PhD/Post-Doctoral Researcher ML Quantitative Researcher

Anson Mccade
City of London
3 months ago
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PhD/Post-Doctoral Researcher ML Quantitative Researcher
£350000 GBP
Discretionary Bonus
Onsite WORKING
Location: Offices also in NYC/Miami/Chicago , Central London, Greater London - United Kingdom Type: Permanent

PhD/Postdoc ML Quantitative Researcher

Role Overview:

My client is a leading global market-maker who are searching for exceptional ML Quantitative Researchers to join high-impact teams focused on systematic trading, predictive modelling, and machine learning research. These roles offer the opportunity to work in fast-paced, collaborative environments where research is directly connected to live PnL.

Teams vary in focus - from FX-driven research groups to multi-asset portfolio construction and optimization, but all are looking for individuals with Post-Doctoral Research, technical depth, and a passion for markets.

Key Responsibilities as a Quant Researcher:

  • Conduct statistical and machine learning research on large, high-dimensional datasets (including alternative data)
  • Develop and improve predictive models, trading signals, and systematic strategies
  • Backtest and deploy models in live trading environments
  • Contribute to portfolio optimization and risk modeling
  • Collaborate with engineers and traders to refine models and drive performance...

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