Data Scientist - Hedge Fund (New-Launch)

Radley James
Slough
1 day ago
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Data Scientist – Hedge Fund (New launch long/short equity)


A newly launched long/short hedge fund specialising in the global Industrials sector is seeking a Data Scientist to help shape its data-driven investment strategy. The firm combines fundamental research with advanced data science, building scalable infrastructure where insights directly influence portfolio performance.


The Role

The Data Scientist will originate and analyse novel datasets, build predictive models, and deliver insights that drive investment decisions. The position involves working closely with investors and engineers to forecast key company KPIs, design real-time dashboards, and develop best-in-class data infrastructure.


Key Requirements

  • Strong Python (pandas, NumPy, scikit-learn; PyTorch/TensorFlow a plus) and SQL skills
  • Experience applying advanced analytics or ML to real-world data (finance, fintech, or forecasting contexts ideal)
  • Proficiency with BI tools (Tableau or similar)
  • 2–6 years’ relevant experience and a strong quantitative background
  • Ability to source and structure new datasets and collaborate across disciplines


Opportunity

This role offers the chance to make an immediate impact on investment decisions, collaborate with an experienced investment and technology team, and push the boundaries of data-driven investing. As the firm grows, the Data Scientist will have the opportunity to shape and expand its data science capability.

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