Quantitative Developer

Elity Global
London
2 months ago
Applications closed

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Job Description

A leading boutique UK fund is looking for an accomplished Python engineer to join its expanding cross-asset trading team. This is a great chance to operate at the intersection of technology and quantitative research, building the core platforms that enable high-performance, systematic trading.


The Role

You’ll work closely with portfolio managers and quantitative researchers to develop and enhance the infrastructure that supports the trading lifecycle. This high-impact role suits an engineer with strong software engineering fundamentals and hands-on experience in systematic investment environments.


What You’ll Do

  • Design, build, and maintain resilient, scalable systems supporting systematic trading strategies
  • Collaborate with quantitative researchers to implement research tooling, workflows, and production pipelines
  • Refactor and optimize code to improve performance, reliability, and low-latency execution in Linux
  • Develop infrastructure for data ingestion, backtesting, research, and live trading operations
  • Support production stability through rapid debugging, troubleshooting, and incident resolution
  • Partner across teams to ensure technical delivery aligns with investment priorities


Who you are

  • Bachelor’...

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