Data Quality Manager

Figure AI Figure AI · Robotics · HQ · Data Collection

Figure AI is seeking a Data Quality Manager to own end-to-end data quality for their humanoid robots' training data. This role involves setting standards, building tooling, and leading a team to produce high-quality training data for AI systems like Helix. The focus is on defining new methodologies for multimodal, embodied, sensor-rich data in robotics.

What you'd actually do

  1. Own data quality broadly at Figure — setting the strategy, standards, and operating model for how training data is produced, evaluated, and improved across all of our AI systems
  2. Own data quality metrics, including accuracy, consistency, rework rates, and guideline adherence across all labeling projects
  3. Define the standards, guidelines, QA methodologies, and audit processes for humanoid robot training data, effectively writing the playbook for an annotation discipline that doesn’t yet exist outside of a handful of frontier robotics labs
  4. Serve as a thought partner to the Helix team across all aspects of AI model development, helping shape what data we collect, how we evaluate it, and how data quality decisions feed into model behavior
  5. Develop onboarding and ongoing training programs for new and existing labelers

Skills

Required

  • 8-10+ years of experience leading operational or data teams in a fast-paced environment, including hiring, performance management, and coaching
  • Strong analytical and problem-solving skills, with the ability to diagnose quality issues and implement corrective actions
  • Experience managing large-scale data quality or annotation operations
  • Excellent written and verbal communication skills, especially when documenting standards and providing feedback using data
  • Ability to manage competing priorities and time-sensitive deliverables under pressure
  • High attention to detail and a strong quality-first mindset
  • Proficiency in Google Workspace (e.g., Sheets) and operational or workflow management tools

Nice to have

  • Experience working with robotics, autonomy, or sensor-derived data
  • 10+ years of experience leading skilled teams operating complex or early-stage technology
  • A passion for helping scale the deployment of learning humanoid robots

What the JD emphasized

  • data quality is one of the most important and least solved problems in humanoid robotics
  • standards, tooling, and methodologies that worked for prior generations of AI, image classification, language, autonomous driving, don’t map cleanly onto the multimodal, embodied, sensor-rich data that Helix and our other AI systems learn from
  • writing the playbook for an annotation discipline that doesn’t yet exist outside of a handful of frontier robotics labs

Other signals

  • Data quality for humanoid robotics
  • Setting standards and building tooling for training data
  • Defining next-generation data quality and annotation for the industry