Quantitative Researcher - Systematic Equities - Global

Marlin Selection
London
4 days ago
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We are supporting a leading global investment platform in hiring a highly skilled Quantitative Researcher.

This role will focus on building and enhancing a market-microstructure-driven research framework for the systematic trading of global equity strategies. The ideal candidate will combine strong statistical and programming expertise with experience handling large financial datasets in a fast-paced, research-driven trading environment.

Location: UAE, London, Zug, NYC, HK, Shanghai


Key Responsibilities

Strategy Research & Development

  • Collaborate closely with the Senior Portfolio Manager to design and refine systematic global equities strategies.
  • Contribute to idea generation, hypothesis testing, and alpha research.
  • Conduct end-to-end research including data gathering, cleaning, feature creation, modeling, and backtesting.

Data Engineering & Market Microstructure Research

  • Work hands-on with multiple exchange data sets, ensuring high-quality data pipelines through assessing, cleaning, and building features.
  • Analyze large, complex datasets using advanced statistical learning technique...

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