Ai Software Engineer

IC Resources
1 week ago
Applications closed

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£90,000+ Stock options & UK remote working!


I'm currently partnered with a Semiconductor start-up, based in Silicon Valley. They are working on re-imagining Silicon, creating RISCV based computing platforms aimed at transforming the industry. As an Ai Software Engineer you will be responsible for building components of an Ai software stack, profiling and tuning of Ai applications, and porting Ai software to run on a new hardware platform. You will also work on the infrastructure to validate Ai models and you'll implement math operators for Ai.


They are looking for a passionate and dedicated person and in return, you'll get the opportunity to work in a fun, flexible collaborative working environment. Their team in the UK is currently small, but growing rapidly, therefore you have the chance to be part of a disruptive and talented group of exceptional people.


What's required for this Ai Software Engineer position?


  • Strong C++ development skills
  • Experience with parallel programming - CUDA, OpenCL or SYCL
  • Strong understanding of computer architecture. GPU/CPU
  • Experience with TensorFlow, JAX, NumPy or PyTorch


If you are an Ai Software Engineer looking for a new opportunity within a rapidly growing, disruptive start up, please apply to learn more!


If you are interested in this, or other opportunities across the UK, please contact Jack Bird at IC Resources.

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