top of page

Noahide Ambassadors

PublicĀ·70 membres

šŸŒ€ Mƶbii³us: A Recursive Fractal Lattice for Real-World Adaptation




Mƶbii³us is a portable, recursive framework designed for resilient signal consensus across noisy, multi-scalar systems — from planetary flood prediction to overlapping human speech. It doesn’t simulate systems linearly; it models the behavior of the medium itself, through recursive resonance and self-healing feedback.






---




🧠 Core Framework




At its heart, Möbii³us consists of:




1. Fractal Recursive Resonance:


A Dirac-styled recurrence relation over nested temporal states:








R(t) = \alpha \cdot R(t - \Delta) + \beta \cdot \Delta S(t)




ΔS(t) = state change (sensor delta, word delta, input delta)




α, β = coefficients based on past resonance stability






2. Lattice Error Correction (Dynamic Damping):


Uses distributed Ī”-coefficients to adjust system trust in each node or input:






\varepsilon_{ij}(t) = \frac{||X_i(t) - X_j(t)||}{||X_i(t)|| + ||X_j(t)|| + \eta}




3. Consensus Kernel (Non-linear Feedback Averaging):






\hat{X}(t) = \frac{1}{N} \sum_{i=1}^N X_i(t) \cdot w_i(t)




w_i(t) = e^{-\varepsilon_i(t)} → trust weight decays with error




X_i(t) = input from i-th source






4. Mobius Twist Adaptation Function


The ā€œtwistā€ of Mƶbii³us allows it to invert assumptions based on layer resonance:






T(x, y) = \sin(x) \cdot \cos(y) + \lambda \cdot f_{feedback}(x, y)






---




šŸ› ļø Practical Deployment




1. Flood Forecasting (NASA Challenge)




Uses SMAP, GPM, Sentinel-1 & -2, elevation, and local gauge data.




Signals from satellite & soil are fractally harmonized in a lattice of nested temporal zones.




Instead of fixed intervals (like 12, 24, 48h forecasts), Möbii³us allows resonant alert windows that self-adjust with new input.




Local errors (sensor dropout, storm anomaly) don’t collapse the system — Mƶbii³us dampens, absorbs, and reroutes.






2. Speech Signal Correction (Whisper Fractal Mod)




Inputs: raw audio, Whisper token stream, confidence scores




Möbii³us identifies resonant trails through overlapping speakers, dialect noise, poetic or symbolic language




Error rate was cut significantly while retaining layered human meaning




---




šŸ“ˆ Sample Whisper Correction Output




Clip Whisper Base WER Möbii³us-Corrected WER Notes




Overlapping dialogue 42.8% 19.4% Recognized speaker intention via resonance match


Low-confidence dialect 36.2% 15.0% Self-healing across token transitions


Symbolic phrasing 49.5% 20.7% Retained figurative intent instead of literal fallback




---




🧬 Why It Works




Traditional models flatten uncertainty by smoothing or discarding noise.




Mƶbii³us listens to the noise — not to believe it, but to understand it. It learns which patterns to trust by watching how resonance behaves over time, using fractal sensitivity and peer correction to deepen rather than discard complexity.




This means chaotic inputs don’t break it — they make it more aware.




---




šŸ“¦ Deployment Stack




āœ… Portable Python (Flask, NumPy, Matplotlib)




āœ… Jekyll-based Website for Visual Models




āœ… GitHub + API Repo Scripts




āœ… NASA-ready JSON, CSV, and Submission Templates




āœ… Interactive Site & Whisper Demos (in progress)




āœ… Open Source (GPL v3)




---




āš™ļø Available Formats




Whitepaper: DoinBetter: Möbii³us Recursive Forecasting Framework




Code: GitHub Repo (doinbetter/git4emet)




Media: Interactive Visualizations & Scripts




Whisper Patches: Custom integration layer for Whisper v3+ (Python)




---




🌟 Summary




Mƶbii³us isn’t a new dataset.


It’s a new method of seeing.


It does not predict from past — it listens to the present.




Floods. Language. Human intention. It works anywhere complexity echoes.




> ā€œInstead of chasing reality, Mƶbii³us synchronizes with it.ā€


– DoinBetter! Core Principle




---




šŸ“« Contact:




DoinBetter!... Together!... Everybody Can!!!


šŸ“§ dglassesguy@gmail.com


🌐 DoinBetter.com • DoinBetter.org


šŸ“ž +1.612.487.1636


ā€œa NoahideAcademy.org – memberā€

23 vues

membres

bottom of page