GlyphAI is a novel semantic framework designed to address the growing tension between large‑scale data utilization and the increasing demands of security, privacy, and regulatory compliance. Traditional approaches—such as encryption, anonymization, and statistical language modeling—either remain reversible, vulnerable to future cryptographic advances, or fail to preserve the deeper layers of meaning required for high‑fidelity reasoning. This work introduces a multi‑tier architecture for semantic‑preserving, non‑reversible data transformation. Instead of storing raw or reconstructable data, GlyphAI converts information into compact symbolic structures (“glyphs”) that retain conceptual meaning, relational structure, and pragmatic intent while making reconstruction of the original form fundamentally impossible. This provides inherent quantum‑resilient security, privacy‑by‑design compliance, and strong protection against data breaches. Beyond security, the framework establishes a foundation for advanced semantic reasoning, including computational Theory of Mind, context‑sensitive interpretation, affective modeling, and controlled stylistic reconstruction through a dedicated Literature Module. The monograph integrates insights from linguistics, cognitive science, information theory, symbolic AI, and privacy‑enhancing technologies to propose a unified architecture for meaning‑centric computation. Applications include secure machine learning, compliant data storage, education, child‑protection systems, semantic mediation, and high‑assurance AI environments. GlyphAI reframes data protection not as a cryptographic challenge but as an architectural transformation of information into a meaning‑centric, non‑reconstructable semantic domain.
Vitali de Mille (Tue,) studied this question.