Senior Project Manager, Machine Learning Operations

Nuro Nuro · Robotics · CA · Software Operations

Senior Project Manager, ML Operations at Nuro, focusing on owning and improving the data quality standard across multiple ML data labeling pipelines for autonomous driving. The role requires identifying and closing quality gaps, designing scalable processes, and interfacing between engineering and operations to ensure training data accuracy directly impacts model performance and safety.

What you'd actually do

  1. Own the data quality standard across 10+ labeling pipelines. Establish what "good" looks like for each data type, instrument the pipelines to measure against it, and track gaps with rigor.
  2. Identify and close quality gaps. Audit live workflows, query databases, trace accuracy failures to their structural root cause, and return with a specific, evidence-based improvement plan.
  3. Operate above the execution layer. Partner with operations project managers who own throughput and delivery, and provide the quality diagnostic lens they are not positioned to hold.
  4. Design and implement scalable processes to improve labeling accuracy, reduce systematic errors, and support evolving ML training requirements.
  5. Serve as the strategic interface between Autonomy Engineering and ML Operations, connecting labeling quality metrics directly to model performance and safety outcomes.

Skills

Required

  • 5+ years of project or program management experience embedded with ML, data operations, or software engineering teams
  • Quality-obsessed
  • Visionary and hands-on
  • Hands-on data fluency: navigate database schema, write SQL to investigate labeling anomaly
  • Direct experience with or deep understanding of ML data pipelines and data labeling ecosystems
  • Proven ability to identify systemic workflow problems across multiple concurrent pipelines, propose targeted improvements, and drive adoption
  • Intellectual curiosity and analytical rigor
  • Exceptional communication

Nice to have

  • Prior experience in autonomous vehicles, robotics, computer vision, or ML model training pipelines
  • Background in ML engineering, data engineering, or technical consulting
  • Experience managing large-scale offshore or globally distributed annotation teams
  • Demonstrated track record of improving training data quality or labeling accuracy at scale, with metrics to show for it

What the JD emphasized

  • quality obsessed
  • data quality
  • labeling pipelines
  • quality gaps
  • labeling accuracy
  • systemic improvements
  • training data accuracy

Other signals

  • ML-first approach to autonomous driving
  • Owns data quality standard across 10+ labeling pipelines
  • Drives systemic improvements that raise accuracy of training data
  • Focus on data quality and gap closure