This repository presents a two-layer mathematical foundation for deterministic computation, learning, and distributed artificial intelligence. The first paper develops a fully rigorous operator–theoretic core based on a single positive self-adjoint seed operator and its C*-algebraic closure.The second paper extends the framework to planetary-scale distributed intelligence via spectral diffusion, variational learning, and categorical universality. All results are derived constructively using functional analysis, spectral theory, gradient flows, and analytic semigroups.No heuristic or architectural assumptions are used at the foundational level. Together, the works establish a minimal and unified mathematical infrastructure for computational science.
Quoc Truong Nguyen (Tue,) studied this question.