Data Operations Manager, Human Data

Anthropic Anthropic · AI Frontier · San Francisco, CA · AI Research & Engineering

This role focuses on building and scaling data operations for research teams working on frontier AI capabilities, including RLHF, safety, tool use, and agentic workflows. The Data Operations Manager will own data strategy, manage vendor partnerships, and implement systems to ensure high-quality training data, directly impacting model performance on critical capabilities.

What you'd actually do

  1. Own and execute data strategy for research teams advancing frontier AI capabilities across RLHF, safety, tool use, and agentic workflows
  2. Drive strategic vendor partnerships and build scalable frameworks for technical data collection at scale
  3. Design and implement operational systems that translate research requirements into high-quality data pipelines
  4. Build evaluation frameworks and quality standards that ensure data meets the bar for training state-of-the-art AI systems
  5. Lead cross-functional initiatives to optimize research velocity while maintaining rigorous quality standards

Skills

Required

  • 3+ years in operations, consulting, product management, or program management roles
  • Exceptional project management skills with ability to handle multiple complex projects simultaneously
  • Strong communication skills and can engage effectively with technical and non-technical stakeholders
  • Familiar with how LLMs work or have strong interest in understanding AI training methodologies
  • Highly organized and can navigate ambiguity effectively
  • Experience with data analysis tools (SQL, Python, Tableau, spreadsheets, or similar)
  • Thrive in fast-paced research environments with shifting priorities

Nice to have

  • Experience with data collection, labeling, or annotation operations for AI/ML systems
  • Knowledge of RLHF, constitutional AI, or human-in-the-loop workflows
  • Background working with research teams at AI companies or research-oriented organizations
  • Experience managing vendor relationships or external contractors
  • Consulting background with experience translating complex requirements into deliverables
  • Track record of implementing process improvements or quality control systems at scale

What the JD emphasized

  • high-quality training data
  • frontier AI capabilities
  • RLHF
  • safety
  • tool use
  • agentic workflows
  • quality standards

Other signals

  • Data operations for frontier AI
  • Scaling data pipelines
  • Quality standards for training data