2024 Edition! This practical and concise guide provides senior decision-makers with a clear, accessible roadmap for harnessing the power of generative AI, enhancing innovation, and boosting business outcomes.
Drawing on insights from AI-enabled business transformations in diverse sectors, it presents a validated strategic approach. This blueprint not only outlines best practices but also showcases pioneering use cases, integrating them into a cohesive framework for practical implementation. This scenario-based approach helps leaders understand where and how to apply the practices outlined.
Spanning across areas from strategic alignment and talent development to ethical governance and sustaining a competitive edge amid relentless underlying progress, it delivers clarity for charting an optimal Generative AI roadmap.
This book is designed for busy executives and can be read in less than two hours. For a more in-depth exploration of Generative AI for business, check out our book "Introduction to Large Language Models for Business Leaders: Responsible AI Strategy Beyond Fear and Hype."
Who this Book is For
The core audience comprises senior executives like CEOs, Transformation advisors, strategic planners, technology heads, product leaders or functional unit heads keen on harnessing generative AI for a competitive edge but needing authoritative counsel consolidating recent lessons into a crisp actionable package to aid planning.
Key Topics CoveredUnderstanding Generative AI: What it is, key capabilities and applications, strengths and limitations.
Strategic Alignment: Mapping generative AI to business goals, prioritizing high-impact use cases, managing risks.
Talent and Skills: Developing in-house capabilities through upskilling programs, attracting and retaining external AI talent.
Technology Integration: Assessing IT infrastructure readiness, optimizing make vs buy decisions for AI solutions.
Implementation and Scaling: Pilot testing for viability, expanding validated applications through metrics-driven scaling.
Risk Management and Ethics: Governing biases and reliability issues, safeguarding data privacy and security.
Organizational Change: Securing leadership commitment, preparing the workforce to adopt new AI-powered processes.
Continuous Improvement: Quantifying value through KPIs, optimizing models through responsive feedback loops.
Future-Proofing: Investing in R&D for sustained innovation, building agility to adapt to rapid AI progress.
Featuring use studies, business scenarios, practical frameworks, and research insights from top consultancies and AI leaders, this book delivers a visionary yet pragmatic roadmap for AI transformation. A must-read guide for any organization looking to leverage generative AI for competitive advantage.