Machine Learning Engineer, Payment Intelligence

Stripe Stripe · Fintech · United States · 8217 Risk Engineering

Machine Learning Engineer focused on the end-to-end lifecycle of applied ML models for payment intelligence, including fraud detection and transaction optimization. This role involves designing, building, deploying, and operating ML-powered systems within Stripe's core payment infrastructure, working with large datasets and real-time pipelines.

What you'd actually do

  1. Design and deploy new models using tools (such as Spark, Presto, XGBoost, Tensorflow, PyTorch) and iteratively improve verification and fraud models to protect millions of users from fraud
  2. Envision and develop new models for fraud detection i.e work with large payment datasets to find creative new methods of detecting and deterring fraudulent behavior.
  3. Propose new feature ideas and design real-time data pipelines to incorporate them into our models.
  4. Integrate new signals into ML pipelines, derive new ML features, and build workflows to make this process fast
  5. Integrate new models and behaviors into Stripe’s core payment flow

Skills

Required

  • Over 3+ years industry experience building machine learning applications in large scale distributed systems.
  • 2+ year of experience working within a team responsible for developing, managing, and optimizing ML models or ML infrastructure
  • Experience designing and training machine learning models to solve critical business problems
  • Experience performing analysis, including querying data, defining metrics, or slicing and dicing data to model performance and business metrics

Nice to have

  • An advanced degree in a quantitative field (e.g. stats, physics, computer science)
  • Proven track record of building and deploying machine learning systems that have effectively solved critical business problems
  • Experience in adversarial domains like Payments, Fraud, Trust, or Safety
  • Experience working in Python, Java and / or Ruby codebases
  • Experience in software engineering in a production environment.

What the JD emphasized

  • building machine learning applications in large scale distributed systems
  • developing, managing, and optimizing ML models or ML infrastructure
  • designing and training machine learning models to solve critical business problems

Other signals

  • end-to-end lifecycle of applied ML model development and deployment
  • ML-powered payment decisioning systems
  • improving existing ML models and developing new ML solutions
  • design and deploy new models
  • develop new models for fraud detection
  • integrate new signals into ML pipelines
  • build workflows to make this process fast
  • integrate new models and behaviors into Stripe’s core payment flow
  • building machine learning applications in large scale distributed systems
  • developing, managing, and optimizing ML models or ML infrastructure
  • designing and training machine learning models to solve critical business problems