The Video Engineering organization is at the forefront of developing innovative technologies for future Apple products, with a strong focus on biometric authentication. Our team has contributed to impactful projects such as FaceID for iOS and OpticID for Apple Vision Pro. We are currently looking for a talented ML Test & Automation Engineer to ensure the quality, reliability, and performance of Apple's machine learning based biometric systems that secure and enhance the lives of millions of users around the world.
Video Engineering DAQ (Data Analytics and Quality) team is seeking a highly motivated and technically skilled ML Test & Automation Engineer to ensure the quality and reliability of FaceID through both manual on-device testing and automated testing infrastructure. You will design end-to-end testing flows that cover model accuracy, edge case detection, and regression testing on actual devices, while performing manual on-device UX testing to assess authentication flows and failure scenarios. You will build scalable automation pipelines to reduce manual testing efforts and enable continuous validation across Apple's device portfolio. By collaborating closely with cross functional teams including deep learning, software engineering, and hardware integration, you will understand model architectures and failure modes to design targeted tests that catch issues early in the development cycle. Your insights will directly guide FaceID development, ensuring the highest standards of security and user experience. A strong background in both software engineering and machine learning is essential to bridge the gap between model development and production deployment.
Apple is an equal opportunity employer that is committed to inclusion and diversity. We seek to promote equal opportunity for all applicants without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, Veteran status, or other legally protected characteristics.