Machine Learning Engineer

Apple
San Diego, United States of America2026-04-09

About the job

Apple’s Health Sensing team is seeking a versatile Machine Learning Engineer to develop next-generation health algorithms that deliver meaningful insights to users by combining classical ML, signal processing, and emerging generative AI techniques. Our team has delivered impactful features including heart rate notifications, ECG, blood oxygen, sleep apnea notifications, and overnight vitals to millions of Apple Watch users.

Responsibilities

Develop and validate ML and GenAI-driven algorithms for health sensing applications from concept through productization

Prototype and compare multiple approaches using real and synthetic data to accelerate algorithm development

Design experiments and evaluation methodologies to quantify performance and guide algorithm improvements

Optimize algorithms for robustness, efficiency, and on-device deployment constraints

Work cross-functionally with user studies, hardware, software, and product teams to bring algorithms into product

Analyze failure modes, quantify tradeoffs, and drive data-driven algorithm improvements

Qualifications

Minimum

Bachelors degree in Computer Science, Electrical Engineering, Biomedical Engineering, Statistics, Applied Mathematics, or related field, or equivalent industry experience.

Strong foundation in machine learning, statistics, signal processing, or applied mathematics for real-world sensing problems

Experience applying modern AI techniques, including generative AI and agentic AI, to accelerate algorithm development, data generation, and performance evaluation

Proficiency in Python for algorithm development and optimization

Demonstrated ability to rapidly prototype, evaluate multiple approaches, and iterate based on experimental results

Experience owning algorithm development from early exploration through validation and integration

Preferred

Experience developing algorithms for physiological sensing using multi-modal data

Familiarity with on-device ML frameworks or resource-constrained optimization

Experience working with incomplete, noisy, or limited datasets

Background in experimental design and statistical validation

Experience with distributed or cloud-based ML workflows

Experience accelerating development through simulation, synthetic data, or creative data augmentation approaches

Self-driven, curious engineer comfortable taking ambiguous sensing problems from concept to working solutions