Compliance - Applied Ai/ml Lead - Vice President

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Corporate Sector

Lead Applied AI/ML role focused on developing and deploying models and analytical methods for compliance and risk management within a financial institution. Requires strong experience in Python, R, Scala, machine learning, statistical models, and specifically graph analytics and databases. The role involves data pipeline development, working with structured and unstructured data, and preparing technical documentation for governance review.

What you'd actually do

  1. Analyze complex/unstructured data to understand the business problem and use case
  2. Analyze business requirements, design, and develop appropriate methodology
  3. Develop deployable, scalable and effective models/ analytical methods as part of technology managed system or as a self-served application of a business user
  4. Work collaboratively and creatively with other data scientists, technology partners, risk professionals, model validation teams, etc.
  5. Prepare technical documentation of quantitative models for internal model risk and governance review

Skills

Required

  • Python
  • R
  • Scala
  • Machine Learning methods
  • Statistical Models
  • Graph Learning Packages (NetworkX, Torch-Geometric, Graphframes, Graphistry)
  • ML Packages (Pandas, Scikit-Learn, XGBoost, catboost, lightgbm, automl, Optuna, Hyperopt)
  • Visualization Packages (Matplotlib, Seaborn, Geopandas)
  • Graph analytics
  • Graph-based learning
  • Graph representation
  • Graph visualization
  • Graph Database (TigerGraph, Neo4j)
  • Query Language (Hive, Cypher)
  • Software development
  • Analytical systems
  • Computationally intensive systems
  • Cloud technologies (AWS, GCP, Azure, Databricks)
  • Data pipelines
  • Data assimilation
  • Project methodology
  • Documenting quantitative analysis

Nice to have

  • Master's Degree
  • PhD
  • C/C#/C++
  • Agile SDLC
  • ModelOps
  • Design Thinking
  • Natural Language Processing techniques
  • Financial services industry experience
  • Experience with process, controls and governance of a highly regulated environment

What the JD emphasized

  • Bachelor of Science degree in Computer Science, Physical Sciences, Econometrics, Statistics, or other any quantitative discipline
  • Demonstrable theoretical and application knowledge of Machine Learning methods, and/or Statistical Models
  • Demonstrable hands-on experience and familiarity with any or all of the following packages, algorithms, and/or alternatives, including Graph Learning Packages
  • Experience in graph analytics, graph-based learning, and graph representation/visualization
  • Experience in developing and operationalization of data pipelines

Other signals

  • Develop deployable, scalable and effective models/ analytical methods
  • Analyze complex/unstructured data
  • Experience in graph analytics, graph-based learning, and graph representation/visualization