Apple
AI

Machine Learning Engineer (Applied Machine Learning), AI Data Platforms (AiDP)

Apple · London, ENG, GB

Actively hiring Posted about 1 month ago

At Apple, we're building the next generation of AI systems that power experiences for billions of users worldwide. The AI & Data Platforms (AiDP) team is seeking an ML Engineer to architect and deploy production-scale generative AI systems that balance innovation with Apple's uncompromising standards for privacy, performance, and quality. The successful candidate will own end-to-end ML initiatives, from problem framing and experimentation to production deployment and measurable business impact.

If you're passionate about transforming research into robust ML infrastructure and solving complex engineering challenges at the intersection of GenAI and distributed systems, we want to hear from you.

Description

Our Machine Learning Engineers work on building intelligent systems to democratize AI across a wide range of solutions within Apple. You will drive the development and deployment of AI models and systems that directly impact the capabilities and performance of Apple’s products and services. You will implement robust, scalable ML infrastructure, including data storage, processing, and model serving components, to support seamless integration of AI/ML models into production environments. You are a creative problem solver with strong ML and engineering skills who will implement automated ML pipelines for data preprocessing, feature engineering, model training, hyper-parameter tuning, and model evaluation, enabling rapid experimentation and iteration. ","responsibilities":"Design and deploy production ML/GenAI systems that drive measurable business outcomes across Apple's product ecosystem

Build next-generation infrastructure leveraging distributed systems, hardware acceleration, and optimization techniques

Partner with cross-functional teams to translate groundbreaking research into user-centric products

Solve uniquely challenging problems in privacy-preserving ML and efficient inference at scale.

Champion ML engineering excellence through robust testing, monitoring, and documentation that meets Apple's quality bar

Preferred Qualifications

Contributions to major open-source ML frameworks or research communities

MS in Computer Science, Machine Learning, or a related quantitative field

Solid grasp of NLP techniques, multimodal AI (text, image, code), and agent workflows.

Experience with LLM Agentic workflows and framework (Langchain, LangGraph, DSPy, or similar.)

Experience applying core data science methods such as anomaly detection, forecasting, clustering, and pattern discovery - and translating those insights into impact

Familiarity with performance optimisation for ML workloads (hardware acceleration, inference tuning)

Familiarity with designing data pipelines and producing aggregated datasets

Minimum Qualifications

Bachelor of Science in Machine Learning, Data Science, Computer Science or a related quantitative field or equivalent experience

Demonstrated experience in Machine Learning engineering with solid experience in Python

Hands-on experience with LLMs and generative AI systems (e.g. RAG, prompt engineering, evaluation) as well as agentic frameworks

Experience building enterprise-grade ML pipelines (data prep, distributed training, optimisation, monitoring) in cloud environments (AWS, GCP, Azure) or on-prem infrastructure","internalDetails":null

Tags & focus areas

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Ai Machine Learning Generative Ai
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