solutions. - Monitor and support desk tools to ensure reliability, usability, and long-term effectiveness. Your present skillset - Minimum of 4 years of experience developing industrial-strength, mission-critical Python code. - Experience with cloud platforms (AWS) is a plus. - Ability to work independently and collaboratively within a global team. - Strong design and software engineering skills for clean, maintainable solutions. - Familiarity with power or energy markets is preferred. - Rigorous, analytical thinker with strong problem-solving skills. - Ability to manage multiple priorities and communicate effectively with stakeholders.",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 4,
      "years_experience_max": 8,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b285bd219a5d1516e4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "296f543da7b61190cbbac8a3c8347134",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Quantitative Developer - Energy Houston We are looking for an exceptional Quantitative Developer to join our expanding Energy Desk. In this role, you will work between the Research and Trading desks, and the Engineering team to ensure the successful leveraging of tooling and reporting for the Desk. Your future role within Q-TX - Collaborate with researchers and traders to develop tools, statistical models, and reports for energy supply and demand analysis. - Translate complex market dynamics into actionable insights using robust quantitative methods. - Work closely with global technology teams to leverage Q-TX systems and cloud platforms for scalable and maintainable solutions. - Monitor and support desk tools to ensure reliability, usability, and long-term effectiveness. Your present skillset - Minimum of 4 years of experience developing industrial-strength, mission-critical Python code. - Experience with cloud platforms (AWS) is a plus. - Ability to work independently and collaboratively within a global team. - Strong design and software engineering skills for clean, maintainable solutions. - Familiarity with power or energy markets is preferred. - Rigorous, analytical thinker with strong problem-solving skills. - Ability to manage multiple priorities and communicate effectively with stakeholders.",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:296f543da7b61190cbbac8a3c8347134:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.547c1c1d20a00fc0ee",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "296f543da7b61190cbbac8a3c8347134",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:296f543da7b61190cbbac8a3c8347134:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.686c524f08a22d5ca9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "296f543da7b61190cbbac8a3c8347134",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:296f543da7b61190cbbac8a3c8347134:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.8014734490ac9c1674",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "296f543da7b61190cbbac8a3c8347134",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:296f543da7b61190cbbac8a3c8347134:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.3169275062d5c34be1",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "296f543da7b61190cbbac8a3c8347134",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4f0d4cec6bcff52505",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "296f543da7b61190cbbac8a3c8347134",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bdefaa893c640cfd30",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "296f543da7b61190cbbac8a3c8347134",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "d39f39993990369e4e7e5b3ab229e794",
      "title": "Quant Signals External Contributors",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Anywhere (subject to approval)",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": true,
      "equity_included_source": null,
      "equity_type": [
        "options"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2020-05-04T10:13:53.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/4727006002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Quant Signals External Contributors Anywhere (subject to approval) Your core objective at QRT - To create high quality predictive signals - By leveraging your existing experience, signals and models - In Equities and non-equities (FX, Credit, Commodities, Bonds etc.) - With holding periods from hours to weeks - This is a performance based contribution where pay-outs depend on the quality and success of the signals provided - You can be based anywhere in world (subject to approval) Your present skillset - Proven track record in delivering successful systematic strategies: creative models with realised Sharpe Ratios > 1.5 - A deep knowledge of the equity and/or macro space - Capacity to work with autonomy and be an independent thinker - Minimum 4 year experience building successful strategies",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "other",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.b6a85cbfbaa673e662",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d39f39993990369e4e7e5b3ab229e794",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:d39f39993990369e4e7e5b3ab229e794:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bbfceab2383ebb0799",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d39f39993990369e4e7e5b3ab229e794",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:d39f39993990369e4e7e5b3ab229e794:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ed4c0d7a162ad49895",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d39f39993990369e4e7e5b3ab229e794",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:d39f39993990369e4e7e5b3ab229e794:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.7b833ae135ab4794ef",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d39f39993990369e4e7e5b3ab229e794",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.94608e6dd4854042b3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d39f39993990369e4e7e5b3ab229e794",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.df4e44d4063a77228b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d39f39993990369e4e7e5b3ab229e794",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "bbac02d082ae9f58b41e95a2be2168fd",
      "title": "Security Project Manager",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-13T14:19:48.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8547571002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Security Project Manager London *]:pointer-events-auto [content-visibility:auto] supports-[content-visibility:auto]:[contain-intrinsic-size:auto_100lvh] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"bd2548e5-6889-4b5d-bc50-75384f9f76b9\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"true\" data-turn=\"assistant\"> *]:pointer-events-auto R6Vx5W_threadScrollVars scroll-mb-[calc(var(--scroll-root-safe-area-inset-bottom,0px)+var(--thread-response-height))] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"request-WEB:78c92409-139f-4ff3-b788-2bf4007ed30a-0\" data-turn-id-container=\"request-WEB:78c92409-139f-4ff3-b788-2bf4007ed30a-0\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"false\" data-turn=\"assistant\"> Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will work within the Cyber Security function, supporting the delivery of security initiatives across the organisation. The team partners with Technology, Engineering, and Infrastructure teams, as well as senior stakeholders, to ensure security programmes are delivered effectively and aligned with business priorities. Your Future Role within QRT You will: - Lead end-to-end delivery of cyber security projects within a broader programme framework - Manage multiple concurrent workstreams, including identity and access management, cloud security, risk remediation, and compliance initiatives - Develop and maintain project plans, timelines, and resource allocation - Ensure programme governance, including management of risks, assumptions, issues, and dependencies - Drive stakeholder engagement across technical teams and senior leadership - Translate cyber security concepts into clear, business-facing updates - Build and maintain programme dashboards using Power BI or Tableau to improve reporting automation - Track objectives, milestones, and programme performance metrics - Identify delivery risks and implement mitigation actions - Collaborate with Cyber Security, Infrastructure,",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "operations",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9b9f03a3d80fa27939",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "bbac02d082ae9f58b41e95a2be2168fd",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Security Project Manager London *]:pointer-events-auto [content-visibility:auto] supports-[content-visibility:auto]:[contain-intrinsic-size:auto_100lvh] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"bd2548e5-6889-4b5d-bc50-75384f9f76b9\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"true\" data-turn=\"assistant\"> *]:pointer-events-auto R6Vx5W_threadScrollVars scroll-mb-[calc(var(--scroll-root-safe-area-inset-bottom,0px)+var(--thread-response-height))] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"request-WEB:78c92409-139f-4ff3-b788-2bf4007ed30a-0\" data-turn-id-container=\"request-WEB:78c92409-139f-4ff3-b788-2bf4007ed30a-0\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"false\" data-turn=\"assistant\"> Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will work within the Cyber Security function, supporting the delivery of security initiatives across the organisation. The team partners with Technology, Engineering, and Infrastructure teams, as well as senior stakeholders, to ensure security programmes are delivered effectively and aligned with business priorities. Your Future Role within QRT You will: - Lead end-to-end delivery of cyber security projects within a broader programme framework - Manage multiple concurrent workstreams, including identity and access management, cloud security, risk remediation, and compliance initiatives - Develop and maintain project plans, timelines, and resource allocation - Ensure programme governance, including management of risks, assumptions, issues, and dependencies - Drive stakeholder engagement across technical teams and senior leadership - Translate cyber security concepts into clear, business-facing updates - Build and maintain programme dashboards using Power BI or Tableau to improve reporting automation - Track objectives, milestones, and programme performance metrics - Identify delivery risks and implement mitigation actions - Collaborate with Cyber Security, Infrastructure,",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:bbac02d082ae9f58b41e95a2be2168fd:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.bd6dd77ece5043053a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "bbac02d082ae9f58b41e95a2be2168fd",
          "signal_type": "query_match",
          "display_text": "Description: \"qube\"",
          "tooltip": "Description matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Security Project Manager London *]:pointer-events-auto [content-visibility:auto] supports-[content-visibility:auto]:[contain-intrinsic-size:auto_100lvh] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"bd2548e5-6889-4b5d-bc50-75384f9f76b9\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"true\" data-turn=\"assistant\"> *]:pointer-events-auto R6Vx5W_threadScrollVars scroll-mb-[calc(var(--scroll-root-safe-area-inset-bottom,0px)+var(--thread-response-height))] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"request-WEB:78c92409-139f-4ff3-b788-2bf4007ed30a-0\" data-turn-id-container=\"request-WEB:78c92409-139f-4ff3-b788-2bf4007ed30a-0\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"false\" data-turn=\"assistant\"> Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will work within the Cyber Security function, supporting the delivery of security initiatives across the organisation. The team partners with Technology, Engineering, and Infrastructure teams, as well as senior stakeholders, to ensure security programmes are delivered effectively and aligned with business priorities. Your Future Role within QRT You will: - Lead end-to-end delivery of cyber security projects within a broader programme framework - Manage multiple concurrent workstreams, including identity and access management, cloud security, risk remediation, and compliance initiatives - Develop and maintain project plans, timelines, and resource allocation - Ensure programme governance, including management of risks, assumptions, issues, and dependencies - Drive stakeholder engagement across technical teams and senior leadership - Translate cyber security concepts into clear, business-facing updates - Build and maintain programme dashboards using Power BI or Tableau to improve reporting automation - Track objectives, milestones, and programme performance metrics - Identify delivery risks and implement mitigation actions - Collaborate with Cyber Security, Infrastructure,",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:bbac02d082ae9f58b41e95a2be2168fd:description:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.eb3459dedc7a8be053",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "bbac02d082ae9f58b41e95a2be2168fd",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Security Project Manager London *]:pointer-events-auto [content-visibility:auto] supports-[content-visibility:auto]:[contain-intrinsic-size:auto_100lvh] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"bd2548e5-6889-4b5d-bc50-75384f9f76b9\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"true\" data-turn=\"assistant\"> *]:pointer-events-auto R6Vx5W_threadScrollVars scroll-mb-[calc(var(--scroll-root-safe-area-inset-bottom,0px)+var(--thread-response-height))] scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" data-turn-id=\"request-WEB:78c92409-139f-4ff3-b788-2bf4007ed30a-0\" data-turn-id-container=\"request-WEB:78c92409-139f-4ff3-b788-2bf4007ed30a-0\" data-testid=\"conversation-turn-2\" data-scroll-anchor=\"false\" data-turn=\"assistant\"> Qube Research & Technologies (QRT) is a global quantitative and systematic investment manager, operating in all liquid asset classes across the world. We are a technology- and data-driven group implementing a scientific approach to investing. Combining data, research, technology, and trading expertise has shaped our collaborative mindset, which enables us to solve the most complex challenges. QRT's culture of innovation continuously drives our ambition to deliver high-quality returns for our investors. You will work within the Cyber Security function, supporting the delivery of security initiatives across the organisation. The team partners with Technology, Engineering, and Infrastructure teams, as well as senior stakeholders, to ensure security programmes are delivered effectively and aligned with business priorities. Your Future Role within QRT You will: - Lead end-to-end delivery of cyber security projects within a broader programme framework - Manage multiple concurrent workstreams, including identity and access management, cloud security, risk remediation, and compliance initiatives - Develop and maintain project plans, timelines, and resource allocation - Ensure programme governance, including management of risks, assumptions, issues, and dependencies - Drive stakeholder engagement across technical teams and senior leadership - Translate cyber security concepts into clear, business-facing updates - Build and maintain programme dashboards using Power BI or Tableau to improve reporting automation - Track objectives, milestones, and programme performance metrics - Identify delivery risks and implement mitigation actions - Collaborate with Cyber Security, Infrastructure,",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:bbac02d082ae9f58b41e95a2be2168fd:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.03032d5f6f67332652",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "bbac02d082ae9f58b41e95a2be2168fd",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:bbac02d082ae9f58b41e95a2be2168fd:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.1b55e10641109920a0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "bbac02d082ae9f58b41e95a2be2168fd",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:bbac02d082ae9f58b41e95a2be2168fd:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.508e7370811dd41ac4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "bbac02d082ae9f58b41e95a2be2168fd",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:bbac02d082ae9f58b41e95a2be2168fd:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.185ca82fada0e89729",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "bbac02d082ae9f58b41e95a2be2168fd",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.da60061f1352a7258f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "bbac02d082ae9f58b41e95a2be2168fd",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.edee37159c71824a0a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "bbac02d082ae9f58b41e95a2be2168fd",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "efc58e62b930b9cfb58185ccedb6e052",
