Quantitative Researcher- Cross-Asset Relative Value

McGregor Boyall Associates
City of London
3 months ago
Applications closed

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Quantitative Researcher- Cross-Asset Relative Value

Location: New York or London
Industry: Hedge Funds
Travel: Hybrid

Overview:

A well-established buy-side investment platform is looking to add a Quantitative Researcher to a desk-facing environment supporting complex, multi-asset strategies with a strong credit bias.

The role is intentionally flexible on level and suited to someone who enjoys working close to investment decision-making - translating market intuition and trade ideas into robust, scalable quantitative frameworks. The emphasis is on practical research, not academic isolation.

Responsibilities:

  • Act as a quantitative partner to senior investment professionals, helping turn ideas into actionable analytics
  • Enhance and evolve internal research frameworks used to analyse relative value, risk, and pricing across complex instruments
  • Build reusable research components and libraries that support both discretionary and systematic approaches
  • Explore new datasets, methodologies, and signals to improve trade selection and portfolio construction
  • Stress-test ideas through structured analysis rather than one-off experiments
  • Improve the reliability, speed, and usability of existing research workflows
  • Contribute to longer-term projects...

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