Applied Ai/ml Modeling - Vice President

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Consumer & Community Banking

Develop and launch AI/ML models for consumer banking, focusing on retail network optimization, investment, and workforce effectiveness using geospatial AI, graph-based models, and reinforcement learning. This VP-level role requires end-to-end project leadership, stakeholder management, and translating technical outputs for business partners, while ensuring regulatory compliance.

What you'd actually do

  1. Develop and launch AI and ML models that solve complex, ambiguous business problems in Consumer Banking, spanning areas such as retail network optimization, investment optimization, resource allocation, and sales effectiveness.
  2. Lead modeling engagements end-to-end, including interfacing with business, governance, UX, and technology stakeholders; articulating clear business use cases; delivering on project plans; and working with large, complex datasets — including geospatial, demographic, transactional, and behavioral data — to formulate testable business hypotheses.
  3. Translate technical model outputs into clear, actionable recommendations for non-technical business partners in Real Estate, Finance, and Market Strategy.
  4. Partner with governance teams to expedite fair and thorough model reviews, track performance metrics, and maintain adherence to regulatory compliance standards.

Skills

Required

  • Python
  • ML and deep learning frameworks (TensorFlow, PyTorch)
  • NumPy
  • Scikit-Learn
  • Pandas
  • Jupyter Notebook/Lab
  • cloud computing
  • Geospatial analytics
  • spatial statistics
  • spatial optimization
  • Graph neural networks
  • network science
  • graph-based optimization
  • Reinforcement learning
  • multi-armed bandits
  • online/continuous learning
  • Behavioral modeling
  • adaptive intervention design
  • human performance optimization

Nice to have

  • PhD in a relevant discipline
  • consumer finance
  • logistics
  • major retailers
  • AI-native platforms
  • geospatial tools and libraries (e.g., GeoPandas, PySAL, H3, Esri/ArcGIS, Carto, Wherobots, QGIS)
  • graph ML frameworks (e.g., PyTorch Geometric, DGL, NetworkX)
  • RL libraries (e.g., RLlib, Stable Baselines, Vowpal Wabbit)
  • behavioral science concepts (e.g., nudge theory, decision theory)
  • adaptive, continuous learning, or recommendation systems
  • Databricks
  • Snowflake

What the JD emphasized

  • develop and deploy AI/ML models
  • regulatory compliance standards

Other signals

  • develop and launch AI and ML models
  • optimize our branch network
  • geospatial AI and graph-based models
  • reinforcement learning
  • behavioral science