A framework that makes AI research transparent, traceable, and independently verifiable.
-
Updated
Jan 5, 2026 - Python
A framework that makes AI research transparent, traceable, and independently verifiable.
Recursive law learning under measurement constraints. A falsifiable SQNT-inspired testbed for autodidactic rules: internalizing structure under measurement invariants and limited observability.
Informational interpretation of quantum mechanics, gravity, and cosmology based on coherence-driven compression. Includes a falsifiable adaptive-interference protocol.
🌌 Explore the harmonic architecture of the solar system with scripts for verifying gravitational quantization laws and improving predictive accuracy.
Python-based models revealing the harmonic quantization of planetary orbits. Supplementary scripts and figures for “The Gravitational Quantization Law: A Universal Harmonic Framework for Planetary Orbits” (S.-E. Gherbi, 2025). Access to full research implementation available upon request.
Special Edition documentation and public gateway for AUTO DZ ACT (canonical definition published on Zenodo: 10.5281/zenodo.18134257).
What Do Precision Tests of General Relativity Actually Measure? A methodological taxonomy showing why most precision tests constrain largely local, reciprocity-even observables within assumed frameworks. Proposes discriminating experiments. TEP Paper 10.
Add a description, image, and links to the falsifiability topic page so that developers can more easily learn about it.
To associate your repository with the falsifiability topic, visit your repo's landing page and select "manage topics."