Technical Lead Manager, Data Engineering, Trust & Safety

OpenAI OpenAI · AI Frontier · San Francisco, CA · Applied AI

Technical Lead Manager for Trust & Safety Data Engineering team at OpenAI. This role involves leading a team, setting strategy, shaping data architecture, and driving execution on high-impact data systems for fraud and abuse detection, safety measurement, and ML feature generation. The focus is on building privacy-safe datasets and pipelines to support trust and safety initiatives.

What you'd actually do

  1. Lead and grow a high-performing Trust & Safety Data Engineering team.
  2. Define the roadmap and technical strategy for Trust & Safety data systems.
  3. Build canonical, privacy-safe datasets and pipelines for abuse detection, fraud detection, risk signals, enforcement, scaled review, transparency reporting, and safety monitoring.
  4. Create reusable foundations for Trust & Safety model development, including features, labels, training data, backtesting, evaluation, and production inputs.
  5. Establish ownership, documentation, data quality standards, monitoring, and operational rigor for critical datasets and workflows.

Skills

Required

  • 15+ years of experience in data engineering
  • led data engineering teams that build and operate production data systems at scale
  • experience in trust and safety, integrity, abuse prevention, fraud, investigations, risk operations, safety systems, privacy, or adjacent domains
  • deeply technical and comfortable with data architecture, modeling, pipelines, reliability, privacy, and operational tradeoffs
  • experience with large-scale data systems such as Spark, Airflow or similar orchestration systems, distributed storage, batch/streaming pipelines, and modern warehouse patterns
  • create clarity in ambiguous problem spaces and make principled tradeoffs quickly
  • strong track record partnering with senior stakeholders across engineering, data science, operations, policy, privacy, product, or executive teams
  • hired, developed, and retained senior engineers

Nice to have

  • supporting ML systems through feature engineering, training data, labels, model evaluation, or production model pipelines
  • launch readiness, monitoring, alerting, incident response, semantic layers, metrics governance, or executive-facing reporting

What the JD emphasized

  • privacy-safe data foundations
  • abuse detection
  • fraud detection
  • safety measurement
  • ML feature generation
  • launch readiness
  • transparency reporting
  • model development
  • training data
  • evaluation

Other signals

  • data foundations for trust and safety
  • fraud and abuse detection
  • safety measurement
  • ML feature generation
  • launch readiness
  • transparency reporting