Dataset Viewer
Auto-converted to Parquet Duplicate
Search is not available for this dataset
observation.state
list
action
list
timestamp
float32
0
36.4
frame_index
int64
0
182
episode_index
int64
0
103
index
int64
0
8.93k
task_index
int64
0
9
observation.images.image_dinov3
listlengths
1.02k
1.02k
observation.images.image_siglip2
listlengths
768
768
[ -0.8584561347961426, 0.31802669167518616, 0.2739325761795044, -2.3123061656951904, -1.3117130994796753, -2.303055763244629, 0, 0 ]
[ -0.01497174333781004, -0.02168373391032219, -0.025202296674251556, 0.0044517600908875465, -0.005345573183149099, 0.0015599298058077693, 1 ]
0
0
0
0
0
[ 0.21702925860881805, -0.24410754442214966, -0.43610262870788574, 0.11840837448835373, 0.22009184956550598, 0.28247594833374023, 0.4599978029727936, -0.36239373683929443, 0.05867975950241089, 1.6121212244033813, 0.11173469573259354, -0.34548357129096985, 0.18825393915176392, 0.5863971710205...
[ 0.337890625, 0.01025390625, -0.08984375, -0.005859375, 0.19921875, 0.01513671875, 0.119140625, -0.2890625, 0.251953125, -0.27734375, 0.142578125, 0.1572265625, -0.5234375, 0, -0.03271484375, 0.2890625, -0.09521484375, -0.298828125, 0.2265625, -0.107421875, -0.005859375, 0.2...
[ -0.8744093775749207, 0.2939780056476593, 0.24838778376579285, -2.308505058288574, -1.3048268556594849, -2.305155038833618, 0, 0 ]
[ -0.013590946793556213, -0.033613044768571854, -0.025966888293623924, -0.009546136483550072, -0.009760776534676552, -0.00008461243123747408, 1 ]
0.2
1
0
1
0
[ 0.3168259561061859, -0.01580975390970707, -0.6184158325195312, 0.10866103321313858, 0.30315542221069336, 0.3252614438533783, 0.5694523453712463, -0.2770661413669586, 0.23074159026145935, 1.5876433849334717, 0.05561070889234543, -0.2610302269458771, 0.1242959052324295, 0.5615805387496948, ...
[ 0.28125, 0.109375, -0.0625, -0.01171875, 0.23046875, -0.03076171875, 0.0966796875, -0.251953125, 0.212890625, -0.279296875, 0.205078125, 0.173828125, -0.470703125, -0.05078125, -0.05908203125, 0.22265625, -0.03662109375, -0.248046875, 0.255859375, -0.0712890625, -0.013671875,...
[ -0.8851749300956726, 0.2711086869239807, 0.21938456594944, -2.2565436363220215, -1.3050293922424316, -2.3554227352142334, 0, 0 ]
[ -0.005800128448754549, -0.03173680603504181, -0.03234405443072319, -0.011855841614305973, 0.0026364608202129602, 0.0005193124525249004, 1 ]
0.4
2
0
2
0
[ 0.3586689829826355, -0.1536002904176712, -0.38642141222953796, 0.1342547982931137, 0.36437785625457764, 0.34111329913139343, 0.5047447085380554, -0.3175066113471985, 0.20626822113990784, 1.7279220819473267, -0.06261251866817474, -0.25283634662628174, 0.12870343029499054, 0.5615893602371216...
[ 0.2734375, 0.013671875, -0.021484375, 0.005859375, 0.234375, 0.02294921875, 0.1533203125, -0.267578125, 0.248046875, -0.275390625, 0.125, 0.150390625, -0.4609375, -0.02734375, 0.0322265625, 0.2421875, -0.09765625, -0.32421875, 0.0859375, -0.00555419921875, 0.0400390625, 0.2...
[ -0.8875842690467834, 0.24926769733428955, 0.18824008107185364, -2.230787515640259, -1.3152010440826416, -2.3797740936279297, 0, 0 ]
[ 0.0015145983779802918, -0.03916577994823456, -0.03496907278895378, -0.027098892256617546, 0.009292272850871086, 0.00042907765600830317, 1 ]
0.6
3
0
3
0
[ 0.32670703530311584, -0.1017114445567131, -0.35511040687561035, 0.19047296047210693, 0.46856069564819336, 0.2836282551288605, 0.4830908179283142, -0.37120383977890015, 0.2700388431549072, 1.7936975955963135, 0.022852415218949318, -0.3354146480560303, 0.19776414334774017, 0.6346057057380676...
[ 0.341796875, 0.15234375, -0.08984375, -0.056640625, 0.15625, 0.02001953125, 0.0732421875, -0.2373046875, 0.296875, -0.26171875, 0.169921875, 0.154296875, -0.48828125, -0.001953125, 0.00341796875, 0.34375, -0.048828125, -0.287109375, 0.203125, -0.0179443359375, 0.044921875, ...
