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Quantitative Developer/ Analyst - Equities Algorithmic Trading

McGregor Boyall
London
1 day ago
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A leading global electronic trading organisation is seeking a Quantitative Developer to join its equities algorithmic trading and research group. This team designs, evaluates and enhances models that directly influence how execution strategies behave across global markets.

This role suits someone who enjoys combining quant research, model development, and hands-on coding, with responsibilities spanning performance analysis, model refinement, and implementation of strategy logic.

What you'll be working on

  • Designing, enhancing and validating models used within execution algorithms

  • Analysing equities market microstructure and client trading outcomes

  • Determining whether customer performance is good or poor and why

  • Implementing logic changes within a Java-based algorithmic framework

  • Conducting Python-based research, prototyping, and backtesting

  • Collaborating closely with global quant and engineering teams (including Asia)

  • Explaining model behaviour and insights to internal stakeholders and clients

What we're looking for

  • 3-5+ years in a relevant quant developer / algo quant role

  • Strong proficiency in Java (business logic, concurrency...

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