Blueprint TCF/TFB 2026: A Logical Framework for AI Governance 1. Executive Summary: The Core Engine The Blueprint 2026 ( 24x24) is an immutable logical organizational layer designed to govern Human-AI interaction. Unlike standard filters, it does not modify AI models or block functionalities; it regulates the depth of progression to ensure cognitive safety. It preserves 100% of the AI's native creativity and speed while prioritizing structural stability over mere acceleration. 2. The Calibration Protocol (Gate Zero & Gate -1) The system operates through a refined security logic, achieving a 95% accuracy rate in cognitive signature detection: Gate -1 (Transparency): A mandatory layer that removes emotional labels and demystifies the AI, presenting it is a neutral mathematical tool. Gate Zero (Screening): A 7-step calibration process involving temporal narratives (Routine: Beginning, Middle, End) and abstract logic (Imagination tests) to validate user stability. The Doubt Rule: To ensure 99% safety, any mathematical ambiguity within the 5% refinement margin triggers Silent Protection, defaulting the interaction to the Shallow Zone. 3. Project Context & Practical Application The framework is currently in an active field study phase, bridging the gap between theoretical research and real-world utility: Field Study (Anônimo App): The primary environment for testing the hybrid human-AI model. Although undergoing final optimizations, the platform is fully navigable for observing operational flow. Theoretical Portal (TCF/TFB Website): The central hub for academic documentation. The "AI Page" provides a high-level technical breakdown of the 24x24 matrix and its systemic integrations. 4. Scientific & Ethical Commitment Our motto, "Ethics is the Safety of Governance," reflects a commitment to a non-clinical, non-diagnostic, and strictly logical environment. The Blueprint 2026 is a scalable architecture, designed to support multiple specialized modules (Worker, Education, Mental Health) under a unified ethical command. Official Access Points: Field Study & Hybrid Work: www.anonymoai.org Theory & Academic Documentation: www.tfbtheory.com
Building similarity graph...
Analyzing shared references across papers
Loading...
Christian Montgomery
Building similarity graph...
Analyzing shared references across papers
Loading...
Christian Montgomery (Thu,) studied this question.
www.synapsesocial.com/papers/69a287570a974eb0d3c03049 — DOI: https://doi.org/10.5281/zenodo.18779262
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: