Harvard Business Review recently published an article on the “Five Critical Skills Leaders Need in the Age of AI.” The topic is timely, and the intent is solid. But using leadership models from the early 2000s to explain AI-era decision-making in 2025 is like showing up to a Formula 1 race on a bicycle. The speed of change has outpaced the frameworks built to describe it.
The reality is simple: the world no longer moves at business-school tempo. AI is reshaping industries weekly, not yearly, and leaders who rely on legacy models are navigating with outdated maps. You don’t manage this wave. You ride it—with real data, real customers, and zero tolerance for corporate theater.
This article outlines what traditional analyses miss, what AI-native leadership actually requires, and how leaders can prepare for 2026 and beyond.
HBR’s five skills—AI fluency, redesign, collaboration, coaching, and leading by example—are directionally correct. The problem isn’t the categories. It’s the cadence. These concepts were built for a pre-LLM environment where organizational change unfolded quarter by quarter, not hour by hour.
Leaders today don’t need another acronym. They need situational awareness. They need hands-on familiarity with how AI behaves in real workflows, with real data, under real pressure. You cannot coach teams through AI adoption if you haven’t used the tools yourself.
Many organizations still treat AI like a novelty. They bolt a model onto an existing dashboard, call it transformation, and move on. But transformation in the Age of AI doesn’t begin with lingo. It begins when leaders redesign decisions—not decks—with input from data, teams, and iterative learning.
(Reference: Harvard Business Review, “Five Critical Skills Leaders Need in the Age of AI” https://hbr.org/2025/10/5-critical-skills-leaders-need-in-the-age-of-ai )
The organizations generating actual value from AI aren’t the ones hosting panels or producing slide decks. They are the ones running experiments, testing workflows, measuring inputs and outputs, and learning in real time. Leadership in 2026 is not about being fluent in AI terminology. It is about being fluent in feedback loops.
Experiment fast. Measure faster. Learn continuously. This is the operational rhythm leaders need to cultivate.
A major red flag in the HBR framing is the emphasis on “spanning organizational boundaries.” In practice, modern AI leadership is not about spanning boundaries. It is about collapsing them. Marketing, operations, sales, and strategy no longer function effectively as silos. They need access to the same data, the same insights, and in many cases, the same AI systems.
The best leaders actively simplify their organizations. They use AI to shrink the distance between problem and solution, signal and response, question and answer.
One of the most overlooked aspects of AI adoption is the cultural shift it demands. Employees watch how leaders behave far more than they listen to what leaders say. The most effective leaders we’ve seen are not afraid to look inexperienced while testing a new tool in front of their teams.
They ask questions out loud. They experiment openly. They demonstrate curiosity over perfection. This is what creates psychological safety in an environment where tools evolve monthly and skill sets must adapt just as quickly.
Adoption grows when leaders participate. Not when they delegate.
Hierarchies were built for predictability. AI thrives in environments designed for adaptation. When insight flows only upward, innovation slows. When insight flows horizontally—across roles, departments, and levels—organizations make better decisions faster.
AI-native companies are rethinking:
Giving everyone—from intern to executive—the ability to ask questions and receive reliable, data-driven answers is the real unlock.
This is not decentralization for its own sake. It is redesigning around clarity, speed, and shared access to intelligence.
As we look ahead, five principles matter more than any traditional framework:
AI literacy is not achieved through panels, webinars, or PDFs. It emerges from hands-on experimentation. Plug AI into real workflows. Treat experiments like hypotheses. Break things responsibly. Learn quickly.
The strongest leaders close the loop between data, decision, and impact faster than their competitors. They use AI not to automate tasks but to accelerate learning cycles.
When data and insights move horizontally, organizations unlock ideas from every level. This redesign rewards curiosity, transparency, and shared access to intelligence.
Your team will follow what you do, not what you document. Model experimentation. Ask questions. Embrace imperfection publicly. That is how you normalize AI-driven change.
Clarity without motion creates paralysis. Motion without clarity creates chaos. The competitive advantage is speed—with direction. Leaders must communicate the “why,” then empower teams to move faster than traditional structures allow.
Leadership in the Age of AI is no longer about managing change. It is about matching the velocity of it. Traditional frameworks offer useful language, but they cannot keep pace with systems that evolve weekly. The leaders who thrive in 2026 will be the ones who treat AI not as a talking point, but as a daily practice.
Modern leadership is not about authority, complexity, or hierarchy.
It is about curiosity, experimentation, and momentum.
The leaders who understand that will shape the next decade of business transformation.

