Artificial Intelligence Research Lead - Vice President

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

Research Lead (VP) at JPMorgan Chase AI Research focusing on developing novel AI/ML techniques and deploying them into financial services. The role involves end-to-end research from innovation to production, with a focus on multi-agent systems, foundation models, continual learning, multimodal AI, formal reasoning, and synthetic data generation. Requires a PhD, strong publication record, and practical software development skills.

What you'd actually do

  1. Work on multiple commercially oriented research projects in collaboration with internal data scientists, applied engineering teams and stakeholders across businesses e.g. Commercial & Investment Banking (including Markets), Asset & Wealth Management, Consumer & Community Banking, etc.
  2. Formulate problems, generate hypotheses, develop new algorithms and models, conduct experiments and rigorous evaluations, synthesize and communicate results, and deliver well-tested, high-quality code.
  3. Contribute to high-impact business applications, reusable assets and products, and research initiatives.
  4. Provide thought leadership on internal and external forums through white papers, publications and presentations.
  5. Lead projects or major workstreams in larger projects/initiatives. Play a key role in ensuring that problem definitions and solutions are technically sound, generalizable and capture business/product requirements. Proactively identify and propose new research projects linked to business problems.

Skills

Required

  • PhD in Computer Science, Engineering, or related fields
  • 2+ years of relevant work experience
  • Research publications in top-tier AI/ML venues
  • Deep understanding of fundamental AI/ML techniques
  • Strong grasp of current state of the art in specific areas of expertise
  • Practical experience with statistical data analysis
  • Experimental design
  • Creation of meaningful benchmarks and metrics for evaluation
  • Effective verbal and written communication skills
  • Ability to address both technical and business audiences
  • Practical software development experience in collaborative project settings
  • Ability to deliver modular, optimized, high-quality Python code with tests
  • Proven ability to translate business requirements into technical problem formations
  • Deliver novel solutions into production
  • Synthetic Data Generation
  • Multimodal agent security and safety
  • Alignment
  • Guardrails
  • Red teaming
  • Data privacy
  • Unlearning
  • Continual learning for agents
  • Reinforcement learning
  • Post-training
  • Advanced multi-agent systems
  • Formal methods
  • Program/hardware verification

Nice to have

  • ML libraries (e.g. PyTorch, TensorFlow/Keras, HuggingFace Transformers etc.)
  • Agent frameworks (e.g. LangGraph, Google ADK, etc.)
  • Common formal verification tools and languages (e.g., Coq/Isabelle/Lean, TLA+, Alloy, Z3, PDDL)
  • Curiosity, creativity, resourcefulness, and a collaborative spirit
  • Foundation model training
  • Multimodal information discovery, understanding and predictive modeling

What the JD emphasized

  • PhD in Computer Science, Engineering, or related fields with relevant research experience in AI/ML and 2+ years of relevant work experience
  • Research publications in top-tier AI/ML venues (e.g., conferences, journals) – broad conferences such as NeurIPS, ICML, ICLR, etc., or highly regarded specialized conferences such as ICAPS, CRYPTO, etc.
  • Proven ability to translate business requirements into technical problem formations and deliver novel solutions into production and motivated to make an impact on problems in the financial services domain.

Other signals

  • develops novel AI capabilities
  • translate breakthrough AI/ML techniques into deployed solutions
  • develop novel techniques, tools, and frameworks
  • shift the frontier
  • early-stage innovation and rigorous evaluation to production-scale delivery