Enterprise AI Project Playbook - Volume I
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29,99 |
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31,94 |
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31,94 |
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Beschrijving
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Enterprise AI is no longer experimental. Organizations are moving beyond prototypes toward systems that must operate reliably, scale across workflows, and deliver measurable business outcomes. >The Enterprise AI Project Playbook addresses this shift. It provides a structured, engineering-focused approach to implementing AI systems across real-world enterprise environments. Rather than treating AI as isolated models, this book frames it as a system problem. It integrates business objectives, data foundations, architecture, orchestration, governance, and operational workflows into a cohesive execution model. Its goal is simple: help organizations move from experimentation to execution, and build AI systems that deliver consistent, enterprise-scale impact. Volume I focuses on the core capabilities needed to design enterprise-grade AI systems. It covers system design patterns, data architecture, model lifecycle management, evaluation frameworks, and integration strategies. It also addresses the realities of probabilistic systems, including failure modes, non-determinism, and the need for monitoring and feedback loops. A central theme is governance. As AI systems begin to influence decisions, organizations must establish controls for accountability, auditability, compliance, and risk management. This volume provides practical frameworks to design AI systems that are reliable, controlled, and ready for enterprise deployment.
Enterprise AI is no longer experimental. Organizations are moving beyond prototypes toward systems that must operate reliably, scale across workflows, and deliver measurable business outcomes. >The Enterprise AI Project Playbook addresses this shift. It provides a structured, engineering-focused approach to implementing AI systems across real-world enterprise environments. Rather than treating AI as isolated models, this book frames it as a system problem. It integrates business objectives, data foundations, architecture, orchestration, governance, and operational workflows into a cohesive execution model. Its goal is simple: help organizations move from experimentation to execution, and build AI systems that deliver consistent, enterprise-scale impact. Volume I focuses on the core capabilities needed to design enterprise-grade AI systems. It covers system design patterns, data architecture, model lifecycle management, evaluation frameworks, and integration strategies. It also addresses the realities of probabilistic systems, including failure modes, non-determinism, and the need for monitoring and feedback loops. A central theme is governance. As AI systems begin to influence decisions, organizations must establish controls for accountability, auditability, compliance, and risk management. This volume provides practical frameworks to design AI systems that are reliable, controlled, and ready for enterprise deployment.
AmazonPagina's: 709, Paperback, Independently published
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