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title: EXOKERN
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short_description: The Data Engine for Physical AI

EXOKERN — The Data Engine for Physical AI

Contact-rich. Sensor-annotated. Industrially validated. EU AI Act ready.

We produce high-fidelity force/torque manipulation datasets for enterprise robotics, humanoid robot manufacturers, and research institutions — with full data provenance and compliance documentation.

🎯 The Problem

Over 95% of existing robotics datasets lack force/torque sensor data. Vision-only approaches fail at contact-rich tasks like insertion, assembly, and manipulation — where precise haptic feedback is critical.

Starting August 2026, the EU AI Act requires documented data provenance for AI training data. Most existing datasets cannot meet this standard.

💡 Our Solution

EXOKERN provides industrially calibrated 6-axis force/torque (wrench) data alongside standard observations, enabling robots to learn manipulation skills that require physical contact understanding.

Capture → Anchor → Ship

Phase What We Do Output
01 Capture Operators generate specific contact forces incl. systematic failures in calibrated environments Raw data + Failure Taxonomy + QC Report
02 Anchor Real friction logs calibrate simulation. Physics parameters validated against F/T measurements Calibrated Sim Assets (MJCF/USD/JSON)
03 Ship ML-ready exports in all major formats — clean, tagged, quality-certified RLDS, HDF5, Zarr, MCAP, LeRobot v3.0

📦 Datasets

Dataset Task F/T Data Status
contactbench-forge-peginsert-v0 Peg-in-Hole Insertion ✅ 6-axis Wrench Available

🗺️ More contact-rich datasets in development — including assembly, grasping, and deformable object manipulation. Commercial Contact Skill Packs available for enterprise customers.

🔧 What Makes Our Data Different

  • Force/Torque annotations on every frame (Fx, Fy, Fz, Mx, My, Mz)
  • LeRobot v3.0 compatible — plug directly into policy training pipelines
  • Industrially relevant tasks — insertion, assembly, contact-rich manipulation
  • Calibrated sensors — not estimated, not vision-derived, directly measured
  • Full data provenance — capture methodology, operator ID, QC reports, EU AI Act compliant
  • Sim-anchoring — calibrated simulation assets bridge the Sim2Real gap

🏗️ Built With

  • NVIDIA Isaac Lab for high-fidelity physics simulation
  • LeRobot v3.0 format for interoperability
  • Franka FR3 (7-DOF) robot platform
  • Bota Systems SensONE 6-axis F/T sensor

📬 Contact


EXOKERN — Bridging the Haptic Data Gap in Physical AI