drjobs Machine Learning Engineer - Multimodal Foundation Models

Machine Learning Engineer - Multimodal Foundation Models

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1 Vacancy
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Job Location drjobs

Sunnyvale, CA - USA

Monthly Salary drjobs

USD 147400 - 272100

Vacancy

1 Vacancy

Job Description

This position requires a highly motivated person who wants to help us advance the field of Generative AI and multi-modal foundation models. You will be responsible for designing implementing evaluating foundation models based on the latest advancements in the fields taking into account future hardware design and product addition you will have an opportunity to engage and collaborate with several teams across apple to deliver the best products.


  • BS and a minimum of 3 years relevant industry experience.
  • Solid programming skills with Python
  • Familiarity with deep learning toolkits
  • Familiar with challenges associated with training large models and working with large data


  • PhD in Computer Science Computer Vision Computer Graphics Machine Learning or equivalent.
  • Strong academic and publication record (CVPR ICCV/ECCV NeurIPS ICML etc)
  • Deep understanding of large foundation models
  • Deep understanding of multi-task multi-modal machine learning domain
  • Ability to communicate the results of analyses in a clear and effective manner

Employment Type

Full Time

Company Industry

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