Senior Software Engineer

Corriculo Ltd
London
1 year ago
Applications closed

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Senior Software Developer, Rust, C/C++, Linux Drivers, London, COR7145

Are you an experienced software developer with expertise in Linux driver development and a passion for AI innovation? This could be the perfect role for you!

The Role
As a Senior Software Developer, you will be instrumental in developing the Linux runtime system and firmware for our clients' hardware. Working in a collaborative environment marrying hardware and software, you’ll contribute to pioneering technology that pushes the boundaries of AI performance by developing Linux runtime software and implementing highly optimized firmware.

The Company
Our client is a leader in AI innovation, working with cutting-edge hardware and software solutions to progress the world of large language models. With a dynamic, supportive culture, this company provides an environment where creativity thrives and employees can make a real impact. The role is based from their London site.

What’s Required?
The ideal candidate for the role will have the following:

  1. Strong skills in Rust, C/C++, and familiarity with industry-standard development tools and technologies.
  2. A solid understanding of computer architecture and performance optimization techniques.
  3. Prior experience working with GPUs, and knowledge of machine learning technologies is also a plus.

Ready to take the next step in your career and join a team shaping the AI revolution? Apply now and help push the boundaries of innovation!

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