Senior Quantitative Developer – Systematic Rates Trading

Saragossa
City of London
1 day ago
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Want to work at a hedge fund that is expanding within systematic trading?


This is a high-impact role where you’ll collaborate closely with traders and portfolio managers to develop cutting-edge trading systems and execution strategies. The firm has been heavily investing in systematic trading, making this an exciting opportunity to be part of a growing and highly technical team.


In this role, you’ll be responsible for building and optimising trading systems for rates and fixed-income markets. You’ll work on implementing advanced mathematical models, pricing engines, and risk analytics to support trading strategies, ensuring they operate efficiently in real-world market conditions.


The ideal candidate will have strong C# and Python programming skills, along with a solid background in mathematical modeling, pricing, and risk analytics. Experience in rates trading, fixed income, bonds, or interest rate derivatives is not essential here.


This is a fantastic opportunity to work alongside top-tier quant and technology professionals in a dynamic and fast-paced environment.


If you’re interested in learning more, apply or reach out directly at


No up-to-date CV required.

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