Job Details

Job Information

On-device ML Integration Engineer
AWM-1871-On-device ML Integration Engineer
2/24/2026
3/1/2026
Negotiable
Permanent

Other Information

www.apple.com
Cupertino, CA, 95015, USA
Cupertino
California
United States
95015

Job Description

No Video Available
 

Weekly Hours: 40

Role Number: 200642883-0836

Summary

Imagine being at the forefront of an evolution where cutting-edge AI meets the elegance of Apple silicon. The On-Device Machine Learning team transforms groundbreaking research into practical applications, enabling billions of Apple devices to run powerful AI models locally, privately, and efficiently. We stand at the unique intersection of research, software engineering, hardware engineering, and product development, making Apple the leading destination for machine learning innovation.

Our team builds the essential infrastructure that enables machine learning at scale on Apple devices. This involves onboarding cutting-edge architectures to embedded systems, developing optimization toolkits for model compression and acceleration, building ML compilers and runtimes for efficient execution, and creating comprehensive benchmarking and debugging toolchains. This infrastructure forms the backbone of Apple’s machine learning workflows across Camera, Siri, Health, Vision, and other core experiences, contributing to the overall Apple Intelligence ecosystem.

If you are passionate about the technical challenges of running sophisticated ML models across all devices, from resource-constrained devices to powerful clusters, and eager to directly impact how machine learning operates across the Apple ecosystem, this role presents an exciting opportunity to work on the next generation of intelligent experiences on Apple platforms.

Description

We are seeking an ML Integration Engineer. In this role, you will ensure Apple’s inference stack allows integrating ML workflows end-to-end with excellent user experience, flawless functionality, and maximum performance. This role is far reaching and you will partner with teams across our ML deployment stack, from ML model developers to runtime engineers, as you ensure the best experience, functionality, and maximum performance for ML workflows. The scope of work is wide, spanning model-side updates, ML frameworks export, custom kernels, compiler optimization, and development of analysis and debugging tools.

As a power user of Apple’s ML infrastructure, you will also help spearhead the integration of the latest and most capable models with strong, competitive performance across hardware targets, showcasing the practical power of Apple’s authoring and runtime APIs. This role offers the unique opportunity to shape how ML developers experience Apple’s end-to-end inference stack, from model creation to deployment.

Minimum Qualifications

  • Bachelors in Computer Sciences, Engineering, or related discipline.

  • Proficient in Python programming. Some familiarity with C++ is required.

  • Proficiency in at least one ML authoring framework, such as PyTorch, MLX, and JAX.

  • Understanding of ML fundamentals, including common architectures such as Transformers.

  • Understanding of GPU programming paradigms.

  • Strong communication skills, including ability to communicate with cross-functional audiences.

Preferred Qualifications

  • Experience with C++, Swift.

  • Experience with GPU kernel optimizations.

  • Experience with MLIR/LLVM or similar compiler toolchains.

  • Familiarity with Hugging Face or other model repositories.

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. Learn more about your EEO rights as an applicant (https://www.eeoc.gov/sites/default/files/2023-06/22-088_EEOC_KnowYourRights6.12ScreenRdr.pdf) .

Other Details

No Video Available
--

About Organization

 
About Organization