Experienced Crypto Quantitative Developer

NJF Global Holdings Ltd
City of London
2 weeks ago
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My client is a global, technology-driven quantitative investment manager operating across liquid asset classes worldwide. They apply a rigorous scientific approach to investing and foster a highly collaborative environment where engineers, traders, and researchers work side by side to solve complex problems.


They are looking for an experienced C++ developer (3+ years) to join a high-performance crypto trading team and work directly with traders and quantitative researchers.


What you’ll be doing

  • Build and optimise high-frequency, low-latency crypto trading systems
  • Design and implement alpha generation and trading algorithms
  • Implement exchange-specific market rules across major crypto venues
  • Partner closely with traders and quants to develop research platforms and tooling


What they’re looking for

  • Degree in Computer Science or equivalent experience
  • Strong C++20/23 development skills on Linux
  • Passion for performance, reliability, and clean system design
  • Experience or interest in HPC and cloud-based environments
  • Good Python skills
  • Strong communication skills in a fast-paced, international team

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