Senior/Staff Software Engineer - Machine Learning Frameworks

ARM
Manchester
1 year ago
Applications closed

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Job Description

Job Overview:

Are you a skilled and motivated engineer with a strong background in optimised system design such distributed systems and high-performance concurrency?

 

We are building the future of computing, on Arm. We want to make Arm-based hardware the natural choice for ML in the datacenter. To that end, we truly believe that major machine learning frameworks used to run AI must be highly performant.

Our team is a diverse, dedicated and inclusive group from all over the world based in Arm's stylish offices at the heart of Manchester. We work on all aspects of researching, developing and delivering highly optimised ML frameworks into the Arm ecosystem across many ML models.

 

This role will directly contribute to key open source ML frameworks such as TensorFlow and PyTorch. In addition, Arm is owner and advocate of the underlying technologies, such as Compute Library, that act as basic building blocks to form the high-quality and performant software. In collaboration with colleagues from Manchester and Cambridge you will work on delivering optimised software for server-class hardware, and integrate it with ML software frameworks and libraries for deployment on our partner's hardware.

 

We work with exciting technology, help to implement new algorithms, and optimise for the latest Arm server hardware. Our work has high impact in the ML ecosystem, with possibility to engage with part...

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