Head of Ccb Auto and Business Banking Portfolio Risk Modeling

JPMorgan Chase JPMorgan Chase · Banking · Plano, TX +1 · Consumer & Community Banking

Lead a global team of quantitative experts to design, deliver, and govern predictive models for credit risk assessment in Auto and Business Banking portfolios. Own the end-to-end modeling lifecycle, ensuring compliance with regulatory standards and translating model insights into strategic actions. The role involves applying advanced methods to large datasets and partnering across departments to manage lending risks.

What you'd actually do

  1. Lead and develop a high‑performing global team building predictive risk models for CCB’s Auto and Business Banking lending portfolios.
  2. Own the end‑to‑end modeling lifecycle (data sourcing, design, estimation, validation readiness, implementation, deployment, performance monitoring, and periodic recalibration).
  3. Ensure compliance with Firmwide model risk management standards and applicable regulatory expectations (e.g., SR 11‑7/OCC 2011‑12), with strong documentation, controls, and audit readiness.
  4. Deliver clear, decision‑useful insights based on models and scenario analyses that inform credit strategy, reserving (e.g., CECL), stress testing, portfolio valuation, and budgeting.
  5. Advance the modeling roadmap by modernizing data pipelines, feature engineering, and model operations practices; drive process efficiency and reproducibility.

Skills

Required

  • Ph.D. (or comparable advanced degree) in Economics, Statistics, Operations Research, Mathematics, or a related quantitative field; or equivalent experience.
  • 10+ years building and deploying predictive risk models for consumer lending portfolios, with deep domain knowledge in auto and business banking credit.
  • 5+ years leading and developing high‑performing quantitative teams.
  • Expertise across advanced modeling methods (e.g., parametric and non‑parametric regression, time series, survival/PD‑LGD‑EAD frameworks, machine learning).
  • Proficiency in Python and/or R; familiarity with SAS; strong SQL and experience with large‑scale datasets.
  • Demonstrated ability to communicate complex analytics succinctly and influence senior stakeholders.
  • Strong analytical judgment and problem solving; track record of improving processes and controls.

Nice to have

  • Experience with CECL/allowance modeling, capital stress testing, and scenario design.
  • Familiarity with model risk governance, validation expectations, and audit processes.
  • Experience with modern data and model operations tooling (e.g., Spark, Git, CI/CD, workflow orchestration) and collaboration with Technology/Engineering teams.
  • Exposure to cloud‑based analytics environments and secure model deployment at scale.

What the JD emphasized

  • Firmwide model risk management standards
  • regulatory expectations
  • SR 11‑7/OCC 2011‑12
  • documentation
  • controls
  • audit readiness
  • CECL