Quantitative Trading and Research – Prime Financial Services – Vice President

JPMorgan Chase JPMorgan Chase · Banking · Singapore · Commercial & Investment Bank

Quantitative Trading and Research Vice President role at JPMorgan Chase focusing on developing and maintaining mathematical models, methodologies, and production infrastructure for Prime Financial Services. The role involves transforming, automating, and optimizing trading and risk/pricing workflows using data-driven analytics, systematic strategies, and portfolio optimization frameworks. It requires research-to-production delivery, strong software engineering skills in Python, and leveraging Generative AI models, with a focus on equities and financing products.

What you'd actually do

  1. Partner with PFS desks to build data-driven analytics that automate and optimize risk, inventory, and financing decisions.
  2. Research and develop systematic strategies (signals, hedging, execution logic) supporting inventory trading, risk hedging, and client analytics.
  3. Build portfolio optimization frameworks for prime inventory, financing books, and hedging overlays (including constraints, transaction costs, and risk limits).
  4. Devise solutions for systematic book management and improved stability/usage of collateral and inventory.
  5. Contribute to the full lifecycle: idea generation, research, prototype, production implementation, controls, monitoring, and performance attribution.

Skills

Required

  • Master’s degree in a quantitative discipline (Math, Stats, Physics, Engineering, Computer Science, or similar)
  • Minimum 5 years of relevant experience
  • Experience in quantitative modeling in equities or closely related asset classes
  • Strong understanding of statistics, financial mathematics, and optimization (linear/convex/conic optimization preferred)
  • Familiarity with PFS products (stock loan/borrow, cash financing, synthetic financing) and related market microstructure
  • Demonstrated ability to work with large, complex, high-dimensional data and deliver production-quality analytics
  • Strong software engineering skills with proficiency in Python
  • Capabilities in efficiently delivering solutions leveraging Generative AI models
  • Experience with research-to-production delivery, including testing, monitoring, and performance measurement
  • Ability to communicate complex quantitative concepts clearly to trading and senior stakeholders
  • Strong ownership mindset, drive, and ability to work in a front-office environment

Nice to have

  • Experience applying machine learning methods to trading, forecasting, or risk problems
  • Prior work on execution algorithms, transaction cost modeling, or alpha/risk signal research
  • Experience with portfolio construction under real-world constraints (limits, liquidity, costs, borrow/financing constraints)
  • Knowledge of kdb+/q is preferred (or willingness to learn quickly)
  • Knowledge of C++ is a plus

What the JD emphasized

  • Strong communication and ownership are critical
  • Strong software engineering skills with proficiency in Python and capabilities in efficiently delivering solutions leveraging Generative AI models.
  • Experience with research-to-production delivery, including testing, monitoring, and performance measurement.
  • Ability to communicate complex quantitative concepts clearly to trading and senior stakeholders.
  • Strong ownership mindset, drive, and ability to work in a front-office environment.

Other signals

  • quantitative modeling
  • production infrastructure
  • systematic trading
  • risk management
  • portfolio optimization
  • Generative AI models