Datasets:
unique_data_id stringlengths 25 25 | taskId stringlengths 25 25 | task_name stringlengths 22 386 | category stringclasses 2 values | subCategory listlengths 1 1 | application_website stringclasses 409 values | tags listlengths 0 7 | benchmark stringclasses 5 values | appType stringclasses 2 values | difficulty stringclasses 3 values | os stringclasses 3 values | requires_login stringclasses 3 values | videoSize stringlengths 0 9 | completedAt stringdate 2025-04-08 05:56:26 2025-09-26 10:08:18 | reasoning_steps listlengths 0 25 | metadata stringlengths 2 612 | screenshots images listlengths 0 52 | video_file stringlengths 36 36 | dom_snaps_file stringlengths 0 39 | events stringlengths 0 662k |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
cmcc8u6yc00va1p1ydsdu52zy | cmcc8u68b00511p1yb12ej20b | "Use the top-right search bar to look up the term “privacy policy,” open the official Privacy Po(...TRUNCATED) | BROWSER_TASK | [
"Search & Research"
] | FoxNews | ["Information Retrieval & Analysis:Search","Navigation & Workflow Control:Navigation","Information R(...TRUNCATED) | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-11 15:06:45.223 | [] | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6yc00va1p1ydsdu52zy.mp4 | dom_snaps/cmcc8u6yc00va1p1ydsdu52zy.zip | "[{\"time_stamp\": 1245483.5058041, \"action\": \"move\", \"x\": 1467, \"y\": 47}, {\"time_stamp\": (...TRUNCATED) | |
cmcc8u6yc00v91p1yw2eruz95 | cmcc8u68b00501p1y3zon7x4z | "From the FoxNews.com homepage, navigate to the “About” or “Corporate Information” page and (...TRUNCATED) | BROWSER_TASK | [
"Search & Research"
] | FoxNews | [
"Navigation & Workflow Control:Navigation",
"Information Retrieval & Analysis:Extraction"
] | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-11 15:00:37.703 | [] | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6yc00v91p1yw2eruz95.mp4 | dom_snaps/cmcc8u6yc00v91p1yw2eruz95.zip | "[{\"time_stamp\": 1245169.1857704, \"action\": \"move\", \"x\": 1593, \"y\": 90}, {\"time_stamp\": (...TRUNCATED) | |
cmcc8u6yc00vm1p1yhjl1u0bf | cmcc8u68b005d1p1y3znjf5gc | "In the site footer, locate the “Contact Us” or “Fox News Careers” link. Open it and note tw(...TRUNCATED) | BROWSER_TASK | [
"Search & Research"
] | FoxNews | [
"Navigation & Workflow Control:Navigation",
"Information Retrieval & Analysis:Extraction"
] | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-11 14:50:28.882 | [] | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6yc00vm1p1yhjl1u0bf.mp4 | dom_snaps/cmcc8u6yc00vm1p1yhjl1u0bf.zip | "[{\"time_stamp\": 1244566.5383122, \"action\": \"move\", \"x\": 1488, \"y\": 77}, {\"time_stamp\": (...TRUNCATED) | |
cmcc8u6yc00vi1p1y10rtsjn1 | cmcc8u68b00591p1yi1575z0x | "Click “Health” in the main navigation, select a nutrition-focused article, and summarize the ke(...TRUNCATED) | BROWSER_TASK | [
"News & Media"
] | FoxNews | [
"Navigation & Workflow Control:Navigation",
"Information Retrieval & Analysis:Research"
] | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-11 14:28:14.710 | [] | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6yc00vi1p1y10rtsjn1.mp4 | dom_snaps/cmcc8u6yc00vi1p1y10rtsjn1.zip | "[{\"time_stamp\": 1243026.75937, \"action\": \"window_focus\", \"app_name\": \"chrome.exe\", \"wind(...TRUNCATED) | |
cmcc8u6yc00vf1p1yvn1ufxj2 | cmcc8u68b00561p1yrreiu5vv | "Navigate to the “Podcasts” link in the site’s main or footer navigation, then list the distin(...TRUNCATED) | BROWSER_TASK | [
"News & Media"
] | FoxNews | [
"Navigation & Workflow Control:Navigation",
"Information Retrieval & Analysis:Extraction"
] | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-11 14:03:30.332 | [] | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6yc00vf1p1yvn1ufxj2.mp4 | dom_snaps/cmcc8u6yc00vf1p1yvn1ufxj2.zip | "[{\"time_stamp\": 1241459.2144113, \"action\": \"move\", \"x\": 1490, \"y\": 72}, {\"time_stamp\": (...TRUNCATED) | |
