Staff Computer Vision Engineer

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1 year ago
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Staff Computer Vision Engineer


Join us to lead AI innovation in real-time sports analytics, shaping next-gen computer vision systems that process 3M+ sports games yearly for 200K teams globally.


What We're Looking For:

  • Expertise in computer vision and deep learning frameworks
  • Experience with ML inference optimization (TensorRT)
  • Strong MLOps and containerization skills (Kubernetes)
  • Edge device deployment experience
  • Proven leadership in large-scale ML systems
  • Exceptional technical communication


Why Work With Us?

  • Cutting-edge sports analytics tech
  • Fully remote with no mandatory office attendance
  • Global ML team spanning North America, the UK, and Europe
  • Senior Manager-level impact on technical direction
  • Shape the future of AI in sports analytics
  • Work at scale: millions of games, 200K teams


Location:

Flexible remote options; team members across North America, the UK, and Europe.

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