Principal Software Engineer

IC Resources
Cambridge
2 months ago
Applications closed

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Principal Compute Software Engineer – AI Edge

Location:Remote in UK
Job Type:Full-time

About the Company:
A leading organisation in AI infrastructure is developing cutting-edge compute software to enhance AI and machine learning applications. The team specialises in high-performance solutions that optimise AI workloads on next-generation hardware.

The Role:
The company seeks aPrincipal Compute Software Engineer – AI Edgeto drive compute software architecture and optimisation. This role involves mapping compute applications to hardware, enhancing performance, and collaborating with internal teams and customers to shape the AI/ML roadmap.

Key Responsibilities:

  • Develop software architecture for AI/ML workloads on high-performance hardware.
  • Optimise compute performance and prototype new features.
  • Define the compute software roadmap in collaboration with product owners.
  • Work closely with internal teams and customers to address technical challenges.
  • Lead the development of AI/ML capabilities for next-generation GPUs.
  • Contribute to industry-wide standards, APIs, and frameworks.

What the Company is Looking For:

  • 5+ years of experience in compute-intensive software development.
  • Expertise in microprocessor development tools, compilers, and debuggers.
  • Strong knowledge of GPU/accelerator software architecture.
  • Experience optimising AI/ML applications for hardware accelerators.
  • Understanding of system-level software and hardware interfaces.
  • Strong problem-solving and stakeholder collaboration skills.


Preferred Qualifications:

  • Experience with AI/ML frameworks and hardware optimisation.
  • Understanding of GPU compute architecture and AI/ML workflows.
  • Familiarity with automotive and embedded AI applications.
  • Public speaking experience and engagement with open-source communities.

Why Join?

  • Work on groundbreaking AI and compute software.
  • Shape the future of AI acceleration.
  • Competitive salary, benefits, and flexible work options.

If you're looking for a challenging role in AI compute software, apply today!

For more details on this and other software opportunities in the UK, US, and EU, contact Mitch Wheaton at IC Resources

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