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Quantitative Developer C++/ Python - London- World-Leading Hedge Fund

Oxford Knight
London
1 day ago
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World-leading hedge fund looking for experienced Python and C++ Quant Developers to join their new systematic arm in London.

Exciting opportunity to join an elite team working to build out and enhance their cutting-edge quantitative trading platform. You will work directly alongside senior PMs, quants and engineers gaining invaluable knowledge and experience across all major financial markets.

Requirements:

  • 3+ years professional experience with modern Python or C++ (C++ 17 or later preferred)
  • Bachelor's in Mathematics, Computer Science or other quantitative field
  • Deep-level knowledge of development on Linux
  • Knowledge of SQL
  • Experience developing back-testing, simulation, and trading systems is a plus
  • Finance industry experience preferred


Rewards and Incentives

  • Market-leading salary + lucrative bonus
  • Opportunities to learn and develop new skills in a truly collaborative environment that thrives on innovation
  • Emphasis on work/life balance



Whilst we carefully review all applications, to all jobs, due to the high volume of applications we receive it is not possible to respond to those who have not been successful.

Contact
If you feel you are a strong match for this role, please do not hesitate to get in touch:

Dominic Copsey

+44 (0) 203 475 7193
linkedin.com/in/dom-copsey-586478143/

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