Quantitative Developer - Cash Equities

Algo Capital Group
London
2 days ago
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Quantitative Developer - Cash Equities

A leading global hedge fund is seeking a Quantitative Developer to join its high-performing Cash Equities team. The role involves developing and implementing quantitative trading strategies with a focus on cash equity markets. You will work closely with Portfolio Managers and quantitative traders, leveraging advanced algorithms, statistical models, and market data analysis to build and refine strategies deployed in production environments.


Key Responsibilities:

  • Develop and implement quantitative models and algorithms that drive trading decisions in cash equities.
  • Optimise strategy performance through innovative model development.
  • Partner with traders to analyse market dynamics, interpret valuations, and design next-generation models and analytics tailored to cash equity markets.
  • Contribute to the high-level architecture and optimisation of C++ and Python-based models used in various equity strategies.
  • Work closely with research teams to continuously enhance trading models and translate complex algorithms into efficient, production-ready code.


Skillset Requirements:

  • Proven experience in a quantitative development or software engineering role within a cash equities trading environment.
  • Expertise in applying advanced quantitative techniques to solve complex, data-driven problems.
  • Strong programming proficiency in C++ and/or Python, with a focus on high-performance, scalable systems.
  • Bachelor's or Master's degree in Computer Science, Engineering, Mathematics, or a related field.


This is a unique opportunity to make an impact in a leading hedge fund's Cash Equities team, working alongside industry-leading professionals in a fast-paced environment. If you're a talented Quant Developer with experience in cash equities and a passion for financial markets, apply now to further your career in one of the industry’s most exciting roles.

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