Physical Intelligence (π)

New

π*0.6: a VLA that Learns from Experience
November 17, 2025

A method for training our generalist policies with RL to improve success rate and throughput on real-world tasks.

Real-Time Action Chunking with Large Models
June 9, 2025
A real-time system for large VLAs that maintains precision and speed in the face of high latency.
VLAs that Train Fast, Run Fast, and Generalize Better
May 28, 2025
A method to train vision-language-action models that train quickly, maintain internet-scale knowledge, have high quality inference properties, and generalize well.
π0.5: a VLA with Open-World Generalization
April 22, 2025

Our latest generalist policy, π0.5, extends π0 and enables open-world generalization. Our new model can control a mobile manipulator to clean up an entirely new kitchen or bedroom.

Teaching Robots to Listen and Think Harder
February 26, 2025
A method for robots to think through complex tasks step by step, incorporating human-in-the-loop feedback.
Open Sourcing π0
February 4, 2025

We are releasing the weights and code for π0 as well as our new π0-FAST autoregressive model.

FAST: Efficient Robot Action Tokenization
January 16, 2025
A new robot action tokenizer that allows us to train generalist policies 5x faster than previous models.
π0: Our First Generalist Policy
October 31, 2024

Our first generalist policy, π0, a prototype model that combines large-scale multi-task and multi-robot data collection with a new network architecture to enable the most capable and dexterous generalist robot policy to date.