cmcc8u6ym018l1p1yxhf18gc2 | cmcc8u68o00ic1p1y9je7qdrf | "From the Templates section, open the “All Templates” gallery, filter by the “Photography” c(...TRUNCATED) | BROWSER_TASK | [
"Utilities & Tools"
] | Squarespace | ["Navigation & Workflow Control:Navigation","Information Retrieval & Analysis:Filtering","Informatio(...TRUNCATED) | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-11 05:02:15.259 | ["Open the pre designed template and list every pre-designed page (here Shop,Services,Gallery,Contac(...TRUNCATED) | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6ym018l1p1yxhf18gc2.mp4 | dom_snaps/cmcc8u6ym018l1p1yxhf18gc2.zip | "[{\"time_stamp\": 1209196.8302786, \"action\": \"move\", \"x\": 1459, \"y\": 60}, {\"time_stamp\": (...TRUNCATED) | |
cmcc8u6yd00wv1p1yy8guorre | cmcc8u68d006m1p1y4wroiffs | "In the Lighting department, filter for Pendant Lights that are “Black” in finish and “Industr(...TRUNCATED) | BROWSER_TASK | [
"Shopping & E-commerce"
] | Home Depot | ["Navigation & Workflow Control:Navigation","Information Retrieval & Analysis:Filtering","Informatio(...TRUNCATED) | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-10 20:32:54.783 | [] | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6yd00wv1p1yy8guorre.mp4 | dom_snaps/cmcc8u6yd00wv1p1yy8guorre.zip | "[{\"time_stamp\": 1178644.7487036, \"action\": \"move\", \"x\": 1480, \"y\": 57}, {\"time_stamp\": (...TRUNCATED) | |
cmcc8u6yd00wr1p1yj7aot3ae | cmcc8u68c006i1p1yghwov4zh | "Use the Store Finder, enter ZIP code 10001, and note the distance (in miles) to the nearest Home De(...TRUNCATED) | BROWSER_TASK | [
"Navigation & Maps"
] | Home Depot | ["Navigation & Workflow Control:Navigation","Transactional Operations:Form Filling","Information Ret(...TRUNCATED) | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-10 20:20:47.459 | [] | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6yd00wr1p1yj7aot3ae.mp4 | dom_snaps/cmcc8u6yd00wr1p1yj7aot3ae.zip | "[{\"time_stamp\": 1177951.2447762, \"action\": \"move\", \"x\": 1468, \"y\": 47}, {\"time_stamp\": (...TRUNCATED) | |
cmcc8u6yd00wk1p1y8d5eo7xv | cmcc8u68c006b1p1y1mgumjzd | "Open the Ceiling Fan Buying Guide in the “DIY Projects & Ideas” section and note the recommende(...TRUNCATED) | BROWSER_TASK | [
"Education & Learning"
] | Home Depot | [
"Navigation & Workflow Control:Navigation",
"Information Retrieval & Analysis:Extraction"
] | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-10 19:35:31.038 | [] | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6yd00wk1p1y8d5eo7xv.mp4 | dom_snaps/cmcc8u6yd00wk1p1y8d5eo7xv.zip | "[{\"time_stamp\": 1175015.3670867, \"action\": \"move\", \"x\": 1095, \"y\": 328}, {\"time_stamp\":(...TRUNCATED) | |
cmcc8u6yd00wj1p1ytaabydeb | cmcc8u68c006a1p1y93kiyj9o | "In the Interior Paint category, apply filters to show only BEHR-brand, satin-finish, 1-gallon conta(...TRUNCATED) | BROWSER_TASK | [
"Shopping & E-commerce"
] | Home Depot | [
"Information Retrieval & Analysis:Filtering",
"Information Retrieval & Analysis:Extraction"
] | Proprietary | SINGLE_APP | EASY | CROSS_PLATFORM | no | 2025-07-10 18:59:55.263 | [] | "{\"id\": 264800830346283, \"node\": \"DESKTOP-GFL3B1N\", \"model\": \"20FXS1BP00\", \"system\": \"W(...TRUNCATED) | [{"src":"https://datasets-server.huggingface.co/assets/anaisleila/computer-use-data-psai/--/{dataset(...TRUNCATED) | videos/cmcc8u6yd00wj1p1ytaabydeb.mp4 | dom_snaps/cmcc8u6yd00wj1p1ytaabydeb.zip | "[{\"time_stamp\": 1173014.6018928, \"action\": \"move\", \"x\": 1476, \"y\": 55}, {\"time_stamp\": (...TRUNCATED) |
Computer Use Dataset - PSAI
A large-scale, multimodal dataset of human-computer interactions for training and evaluating AI agents.
