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AI FinOps: The Practitioner's Guide to Managing, Optimizing, and Governing AI Costs at Scale
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- FormatePub
- ISBN8235564831
- EAN9798235564831
- Date de parution26/04/2026
- Protection num.pas de protection
- Infos supplémentairesepub
- ÉditeurIoakim Ioakim
Résumé
AI is transforming enterprise operations. It is also transforming enterprise budgets - and most organisations are not ready. Token-based billing, GPU infrastructure costs, multi-model routing decisions, and the runaway economics of autonomous AI agents have created a cost management challenge that traditional cloud FinOps was never designed to address. AI FinOps: The Practitioner's Guide to Managing, Optimizing, and Governing AI Costs at Scale closes that gap.
Written by a 30-year technology and cybersecurity presales veteran, this book is the definitive practitioner's handbook for everyone responsible for making AI investment financially accountable - FinOps engineers, cloud architects, AI product managers, technology finance leaders, and the CTOs and CFOs who need to govern AI spend at scale. Across twelve comprehensive chapters, the book delivers: Token economics and LLM pricing - understand exactly how API billing works, why context windows compound costs dramatically, and how prompt engineering decisions translate directly into monthly invoice line items.
AI infrastructure economics - GPU selection, training cost estimation formulas, inference serving architectures, and the rigorous break-even analysis for the API vs self-hosting decision. Multi-model strategy - the model selection matrix, four routing strategies from rule-based to classifier-based, cascading architecture design, and fine-tuning economics that deliver 70-85% cost reductions with no quality loss.
AI cost visibility - a twelve-dimension tagging taxonomy, AI gateway architecture options, the FOCUS specification for cross-provider billing normalisation, and a five-level visibility maturity model. The optimisation playbook - eighteen concrete levers with documented saving ranges, a prompt compression before/after worked example, caching strategy decision tables, and three real-world case studies delivering 59-96% cost reductions.
Governance and guardrails - a ten-domain policy framework, federated organisational model, budget governance tiers, eight guardrail types, and a five-cadence operating rhythm. Agentic AI cost governance - the cost multiplication mechanics, P95 scenario cost modelling, eight agentic guardrail types, seven architecture pattern cost profiles, and a five-level agentic maturity model. AI unit economics and ROI - ten cost-per-outcome metrics, eight ROI value categories, industry benchmarks by use case, and executive communication frameworks tailored to CFO, CTO, board, and engineering audiences.
Maturity model and roadmap - a comprehensive five-dimension, five-level maturity framework, a 12-question self-assessment scorecard, and a 90-day implementation roadmap with phase-by-phase KPIs. Grounded in the FinOps Foundation's State of FinOps 2026 data - confirming that AI cost management is now the most in-demand FinOps skill globally - this book equips practitioners to move from reactive cost discovery to proactive value governance.
AI costs are not going to manage themselves. This book shows you how.
Written by a 30-year technology and cybersecurity presales veteran, this book is the definitive practitioner's handbook for everyone responsible for making AI investment financially accountable - FinOps engineers, cloud architects, AI product managers, technology finance leaders, and the CTOs and CFOs who need to govern AI spend at scale. Across twelve comprehensive chapters, the book delivers: Token economics and LLM pricing - understand exactly how API billing works, why context windows compound costs dramatically, and how prompt engineering decisions translate directly into monthly invoice line items.
AI infrastructure economics - GPU selection, training cost estimation formulas, inference serving architectures, and the rigorous break-even analysis for the API vs self-hosting decision. Multi-model strategy - the model selection matrix, four routing strategies from rule-based to classifier-based, cascading architecture design, and fine-tuning economics that deliver 70-85% cost reductions with no quality loss.
AI cost visibility - a twelve-dimension tagging taxonomy, AI gateway architecture options, the FOCUS specification for cross-provider billing normalisation, and a five-level visibility maturity model. The optimisation playbook - eighteen concrete levers with documented saving ranges, a prompt compression before/after worked example, caching strategy decision tables, and three real-world case studies delivering 59-96% cost reductions.
Governance and guardrails - a ten-domain policy framework, federated organisational model, budget governance tiers, eight guardrail types, and a five-cadence operating rhythm. Agentic AI cost governance - the cost multiplication mechanics, P95 scenario cost modelling, eight agentic guardrail types, seven architecture pattern cost profiles, and a five-level agentic maturity model. AI unit economics and ROI - ten cost-per-outcome metrics, eight ROI value categories, industry benchmarks by use case, and executive communication frameworks tailored to CFO, CTO, board, and engineering audiences.
Maturity model and roadmap - a comprehensive five-dimension, five-level maturity framework, a 12-question self-assessment scorecard, and a 90-day implementation roadmap with phase-by-phase KPIs. Grounded in the FinOps Foundation's State of FinOps 2026 data - confirming that AI cost management is now the most in-demand FinOps skill globally - this book equips practitioners to move from reactive cost discovery to proactive value governance.
AI costs are not going to manage themselves. This book shows you how.






















