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The AI Stack: A Seven-Layer Reference Model for Building, Securing, and Governing Enterprise AI
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- FormatePub
- ISBN8233694134
- EAN9798233694134
- Date de parution12/03/2026
- Protection num.pas de protection
- Infos supplémentairesepub
- ÉditeurLinda Balsamo
Résumé
Most enterprises don't fail at AI because their models are wrong. They fail because the system around the model was never properly built, secured, or governed. The AI Stack introduces a seven-layer reference model for enterprise AI - two parallel stacks covering infrastructure and security, and the integration points where they meet. Modeled on the clarity of the OSI framework, it gives leaders, architects, and governance teams a shared language for reasoning about AI systems end to end. This is not a guide to building models. It is a guide to building AI you can stand behind.
WHAT THIS BOOK DELIVERS ? THE AI INFRASTRUCTURE STACK Seven layers - from hardware and compute to user interfaces - showing where AI is built, what each layer demands, and why foundations determine outcomes. ? THE AI SECURITY STACK A parallel seven-layer model covering data ingestion, governance, model security, runtime controls, and audit - showing where AI must be protected at every level, not just at the perimeter. ? INTEGRATION POINTS Layer-by-layer analysis of where the two stacks intersect, the mechanisms that hold them together, and the failure modes - drawn from financial services, healthcare, and manufacturing - that appear when they don't. ? THE REFERENCE FRAMEWORK A master integration table, a responsibility matrix mapping ownership across all seven layers, and three enterprise scenarios showing the stack applied where real consequences emerge. ? THE SEVEN INTEGRATION QUESTIONS One question per layer that every CXO should be able to answer before deploying AI at scale.
If any answer is uncertain - that layer requires attention before the one above it. Three things make this framework different from most AI books: It starts at Layer 1 - not at the model. Trust in AI begins with hardware integrity and ingestion discipline, not with algorithms. It names ownership. Every layer has a responsible team, a security owner, and a governance escalation path - because a framework without accountability is just a diagram.
It confronts operational reality. Control drift, feature contamination, poisoned intelligence, policy decay - the failures enterprises actually experience, not the ones that make headlines. WHO THIS BOOK IS FOR Chief AI Officers, CISOs, CTOs, and senior leaders responsible for AI strategy and risk. Enterprise architects designing systems that must scale and endure. Advisors and consultants seeking vendor- neutral clarity.
Organizations moving from AI experimentation to enterprise governance. Build with structure. Secure with discipline. Govern with clarity.
WHAT THIS BOOK DELIVERS ? THE AI INFRASTRUCTURE STACK Seven layers - from hardware and compute to user interfaces - showing where AI is built, what each layer demands, and why foundations determine outcomes. ? THE AI SECURITY STACK A parallel seven-layer model covering data ingestion, governance, model security, runtime controls, and audit - showing where AI must be protected at every level, not just at the perimeter. ? INTEGRATION POINTS Layer-by-layer analysis of where the two stacks intersect, the mechanisms that hold them together, and the failure modes - drawn from financial services, healthcare, and manufacturing - that appear when they don't. ? THE REFERENCE FRAMEWORK A master integration table, a responsibility matrix mapping ownership across all seven layers, and three enterprise scenarios showing the stack applied where real consequences emerge. ? THE SEVEN INTEGRATION QUESTIONS One question per layer that every CXO should be able to answer before deploying AI at scale.
If any answer is uncertain - that layer requires attention before the one above it. Three things make this framework different from most AI books: It starts at Layer 1 - not at the model. Trust in AI begins with hardware integrity and ingestion discipline, not with algorithms. It names ownership. Every layer has a responsible team, a security owner, and a governance escalation path - because a framework without accountability is just a diagram.
It confronts operational reality. Control drift, feature contamination, poisoned intelligence, policy decay - the failures enterprises actually experience, not the ones that make headlines. WHO THIS BOOK IS FOR Chief AI Officers, CISOs, CTOs, and senior leaders responsible for AI strategy and risk. Enterprise architects designing systems that must scale and endure. Advisors and consultants seeking vendor- neutral clarity.
Organizations moving from AI experimentation to enterprise governance. Build with structure. Secure with discipline. Govern with clarity.























