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C# Quantitative Developer (Junior and Senior) - Global Hedge Fund - C# & Python: £80-150k

Hunter Bond
London
2 days ago
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As a C# skilled Quant Developer, you'll work closely with portfolio managers, researchers, and data scientists to build and maintain the systems that drive our alpha-generating strategies. You’ll contribute to every part of the investment pipeline—from research tooling and data infrastructure to real-time trading systems.


Key Responsibilities:

  • Design, develop, and optimize high-performance trading tools and data pipelines using C# and ideally Python
  • Build research platforms that empower quantitative analysts and strategists
  • Integrate and manage large, complex datasets from a variety of sources
  • Collaborate with quants and PMs to implement and backtest trading models
  • Ensure robustness and scalability in both real-time and batch environments


What We’re Looking For:

  • Strong programming experience with C#
  • Solid understanding of software engineering principles, design patterns, and performance tuning
  • Experience in financial markets (equities, futures, FX, etc.) is a plus, but not required
  • Familiarity with data science tools, APIs, and time-series databases is beneficial
  • Self-starter attitude with a sharp eye for detail and a high level of ownership


Why Join?

  • Competitive compensation + performance bonuses
  • Direct impact on trading and research performance
  • Flat, collaborative culture with exposure to senior stakeholders
  • State-of-the-art technology stack and hardware
  • Opportunity to work on greenfield projects in a fast-moving environment

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