Real Data, Not Synthetic
Synthetic data can't replicate the noise, variation, and edge cases of real human work. We capture it at the source - from an actual worker doing an actual task.
Robotics and foundation-model teams don't fail on algorithms - they fail on data. We built an end-to-end pipeline that captures real-world tasks from a wearable camera and auto generates structured, labeled, human-verified datasets in every major training format.
Robotics and foundation-model teams are bottlenecked by data: real-world demonstrations are expensive to capture and even harder to label consistently. This platform closes that gap with an end-to-end pipeline. A worker wears a camera and performs a task; computer vision automatically understands every moment - extracting actions, objects, and context frame by frame - and turns it into reviewable, version-controlled datasets. What synthetic data cannot replicate, we capture from real human activity.
Synthetic data can't replicate the noise, variation, and edge cases of real human work. We capture it at the source - from an actual worker doing an actual task.
Computer vision does the first pass. A structured human review queue approves, corrects, or rejects every annotation before it ships - so nothing reaches your training set unchecked.
Datasets are versioned, quality-scored, and exportable in the format your training pipeline already expects - LeRobot, RLDS, Open X-Embodiment, DROID, and more.
Start with a single wearable capture session. Scale to fleets of workers, thousands of episodes, and continuous dataset growth - without changing your pipeline.
Record any task with smart glasses, helmet cams, or mobile devices, with reliable offline sync built in.
The model automatically understands every moment of footage - extracting actions, objects, and context without manual tagging.
Every chunk of footage is labeled with objects, actions, transcript, and a confidence score - generated automatically, not typed by hand.
Individual annotated chunks are merged into complete task workflows, complete with steps, tools used, and a knowledge graph.
A built-in quality assurance layer where reviewers approve, reject, or modify AI-generated labels before a dataset is finalized.
One-click export to LeRobot, RLDS, Parquet, or JSONL - version-controlled, with a quality score attached to every dataset.
Wearable capture with a live camera preview and voice-driven task intent, so context is captured in real time - not reconstructed later.
Captured footage chunks assembled automatically into complete, step-by-step task workflows - steps, tools, and timing intact.
The human-in-the-loop layer for QA - approve, reject, or correct AI labels before they ship into a dataset.
Versioned, quality-scored datasets, ready to export to any supported training format - with full lineage on every release.
Actions and objects mapped across every episode, with occurrence counts and average confidence scores.
Search episodes by action or annotation, and track episode counts, duration, annotation volume, and confidence trends over time.
High-quality, multimodal datasets for training next-generation AI models on real-world human activity.
Real-world demonstrations exported in LeRobot format, ready for robot learning and manipulation research.
Step-by-step task workflows that teach autonomous agents how real tasks actually unfold, not just how they're described.
Auto-generate standard operating procedures directly from expert demonstrations - no manual documentation required.
Tell us what you want to build - we'll tell you how fast we can ship it and what it'll cost.