[ -0.8789077997207642, 0.2322990447282791, 0.1561795175075531, -2.173025608062744, -1.3402601480484009, -2.435288429260254, 0, 0 ]
[ 0.008465689606964588, -0.026809217408299446, -0.03538357466459274, -0.028719330206513405, 0.007594571448862553, 0.0001496863696957007, 1 ]
0.8
4
0
4
0
[ 0.26670607924461365, -0.03614689037203789, -0.3471199572086334, 0.10010264813899994, 0.40469056367874146, 0.2045813798904419, 0.5642626285552979, -0.3956756889820099, 0.07208175957202911, 1.6816015243530273, 0.005657184403389692, -0.2903113067150116, 0.1469738483428955, 0.5825260877609253,...
[ 0.36328125, 0.0732421875, -0.078125, -0.0302734375, 0.20703125, -0.039306640625, 0.0810546875, -0.25, 0.234375, -0.2734375, 0.13671875, 0.1025390625, -0.44921875, -0.01953125, 0.01953125, 0.25, -0.041259765625, -0.29296875, 0.22265625, -0.053955078125, -0.005859375, 0.08984...
[ -0.8633854389190674, 0.2294386774301529, 0.1228770911693573, -2.0905470848083496, -1.363996982574463, -2.515552043914795, 0, 0 ]
[ 0.016218768432736397, -0.014564095996320248, -0.031897932291030884, -0.023155072703957558, 0.00809122808277607, -0.000791827158536762, 1 ]
1
5
0
5
0
[ 0.31467416882514954, 0.05544346198439598, -0.3635790944099426, 0.2349839061498642, 0.35486528277397156, 0.09191087633371353, 0.6700883507728577, -0.334894061088562, 0.10219956189393997, 1.5320013761520386, -0.12361803650856018, -0.2740146219730377, 0.019536297768354416, 0.5922189950942993,...
[ 0.2734375, 0.087890625, -0.091796875, -0.037109375, 0.20703125, -0.00927734375, 0.109375, -0.255859375, 0.22265625, -0.21484375, 0.216796875, 0.15625, -0.498046875, -0.017578125, 0.032958984375, 0.21875, -0.045166015625, -0.2890625, 0.2421875, -0.1435546875, -0.009765625, 0...
[-0.8417216539382935,0.23380067944526672,0.0923134982585907,-2.0151374340057373,-1.3836032152175903,(...TRUNCATED)
[0.02260340005159378,0.005627562291920185,-0.028430402278900146,-0.003018807154148817,0.006985501386(...TRUNCATED)
1.2
6
0
6
0
[0.15680280327796936,0.05235711857676506,-0.554752767086029,0.16386690735816956,0.38576459884643555,(...TRUNCATED)
[0.291015625,0.1025390625,-0.16015625,-0.025390625,0.23046875,-0.05224609375,0.1396484375,-0.3007812(...TRUNCATED)
[-0.8181913495063782,0.2413175404071808,0.06745670735836029,-2.021226406097412,-1.3911316394805908,-(...TRUNCATED)
[0.024767043069005013,0.012665171176195145,-0.020872434601187706,-0.00012291014718357474,-0.00159885(...TRUNCATED)
1.4
7
0
7
0
[0.07162138819694519,0.08453743904829025,-0.566729724407196,0.07663416117429733,0.4811720550060272,0(...TRUNCATED)
[0.29296875,0.0048828125,-0.123046875,-0.0224609375,0.25,-0.00390625,0.16796875,-0.2158203125,0.2988(...TRUNCATED)
[-0.7933791279792786,0.2541908323764801,0.046387381851673126,-2.0159311294555664,-1.38983952999115,-(...TRUNCATED)
[0.021163977682590485,0.004935023840516806,-0.016227276995778084,-0.010800793766975403,-0.0093150334(...TRUNCATED)
1.6
8
0
8
0
[0.052889011800289154,0.12349790334701538,-0.606613278388977,0.040262993425130844,0.5045543909072876(...TRUNCATED)
[0.26953125,0.0166015625,-0.158203125,-0.0146484375,0.20703125,-0.01611328125,0.1484375,-0.306640625(...TRUNCATED)
[-0.7695670127868652,0.26810067892074585,0.02504628151655197,-1.9387470483779907,-1.3870744705200195(...TRUNCATED)
[0.021447930485010147,0.004712650552392006,-0.011227552779018879,-0.01103806309401989,-0.01571566984(...TRUNCATED)
1.8
9
0
9
0
[0.08798552304506302,0.207343190908432,-0.5905998945236206,0.14471858739852905,0.44156304001808167,0(...TRUNCATED)
[0.20703125,-0.05419921875,-0.103515625,-0.0078125,0.25,-0.024658203125,0.2109375,-0.248046875,0.283(...TRUNCATED)
End of preview. Expand in Data Studio

