Machine Learning Engineering & Applied AI ML Lead - Vice President

JPMorgan Chase JPMorgan Chase · Banking · LONDON, LONDON, United Kingdom · Commercial & Investment Bank

This role focuses on designing and delivering enterprise-grade machine learning systems and autonomous agents for document processing within a large financial institution. It involves building robust production architectures, translating research into scalable solutions, and implementing automated ML pipelines using MLOps tools, with a strong emphasis on AWS and Kubernetes. The role operates at the intersection of software engineering and AI research, aiming to scale AI solutions within a sensitive enterprise environment.

What you'd actually do

  1. Design and deliver enterprise-grade machine learning systems
  2. Collaborate with cloud and SRE teams to build robust production architectures
  3. Translate scientific research into scalable ML solutions
  4. Develop and deploy business-critical, data-intensive applications
  5. Implement distributed, multi-threaded, and scalable applications

Skills

Required

  • Experience in machine learning engineering roles
  • Degree in a quantitative discipline (Computer Science, Mathematics, Statistics)
  • Proven ability to develop and deploy business-critical, data-intensive applications
  • Extensive experience with AWS and Kubernetes
  • Proficiency with lower-level libraries such as PyTorch and NumPy
  • Hands-on experience implementing distributed, multi-threaded, and scalable applications
  • Experience with automated building, testing, and deployment pipelines
  • Familiarity with higher-level interfaces like Pydantic AI and Langraph
  • Strong understanding of computer science fundamentals and development best practices
  • Broad knowledge of MLOps tooling for versioning, reproducibility, and observability
  • Ability to understand business objectives and align ML problem definitions

Nice to have

  • Experience mentoring or leading teams
  • Knowledge of agentic AI concepts
  • Experience designing reusable libraries and services
  • Interest in bridging scientific theory and enterprise-grade systems
  • Passion for innovation and continuous learning

What the JD emphasized

  • autonomous agents
  • agentic systems
  • enterprise-grade machine learning systems
  • scalable ML solutions
  • business-critical, data-intensive applications
  • automated pipelines for ML solutions
  • MLOps tools
  • AWS
  • Kubernetes
  • PyTorch
  • NumPy
  • Pydantic AI
  • Langraph

Other signals

  • building autonomous agents
  • AI platform and desktop application
  • document processing workflows
  • agentic systems
  • enterprise-grade machine learning systems
  • scalable ML solutions
  • business-critical, data-intensive applications
  • automated pipelines for ML solutions
  • MLOps tools