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clip_id
stringclasses
9 values
title
stringclasses
9 values
environment
stringclasses
6 values
device
stringclasses
2 values
session_id
stringclasses
9 values
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275
372
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17
29
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23.7
72.5
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stringclasses
9 values
sample_01_shuttle_tube_packaging
Shuttle tube packaging
factory
Samsung Galaxy S24
GGN_20260618_S01
sample_01_shuttle_tube_packaging.mp4
359.99
30
1920x1080
head_mounted_via_headband_egocentric
29
70.17
38.16
92.1
true
true
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/videos/sample_01_shuttle_tube_packaging.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/overlays/sample_01_shuttle_tube_packaging_overlay.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/previews/sample_01_shuttle_tube_packaging_boxes_preview.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/metadata/sample_01_shuttle_tube_packaging.json
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_01_shuttle_tube_packaging/plain.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_01_shuttle_tube_packaging/skeleton.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_01_shuttle_tube_packaging/boxes.mp4
sample_02_industrial_sewing_machine
Industrial sewing
factory
Samsung Galaxy S24
GGN_20260618_S02
sample_02_industrial_sewing_machine.mp4
342.967
30
1080x1920
head_mounted_via_headband_egocentric
24
54.38
7.1
52.3
true
true
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/videos/sample_02_industrial_sewing_machine.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/overlays/sample_02_industrial_sewing_machine_overlay.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/previews/sample_02_industrial_sewing_machine_boxes_preview.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/metadata/sample_02_industrial_sewing_machine.json
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_02_industrial_sewing_machine/plain.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_02_industrial_sewing_machine/skeleton.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_02_industrial_sewing_machine/boxes.mp4
sample_03_heatgun_and_batching
Heat gun & batching
factory
Samsung Galaxy S24
GGN_20260618_S03
sample_03_heatgun_and_batching.mp4
285
30
1920x1080
head_mounted_via_headband_egocentric
24
23.65
1.53
21.4
true
true
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/videos/sample_03_heatgun_and_batching.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/overlays/sample_03_heatgun_and_batching_overlay.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/previews/sample_03_heatgun_and_batching_boxes_preview.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/metadata/sample_03_heatgun_and_batching.json
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_03_heatgun_and_batching/plain.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_03_heatgun_and_batching/skeleton.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_03_heatgun_and_batching/boxes.mp4
sample_04_garment_ironing_and_packing
Garment ironing & packing
factory
Samsung Galaxy S24
GGN_20260618_S04
sample_04_garment_ironing_and_packing.mp4
300
51.67
1920x1080
head_mounted_via_headband_egocentric
26
41.17
3.07
37.6
true
true
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/videos/sample_04_garment_ironing_and_packing.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/overlays/sample_04_garment_ironing_and_packing_overlay.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/previews/sample_04_garment_ironing_and_packing_boxes_preview.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/metadata/sample_04_garment_ironing_and_packing.json
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_04_garment_ironing_and_packing/plain.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_04_garment_ironing_and_packing/skeleton.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_04_garment_ironing_and_packing/boxes.mp4
sample_05_commercial_catering
Commercial catering
restaurant
iPhone 16 Pro Max
GGN_20260620_S05
sample_05_commercial_catering.mp4
371.955
30
1080x1920
head_mounted_via_headband_egocentric
28
26.29
3.18
25
true
true
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/videos/sample_05_commercial_catering.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/overlays/sample_05_commercial_catering_overlay.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/previews/sample_05_commercial_catering_boxes_preview.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/metadata/sample_05_commercial_catering.json
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_05_commercial_catering/plain.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_05_commercial_catering/skeleton.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_05_commercial_catering/boxes.mp4
sample_06_cane_weaving
Cane weaving
roadside shop
iPhone 16 Pro Max
GGN_20260620_S06
sample_06_cane_weaving.mp4
344.711
30
1920x1080
head_mounted_via_headband_egocentric
25
68.61
16.35
72.2
true
true
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/videos/sample_06_cane_weaving.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/overlays/sample_06_cane_weaving_overlay.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/previews/sample_06_cane_weaving_boxes_preview.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/metadata/sample_06_cane_weaving.json
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_06_cane_weaving/plain.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_06_cane_weaving/skeleton.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_06_cane_weaving/boxes.mp4
sample_07_car_detailing
Car detailing
car showroom
Samsung Galaxy S24
GGN_20260620_S07
sample_07_car_detailing.mp4
274.8
30
2560x1440
head_mounted_via_headband_egocentric
17
72.51
14.22
73.7
true
true
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/videos/sample_07_car_detailing.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/overlays/sample_07_car_detailing_overlay.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/previews/sample_07_car_detailing_boxes_preview.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/metadata/sample_07_car_detailing.json
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_07_car_detailing/plain.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_07_car_detailing/skeleton.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_07_car_detailing/boxes.mp4
sample_08_primer_and_painting
Primer & painting
repair shop
Samsung Galaxy S24
GGN_20260620_S08
sample_08_primer_and_painting.mp4
300.033
30
2560x1440
head_mounted_via_headband_egocentric
21
55.46
5.94
52.2
true
true
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/videos/sample_08_primer_and_painting.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/overlays/sample_08_primer_and_painting_overlay.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/previews/sample_08_primer_and_painting_boxes_preview.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/metadata/sample_08_primer_and_painting.json
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_08_primer_and_painting/plain.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_08_primer_and_painting/skeleton.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_08_primer_and_painting/boxes.mp4
sample_09_denting_and_filing
Denting & filing
roadside repair
Samsung Galaxy S24
GGN_20260620_S09
sample_09_denting_and_filing.mp4
300.491
30
3840x2160
head_mounted_via_headband_egocentric
24
29.53
1.25
26.2
true
true
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/videos/sample_09_denting_and_filing.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/overlays/sample_09_denting_and_filing_overlay.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/previews/sample_09_denting_and_filing_boxes_preview.mp4
https://ggn-egocentric-data-sample.s3.ap-south-1.amazonaws.com/sample_data_june/metadata/sample_09_denting_and_filing.json
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_09_denting_and_filing/plain.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_09_denting_and_filing/skeleton.mp4
https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample/resolve/main/clips_preview/sample_09_denting_and_filing/boxes.mp4

