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Quantitative Developer

Harrington Starr
City of London
1 week ago
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Junior Quantitative Developer – Prague, Czech Republic - 1 year working with team in Prague, then option to work remotely afterwards.

1–3 years’ experience | Competitive Compensation | Relocation Support Available


Join a leading systematic trading firm with a strong presence in equities and futures. We’re looking for a Junior Quantitative Developer with a solid software engineering foundation and a growing interest in quantitative trading. This role is ideal for someone who’s moved from development into quant dev work — combining strong coding skills with curiosity about systematic strategies.


The Role

You’ll build and optimise back-testing tooling, research infrastructure, and algorithmic trading systems that support the firm’s systematic traders. While your focus will be on engineering — including APIs, automation, and data pipelines — you’ll also gain occasional exposure to strategy development and signal testing.


Key Responsibilities

  • Design, build, and maintain back-testing frameworks and research tools
  • Develop APIs and automation systems to streamline research and execution
  • Collaborate with quants and traders to test and deploy new ideas
  • Build and maintain robust, scalable codebases for live and simulated trading
  • Contribute to continuous improvement across data quality, performance, and reliability


Requirements

  • 1–3 years’ professional software development experience (Python preferred)
  • Experience building or maintaining back-testing systems, APIs, or data tools
  • Strong understanding of algorithms, data structures, and performance optimisation
  • Analytical mindset with interest in systematic trading and quantitative research


Nice to Have

  • Exposure to trading systems, market data, or algo/bot development
  • Familiarity with numerical libraries (NumPy, Pandas, Numba, etc.)
  • Understanding of version control, CI/CD, or distributed computing

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