Applied Artificial Intelligence/ Machine Learning Lead - Vice President

JPMC Candidate Experience page
Wilmington, DE

As an Applied AI/ML Vice President within Global Private Bank, you'll own the full lifecycle of high-impact models serving clients across wealth management, lending, and advisory — from problem framing with business stakeholders to production deployment at scale. You'll work on some of the most data-rich, complex client problems in financial services — with the infrastructure and resources of one of the world's largest institutions behind you. We're building AI-native capabilities at the intersection of cutting-edge research and real-world impact.

 

Job Responsibilities:

  • Define and scope AI/ML problem statements in partnership with Private Bank business leads, translating ambiguous client or operational pain points into tractable modeling problems
  • Design, build, and deploy end-to-end ML solutions — including generative AI, NLP, and classical machine learning— across client service, risk, and operational efficiency use cases
  • Own model quality, evaluation frameworks, monitoring, drift detection, and iteration post-deployment
  • Drive productionization and MLOps practices in collaboration with engineering, working across distributed data infrastructure
  • Stay current on applied research; evaluate and adapt emerging techniques — new architectures, agentic frameworks, multimodal models — for relevance to the Private Bank's problem space and translate promising work into production-ready solutions
  • Mentor junior data scientists and help set technical standards for the team
  • Collaborate across JPMorganChase's broader AI/ML community, model risk, compliance, and peer LOBs to align on standards, share learnings, and amplify the team's impact firm-wide

Required Qualifications:

  • Master's or PhD in Computer Science, Statistics, Applied Math, Data Science, or related quantitative field
  • Atleast 5 years of hands-on ML experience in production environments with Master's or 3years with PhD 
  • Deep expertise in NLP, including modern LLM fine-tuning, RAG pipelines, prompt engineering and the design and deployment of multi-step AI agents
  • Strong Python skills; proficiency with PyTorch, TensorFlow, Scikit-learn and other libraries
  • Experience with large-scale data processing: Spark, Hive, SQL
  • Proven ability to communicate technical work to non-technical stakeholders

Preferred Qualifications:

  • Financial services experience
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