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36
video
video
quality_label
stringclasses
3 values
data_source
stringclasses
11 values
task
stringclasses
104 values
is_robot
stringclasses
2 values
partial_success
stringclasses
1 value
ba8aaab1-1dbb-4f49-bb54-bbbc57b1632a
success
usc_trossen
Open the bottle
true
595a1d8a-3e40-4b20-8a5d-d4b14a238c96
success
usc_trossen
Open the bottle
true
ff1882f4-bb4f-4e08-89d7-9d845c613ca9
failure
usc_trossen
Open the bottle
true
cdd7e610-205e-4b42-ab63-e67212e5059e
success
usc_trossen
Open the bottle
true
e5fb702b-9bba-433b-b0ce-e37862319749
failure
usc_trossen
Open the bottle
true
43ba66cc-02a0-441e-bb77-8f1a0f8583db
success
usc_trossen
Open the red drawer
true
2ec074f9-df24-404e-9785-83c30064ee1c
success
usc_trossen
Open the red drawer
true
9faec4cc-620b-447f-ade5-943d0a610106
success
usc_trossen
Open the red drawer
true
492f70af-ea55-4820-8aaa-c59a5f7aefd5
failure
usc_trossen
Open the red drawer
true
165ad587-55b7-4220-b03c-0fc856db2672
failure
usc_trossen
Open the red drawer
true
d7dc17a2-ea4b-48d6-b5ce-c484124129a2
suboptimal
usc_trossen
Open the red drawer
true
c4d62758-a220-4778-a391-5618cf03ff32
suboptimal
usc_trossen
Open the red drawer
true
7b5427d8-f184-46f4-95b8-9628788e334a
suboptimal
usc_trossen
Remove the lid from the pot
true
ccb24ed9-ba09-4de0-a388-c6a2e7b16ea7
success
usc_trossen
Remove the lid from the pot
true
7236a540-b7ed-49b0-a30a-25b8cb78a8d9
success
usc_trossen
Remove the lid from the pot
true
5e1024ed-13a7-4526-84ad-46744cb5c975
suboptimal
usc_trossen
Remove the lid from the pot
true
70598bda-1b06-469e-acc2-8207e178df25
success
usc_trossen
Unzip the pencil case
true
6739a54f-8bdf-4a77-bc46-2c37e61de27c
success
usc_trossen
Stir the pot
true
f6f22023-d07e-495d-ba49-7448271549c1
success
usc_trossen
Uncap the red pen
true
8906e1e0-14df-4cb3-b82e-baf44e77224b
failure
usc_trossen
Unzip the pencil case
true
64acd444-2d38-476a-82ee-05fbcbf1edf1
success
usc_trossen
Stir the pot
true
c10082eb-bddf-4faf-9a0f-de7f8d6f2cdb
success
usc_trossen
Stir the pot
true
4d984596-5a93-468d-8ba0-7279ffeb3b52
failure
usc_trossen
Unzip the pencil case
true
299ab523-67f7-42a2-a3d6-fd41b6904156
suboptimal
usc_trossen
Unzip the pencil case
true
8556e043-8f10-4fa1-8775-1f7a22fb50db
success
usc_trossen
Unzip the pencil case
true
2378544f-0f0c-4082-a234-a53780f6a1e2
suboptimal
usc_trossen
Unzip the pencil case
true
abe808eb-ae29-4ee4-8c52-39acc7cab0d5
success
usc_trossen
Unzip the pencil case
true
af8e981a-cc51-4a99-a480-19d983a2717c
suboptimal
mit_franka
Fold the towel in half
true
96ab1419-1ec9-4087-922f-1dbf1a525672
suboptimal
mit_franka
Fold the towel in half
true
cd25d49d-5e08-4853-98b0-6019255b4cd3
suboptimal
mit_franka
Fold the towel in half
true
f5783e2f-aba4-4d40-a4dc-6da0e9f3496e
suboptimal
mit_franka
Fold the towel in half
true
e63ffda5-d950-4245-9663-8f9a346545f2
suboptimal
mit_franka
Fold the towel in half
true
c971760c-98f1-4096-8bae-55ecdb5d01df
suboptimal
mit_franka
Fold the towel in half
true
2ff16175-2c8d-4c59-baef-9d443cd8ea6f
suboptimal
mit_franka
Fold the towel in half
true
a8257357-a3e5-4d5c-b206-b0be98fc166c
suboptimal
mit_franka
Fold the towel in half
true
6a8cdc28-bf44-42b4-b097-051dd44c9889
suboptimal
mit_franka
Fold the towel in half
true
55f987f3-066a-470d-a857-f890bed84650
suboptimal
mit_franka
Fold the towel in half
true
d9a3f674-eb65-40f3-bc33-617e66c44055
suboptimal
mit_franka
Fold the towel in half
true
038a8d09-5ad9-418b-8917-6f37a0b801ea
suboptimal
mit_franka
Fold the towel in half
true
0d3ee393-588b-498f-a6b3-5b2dea902344
suboptimal
mit_franka
Fold the towel in half
true
1f82f8c3-0131-4388-a546-ba0a80c19345
suboptimal
mit_franka
Fold the towel in half
true
30fae6e2-8dd3-4c0c-9f26-181ef455ae70
suboptimal
mit_franka
Fold the towel in half
true
823355fe-f291-4a0c-b036-573c85f7f007
suboptimal
mit_franka
Fold the towel in half
true
975afd7a-d92f-4ca3-a166-920add1c11d2
suboptimal
mit_franka
Fold the towel in half
true
65632895-92f6-46b1-9223-7cdc60624bf2
suboptimal
mit_franka
Fold the towel in half
true
4b07ad4c-dab7-4cdc-a49a-c349a448693a
suboptimal
mit_franka
Fold the towel in half
true
a411fc3a-41ea-4e8f-a3ba-32fc977f5cd2
suboptimal
mit_franka
Fold the towel in half
true
db8a8e29-fa5f-4a52-b0ba-690921b90d4c
suboptimal
mit_franka
Fold the towel in half
true
5e1eaf6c-7449-478c-9adc-e01384a2af61
suboptimal
mit_franka
Fold the towel in half
true
75d9f8d9-e0bd-4aea-8c02-6e322553aead
suboptimal
