Quantitative Developer | Systematic Research

NJF Global Holdings Ltd
London
1 month ago
Applications closed

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Quantitative Developer | Systematic Research


A high-performing global quant fund is scaling itsResearch Engineering function— and we're looking for aQuantitative Developerwho's already familiar with the demands of a hedge fund or trading environment.


You'll be embedded directly in the research process, working shoulder-to-shoulder with quants and PMs, building and owning the infra that powers alpha generation.


What You’ll Actually Be Doing

  • Engineering research tools inPython and C++, built for scale and speed
  • Designing systems to handlemassive data ingestion, feature engineering, and backtesting
  • Collaborating directly with researchers to productionize models — fromlinear regressionstomachine learning pipelines
  • LeveragingHPC and distributed computeto run smarter, faster, and bigger
  • Driving technical strategy while still writing clean, high-impact code


What You’ll Need to Bring

  • 5+ years in asystematic trading or quant research environment
  • Fluency in Python and/or C++, with a strong engineering mindset
  • Hands-on withdistributed systems,data pipelines, orML tooling
  • Ability to partner with researchers without translation layers
  • Comfortable with ownership, ambiguity, and pace

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