Quant Modeling Lead - Python

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

Quantitative software engineer to build and maintain a strategic platform for Loan Loss Forecasting models within a financial services firm. The role involves designing and implementing core frameworks and libraries, developing calculation engines, and ensuring high performance and reliability for regulatory and business processes.

What you'd actually do

  1. Design, build, and maintain the core Python frameworks and libraries that power Nova, ensuring they are performant, extensible, and easy for model developers to integrate with
  2. Develop and enhance the calculation engine and related tooling for loan loss forecasting models, supporting CECL, IFRS 9, CCAR, ICAAP, and Risk Appetite requirements
  3. Implement high-performance numerical algorithms using Python scientific computing libraries including NumPy, Pandas, and DuckDB
  4. Champion test-driven development practices across the team, building and maintaining comprehensive unit, integration, and regression test suites to ensure framework reliability
  5. Take partially specified problems and business needs from stakeholders and translate them into concrete technical requirements, designs, and implementation plans

Skills

Required

  • Python
  • Object-oriented design
  • Design patterns
  • Production-grade frameworks and libraries
  • NumPy
  • Pandas
  • Test-driven development
  • Unit testing
  • Integration testing
  • Regression testing
  • Quantitative software development
  • Financial services environment
  • Analytical skills
  • Quantitative aptitude
  • Problem-solving skills

Nice to have

  • DuckDB
  • Credit risk concepts
  • Wholesale Credit
  • CCAR/DFAST stress testing
  • CECL/IFRS 9 allowance
  • Basel III regulatory capital
  • Large-scale analytics platforms
  • JPMorgan Athena
  • Distributed computing frameworks
  • Statistical modeling
  • Monte Carlo simulation
  • Time-series forecasting
  • SQL
  • Database systems

What the JD emphasized

  • Minimum 5 years of experience in quantitative software development within a financial services environment
  • Advanced proficiency in Python with deep experience in object-oriented design, design patterns, and building production-grade frameworks and libraries
  • Strong working knowledge of NumPy and Pandas for numerical computing and data manipulation
  • Demonstrated experience with test-driven development and building systems with rigorous unit, integration, and regression test coverage
  • Proficiency with LLM-based coding tools and a track record of leveraging AI assistants to meaningfully increase development productivity and code quality