Applied Ai/ml Associate Senior - Causal ML

JPMorgan Chase JPMorgan Chase · Banking · Bengaluru, Karnataka, India · Asset & Wealth Management

This role focuses on applying GenAI, ML, and statistical models, with a strong emphasis on causal inference, to solve business problems in Global Wealth Management. The associate will develop and productionize AI/ML solutions, understand cause-and-effect relationships in observational data, and coach other team members.

What you'd actually do

  1. Develop AI/ML solutions to address impactful business needs
  2. Work with other team members to productionize end-to-end AI/ML solutions
  3. Engage in research and development of innovative relevant solutions
  4. Document developed AI/ML models to stakeholders
  5. Coach other AI/ML team members towards both personal and professional success

Skills

Required

  • Statistics
  • Data Science
  • Economics
  • Computer Science
  • Applied Mathematics
  • Operations Research
  • causal inference fundamentals
  • machine learning
  • statistical modeling
  • applied experimentation
  • Python
  • Tensorflow
  • Keras
  • Pytorch
  • Scikit-learn
  • Spark
  • Hive
  • SQL
  • natural language processing (NLP)

Nice to have

  • causal machine learning to pricing
  • marketing
  • campaign targeting
  • personalization
  • customer analytics
  • temporal causality
  • longitudinal data
  • panel data
  • dynamic treatment effects
  • time series forecasting
  • modern causal ML methods
  • meta-learners
  • uplift models
  • causal forests
  • double machine learning
  • Financial service background
  • PhD/Masters

What the JD emphasized

  • causal inference
  • understanding cause-and-effect relationships in real-world, observational settings
  • causal machine learning

Other signals

  • causal inference
  • decision systems
  • observational data