Applied Data Science & Insights Leader - Gtm Intelligence Solutions and Technical Success

OpenAI OpenAI · AI Frontier · San Francisco, CA · Data Science

Lead the development of AI/ML-powered intelligence products for Go-to-Market (GTM) and Technical Success teams at OpenAI. This role focuses on building systems that connect customer health, product usage, and field activity into actionable insights to drive customer adoption, expansion, and retention. The lead will also build and manage a small team, setting technical standards and driving roadmap execution for insight products embedded into GTM workflows.

What you'd actually do

  1. Define and lead the roadmap for GTM Intelligence and Technical Success insight products in partnership with cross-functional leaders.
  2. Build the data science foundation for Technical Success, including core metrics, customer health definitions, intervention measurement, and reusable playbook analytics.
  3. Develop propensity score models for model and product feature adoption, helping Technical Success and GTM identify which customers are most likely to adopt, which interventions can move adoption, and where support should focus.
  4. Build, mentor, and lead a small team of data scientists and cross-functional analytics partners as the GTM Intelligence function scales.
  5. Set technical standards for modeling, metrics, experimentation, documentation, and production readiness across the team's work.

Skills

Required

  • SQL
  • Python
  • applied data science
  • analytics
  • machine learning
  • quantitative strategy
  • statistical modeling
  • causal inference
  • customer segmentation
  • churn or health modeling
  • recommendation systems
  • propensity score modeling
  • uplift modeling
  • SaaS GTM/CS/Sales/Growth analytics

Nice to have

  • Mentoring
  • Team leadership
  • Experimentation
  • Documentation

What the JD emphasized

  • AI/ML-powered intelligence products
  • propensity score models
  • next-best-action systems
  • customer adoption and expansion
  • predictive and causal models
  • production readiness

Other signals

  • AI/ML-powered intelligence products
  • propensity score models
  • next-best-action systems
  • customer adoption and expansion
  • predictive and causal models