Software Engineer - C++, London

OHO Group Ltd.
London
2 months ago
Applications closed

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C++ Developer - AI Start-Up - (ex Google, Facebook, Microsoft)
A highly impressive London-based AI start-up is looking for a talented C++ Developer to join their team. If you're looking to work on solving interesting problems with industry leaders and field experts from top tech companies like Google, Facebook, and Microsoft then this could be the role for you!
As a C++ Developer, you'll be instrumental in scaling systems, optimising performance, deploying machine learning models, and improving observability tools. This role provides an exciting opportunity to collaborate with top-tier engineers tackling complex challenges and real world problems.
C++ Developer - Essentials

  • Strong academic background in Computer Science, Mathematics, or related fields
  • 3+ years of C++ experience in a production environment
  • Expertise in performance optimisation and profiling tools (e.g., gdb, Valgrind)

C++ Developer - Desirable

  • Experience with edge computing or IoT
  • Familiarity with video processing and streaming
  • Exposure to infrastructure tools (e.g., Docker, CI/CD) or ML model deployment

C++ Developer - Benefits

  • Competitive salary
  • Substantial equity in an early-stage start-up
  • Comprehensive dental insurance
  • Collaborative, high-caliber team

If you're a passionate C++ Developer excited to shape the future of AI, apply now for immediate consideration!

Note: This role is fully on-site and cannot offer sponsorship.
C++ Developer - AI Start-Up - (ex Google, Facebook, Microsoft)#J-18808-Ljbffr

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