Senior Lead Machine Learning Engineer (intelligent Foundations and Experiences)

Capital One Capital One · Banking · McLean, VA +3

Senior Lead Machine Learning Engineer focused on building and scaling AI/ML capabilities for Credit and Financial Risk Management products. The role involves designing, building, and delivering AI-powered products, including LLM inference and agentic AI, and optimizing ML infrastructure and data pipelines for production at scale.

What you'd actually do

  1. Lead dedicated pods of software, data and machine learning engineers in building AI/ML capabilities for Credit and Financial Risk Management products, serving as a technical mentor to the team on these core technologies
  2. Design, build, and deliver AI-powered products and components that solve real-world business problems, leveraging expertise in model experimentation, LLM inference, similarity search, and agentic AI within a collaborative Product and Data Science environment
  3. Collaborate with a cross-functional team of engineers, data scientists, and designers to develop and scale AI-powered products that enable optimized associate performance and deliver world-class customer value
  4. Inform your ML infrastructure decisions using your understanding of ML modeling techniques and issues, including choice of model, data, and feature selection, model training, hyperparameter tuning, dimensionality, bias/variance, and validation)
  5. Solve complex problems by writing and testing application code, developing and validating ML models, and automating tests and deployment

Skills

Required

  • designing and building data-intensive solutions using distributed computing
  • programming with Python, Scala, or Java
  • building, scaling, and optimizing ML systems
  • leading teams developing ML solutions

Nice to have

  • Retrieval Augmented Generation (RAG)
  • deploying scalable AI/ML solutions in a public cloud such as AWS Bedrock, Google Cloud, Azure
  • designing, implementing, and scaling complex data pipelines for ML models and evaluating their performance
  • understanding scientific publications and judiciously apply novel techniques in production

What the JD emphasized

  • productionizing machine learning applications and systems at scale
  • build, and deliver AI-powered products and components
  • scale AI-powered products
  • building, scaling, and optimizing ML systems
  • leading teams developing ML solutions

Other signals

  • productionizing machine learning applications and systems at scale
  • design, build, and deliver AI-powered products and components
  • scale AI-powered products
  • deliver optimized ML models at scale
  • building, scaling, and optimizing ML systems