Service Bi / Analytics Lead

OpenAI OpenAI · AI Frontier · San Francisco, CA · Consumer Products

This role is for a Service BI / Analytics Lead at OpenAI, focusing on building the post-purchase experience for AI-powered hardware products. The lead will define and build the analytics foundation for service operations, including metrics, reporting, forecasting, and modeling unit economics to improve customer experience and operational efficiency. The role requires experience in BI, analytics, data modeling, forecasting, and influencing cross-functional teams, with a 0->1 environment and potential for team leadership.

What you'd actually do

  1. Define the Service analytics strategy, including core metrics, reporting logic, and decision frameworks across customer experience, operational performance, warranty, and cost.
  2. Create a unified analytics model across Support, Warranty, Returns, Reverse Logistics, Product Quality, Commerce, and Finance.
  3. Partner with Data Engineering and systems teams to build the data models, pipelines, joins, and semantic layers required to support hardware service analytics.
  4. Build reporting capabilities for returns and warranty, including replacement, repair, RMA, depot, reverse-logistics, and finance-reconciliation flows.
  5. Establish source-of-truth data across accounts, devices, orders, claims, logistics events, diagnostics, and support interactions.

Skills

Required

  • SQL
  • data modeling
  • analytics fundamentals
  • building analytics systems
  • KPI frameworks
  • reporting
  • forecasting
  • operational modeling
  • unit economics
  • scenario planning
  • cross-functional influence
  • warranty analytics
  • claims analytics
  • returns analytics
  • repairs analytics
  • RMA analytics
  • reverse-logistics analytics
  • product quality analytics
  • reliability analytics
  • cost-of-quality frameworks
  • semantic layers
  • KPI governance
  • source-of-truth metrics

Nice to have

  • consumer hardware
  • customer support
  • operations
  • reverse logistics
  • leading a lean team
  • global support
  • multi-market service environments
  • AI-enabled support operations
  • agent tooling
  • telemetry-driven service models

What the JD emphasized

  • 0->1 environment
  • imperfect data