Applied AI & ML Lead - Markets Operations

JPMorgan Chase JPMorgan Chase · Banking · Jersey City, NJ +1 · Commercial & Investment Bank

Lead the strategy, design, and delivery of production-grade AI/ML solutions for Markets Operations at JPMorgan Chase. This role involves leading a team, setting technical direction, and ensuring reliability, control, and adoption of AI applications, including agent-based and workflow-automation solutions. Requires strong applied ML experience, Python proficiency, and experience deploying and operating ML systems in production, with a focus on generative AI applications and evaluation.

What you'd actually do

  1. Lead the end-to-end delivery of machine learning and generative AI solutions that measurably improve Markets Operations outcomes
  2. Set technical direction and execution strategy across model development, deployment, and adoption aligned to business priorities
  3. Oversee the architecture and production deployment of AI applications, including agent-based and workflow-automation solutions
  4. Manage, coach, and develop a team of scientists and engineers, fostering a collaborative and inclusive culture of continuous learning
  5. Establish and enforce best practices for model monitoring, evaluation, and performance optimization in production environments

Skills

Required

  • applied artificial intelligence and machine learning concepts
  • Python
  • scikit-learn
  • TensorFlow
  • PyTorch
  • feature engineering
  • model development
  • statistical analysis
  • deploying production machine learning systems
  • operating production machine learning systems
  • maintaining production machine learning systems
  • incident and performance ownership
  • machine learning operations practices
  • building generative AI applications
  • evaluating large language model outputs
  • communication skills
  • translate technical concepts

Nice to have

  • Doctorate in a quantitative field
  • advanced applied research experience
  • financial services
  • capital markets
  • operations-focused environments
  • highly regulated environments
  • model risk
  • governance
  • control expectations
  • scalable system architectures for AI products and platforms

What the JD emphasized

  • production-grade solutions
  • measurable impact
  • scale
  • reliability
  • control
  • real-world adoption
  • operational efficiency
  • resilience
  • governance
  • model risk
  • production machine learning systems
  • generative AI applications
  • evaluating large language model outputs for quality and risk
  • highly regulated environments
  • strong model risk, governance, or control expectations

Other signals

  • production-grade solutions
  • measurable impact
  • scale
  • reliability
  • control
  • real-world adoption
  • operational efficiency
  • resilience
  • governance
  • model risk