Contract Computer Vision Engineer - C++

Redline Group
Oxford
1 year ago
Applications closed

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Exciting and EXCLUSIVE opportunity for a Contract Computer Vision Engineer - C++ to work on a new key development project for our Oxfordshire based client. With an initial period of work completed on site, it is likely that the remainder of the work will be completed on a hybrid basis.

This role has an indicative OUTSIDE IR35 determination therefore we can accept candidates who would like to operate through their own PSC.

Bridging the gap between ideas and reality, our client has been involved in some of the world's leading technology advancements in recent years, providing their global customer base with products that only a short while ago seemed impossible.

You will join the small R&D team who have been tasked with specifically looking into revolutionary new technology and providing proof of concept. You will have experience of working with C++ and CUDA for GPU optimisation.

Key Skills Required - Contract Computer Vision Engineer - C++, Oxfordshire

- Proven experience writing code in C++

- Experience of working with CUDA

- Experience with Python/PyTorch is highly desirable

This contract is likely to start in early September - don't miss out!

For more information or to apply for the Contract Computer Vision Engineer - C++ opportunity in Oxfordshire, please contact Laura Preston - / quoting reference LMP1016


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