      "title": "AWS Cloud Infrastructure and Compute Architect",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-24T06:53:50.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8476605002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "AWS Cloud Infrastructure and Compute Architect Hong Kong QRT is a global quantitative and systematic investment manager, operating across all liquid asset classes. We are a data- and technology-driven organization applying scientific methods to investing. Our collaborative culture and focus on innovation enable us to solve complex challenges and deliver high-quality returns for our investors. The AWS Cloud Engineering Team provides a scalable, performant and best practice platform for QRT's application and core teams to utilize in deploying cloud native services. This team is critical in ensuring that applications are built on a strong AWS foundation from the perspective of governance, security and connectivity. Your future role at QRT: We are hiring an experienced cloud architect, who has a deep knowledge in AWS infrastructure and compute services along with broad knowledge across the expansive suite of AWS services. The role will require close collaboration across QRT business and technology groups to provide cloud architecture advisory, design and implementation support on new and existing platforms, which lowers the burden of knowledge on development teams and accelerates the time to market of new applications, features and solutions. You will enable the QRT Business Teams to scale through: - Accelerating the time it takes to design and implement new business applications and features whilst assuring sound architectural fundamentals are in place: - Creation of re-usable and implementable architecture patterns and best practices, which advance the initial design and development phase of a project. - Identifying and solving common challenges which impact application and",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "engineering",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.01ad38f90bf9f915a6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "efc58e62b930b9cfb58185ccedb6e052",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:efc58e62b930b9cfb58185ccedb6e052:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.47d15185b1855f5dbf",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "efc58e62b930b9cfb58185ccedb6e052",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:efc58e62b930b9cfb58185ccedb6e052:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c2d41b39d5ef615bd3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "efc58e62b930b9cfb58185ccedb6e052",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:efc58e62b930b9cfb58185ccedb6e052:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.43da98062274e6b309",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "efc58e62b930b9cfb58185ccedb6e052",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6158973e51c4b5610c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "efc58e62b930b9cfb58185ccedb6e052",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.c21453e8744435dc70",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "efc58e62b930b9cfb58185ccedb6e052",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "7a079361d38fa03418552d8388a7efa5",
      "title": "AWS Network Engineer",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "London",
      "country": "GB",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-02-27T14:33:23.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8439666002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "AWS Network Engineer London QRT is a global quantitative and systematic investment manager, operating across all liquid asset classes. We are a data- and technology-driven organization applying scientific methods to investing. Our collaborative culture and focus on innovation enable us to solve complex challenges and deliver high-quality returns for our investors. The AWS Cloud Engineering Team provide a scalable, performant and best practice platform for QRT's application and core teams to utilize in deploying cloud native services. This team is critical in ensuring that applications are built on a strong AWS foundation from the perspective of governance, security and connectivity. Your future role within QRT We are seeking an experienced technologist to work within our AWS Cloud Engineering team to support the growth and maturation of our cloud network. The role is expected to involve the following activities: - Develop and manage our complex global AWS network architecture - Join a dynamic, fast-paced environment with extensive opportunity for personal growth - Use infrastructure-as-code to ensure scale and consistency of the environment - Use automated deployment to ensure that changes can be controlled in an appropriate manner - Explore and onboard new AWS services and features as part of continuous improvement of the AWS platform - Contribute to the ongoing improvement of our network governance and observability practices - Ensure that traffic is observable in a usable fashion - Develop strong, positive relationships with Security, IT and End User teams Your present skillset - 3+ years of experience in a cloud",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bfba75e1e01bc31d49",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7a079361d38fa03418552d8388a7efa5",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7a079361d38fa03418552d8388a7efa5:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cbfbf533847df12c87",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7a079361d38fa03418552d8388a7efa5",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7a079361d38fa03418552d8388a7efa5:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.eb1f0e9d507953901c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7a079361d38fa03418552d8388a7efa5",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:7a079361d38fa03418552d8388a7efa5:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.949f64057d2d7505d3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7a079361d38fa03418552d8388a7efa5",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ba3ed2321f316f44e6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7a079361d38fa03418552d8388a7efa5",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.cb9b82f25f73b5e85c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "7a079361d38fa03418552d8388a7efa5",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "e26b385845a92666bc667185d1040ce9",
      "title": "Network Operations Engineer (AWS)",
      "employer_name": "Qube Research & Technologies",
      "employer_slug": "qube-research-technologies",
      "location_text": "Hong Kong",
      "country": "HK",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-03-11T08:20:41.000Z",
      "apply_url": "https://job-boards.greenhouse.io/quberesearchandtechnologies/jobs/8445752002",
      "apply_url_verified": false,
      "ats": "greenhouse",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Network Operations Engineer (AWS) Hong Kong QRT is a global quantitative and systematic investment manager, operating across all liquid asset classes. We are a data- and technology-driven organization applying scientific methods to investing. Our collaborative culture and focus on innovation enable us to solve complex challenges and deliver high-quality returns for our investors. The AWS Cloud Engineering Team provides a scalable, performant and best practice platform for QRT's application and core teams to utilize in deploying cloud native services. This team is critical in ensuring that applications are built on a strong AWS foundation from the perspective of governance, security and connectivity. Your future role within QRT We are seeking a Network Operations Engineer to support the ongoing operation, scalability and continuous improvement of our global AWS network. This role focuses on implementing change safely and consistently at scale, improving automation, and providing operational support to internal stakeholders. You will work closely with senior engineers, application teams, security and IT to ensure reliable, well-governed and observable network services in a production-sensitive environment. The role is expected to involve the following activities: - Implement changes across our global AWS network using Infrastructure-as-Code - Maintain and enhance Terraform modules to ensure scalable, repeatable and consistent network deployments - Develop and maintain automation tooling using Python and Bash - Execute controlled changes via CI/CD pipelines with appropriate validation and peer review - Assess and manage the risk associated with network changes, ensuring appropriate testing, impact analysis and rollback strategies are in place -",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 4,
      "years_experience_max": 8,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.0c4132f177ae7daf39",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e26b385845a92666bc667185d1040ce9",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e26b385845a92666bc667185d1040ce9:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.11c7e1c6370e74b5c0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e26b385845a92666bc667185d1040ce9",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e26b385845a92666bc667185d1040ce9:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d74bf8e90518bc2fb5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e26b385845a92666bc667185d1040ce9",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer matched \"qube\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:e26b385845a92666bc667185d1040ce9:employer:qube",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.19d448c580d8a94fbe",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e26b385845a92666bc667185d1040ce9",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.5049c520d395483133",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e26b385845a92666bc667185d1040ce9",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.67811434ccc2bb480c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "e26b385845a92666bc667185d1040ce9",
          "signal_type": "query_match",
          "display_text": "Employer: \"qube\"",
          "tooltip": "Employer contains \"qube\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Qube Research & Technologies",
          "matched_input": "qube",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "b1965c761b76ffeaadfb475b0f0159eb",
      "title": "Senior Security Researcher - Enterprise Security Research",
      "employer_name": "Akamai Technologies",
      "employer_slug": "akamai-technologies",
      "location_text": "Israel",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": "yes",
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_match_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "k401_contribution_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_contribution_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-28T00:00:00.000Z",
      "apply_url": "https://fa-extu-saasfaprod1.fa.ocs.oraclecloud.com/hcmUI/CandidateExperience/en/sites/CX/requisitions/job/2932",
      "apply_url_verified": false,
      "ats": "oracle_recruiting_cloud",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Security Researcher - Enterprise Security Research Israel As a member of our research team, you will investigate emerging attack surfaces across operating systems, cloud environments, and modern enterprise technologies. You will reverse-engineer complex software, discover vulnerabilities, and conduct original, publishable research. Researchers are encouraged to explore new ideas and turn promising findings into published research shared with the global security community.",
      "parental_leave_weeks": 18,
      "non_birth_parent_leave_weeks": 10,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": "https://www.akamai.com/site/en/documents/corporate/2024/additional-ide-metrics.pdf",
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 85,
      "benefit_verified": true,
      "benefit_last_verified": "2026-05-07",
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.4dbc840c713911e98f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b1965c761b76ffeaadfb475b0f0159eb",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Security Researcher - Enterprise Security Research Israel As a member of our research team, you will investigate emerging attack surfaces across operating systems, cloud environments, and modern enterprise technologies. You will reverse-engineer complex software, discover vulnerabilities, and conduct original, publishable research. Researchers are encouraged to explore new ideas and turn promising findings into published research shared with the global security community.",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b1965c761b76ffeaadfb475b0f0159eb:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e8617a16a6c20a1a7d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b1965c761b76ffeaadfb475b0f0159eb",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Security Researcher - Enterprise Security Research Israel As a member of our research team, you will investigate emerging attack surfaces across operating systems, cloud environments, and modern enterprise technologies. You will reverse-engineer complex software, discover vulnerabilities, and conduct original, publishable research. Researchers are encouraged to explore new ideas and turn promising findings into published research shared with the global security community.",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b1965c761b76ffeaadfb475b0f0159eb:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.376596a7253cce739a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b1965c761b76ffeaadfb475b0f0159eb",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Akamai Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b1965c761b76ffeaadfb475b0f0159eb:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.8137444e1b0a0ed183",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b1965c761b76ffeaadfb475b0f0159eb",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Senior Security Researcher - Enterprise Security Research",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:b1965c761b76ffeaadfb475b0f0159eb:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.a38b02c073331521bc",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b1965c761b76ffeaadfb475b0f0159eb",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Akamai Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.843249465f61db4de9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b1965c761b76ffeaadfb475b0f0159eb",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Senior Security Researcher - Enterprise Security Research",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.k401.1e28ad969344a6e9f4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "b1965c761b76ffeaadfb475b0f0159eb",
