We are looking for an AIML Engineer with a strong background in developing foundation models for generative AI and multimodal systems that integrate various types of real-time sensor data such as video and audio with other modalities like text. You will not only work on cutting-edge projects to advance our AI capabilities but also contribute to practical features in Apple products and bring impact to millions of users. You will collaborate with others to drive data requirements validation strategies and key performance indicators and conduct algorithm research and development that serves product needs. A successful candidate will stay up-to-date with the latest advancements in AI machine learning and computer vision applying this knowledge to drive innovation but also take a practical approach to problem solving and software engineering to deliver clean modular testable code.
Experience building models for multimodal perception system.
Experience working with LLMs and VLMs.
Software engineering skills and proficiency in Python and PyTorch.
Curiosity and willingness to learn new things in order to improve the quality of their solutions.
BS and a minimum of 3 years relevant industry experience.
MS or PhD in computer vision computer graphics machine learning computer science computer engineering or related fields.
Experience in developing training/tuning foundation models and multimodal LLMs.
Experience with training and troubleshooting generative architectures such as diffusion reinforcement learning flow matching or normalizing flow at scale.
Experience applying reinforcement learning to help train foundation models a plus.
Excellent communication and experience working with multi-functional teams.
Self-motivated with proven track record to optimally prioritize and deliver tasks on schedule.
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