Vice President — Principal Applied AI Data Scientist

JPMorgan Chase JPMorgan Chase · Banking · Jersey City, NJ +1 · Asset & Wealth Management

JPMorgan Chase is seeking a Vice President to lead the design, deployment, and scaling of LLM agents and AI-driven solutions for finance workflows. The role involves architecting and building multi-agent systems using techniques like LangGraph, RAG, and tool use, integrating them with various data sources and APIs, and driving research in Gen AI and autonomous workflows. The candidate will also mentor teams and communicate technical concepts to stakeholders.

What you'd actually do

  1. Architect, build, and scale LLM agents for finance workflows using advanced techniques such as LangGraph, retrieval augmented generation (RAG), multi-agent orchestration, tool use, and multi-step reasoning
  2. Define and execute the roadmap for agentic AI and digital worker solutions in Finance, aligning with business priorities and emerging technologies.
  3. Lead cross-functional teams, collaborating with Finance, Product, Engineering, and Operations to deliver scalable, production-grade AI solutions.
  4. Oversee the development of robust data and inference pipelines in Python and SQL; integrate agents with APIs, microservices, BI/reporting tools, and cloud platforms (AWS, Azure, GCP).
  5. Drive research and development initiatives, exploring Gen AI, Agentic AI, and autonomous workflow patterns.

Skills

Required

  • Python
  • SQL
  • RAG
  • prompt engineering
  • fine-tuning
  • function/tool calling
  • vector stores
  • cloud platforms (AWS, Azure, or GCP)
  • modern data stacks (Databricks or Snowflake)
  • LLM frameworks and orchestration (LangChain or LlamaIndex)
  • REST/GraphQL API design
  • analytics
  • applied statistics
  • experiment design
  • business impact evaluation
  • communication
  • stakeholder management

Nice to have

  • multi-agent systems
  • autonomous workflows
  • task planners
  • model safety
  • bias
  • privacy techniques
  • model risk management
  • governance
  • observability tools (logging, tracing, telemetry)
  • A/B testing
  • BI/reporting tools
  • workflow tools
  • Tableau
  • GPUs/accelerators
  • containerization
  • infrastructure-as-code
  • PySpark
  • distributed compute

What the JD emphasized

  • 8+ years in data/ML roles, including 4+ years building and operating production ML applications
  • hands‑on experience with LLMs
  • Experience building multi‑agent systems, autonomous workflows, or task planners
  • model risk management and governance

Other signals

  • LLM agents
  • digital workers
  • finance workflows
  • multi-agent orchestration
  • RAG
  • tool use
  • vector databases