招聘
Role Overview
Physical Intelligence is bringing general-purpose AI into the physical world. 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.
In this role, you will work at the intersection of hardware, software, and large-scale model training to develop effective autonomous robot policies. 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. You’ll help shape the datasets, infrastructure, and research directions that define how these systems are built.
What You'll Do
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Build autonomous robot policies that operate robustly in the real world.
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Work across the full stack of robot learning, from hardware and data collection to training, evaluation, and deployment.
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Create new data collection methods and pipelines to generate the high-quality data that powers state-of-the-art robot models.
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Develop and refine vision-language-action models and learning algorithms for general-purpose manipulation and control.
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Curate and shape large-scale datasets, task distributions, and training recipes for robot pretraining and adaptation.
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Run fast, rigorous experiments to identify bottlenecks, uncover failure modes, and improve policy performance.
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Collaborate closely with researchers and engineers across robotics, infrastructure, and ML systems.
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Help define the technical roadmap for general-purpose physical intelligence.
Competencies and Skills
We are especially excited about candidates who combine strong robot learning intuition with deep practical engineering ability. Strong candidates will typically have many of the following:
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Experience training machine learning models for robot control, ideally with policies that have been deployed and validated on real robots.
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Hands-on experience with the robotics full stack, including controls, robot runtime software, perception, state estimation, SLAM, and basic hardware bring-up and debugging.
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Strong software engineering and infrastructure skills, including building data pipelines, training systems, evaluation frameworks, and tools for rapid iteration.
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The ability to move seamlessly between research and implementation: designing experiments, training models, debugging failures, and improving system performance end to end.
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Comfort working hands on with robotic hardware.
Pursuant to the San Francisco Fair Chance Ordinance, we will consider for employment qualified applicants with arrest and conviction records.
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关于Physical Intelligence
薪资范围
4个数据点
Senior/L5
Staff/L6
Senior/L5 · Software Engineer
2份报告
$276,565
年薪总额
基本工资
$213,512
股票
-
奖金
-
$264,910
$276,565
新闻动态
Physical Intelligence π0.7: A Steerable Model with Emergent Capabilities
HN
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1d ago
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Physical Intelligence, a hot robotics startup, says its new robot brain can figure out tasks it was never taught - MSN
MSN
News
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1d ago
EXCLUSIVE: Physical Intelligence’s New Robot Brain Called Pi 0.7, Can Combine Skills It Already Knows To Complete Tasks It Was Never Trained On. And The Researchers Behind It Say The Results Surprised Even Them 🤯🤖
San Francisco-based robotics startup Physical Intelligence has released a technical report on pi 0.7, the latest iteration of its flagship vision-language-action model, documenting a capability that has never been reliably demonstrated in a robot AI system before: compositional generalization, the ability to combine skills learned from separate tasks and apply that combined knowledge to entirely new challenges without any additional training or fine-tuning. The team openly states that the resul
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2d ago
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19
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2
AGIBOT Declares 2026 "Deployment Year One" at APC 2026, Accelerating the Era of Embodied AI Productivity - PA Media
PA Media
News
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2d ago
