Principal Associate, Data Science - Model Risk Office

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

This role is in Capital One's Model Risk Office, focusing on defending the company against model failures and improving decision-making through models. The Principal Associate, Data Science will partner with cross-functional teams to identify and quantify model risks, lead teams of data scientists in building ML models to challenge existing production models, and contribute to the model governance framework. The role also involves leading model validation across various business domains and presenting identified risks to executives. The ideal candidate is innovative, creative, a leader, technical, and statistically-minded, with experience in model building, validation, and backtesting.

What you'd actually do

  1. Partner with a cross-functional team of data scientists, software engineers, and product managers to identify and quantify risks associated with models
  2. Lead teams of data scientists who build machine learning models to challenge current champion models that are deployed in production and contribute to the model governance framework for the next generation of models
  3. Lead validation of a wide variety of models across multiple business domains and flex your interpersonal skills to present how identified model risks could impact the business to executives.

Skills

Required

  • Bachelor's Degree in a quantitative field plus 5 years of experience performing data analytics
  • Master's Degree in a quantitative field or an MBA with a quantitative concentration plus 3 years of experience performing data analytics
  • PhD in a quantitative field
  • Python
  • SQL
  • Machine Learning

Nice to have

  • Master’s Degree in STEM field plus 3 years of experience in data analytics
  • PhD in STEM field
  • AWS
  • Scala
  • R
  • Clustering
  • Classification
  • Sentiment Analysis
  • Time Series
  • Deep Learning

What the JD emphasized

  • model risk management
  • model validation
  • challenge current champion models that are deployed in production
  • model governance framework

Other signals

  • model risk management
  • model validation
  • challenging production models
  • governance framework