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AIML - Machine Learning Engineer, Foundation Models

Apple
1 day ago
Full-time
On-site
Cupertino, California, United States
ML & AI Engineering
We build frontier foundation models that power intelligent experiences at Apple. Our team works across the full training lifecycle: including pre-training foundation models, and developing mid-training approaches that bridge general capability and task-specific performance. What makes our work distinct is that we're engineering models specifically for Apple silicon and optimized for experiences that are private, personal, and deeply integrated into the OS. We're solving frontier problems in reward modeling to resist reward hacking, handling sparse and delayed rewards in agentic settings, and aligning models reliably across the spectrum from open-ended creative tasks to precise, action-taking workflows. If you're drawn to hard problems where the research and the product are inseparable, this is the team.

Description


We believe that the most interesting problems in deep learning research arise when we try to apply learning to real-world use cases, and this is also where the most important breakthroughs come from. You will work with a close-knit and fast growing team of world-class engineers and scientists to tackle some of the most challenging problems in foundation models and deep learning, including natural language processing, multi-modal understanding, and combining learning with knowledge.

Minimum Qualifications


Proven track record in training or deployment of large models or building large-scale distributed systems. Proficient programming skills in Python and one of the deep learning toolkits such as JAX, PyTorch, or Tensorflow. Ability to work in a collaborative environment. PhD, or equivalent practical experience, in Computer Science, or related technical field.

Preferred Qualifications


Web-scale information retrieval Human-like conversation agent Multi-modal perception for existing products and future hardware platforms On-device intelligence and learning with strong privacy protections