🔗 Access Dataset: https://huggingface.co/datasets/anaisleila/computer-use-data-psai
📊 Dataset Overview
This dataset contains 3,167 completed tasks of human-computer interactions captured with video, screenshots, DOM snapshots, and detailed interaction events. Created by Paradigm Shift AI for advancing computer use AI agent research.
Key Statistics
Scale:
- 3,167 tasks with multimodal data
- 7.87 GB dataset parquet (includes embedded screenshots)
- 49.2 GB total (7.87 GB parquet + 16.9 GB videos + 24.4 GB DOM snapshots)
- 100% video coverage (all 3,167 tasks)
Task Distribution:
- Browser Tasks: 2,220 (70.1%)
- Computer Tasks: 947 (29.9%)
- Difficulty: Easy (79.4%) | Medium (16.7%) | Hard (3.9%)
- Platforms: Cross-platform (95.1%) | Windows (4.5%) | macOS (0.4%)
Data Coverage by Modality
Videos: 100% coverage (3,167/3,167 tasks) - 16.9 GB
All tasks have screen recordings in MP4 format.
Screenshots: 42.6% coverage (1,349/3,167 tasks)
14,740 images embedded directly in the parquet files (included in the 7.87 GB dataset size).
DOM Snapshots: 55.8% coverage (1,766/3,167 tasks) - 24.4 GB
HTML structure captures for web-based tasks.
- Browser tasks: 77.5% have DOM snapshots
- Computer tasks: 4.8% have DOM snapshots
Content Diversity
- 294 unique websites (browser tasks) - Amazon, Google, ArXiv, Apple, Booking, and more
- 173 unique applications (computer tasks) - MS Office Suite, File Explorer, Email clients, and more
- 31 subcategories spanning:
- Search & Research (928 | 29.3%)
- Shopping & E-commerce (490 | 15.5%)
- Social Media & Communication (210 | 6.6%)
- News & Media (149 | 4.7%)
- Document Editing (127 | 4.0%)
- Education & Learning (101 | 3.2%)
- Navigation & Maps (93 | 2.9%)
- Email Ops (71 | 2.2%)
- And 23 more categories...
🚀 Quick Start
Option 1: Load Dataset Only (7.87 GB)
Fast access to metadata and embedded screenshots:
from datasets import load_dataset
# Load the dataset
dataset = load_dataset("anaisleila/computer-use-data-psai")
# Access a task
task = dataset['train'][0]
print(f"Task: {task['task_name']}")
print(f"Category: {task['category']}")
print(f"Screenshots: {len(task['screenshots'])} images")
Option 2: Download Videos & DOMs On-Demand
Download specific files as needed:
from huggingface_hub import hf_hub_download
# Download a specific video
video_path = hf_hub_download(
repo_id="anaisleila/computer-use-data-psai",
filename=task['video_file'], # e.g., "videos/{task_id}.mp4"
repo_type="dataset"
)
# Download DOM snapshot
dom_path = hf_hub_download(
repo_id="anaisleila/computer-use-data-psai",
filename=task['dom_snaps_file'], # e.g., "dom_snaps/{task_id}.zip"
repo_type="dataset"
)
Option 3: Clone Full Dataset (49.2 GB)
Clone everything including videos and DOM files:
git lfs install
git clone https://huggingface.co/datasets/anaisleila/computer-use-data-psai
📚 What's in Each Task
Each task includes:
Metadata Fields
- unique_data_id (string): Unique identifier for each recording
- taskId (string): Task template ID (non-unique - same task done by different vendors)
- task_name (string): Human-readable task description
- category (string):
BROWSER_TASKorCOMPUTER_TASK - subCategory (list[string]): Specific categories (e.g., "Search & Research")
- application_website (string): Application or website used
- tags (list[string]): Descriptive tags
- benchmark (string): Benchmark identifier
- appType (string):
SINGLE_APPorMULTI_APP - difficulty (string):
EASY,MEDIUM, orHARD - os (string):
CROSS_PLATFORM,WINDOWS,macOS, orLINUX - requires_login (string): Whether task requires authentication
- completedAt (string): Timestamp (ISO 8601 format)
Multimodal Data
- screenshots (list[images]): Screenshots at key moments - embedded and viewable
- video_file (string): Path to screen recording (MP4) - download on demand
- dom_snaps_file (string): Path to HTML DOM snapshot (ZIP) - download on demand
- events (string): Keyboard/mouse interactions with timestamps (JSON)
- reasoning_steps (list[string]): Step-by-step task completion reasoning
- metadata (string): System info (OS, screen resolution, hardware) (JSON)
Note: Screenshots are embedded for instant browsing. Videos and DOM snapshots are stored separately to keep the dataset size manageable.
