Quantitative Developer - C# and React | Systematic Trading

NJF Global Holdings Ltd
Slough
1 day ago
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A Top-tier London quant fund is hiring a Quantitative Developer to build its reporting and analytics platform that delivers real-time trading insights to hundreds of researchers across all their asset classes.


If you've already been writing production code in a systematic trading environment, you know what this means: resilient tools that quants and traders depend on to understand PnL, monitor strategies, and make decisions fast.


This is your chance to move from feature work to owning the analytics infrastructure that shapes how an entire research organization sees its performance.


What You'll Own:


  • Production reporting tools in C# and React used across all desks
  • Analytical dashboards that turn performance data into trading insights
  • The platform roadmap - you decide what gets built next
  • End-to-end ownership from design through deployment
  • Engineering standards that let the firm scale fast


What You Bring:


Experience

  • 3+ years building production software
  • Background in quantitative finance or trading environments preferred


Technical Skills

  • C# and Python
  • React
  • SQL

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