Quantitative Researcher (Options)

Point One - Hedge Fund Talent
City of London
1 day ago
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A newly appointed Macro Options Portfolio Manager at a $30bn global hedge fund is building out their London-based team and is seeking a high-calibre Quantitative Researcher. This is a front-office role with direct impact on research, strategy development, and the evolution of the trading and research infrastructure.


The successful candidate will work closely with the PM, contributing across the full lifecycle of idea generation, modelling, implementation, and continuous improvement of systematic and discretionary macro options strategies.


Key Responsibilities

  • Design, develop, and maintain quantitative research frameworks supporting macro options trading strategies.
  • Build robust data pipelines, analytics, and research tooling using Python and modern data science libraries.
  • Develop models for pricing, risk, scenario analysis, and signal generation across options and macro asset classes.
  • Partner directly with the PM to challenge assumptions, refine ideas, and improve decision-making.
  • Take ownership of projects end-to-end, from concept through to production-ready implementation.
  • Continuously improve systems design, research infrastructure, and application performance.


Required Skill Set

  • Strong technical background in quantitative research, data science, or applied mathematics.
  • Excellent Python skills, with experience building research systems, libraries, or production-grade applications.
  • Solid understanding of systems design, scalable research environments, and clean code practices.
  • Experience working with large datasets, time series data, and statistical modelling.
  • Ability to translate research ideas into practical, usable tools for trading.


Desirable Experience

  • Prior exposure to options trading, derivatives, or volatility strategies.
  • Alternatively, a strong interest and motivation to work in trading, particularly macro and options.
  • Familiarity with market data, risk analytics, or execution considerations in a hedge fund environment.


For more information please contact:

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