Abstract: This Technical Note introduces the first formal thermodynamic analysis of reasoning substrates used in artificial intelligence. We show that among discrete token systems, continuous vector fields, periodic chromatic spaces, and non-periodic perceptual manifolds, only a continuous seven-dimensional chromatic manifold aligned with human perceptual–cognitive geometry achieves the global free-energy minimum. Energy is defined as a composite of uncertainty, representational redundancy, perturbation instability, serial transition cost, and long-range inconsistency. The 7D chromatic manifold minimizes all five components simultaneously without trade-offs, making it the unique stable ground state for scalable, non-symbolic, low-entropy reasoning. This work formalizes the thermodynamic foundation of chromatic cognition as implemented in the Ambient Era Canon (2026), including Chromatic Semantics, CE-2 Chromatic Encoding, and Ambient Search. It establishes chromatic reasoning not as an engineering preference but as a thermodynamic necessity for future AI systems.
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Raynor Eissens (Mon,) studied this question.
www.synapsesocial.com/papers/69a7cd8cd48f933b5eeda079 — DOI: https://doi.org/10.5281/zenodo.18839997
Raynor Eissens
Ambient Systems (Netherlands)
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