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Quantitative Developer

Europython
London
1 week ago
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Our Quantitative Developers are the enablers of our success. They work side-by-side with our researchers to realise their ideas in global financial markets. They work at the bleeding-edge with immense compute power at their fingertips to achieve our aim: predicting the future. The core tech stack is C# and Python, productionised in our own datacentres.

Areas of focus
  • Trading systems – reliable and performant systems able to trade 24/6 for our customers, with real money at stake
  • Modelling – building core capabilities and assisting quant researchers in our cutting edge prediction capabilities
  • Simulation – back-testing frameworks for validating the strategies our researchers produce and for assessing their ongoing performance
  • Research tooling – front-end UX and workflow for our quant researchers
  • Performance and scalability – optimising our trading and research systems to unlock new capabilities


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