Scientific R&D Engine

Axiom-01

A white-box hypothesis-driven reasoning system designed to discover latent structures between phonetic profiles and biological/contextual traits.

Verified Invariant Benchmarks

Specification Parameter Audited Value
Core Objective Phonosemantic Reasoning Engine
Dataset Size 230+ Animals (4 Categories)
Hypothesis Threshold |r| >= 0.20, 70% Consistency
GitHub Repository Zierax/Axiom-01 ★ 0
Primary Language Python
Last Updated 2026-05-30
License Authorization Open Source MIT License
Framework Integration Verification Protocol (Active R&D)

Technical Specifications & Architecture

Axiom-01 processes raw animal naming strings through a three-stage white-box pipeline. Stage 1 (Phonetic Signal Space) converts names into quantitative vectors: syllabic counts (English vs. Latin), plosive-to-soft opening ratios, vowel heaviness indices, and sibilance scores. Stage 2 (Hypothesis Engine) scans a 230+ entry master dataset for statistical correlations between phonetic profiles and biological traits (danger score, speed, mass, habitat overlap), registering only hypotheses that satisfy |r| >= 0.20 across >=70% of data with Z-score gating at 1.8 for anomaly flagging. Stage 3 (Reasoning Engine) provides classify/explain/generate modes -- predicting biological profiles, deconstructing existing names against active hypotheses, or solving for phonetic structures that match target biological constraints -- all with zero hardcoded linguistic rules and 100% traceable hypothesis_id paths.

Related Deterministic Engines

PhonosemanticsWhite-BoxHypothesisPython
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