LLMs and Generative AI in the enterprise.
Inspire, develop, and guide a winning organization.
Understand the unique values and behaviors of a successful organization.
Create visible workflows to achieve well-architected software.
Understand and use meaningful data to measure success.
Integrate and automate quality, security, and compliance into daily work.
An on-demand learning experience from the people who brought you The Phoenix Project, Team Topologies, Accelerate, and more.
Learn how to enhance collaboration and performance in large-scale organizations through Flow Engineering
Learn how making work visible, value stream management, and flow metrics can affect change in your organization.
Clarify team interactions for fast flow using simple sense-making approaches and tools.
Multiple award-winning CTO, researcher, and bestselling author Gene Kim hosts enterprise technology and business leaders.
In the first part of this two-part episode of The Idealcast, Gene Kim speaks with Dr. Ron Westrum, Emeritus Professor of Sociology at Eastern Michigan University.
In the first episode of Season 2 of The Idealcast, Gene Kim speaks with Admiral John Richardson, who served as Chief of Naval Operations for four years.
DevOps best practices, case studies, organizational change, ways of working, and the latest thinking affecting business and technology leadership.
Just as physical jerk throws our bodies off balance, technological jerk throws our mental models and established workflows into disarray when software changes too abruptly or without proper preparation.
Sure, vibe coding makes you code faster—that’s the obvious selling point. But if you think speed is the whole story, you’re missing out on the juicy stuff.
The values and philosophies that frame the processes, procedures, and practices of DevOps.
This post presents the four key metrics to measure software delivery performance.
February 11, 2026
The AI noise is deafening right now. Headlines overflow with hype, doom scenarios, and predictions about robots taking over our lives. But these headlines are pointing the camera in the wrong direction.
The real extinction-level event isn’t about the technology at all. It’s the slow, invisible obsolescence of our organizational operating systems.
If you look beyond the headlines, you’ll find organizations that have been quietly integrating AI solutions for years. They’ve learned something critical: AI can’t be tacked onto existing structures. It demands an entirely new approach to operating.
The 2025 DORA report confirmed what many of us suspected: AI functions as both a mirror and a multiplier. For high-performing organizations with solid foundations, AI becomes a powerful accelerator. For those with dysfunctional systems, it magnifies chaos. After surveying nearly 5,000 professionals globally, the research revealed that 90% of organizations have adopted AI in their software development, but the benefits aren’t automatically flowing to performance.
Those who fail to recognize this will face insurmountable competitive disadvantages. The twentieth-century operating system—hierarchical, linear, built for an era of specialization and control—has been obsolete for years. Yet most companies still rely on it.
Think about it: McKinsey projects AI will deliver an additional $13 trillion in global economic output by 2030. Yet most organizations are trying to integrate AI on top of what author Melissa Reeve calls “linear structures”—where strategy flows down through layers of management and work moves sequentially across functional departments.
As Reeve puts it: “That’s like trying to build the Mars Rover with an assembly line designed for the Model T.”
Companies are building static learning curricula on information that changes daily. They’re bolting AI onto processes designed for human bandwidth. They’re creating new career ladders for AI roles without realizing the hierarchy has already melted into a network.
The DORA research revealed seven foundational capabilities that determine whether AI amplifies excellence or chaos: clear AI policies, healthy data ecosystems, strong version control, working in small batches, user-centric focus, and quality internal platforms. But here’s what the DORA report doesn’t tell you: how to build these capabilities in an organization designed for the last century.
This is the gap Hyperadaptive fills.
Organizations that win with AI don’t just adopt new tools—they create inherently different companies. Melissa Reeve calls them Hyperadaptive Organizations.
Drawing on thirty years studying organizational transformation—from the Toyota Production System to Agile at enterprise scale—Reeve identifies five core capabilities that distinguish these organizations:
These aren’t buzzwords. They’re organizational muscles you need to develop to operate effectively when AI compresses both time (from strategy to execution) and distance (from concept to delivery).
Hyperadaptive provides a five-stage roadmap for building these capabilities. Stage 1 focuses on foundations—establishing AI policies, building data ecosystems, and creating psychological safety—before any major technology implementation. Stage 2 optimizes processes while augmenting human capabilities. Only in Stage 3 do you implement focused automations. Stages 4 and 5 guide organizations through the process of rewiring their structure and governance for true hyperadaptivity.
This deliberate progression builds organizational muscle memory for working alongside AI systems, avoiding the instability that plagues organizations trying to bolt AI onto unchanged structures.
The real challenge isn’t identifying what needs to change—it’s executing transformation while keeping the organization functional. Hyperadaptive addresses this through three key approaches:
Grounded in proven frameworks: Rather than inventing new theories, the book synthesizes decades of organizational research—Clayton Christensen’s disruption theory, Amy Edmondson’s psychological safety, Daniel Kahneman’s decision-making insights, and the hard-won lessons of Lean, Agile, and DevOps—and shows how to apply them in the AI era.
Stage-by-stage progression: The book recognizes that organizations can’t transform through big-bang initiatives. Instead, it provides a practical path through five evolutionary stages, each building capabilities that enable the next. Most organizations can start making progress within weeks, not months.
Real implementation guidance: Each stage includes specific practices, diagnostic questions, and decision frameworks. For example, Stage 2 teaches how to map processes effectively, identify high-value augmentation opportunities, and measure impact—not just theoretically, but with templates and examples from organizations that have done it.
The book meets you where you are. Some readers are already experimenting with AI and need guidance on scaling beyond pilots. Others face the dual challenge of modernizing legacy systems while simultaneously adopting AI. The framework adapts to both scenarios.
Hyperadaptive is more than another book explaining why AI matters—it’s a practical guide for rewiring the operating system for an AI-native world.
What distinguishes Hyperadaptive is its recognition that AI transformation is fundamentally about organizational design, not tool selection. The book provides the blueprint for building organizations that can operate at the speed of computation—where strategy flows quickly to execution, where learning happens continuously, and where humans and AI collaborate effectively.
The question isn’t whether you should embrace AI. It’s whether you can rewire your organization’s operating system to support it.
Pre-order Hyperadaptivefrom your preferred retailer and visit hyperadaptive.solutions to explore pre-release packages.
Managing Editor at IT Revolution working on publishing books and guidance papers for the modern business leader. I also oversee the production of the IT Revolution blog, combining the best of responsible, human-centered content with the assistance of AI tools.
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