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protocolcompany/physics-verification-corpus

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--- license: mit task_categories: - robotics - reinforcement-learning tags: - physics - simulation - verification - monte-carlo - autonomous-systems - robotics - defense - embodied-reasoning size_categories: - 100M<n<1B --- # Physics Verification Corpus — 30 Companies **130+ trajectory datasets. 30 companies. ~43 GB of deterministic physics.** Generated from ~200 KB of hand-rolled Rust (no external physics libraries) on a single Apple M4 Pro. Every trajectory is SHA-256 sealed, anomaly-labeled, and 1000 Hz kinematic. This corpus stress-tests the autonomous systems of 30 companies across robotics, defense, aerospace, autonomous vehicles, and eVTOL — exposing failure modes that simulation platforms (Isaac Sim, AirSim, CARLA) systematically miss. --- ## Companies & Domains ### Robotics (Round 1 — Live Fire Matrix) | Company | Scenarios | Key Failure Modes | |---------|-----------|-------------------| | **Boston Dynamics** | Joint torsion, sim-to-real friction, thermal saturation, LBM inference | 360-degree joint shear, friction coefficient collapse | | **Figure AI** | Payload shear, battery sag, tactile hallucination, kinematic resonance | Dynamic payload CG shift, haptic sensor ghosting | | **Agility Robotics** | Digitigrade friction, elastomer latency, AMR docking, payload resonance | Toe-pad delamination, warehouse docking slip | | **Skild AI** | Morphology thermal, gear backlash, sim mass distribution, compute starvation | Foundation model hallucination under thermal load | | **Shield AI** | V-BAT crosswind, hivemind VIO drift, swarm wake, MEMS IMU resonance | Multi-agent visual-inertial odometry divergence | ### Autonomous Vehicles & eVTOL (Round 1) | Company | Scenarios | Key Failure Modes | |---------|-----------|-------------------| | **Wayve** | Black ice hallucination, brake fade, hydroplaning, suspension asymmetry | End-to-end vision model failure on low-friction | | **Joby Aviation** | Wake starvation, thermal throttle, acoustic resonance, actuator phase lag | Transition flight wake collapse, HOGE thermal | | **Anduril** | VTOL transition, EKF divergence, sensor fusion, optics distortion | Lattice sensor fusion failure at Mach transition | ### Defense Primes (Live Fire Matrix Primes) | Company | Systems Audited | Result | |---------|----------------|--------| | **Northrop Grumman** | Autonomous wingman, stealth thermal, UUV pressure, optical salt | 100% catastrophic failure | | **Boeing Defense** | MQ-25 wake, CCA EMP, landing gear hysteresis, vision deck glare | 100% catastrophic failure | | **General Dynamics** | Blast overpressure, radar mud attenuation, track pin galling, hydraulic stiction | 100% catastrophic failure | | **BAE Systems** | AMPV suspension, EW drone swarm, gun barrel warp, armor spall | 100% catastrophic failure | | **L3Harris** | Gimbal resonance, RF mesh packet storm, thermal sight, GPS spoofing | 100% catastrophic failure | | **Huntington Ingalls** | USV hull slam, sonar thermocline, propeller cavitation, radar sea clutter | 100% catastrophic failure | | **Textron Systems** | Rip-Saw brake fade, Aerosonde icing, CUES jamming, Cottonmouth harmonic | 100% catastrophic failure | | **Kratos Defense** | Valkyrie flutter, Mako plasma blackout, Air Wolf collision, BTT laser | 100% catastrophic failure | | **Leidos** | Sea Hunter thermal, cognitive radar spoof, cargo drone VRS, C2 BGP flap | 100% catastrophic failure | | **AeroVironment** | Switchblade aliasing, Puma solar flare, Juggernaut CG shift, terminal dive shadow | 100% catastrophic failure | ### Robotics & AV (Round 2) | Company | Scenarios | Key Failure Modes | |---------|-----------|-------------------| | **Tesla** | FSD hydroplaning, optical