About the job
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.
Responsibilities
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.
Qualifications
Minimum
Bachelor’s degree (3+ years experience) or Master’s degree (2+ year experience) in CS, EE, or a related technical field.
Proficiency in C/C++ for embedded systems development, including RTOS, microcontrollers, and low-level hardware interactions.
Proven ability to optimize and deploy ML models for resource-constrained edge devices using techniques like - quantization/pruning and frameworks (e.g., TensorFlow Lite, ONNX Runtime, Core ML).
Strong analytical and debugging skills to resolve performance bottlenecks across hardware, firmware, and ML inference.
Preferred
Experience with ML inference hardware acceleration (DSPs, NPUs, ASICs).Familiarity with diverse neural network architectures and training methodologies for efficient edge deployment.
Knowledge of computer vision, NLP, or audio processing in an embedded/robotics context.
Experience with embedded Linux or other RTOS in a production environment.
Contributions to open-source embedded ML projects or relevant publications.
Proficiency with Python for automation and data analysis.