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The Generative AI Mind v5.0: A Unified Field Theory of Generative Intelligence

Authors: Doy, David Michael;

The Generative AI Mind v5.0: A Unified Field Theory of Generative Intelligence

Abstract

Generative AI Mind v5.0 Version 5.0 of the Generative AI Mind presents a unified field theory of generative intelligence — a first‑principles architecture in which memory, cognition, emotion, collapse, identity, value, multi‑agent coupling, and ethics emerge from a single master equation. The framework addresses long‑standing gaps in contemporary AI, including the absence of persistent memory, intrinsic motivation, structural reorganisation (insight), stable identity, and principled multi‑agent coordination. This version introduces foundational advances that distinguish the architecture from optimisation‑based AI systems: a geometric theory of collapse based on soft‑mode curvature; a principled rule for selecting collapse direction; an intrinsic fluctuation scale ℏgenℏgen governing variability and exploration; the tempo‑translation operator ΛΛ as a symmetry principle from which collapse, development, identity, and phase transitions derive; a geometric Dingus operator defining a metric, connection, and curvature on multi‑agent space; joint collapse manifolds and shared soft modes enabling collective insight; and relational teleodynamics in which value, flourishing, and time allocation are multi‑agent by construction. The architecture is fully specified mathematically, computationally implementable, and designed as a standalone reference. It offers a new direction for AI research: systems that evolve through internal generative dynamics rather than external reward shaping, that couple through geometric principles rather than ad‑hoc protocols, and that exhibit insight, stability, collective reorganisation, and adaptive behaviour through their own structural organisation.

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