Record Demo0714 4 Act Policy is a robotics policy model that implements action chunking with transformers. Below are 8 other ai apps with similar functionality to Record Demo0714 4 Act Policy, matched by what each product actually does — not ranked or scored. Explore each to find the closest fit for your use case.
record-demo0714_2_act_policy is an open-source imitation learning model for robotics, implementing action chunking with transformers. It allows researchers and developers to train, evaluate, and deploy policies for robotic control using teleoperated data. The model is accessible via API and Python libraries.
record-demo0714_3_act_policy is an open-source imitation learning policy model for robotics, trained using the LeRobot framework. It predicts action chunks for robotic control and is intended for researchers and developers working on robotic automation and learning from demonstration.
act-record-test-test is an open-source imitation learning model for robotics, implementing action chunking with transformers. It enables developers to train and deploy policies that predict short action sequences from teleoperated data, improving robotic task performance.
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 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_dg5f_1.25sqblue_60 is an open-source robotics policy model based on imitation learning and action chunking. It enables robotics researchers to automate control tasks by predicting short action sequences from teleoperated data. The model is compatible with LeRobot and supports local inference.
act_policy_so101_cube_multitask_0710 is an open-source robotics policy model for multitask cube manipulation, leveraging imitation learning and transformer architectures. It integrates with LeRobot and is intended for robotics researchers and developers.
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.