          "signal_type": "trust_signal",
          "display_text": "Verified 401(k) evidence",
          "tooltip": "401(k) value has source evidence and a fresh verification timestamp.",
          "source_binding": "row_trust_evidence",
          "source_field": "k401_match",
          "source_value": "yes",
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 22,
          "mobile_priority": 11,
          "ui": {
            "icon": "PiggyBank",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
            "source_label": "401(k) source",
            "source_date": "2026-05-07"
          }
        }
      ]
    },
    {
      "id": "f17c5e180452d296506b8d8656fda7a3",
      "title": "Principal Security Researcher - Enterprise Security Research",
      "employer_name": "Akamai Technologies",
      "employer_slug": "akamai-technologies",
      "location_text": "Israel",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": "yes",
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_match_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "k401_contribution_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_contribution_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-04-20T00:00:00.000Z",
      "apply_url": "https://fa-extu-saasfaprod1.fa.ocs.oraclecloud.com/hcmUI/CandidateExperience/en/sites/CX/requisitions/job/2592",
      "apply_url_verified": false,
      "ats": "oracle_recruiting_cloud",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Principal Security Researcher - Enterprise Security Research Israel As a member of our research team, you will investigate emerging attack surfaces across operating systems, cloud environments, and modern enterprise technologies. You will reverse-engineer complex software, discover vulnerabilities, and conduct original, publishable research. Researchers are encouraged to explore new ideas and turn promising findings into published research shared with the global security community.",
      "parental_leave_weeks": 18,
      "non_birth_parent_leave_weeks": 10,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": "https://www.akamai.com/site/en/documents/corporate/2024/additional-ide-metrics.pdf",
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 85,
      "benefit_verified": true,
      "benefit_last_verified": "2026-05-07",
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.81981eb1c65c050aeb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f17c5e180452d296506b8d8656fda7a3",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Principal Security Researcher - Enterprise Security Research Israel As a member of our research team, you will investigate emerging attack surfaces across operating systems, cloud environments, and modern enterprise technologies. You will reverse-engineer complex software, discover vulnerabilities, and conduct original, publishable research. Researchers are encouraged to explore new ideas and turn promising findings into published research shared with the global security community.",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f17c5e180452d296506b8d8656fda7a3:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.9c1cc5aab6cb905198",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f17c5e180452d296506b8d8656fda7a3",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Principal Security Researcher - Enterprise Security Research Israel As a member of our research team, you will investigate emerging attack surfaces across operating systems, cloud environments, and modern enterprise technologies. You will reverse-engineer complex software, discover vulnerabilities, and conduct original, publishable research. Researchers are encouraged to explore new ideas and turn promising findings into published research shared with the global security community.",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f17c5e180452d296506b8d8656fda7a3:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6d37a041f2cbe4c179",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f17c5e180452d296506b8d8656fda7a3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Akamai Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f17c5e180452d296506b8d8656fda7a3:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.a50db6ac9163c78117",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f17c5e180452d296506b8d8656fda7a3",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Principal Security Researcher - Enterprise Security Research",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f17c5e180452d296506b8d8656fda7a3:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.4d5a17ccf09e2d2207",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f17c5e180452d296506b8d8656fda7a3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Akamai Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.7310647c9b7718b0eb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f17c5e180452d296506b8d8656fda7a3",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Principal Security Researcher - Enterprise Security Research",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.k401.d44199c66dd04ef12b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f17c5e180452d296506b8d8656fda7a3",
          "signal_type": "trust_signal",
          "display_text": "Verified 401(k) evidence",
          "tooltip": "401(k) value has source evidence and a fresh verification timestamp.",
          "source_binding": "row_trust_evidence",
          "source_field": "k401_match",
          "source_value": "yes",
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 22,
          "mobile_priority": 11,
          "ui": {
            "icon": "PiggyBank",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
            "source_label": "401(k) source",
            "source_date": "2026-05-07"
          }
        }
      ]
    },
    {
      "id": "d0b45f31ebd128ecaf67a17d6fe0106c",
      "title": "Technology Director - Integrated Manufacturing Technologies - Aerospace Research",
      "employer_name": "GE Aerospace",
      "employer_slug": "geaerospace",
      "location_text": "Niskayuna",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-12T00:00:00.000Z",
      "apply_url": "https://geaerospace.wd5.myworkdayjobs.com/GE_ExternalSite/job/Niskayuna/Technology-Director---Integrated-Manufacturing-Technologies---Aerospace-Research_R5033222-1",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Technology Director - Integrated Manufacturing Technologies - Aerospace Research Niskayuna posted: Posted 30+ Days Ago",
      "parental_leave_weeks": 10,
      "non_birth_parent_leave_weeks": 10,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": "https://www.geaerospace.com/sites/default/files/2025-sustainability-report.pdf",
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 60,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "data",
      "employer_industry": "Defense",
      "employer_size": "5000+",
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.43bd73ef9bf22fdbaf",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d0b45f31ebd128ecaf67a17d6fe0106c",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Technology Director - Integrated Manufacturing Technologies - Aerospace Research Niskayuna posted: Posted 30+ Days Ago",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:d0b45f31ebd128ecaf67a17d6fe0106c:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.55422f47edd4e2aa7d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d0b45f31ebd128ecaf67a17d6fe0106c",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Technology Director - Integrated Manufacturing Technologies - Aerospace Research Niskayuna posted: Posted 30+ Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:d0b45f31ebd128ecaf67a17d6fe0106c:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.9ed30ac1ef546b0297",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d0b45f31ebd128ecaf67a17d6fe0106c",
          "signal_type": "query_match",
          "display_text": "Title: \"technologies\"",
          "tooltip": "Title matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Technology Director - Integrated Manufacturing Technologies - Aerospace Research",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:d0b45f31ebd128ecaf67a17d6fe0106c:title:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.ae3255659b19290d89",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d0b45f31ebd128ecaf67a17d6fe0106c",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Technology Director - Integrated Manufacturing Technologies - Aerospace Research",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:d0b45f31ebd128ecaf67a17d6fe0106c:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.8213f2582383aeab7f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d0b45f31ebd128ecaf67a17d6fe0106c",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Technology Director - Integrated Manufacturing Technologies - Aerospace Research",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.da45489ea0be537b8c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "d0b45f31ebd128ecaf67a17d6fe0106c",
          "signal_type": "query_match",
          "display_text": "Title: \"technologies\"",
          "tooltip": "Title contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Technology Director - Integrated Manufacturing Technologies - Aerospace Research",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "81fce284e17ea23caea5e85d164e95fd",
      "title": "Vice President, Line of Business Leader, Health Analytics, Research & Technology",
      "employer_name": "Icf International Inc",
      "employer_slug": "icf-international-inc",
      "location_text": "Washington, District of Columbia, United States of America",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-08T00:00:00.000Z",
      "apply_url": "https://icf.wd5.myworkdayjobs.com/ICFExternal_Career_Site/job/Washington-DC/Vice-President--Line-of-Business-Leader--Health-Analytics--Research---Technology_R2601669/apply",
      "apply_url_verified": false,
      "ats": "phenom_people",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Vice President, Line of Business Leader, Health Analytics, Research & Technology Washington, District of Columbia, United States of America Join our team as Vice President, Health Analytics, Research & Technology and lead strategic growth in health research and data. Drive business development, manage a high-performing team, and shape innovative solutions at the intersection of health, technology, and research. Make a significant impact in a dynamic, collaborative environment serving top-tier clients.",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.f44840101da7ee28e6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81fce284e17ea23caea5e85d164e95fd",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Vice President, Line of Business Leader, Health Analytics, Research & Technology Washington, District of Columbia, United States of America Join our team as Vice President, Health Analytics, Research & Technology and lead strategic growth in health research and data. Drive business development, manage a high-performing team, and shape innovative solutions at the intersection of health, technology, and research. Make a significant impact in a dynamic, collaborative environment serving top-tier clients.",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:81fce284e17ea23caea5e85d164e95fd:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.dd5006980a9b51708a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81fce284e17ea23caea5e85d164e95fd",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Vice President, Line of Business Leader, Health Analytics, Research & Technology",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:81fce284e17ea23caea5e85d164e95fd:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.e291304d7a31cd4cd3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "81fce284e17ea23caea5e85d164e95fd",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Vice President, Line of Business Leader, Health Analytics, Research & Technology",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "023cae7c83910782562c1c6864bcda75",
      "title": "Internship - Wafer Technology: AI Research, Development, and Implementation",
      "employer_name": "Infineon Technologies",
      "employer_slug": "infineon-technologies",
      "location_text": "Samut Prakan (Thailand)",
      "country": "TH",
      "employment_type": "internship",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-12T10:25:24.000Z",
      "apply_url": "https://infineon.eightfold.ai/careers/job/563808962167061",
      "apply_url_verified": false,
      "ats": "eightfold",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Internship - Wafer Technology: AI Research, Development, and Implementation Samut Prakan (Thailand)",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "entry",
      "years_experience_min": 0,
      "years_experience_max": 4,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.1ff0fa2f26d51a853d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "023cae7c83910782562c1c6864bcda75",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Internship - Wafer Technology: AI Research, Development, and Implementation Samut Prakan (Thailand)",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:023cae7c83910782562c1c6864bcda75:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.6af9891c5a66962340",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "023cae7c83910782562c1c6864bcda75",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Infineon Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:023cae7c83910782562c1c6864bcda75:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.9bb17678121fa40ee8",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "023cae7c83910782562c1c6864bcda75",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Internship - Wafer Technology: AI Research, Development, and Implementation",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:023cae7c83910782562c1c6864bcda75:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.34eabd5e2a413f6792",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "023cae7c83910782562c1c6864bcda75",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Infineon Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.76441a9b36d0a3bb9a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "023cae7c83910782562c1c6864bcda75",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Internship - Wafer Technology: AI Research, Development, and Implementation",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "f5279587635a204544a195fd514c8cf3",
