Quantitative Developer - C++

Stanford Black Limited
London
3 months ago
Applications closed

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Quantitative developer

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Job Description

Senior C++ Engineer – Core Trading Technology (Quantitative Trading)


Stanford Black is partnering with an elite quantitative trading house seeking a Senior C++ Engineer to join the team building the mission-critical infrastructure underpinning their global trading, pricing, and risk platforms. This is a high-impact role at the intersection of ultra-low-latency engineering and quantitative finance, working shoulder-to-shoulder with quants, traders, and risk teams to deliver systems that operate at exceptional scale and performance.


Role

  • Architect and evolve high-throughput, low-latency services running across Linux-based distributed environments.
  • Embed and optimise complex pricing models within the firm’s core compute and risk frameworks.
  • Build and enhance services across order management, trade/position systems, product reference data, and real-time market data pipelines.
  • Work collaboratively with quantitative researchers, quant developers, and front-office stakeholders to deliver next-generation trading capabilities.
  • Develop primarily in modern C++ with supporting components in Python, contributing to both greenfield builds and optimisation of performance-critical workflows.


Requirements

  • 4+ years in a front- or middle-office engineering environment.
  • Deep expertise in advanced C...

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