Brain Criticality & Neuronal Avalanche Threshold — GenesisAeon Package 20
Project description
neural-avalanche-utac
GenesisAeon Package 20 (P20) — Brain Criticality & Neuronal Avalanches as UTAC System
Neuronal avalanches at criticality modelled as UTAC system.
Key result: Γ_brain ≈ 0.251 = Γ_AMOC → cross-domain universality at η = 50 %.
Installation
pip install neural-avalanche-utac
For local development:
pip install -e ".[dev]"
Quickstart
neural-utac run --duration 3600
neural-utac criticality-check
neural-utac gamma-universality
Integration in genesis-os
from genesis_os import GenesisOS
os = GenesisOS()
neural = os.load_package(20)
results = neural.run_cycle(duration_seconds=3600)
Benchmark
Validated against Hengen & Shew (2025).
Falsifiable Prediction
Any homeostatic system with 50 % efficiency setpoint converges to Γ ≈ 0.251.
Role in the GenesisAeon Ecosystem
neural-avalanche-utac is GenesisAeon Package P20 (domain: neuroscience
/ cortical criticality). It models neuronal avalanches at criticality as a
UTAC dynamical system and contributes the Γ_brain ≈ 0.251 cross-domain
universality result to the broader GenesisAeon CREP Criticality Spectrum.
Citation
DOI will be assigned automatically on first GitHub Release once
Zenodo–GitHub integration is enabled for this repo. In the meantime, see
CITATION.cff for the package citation and the GenesisAeon whitepaper DOI
badge above.
License
MIT
Project details
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