Machine Learning Scientist 4 - Pricing Science

Netflix Netflix · Big Tech · United States · Remote · Data & Insights

Machine Learning Scientist role focused on pricing science within a B2C subscription business. The role involves designing and implementing causal inference approaches and ML models to understand the impact of pricing actions on member behavior, conducting elasticity and willingness-to-pay research, and evolving measurement tools. The scientist will partner with Finance & Strategy and Product teams to translate findings into actionable business recommendations and own work from ideation to production systems.

What you'd actually do

  1. Design and implement quasi-experimental and causal inference approaches (difference-in-differences, synthetic control, instrumental variables, and related QED methods) to measure the true impact of pricing actions in observational, global datasets
  2. Build and productionize measurement models and causal inference pipelines that estimate how pricing actions affect member behavior - from feature engineering through deployment, monitoring, and iteration
  3. Conduct elasticity and willingness-to-pay research to deepen our understanding of member price sensitivity across global markets
  4. Evolve our core measurement and analytics tools, integrating new science as the field advances
  5. Partner with Finance & Strategy and Product leadership to translate statistical findings - including uncertainty - into business recommendations; push back constructively when business assumptions conflict with statistical evidence

Skills

Required

  • Python
  • ML libraries (scikit-learn, PyTorch, TensorFlow, or JAX)
  • causal inference
  • quasi-experimental design
  • production model deployment and maintenance
  • communication to non-technical audiences

Nice to have

  • B2C subscription businesses experience
  • advanced degree (MS or PhD) in statistics, economics, computer science, mathematics, or a related quantitative field

What the JD emphasized

  • deep expertise in causal inference and quasi-experimental design
  • proven track record of taking ML initiatives from 0 to 1, including building, deploying, and maintaining production models

Other signals

  • pricing science
  • causal inference
  • subscription revenue
  • member behavior modeling