Dataset Viewer
Auto-converted to Parquet Duplicate
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
End of preview. Expand in Data Studio

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}, 
  }
Downloads last month
200

Paper for flowm123/blockworld