research
Posted Apr 13Robotics Research Engineer
San Francisco, United StatesOn-site
Responsibilities
- - Create new data collection methods and pipelines to generate the high-quality data that powers state-of-the-art robot models.
- - Collaborate closely with researchers and engineers across robotics, infrastructure, and ML systems.
Requirements
- ROLE OVERVIEW Physical Intelligence is bringing general-purpose AI into the physical world.
- In this role, you will work at the intersection of hardware, software, and large-scale model training to develop effective autonomous robot policies.
- COMPETENCIES AND SKILLS We are especially excited about candidates who combine strong robot learning intuition with deep practical engineering ability.
- Experience training machine learning models for robot control, ideally with policies that have been deployed and validated on real robots. - Hands-on
- experience with the robotics full stack, including controls, robot runtime software, perception, state estimation, SLAM, and basic hardware bring-up and debugging.
- - The ability to move seamlessly between research and implementation: designing experiments, training models, debugging failures, and improving system performance end to end.
Benefits
- You’ll have the opportunity to work across the full stack behind state-of-the-art vision-language-action models: from designing robotic systems and data collection pipelines that produce high-quality training data, to developing learning algorithms that turn that data into capable, reliable policies.
- - Develop and refine vision-language-action models and learning algorithms for general-purpose manipulation and control.
Additional details
- We are a team of engineers, scientists, roboticists, and company builders developing foundation models and learning algorithms to power the robots of today and the physically-actuated devices of the future.
- You’ll help shape the datasets, infrastructure, and research directions that define how these systems are built.
- WHAT YOU'LL DO - Build autonomous robot policies that operate robustly in the real world.
- - Work across the full stack of robot learning, from hardware and data collection to training, evaluation, and deployment.
- - Curate and shape large-scale datasets, task distributions, and training recipes for robot pretraining and adaptation.
- - Run fast, rigorous experiments to identify bottlenecks, uncover failure modes, and improve policy performance.
- - Help define the technical roadmap for general-purpose physical intelligence.
- Strong candidates will typically have many of the following: -
- - Strong software engineering and infrastructure skills, including building data pipelines, training systems, evaluation frameworks, and tools for rapid iteration.
- Pursuant to the San Francisco Fair Chance Ordinance, we will consider for employment qualified applicants with arrest and conviction records.