Datasets:
episode_id string | num_frames int64 | num_pt_files int64 | num_mp4_files int64 | num_rgb_mp4 int64 | num_map_2d_mp4 int64 | episode_path string | data_files list | video_files list | shard_file string |
|---|---|---|---|---|---|---|---|---|---|
0 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/0 | [
"sunday_v2_training/0/0000_actions.pt",
"sunday_v2_training/0/0000_depth.pt",
"sunday_v2_training/0/0001_actions.pt",
"sunday_v2_training/0/0001_depth.pt",
"sunday_v2_training/0/0002_actions.pt",
"sunday_v2_training/0/0002_depth.pt",
"sunday_v2_training/0/0003_actions.pt",
"sunday_v2_training/0/0003_d... | [
"sunday_v2_training/0/0000_map_2d.mp4",
"sunday_v2_training/0/0000_rgb.mp4",
"sunday_v2_training/0/0001_map_2d.mp4",
"sunday_v2_training/0/0001_rgb.mp4",
"sunday_v2_training/0/0002_map_2d.mp4",
"sunday_v2_training/0/0002_rgb.mp4",
"sunday_v2_training/0/0003_map_2d.mp4",
"sunday_v2_training/0/0003_rgb.... | dynamic/sunday_v2_training/0.tar |
1 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/1 | [
"sunday_v2_training/1/0000_actions.pt",
"sunday_v2_training/1/0000_depth.pt",
"sunday_v2_training/1/0001_actions.pt",
"sunday_v2_training/1/0001_depth.pt",
"sunday_v2_training/1/0002_actions.pt",
"sunday_v2_training/1/0002_depth.pt",
"sunday_v2_training/1/0003_actions.pt",
"sunday_v2_training/1/0003_d... | [
"sunday_v2_training/1/0000_map_2d.mp4",
"sunday_v2_training/1/0000_rgb.mp4",
"sunday_v2_training/1/0001_map_2d.mp4",
"sunday_v2_training/1/0001_rgb.mp4",
"sunday_v2_training/1/0002_map_2d.mp4",
"sunday_v2_training/1/0002_rgb.mp4",
"sunday_v2_training/1/0003_map_2d.mp4",
"sunday_v2_training/1/0003_rgb.... | dynamic/sunday_v2_training/1.tar |
10 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/10 | [
"sunday_v2_training/10/0000_actions.pt",
"sunday_v2_training/10/0000_depth.pt",
"sunday_v2_training/10/0001_actions.pt",
"sunday_v2_training/10/0001_depth.pt",
"sunday_v2_training/10/0002_actions.pt",
"sunday_v2_training/10/0002_depth.pt",
"sunday_v2_training/10/0003_actions.pt",
"sunday_v2_training/1... | [
"sunday_v2_training/10/0000_map_2d.mp4",
"sunday_v2_training/10/0000_rgb.mp4",
"sunday_v2_training/10/0001_map_2d.mp4",
"sunday_v2_training/10/0001_rgb.mp4",
"sunday_v2_training/10/0002_map_2d.mp4",
"sunday_v2_training/10/0002_rgb.mp4",
"sunday_v2_training/10/0003_map_2d.mp4",
"sunday_v2_training/10/0... | dynamic/sunday_v2_training/10.tar |
11 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/11 | [
"sunday_v2_training/11/0000_actions.pt",
"sunday_v2_training/11/0000_depth.pt",
"sunday_v2_training/11/0001_actions.pt",
"sunday_v2_training/11/0001_depth.pt",
"sunday_v2_training/11/0002_actions.pt",
"sunday_v2_training/11/0002_depth.pt",
"sunday_v2_training/11/0003_actions.pt",
"sunday_v2_training/1... | [
"sunday_v2_training/11/0000_map_2d.mp4",
"sunday_v2_training/11/0000_rgb.mp4",
"sunday_v2_training/11/0001_map_2d.mp4",
"sunday_v2_training/11/0001_rgb.mp4",
"sunday_v2_training/11/0002_map_2d.mp4",
"sunday_v2_training/11/0002_rgb.mp4",
"sunday_v2_training/11/0003_map_2d.mp4",
"sunday_v2_training/11/0... | dynamic/sunday_v2_training/11.tar |
12 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/12 | ["sunday_v2_training/12/0000_actions.pt","sunday_v2_training/12/0000_depth.pt","sunday_v2_training/1(...TRUNCATED) | ["sunday_v2_training/12/0000_map_2d.mp4","sunday_v2_training/12/0000_rgb.mp4","sunday_v2_training/12(...TRUNCATED) | dynamic/sunday_v2_training/12.tar |