      "title": "Senior UX Researcher",
      "employer_name": "Tyler Technologies",
      "employer_slug": "tyler-technologies",
      "location_text": "Location not specified",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-10T03:52:15.000Z",
      "apply_url": "https://jobs.jobvite.com/tylertech/job/otJ3zfwy",
      "apply_url_verified": false,
      "ats": "jobvite",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior UX Researcher Senior UX Researcher",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "design",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.036871da5dc7baf1c2",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f5279587635a204544a195fd514c8cf3",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior UX Researcher Senior UX Researcher",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f5279587635a204544a195fd514c8cf3:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.842738b0527a363895",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f5279587635a204544a195fd514c8cf3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Tyler Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f5279587635a204544a195fd514c8cf3:employer:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.b41ec6ab5cfc583301",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f5279587635a204544a195fd514c8cf3",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Senior UX Researcher",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:f5279587635a204544a195fd514c8cf3:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.d902c834080c85fe8d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f5279587635a204544a195fd514c8cf3",
          "signal_type": "query_match",
          "display_text": "Employer: \"technologies\"",
          "tooltip": "Employer contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Tyler Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.8e7dfd1c21069f9275",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "f5279587635a204544a195fd514c8cf3",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Senior UX Researcher",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "913416cd30d525a21b0206e7d8974911",
      "title": "Research Intern - Technology for Religious Empowerment",
      "employer_name": "Microsoft",
      "employer_slug": "microsoft",
      "location_text": "Redmond, WA, US",
      "country": "US",
      "employment_type": "internship",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": "yes",
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_match_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "k401_contribution_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_contribution_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-11-26T17:24:38.000Z",
      "apply_url": "https://apply.careers.microsoft.com/careers/job/1970393556631718",
      "apply_url_verified": false,
      "ats": "microsoft_custom",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Research Intern - Technology for Religious Empowerment Redmond, WA, US",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": true,
      "benefit_last_verified": "2026-06-13T01:18:42.546Z",
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "entry",
      "years_experience_min": 0,
      "years_experience_max": 4,
      "role_function": "data",
      "employer_industry": "Industrial",
      "employer_size": "5000+",
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.50128d884241420e7f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "913416cd30d525a21b0206e7d8974911",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Research Intern - Technology for Religious Empowerment Redmond, WA, US",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:913416cd30d525a21b0206e7d8974911:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.a95c482e8ddf354c08",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "913416cd30d525a21b0206e7d8974911",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Research Intern - Technology for Religious Empowerment",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:913416cd30d525a21b0206e7d8974911:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.dd31c5ac05c9fc8fdb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "913416cd30d525a21b0206e7d8974911",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Research Intern - Technology for Religious Empowerment",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.k401.a5ed44ef30e364fb17",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "913416cd30d525a21b0206e7d8974911",
          "signal_type": "trust_signal",
          "display_text": "Verified 401(k) evidence",
          "tooltip": "401(k) value has source evidence and a fresh verification timestamp.",
          "source_binding": "row_trust_evidence",
          "source_field": "k401_match",
          "source_value": "yes",
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 22,
          "mobile_priority": 11,
          "ui": {
            "icon": "PiggyBank",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
            "source_label": "401(k) source",
            "source_date": "2026-06-13T01:18:42.546Z"
          }
        }
      ]
    },
    {
      "id": "a1f0e70d00e7095b22352cdfb12bc9e2",
      "title": "Assistant for Research & Technology (Temp Agency)",
      "employer_name": "Airbus",
      "employer_slug": "ag",
      "location_text": "Getafe Area",
      "country": "ES",
      "employment_type": "temporary",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-12T00:00:00.000Z",
      "apply_url": "https://ag.wd3.myworkdayjobs.com/Airbus/job/Getafe-Area/Research---Technology-Spain-Assistant--Temp-Agency-_JR10412522",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Assistant for Research & Technology (Temp Agency) Getafe Area posted: Posted Today",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.3fc2949eea0c58cd52",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a1f0e70d00e7095b22352cdfb12bc9e2",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Assistant for Research & Technology (Temp Agency) Getafe Area posted: Posted Today",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a1f0e70d00e7095b22352cdfb12bc9e2:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.f5302c222d20da8ad3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a1f0e70d00e7095b22352cdfb12bc9e2",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Assistant for Research & Technology (Temp Agency)",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a1f0e70d00e7095b22352cdfb12bc9e2:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.5a37b88c2cdced53cd",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a1f0e70d00e7095b22352cdfb12bc9e2",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Assistant for Research & Technology (Temp Agency)",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "3adc9a022050c29d1e0ee3b9fbca0272",
      "title": "Research Analyst - Advanced Digital Technologies",
      "employer_name": "GE Vernova",
      "employer_slug": "gevernova",
      "location_text": "Bengaluru",
      "country": "IN",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": "yes",
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_match_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "k401_contribution_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_contribution_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-12T00:00:00.000Z",
      "apply_url": "https://gevernova.wd5.myworkdayjobs.com/Vernova_ExternalSite/job/Bengaluru/Research-Analyst---Advanced-Digital-Technologies_R5032040-2",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Research Analyst - Advanced Digital Technologies Bengaluru posted: Posted 30+ Days Ago",
      "parental_leave_weeks": 10,
      "non_birth_parent_leave_weeks": 10,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": "https://www.gevernova.com/sustainability/documents/Sustainability/ge2022_sustainability_report_print_ada.pdf",
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 85,
      "benefit_verified": true,
      "benefit_last_verified": "2026-05-07",
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": "Industrial",
      "employer_size": "5000+",
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.acc67f7ab434087c98",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3adc9a022050c29d1e0ee3b9fbca0272",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Research Analyst - Advanced Digital Technologies Bengaluru posted: Posted 30+ Days Ago",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3adc9a022050c29d1e0ee3b9fbca0272:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.b90c121316b7ec1c06",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3adc9a022050c29d1e0ee3b9fbca0272",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Research Analyst - Advanced Digital Technologies Bengaluru posted: Posted 30+ Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3adc9a022050c29d1e0ee3b9fbca0272:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.0b8766f6b381d8b4ae",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3adc9a022050c29d1e0ee3b9fbca0272",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Research Analyst - Advanced Digital Technologies",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3adc9a022050c29d1e0ee3b9fbca0272:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.ca2113c9bd831cf767",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3adc9a022050c29d1e0ee3b9fbca0272",
          "signal_type": "query_match",
          "display_text": "Title: \"technologies\"",
          "tooltip": "Title matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Research Analyst - Advanced Digital Technologies",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:3adc9a022050c29d1e0ee3b9fbca0272:title:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.aa11bc2cdb8b7eafcb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3adc9a022050c29d1e0ee3b9fbca0272",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Research Analyst - Advanced Digital Technologies",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.e9e4991ede65268465",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3adc9a022050c29d1e0ee3b9fbca0272",
          "signal_type": "query_match",
          "display_text": "Title: \"technologies\"",
          "tooltip": "Title contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Research Analyst - Advanced Digital Technologies",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.k401.1d5bb393454ff6ce38",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "3adc9a022050c29d1e0ee3b9fbca0272",
          "signal_type": "trust_signal",
          "display_text": "Verified 401(k) evidence",
          "tooltip": "401(k) value has source evidence and a fresh verification timestamp.",
          "source_binding": "row_trust_evidence",
          "source_field": "k401_match",
          "source_value": "yes",
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 22,
          "mobile_priority": 11,
          "ui": {
            "icon": "PiggyBank",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
            "source_label": "401(k) source",
            "source_date": "2026-05-07"
          }
        }
      ]
    },
    {
      "id": "059fa8c75c5ef0bc9e7d3a0ff2320ac6",
      "title": "Director, Technology Industry Research",
      "employer_name": "Jones Lang LaSalle",
      "employer_slug": "jll",
      "location_text": "4 Locations",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-26T00:00:00.000Z",
      "apply_url": "https://jll.wd1.myworkdayjobs.com/jllcareers/job/Menlo-Park-CA/Director--Technology-Industry-Research_REQ505945",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Director, Technology Industry Research 4 Locations posted: Posted 17 Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "data",
      "employer_industry": "Real Estate",
      "employer_size": "5000+",
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.820eaa2fd9b70be61a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "059fa8c75c5ef0bc9e7d3a0ff2320ac6",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Director, Technology Industry Research 4 Locations posted: Posted 17 Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:059fa8c75c5ef0bc9e7d3a0ff2320ac6:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.2d2c48d2f221f9abce",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "059fa8c75c5ef0bc9e7d3a0ff2320ac6",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Director, Technology Industry Research",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:059fa8c75c5ef0bc9e7d3a0ff2320ac6:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.00effeb5bbae04abb3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "059fa8c75c5ef0bc9e7d3a0ff2320ac6",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Director, Technology Industry Research",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "39e936e7256a7c23dea1c7f2c068499f",
      "title": "Computational Chemometrics Researcher",
      "employer_name": "Shell plc",
      "employer_slug": "shell",
      "location_text": "Shell Technology Centre - Bangalore",
      "country": "IN",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-09T00:00:00.000Z",
      "apply_url": "https://shell.wd3.myworkdayjobs.com/shellcareers/job/Shell-Technology-Centre---Bangalore/Computational-Chemometrics-Researcher_R202800-1",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Computational Chemometrics Researcher Shell Technology Centre - Bangalore posted: Posted 3 Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "other",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.274bcad4b8cc46fd70",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "39e936e7256a7c23dea1c7f2c068499f",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Computational Chemometrics Researcher Shell Technology Centre - Bangalore posted: Posted 3 Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:39e936e7256a7c23dea1c7f2c068499f:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.15709d730019b9a49e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "39e936e7256a7c23dea1c7f2c068499f",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Computational Chemometrics Researcher",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:39e936e7256a7c23dea1c7f2c068499f:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.88990dea1a6c1fd1e0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "39e936e7256a7c23dea1c7f2c068499f",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Computational Chemometrics Researcher",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "5f04aab63d0d0a8b605feff51eaf0e35",
      "title": "Advanced Data & Research Technologies Leader",
      "employer_name": "Corteva",
      "employer_slug": "corteva",
      "location_text": "2 Locations",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-14T00:00:00.000Z",
      "apply_url": "https://corteva.wd5.myworkdayjobs.com/corteva/job/Indianapolis-Indiana-United-States/Advanced-Data---Research-Technologies-Leader_246786W",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Advanced Data & Research Technologies Leader 2 Locations posted: Posted 29 Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": "Industrial",
      "employer_size": "5000+",