World Archive Mono — India Workplace Egocentric Manipulation

Ground-truth egocentric manipulation from the Indian real economy — robot-ready labels, not just video.

A public evaluation sample from World Archive. We run managed, consent-first egocentric capture at real Indian workplaces — factories, kitchens, repair bays, workshops — and ship a full annotation stack built for training and evaluating manipulation policies, VLA models, and world models.

Clips 9 (~48 min total)
Action segments 218 (human-reviewed verb–noun phases)
Median segment ~8s
Annotation layers 8+ (segments, captions, hands, objects, contact, metadata, QA, consent)
CI QA pass 9/9 clips
LeRobot mirror WorldArchive/mono-india-workplace-lerobot — 9 episodes, 46,436 frames @ 15fps
Full pack S3 sample index (~19 GB, no login)
Live explorer HF Space
Collection Physical AI India

Dataset Description

Nine egocentric video clips of real manual work in Indian workplaces: factory packaging, industrial sewing, heat-shrink batching, garment ironing, commercial catering, cane weaving, car detailing, auto-body primer/painting, and denting/filing. Each clip ships with temporal action segments, per-frame hand keypoints, object bounding boxes, hand–object contact samples, metadata, QA flags, and commercial AI-training consent documentation.

Source: Managed partner-site capture (not contributor apps). Head-mounted smartphone rigs operated by workers under documented consent.

Geography: India — factory floors, restaurants, roadside shops, showrooms, and repair bays across the real economy.

Intended use: Training and evaluating vision-language-action models, imitation learning, hand-object interaction research, egocentric video understanding, and physical-AI benchmarks in industrial and service settings.

Out of scope: Surveillance, worker performance scoring, biometric identification, or any use that re-identifies participants.

