Quantitative Trading & Research - Spg - Vice President

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

Quantitative trading and research role focused on RMBS and structured products, developing and maintaining models. The role involves applying machine learning and generative AI to credit modeling, data processing, model calibration, performance monitoring, and delivering analytics. Responsibilities include developing financial models, conducting back-testing, performing ML analysis on large datasets, building data analysis platforms, and collaborating with stakeholders.

What you'd actually do

  1. Develop and support advanced financial models for RMBS, enabling business portfolio management, trading, hedging, and risk assessment.
  2. Conduct model back-testing, performance tracking, and provide business insights to inform portfolio management and trading strategies.
  3. Perform large-scale data queries, processing, and machine learning (ML) analysis for RMBS prepayment and credit modeling using high-quality calibration data.
  4. Build and optimize robust platforms for large-scale data analysis to support various modeling initiatives.
  5. Develop new models and analytical tools, and implement them within our advanced, high-performing mortgage loan/bond pricing and analytics framework.

Skills

Required

  • Master’s or PhD degree in a quantitative field
  • Advanced modeling skills in developing machine learning (ML), statistical, or econometric models
  • Strong programming skills in Python
  • Proficiency in statistical Python packages such as NumPy, Pandas, and stats packages (StatsModels, scikit-learn, SciPy, etc.)

Nice to have

  • C++ is a plus
  • Experience working with large-scale databases (e.g., PostgreSQL, Redshift) for machine learning analysis and modeling
  • Experience in data analysis focused on mortgage and loan performance datasets, specifically analyzing prepayment and credit historical data at the loan or facility level

What the JD emphasized

  • applying machine learning and generative AI across the model development lifecycle
  • develop new models and analytical tools
  • perform large-scale data queries, processing, and machine learning (ML) analysis

Other signals

  • applying machine learning and generative AI across the model development lifecycle
  • develop new models and analytical tools
  • perform large-scale data queries, processing, and machine learning (ML) analysis