Junior C++ Quantitative Developer - Energy Trading

Saragossa
City of London
1 month ago
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Want the chance to join a small front-office engineering team building tools traders rely on day to day?


This firm runs a full lifecycle risk and P&L platform and has a strong engineering culture within a lean setup. You’d be joining a team of five developers, a mix of junior and senior, with good support and exposure. The core system is C++ based, with an active push to modernise using Python on top of existing libraries.


The role is hands-on and very front-office facing. Most work comes directly from quants and traders, and can range from quick turnarounds to larger pieces of work running over several months. You’ll help build, enhance and support derivative analytics and internal tools, and you'll get to see your work used in production quickly.


Years of experience is open here as solid fundamentals in C++ matter most. Any front-end or React experience a nice bonus, but importantly, they’re looking for someone who enjoys working closely with end users, and wants to grow within a small front-office team.


If this is of interest, apply or get in touch directly at


No up-to-date CV required.

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