Quantitative Developer - eFX (Java)

Selby Jennings
City of London
2 months ago
Applications closed

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Quantitative Developer

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Senior Quantitative Developer

Senior Quantitative Developer

Senior Quantitative Developer

Quantitative Developer - Systematic Trading - £300k+

A highly technical and innovative quantitative development group focused on driving automation in FX trading.

Part of a wider electronic trading technology function that also supports areas such as rates, credit, FX derivatives, equity derivatives, and cash equities. Committed to enhancing automation and performance to strengthen electronic trading capabilities and revenue generation. Works in an agile environment with frequent production releases, often multiple times per day. Known for its collaborative and diverse culture, with a clear mission to deliver impactful and meaningful change.

Required Expertise:

  • In-depth business knowledge of electronic trading systems, with a strong focus on eFX.
  • Demonstrated experience in designing and implementing low-latency, high-throughput, event-driven platforms for algorithmic trading.
  • Ability to collaborate closely with quantitative analysts to develop and integrate algorithmic trading models and associated controls.
  • Skilled in producing comprehensive model documentation and working with governance and risk oversight teams.
  • Advanced proficiency in Java, including techniques for low-latency development such as lock‑free data structures and minimising garbage collection.
  • Familiarity with messaging libraries and protocols such as Aeron, Kafka, EMS, SBE, FIX, ITCH, and OUCH.

Seniority level: Entry level

Employment type: Full-time

Industry: Banking

London, England, United Kingdom

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