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.8ec8ba716e091b8703",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "5f04aab63d0d0a8b605feff51eaf0e35",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Advanced Data & Research Technologies Leader 2 Locations posted: Posted 29 Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:5f04aab63d0d0a8b605feff51eaf0e35:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d569e29046c2342e25",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "5f04aab63d0d0a8b605feff51eaf0e35",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Advanced Data & Research Technologies Leader 2 Locations posted: Posted 29 Days Ago",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:5f04aab63d0d0a8b605feff51eaf0e35:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.0c408c7af53c54acb3",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "5f04aab63d0d0a8b605feff51eaf0e35",
          "signal_type": "query_match",
          "display_text": "Title: \"technologies\"",
          "tooltip": "Title matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Advanced Data & Research Technologies Leader",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:5f04aab63d0d0a8b605feff51eaf0e35:title:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.0c40c4078578215e7d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "5f04aab63d0d0a8b605feff51eaf0e35",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Advanced Data & Research Technologies Leader",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:5f04aab63d0d0a8b605feff51eaf0e35:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.8fc334971b32532ab5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "5f04aab63d0d0a8b605feff51eaf0e35",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Advanced Data & Research Technologies Leader",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.9edfc06869753cd250",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "5f04aab63d0d0a8b605feff51eaf0e35",
          "signal_type": "query_match",
          "display_text": "Title: \"technologies\"",
          "tooltip": "Title contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Advanced Data & Research Technologies Leader",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "22fe5af5c533872008ef17ed9358fffb",
      "title": "Technology Director - Intelligent Systems - Aerospace Research",
      "employer_name": "GE Aerospace",
      "employer_slug": "geaerospace",
      "location_text": "Niskayuna",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-12T00:00:00.000Z",
      "apply_url": "https://geaerospace.wd5.myworkdayjobs.com/GE_ExternalSite/job/Niskayuna/Technology-Director---Intelligent-Systems---Aerospace-Research_R5033225",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Technology Director - Intelligent Systems - Aerospace Research Niskayuna posted: Posted 30+ Days Ago",
      "parental_leave_weeks": 10,
      "non_birth_parent_leave_weeks": 10,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": "https://www.geaerospace.com/sites/default/files/2025-sustainability-report.pdf",
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 60,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "data",
      "employer_industry": "Defense",
      "employer_size": "5000+",
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d410e2131ee5eb1ff4",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "22fe5af5c533872008ef17ed9358fffb",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Technology Director - Intelligent Systems - Aerospace Research Niskayuna posted: Posted 30+ Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:22fe5af5c533872008ef17ed9358fffb:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.955bd5c1085a8db34d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "22fe5af5c533872008ef17ed9358fffb",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Technology Director - Intelligent Systems - Aerospace Research",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:22fe5af5c533872008ef17ed9358fffb:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.e1d37ccab72c0f557d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "22fe5af5c533872008ef17ed9358fffb",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Technology Director - Intelligent Systems - Aerospace Research",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "34a07bb6df5ba557879a5ec332b053ed",
      "title": "Technology Director - Electrical Systems - Aerospace Research",
      "employer_name": "GE Aerospace",
      "employer_slug": "geaerospace",
      "location_text": "Niskayuna",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-12T00:00:00.000Z",
      "apply_url": "https://geaerospace.wd5.myworkdayjobs.com/GE_ExternalSite/job/Niskayuna/Technology-Director---Electrical-Systems----Aerospace-Research_R5033223-1",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Technology Director - Electrical Systems - Aerospace Research Niskayuna posted: Posted 30+ Days Ago",
      "parental_leave_weeks": 10,
      "non_birth_parent_leave_weeks": 10,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": "https://www.geaerospace.com/sites/default/files/2025-sustainability-report.pdf",
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 60,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "data",
      "employer_industry": "Defense",
      "employer_size": "5000+",
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.4522c0648b1b7df2f0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "34a07bb6df5ba557879a5ec332b053ed",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Technology Director - Electrical Systems - Aerospace Research Niskayuna posted: Posted 30+ Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:34a07bb6df5ba557879a5ec332b053ed:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.22d41fd29f16c7b494",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "34a07bb6df5ba557879a5ec332b053ed",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Technology Director - Electrical Systems - Aerospace Research",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:34a07bb6df5ba557879a5ec332b053ed:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.99fe392377aa29339a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "34a07bb6df5ba557879a5ec332b053ed",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Technology Director - Electrical Systems - Aerospace Research",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "9af308ea27b26b687f69ca1bc8a3b0b6",
      "title": "Equity Research Associate Analyst – Technology – TRPIM",
      "employer_name": "T. Rowe Price",
      "employer_slug": "troweprice",
      "location_text": "Baltimore, MD",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": true,
      "equity_included_source": null,
      "equity_type": [
        "options"
      ],
      "k401_match": "yes",
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_match_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "k401_contribution_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_contribution_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-05T00:00:00.000Z",
      "apply_url": "https://troweprice.wd5.myworkdayjobs.com/TRowePrice/job/Baltimore-MD/Equity-Research-Associate-Analyst---Technology---TRPIM_82066",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Equity Research Associate Analyst – Technology – TRPIM Baltimore, MD posted: Posted 7 Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": true,
      "benefit_last_verified": "2026-06-13T01:18:42.546Z",
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": "Finance",
      "employer_size": "5000+",
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.d90b17f1657c3bfa74",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9af308ea27b26b687f69ca1bc8a3b0b6",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Equity Research Associate Analyst – Technology – TRPIM Baltimore, MD posted: Posted 7 Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:9af308ea27b26b687f69ca1bc8a3b0b6:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.e603fe4d39d4656bec",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9af308ea27b26b687f69ca1bc8a3b0b6",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Equity Research Associate Analyst – Technology – TRPIM",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:9af308ea27b26b687f69ca1bc8a3b0b6:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.19e6571089e8b4de2d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9af308ea27b26b687f69ca1bc8a3b0b6",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Equity Research Associate Analyst – Technology – TRPIM",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.k401.51cba14bb1307cdd9e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "9af308ea27b26b687f69ca1bc8a3b0b6",
          "signal_type": "trust_signal",
          "display_text": "Verified 401(k) evidence",
          "tooltip": "401(k) value has source evidence and a fresh verification timestamp.",
          "source_binding": "row_trust_evidence",
          "source_field": "k401_match",
          "source_value": "yes",
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 22,
          "mobile_priority": 11,
          "ui": {
            "icon": "PiggyBank",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
            "source_label": "401(k) source",
            "source_date": "2026-06-13T01:18:42.546Z"
          }
        }
      ]
    },
    {
      "id": "11f7e7e4e7aaf1c92e1e21b8449ca8eb",
      "title": "Senior Director, Research & Early Development Technology",
      "employer_name": "Alnylam Pharmaceuticals",
      "employer_slug": "alnylam-pharmaceuticals",
      "location_text": "United States | Cambridge, MA, USA",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-12T10:25:24.000Z",
      "apply_url": "https://alnylam.eightfold.ai/careers/job/893394096685",
      "apply_url_verified": false,
      "ats": "eightfold",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Director, Research & Early Development Technology United States | Cambridge, MA, USA",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c78010c50f4d802383",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "11f7e7e4e7aaf1c92e1e21b8449ca8eb",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Director, Research & Early Development Technology United States | Cambridge, MA, USA",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:11f7e7e4e7aaf1c92e1e21b8449ca8eb:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.9f7a24c59835acb142",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "11f7e7e4e7aaf1c92e1e21b8449ca8eb",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Senior Director, Research & Early Development Technology",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:11f7e7e4e7aaf1c92e1e21b8449ca8eb:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.da671b44b2b6fda709",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "11f7e7e4e7aaf1c92e1e21b8449ca8eb",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Senior Director, Research & Early Development Technology",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "40f55b0f256eee5def6a5fa8d689cd3f",
      "title": "Principal Computer Vision Researcher - Advanced Technology Group",
      "employer_name": "Dolby Laboratories",
      "employer_slug": "dolby-laboratories",
      "location_text": "Sunnyvale, California,United States",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-12T10:25:24.000Z",
      "apply_url": "https://dolby.eightfold.ai/careers/job/21304444",
      "apply_url_verified": false,
      "ats": "eightfold",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Principal Computer Vision Researcher - Advanced Technology Group Sunnyvale, California,United States",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "product",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.217792d9b211b50832",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40f55b0f256eee5def6a5fa8d689cd3f",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Principal Computer Vision Researcher - Advanced Technology Group Sunnyvale, California,United States",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:40f55b0f256eee5def6a5fa8d689cd3f:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.a859524327c86a4dc5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40f55b0f256eee5def6a5fa8d689cd3f",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Principal Computer Vision Researcher - Advanced Technology Group",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:40f55b0f256eee5def6a5fa8d689cd3f:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.f9ccc7e47ddd597d18",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "40f55b0f256eee5def6a5fa8d689cd3f",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Principal Computer Vision Researcher - Advanced Technology Group",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "96af78bd2a86037ad0f32fcfd09fb2d4",
      "title": "Global Head of Technology & Architecture in Biomedical Research (BR)",
      "employer_name": "Novartis",
      "employer_slug": "novartis",
      "location_text": "Basel (City)",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-29T00:00:00.000Z",
      "apply_url": "https://novartis.wd3.myworkdayjobs.com/Internal_Careers_for_Acquired_Entities/job/Basel-City/Global-Head-of-Technology---Architecture-in-Biomedical-Research--BR-_REQ-10079333",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Global Head of Technology & Architecture in Biomedical Research (BR) Basel (City) posted: Posted 14 Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e17d45e6f7799100d6",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "96af78bd2a86037ad0f32fcfd09fb2d4",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Global Head of Technology & Architecture in Biomedical Research (BR) Basel (City) posted: Posted 14 Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:96af78bd2a86037ad0f32fcfd09fb2d4:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.84f0d6923c9bad849b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "96af78bd2a86037ad0f32fcfd09fb2d4",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Global Head of Technology & Architecture in Biomedical Research (BR)",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:96af78bd2a86037ad0f32fcfd09fb2d4:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.3178f40439d9a8d3e0",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "96af78bd2a86037ad0f32fcfd09fb2d4",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Global Head of Technology & Architecture in Biomedical Research (BR)",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "62604529ee92b6259394ce58153701b1",
      "title": "Turbomachinery Component Design Engineer - LW Research and Technology",
      "employer_name": "Rolls-Royce Holdings",
      "employer_slug": "rollsroyce",
      "location_text": "Indianapolis",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-09T00:00:00.000Z",
      "apply_url": "https://rollsroyce.wd3.myworkdayjobs.com/professional/job/Indianapolis/Turbomachinery-Component-Design-Engineer---LW-Research-and-Technology_JR6149669-1",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Turbomachinery Component Design Engineer - LW Research and Technology Indianapolis posted: Posted 3 Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.79ee4042f1dd29971e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "62604529ee92b6259394ce58153701b1",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Turbomachinery Component Design Engineer - LW Research and Technology Indianapolis posted: Posted 3 Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:62604529ee92b6259394ce58153701b1:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.6095139e1aee95a1c5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "62604529ee92b6259394ce58153701b1",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Turbomachinery Component Design Engineer - LW Research and Technology",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:62604529ee92b6259394ce58153701b1:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.6e35ef21ef39310ed5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "62604529ee92b6259394ce58153701b1",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Turbomachinery Component Design Engineer - LW Research and Technology",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "8f64d4746a6ffb98bd88807e939e2960",
