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AI Success Beyond Perfect Data Cover

AI Success Beyond Perfect Data

Bridging enterprise AI strategy with agentic, data-driven LLM pipelines (English Edition)

Paid access
|Jan 2026
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AI has become the cornerstone of innovation in modern enterprises. However, the common misconception that perfect data is a prerequisite often stalls initiatives. This book challenges that narrative, proving that AI success is possible even with messy, incomplete, or evolving data landscapes. The book offers a comprehensive roadmap for leveraging data science, automation, and generative AI. It begins with the principles of data science excellence, addressing how to extract value and insights from existing data. It then addresses automation, the deployment of ethical AI, and team leadership. Finally, it explores generative AI, such as its business potential, limitations, and how to balance LLMs with traditional AI techniques. Practical frameworks, real-world case studies, and success metrics are woven throughout the text. By the end of this book, readers will have a clear, actionable strategy to drive measurable AI outcomes, regardless of their current data maturity. This guide empowers leaders to drive innovation and business transformation through AI. WHAT YOU WILL LEARN ● Learn how to implement AI without perfect data quality. ● Discover practical frameworks to overcome organizational silos. ● Examine the ethical implications of automation and generative AI. ● Gain leadership insights to structure and scale data science teams. ● Balance predictive AI with LLMs for real results. WHO THIS BOOK IS FOR This book is for business executives and aspiring data leaders responsible for implementing data-driven strategies and AI in their organizations. It will also benefit data scientists and IT professionals aiming to bridge strategy and execution in enterprise AI adoption. TABLE OF CONTENTS Section 1: Crafting the Strategic Foundation for AI Value 1. AI Leader's Strategic Mindset for Value Creation 2. Navigating AI Project Challenges and Measuring Success 3. Building Pragmatic Data Strategy and Foundation 4. Operationalizing Data Science for Business Success 5. Enterprise AI Platform Section 2: Ethical AI, Automation, and Implementation Decisions 6. Ethical AI and Responsible Automation 7. Navigating Data Challenges without Synthetic Shortcuts 8. Business Imperative of GenAI and LLMs 9. Strategic Dilemma of AI Procurement 10. Leading and Overcoming Pitfalls in AI Automation Section 3: Mastering Generative AI and Emerging AI Paradigms 11. Ensuring Trustworthy AI Through Guardrails 12. Harnessing RAG and Prompt Engineering 13. Unlocking Next Frontier with Hybrid and Agentic AI 14. Next-Gen AI Applications Section 4: Leading Enterprise AI Transformation 15. Evolving CDAO and AI-Decision Culture 16. Communicating AI Value to Executives 17. Scaling AI Initiatives and Managing Change 18. AI Governance and Ownership Bibliography
PDF ISBN: 978-93-6589-931-3 | E-Pub ISBN: 978-93-6589-205-5
Publisher: BPB Publications
Publication date: 2026
Language: English
Pages: 418