Machine Learning Engineer, Capital Underwriting

Stripe Stripe · Fintech · United States · 8515 Capital - Eng

Machine Learning Engineer for Stripe Capital, focusing on designing, building, training, evaluating, and deploying ML models for underwriting and portfolio management. The role involves working with large-scale datasets, productionizing models, and collaborating with cross-functional teams to provide financing opportunities while meeting financial performance and regulatory goals.

What you'd actually do

  1. Design state-of-the-art ML models and large scale ML systems for underwriting and portfolio management for Stripe Capital based on ML principles, domain knowledge, risk, regulatory and engineering constraints
  2. Design systems to speed up the time from idea to deployment of new models
  3. Experiment and iterate on ML models (using tools such as PyTorch and TensorFlow) to achieve key business goals and drive efficiency
  4. Develop pipelines and automated processes to train and evaluate models in offline and online environments
  5. Integrate ML models into production systems and ensure their scalability and reliability

Skills

Required

  • PyTorch
  • TensorFlow
  • XGBoost
  • Spark
  • ML algorithms
  • model architectures
  • designing ML models
  • training ML models
  • evaluating ML models
  • productionizing ML models
  • deploying ML models
  • data pipelines
  • large-scale datasets

Nice to have

  • MS/PhD degree in ML/AI or related field
  • Deep Learning
  • adversarial domains such as Lending, Trading, Fraud

What the JD emphasized

  • 5+ years of industry experience building and shipping ML systems in production
  • Hands-on experience in designing, training, and evaluating machine learning models
  • Hands-on experience in productionizing and deploying models at scale
  • Hands-on experience in orchestrating complicated data pipelines and efficiently leveraging large-scale datasets
  • regulatory and operational constraints of a financing business

Other signals

  • ML models for underwriting and portfolio management
  • designing, building, training, evaluating, deploying, and owning ML models in production
  • integrating ML models into production systems
  • productionizing and deploying models at scale