      "title": "ALT 2026 AI & Data Analyst for Research and Technology (F/M)",
      "employer_name": "Airbus",
      "employer_slug": "ag",
      "location_text": "Toulouse Area",
      "country": "FR",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-26T00:00:00.000Z",
      "apply_url": "https://ag.wd3.myworkdayjobs.com/Airbus/job/Toulouse-Area/ALT-2026-AI---Data-Analyst-for-Research-and-Technology--F-M-_JR10395697",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "ALT 2026 AI & Data Analyst for Research and Technology (F/M) Toulouse Area posted: Posted 17 Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": null,
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.93edad22fe8533f197",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8f64d4746a6ffb98bd88807e939e2960",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "ALT 2026 AI & Data Analyst for Research and Technology (F/M) Toulouse Area posted: Posted 17 Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8f64d4746a6ffb98bd88807e939e2960:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.2d9714e314587ffa6b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8f64d4746a6ffb98bd88807e939e2960",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "ALT 2026 AI & Data Analyst for Research and Technology (F/M)",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:8f64d4746a6ffb98bd88807e939e2960:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.bba91d1c596cc06a76",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "8f64d4746a6ffb98bd88807e939e2960",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "ALT 2026 AI & Data Analyst for Research and Technology (F/M)",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "a162c472f93d3339a52f2b29079ee40a",
      "title": "Clinical Research Assistant (human subject research / TBI)",
      "employer_name": "General Dynamics Information Technology",
      "employer_slug": "gdit",
      "location_text": "USA NC Fort Bragg",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-12T00:00:00.000Z",
      "apply_url": "https://gdit.wd5.myworkdayjobs.com/External_Career_Site/job/USA-NC-Fort-Bragg/Clinical-Research-Assistant--human-subject-research---TBI-_RQ218909-1",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Clinical Research Assistant (human subject research / TBI) USA NC Fort Bragg posted: Posted 30+ Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": "Technology",
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.1248bc7729fc35d438",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a162c472f93d3339a52f2b29079ee40a",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Clinical Research Assistant (human subject research / TBI) USA NC Fort Bragg posted: Posted 30+ Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a162c472f93d3339a52f2b29079ee40a:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.63ca9d63dbbade9952",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a162c472f93d3339a52f2b29079ee40a",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Clinical Research Assistant (human subject research / TBI)",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:a162c472f93d3339a52f2b29079ee40a:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.0dd470631bff165bcb",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "a162c472f93d3339a52f2b29079ee40a",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Clinical Research Assistant (human subject research / TBI)",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "4d301ba7c2bb5636ef63d841b181b8aa",
      "title": "AIML - Senior ML Researcher in Foundation Models, Responsible AI",
      "employer_name": "Apple",
      "employer_slug": "apple",
      "location_text": "Cupertino, United States of America",
      "country": "US",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 6,
      "salary_min": 147400,
      "salary_max": 272100,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "base",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": "year",
      "base_salary_min": 147400,
      "base_salary_max": 272100,
      "salary_disclosed": true,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": "yes",
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_match_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "k401_contribution_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_contribution_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2025-12-09T16:45:34.446Z",
      "apply_url": "https://jobs.apple.com/en-us/details/200635831/aiml-senior-ml-researcher-in-foundation-models-responsible-ai?team=MLAI",
      "apply_url_verified": false,
      "ats": "apple_custom",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "AIML - Senior ML Researcher in Foundation Models, Responsible AI Cupertino, United States of America Join us as we build world-class groundbreaking products for our customers! Apple's Data and ML Innovation team focuses on innovative technologies, methodologies, and research to enable fantastic user experiences and to push the frontier of machine learning. Our team is looking to hire a tech lead with a strong track record in Applied Research who is passionate about ML and foundation models with a focus on responsibility, fairness, and safety. In this role, you will lead the research and application of ML methods for technologies that power breakthrough user experiences while upholding Apple's values, privacy, and quality standards. This role will be highly multifunctional. You will collaborate closely with top machine learning researchers and engineers, software engineers, and design teams to develop and deliver groundbreaking solutions for Apple products. We believe that the most exciting problems in machine learning research arise at the intersection of emerging technologies and real-world use cases. This is also where the most critical breakthroughs come from. As a researcher, you will: - Define and deliver responsible machine learning technologies - Develop methods and frameworks to train and evaluate foundation models with responsibility and safety in mind - Research and advance safety alignment and model robustness methods for foundation models - Research and develop mitigations and safeguards to ensure safe deployment of LLM's in Apple products - Advocate for scientific and engineering excellence: You will contribute to the architecture and high-level",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 44,
      "benefit_verified": true,
      "benefit_last_verified": "2026-06-13T01:18:42.546Z",
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "senior",
      "years_experience_min": 5,
      "years_experience_max": 9,
      "role_function": "other",
      "employer_industry": "Technology",
      "employer_size": "5000+",
      "quality_score": 55,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "doctorate",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.ca0fcce0056a7a2789",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d301ba7c2bb5636ef63d841b181b8aa",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "AIML - Senior ML Researcher in Foundation Models, Responsible AI Cupertino, United States of America Join us as we build world-class groundbreaking products for our customers! Apple's Data and ML Innovation team focuses on innovative technologies, methodologies, and research to enable fantastic user experiences and to push the frontier of machine learning. Our team is looking to hire a tech lead with a strong track record in Applied Research who is passionate about ML and foundation models with a focus on responsibility, fairness, and safety. In this role, you will lead the research and application of ML methods for technologies that power breakthrough user experiences while upholding Apple's values, privacy, and quality standards. This role will be highly multifunctional. You will collaborate closely with top machine learning researchers and engineers, software engineers, and design teams to develop and deliver groundbreaking solutions for Apple products. We believe that the most exciting problems in machine learning research arise at the intersection of emerging technologies and real-world use cases. This is also where the most critical breakthroughs come from. As a researcher, you will: - Define and deliver responsible machine learning technologies - Develop methods and frameworks to train and evaluate foundation models with responsibility and safety in mind - Research and advance safety alignment and model robustness methods for foundation models - Research and develop mitigations and safeguards to ensure safe deployment of LLM's in Apple products - Advocate for scientific and engineering excellence: You will contribute to the architecture and high-level",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4d301ba7c2bb5636ef63d841b181b8aa:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.fa4da56191f44af607",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d301ba7c2bb5636ef63d841b181b8aa",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "AIML - Senior ML Researcher in Foundation Models, Responsible AI Cupertino, United States of America Join us as we build world-class groundbreaking products for our customers! Apple's Data and ML Innovation team focuses on innovative technologies, methodologies, and research to enable fantastic user experiences and to push the frontier of machine learning. Our team is looking to hire a tech lead with a strong track record in Applied Research who is passionate about ML and foundation models with a focus on responsibility, fairness, and safety. In this role, you will lead the research and application of ML methods for technologies that power breakthrough user experiences while upholding Apple's values, privacy, and quality standards. This role will be highly multifunctional. You will collaborate closely with top machine learning researchers and engineers, software engineers, and design teams to develop and deliver groundbreaking solutions for Apple products. We believe that the most exciting problems in machine learning research arise at the intersection of emerging technologies and real-world use cases. This is also where the most critical breakthroughs come from. As a researcher, you will: - Define and deliver responsible machine learning technologies - Develop methods and frameworks to train and evaluate foundation models with responsibility and safety in mind - Research and advance safety alignment and model robustness methods for foundation models - Research and develop mitigations and safeguards to ensure safe deployment of LLM's in Apple products - Advocate for scientific and engineering excellence: You will contribute to the architecture and high-level",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4d301ba7c2bb5636ef63d841b181b8aa:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.4115f547f3d1a7e04a",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d301ba7c2bb5636ef63d841b181b8aa",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "AIML - Senior ML Researcher in Foundation Models, Responsible AI",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4d301ba7c2bb5636ef63d841b181b8aa:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.75b9f4374fc54be0ea",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d301ba7c2bb5636ef63d841b181b8aa",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "description_excerpt",
          "source_value": "AIML - Senior ML Researcher in Foundation Models, Responsible AI Cupertino, United States of America Join us as we build world-class groundbreaking products for our customers! Apple's Data and ML Innovation team focuses on innovative technologies, methodologies, and research to enable fantastic user experiences and to push the frontier of machine learning. Our team is looking to hire a tech lead with a strong track record in Applied Research who is passionate about ML and foundation models with a focus on responsibility, fairness, and safety. In this role, you will lead the research and application of ML methods for technologies that power breakthrough user experiences while upholding Apple's values, privacy, and quality standards. This role will be highly multifunctional. You will collaborate closely with top machine learning researchers and engineers, software engineers, and design teams to develop and deliver groundbreaking solutions for Apple products. We believe that the most exciting problems in machine learning research arise at the intersection of emerging technologies and real-world use cases. This is also where the most critical breakthroughs come from. As a researcher, you will: - Define and deliver responsible machine learning technologies - Develop methods and frameworks to train and evaluate foundation models with responsibility and safety in mind - Research and advance safety alignment and model robustness methods for foundation models - Research and develop mitigations and safeguards to ensure safe deployment of LLM's in Apple products - Advocate for scientific and engineering excellence: You will contribute to the architecture and high-level",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.3542054e5240f104c9",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d301ba7c2bb5636ef63d841b181b8aa",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "AIML - Senior ML Researcher in Foundation Models, Responsible AI",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.k401.88118484c917f551df",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d301ba7c2bb5636ef63d841b181b8aa",
          "signal_type": "trust_signal",
          "display_text": "Verified 401(k) evidence",
          "tooltip": "401(k) value has source evidence and a fresh verification timestamp.",
          "source_binding": "row_trust_evidence",
          "source_field": "k401_match",
          "source_value": "yes",
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 22,
          "mobile_priority": 11,
          "ui": {
            "icon": "PiggyBank",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
            "source_label": "401(k) source",
            "source_date": "2026-06-13T01:18:42.546Z"
          }
        }
      ]
    },
    {
      "id": "aa75237d0e70a3e68de3d1c3a14d9b8b",
      "title": "Global Technology Liaison – Semiconductor R&D and Academic Collaboration",
      "employer_name": "Renesas Electronics",
      "employer_slug": "renesaselectronics",
      "location_text": "Athens, , Greece",
      "country": "unknown",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": null,
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": null,
      "k401_match_source_fields": [],
      "k401_contribution_source_url": null,
      "k401_contribution_source_fields": [],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-12T10:25:24.000Z",
      "apply_url": "https://jobs.smartrecruiters.com/RenesasElectronics/744000131395039-global-technology-liaison-semiconductor-r-d-and-academic-collaboration",
      "apply_url_verified": false,
