Digital Markets Quantitative Researcher

Commerzbank AG
London
11 months ago
Applications closed

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A leading corporate banking and capital markets organisation is seeking a Digital Markets Quantitative Researcher to join their team in London.


Main Purpose of the Role:

Commerzbank has a programme of developing its cross-asset electronic pricing and trading capability which requires an investment into quantitative trading techniques.

Commerzbank is seeking to leverage its expertise in trading electronic FX into other asset classes. The role covers FX, Rates and Commodity flow products.


Key Activities and Competencies:

  • Improving electronic pricing, trading and risk-management of FX spot, FX swaps, Interest rate derivatives, Commodities and NDFs
  • Integration of Futures markets into the electronic trading landscape for pricing, trading and risk-management.
  • Collaboration with various stakeholder desks, including FX Spot, Forwards, NDFs, Commodities and Rates


Specialist Knowledge:

  • Previous experience as a quantitative trader/ developer in electronic financial market products
  • Experience of Java for development of latency sensitive trading systems
  • Use of python for analysis and scripting
  • Q/KDB+ is desirable
  • Experience of pricing interest rate derivatives and futures markets

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