ML Research Scientist

IC Resources
Oxford
11 months ago
Applications closed

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ML Research Scientist

I am seeking a PhD-educated ML Research Scientist with expertise in quantization and algorithm design for NPUs, CPUs etc. My client’s tech is all based on years of ground-breaking research and the successful Machine Learning Research Scientist will utilize their expertise in AI model quantization to design, deploy, analyse and enhance performance.

Primary responsibilities

  • AI model quantization for various fields including LLMs.
  • Deploy, analyse and enhance the performance of quantized AI models on a hardware processor.


Essential experience

  • Recently completed PhD with a focus on model quantization
  • AI model design & development
  • Solid understanding of numerical representations used in machine learning and quantization techniques
  • ONNX, TVM
  • PyTorch, TensorFlow


Desirable experience

  • Relevant publications or patents in AI hardware or AI model quantization
  • Model quantization specifically for LLMs

What’s on offer?

£70-100k DOE

Share options

Hybrid & Remote options

Interested? This is an excellent opportunity for a ML Research Scientist. Please apply now for immediate consideration and speak with Chris Wyatt at IC Resources who is recruiting for this position in Oxfordshire, UK.

 

 

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