Quantitative Trading & Research - Alpha Quant - Vice President

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Commercial & Investment Bank

Quantitative researcher for an Equity Derivatives team, focusing on end-to-end alpha research and strategy deployment. Responsibilities include feature engineering, building calibration/attribution/monitoring frameworks, and implementing systematic strategies using data analytics, statistical modeling, and machine learning. The role also involves leveraging AI/ML tooling to accelerate research and improve productivity.

What you'd actually do

  1. Work closely with trading to build end-to-end design and implementation of daily and intraday signal research and deployment infrastructure, with special focus on equity derivatives / Systematic derivatives.
  2. Contribute from idea generation to production implementation: perform research, design prototypes, implement alpha signals and systematic strategies; support daily usage, monitor performance, and iterate based on live feedback.
  3. Research and model equity options and volatility dynamics (e.g., surface arbitrage, term structure, skew, dispersion, event risk, RV) and translate insights into deployable systematic strategies.
  4. Develop and maintain robust backtesting, attribution, and regime analysis frameworks tailored to derivatives PnL drivers.
  5. Build models that integrate fundamental, quantitative, and microstructure features to support risk internalization and/or risk warehousing, using statistics, machine learning, or heuristics as appropriate.

Skills

Required

  • strong quantitative background
  • practical problem-solving skills
  • direct working knowledge of signal research with market data and other financial data
  • alpha capture
  • risk warehousing
  • proficiency in code design and programming skills
  • Python
  • KDB
  • C++
  • Java
  • practical data analytics skills on real data sets
  • handle and analyze complex, large scale, high-dimensionality data
  • quickly grasp business concepts outside immediate area of expertise
  • adapt to rapidly changing business needs
  • think strategically and creatively
  • excellent communication skills

Nice to have

  • Strong graduate degree (MS or PhD) in a quantitative field (Computer Science, Financial Engineering, Mathematics, Physics, Statistics, Economics, …)
  • Strong expertise in statistics and machine learning in financial industry
  • Robust testing and verification practice
  • Direct experience with electronic trading
  • knowledge of trading algorithms
  • 3 to 5 years’ experience in finance: market making, electronic trading, trading strategies (high to low frequency: market making, statistical arbitrage, option trading…), or derivatives pricing and risk management
  • Knowledge of equity derivatives and volatility products
  • experience leveraging AI for research and engineering workflows
  • familiarity with productionizing AI (repeatable pipelines, evaluation/monitoring, model risk awareness)
  • using AI agents professionally

What the JD emphasized

  • end-to-end alpha research
  • equity derivatives
  • Systematic derivatives
  • signal research
  • alpha capture
  • risk warehousing
  • Python, KDB, C++ or Java in a commercial environment
  • practical data analytics skills on real data sets
  • AI/ML and modern AI tooling
  • productionizing AI

Other signals

  • applying advanced data analytics, statistical modeling, and machine learning
  • end-to-end alpha research and strategy deployment
  • feature engineering from diverse data sources
  • building robust alpha calibration, attribution, and monitoring frameworks
  • implementing systematic strategies