act_policy_so101_cube_multitask_0710 is an open-source robotics policy model for multitask cube manipulation, leveraging imitation learning and transformer architectures. Below are 14 other ai apps with similar functionality to Act Policy So101 Cube Multitask 0710, matched by what each product actually does — not ranked or scored. Explore each to find the closest fit for your use case.
act_so101_cube_left_right_v2 is an open-source imitation-learning model for robotics, designed to predict and execute action chunks based on teleoperated data. It supports integration with robotics frameworks and is suitable for researchers and developers working on robotic control and policy learning.
so101_pick_cube_v2_act is an open-source robotics model implementing action chunking with transformers for imitation learning. It predicts short action sequences for robotic manipulation, enabling efficient policy inference and training. Designed for robotics researchers and developers, it integrates with LeRobot and supports evaluation and further training.
act_policy_test4 is an open-source imitation-learning policy model designed for robotics applications, focusing on predicting short action chunks from teleoperated data. It can be integrated with LeRobot and other frameworks for training, evaluation, and deployment in robotics workflows. Ideal for robotics researchers and developers seeking ready-to-use policy models.
act_so101_pick_cube_v2 is an open-source imitation learning model designed for robotics applications. It predicts short action chunks for robots, enabling them to perform complex tasks by learning from teleoperated demonstrations. The model is available on Hugging Face under an Apache-2.0 license and can be integrated with robotics libraries such as LeRobot. It is intended for robotics researchers and developers seeking advanced policy models for robot control.
Act So101 Pick Cube is a model available on Hugging Face that implements Action Chunking with Transformers (ACT), an imitation-learning approach for robotics. The ACT method predicts short sequences of actions, referred to as action chunks, rather than individual steps. This technique is designed to learn from teleoperated data, enabling the model to achieve high success rates in robotic tasks. The policy represented by Act So101 Pick Cube has been trained and published using the LeRobot platform, and users are provided with instructions for utilizing the model through various libraries, inference providers, notebooks, and local applications. The documentation points to resources for running the policy on a robot or training a custom policy, with support for platforms such as Google Colab and Kaggle. The model is licensed under the Apache 2.0 license. The evidence also notes that the model is associated with a specific robot type, labeled as so_f. Further technical details, such as the training dataset and configuration, are referenced in the model documentation and linked arXiv paper. No information is provided about pricing, user roles, or specific deployment requirements beyond the platforms and libraries named.
Act Policy is a model available on Hugging Face that implements Action Chunking with Transformers (ACT), an imitation learning approach designed to predict short sequences of actions, referred to as action chunks, rather than individual steps. The method is trained using teleoperated data, with the goal of achieving high success rates in robotic tasks. According to the evidence, this policy has been trained and uploaded to the Hugging Face Hub using LeRobot, a named library that can be used to train and run the model. The referenced robot type for this policy is 'omx_follower,' and it utilizes input from a camera labeled 'camera2.' The model is distributed under the Apache 2.0 license, making it open source. Users are provided with instructions for integrating the model with libraries, inference providers, notebooks, and local applications, with specific mentions of Google Colab and Kaggle as platforms where the model can be used. The evidence also points to documentation and guides for training and deploying the policy with LeRobot. No additional details about broader compatibility, pricing beyond the open-source license, or intended audience are explicitly stated in the evidence.
act_so101_test is an open-source imitation-learning model for robotics, focusing on action chunking and policy inference. It is designed for robotics researchers and developers to train and evaluate robotic policies using open weights and Python integration.
act_task1_v2 is an open-source imitation learning policy for robotics, trained to predict action chunks from teleoperated data. It is designed for use with LeRobot and supports local inference and further training by robotics researchers and engineers.
so101_train_ACT_2cam_PCLab_100ep_khoa_policy is an open-source imitation-learning policy model for robotics, trained to predict action chunks from teleoperated data. It is intended for robotics researchers and developers using the LeRobot framework.
act_so101_rubik_v2 is an open-source robotics policy based on imitation learning and action chunking with transformers. It enables robots to learn and perform complex tasks by predicting short action sequences from teleoperated data. The model is suitable for robotics researchers and developers seeking advanced control policies.
bluecube_101_merged_policy is an open-source robotics policy model trained with imitation learning techniques. It enables researchers and developers to implement and evaluate advanced robot control strategies using open weights and Python integration.
Cube To Cup Act is a robotics policy model based on imitation learning, designed to predict short sequences of actions—referred to as action chunks—rather than single-step actions. This approach enables the model to learn from teleoperated data and is intended to achieve high success rates in robotic tasks. The model has been trained and made available through the Hugging Face Hub, and it is associated with the LeRobot library, which provides guidance on training and deploying the policy. The tool is delivered as a model that can be used with various libraries, inference providers, notebooks, and local applications. Specific instructions are provided for integration with LeRobot, and there are resources for running the policy on robots, training custom policies, and evaluating performance. The model card and documentation offer further details on usage and implementation. 0 license, making it available as open-source software. It is positioned within the field of robotics and imitation learning, with a focus on action chunking using transformer-based methods.
Record Demo0714 4 Act Policy is a robotics policy model that implements action chunking with transformers. The model is designed for imitation learning, predicting short sequences of actions, or "action chunks," rather than individual steps. This approach is intended to improve performance by learning from teleoperated data and is reported to often achieve high success rates. The policy has been trained and made available through the Hugging Face Hub, and it can be used with the LeRobot library. Users are provided with instructions for employing the model with various tools, including libraries, inference providers, notebooks, and local applications. There are specific guides for using the model with LeRobot, as well as resources for running training and inference in environments such as Google Colab and Kaggle. 0 license. Documentation and training guides are referenced for users seeking a more detailed walkthrough on how to train the model from scratch or evaluate its policy and run inference. The tool is positioned within the class of robotics policy models, with a focus on action chunking and imitation learning methods.
smolvla_so101_cube_put_take_20260710 is an open-source robotics policy model designed for cube put-and-take tasks, compatible with the LeRobot framework. It allows robotics researchers to run, fine-tune, and evaluate manipulation policies in simulation or on real robots.