Lead Machine Learning Engineer (finance Tech - AI Enablement)

Capital One Capital One · Banking · Cambridge, MA +2

Lead Machine Learning Engineer focused on AI enablement within a finance technology group. The role involves designing, developing, testing, deploying, and supporting AI software components, including LLM inference, similarity search, guardrails, governance, observability, and agentic AI. Responsibilities include fine-tuning models, building data pipelines, and ensuring responsible AI practices in a production environment.

What you'd actually do

  1. Design, develop, test, deploy, and support AI software components utilizing machine learning models, including model evaluation and experimentation, large language model inference, similarity search, guardrails, governance, observability and agentic AI.
  2. Fine-tune, develop and evaluate machine learning and foundation models,
  3. Collaborate as part of a cross-functional Agile team to create and enhance software that utilizes state-of-the-art AI and ML capabilities
  4. Retrain, maintain, and monitor models in production.
  5. Construct optimized data pipelines to feed ML models.

Skills

Required

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

Nice to have

  • Master's or Doctoral Degree in computer science, electrical engineering, mathematics, or a similar field
  • designing, developing, delivering, and supporting AI services at scale
  • building production-ready data pipelines that feed ML models
  • industry recognized ML framework such as scikit-learn, PyTorch, Dask, Spark, or TensorFlow

What the JD emphasized

  • AI-powered products
  • large language model inference
  • similarity search
  • guardrails
  • governance
  • observability
  • agentic AI
  • fine-tune
  • evaluate machine learning and foundation models
  • state-of-the-art AI and ML capabilities
  • pioneering AI systems
  • ML infrastructure decisions
  • models in production
  • data pipelines to feed ML models
  • Responsible and Explainable AI
  • building, scaling, and optimizing ML systems
  • building production-ready data pipelines that feed ML models

Other signals

  • deploying best practices
  • end user facing AI usecases
  • AI-powered products
  • large language model inference
  • similarity search
  • guardrails
  • governance
  • observability
  • agentic AI
  • fine-tune, develop and evaluate machine learning and foundation models
  • state-of-the-art AI and ML capabilities
  • pioneering AI systems
  • ML infrastructure decisions
  • models in production
  • data pipelines to feed ML models
  • Responsible and Explainable AI