      "ats": "smartrecruiters",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Global Technology Liaison – Semiconductor R&D and Academic Collaboration Athens, , Greece Company Description: Job Description: This role is responsible for leading global technology liaison activities with research institutes and academia, with a focus on identifying, shaping, and nurturing mid‑ to long‑term semiconductor technology opportunities aligned with Renesas' strategic direction. The position requires both strong technical credibility and the ability to build trust‑based, long‑term relationships, which are highly valued in Japanese organizations. Key Responsibilities - Working closely with CTO office - Lead technology liaison activities with leading global research institutes and universities across Europian countries. - Identify emerging semiconductor technologies and research trends with a mid‑ to long‑term perspective - Initiate, structure, and support joint research programs and technical collaborations Act as a technical interface between external partners and internal stakeholders (R&D, business units, IP, legal, and strategy teams) - Provide clear technical insights and recommendations to internal teams and management - Support the definition of research themes aligned with Renesas' long‑term technology roadmap - Represent Renesas at international conferences, workshops, and technical forums - Build and maintain a trusted global technology network over time Qualifications: - Solid technical background in semiconductor technologies (e.g., devices, process, circuits, materials, packaging, or systems) - Professional experience in R&D, technology planning, technology strategy, or technical partnership roles - Ability to communicate and collaborate effectively with engineers and researchers at a technical level - Business‑level English proficiency for meetings, discussions, and written communication - Strong coordination skills and the ability to work across organizational",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": false,
      "benefit_last_verified": null,
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "marketing",
      "employer_industry": "Technology",
      "employer_size": null,
      "quality_score": 45,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "doctorate",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.57446aadc98c531e82",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "aa75237d0e70a3e68de3d1c3a14d9b8b",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description matched \"technologies\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Global Technology Liaison – Semiconductor R&D and Academic Collaboration Athens, , Greece Company Description: Job Description: This role is responsible for leading global technology liaison activities with research institutes and academia, with a focus on identifying, shaping, and nurturing mid‑ to long‑term semiconductor technology opportunities aligned with Renesas' strategic direction. The position requires both strong technical credibility and the ability to build trust‑based, long‑term relationships, which are highly valued in Japanese organizations. Key Responsibilities - Working closely with CTO office - Lead technology liaison activities with leading global research institutes and universities across Europian countries. - Identify emerging semiconductor technologies and research trends with a mid‑ to long‑term perspective - Initiate, structure, and support joint research programs and technical collaborations Act as a technical interface between external partners and internal stakeholders (R&D, business units, IP, legal, and strategy teams) - Provide clear technical insights and recommendations to internal teams and management - Support the definition of research themes aligned with Renesas' long‑term technology roadmap - Represent Renesas at international conferences, workshops, and technical forums - Build and maintain a trusted global technology network over time Qualifications: - Solid technical background in semiconductor technologies (e.g., devices, process, circuits, materials, packaging, or systems) - Professional experience in R&D, technology planning, technology strategy, or technical partnership roles - Ability to communicate and collaborate effectively with engineers and researchers at a technical level - Business‑level English proficiency for meetings, discussions, and written communication - Strong coordination skills and the ability to work across organizational",
          "matched_input": "technologies",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:aa75237d0e70a3e68de3d1c3a14d9b8b:description:technologies",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.ff5e7392ff8172800c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "aa75237d0e70a3e68de3d1c3a14d9b8b",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Global Technology Liaison – Semiconductor R&D and Academic Collaboration Athens, , Greece Company Description: Job Description: This role is responsible for leading global technology liaison activities with research institutes and academia, with a focus on identifying, shaping, and nurturing mid‑ to long‑term semiconductor technology opportunities aligned with Renesas' strategic direction. The position requires both strong technical credibility and the ability to build trust‑based, long‑term relationships, which are highly valued in Japanese organizations. Key Responsibilities - Working closely with CTO office - Lead technology liaison activities with leading global research institutes and universities across Europian countries. - Identify emerging semiconductor technologies and research trends with a mid‑ to long‑term perspective - Initiate, structure, and support joint research programs and technical collaborations Act as a technical interface between external partners and internal stakeholders (R&D, business units, IP, legal, and strategy teams) - Provide clear technical insights and recommendations to internal teams and management - Support the definition of research themes aligned with Renesas' long‑term technology roadmap - Represent Renesas at international conferences, workshops, and technical forums - Build and maintain a trusted global technology network over time Qualifications: - Solid technical background in semiconductor technologies (e.g., devices, process, circuits, materials, packaging, or systems) - Professional experience in R&D, technology planning, technology strategy, or technical partnership roles - Ability to communicate and collaborate effectively with engineers and researchers at a technical level - Business‑level English proficiency for meetings, discussions, and written communication - Strong coordination skills and the ability to work across organizational",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:aa75237d0e70a3e68de3d1c3a14d9b8b:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.7923fb1a8f71b8fe9c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "aa75237d0e70a3e68de3d1c3a14d9b8b",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "description_excerpt",
          "source_value": "Global Technology Liaison – Semiconductor R&D and Academic Collaboration Athens, , Greece Company Description: Job Description: This role is responsible for leading global technology liaison activities with research institutes and academia, with a focus on identifying, shaping, and nurturing mid‑ to long‑term semiconductor technology opportunities aligned with Renesas' strategic direction. The position requires both strong technical credibility and the ability to build trust‑based, long‑term relationships, which are highly valued in Japanese organizations. Key Responsibilities - Working closely with CTO office - Lead technology liaison activities with leading global research institutes and universities across Europian countries. - Identify emerging semiconductor technologies and research trends with a mid‑ to long‑term perspective - Initiate, structure, and support joint research programs and technical collaborations Act as a technical interface between external partners and internal stakeholders (R&D, business units, IP, legal, and strategy teams) - Provide clear technical insights and recommendations to internal teams and management - Support the definition of research themes aligned with Renesas' long‑term technology roadmap - Represent Renesas at international conferences, workshops, and technical forums - Build and maintain a trusted global technology network over time Qualifications: - Solid technical background in semiconductor technologies (e.g., devices, process, circuits, materials, packaging, or systems) - Professional experience in R&D, technology planning, technology strategy, or technical partnership roles - Ability to communicate and collaborate effectively with engineers and researchers at a technical level - Business‑level English proficiency for meetings, discussions, and written communication - Strong coordination skills and the ability to work across organizational",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.e5a8575f2955f8e58f",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "aa75237d0e70a3e68de3d1c3a14d9b8b",
          "signal_type": "query_match",
          "display_text": "Description: \"technologies\"",
          "tooltip": "Description contains \"technologies\" from your search.",
          "source_binding": "token_match",
          "source_field": "description_excerpt",
          "source_value": "Global Technology Liaison – Semiconductor R&D and Academic Collaboration Athens, , Greece Company Description: Job Description: This role is responsible for leading global technology liaison activities with research institutes and academia, with a focus on identifying, shaping, and nurturing mid‑ to long‑term semiconductor technology opportunities aligned with Renesas' strategic direction. The position requires both strong technical credibility and the ability to build trust‑based, long‑term relationships, which are highly valued in Japanese organizations. Key Responsibilities - Working closely with CTO office - Lead technology liaison activities with leading global research institutes and universities across Europian countries. - Identify emerging semiconductor technologies and research trends with a mid‑ to long‑term perspective - Initiate, structure, and support joint research programs and technical collaborations Act as a technical interface between external partners and internal stakeholders (R&D, business units, IP, legal, and strategy teams) - Provide clear technical insights and recommendations to internal teams and management - Support the definition of research themes aligned with Renesas' long‑term technology roadmap - Represent Renesas at international conferences, workshops, and technical forums - Build and maintain a trusted global technology network over time Qualifications: - Solid technical background in semiconductor technologies (e.g., devices, process, circuits, materials, packaging, or systems) - Professional experience in R&D, technology planning, technology strategy, or technical partnership roles - Ability to communicate and collaborate effectively with engineers and researchers at a technical level - Business‑level English proficiency for meetings, discussions, and written communication - Strong coordination skills and the ability to work across organizational",
          "matched_input": "technologies",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        }
      ]
    },
    {
      "id": "0e9fe0a87a34d182c08b42602896df16",
      "title": "Principal Analyst, Enterprise Architecture",
      "employer_name": "Forrester Research INC",
      "employer_slug": "forrester",
      "location_text": "9 Locations",
      "country": "unknown",
      "employment_type": "contract",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": 126000,
      "salary_max": 263000,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "USD",
      "salary_type": "base_plus_commission",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": "year",
      "base_salary_min": 126000,
      "base_salary_max": 263000,
      "salary_disclosed": true,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": "yes",
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_match_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "k401_contribution_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_contribution_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "profit_sharing": false,
      "bonus_offered": true,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-22T00:00:00.000Z",
      "apply_url": "https://forrester.wd501.myworkdayjobs.com/careers/job/Cambridge-MA/Principal-Analyst--Enterprise-Architecture_R-101480",
      "apply_url_verified": true,
      "ats": "workday",
      "url_last_checked_alive": "2026-06-13T01:22:23.938Z",
      "removed_at": null,
      "description_excerpt": "Principal Analyst, Enterprise Architecture 9 Locations At Forrester, we're trusted to work on trailblazing, mission critical problems that business and technology leaders face today. That's why we're always looking to empower talented individuals to perform at their best every single day. We're proud of our community of smart people and vibrant voices who come together to do what's right by our clients and each other. Our success is driven by curiosity, courage and customer obsession. The confidence and drive to be bold at work. Join us and build an extraordinary future. About This Role: Forrester Research is seeking a Principal Analyst to be a critical member of the research team responsible for leading our Enterprise Solutions Architecture P ractice , part of our Technology Architecture & Delivery Research Group. This practice serves CIOs, CTOs and IT Leaders and Practitioners helping them achieve high performance - the ability to deliver great business results through technology . The Principal A nalyst delivers research that encompasses : 1) Enterprise Architecture practice, strategy and portfolio of research 2) Drive research on key platforms, vendors and trends 3) Brings the right mix of both strategic and technical architecture and delivery experiences 4) fosters a culture of collaboration across our Research, Sales, Product and Customer Success teams. The Principal Analyst has a strong understanding of CIO /CTO concerns and priorities , help s them understand the implications of technology, economies, labor, and other key trends on IT strategy and delivery. Job Description: The Principal Analyst works",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 44,
      "benefit_verified": true,
      "benefit_last_verified": "2026-06-13T01:18:42.546Z",
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 0,
      "years_experience_max": null,
      "role_function": "other",
      "employer_industry": "Industrial",
      "employer_size": "5000+",
      "quality_score": 55,