Language Table (LeRobot) — Embedding-Only Release (DINOv3 + SigLIP2 image features; EmbeddingGemma task-text features)

This repository packages a re-encoded variant of IPEC-COMMUNITY/dlr_edan_shared_control_lerobot where raw videos are replaced by fixed-length image embeddings, and task strings are augmented with text embeddings. All indices, splits, and semantics remain consistent with the source dataset while storage and I/O are substantially lighter. To make the dataset practical to upload/download and stream from the Hub, we also consolidated tiny per-episode Parquet files into N large Parquet shards under a single data/ folder. The file meta/sharded_index.json preserves a precise mapping from each original episode (referenced by a normalized identifier of the form data/chunk-{episode_chunk:03d}/episode_{episode_index:06d}.parquet) to its shard path and row range, so you keep original addressing without paying the small-file tax.

  • Robot: dlr_edan
  • Modalities kept: states, actions, timestamps, frame/episode indices, image embeddings, task-text embeddings
  • Removed:
  • observation.images.image
  • License: apache-2.0 (inherits from source)

Quick Stats

From meta/info.json and meta/task_text_embeddings_info.json:

  • Episodes: 104
  • Frames: 8,928
  • Tasks (unique): 10
  • Chunks (original layout): 1 (chunks_size=1000)
  • Shards (this release): 64 Parquet files under data/ (see meta/sharded_index.json)
  • FPS: 5
  • Image embeddings (per frame):
    • observation.images.image_dinov3 → float32 [1024] (DINOv3 ViT-L/16 CLS)
    • observation.images.image_siglip2 → float32 [768] (SigLIP2-base)
  • Task-text embeddings (per unique task):
    • embedding → float32 [768] from google/embeddinggemma-300m
    • Count: 10 rows (one per task)

Note: This is an embedding-only package. The original pixel arrays listed under “Removed” are dropped.


