Motion Sensing AI Automation Engineer

Apple
San Diego, United States of America2026-04-20

About the job

The Motion Sensing Hardware team at Apple develops sophisticated AI/ML solutions and automation frameworks that support cutting-edge sensing technologies in consumer products. This role offers an opportunity to join a team that designs and implements robust software systems enhancing hardware capabilities and providing valuable data insights throughout the product development lifecycle. We invite motivated and innovative software engineers to help create the intelligent systems that put our products in a class of their own.

Responsibilities

Develop and maintain AI-driven data automation solutions for the Motion Sensing team

Create and implement LLM-powered tools and classic data automation pipelines to streamline test execution, data acquisition, analysis, and presentation of results

Develop intelligent interfaces that help motion sensing engineers gather and interpret sensor data in real-time

Design and deploy AI systems that can assist in characterizing motion sensors, autonomously analyze and mine the resulting data, and generate insights to be presented to cross-functional teams

Drive root cause analysis of failures through AI-powered data analysis and visualization

Build procedures and AI-powered tools that unify and automate the way sensor data is gathered and analyzed

Use machine learning techniques on gathered test data to build predictive models for sensors that allow designers to investigate the impact of varying different performance parameters

Develop deep familiarity with sensor signal chains and software layers

Build proof-of-concept AI solutions and participate in showcasing and evaluating newest ideas

Track the adoption and effectiveness of AI and automation solutions, continuously refining them based on user feedback and evolving requirements from motion sensing engineering teams

Work closely with hardware engineers to understand their needs, translate technical requirements into software solutions, and iterate based on feedback

Qualifications

Minimum

Minimum requirement of a bachelors degree

Data visualization and analysis: Development of tools for real-time data monitoring, statistical analysis of hardware performance metrics, and interactive dashboards for hardware teams

Experience with data processing pipelines and storage solutions for large hardware datasets

Strong object-oriented programming skills: Demonstrated proficiency in designing modular, extensible software architectures using OOP principles

Ability to create reusable component libraries, implement inheritance hierarchies for hardware abstractions, and develop clean interfaces between system components

Machine learning integration expertise: Experience applying classical ML techniques (regression, classification, clustering) to hardware performance data and sensor outputs

Ability to develop and deploy predictive maintenance tools, anomaly detection systems, and automated calibration solutions using established ML frameworks (scikit-learn, TensorFlow, PyTorch)

Understanding of fundamental AI/ML concepts and their practical applications in hardware contexts

Strong software architecture and development skills: Proficiency in multiple programming languages suitable for both low-level hardware interaction and high-level application development

Commitment to producing robust, maintainable, and well-documented tools that follow team coding standards

Excellent written and verbal English communication skills, particularly the ability to explain software concepts to hardware specialists and translate hardware requirements into software specifications

Preferred

Degree in Software Engineering, Electrical, Mechatronic or Computer Science

Large Language Model (LLM) implementation: Experience integrating LLMs for hardware documentation search, natural language interfaces to hardware diagnostic tools, and automated report generation from test data

Familiarity with prompt engineering, fine-tuning, and RAG techniques to make hardware knowledge more accessible to team members through conversational interfaces

Experience with neural networks, computer vision for inspection systems, and reinforcement learning for optimization problems

Experience integrating ML models into production hardware tools

Experience with lab automation frameworks and hardware communication protocols (I2C, SPI, UART, etc.)

Experience developing APIs that expose hardware functionality

Passion for continuously improving development methodologies and staying current with emerging technologies that can enhance hardware testing and development workflows

Collaborative mindset with experience working closely with hardware engineers

Familiarity with motion sensing technologies, magnetometers, and environmental sensors

Experience with Python, C++, infrastructure, server, firmware, and embedded systems

Knowledge of characterization, testing, and signal analysis methodologies