Central Risk Services | Quantitative Developer, Analytics (Basé à London)

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1 week ago
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Title:Quantitative Developer, Analytics
Business:Central Risk Services
Location:London
Citadel is focused on continuously advancing its technology platform to maintain and expand its competitive advantage. We are looking for engineers to contribute to a unified risk platform that spans businesses and asset classes, enabling greater flexibility and improving efficiency across the firm.
Roles and Responsibilities
  • Design and develop a world-class next-generation risk data platform.
  • Work on large-scale financial data problems, in a fast-paced, entrepreneurial, and highly collaborative team.
  • Use creative problem solving to build scalable, robust systems that work seamlessly across all asset classes.
  • Work in a team environment that closely integrates trading, quantitative research,and technology.
Qualifications
  • Expertise in quantitative software engineering solutions using Python and/or Java on systems of considerable scale and complexity.
  • Rich experience in the pricing & risk domain for both vanilla and OTC products, preferably with exposure to the European and Asia Pacific markets.
  • Exposure to real-time financial data management and analytics systems.
  • Demonstrated ability to collaborate effectively with quantitative researchers or traders to understand their needs and design and engineer scalable, robust solutions.
  • Strong implementation and debugging skills.
  • Bachelors in a technical or quantitative field such as Computer Science, Mathematics or Physics.
  • Masters preferred.

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