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Benchstack Ai

Benchstack Ai is hiring: Machine Learning Engineer - Music Platform - SF in San

Benchstack Ai, San Francisco, CA, US, 94199

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Machine Learning Engineer - Music Platform - SF

This range is provided by Benchstack Ai. Your actual pay will be based on your skills and experience talk with your recruiter to learn more.

Base pay range

$150,000.00/yr - $300,000.00/yr

Were hiring a Machine Learning Engineer / Researcher with experience training large-scale generative models (diffusion, GANs, or language models) using PyTorch and distributed infrastructure. Youll help build next-generation music generation models where precision and audio quality matter more than anything one off-beat and the product fails.

Youll be leading hands-on research and large-scale training on clusters of hundreds of H100s, improving the song and audio quality of our generative systems and bringing those breakthroughs into production.

What youll do
  • Train and optimise large-scale generative models across multiple modalities
  • Research and deploy new architectures that push the boundaries of audio generation
  • Collaborate directly with the founders on product integration and scaling
  • Own distributed training pipelines end-to-end
What were looking for
  • 14 years post graduation experience training generative models (diffusion, GANs, transformers, etc.)
  • Deep experience with PyTorch and distributed compute
  • Solid foundations in Python, with some familiarity in TypeScript
  • Driven by research curiosity and a builder mindset
Nice to have
  • Background in audio or music generation
  • Open-source ML research contributions
  • Experience training models at scale (multi-node / multi-GPU setups)

???? Visa: TN or H1B transfer only

???? Company: 5-person, VC-backed startup ($2.5M raised)

Were reimagining how music is created and experienced join a team at the forefront of generative audio.

Seniority level

Associate

Employment type

Full-time

Job function

Engineering, Information Technology, and Product Management

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