Risk Management - Model Risk Program Associate

JPMorgan Chase JPMorgan Chase · Banking · Jersey City, NJ +1 · Corporate Sector

This role focuses on validating and governing AI/ML models, including Generative AI and LLMs, within a financial services context. The associate will conduct independent model validation, assess adherence to development standards, identify risks, and communicate findings. A key responsibility is designing, building, and testing LLM-based use cases to improve internal processes, involving prompt engineering, RAG architectures, and agentic AI systems. The role requires a strong quantitative background, experience in model validation or development, proficiency in Python and ML libraries, and experience with Generative AI applications.

What you'd actually do

  1. Conduct independent model validation and governance activities to mitigate model risk across a diverse portfolio, including CIB Wholesale Payments, CIB Fraud, Marketing, and Operations models.
  2. Engage in model validation activities and evaluate adherence to development standards including conceptual soundness of design, reasonableness of assumptions, reliability of inputs, completeness of testing, correctness of implementation, and suitability of performance metrics
  3. Identify weaknesses, limitations, and emerging risks through independent testing, building benchmarks, and ongoing monitoring activities
  4. Communicate risk assessments and findings to stakeholders, and document high quality technical reports
  5. Design, build, and test LLM-based use cases to enhance MRGR processes and improve operational efficiency

Skills

Required

  • Master or PhD Degree in a quantitative discipline
  • 2 plus years of experience in model validation, model development, quantitative analysis, or a related analytical role in financial services
  • Strong communication skills
  • Risk and control mindset
  • Strong foundation in statistics
  • hands-on experience applying statistics and machine learning techniques, including Regression, Boosted Trees, Neural Networks, Support Vector Machines (SVM), and Large Language Models such as BERT
  • Proficiency in Python
  • hands-on experience using libraries for data analysis, machine learning, and working with LLM frameworks and APIs
  • Experience with Generative AI applications, including Large Language Models, prompt engineering, RAG architectures, and building agentic AI systems

What the JD emphasized

  • independent model validation
  • model risk management
  • Generative AI
  • Large Language Models
  • RAG architectures
  • agentic AI systems

Other signals

  • model validation
  • risk management
  • Generative AI
  • LLM
  • RAG
  • agentic AI systems