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Quantitative Developer

BGC Group
London
23 hours ago
Applications closed

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Job Description

Role Summary

BGC Group are seeking a detail-oriented and disciplined developer to join our Pre-Trade Technology team. This role focuses on extending and enhancing our internal pricing library to support additional price types and calculations for bonds. The ideal candidate will have strong quantitative and programming skills, with a commitment to accuracy and rigorous testing.

This is a highly specialised role suited to someone who thrives on precision and consistency. You will work closely with quantitative analysts and developers to implement robust, production-grade solutions that meet strict business and regulatory standards.


With teams in London, New York, Singapore and Sydney, the teams work closely and iteratively with desks all over the world to provide innovative, revenue-facilitating pricing and related analytics applications. Increasingly the team is also delivering analytics services for strategic electronic trading platforms and for the Market Data group, FENICS.



Key Responsibilities


  • Development and integration of new “calc types”.
  • Extend the in-house bond pricing library to support new calculation types (e.g., price-to-yield, DV01, accrued interest).
  • Implement and validate quantitative models for fixed income instruments.
  • Ensure rigorous unit an...

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