Lead Embedded C++ Engineer - AI

Akkar
London
2 weeks ago
Applications closed

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Job Description

Our client, an advanced AI computing company, is seeking for a driven Lead Embedded C++ Developer to join their team!


Responsibilities:

  • Design and oversee the implementation critical Embedded components (drivers, compilers, APIs)
  • Support the development and maintenance of applications running on embedded Linux devices, ensuring seamless integration with other system components
  • Ensure performance efficiency, focusing on CPU and memory optimization
  • Implement and improve CI/CD pipelines


Requirements:

  • 5+ years of experience developing software in C++ and Python for embedded Linux applications
  • Track record of building applications from concept to deployment
  • Experience with machine learning and deep learning frameworks

...

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