13 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/13 | ["sunday_v2_training/13/0000_actions.pt","sunday_v2_training/13/0000_depth.pt","sunday_v2_training/1(...TRUNCATED) | ["sunday_v2_training/13/0000_map_2d.mp4","sunday_v2_training/13/0000_rgb.mp4","sunday_v2_training/13(...TRUNCATED) | dynamic/sunday_v2_training/13.tar |
14 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/14 | ["sunday_v2_training/14/0000_actions.pt","sunday_v2_training/14/0000_depth.pt","sunday_v2_training/1(...TRUNCATED) | ["sunday_v2_training/14/0000_map_2d.mp4","sunday_v2_training/14/0000_rgb.mp4","sunday_v2_training/14(...TRUNCATED) | dynamic/sunday_v2_training/14.tar |
15 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/15 | ["sunday_v2_training/15/0000_actions.pt","sunday_v2_training/15/0000_depth.pt","sunday_v2_training/1(...TRUNCATED) | ["sunday_v2_training/15/0000_map_2d.mp4","sunday_v2_training/15/0000_rgb.mp4","sunday_v2_training/15(...TRUNCATED) | dynamic/sunday_v2_training/15.tar |
16 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/16 | ["sunday_v2_training/16/0000_actions.pt","sunday_v2_training/16/0000_depth.pt","sunday_v2_training/1(...TRUNCATED) | ["sunday_v2_training/16/0000_map_2d.mp4","sunday_v2_training/16/0000_rgb.mp4","sunday_v2_training/16(...TRUNCATED) | dynamic/sunday_v2_training/16.tar |
17 | 256 | 512 | 512 | 256 | 256 | sunday_v2_training/17 | ["sunday_v2_training/17/0000_actions.pt","sunday_v2_training/17/0000_depth.pt","sunday_v2_training/1(...TRUNCATED) | ["sunday_v2_training/17/0000_map_2d.mp4","sunday_v2_training/17/0000_rgb.mp4","sunday_v2_training/17(...TRUNCATED) | dynamic/sunday_v2_training/17.tar |
Block World Dataset
This repository contains the Block World dataset for experiments of FloWM (Flow Equivariant World Models), presented in the paper Flow Equivariant World Models: Memory for Partially Observed Dynamic Environments.
Project Page | GitHub Repository
Dataset Summary
The Block World dataset is a 3D partially observed video world modeling benchmark. It is designed to evaluate how world models handle continuous sensory input and underlying symmetries in environment dynamics. The dataset includes three main configurations:
- dynamic: The primary environment used for results in the paper, featuring moving objects.
- static: A version of the environment with static external objects.
- tex: A textured version of the environment to test visual complexity.
Each configuration contains both train and validation splits.
Usage
To use this dataset with the FloWM framework, the authors provide a download script in the associated GitHub repository to handle the extraction and setup of the data. For more details, please refer to the official code repository.
Citation
@misc{lillemark2026flowequivariantworldmodels,
title={Flow Equivariant World Models: Memory for Partially Observed Dynamic Environments},
author={Hansen Jin Lillemark and Benhao Huang and Fangneng Zhan and Yilun Du and Thomas Anderson Keller},
year={2026},
eprint={2601.01075},
archivePrefix={arXiv},
primaryClass={cs.LG},
url={https://arxiv.org/abs/2601.01075},
}
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