Machine Learning Systems Engineer at Apple
Cupertino, California, United States -
Full Time


Start Date

Immediate

Expiry Date

10 Mar, 26

Salary

0.0

Posted On

10 Dec, 25

Experience

5 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Machine Learning, Software Engineering, Data Engineering, Distributed Systems, Cloud Services, Data Processing, Model Evaluation, Model Inference, Problem Solving, Scalability, Reliability, Creativity, Collaboration, Applied Machine Learning, Data Acquisition, Data Synthesis

Industry

Computers and Electronics Manufacturing

Description
Our team is building next generation systems and tools supporting the research and development of machine learning models, and their integration into the products Apple customers love. We're a fast moving, highly skilled but small team designing and building a collection of tools and systems used by Apple’s MLEs and data scientists to build, test and deploy their products. Our systems have to scale, stay highly available, and "just work”. That's a tall order, and we're looking for talented and passionate engineers who love dealing with such challenges. DESCRIPTION Our team designs and builds ML systems and tools that support applied ML teams throughout their product development cycle. Using our systems, MLEs and data scientists perform data acquisition and synthesis, training, evaluation, and serving. In this role, you will be responsible for engineering solutions to support model training, such as building reliable and scalable systems to run data processing pipelines, data generation engines, model evaluation infrastructure, and model inference systems. You may also be involved in directly integrating ML into products. You will need to rely on your creativity and problem solving to develop scalable, maintainable, and cost-effective solutions. You will be successful and feel fulfilled in our team if you enjoy tackling challenging problems, have a strong sense of shared ownership, and thrive in a collaborative team setting. MINIMUM QUALIFICATIONS 3+ years as a Machine Learning Engineer or Software Engineer working on deploying large-scale systems. Strong understanding in data centric systems, distributed systems, reliability, and cloud services. Hands-on experience in designing and coding large scale systems. Proven experience with applied machine learning, data engineering, or similar. MS in Computer Science or related experience. PREFERRED QUALIFICATIONS Experience with developer tools or developer productivity systems. Experience with open source or inner source
Responsibilities
You will be responsible for engineering solutions to support model training, including building reliable and scalable systems for data processing and model inference. You may also be involved in integrating machine learning into products.
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