Senior Quantitative Researcher

Stanford Black Limited
London
2 months ago
Applications closed

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Commodities Quantitative Researcher –Billion Dollar Macro Fund

Up to £500,000 Total Compensation


A billion-dollar Macro fund is looking to build out a brand-new Commodities desk to focus on the European gas and power markets.


They're looking to hire an experinced Quant to lead the design and development of new pricing and risk models across European gas and power, shaping the analytical foundation behind a multi-billion-dollar portfolio. This includes modelling physical assets and structured deals, upgrading P&L attribution and risk tools, and delivering scalable analytics that strengthen both trading and portfolio construction. You’d also work directly with technology teams to bring research into production across global energy markets.


Brief Responsibilities Include:

  • Develop and enhance risk and pricing models for European gas, power, and commodity derivatives.
  • Improve P&L attribution, stress testing, and portfolio construction tools.
  • Collaborate with tech teams to productionise research and automate analytics.
  • Support onboarding of new products and portfolios.


Qualifications:

  • 8+ years in commodities quant or risk roles, ideally in physical energy trading.
  • Strong expertise in European gas and power, including physical assets and structured deals.
  • Advanced Python skills.
  • Quantitative academic background (Maths, Physics, Engineering, Statistics, Economics, or Finance).
  • Collaborative, strong problem-solver, clear communicator.


Please contact for more information.


If this role isn't right for you, but you know of someone who might be interested, we have a market-leading referral scheme in place to thank anyone who refers a friend who is successfully placed! T&Cs apply.

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