Datasets:
image
imagewidth (px) 1.28k
1.28k
|
|---|
_ _ _ _______ ___________ _ _ ___________ _ ______
| | | | \ | | _ \ ___| ___ \ | | || _ | ___ \ | | _ \
| | | | \| | | | | |__ | |_/ / | | || | | | |_/ / | | | | |
| | | | . ` | | | | __|| /| |/\| || | | | /| | | | | |
| |_| | |\ | |/ /| |___| |\ \\ /\ /\ \_/ / |\ \| |___| |/ /
\___/\_| \_/___/ \____/\_| \_|\/ \/ \___/\_| \_\_____/___/
UNDERWORLD Dataset v3
- Visualizes the Fast Inverse Square Root (FISR / Quake III) algorithm.
- 120 rows total (train split only).
- Main content: 1280px PNG image frames showing bit hacks, Newton-Raphson steps, error surfaces, 3D math plots.
- Numerical_data.csv (regression), metadata.json (conditional).
- Size ~3.5 MB. Generated via UNDERGROUND: FISR tool (downloadable in repo).
- Magic Number: 0x5f23aac5
- Newton Iterations: 3
- Input Range: 0.1 to 1000
- Maximum Error: 1.1742636926798086e+287%
Generated with UNDERWORLD: FISR by webXOS, Educational visualization of the Quake III Arena optimization algorithm.
The UNDERWORLD app by webXOS is available for download in the /underworld/ folder of this repo so users can create their own datasets.
Use cases:
Training ML models for fault detection / anomaly detection in time-series or sensor data.
Simulating hardware faults (bit flips, stuck-at, etc.) for robust AI / embedded ML.
Reliability engineering: predict system failures under errors.
Synthetic data for safety-critical systems (automotive, aerospace, IoT) where real fault data is rare.
Benchmarking error-correction / resilient algorithms.
Visual sequence learning → train models on math visualization sequences (frame prediction, video understanding).
Image-to-text / captioning → describe FISR steps from images.
Visual question answering → QA on algorithm visuals.
Regression from images → predict error metrics from visualization frames.
Educational multimodal models → teach bit manipulation / fast math approx.
Conditional generation → use metadata to condition on input range/error.
3D math function visualization benchmark → compare rendering / understanding.
Education:
- The Fast Inverse Square Root algorithm implementation
- Error analysis of the approximation
- 3D visualization of mathematical functions
- Bit-level manipulation techniques
Usage for Training:
- Use frames/ for visual sequence learning
- Use numerical_data.csv for regression tasks
- Use metadata.json for conditional generation
- Train models to understand optimization algorithms
Citation:
If you use this dataset, please cite: UNDERGROUND: FISR by webXOS, 2027
License:
MIT
- Downloads last month
- 16