Quantitative Analyst

RJC Group
London
5 days ago
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We are partnered with one of the world leaders in the generation of sustainable electricity, who are seeking a Senior Quant Analyst to join their Quant Engineering Department. The team are

responsible for researching and implementing both market and mathematical models,

increasing and maintaining existing libraries of risk management and valuation models, and providing support to the trading desks.


Requirements:


A minimum of five years experience in in an energy trading environment, or alternatively an energy trading desk within an investment bank.

Experience in managing large software projects, particularly in the areas of trading and pricing systems.

strong knowledge of option pricing theory e.g. Monte Carlo

Ability to code clearly in Python and C++


Benefits:

A competitive salary and bonus

Hybrid working structure

Benefits including: private medical insurance, a good pension plan, gym memberships etc

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