Embedded Machine Learning Engineer, Wireless Technologies & Ecosystems
Apple - Seattle, United States of America
Posted Oct 28, 2025
Benefits
- Parental leave
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- Non-birth-parent leave
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- Family-building benefits
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- Fertility benefits: Not verified
- Adoption assistance: Not verified
- Surrogacy assistance: Not verified
- Mental health support
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- Relocation assistance
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- Childcare support
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- Learning budget
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- Verification
- Not verified last checked Jun 13, 2026
- Salary
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- 401(k) match
- Listed Source: EMPLR_CONTRIB_INCOME_AMT. source Last checked Jun 13, 2026.
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Schedule
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- Weekend work
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Application
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- Assessment
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- Deadline
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Where they hire
State eligibility is not yet verified.
About this role
Embedded Machine Learning Engineer, Wireless Technologies & Ecosystems Seattle, United States of America Join Apple's innovative iOS Robotics team within Wireless Technologies and Ecosystems (WTE). We're expanding the DockKit Framework's focus on accessories, algorithms, and user experiences to make iOS a leading platform for Perception Algorithm development. As an Embedded Machine Learning Engineer, you'll deploy efficient, low-power ML models directly onto embedded hardware, driving advanced, on-device intelligent experiences for millions of users in robotics and intelligent systems. This role offers a unique opportunity to innovate at the intersection of AI and embedded hardware. You will transform advanced ML algorithms into highly optimized, power-efficient code for custom silicon and microcontrollers in Apple products, specifically for robotics. You'll tackle complex challenges like memory constraints, computational budgets, and real-time performance, ensuring ML models deliver exceptional user experiences while adhering to Apple's privacy and power efficiency standards. Design and implement efficient ML inference pipelines on resource-constrained embedded hardware. Optimize neural network models (e.g., quantization, pruning) for performance, memory, and power on edge devices. Develop and integrate robust C/C++ low-level software for deploying ML models on microcontrollers, DSPs, and ML accelerators. Analyze and debug performance bottlenecks and power consumption across the hardware/software stack for ML workloads. Collaborate with ML researchers, hardware engineers, and platform teams to deliver high-quality, power-efficient edge AI solutions. Evaluate and recommend embedded platforms, toolchains, and ML frameworks for on-device intelligence applications. Minimum Qualifications: Bachelor's degree (3+ years experience) or Master's degree (2+ year experience) in CS, EE, or a related technical
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