Quantitative Trading & Research - Mid-frequency Trading Strategies - Vice President / Executive Director

JPMorgan Chase JPMorgan Chase · Banking · LONDON, LONDON, United Kingdom · Commercial & Investment Bank

Quantitative research role focused on developing and implementing mid-frequency trading strategies using advanced statistical modeling and machine learning techniques. The role involves the full lifecycle from ideation and research to production deployment and performance monitoring, with a strong emphasis on extracting predictive signals from complex financial datasets.

What you'd actually do

  1. Improve the mid-frequency trading framework, including the architecture for signal generation, alpha combination, portfolio optimization, and execution logic, ensuring the platform is robust, scalable, and production-ready.
  2. Research and develop proprietary trading strategies using advanced statistical modelling and machine learning techniques, with a focus on identifying persistent, risk-adjusted alpha signals across relevant asset classes.
  3. Apply machine learning methodologies — including supervised and unsupervised learning, reinforcement learning, and time-series modelling — to extract predictive signals from large, complex datasets including market microstructure, alternative data, and macroeconomic indicators.
  4. Own the end-to-end research process, from hypothesis generation and backtesting through to live deployment, with rigorous statistical validation to guard against overfitting and data snooping biases.
  5. Develop and maintain production-grade implementations of trading strategies and supporting infrastructure, working with technology partners to integrate models into the live trading environment.

Skills

Required

  • Master's degree in a quantitative STEM discipline
  • Proven experience in quantitative trading, quantitative research, or systematic strategy development
  • Demonstrable expertise in statistical modelling
  • Strong machine learning proficiency
  • Strong Python programming skills
  • Strong analytical and problem-solving skills

Nice to have

  • PhD in quantitative STEM discipline
  • Proven experience in a proprietary trading environment
  • Proven track record in alpha research
  • Strong command of machine learning techniques applied to financial prediction problems
  • Experienced in researching and developing mid-to-high frequency systematic strategies
  • Experience with cloud-based data and compute infrastructure, particularly AWS

What the JD emphasized

  • statistical analysis and machine learning at the core
  • research directly drives live trading decisions
  • full lifecycle of strategy development
  • statistical modelling and machine learning techniques
  • Apply machine learning methodologies
  • end-to-end research process
  • rigorous statistical validation
  • production-grade implementations
  • critical assess model reliability
  • manage overfitting risk
  • distinguish statistically significant signals from noise

Other signals

  • statistical analysis and machine learning at the core
  • research directly drives live trading decisions
  • full lifecycle of strategy development — from ideation and statistical research through production deployment
  • apply machine learning methodologies — including supervised and unsupervised learning, reinforcement learning, and time-series modelling