--- license: apache-2.0 --- # Dataset Card for Pong-v4-expert-MCTS ## Table of Contents - [Supported Tasks and Baseline](#support-tasks-and-baseline) - [Data Usage](#data-usage) - [Data Discription](##data-description) - [Data Fields](##data-fields) - [Data Splits](##data-splits) - [Initial Data Collection and Normalization](##Initial-Data-Collection-and-Normalization) - [Additional Information](#Additional-Information) - [Who are the source data producers?](##Who-are-the-source-data-producers) - [Social Impact of Dataset](##Social-Impact-of-Dataset) - [Known Limitations](##Known-Limitations) - [Licensing Information](##Licensing-Information) - [Citation Information](##Citation-Information) - [Contributions](##Contributions) ## Supported Tasks and Baseline - This dataset supports the training for [Procedure Cloning (PC )](https://arxiv.org/abs/2205.10816) algorithm. - Baselines when sequence length for decision is 0: | Train loss | Test Acc | Reward | | -------------------------------------------------- | -------- | ------ | | ![feature](./sup_loss.png) | 0.90 | 20 | - Baselines when sequence length for decision is 4: | Train action loss | Train hidden state loss | Train acc (auto-regressive mode) | Reward | | ----------------------------------------------------- | ------------------------------------------------- | --------------------------------------------------- | ------ | | ![feature](./action_loss.png) | ![feature](./hs_loss.png) | ![feature](./train_acc.png) | -21 | ## Data Usage ### Data description This dataset includes 8 episodes of pong-v4 environment. The expert policy is [EfficientZero](https://arxiv.org/abs/2111.00210), which is able to generate MCTS hidden states. Because of the contained hidden states for each observation, this dataset is suitable for Imitation Learning methods that learn from a sequence like PC. ### Data Fields - `obs`: An Array3D containing observations from 8 trajectories of an evaluated agent. The data type is uint8 and each value is in 0 to 255. The shape of this tensor is [96, 96, 3], that is, the channel dimension in the last dimension. - `actions`: An integer containing actions from 8 trajectories of an evaluated agent. This value is from 0 to 5. Details about this environment can be viewed at [Pong - Gym Documentation](https://www.gymlibrary.dev/environments/atari/pong/). - `hidden_state`: An Array3D containing corresponding hidden states generated by EfficientZero, from 8 trajectories of an evaluated agent. The data type is float32. This is an example for loading the data using iterator: ```python from safetensors import saveopen def generate_examples(self, filepath): data = {} with safe_open(filepath, framework="pt", device="cpu") as f: for key in f.keys(): data[key] = f.get_tensor(key) for idx in range(len(data['obs'])): yield idx, { 'observation': data['obs'][idx], 'action': data['actions'][idx], 'hidden_state': data['hidden_state'][idx], } ``` ### Data Splits There is only a training set for this dataset, as evaluation is undertaken by interacting with a simulator. ### Initial Data Collection and Normalization - This dataset is collected by EfficientZero policy. - The standard for expert data is that each return of 8 episodes is over 20. - No normalization is previously applied ( i.e. each value of observation is a uint8 scalar in [0, 255] ) ## Additional Information ### Who are the source language producers? [@kxzxvbk](https://huggingface.co/kxzxvbk) ### Social Impact of Dataset - This dataset can be used for Imitation Learning, especially for algorithms that learn from a sequence. - Very few dataset is open-sourced currently for MCTS based policy. - This dataset can potentially promote the research for sequence based imitation learning algorithms. ### Known Limitations - This dataset is only used for academic research. - For any commercial use or other cooperation, please contact: opendilab@pjlab.org.cn ### License This dataset is under [Apache License 2.0](https://www.apache.org/licenses/LICENSE-2.0). ### Citation Information ``` @misc{Pong-v4-expert-MCTS, title={{Pong-v4-expert-MCTS: OpenDILab} A dataset for Procedure Cloning algorithm using Pong-v4.}, author={Pong-v4-expert-MCTS Contributors}, publisher = {huggingface}, howpublished = {\url{https://huggingface.co/datasets/OpenDILabCommunity/Pong-v4-expert-MCTS}}, year={2023}, } ``` ### Contributions This data is partially based on the following repo, many thanks to their pioneering work: - https://github.com/opendilab/DI-engine - https://github.com/opendilab/LightZero Please view the [doc](https://github.com/huggingface/datasets/blob/main/CONTRIBUTING.md#how-to-contribute-to-the-dataset-cardsHow) for anyone who want to contribute to this dataset.