Verticals

shuttle-tube packaging · industrial sewing · heat-gun batching · garment ironing & packing · commercial catering · cane weaving · car detailing · primer & painting · denting & filing

Related assets

Technical essays

Long-form notes on annotation density, capture ops, and trainable signal. Published on Substack first; mirrored here and on worldarchive.co/blog.

Dataset Structure

Repository layout

mono-india-workplace-sample/
├── README.md
├── DATACARD.md
├── DELIVERY_OVERVIEW.md
├── data/
│   ├── clips.parquet          # 9 rows — one per clip
│   ├── segments.parquet       # 218 rows — verb–noun phases
│   └── pack_summary.json
├── clips_preview/             # 6s MP4 previews (plain / skeleton / boxes)
│   └── sample_XX_*/{plain,skeleton,boxes}.mp4
├── schema/                    # Field dictionaries
│   ├── annotation_schema.md
│   ├── action_taxonomy.md
│   ├── object_boxes_schema.md
│   └── ...
└── docs/
    └── buyer-technical-memo.md

Full MP4 + JSONL annotations (~19 GB) live on S3.

clips.parquet columns

Column Type Description
clip_id string Stem, e.g. sample_01_shuttle_tube_packaging
title string Human-readable task name
environment string factory, restaurant, repair shop, etc.
device string Capture smartphone model
session_id string Session identifier
video_file string MP4 filename
duration_sec float Clip length
fps float Native frame rate
resolution string e.g. 1920x1080
mount_type string Headband mount
segment_count int Action segments in clip
hands_visible_pct float Fraction of frames with visible hands
two_hands_pct float Fraction with two hands visible
manipulation_density_pct float Derived manipulation score
qa_pass bool CI QA pass flag
consent_signed bool Commercial AI consent on file
s3_video_url string Full-resolution MP4 on S3
s3_overlay_url string Hand skeleton overlay MP4
s3_boxes_preview_url string Object-box preview MP4
s3_metadata_url string Per-clip metadata JSON
hf_preview_plain_url string 6s plain preview on HF
hf_preview_skeleton_url string 6s skeleton preview on HF
hf_preview_boxes_url string 6s boxes preview on HF

segments.parquet columns

Column Type Description
clip_id string Clip stem
video string MP4 filename
start_sec float Segment start (clip-relative)
end_sec float Segment end
duration_sec float Segment length
action string Verb (human-reviewed)
object string Noun / manipulated object
task string Combined task label
notes string Operator notes

Full-pack JSONL fields (S3)

File pattern Key fields
annotations/action_segments.jsonl video, start_sec, end_sec, action, object, task, notes
annotations/*_hand_keypoints.jsonl frame_idx, timestamp_sec, hands[] with 21 landmarks (x,y,z)
annotations/*_object_boxes.jsonl frame_idx, boxes[] with bbox, label, track_id, source
annotations/*_hand_boxes.jsonl Per-hand axis-aligned boxes
annotations/*_hand_object_contact.jsonl Derived contact events
annotations/*_captions.jsonl Natural-language clip summary
metadata/*.json Device, consent, QA flags, manipulator stats

Label provenance is explicit: segments & captions are human; keypoints & boxes are model-generated with source fields.

Browse previews in the Dataset Viewer

  1. Open the clips config in the Dataset Viewer.
  2. Click hf_preview_plain_url, hf_preview_skeleton_url, or hf_preview_boxes_url on any row to play a 6s inline preview.
  3. For layer switching across all 9 clips, use the data-explorer Space.

Preview files live under clips_preview/{clip_id}/{plain,skeleton,boxes}.mp4.

