diff --git a/src/lerobot/templates/lerobot_modelcard_template.md b/src/lerobot/templates/lerobot_modelcard_template.md index 9293d6ba7..9edd4bce7 100644 --- a/src/lerobot/templates/lerobot_modelcard_template.md +++ b/src/lerobot/templates/lerobot_modelcard_template.md @@ -23,6 +23,26 @@ [Pi0](https://huggingface.co/papers/2410.24164) is a generalist vision-language-action transformer that converts multimodal observations and text instructions into robot actions for zero-shot task transfer. {% elif model_name == "pi0fast" %} [Pi0-Fast](https://huggingface.co/papers/2501.09747) is a variant of Pi0 that uses a new tokenization method called FAST, which enables training of an autoregressive vision-language-action policy for high-frequency robotic tasks with improved performance and reduced training time. +{% elif model_name == "pi0_openpi" %} +**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 repository. + +**Model Overview** + +π₀ represents a breakthrough in robotics as the first general-purpose robot foundation model developed by Physical Intelligence. Unlike traditional robots 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. + +For more details, see the [Physical Intelligence π₀ blog post](https://www.physicalintelligence.company/blog/pi0). +{% elif model_name == "pi05_openpi" %} +**π₀.₅ (Pi05) Policy** + +π₀.₅ is a Vision-Language-Action model with open-world generalization, from Physical Intelligence. The LeRobot implementation is adapted from their open source OpenPI repository. + +**Model Overview** + +π₀.₅ represents a significant evolution from π₀, developed by Physical Intelligence to address a big challenge in robotics: open-world generalization. While robots can perform impressive tasks in controlled environments, π₀.₅ is designed to generalize to entirely new environments and situations that were never seen during training. + +For more details, see the [Physical Intelligence π₀.₅ blog post](https://www.physicalintelligence.company/blog/pi05). {% elif model_name == "sac" %} [Soft Actor-Critic (SAC)](https://huggingface.co/papers/1801.01290) is an entropy-regularised actor-critic algorithm offering stable, sample-efficient learning in continuous-control environments. {% elif model_name == "reward_classifier" %}