AI/ML Software Engineer (GCP/GoLang)

Cactus Compute
London
11 months ago
Applications closed

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About Us:

Cactus is building the future of sustainable and affordable compute for AI/ML. Join our team to work on designing and implementing distributed systems algorithms for deep learning setups with many heterogeneous workers.


Requirements:

  • Understanding of deep learning from the mathematical principles.
  • Experience implementing concurrent algorithms in GoLang.
  • Understanding of communication protocols like web sockets, gRPC, Ray, etc.
  • Experience with Google Cloud Platform or other providers.


N/B: You need not tick all boxes, but should be interested in these and have some overlapping skills, enough to pick up large-scale ML concepts when provided design docs and some guidance.


Day Rate: $200 - $500

Location: Open globally

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