Supported Tasks

  • Egocentric action recognition (verb–noun segments)
  • Temporal action segmentation and phase detection
  • Hand pose estimation (21-joint 2D landmarks)
  • Hand–object interaction and contact modeling
  • Object detection and tracking in manipulation scenes
  • Vision-language-action (VLA) pretraining on human video
  • Imitation learning from egocentric demonstrations
  • Robot policy evaluation on out-of-distribution industrial tasks
  • Cross-embodiment transfer (human ego → robot arms)
  • World-model training with action-conditioned video
  • Manipulation density and hand-visibility benchmarking
  • Geographic / cultural distribution analysis (India real economy)
  • Consent-aware dataset auditing for commercial AI training
  • LeRobot-format policy learning (via mirror dataset)
  • Physical-AI benchmark design for factory and service labor
  • Tool-use and dexterous manipulation in unstructured workshops

Usage

Metadata index (Hugging Face datasets)

from datasets import load_dataset

clips = load_dataset(
    "WorldArchive/mono-india-workplace-sample",
    "clips",
    split="train",
)
segments = load_dataset(
    "WorldArchive/mono-india-workplace-sample",
    "segments",
    split="train",
)
print(clips[0]["title"], clips[0]["hf_preview_plain_url"])
print(segments[0]["action"], segments[0]["object"])

Robot-ready frames (LeRobot)

from lerobot.datasets.lerobot_dataset import LeRobotDataset

ds = LeRobotDataset("WorldArchive/mono-india-workplace-lerobot")
print(ds.num_episodes, ds.num_frames, ds.fps)
sample = ds[0]  # observation.images.ego, observation.state (126-d), task

Full videos + dense JSONL

aws s3 sync s3://ggn-egocentric-data-sample/sample_data_june ./Master_Sample_v1 --no-sign-request

Comparison with public egocentric corpora

Ego4D Build AI Egocentric-100K World Archive Mono
Scale ~3,670 hrs daily-life ego ~100k hrs factory (China) 9 clips, ~48 min (evaluation sample)
Setting Western-heavy daily life (cooking, social, errands) Chinese factory floors Indian real economy (factory, catering, repair, craft)
Annotations Partial (narrations, AV, some hands/objects) Minimal public labels; raw video + intrinsics 218 human verb–noun segments; hands, boxes, contact, QA
Geography US/EU/Singapore-heavy China India
License / access Research license (FAIR) Gated; commercial terms CC BY-NC 4.0 eval sample; commercial training license available
Robot format Custom JSON exports Raw video Native LeRobot mirror
Capture model Crowd + research partners Managed factory deployment Managed partner sites, consent-first
Consent for commercial AI Research-oriented Enterprise (gated) Documented commercial AI-training consent

Why this matters for VLA / robot learning

Generalization in manipulation is bottlenecked by distribution diversity. Most public ego data skews Western, kitchen/household, or lab teleop. World Archive contributes real industrial and service-economy manipulation with the spatial and temporal labels policies consume (hand pose, contact, verb–noun, object grounding).

Capture & QA pipeline

  1. Capture — managed partner sites, headband ego rig
  2. Consent — commercial AI-training consent before delivery
  3. Anonymize — PII/face review; audio stripped
  4. Annotate — segments, captions, hands, objects, contact
  5. Manual QA — human verification before promote
  6. Deliver — MP4 + JSONL + schema docs

Product tiers

Tier Description
Mono Clear (this repo) Headband smartphone ego + full annotation stack
Pro Multi-Sensor (pilot) Ego + wrist cam + IMU + depth + exo, time-synced — contact us

Limitations

  • Sample size — 9 clips for evaluation, not pretraining at scale.
  • Geography — India workplaces only; not globally representative.
  • Monocular — no wrist camera, depth, or IMU in this sample (see Pro tier).
  • Object boxes — sampled ~1 Hz, not dense per-frame.
  • Hand keypoints — estimated 2D (MediaPipe), not metric 3D ground truth.
  • License — CC BY-NC 4.0 for evaluation; production commercial training requires a separate license.

License

This evaluation sample is released under CC BY-NC 4.0. Commercial production training and enterprise delivery are available under separate terms — contact shubham@worldarchive.co.

Citation

@dataset{worldarchive_mono_india_2026,
  title        = {World Archive Mono: India Workplace Egocentric Manipulation Sample},
  author       = {World Archive / GGN},
  year         = {2026},
  publisher    = {Hugging Face},
  howpublished = {\url{https://huggingface.co/datasets/WorldArchive/mono-india-workplace-sample}},
  note         = {9 clips, 218 action segments, LeRobot mirror available}
}

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