Business Intelligence Data Scientist – Sr. Associate - Jpmorgan Private Bank

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Asset & Wealth Management

This role focuses on building and deploying predictive models and AI-enabled solutions, including LLMs, to drive business strategy and improve sales productivity within the JPMorgan Private Bank. The role involves end-to-end model lifecycle management, from data analysis and prototyping to production deployment and integration with business processes.

What you'd actually do

  1. Partner with business, sales, marketing, and technology teams to define requirements and deliver analytics solutions that drive measurable outcomes.
  2. Design, develop, and deploy machine learning and advanced analytics solutions for complex business problems.
  3. Apply statistical analysis, predictive modeling, and AI techniques to generate insights from large, complex datasets.
  4. Prototype AI-enabled approaches, including large language models and automation, to deliver personalized, context-aware insights and recommendations.
  5. Collaborate with engineering partners to implement scalable data pipelines, model deployment workflows, and analytics infrastructure.

Skills

Required

  • Python for data analysis, modeling, and production-grade implementation
  • SQL for data extraction, transformation, and analysis
  • build, evaluate, and deploy predictive models and analytics solutions end-to-end
  • statistical and analytical problem-solving skills
  • designing, deploying, and operating production machine learning pipelines and services
  • AI implementation in software development contexts

Nice to have

  • sales, marketing, or productivity analytics use cases in a financial services environment
  • integrating external datasets
  • large language model applications, evaluation approaches, and responsible AI considerations
  • scalable data engineering patterns for analytics
  • storytelling skills

What the JD emphasized

  • deploy predictive models and analytics solutions end-to-end
  • deploy machine learning pipelines and services
  • production-grade implementation
  • production machine learning pipelines and services

Other signals

  • prototype and apply modern AI approaches
  • prototype AI-enabled approaches, including large language models
  • deploy predictive models and analytics solutions