Quantitative Developer

Selby Jennings
London
6 days ago
Create job alert
Finance Tech Team Builder | Bridging Aspirations with Opportunities in Tech

Join a world‑class team shaping the future of quantitative research and trading. Our client is seeking an academically exceptional Quantitative Developer to be part of their London build‑out. This is a unique opportunity to apply cutting‑edge engineering and quantitative skills in a highly collaborative environment. You'll work on delivering market data to trading systems, building integrated research and execution frameworks for high‑performance predictors, and designing advanced simulation platforms in a cloud‑native setting. Expect to partner closely with leading researchers, translating innovative ideas into production‑quality code that drives real‑world impact.


Responsibilities

  • Design, develop, and maintain core components of the trading system
  • Champion best practices in software engineering across the team
  • Build robust testing frameworks for all trading components
  • Develop automated, fault‑tolerant monitoring and tracking systems
  • Collaborate with researchers to create integrated research and execution frameworks for predictive models

Requirements

  • Proven experience as a Research Engineer, Software Engineer, or Quantitative Developer
  • Strong programming expertise in Python and/or C++
  • Exceptional academic credentials from a top‑tier university, with notable achievements such as Dean's List or equivalent honors

Seniority level

  • Entry level

Employment type

  • Full‑time

Location

London, England, United Kingdom


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