Contents
. 
|-- meta/
|   |-- info.json
|   |-- sharded_index.json
|   |-- tasks.jsonl
|   |-- episodes.jsonl
|   `-- task_text_embeddings_info.json
|-- data/
|   |-- shard-00000-of-000NN.parquet
|   |-- shard-00001-of-000NN.parquet
|   |-- ...
|   `-- task_text_embeddings.parquet
`-- README.md

How This Was Generated (Reproducible Pipeline)

  1. Episode → Image Embeddings (drop pixels) convert_lerobot_to_embeddings_mono.py (GPU-accelerated preprocessing). Adds:
  • observation.images.image_dinov3 (float32[1024])
  • observation.images.image_siglip2 (float32[768]) Removes:
  • observation.images.image
  1. Task-Text Embeddings (one row per unique task) build_task_text_embeddings.py with SentenceTransformer("google/embeddinggemma-300m") → data/task_text_embeddings.parquet + meta/task_text_embeddings_info.json.

  2. Data Consolidation (this release) All per-episode Parquets were consolidated into N large Parquet shards in one data/ folder.

  • The index meta/sharded_index.json records, for each episode, its normalized source identifier data/chunk-{episode_chunk:03d}/episode_{episode_index:06d}.parquet, the destination shard path, and the (row_offset, num_rows) range inside that shard.
  • This preserves original addressing while making Hub sync/clone/stream far faster and more reliable.

Metadata (Excerpts)

meta/task_text_embeddings_info.json

{
  "model": "google/embeddinggemma-300m",
  "dimension": 768,
  "normalized": true,
  "count": 10,
  "file": "task_text_embeddings.parquet"
}

meta/info.json (embedding-only + shards)

{
  "codebase_version": "v2.1-embeddings-sharded",
  "robot_type": "dlr_edan",
  "total_episodes": 104,
  "total_frames": 8928,
  "total_tasks": 10,
  "total_videos": 104,
  "total_chunks": 1,
  "chunks_size": 1000,
  "fps": 5,
  "splits": {
    "train": "0:104"
  },
  "data_path": "data/shard-{shard_id:05d}-of-{num_shards:05d}.parquet",
  "features": {
    "observation.state": {
      "dtype": "float32",
      "shape": [
        8
      ],
      "names": {
        "motors": [
          "x",
          "y",
          "z",
          "roll",
          "pitch",
          "yaw",
          "pad",
          "gripper"
        ]
      }
    },
    "action": {
      "dtype": "float32",
      "shape": [
        7
      ],
      "names": {
        "motors": [
          "x",
          "y",
          "z",
          "roll",
          "pitch",
          "yaw",
          "gripper"
        ]
      }
    },
    "timestamp": {
      "dtype": "float32",
      "shape": [
        1
      ],
      "names": null
    },
    "frame_index": {
      "dtype": "int64",
      "shape": [
        1
      ],
      "names": null
    },
    "episode_index": {
      "dtype": "int64",
      "shape": [
        1
      ],
      "names": null
    },
    "index": {
      "dtype": "int64",
      "shape": [
        1
      ],
      "names": null
    },
    "task_index": {
      "dtype": "int64",
      "shape": [
        1
      ],
      "names": null
    },
    "observation.images.image_dinov3": {
      "dtype": "float32",
      "shape": [
        1024
      ],
      "names": null
    },
    "observation.images.image_siglip2": {
      "dtype": "float32",
      "shape": [
        768
      ],
      "names": null
    }
  },
  "video_keys": [
    "observation.images.image"
  ],
  "num_shards": 64,
  "index_path": "meta/sharded_index.json"
}

Environment & Dependencies

Python ≥ 3.9 • PyTorch ≥ 2.1 • transformers • sentence-transformers • pyarrow • tqdm • decord (and optionally av)


Provenance, License, and Citation


Changelog

  • v2.0-embeddings-sharded — Replaced video tensors with DINOv3 + SigLIP2 features; added EmbeddingGemma task-text embeddings; consolidated per-episode Parquets into N shards with a repo-local index; preserved original indexing/splits via normalized episode identifiers.
Downloads last month
9