mit_franka
Fold the towel in half
true
8d45f957-06b1-4128-ba44-44ca92684320
suboptimal
mit_franka
Fold the towel in half
true
9763e517-1201-4792-b37a-202d25938fc3
failure
mit_franka
Fold the towel in half
true
909b6424-7899-4015-8b82-b4acdd26a08e
failure
mit_franka
Fold the towel in half
true
8597c3eb-cf19-4dbd-926e-12494137a5d0
failure
mit_franka
Fold the towel in half
true
639f42d5-7624-4934-a4d9-d009478934d0
failure
mit_franka
Fold the towel in half
true
03c1d0c0-31c4-426e-b8ab-8ef851385dad
failure
mit_franka
Fold the towel in half
true
ebadee4b-42af-4a32-b7bc-e8f7d04b91e4
failure
mit_franka
Fold the towel in half
true
f9855fe4-8e7c-4ad6-8ef0-c29a3429cd62
failure
mit_franka
Fold the towel in half
true
5363735a-c541-41a4-a868-f8c4ea43abbb
failure
mit_franka
Fold the towel in half
true
8a1ff651-3b0b-4f4f-9184-9cd1c51185b9
success
mit_franka
Fold the towel in half
true
e9b641f0-3fec-4c69-b38d-89cead58e396
success
mit_franka
Fold the towel in half
true
e55766dc-0613-43bd-a3e7-211eb544a657
success
mit_franka
Fold the towel in half
true
8f36d407-6ff3-4474-a947-8506ecd4e9e5
success
mit_franka
Fold the towel in half
true
4fd63eb9-9896-4102-8c98-37bb2ac073fd
success
mit_franka
Fold the towel in half
true
5e697122-e19d-45ea-86cf-0871c857ee61
success
mit_franka
Fold the towel in half
true
4b81766b-c37c-4f1a-b2a3-ad3a185254a9
success
mit_franka
Fold the towel in half
true
c3f86cee-78f1-4936-a898-3efa765b6f74
success
mit_franka
Fold the towel in half
true
8379cf14-e6cc-4e46-b9d5-0a2dd5b730f0
success
mit_franka
Fold the towel in half
true
3cdb8094-25d6-4cb0-af1a-186ef615e166
success
mit_franka
Fold the towel in half
true
7ed7736e-c49e-4564-97ec-ccb47396273f
success
mit_franka
Fold the towel in half
true
507cd59b-8c58-4fd9-ab9f-515917223aaa
success
mit_franka
Fold the towel in half
true
2bc5e8c7-c2a3-4b17-8525-7324a6148ff2
success
mit_franka
Fold the towel in half
true
0edd8549-aeb1-461e-9b09-700c10e228c9
success
mit_franka
Fold the towel in half
true
961bcd46-4229-4760-91bd-42e230240e10
success
mit_franka
Fold the towel in half
true
40e7f1a4-63d9-4fc4-b9c6-592e60729247
success
mit_franka
Fold the towel in half
true
4361beb1-0dbf-4317-a2fd-bec6e8c3f704
success
mit_franka
Fold the towel in half
true
5f4d2040-4d49-4261-97ea-1be1b325b1d1
success
mit_franka
Fold the towel in half
true
b7a9313e-3307-4ee5-8857-1f0a617af200
success
mit_franka
Fold the towel in half
true
113d4e85-109f-4cbf-9b81-bbf9658d988c
success
mit_franka
Fold the towel in half
true
efc6599b-859c-4c44-8df1-05083d2a7ad9
success
mit_franka
Fold the towel in half
true
8a3a86cb-cede-479c-8e35-cf8e7e15849f
success
mit_franka
Fold the towel in half
true
46411ec2-c410-47cf-a47f-a719cb00f777
success
mit_franka
Fold the towel in half
true
56f29671-5c36-46f0-861c-7801bcb1f602
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
c3aed4b3-db2b-41a1-b20d-5b749c828e12
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
72b96b6e-f5a8-4b4a-b499-9e543200dffa
success
mit_franka
Fold the towel in half
true
74bf619e-1d77-45f3-9bb6-dfdb7af24c0c
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
2f417d2d-7257-4f07-a7b9-bac5608783f0
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
8686ed02-e1d0-4642-8700-2c1b5aea02ad
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
c28fed31-6fa2-4d85-9f55-2a3cb6547981
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
aaa42a3d-d96b-49b8-b3b9-b6c2fe27b962
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
ef82f0bd-d7ff-499f-ae07-2f87ba4d0d25
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
8dd376b5-1779-4d96-b683-ceba604b058b
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
3fecbecc-b4d8-4da5-88cc-e0706c219f06
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
caee5b45-c802-4298-a3de-2cee2e330deb
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
d6009b22-6ee4-4c3b-84b6-e09e0322ce3b
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
2476f31c-7a2d-48a6-949e-48cb19fbec15
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
d348d529-df22-462b-ac47-16d427f2c2b2
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
2dacf8cd-73e8-4226-a50b-fa16631deea5
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
d2f6d486-4072-40d5-b752-d62d6a13c176
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
e71f6cd0-53e9-45dc-97af-e457e554513c
suboptimal
mit_franka
Pick up the banana from the blue plate and place it on the green plate
true
End of preview. Expand in Data Studio

