Applied AI Machine Learning Vice President

JPMorgan Chase JPMorgan Chase · Banking · LONDON, United Kingdom · Consumer & Community Banking

JPMorgan Chase is seeking an Applied AI Machine Learning Vice President for their International Consumer Bank (ICB) Risk Modelling team in London. The role focuses on developing and managing machine learning models to mitigate identity verification fraud. Responsibilities include defining roadmaps, researching and adopting state-of-the-art and vendor models, ensuring model performance and governance, supporting synthetic data initiatives, and collaborating with various partner teams to meet regulatory requirements.

What you'd actually do

  1. Assist product leadership in defining problem statements and execution roadmaps related to identity verification fraud models, ensuring alignment with business needs.
  2. Lead research and the evaluation of the state-of-the-art models as well as adopt advanced solutions from leading vendors, to detect and prevent identity verification fraud and enhance automation and decision-making processes.
  3. Ensure robust model performance to meet the business expectations and the firm's governance standards. Perform root cause analysis for emerging trends in model performance, and communicate complex findings, insights, and recommendations to senior management and partners.
  4. Support the broader Risk Fraud Modelling initiative on synthetic data and synthetic IDs on behalf of the ICB business, contributing to the analysis, testing, and validation of synthetic data approaches.
  5. Work with multiple partner teams—including Strategy, Technology, Product Management, Legal, Compliance, Business Management, and Model Governance — to ensure the models meet the firm's high governance standards and regulatory requirements, and support audit and other business functions around model management.

Skills

Required

  • Advanced degree (MSc or PhD) in a quantitative or technical discipline, or significant practical industry experience.
  • Solid understanding of fraud modelling in financial organizations, including the unique challenges and regulatory considerations involved.
  • Work experience in applied data science, machine learning techniques, with a strong understanding of both traditional statistical and machine learning models.
  • Proficient in Python, with hands-on experience in data analysis and writing production-quality code.
  • Extensive experience with machine learning and data analysis toolkits (e.g., NumPy, Scikit-Learn, Pandas).
  • Ability to effectively leverage Generative AI tools to enhance productivity, analysis, and problem-solving in day-to-day work.
  • Strong written and spoken communication skills to effectively convey technical concepts and results to both technical and business audiences. Team player.

Nice to have

  • Experience with ML model explainability and understanding model governance processes.
  • Experience with model risk management frameworks.
  • Experience with or strong interest in synthetic data generation, synthetic identity analysis, or related techniques.

What the JD emphasized

  • identity verification fraud
  • models from leading vendors
  • regulatory requirements
  • model governance
  • synthetic data

Other signals

  • Develop statistical and machine learning models to reduce fraud and credit risk
  • Lead research and the evaluation of the state-of-the-art models as well as adopt advanced solutions from leading vendors
  • Work with multiple partner teams—including Strategy, Technology, Product Management, Legal, Compliance, Business Management, and Model Governance — to ensure the models meet the firm's high governance standards and regulatory requirements