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Quantitative Analyst - C++ and Linear Rates

JM Group
London
1 year ago
Applications closed

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Financial Services Firm is hiring for a Quantitative Analyst with strong Linear Rates experience, C++ and SABR/curve construction experience. This is a permanent role based in the City. Salary range is between £90K - £K + Bonus and Benefits, depending on skills and experience.

Experience includes:

- Strong Linear Rates expertise
- Experienced in C++
- Strong Model Validation background
- Curve building and calibration, SABR, volatility modelling.
- Previous FO Strat/Quant Analyst experience

You will ideally hold a relevant degree in a numerate subject such as Mathematics, Financial Mathematics, Physics, Engineering with at least 5-8 years experience as a C++ and Rates Quantitative Analyst. Strong mathematical skills required for this role.

Please apply for immediate interview!

The JM Longbridge Group is operating and advertising as an Employment Agency for permanent positions and as an Employment Business for interim/contract/temporary positions. The JM Longbridge Group is an Equal Opportunities employer and we encourage applicants from all backgrounds.

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