RBM-1M-OOD evaluation dataset used in Robometer. It contains over 1k trajectories used for evaluation of general-purpose reward models.

Dataset Description

Official evaluation in the paper uses only these 6 data sources: usc_trossen, mit_franka, utd_so101, usc_xarm, usc_franka, usc_koch. Reported benchmarks and metrics in the paper are computed on this subset.

The repository may also include trajectories from additional data sources (e.g. utd_so101_wrist, usc_koch_paired, utd_so101_clutter, utd_so101_human, usc_koch_rewind_og) for the full dataset. Filter by data_source to restrict to the 6 eval sources when reproducing paper results.

Each row has a video (MP4) and metadata including task, quality label (success/failure/suboptimal), and data source.

Dataset Structure

The repo follows the VideoFolder layout with one subset (split) per data source:

  • usc_trossen/*.mp4, usc_trossen/metadata.parquet — USC Trossen
  • mit_franka/*.mp4, mit_franka/metadata.parquet — MIT Franka
  • utd_so101/, usc_xarm/, usc_franka/, usc_koch/ — and other sources
  • meta/info.json — dataset schema and split info

Load a single source: load_dataset("videofolder", data_dir="robometer/rbm-1m-ood", split="usc_trossen").

meta/info.json (generated on upload):

{
  "dataset_name": "rbm-1m-ood-eval",
  "total_videos": "<total>",
  "splits": { "usc_trossen": "0:N1", "mit_franka": "0:N2", ... },
  "video_path": "{split}/{file_name}",
  "metadata_path": "{split}/metadata.parquet",
  "eval_data_sources": ["usc_trossen", "mit_franka", "utd_so101", "usc_xarm", "usc_franka", "usc_koch"],
  "data_sources": ["... full list of all sources in repo ..."],
  "features": {
    "id": { "dtype": "string", "description": "Unique identifier (UUID)" },
    "file_name": { "dtype": "string", "description": "Video filename in split folder" },
    "quality_label": { "dtype": "string", "description": "success, failure, or suboptimal" },
    "data_source": { "dtype": "string", "description": "Source dataset" }
  }
}

Key metadata columns:

Column Description
id Unique identifier (UUID)
file_name Video filename (e.g. video_000000.mp4)
quality_label success, failure, or suboptimal
data_source Source identifier. Eval (paper): usc_trossen, mit_franka, utd_so101, usc_xarm, usc_franka, usc_koch. Additional sources may appear in the full dataset.

Load with the datasets library (one subset per data source; use split=<data_source>):

from datasets import load_dataset
# Load a single data source (subset)
ds = load_dataset("videofolder", data_dir="robometer/rbm-1m-ood", split="usc_trossen")
# Or load multiple and concatenate
eval_sources = ["usc_trossen", "mit_franka", "utd_so101", "usc_xarm", "usc_franka", "usc_koch"]
ds_list = [load_dataset("videofolder", data_dir="robometer/rbm-1m-ood", split=s) for s in eval_sources]
from datasets import concatenate_datasets
ds_eval = concatenate_datasets(ds_list)

Citation

BibTeX:

@article{liang2026robometer,
  title={Robometer: Scaling General-Purpose Robotic Reward Models via Trajectory Comparisons},
  author={Liang, Anthony and Korkmaz, Yigit and Zhang, Jiahui and Hwang, Minyoung and Anwar, Abrar and Kaushik, Sidhant and Shah, Aditya and Huang, Alex S. and Zettlemoyer, Luke and Fox, Dieter and Xiang, Yu and Li, Anqi and Bobu, Andreea and Gupta, Abhishek and Tu, Stephen and Biyik, Erdem and Zhang, Jesse},
  journal={arXiv preprint arXiv:2603.02115},
  year={2026}
}
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Paper for robometer/rbm-1m-ood