Physicalintelligence
Applied Researcher
5mo ago
USASeniormachine learningroboticspythondata collectionpolicy training
Research role focused on deploying, debugging, and improving AI-driven models for physical robots and real-world applications.
About the company
- Physical Intelligence is bringing general-purpose AI into the physical world. We are a group 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.
Responsibilities
- - Deploy and debug learned policies on physical robots, diagnosing failures across the full stack (perception, policy, control, hardware).
- - Train and tune policies, curate data, and iterate to improve real-world performance.
- - Write production-quality code that interfaces with Pi’s infrastructure.
- - Work with operators to set up tests, evals, and data collection pipelines.
- - Engage with partners to understand use cases and observe robots in deployment contexts.
- - Bridge research and operations: translate research advances into deployable systems, and surface real-world failure modes back to researchers and (software and hardware!) engineers.
- - Define and shape a vision for what real-world deployments will look like in the long-term
Nice to have
- - Founded or worked at an early-stage robotics or AV company
- - PhD in relevant field
- - Intuition for policy training, neural network debugging, and data curation
- - Experience with robot manipulation platforms
- Pursuant to the San Francisco Fair Chance Ordinance, we will consider for employment qualified applicants with arrest and conviction records.
Other
- The Deployments team is responsible for solving real world problems with our models and robots. We tackle the full problem space: integrating with customer workflows, training models to solve their dexterous tasks, and ensuring the on-site reliability of the system. This breadth of problem space is why we’re a full-stack robotics team - whether it’s thinking about customer facing experiences or fine-tuning models for tasks no robot has done before, we put forth the best solution Pi has to offer.
- - Hands-on experience deploying robots or autonomous systems in real-world environments
- - Strong engineering skills: clean Python, ability to interface with infrastructure, debugging instincts
- - Ability to debug the full stack from perception to control
- - Practical mindset: motivated by making things work, not by open-ended research
- - Clear communication with researchers, operators, and occasionally partners