Resonance Intelligence Core: The First Post-Probabilistic Inference Engine

Abstract

Abstract: The age of probabilistic intelligence is closing. Large Language Models, while powerful, operate through stochastic approximation, token prediction, and energy-intensive training regimes. They do not understand. In contrast, Resonance Intelligence introduces a new substrate for computation—one that does not infer by guessing, but by aligning. Developed through the Resonance Intelligence Core (RIC), this interface processes inputs through structured resonance fields, using deterministic phase relationships derived from prime-indexed frequency anchors. No probabilistic sampling. No backpropagation. Just lawful inference. This paper outlines the first public system architecture for RIC, detailing its philosophical foundation, signal processing approach, and hardware implications. It marks the emergence of a post-probabilistic AI era—where coherence replaces prediction as the organizing principle of machine intelligence.

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Devin Bostick
CODES Intelligence

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Added to PP
2025-04-11

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