Lead Machine Learning Engineer

Capital One Capital One · Banking · New York, NY +2

Lead Machine Learning Engineer at Capital One focused on productionizing ML applications and systems at scale. Responsibilities include designing, building, and delivering ML models, informing ML infrastructure decisions, writing and testing application code, collaborating with Agile teams, retraining/maintaining/monitoring models in production, leveraging cloud architectures, constructing data pipelines, and ensuring CI/CD best practices. The role emphasizes building, scaling, and optimizing ML systems, with experience in Python/Scala/Java and distributed computing.

What you'd actually do

  1. Design, build, and/or deliver ML models and components that solve real-world business problems, while working in collaboration with the Product and Data Science teams.
  2. 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).
  3. Solve complex problems by writing and testing application code, developing and validating ML models, and automating tests and deployment.
  4. Collaborate as part of a cross-functional Agile team to create and enhance software that enables state-of-the-art big data and ML applications.
  5. Retrain, maintain, and monitor models in production.

Skills

Required

  • Python
  • Scala
  • Java
  • distributed computing
  • ML systems
  • data pipelines
  • cloud-based architectures
  • CI/CD
  • test automation
  • monitoring

Nice to have

  • scikit-learn
  • PyTorch
  • Dask
  • Spark
  • TensorFlow
  • performant, resilient, and maintainable code development
  • data gathering and preparation for ML models
  • people leader experience
  • leading teams developing ML solutions
  • AWS
  • Azure
  • Google Cloud Platform
  • complex data pipelines for ML models
  • conference presentations
  • papers
  • blog posts
  • open source contributions
  • patents

What the JD emphasized

  • productionizing machine learning applications and systems at scale
  • building, scaling, and optimizing ML systems
  • designing and building data-intensive solutions using distributed computing

Other signals

  • productionizing machine learning applications and systems at scale
  • design, build, and/or deliver ML models and components
  • retrain, maintain, and monitor models in production
  • leverage or build cloud-based architectures, technologies, and/or platforms to deliver optimized ML models at scale
  • construct optimized data pipelines to feed ML models
  • leverage continuous integration and continuous deployment best practices, including test automation and monitoring, to ensure successful deployment of ML models and application code