glare, Optimus tribology, harmonic slosh | Vision-only AV failure in adverse conditions | | **1X Technologies** | Tendon snap, cable stretch backlash, ankle inversion, battery thermal | Cable-driven actuator mechanical failure | | **Sanctuary AI** | Haptic chatter, hydraulic compressibility, thermal expansion, asymmetric drop | Dexterous manipulation physics gaps | | **Unitree Robotics** | Metallurgic shear, actuator backlash gait, thermal sink, vibration chatter | Low-cost actuator failure cascades | | **Archer Aviation** | Midnight PIO, rotor icing, battery sag, acoustic feedback | eVTOL transition and thermal failure | | **Apptronik** | ZMP fall, gear galling, dynamic wind shear, thermal sensor starvation | Bipedal stability boundary collapse | | **Skydio** | Optical shear, IMU acoustic resonance, thermal lens warp, VSLAM smoke | Autonomous drone navigation in degraded vis | | **ANYbotics** | Thermal seal friction, IP67 heat soak, slip ring vibration, LiDAR refraction | Industrial inspection robot thermal limits | | **Aurora Innovation** | Thermal outgassing, tire casing hysteresis, Doppler rain scatter, pneumatic resonance | AV sensor and mechanical degradation | | **Waabi** | Black ice hallucination, trailer whip, air brake lag, sensor mud occlusion | Sim-to-real gap in trucking autonomy | ### Original Corpus (Pre-Matrix) | Company | Datasets | Size | |---------|----------|------| | **Ghost Robotics** | Recoil, shale, subterranean drift, thermal (4.8M trajectories) | ~2.6 GB | | **Amazon / Blue Origin** | FAR resmimic, Proteus hydraulic, lunar regolith, transonic (4.8M trajectories) | ~2.7 GB | | **Elon Corpus** (SpaceX/Tesla/Boring/Neuralink/Starlink) | Starship catch, FSD, Boring thermal, Neuralink impedance, Kessler (6M trajectories) | ~3.4 GB | | **DoD Hypersonic** | HGV Mach 20 plasma (1.2M trajectories) | ~751 MB | | **Lockheed Martin** | F-35 transonic (1.2M trajectories) | ~690 MB | | **US Navy** | Carrier PLM (1.2M trajectories) | ~631 MB | | **Raytheon** | MALD EW drift (1.2M trajectories) | ~633 MB | --- ## Data Schema Every trajectory follows this structure: ```json { "id": "unique_hex_id", "type": "physics_type", "scenario": "condition_description", "steps": 1000, "score": { "...domain-specific metrics..." }, "proof_hash": "sha256_hex", "reasoning_context": { "anomaly_type": "FAILURE_MODE_NAME", "is_anomaly": true, "snapshot": { "failure": "description" } }, "data": [ "...timestep arrays..." ] } ``` Every trajectory is **anomaly-labeled** with `reasoning_context`, making each record a training-ready sample for sim-to-real transfer learning. --- ## How to Verify Each trajectory contains a `proof_hash` field (SHA-256). The proof chain is deterministic — given the same seed, the same physics, and the same integration step, you get the same hash. No stochastic noise. No random seeds. Pure math. ```python import json, hashlib with open("ghost_robotics/ghost_robotics_recoil_1_2M_sealed.json") as f: data = json.load(f) # Check any trajectory traj = data["trajectories"][0] print(f"ID: {traj['id']}") print(f"Proof: {traj['proof_hash']}") print(f"Anomaly: {traj['reasoning_context']['anomaly_type']}") print(f"Survived: {traj['score'].get('survived', 'N/A')}") ``` --- ## Generation - **Engine:** G^G (genesis_core) — hand-rolled Rust, Euler/symplectic integration at 1000 Hz - **Machine:** Apple M4 Pro (14-core CPU, 20-core GPU, 24 GB unified memory) - **Physics:** No external libraries. Every force law is written from first principles. - **Sealing:** SHA-256 per-trajectory, proof-chained across datasets --- ## Source - **GitHub:** [github.com/aijesusbro/Spectrum](https://github.com/aijesusbro/Spectrum) - **Website:** [aijesusbro.com](https://aijesusbro.com) - **Organization:** Protocol Company --- ## License MIT
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