      "travel_pct": 30,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.c6594357686b5de74c",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0e9fe0a87a34d182c08b42602896df16",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Principal Analyst, Enterprise Architecture 9 Locations At Forrester, we're trusted to work on trailblazing, mission critical problems that business and technology leaders face today. That's why we're always looking to empower talented individuals to perform at their best every single day. We're proud of our community of smart people and vibrant voices who come together to do what's right by our clients and each other. Our success is driven by curiosity, courage and customer obsession. The confidence and drive to be bold at work. Join us and build an extraordinary future. About This Role: Forrester Research is seeking a Principal Analyst to be a critical member of the research team responsible for leading our Enterprise Solutions Architecture P ractice , part of our Technology Architecture & Delivery Research Group. This practice serves CIOs, CTOs and IT Leaders and Practitioners helping them achieve high performance - the ability to deliver great business results through technology . The Principal A nalyst delivers research that encompasses : 1) Enterprise Architecture practice, strategy and portfolio of research 2) Drive research on key platforms, vendors and trends 3) Brings the right mix of both strategic and technical architecture and delivery experiences 4) fosters a culture of collaboration across our Research, Sales, Product and Customer Success teams. The Principal Analyst has a strong understanding of CIO /CTO concerns and priorities , help s them understand the implications of technology, economies, labor, and other key trends on IT strategy and delivery. Job Description: The Principal Analyst works",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0e9fe0a87a34d182c08b42602896df16:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.bfba7f41bcce0c3071",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0e9fe0a87a34d182c08b42602896df16",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "employer_name",
          "source_value": "Forrester Research INC",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:0e9fe0a87a34d182c08b42602896df16:employer:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.employer_name.ff8150601fe3fa0e75",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0e9fe0a87a34d182c08b42602896df16",
          "signal_type": "query_match",
          "display_text": "Employer: \"research\"",
          "tooltip": "Employer contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "employer_name",
          "source_value": "Forrester Research INC",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.k401.916d6183351a1de270",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0e9fe0a87a34d182c08b42602896df16",
          "signal_type": "trust_signal",
          "display_text": "Verified 401(k) evidence",
          "tooltip": "401(k) value has source evidence and a fresh verification timestamp.",
          "source_binding": "row_trust_evidence",
          "source_field": "k401_match",
          "source_value": "yes",
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 22,
          "mobile_priority": 11,
          "ui": {
            "icon": "PiggyBank",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
            "source_label": "401(k) source",
            "source_date": "2026-06-13T01:18:42.546Z"
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.apply.9d5e31b0b2c983e7df",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "0e9fe0a87a34d182c08b42602896df16",
          "signal_type": "trust_signal",
          "display_text": "Live-verified apply link",
          "tooltip": "The apply link passed the latest liveness check.",
          "source_binding": "row_trust_evidence",
          "source_field": "apply_url_verified",
          "source_value": true,
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 10,
          "mobile_priority": 11,
          "ui": {
            "icon": "ExternalLink",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://forrester.wd501.myworkdayjobs.com/careers/job/Cambridge-MA/Principal-Analyst--Enterprise-Architecture_R-101480",
            "source_label": "Apply link",
            "source_date": "2026-06-13T01:22:23.938Z"
          }
        }
      ]
    },
    {
      "id": "4d64050da2f4529c03ce6b66ab3d5171",
      "title": "Senior Director, Research & Development - E-Beam Technology (m/f/d)",
      "employer_name": "Applied Materials",
      "employer_slug": "amat",
      "location_text": "Heimstetten,DEU",
      "country": "DE",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": "yes",
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_match_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "k401_contribution_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_contribution_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-06-05T00:00:00.000Z",
      "apply_url": "https://amat.wd1.myworkdayjobs.com/External/job/HeimstettenDEU/Senior-Director--Research---Development----E-Beam-Technology--m-f-d-_R2620865",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Senior Director, Research & Development - E-Beam Technology (m/f/d) Heimstetten,DEU posted: Posted 7 Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": true,
      "benefit_last_verified": "2026-06-13T01:18:42.546Z",
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "staff_plus",
      "years_experience_min": 8,
      "years_experience_max": 12,
      "role_function": "data",
      "employer_industry": "Industrial",
      "employer_size": null,
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.fd8acfd99aa6d56052",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d64050da2f4529c03ce6b66ab3d5171",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Senior Director, Research & Development - E-Beam Technology (m/f/d) Heimstetten,DEU posted: Posted 7 Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4d64050da2f4529c03ce6b66ab3d5171:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.ea6ad685c507ac3a08",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d64050da2f4529c03ce6b66ab3d5171",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Senior Director, Research & Development - E-Beam Technology (m/f/d)",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:4d64050da2f4529c03ce6b66ab3d5171:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.1f7ab77e713263a021",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d64050da2f4529c03ce6b66ab3d5171",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Senior Director, Research & Development - E-Beam Technology (m/f/d)",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.k401.f19a3d83cf2caa442e",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "4d64050da2f4529c03ce6b66ab3d5171",
          "signal_type": "trust_signal",
          "display_text": "Verified 401(k) evidence",
          "tooltip": "401(k) value has source evidence and a fresh verification timestamp.",
          "source_binding": "row_trust_evidence",
          "source_field": "k401_match",
          "source_value": "yes",
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 22,
          "mobile_priority": 11,
          "ui": {
            "icon": "PiggyBank",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
            "source_label": "401(k) source",
            "source_date": "2026-06-13T01:18:42.546Z"
          }
        }
      ]
    },
    {
      "id": "fce9d74cb4c7b331e32011115a3bdb6e",
      "title": "Oliver Wyman - Research Professional, Consumer, Telco & Technology (CTT) – Gurugram",
      "employer_name": "Marsh McLennan",
      "employer_slug": "mmc",
      "location_text": "Gurugram - Horizon",
      "country": "IN",
      "employment_type": "unknown",
      "remote_status": "unspecified",
      "remote_status_source": null,
      "remote_status_enriched_at": null,
      "days_in_office": null,
      "timezone_overlap_hours": 3,
      "salary_min": null,
      "salary_max": null,
      "salary_min_source": null,
      "salary_max_source": null,
      "salary_currency": "UNSPECIFIED",
      "salary_type": "unknown",
      "salary_type_source": null,
      "salary_type_enriched_at": null,
      "salary_period": null,
      "base_salary_min": null,
      "base_salary_max": null,
      "salary_disclosed": false,
      "equity_included": false,
      "equity_included_source": null,
      "equity_type": [
        "none"
      ],
      "k401_match": "yes",
      "match_401k_pct": null,
      "match_401k_pct_source": null,
      "k401_match_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_match_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "k401_contribution_source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
      "k401_contribution_source_fields": [
        "EMPLR_CONTRIB_INCOME_AMT"
      ],
      "profit_sharing": false,
      "bonus_offered": false,
      "mental_health_support": null,
      "childcare_subsidy": null,
      "fertility_family_building_benefits": null,
      "adoption_assistance_offered": null,
      "surrogacy_assistance_offered": null,
      "student_loan_repayment_offered": null,
      "learning_budget_offered": null,
      "relocation_assistance": null,
      "top_startup_sources": [],
      "posted_at": "2026-05-12T00:00:00.000Z",
      "apply_url": "https://mmc.wd1.myworkdayjobs.com/MMC/job/Gurugram---Horizon/Oliver-Wyman---Research-Professional--Consumer--Telco---Technology--CTT----Gurugram_R_343461-1",
      "apply_url_verified": false,
      "ats": "workday",
      "url_last_checked_alive": null,
      "removed_at": null,
      "description_excerpt": "Oliver Wyman - Research Professional, Consumer, Telco & Technology (CTT) – Gurugram Gurugram - Horizon posted: Posted 30+ Days Ago",
      "parental_leave_weeks": null,
      "non_birth_parent_leave_weeks": null,
      "parental_leave_weeks_source": null,
      "non_birth_parent_leave_weeks_source": null,
      "parental_leave_source_url": null,
      "pto_days": null,
      "unlimited_pto": false,
      "sabbatical_eligible": false,
      "family_friendly_score": 40,
      "benefit_verified": true,
      "benefit_last_verified": "2026-06-13T01:18:42.546Z",
      "hire_states_allowed": [],
      "state_eligibility_source": null,
      "state_eligibility_enriched_at": null,
      "llm_quality_pass_at": null,
      "seniority": "mid",
      "years_experience_min": 3,
      "years_experience_max": 7,
      "role_function": "data",
      "employer_industry": "Finance",
      "employer_size": "5000+",
      "quality_score": 35,
      "travel_pct": null,
      "requires_shift": null,
      "shift_type": "unknown",
      "shift_type_source": null,
      "weekend_work": "unknown",
      "weekend_work_source": null,
      "relocation_assistance_source": null,
      "contractor_w2": "unknown",
      "required_timezone": null,
      "fertility_family_building_benefits_source": null,
      "mental_health_support_source": null,
      "adoption_assistance_offered_source": null,
      "childcare_subsidy_source": null,
      "learning_budget_offered_source": null,
      "surrogacy_assistance_offered_source": null,
      "cover_letter_required": null,
      "cover_letter_required_source": null,
      "assessment_required": null,
      "assessment_required_source": null,
      "application_deadline": null,
      "application_deadline_source": null,
      "visa_sponsorship": false,
      "us_citizenship_required": false,
      "security_clearance": "none",
      "education_required": "none",
      "roll_up_count": null,
      "roll_up_total_locations": null,
      "explanations": [
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.description_excerpt.38482e359ec32fe41d",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fce9d74cb4c7b331e32011115a3bdb6e",
          "signal_type": "query_match",
          "display_text": "Description: \"research\"",
          "tooltip": "Description matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "description_excerpt",
          "source_value": "Oliver Wyman - Research Professional, Consumer, Telco & Technology (CTT) – Gurugram Gurugram - Horizon posted: Posted 30+ Days Ago",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:fce9d74cb4c7b331e32011115a3bdb6e:description:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.754b9c951e8981cfd5",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fce9d74cb4c7b331e32011115a3bdb6e",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title matched \"research\" from your search.",
          "source_binding": "bm25_field_evidence",
          "source_field": "title",
          "source_value": "Oliver Wyman - Research Professional, Consumer, Telco & Technology (CTT) – Gurugram",
          "matched_input": "research",
          "derivation_source": "candidate_result.raw_match_evidence",
          "candidate_evidence_id": "ev:gq_b6f6be61e6b785c57f6e:fce9d74cb4c7b331e32011115a3bdb6e:title:research",
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "candidate_evidence_exists",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 90,
          "mobile_priority": 1,
          "ui": {
            "icon": "Search",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.query.title.599991722e547b10da",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fce9d74cb4c7b331e32011115a3bdb6e",
          "signal_type": "query_match",
          "display_text": "Title: \"research\"",
          "tooltip": "Title contains \"research\" from your search.",
          "source_binding": "token_match",
          "source_field": "title",
          "source_value": "Oliver Wyman - Research Professional, Consumer, Telco & Technology (CTT) – Gurugram",
          "matched_input": "research",
          "derivation_source": "row_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "row_field_contains",
          "counts_for_non_trivial_query": true,
          "truth_verified": true,
          "exact": true,
          "priority": 80,
          "mobile_priority": 2,
          "ui": {
            "icon": "SearchCheck",
            "tone": "match",
            "href": null
          }
        },
        {
          "schema_version": "inv382.match_signal.v1",
          "signal_id": "sig.trust.k401.0d826c30a411ee1b1b",
          "query_id": "gq_b6f6be61e6b785c57f6e",
          "job_id": "fce9d74cb4c7b331e32011115a3bdb6e",
          "signal_type": "trust_signal",
          "display_text": "Verified 401(k) evidence",
          "tooltip": "401(k) value has source evidence and a fresh verification timestamp.",
          "source_binding": "row_trust_evidence",
          "source_field": "k401_match",
          "source_value": "yes",
          "matched_input": true,
          "derivation_source": "verified_source_field",
          "candidate_evidence_id": null,
          "rerank_evidence_id": null,
          "taxonomy_alias_id": null,
          "oracle_verification_method": "trust_source_exists",
          "counts_for_non_trivial_query": false,
          "truth_verified": true,
          "exact": true,
          "priority": 22,
          "mobile_priority": 11,
          "ui": {
            "icon": "PiggyBank",
            "tone": "verified",
            "href": null
          },
          "evidence_source": {
            "source_url": "https://www.askebsa.dol.gov/FOIA%20Files/2024/Latest/F_SCH_H_2024_Latest.zip",
            "source_label": "401(k) source",
            "source_date": "2026-06-13T01:18:42.546Z"
          }
        }
      ]
    }
  ],
  "total": 200,
  "page": 2,
  "per_page": 100,
  "applied_filters": {
    "q": "Qube Research & Technologies"
  },
  "hidden_unknown_benefits_count": 0,
  "hidden_quality_floor_count": 0,
  "quality_floor": "default",
  "search_profile": {
    "profile_id": "inv382.d6.pg_textsearch_bge_small_rrf.v1",
    "bm25_extension": "pg_textsearch",
    "vector_model": "BAAI/bge-small-en-v1.5",
    "vector_model_version": "v1.5",
    "fusion_method": "rrf"
  },
  "explanation_context": {
    "non_trivial_query": true,
    "query_terms": [
      "qube",
      "research",
      "technologies"
    ],
    "active_filter_keys": [],
    "visible_signal_limit": 3,
    "visible_trust_limit": 2
  },
  "event_context": null
}