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Quantitative Developer - Selby Jennings

Selby Jennings
London
6 days ago
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Our client is a globally recognised multi-strat quant fund looking for a Quant Developer to join their PM Solutions team. You'll work closely with PMs and QRs across multiple pods to understand their workflow, identify bottlenecks, and build scalable solutions that enhance research productivity and trading performance.

You'll be responsible for designing and maintaining core quant infrastructure, including backtesting frameworks, signal pipelines, data access layers, and execution tooling.



Key Responsibilities

  • Build and maintain research and production infrastructure used across pods
  • Develop reusable components for signal generation, backtesting, and execution
  • Partner with PMs and QRs to understand their needs and deliver tailored solutions
  • Optimise performance, scalability, and reliability of quant tooling
  • Contribute to shared libraries, frameworks, and best practices across the firm



Candidate Requirements

  • Strong programming skills in Python (required); C++ or other languages a plus
  • Experience building quant research infrastructure or trading systems
  • Familiarity with time series data, financial modelling, and performance analysis
  • Ability to work closely with front-office stakeholders in a fast-paced environment
  • Degree in Computer Science, Engineering, Mathematics, or related field

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