💡 Usage Examples
1. Browse and Explore Tasks
from datasets import load_dataset
import json
dataset = load_dataset("anaisleila/computer-use-data-psai")
# Browse tasks
for task in dataset['train'][:5]:
print(f"Task: {task['task_name']}")
print(f" Category: {task['category']}")
print(f" Difficulty: {task['difficulty']}")
# Parse metadata
metadata = json.loads(task['metadata'])
print(f" System: {metadata.get('system')}")
# Parse events
if task['events']:
events = json.loads(task['events'])
print(f" Events: {len(events)} interactions")
2. Filter by Criteria
# Filter by difficulty
hard_tasks = dataset['train'].filter(lambda x: x['difficulty'] == 'HARD')
print(f"Hard tasks: {len(hard_tasks)}")
# Filter by category
browser_tasks = dataset['train'].filter(lambda x: x['category'] == 'BROWSER_TASK')
# Complex filter
windows_hard = dataset['train'].filter(
lambda x: x['difficulty'] == 'HARD' and x['os'] == 'WINDOWS'
)
3. Download Files for Specific Tasks
from huggingface_hub import hf_hub_download
# Find a task you're interested in
task = dataset['train'][0]
# Download video
video = hf_hub_download(
repo_id="anaisleila/computer-use-data-psai",
filename=task['video_file'],
repo_type="dataset"
)
# Download DOM snapshot (if available)
if task['dom_snaps_file']:
dom = hf_hub_download(
repo_id="anaisleila/computer-use-data-psai",
filename=task['dom_snaps_file'],
repo_type="dataset"
)
🎯 Use Cases
This dataset supports:
- Training computer use AI agents (vision-language-action models)
- Reinforcement learning for GUI interaction
- Benchmark evaluation of computer use capabilities
- Research in human-computer interaction patterns
- Accessibility tools development
- Software testing and quality assurance automation
📖 Dataset Details
Data Collection
Data was collected using a custom-built computer interaction capture tool that records:
- Keyboard and mouse inputs with timestamps
- Full screen video recordings
- DOM snapshots for web-based tasks
- Accessibility tree information
- Detailed event streams
Human vendors performed tasks following specific instructions. All vendors signed disclosure agreements authorizing public release of the data.
Privacy & Consent
- Data collected from consenting human vendors
- Vendors signed disclosure agreements for public release
- May contain some PII from vendor interactions
- Users should be aware tasks may show personal information
Known Limitations
- Some tasks may reference applications or websites that have changed since data collection
- Not all tasks have screenshots or DOM snapshots (see coverage stats above for exact percentages)
- Dataset contains 100 duplicate rows (3,267 total rows, 3,167 unique tasks)
- To deduplicate:
dataset.to_pandas().drop_duplicates(subset=['unique_data_id'], keep='first')
- To deduplicate:
📜 License
MIT License - see LICENSE for full details.
Copyright (c) 2025 Paradigm Shift AI
Anais Howland, Ashwin Thinnappan, Jameel Shahid Mohammed
🙏 Citation
If you use this dataset in your research, please cite:
@dataset{psai_computer_use_2025,
title={Computer Use Data - Paradigm Shift AI},
author={Anais Howland and Ashwin Thinnappan and Jameel Shahid Mohammed},
organization={Paradigm Shift AI},
year={2025},
publisher={HuggingFace},
url={https://huggingface.co/datasets/anaisleila/computer-use-data-psai}
}
👥 Authors
Anais Howland, Ashwin Thinnappan, and Jameel Shahid Mohammed
Paradigm Shift AI
This dataset was created by the team at Paradigm Shift AI, including:
- Data collection infrastructure and vendor coordination system
- Custom screen recording and interaction capture tool
- Dataset curation, validation, and quality assurance
📞 Contact & Contributions
This dataset is provided as-is for the research community.
For questions or issues:
- Open a discussion on the HuggingFace dataset page
- Contact: anaisaddad@gmail.com
📋 Changelog
- v1.0 (2025): Initial public release with 3,167 tasks
- Downloads last month
- 778