# π₀ (Pi0) π₀ is a **Vision-Language-Action model for general robot control**, from Physical Intelligence. The LeRobot implementation is adapted from their open source [OpenPI](https://github.com/Physical-Intelligence/openpi) repository. ## Model Overview π₀ represents a breakthrough in robotics as the first general-purpose robot foundation model developed by [Physical Intelligence](https://www.physicalintelligence.company/blog/pi0). Unlike traditional robot programs that are narrow specialists programmed for repetitive motions, π₀ is designed to be a generalist policy that can understand visual inputs, interpret natural language instructions, and control a variety of different robots across diverse tasks. ### The Vision for Physical Intelligence As described by Physical Intelligence, while AI has achieved remarkable success in digital domains, from chess-playing to drug discovery, human intelligence still dramatically outpaces AI in the physical world. To paraphrase Moravec's paradox, winning a game of chess represents an "easy" problem for AI, but folding a shirt or cleaning up a table requires solving some of the most difficult engineering problems ever conceived. π₀ represents a first step toward developing artificial physical intelligence that enables users to simply ask robots to perform any task they want, just like they can with large language models. ### Architecture and Approach π₀ combines several key innovations: - **Flow Matching**: Uses a novel method to augment pre-trained VLMs with continuous action outputs via flow matching (a variant of diffusion models) - **Cross-Embodiment Training**: Trained on data from 8 distinct robot platforms including UR5e, Bimanual UR5e, Franka, Bimanual Trossen, Bimanual ARX, Mobile Trossen, and Mobile Fibocom - **Internet-Scale Pre-training**: Inherits semantic knowledge from a pre-trained 3B parameter Vision-Language Model - **High-Frequency Control**: Outputs motor commands at up to 50 Hz for real-time dexterous manipulation ## Installation Requirements 1. Install LeRobot by following our [Installation Guide](./installation). 2. Install Pi0 dependencies by running: ```bash pip install -e ".[pi]" ``` ## Training Data and Capabilities π₀ is trained on the largest robot interaction dataset to date, combining three key data sources: 1. **Internet-Scale Pre-training**: Vision-language data from the web for semantic understanding 2. **Open X-Embodiment Dataset**: Open-source robot manipulation datasets 3. **Physical Intelligence Dataset**: Large and diverse dataset of dexterous tasks across 8 distinct robots ## Usage To use π₀ in LeRobot, specify the policy type as: ```python policy.type=pi0 ``` ## Training For training π₀, you can use the standard LeRobot training script with the appropriate configuration: ```bash python src/lerobot/scripts/lerobot_train.py \ --dataset.repo_id=your_dataset \ --policy.type=pi0 \ --output_dir=./outputs/pi0_training \ --job_name=pi0_training \ --policy.pretrained_path=lerobot/pi0_base \ --policy.repo_id=your_repo_id \ --policy.compile_model=true \ --policy.gradient_checkpointing=true \ --policy.dtype=bfloat16 \ --steps=3000 \ --policy.device=cuda \ --batch_size=32 ``` ### Key Training Parameters - **`--policy.compile_model=true`**: Enables model compilation for faster training - **`--policy.gradient_checkpointing=true`**: Reduces memory usage significantly during training - **`--policy.dtype=bfloat16`**: Use mixed precision training for efficiency - **`--batch_size=32`**: Batch size for training, adapt this based on your GPU memory - **`--policy.pretrained_path=lerobot/pi0_base`**: The base π₀ model you want to finetune, options are: - [lerobot/pi0_base](https://huggingface.co/lerobot/pi0_base) - [lerobot/pi0_libero](https://huggingface.co/lerobot/pi0_libero) (specifically trained on the Libero dataset) ## License This model follows the **Apache 2.0 License**, consistent with the original [OpenPI repository](https://github.com/Physical-Intelligence/openpi).