Hugging Face

AI

Open-SourceMachineLearningEngineer

New York, New York, United States; United States FULL TIME Remote Friendly
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Mid+ candidates.

The Brief

“Open-Source Machine Learning Engineer at Hugging Face. Skills: Open-source, Machine Learning, Python, Deep Learning. Improve open-source ML ecosystem. Work on open-source libraries”

Industry & Context.

AI

What They're Looking For.

Must Have

Python skills, experience writing clean, well-tested, maintainable library code, Deep hands-on experience with a modern deep-learning framework, Practical experience with the Hugging Face open-source stack or comparable ML libraries, A public track record of open-source contributions, Solid understanding of modern machine learning and deep learning, transformer architectures, Experience collaborating with a technical community in the open, Fluent written English

Nice to Have

Experience maintaining an open-source project, Prior contributions to Transformers, Datasets, Accelerate, or similar libraries, Familiarity with distributed training, inference optimization, GPU/accelerator performance work, Experience training or fine-tuning models at scale

What You'll Do.

Improve open-source ML ecosystem

Work on open-source libraries

Interact with users and contributors

Foster ML communities

Help users contribute

Work with researchers

Work with ML practitioners

Work with data scientists

How You'll Work.

Team & Collaboration

Collaborating with a community out in the open on GitHub; Collaborating with a technical community in the open; Working with researchers, ML practitioners, and data scientists; Asynchronous collaboration across a distributed, global community

Communication Scope

Fluent written English

Full Job Description

At Hugging Face, we're on a journey to democratize good AI. We're building the fastest-growing platform for AI builders, with over 11 million users who have shared more than 2M models, 700k datasets, and 600k apps. Our open-source libraries have more than 600k stars on GitHub. ### About the Role As an Open-Source Machine Learning Engineer, you'll work to improve the open-source machine learning ecosystem. You'll mainly work on existing open-source libraries such as Transformers, Datasets, Pytorch and vLLM, and you'll interact with users and contributors across the broad open-source ML ecosystem. We'll brainstorm with you to put you in a position to do the work that interests you and that is impactful. You'll help foster one of the most active machine learning communities, helping users contribute to and use the tools you build. You'll work with researchers, ML practitioners, and data scientists every day through GitHub, our forums, and Slack. ### About You You have a public track record of open-source work, and you enjoy collaborating with a community out in the open on GitHub. You love open source, you're passionate about making complex technology more accessible, and you want to contribute to one of the fastest-growing ML ecosystems. If that's you, we can't wait to see your application. ### What you'll need * Strong Python skills, with experience writing clean, well-tested, maintainable library code * Deep hands-on experience with a modern deep-learning framework, especially PyTorch (JAX or TensorFlow a plus) * Practical experience with the Hugging Face open-source stack (Transformers, Datasets, Accelerate) or comparable ML libraries * A public track record of open-source contributions, for example merged pull requests to ML or data libraries, that we can review on GitHub * Solid understanding of modern machine learning and deep learning, including transformer architectures * Experience collaborating with a technical community in the open (GitHub issues and review

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