Algorithmic decision systems—deployed for criminal justice, credit scoring, content moderation, hiring, and social governance—exhibit a predictable failure mode: systems introduced as "pilots," "supplements," or "efficiency tools" become permanent infrastructure, structurally altering the relationship between institution and subject without establishing adequate consent, explainability, or accountability mechanisms. This paper applies Zero Leap Theory (ZLT) to demonstrate that algorithmic consent operates as a physical constraint: a necessary permeability condition for legitimate automated intervention. When this gate closes—through unexplainable decisions, absent human appeal, or opacity by design—no increase in algorithmic accuracy can substitute for its absence without generating structural resistance, legitimacy collapse, and systemic harm. We introduce the concept of AI Exceptionalism: the unique characteristics that make algorithmic systems particularly vulnerable to the Emergency Trap, including decision velocity, scale, inherent opacity, accountability diffusion, and data lock-in. We analyze emerging regulatory frameworks (EU AI Act, US Executive Order on AI, GDPR Article 22) through ZLT's formal structure, demonstrating that these frameworks encode thermodynamically coherent constraints but lack operational enforcement mechanisms. Historical analysis of algorithmic governance failures—COMPAS criminal risk assessment (2000-present), China's Social Credit System (2014-present), and the UK A-Level Algorithm (2020)—validates ZLT's predictions: algorithmic systems deployed without structural safeguards drift toward permanence and scope expansion with mathematical predictability. We provide an operational audit protocol (IAS-ALG: Algorithmic Audit Standard) with explicit criteria for when AI deployment constitutes structural negligence, introduce the Algorithmic Resistance Index as an early warning proxy, and propose the Emergency AI Powers Patch as a normative framework for legitimate algorithmic governance. Core principle: No explainability, no deployment. No human appeal, no legitimacy. No sunset, no accountability. ---Version 1.1 Updates (January 2026):- Added Algorithmic Negligence Per Se corollary (O-min rule)- Added ARI Action Thresholds with quantified triggers- Added Strict Liability corollary for DP-Score threshold- Added Minimum Diagnostic Packet (MDP) requirement- Added IAS-ALG in 60 Seconds visual checklist
DANNY YUBI DAGOGLIANO (Sat,) studied this question.