Applied AI ML and Context Engineer - Lead

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

Lead engineer to build and deploy generative AI, agentic AI, and LLM solutions, focusing on context engineering, semantic modeling, and unified semantic layers within a regulated financial services environment. This role involves end-to-end development from proof-of-concept to production, including data pipelines, model training, evaluation, and responsible AI practices.

What you'd actually do

  1. Develop generative AI, agentic 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.
  3. Lead enterprise semantic modeling strategy, including ontology standards, governance, and lifecycle management.
  4. Create scalable enterprise ontologies that model business entities, relationships, rules, and constraints in partnership with domain experts.
  5. Build and govern a unified semantic layer that enables trusted analytics across business intelligence, machine learning, and transactional systems.

Skills

Required

  • Master's degree in a data science-related discipline and 8 years of industry experience, or PhD in a data science-related discipline.
  • Experience in data analysis, transformation, and analytics using Python.
  • Demonstrated ability to develop and maintain production-quality code.
  • Experience with continuous integration and unit test development.
  • Strong written and verbal communication skills for technical and business audiences.
  • Demonstrated scientific thinking and structured problem-solving skills.
  • Ability to work independently and collaboratively in a team environment.
  • Experience building and managing data pipelines and processing workflows.
  • Track record of delivering actionable insights from data.
  • Demonstrated attention to detail, curiosity, and ownership in complex analytical work.
  • Commitment to continuous learning and professional growth in AI and machine learning.

Nice to have

  • Familiarity with the financial services industry.
  • Experience with A/B testing and data-driven product development.
  • Knowledge of cloud-native deployment in large-scale distributed environments.
  • Experience developing and debugging production-quality machine learning code.
  • Exposure to prompt engineering practices for large language models.
  • Exposure to orchestration libraries and frameworks for large language model applications.
  • Experience implementing machine learning solutions in business environments.

What the JD emphasized

  • production deployment
  • production-quality code
  • regulated environments

Other signals

  • Generative AI
  • Agentic AI
  • LLM solutions
  • Semantic layer
  • Ontology standards