Machine Learning Processor Architect

ic resources
Oxford
1 year ago
Applications closed

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An intriguing opportunity for a Machine Learning Processor Architect with an early-stage start-up developing a unique new processor technology. Our client has offices in London and Oxford, however remote working is also possible.

Here the Machine Learning Processor Architect will join as one of the early-stage founding members of the company, which is still less than ten people. You will be developing a brand-new processor architecture that has never been done before. You will design, model and drive new architectural features for next generation hardware, and evaluate performance of cutting-edge AI workloads.

The right candidate:

This role of Machine Learning Processor Architect requires someone that understands the ins and outs of computer architecture, and the nuances of what it takes to optimise and trade-off various aspects of hardware-software co-design. Past experience working on performance architecture of GPUs/AI Accelerators is required, with experience with deep learning frameworks (such as PyTorch, Tensorflow).

Our client is open to considering candidates at various levels of experience, provided they have the right background.

Visa sponsorship can also be provided where needed.

An excellent salary, plus stock options are on offer.

Contact for details! Reach out to Caroline Pye.

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