Quantitative Developer - Major Trading Firm

Capital Markets Recruitment
London
1 week ago
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Our client, a Leading Trading Firm, is looking to hire a skilled Quantitative Developer/Python Engineer to collaborate directly with a highly successful global trading team.


This role gives you the opportunity to join one of the world's most successful hedge funds, collaborate with an exceptionally talented team operating in a hybrid approach, and earn market-leading compensation packages.


Responsibilities

  • Develop, upgrade, and optimize real‑time trading platform
  • Work closely with experienced Traders and help build out systematic equities and futures trading strategies
  • Build analytical tools to help manage portfolio risk, pre/post trading analysis and performance attribution
  • Help on-board new instruments and backtest existing ideas on new instruments
  • Monitor system health and implement tools and techniques to enhance trading activity

Qualifications

  • 3+ years of hands‑on coding experience building real‑time trading systems
  • Strong Python experience. Machine Learning libraries experience is a plus
  • Background in systematic equities or futures is beneficial
  • C++ background is advantageous.
  • Experience building production infrastructure for signal generation, backtesting and execution
  • Bachelors/Masters in Computer Science, Engineering, or related Quantitative discipline

To discuss the role in confidence, please reach out to Rhys at


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