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OverviewWhat does it mean to truly learn with artificial intelligence - not from it, not through it, but with it as a cognitive partner? AI LEARNING: A Unified Framework for Human-AI Cognitive Fusion in the Age of Artificial General Intelligence answers that question with scientific precision. Drawing on computational neuroscience, educational psychology, psychometrics, and behavioral economics, this book introduces a testable, quantitative model of cognitive evolution: L_AI = M × (R / Ω) where M represents metacognitive sovereignty, R represents neural-cognitive resonance, and Ω represents systemic resistance. This is not a metaphor. It is a measurable architecture for how human intelligence grows - or atrophies - in the presence of AI. At the center of the book is the NEXUS Framework, a rigorous scientific system for Human-AI Cognitive Fusion built across five integrated dimensions: Neural Synchronization, Executive Metacognition, Experience Consolidation, Cross-Domain Transfer, and Unified Synthesis. Each dimension is grounded in peer-reviewed research and translated into diagnostic tools, assessment protocols, and practical implementation strategies. Readers will learn how to: - Measure and develop their AoR (Architecture of Resonance) Index - a psychometrically validated composite score tracking cognitive evolution across five dimensions - Apply the HAC (Human-AI Collaboration) Protocol - a structured professional workflow that integrates human intuition with machine computation without sacrificing metacognitive control - Use Resonance Drills - neuroscience-based retrieval and synthesis practices that prevent fluency illusion and ensure durable, transferable learning - Implement the Ethical Pre-computation Protocol - a decision architecture for maintaining human agency in high-stakes, AI-assisted environments - Understand the Absorbing Markov Chain model of cognitive mastery - and why NEXUS-aligned development is, under realistic assumptions, a population-level inevitability The book draws on the Free Energy Principle (Friston, 2010), theta-gamma neural oscillation research, predictive processing theory, phase-locking value (PLV) neuroscience, and cognitive offloading literature to construct the first unified scientific account of what genuine cognitive fusion with AI requires - and what it costs when absent. AI LEARNING is written for executives, educators, researchers, cognitive scientists, psychologists, and high-stakes professionals who understand that the defining challenge of the AGI era is not building smarter machines. It is building humans whose intelligence evolves through partnership with them. This is the blueprint for Homo Sapiens 2.0. Full Product DetailsAuthor: Richie KimPublisher: Dr. Richie Imprint: Dr. Richie Dimensions: Width: 15.20cm , Height: 0.80cm , Length: 22.90cm Weight: 0.218kg ISBN: 9781067535223ISBN 10: 1067535225 Pages: 156 Publication Date: 24 April 2026 Audience: General/trade , General Format: Paperback Publisher's Status: Active Availability: Available To Order We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately. Table of ContentsReviewsAuthor InformationTab Content 6Author Website:Countries AvailableAll regions |
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