Wholesale Credit Portfolio Analytics - Analyst

JPMorgan Chase JPMorgan Chase · Banking · Mumbai, Maharashtra, India · Corporate Sector

This role supports the development and enhancement of credit risk grading models and frameworks for Wholesale Credit Risk. It involves quantitative work, model methodology, data preparation, building Python pipelines for analytics, and applying LLMs to synthesize unstructured data. The goal is to enhance credit risk assessments and identify concentration risks.

What you'd actually do

  1. Support the development and enhancement of risk grading frameworks, contributing to methodology design, data preparation, implementation, and validation under the guidance of senior team members
  2. Build and maintain Python-based pipelines for managing large credit datasets, running back tests, and producing portfolio-level analytics that stress test model assumptions
  3. Conduct analyses on portfolio segments — helping to identify concentration risks, migration trends, and grading inconsistencies that inform framework calibration
  4. Assist in applying LLMs to synthesize unstructured data (financials, research, news) into structured datasets for use in model development
  5. Help translate analytical findings into clear narratives for senior committees and regulators, contributing to decks, memos, and committee materials

Skills

Required

  • Bachelor's degree in a quantitative field such as Finance, Economics, Mathematics, Statistics, or a related discipline
  • Up to 2 years of relevant experience in financial analytics, credit risk, or a related quantitative field (internship experience considered)
  • Proficiency in Python with experience manipulating datasets (pandas, SQL, NumPy) and building reproducible analytical workflows
  • Foundational understanding of quantitative modeling concepts such as back testing, sensitivity analysis, and scenario modeling
  • Strong written and verbal communication skills with the ability to present analytical work clearly
  • Familiarity with or willingness to learn core credit risk concepts such as PD and LGD

What the JD emphasized

  • quantitative field
  • quantitative modeling concepts
  • quantitative field

Other signals

  • support the development of credit risk grading models
  • build and maintain Python-based pipelines
  • apply LLMs to synthesize unstructured data