Senior ML Engineer

London
10 months ago
Applications closed

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Title: Senior ML Engineer

Company: Med-tech

Location: London (Hybrid)

Pay: Up to £450/day (Inside IR35)

Duration: Initial 6-month period

Overview:

A tech company at the cutting edge of Video Processing, Machine Learning and GPU optimisation are looking for a Senior ML Engineer to help define a development road-map and provide proof of concept for a new product.

In this position you will be working on a brand new project in a highly-respected team of specialist C++, ML and Video Processing engineers to create version 2.0 of an already globally successful product. The focus will be integrating the existing software and hardware with new ML models.

About you:

  • 3+ years of commercial experience

  • Experience with Deep Learning frameworks (PyTorch, TensorFlow etc.,)

  • Experience with ML acceleration tools (TensorRT etc.,)

  • Exposure to GPU technology (CUDA, OpenCL etc.,)

  • Good knowledge of software design principles (and experience with C++)

  • Can 'see the bigger picture' of a project

    Full details are available. Please don't hesitate to get in touch with max@ platform-recruitment. com to learn more

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