Business Enablement - Vice President

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Commercial & Investment Bank

This role is for a Business Enablement Vice President within JPMorgan Chase's Commercial & Investment Bank (CIB) Chief Data & Analytics Office (CDAO), focusing on driving AI adoption in Payments and Banking. The role involves understanding business workflows, building AI solutions using internal tooling, writing production-grade Python code, and owning the technical architecture from prototype to production. It requires close collaboration with Technology and data science teams to deliver scalable AI solutions that meet firm standards.

What you'd actually do

  1. Embed directly with senior stakeholders across Payments and Banking, observing real workflows and identifying the highest-leverage opportunities for GenAI to drive commercial impact
  2. Translate Payments and Banking domain context (cash management, treasury services, payments operations, M&A advisory, capital markets origination, credit, deal workflows) into precise technical requirements and where possible re-usable components for at scale adoption
  3. Design, prototype, and ship production AI Solutions against key business workflows with the available internal tooling and systems. Partner with Technology and CIB CDAO teams deliver Solutions in production that meet the firm's resilience, controls and risk standards
  4. Own end-to-end design, architecture and development for assigned use cases — data, retrieval, prompting, orchestration, evaluation, deployment, and ongoing iteration

Skills

Required

  • Background in capital markets origination, M&A advisory, treasury services, payments operations, or another core Payments/Banking domain
  • Knowledge of Financial Services required, with prior exposure to Payments and/or Banking workflows
  • BSc or MSc degree in Computer Science, Engineering, Mathematics, or a related quantitative field
  • Prior experience working directly with non-technical business stakeholders to scope, build, and ship technical solutions — Forward Deployed Engineering, solutions engineering, or analogous
  • Hands-on experience writing and shipping production Python in an enterprise or high-bar engineering environment
  • Demonstrable experience designing, building, and deploying LLM-based applications: prompt engineering, evaluation, retrieval-augmented generation (RAG), and agentic frameworks/orchestration
  • Familiarity with the modern GenAI stack: LLM APIs, vector stores, embeddings, tool/function calling, multi-step agent design, and LLM evaluation
  • Outstanding ability to analyze problems and apply quantitative analytical approaches with excellent attention to detail
  • Strong verbal and written communication skills; ability to communicate effectively and credibly with senior management, business users, and engineering counterparts

What the JD emphasized

  • production AI Solutions
  • production Python
  • LLM-based applications
  • agentic frameworks/orchestration
  • modern GenAI stack
  • multi-step agent design

Other signals

  • Drive adoption of AI and accelerate analytics agenda
  • Identify priorities and focus on high-impact AI use cases
  • Set GenAI strategy around LLMs and Agentic AI
  • Reuse and scale AI solutions
  • Build working AI solutions against business workflows
  • Write production-grade code and own the design of technical architecture
  • Partner closely with Technology, business CDAO, and firmwide data science teams