Applied AI ML Lead - Generative AI and Semantic Modeling

JPMorgan Chase JPMorgan Chase · Banking · Jersey City, NJ +1 · Corporate Sector

Lead the design, build, and deployment of scalable generative AI, agent-based AI, and LLM solutions, with a focus on semantic modeling and enterprise-wide integration. This role involves developing production-ready models, intelligent workflows, and a unified semantic layer to improve trust and consistency across analytics and AI use cases, while adhering to responsible AI practices and model risk controls in a regulated environment.

What you'd actually do

  1. Develop generative AI, agent-based AI, and large language model solutions in Python from proof of concept through production deployment
  2. Design context engineering approaches to improve model accuracy, latency, reliability, and overall performance in real-world workflows
  3. Lead semantic modeling strategy, including ontology standards, governance, and lifecycle management aligned to enterprise needs
  4. Build and govern a unified semantic layer that enables trusted analytics across business intelligence, machine learning, and transactional systems
  5. Implement responsible AI practices, model risk controls, and governance aligned to regulated environments and internal standards

Skills

Required

  • Master's degree in a data science-related discipline and 8 years of industry experience, or a PhD in a data science-related discipline
  • Hands-on experience developing and deploying machine learning and generative AI solutions using Python
  • Demonstrated ability to write and maintain production-quality code, including reliability, performance, and maintainability considerations
  • Experience with continuous integration practices and unit test development to support quality delivery
  • Experience building and managing data pipelines and processing workflows that support analytical and machine learning use cases
  • Strong written and verbal communication skills, including the ability to translate technical decisions into business impact
  • Demonstrated scientific thinking and structured problem-solving skills for ambiguous, data-driven challenges
  • Ability to work independently while collaborating effectively across product, engineering, and business stakeholders

Nice to have

  • Experience building large language model applications that use context engineering to improve response quality and reliability
  • Background in semantic modeling, ontology design, and governance practices in enterprise environments
  • Experience designing semantic integration patterns across data contracts and application programming interfaces in distributed systems
  • Experience implementing monitoring and evaluation approaches for machine learning and generative AI in production
  • Experience mentoring data scientists and engineers and promoting modern machine learning engineering best practices

What the JD emphasized

  • production deployment
  • production-ready
  • production operations
  • regulated environments

Other signals

  • Generative AI
  • Large Language Models
  • Agent-based AI
  • Semantic Modeling
  • Enterprise Scale