Machine Learning Engineer

CXC
London
2 days ago
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CXC are working with a global Medical Devices developer who are looking for an experiennced contract ML Engineer. Details are:


INSIDE IR35

6 months contract

In the office at least 1 day/week, looking for candidates local to the London office. Expect that there may be times where someone would need to come in more frequently due to project needs.


Responsibilities:

  • Optimize, quantize, and deploy deep learning model outputs from the ML team onto video pipelines.
  • Develop efficient inference pipelines for running AI models in real-time on constrained hardware.
  • Implement custom CUDA kernels.
  • Collaborate with cross-functional teams, including ML researchers, embedded software engineers, and UI/UX designers, to integrate ML solutions seamlessly into products.
  • Work as part of a multidisciplinary team to develop robust and secure-by-design software for a medical device
  • Maintain a high level of quality and reliability in submitted code and participate in team code reviews


Mandatory experience:


  • Proficiency in deep learning frameworks such as TensorFlow or PyTorch
  • Hands-on experience and strong theoretical knowledge in quantization and pruning
  • Experience with kernel development using CUDA or OpenCL for image processing
  • Hands-on experience with TensorRT, embedded hardware accelerators and the ONNX
  • Strong proficiency in both C++ and Python
  • Software development experience on embedded devices such as NVIDIA Orin.



Nice to Haves

  • Excellent debugging skills
  • Experience with video streaming frameworks (Gstreamer, deepstream, holoscan etc.)
  • Good knowledge of Linux, cmake and git.

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