A global survey of 625 chief executives and board members has uncovered a stark disconnect in how corporate leaders approach artificial intelligence. Sixty-one percent of CEOs reported that their boards are pushing AI transformation too quickly, according to the research.
The study polled 351 CEOs and 274 board members from companies with at least $100 million in annual revenue. It reveals persistent disagreements over the pace of AI deployment, the depth of board understanding, and the pressure CEOs feel to deliver returns from AI initiatives.
More than half of CEOs surveyed said that hype surrounding AI is distorting boardroom judgment. Nearly 40 percent stated that their boards lack an informed view of how AI reshapes growth strategy. One in three CEOs believe their board overestimates the human capabilities that AI can replace.
The Confidence Gap
The survey's most striking finding is the gap between how board members rate their own AI knowledge and how CEOs rate it. Three-quarters of board members said their AI understanding is on par with or ahead of their peers. CEOs were far less impressed. The implication is that many boards are making consequential decisions about AI strategy based on knowledge their chief executives consider inadequate.
One managing director involved in the research noted that the gap can be closed if CEOs take direct responsibility for board education. Rather than delegating AI briefings to a chief technology officer or outside consultant, CEOs should personally lead upskilling sessions. These sessions should demonstrate what current AI tools can and cannot do, and should frame AI in terms that distinguish between tasks where the technology substitutes for humans and tasks where it complements them.
That distinction is critical. Boards that treat AI as a wholesale replacement for human labor are likely to push for faster, broader deployment than the technology can support. Boards that understand AI as a complement to human work are more likely to approve investments scoped to realistic outcomes. The survey suggests many boards fall into the first camp, making hype-driven investment decisions increasingly problematic.
The Accountability Mismatch
The survey also exposed a gap in how CEOs and boards perceive accountability for AI results. CEOs estimated that 35 percent of their performance evaluation now depends on delivering AI-related returns on investment. Board members put the figure at 27 percent. The eight-percentage-point difference suggests CEOs feel more pressure to show AI results than their boards realize they are applying.
This matters because it shapes behavior. A CEO who believes more than a third of their evaluation hinges on AI outcomes has a strong incentive to prioritize AI projects, even if those projects are premature or poorly scoped. A board that believes the figure is lower may not understand why its CEO is resisting calls to move faster, or may underestimate the operational risk of accelerating deployment to meet perceived expectations.
A senior partner who leads global CEO advisory practice emphasized that CEOs need to bring their boards along on the same learning journey they have taken, but compressed and focused on building genuine understanding rather than surface-level awareness. The engineering and operational realities of AI deployment are considerably messier than the boardroom presentations that often precede investment decisions.
What the Survey Does Not Cover
It is worth noting what the research does not cover. The survey does not measure whether the CEOs who say their boards are rushing are themselves correct in their caution, or whether some boards are right to push harder. It is possible that in certain industries, faster AI adoption is exactly the right strategy and that CEO resistance reflects organizational inertia rather than sound judgment. The data captures a perception gap, not a verdict on who is right.
The survey also does not break down results by industry, geography, or company size beyond the $100 million revenue threshold, which limits conclusions about specific sectors. A board pushing AI transformation at a financial services firm faces a very different risk profile from a board doing the same at a manufacturing company, yet the survey treats both identically.
What the research does establish is that the most senior leaders at large companies are not aligned on the most consequential technology investment of the current era. Approximately 80 percent of both CEOs and board members agreed that prospective board candidates should be required to demonstrate a measurable understanding of how AI can reshape their industry. This finding suggests both groups recognize the knowledge gap even if they disagree on its severity.
The Harder Question: Governance and AI
The deeper issue the survey raises is whether traditional board governance is suited to decisions about AI at all. Boards typically meet a handful of times per year, rely on management presentations for information, and are composed of members whose primary expertise may lie in finance, regulation, or sector-specific operations rather than technology. That structure worked well when the pace of technological change allowed for quarterly deliberation. It is less clear that it works when the questions that matter most about AI require technical fluency that most board members do not have.
The recommendation that CEOs should personally educate their boards is practical but also reveals the problem. If the chief executive is the primary source of a board's AI understanding, the board's ability to independently evaluate the CEO's AI strategy is compromised. The survey does not propose a solution to this structural tension, but it does make the tension visible.
For companies trying to scale AI in 2026, the message is that alignment at the top is not optional. Boards that push too fast risk approving projects that fail to deliver returns. CEOs that move too slowly risk losing competitive ground. For both groups, the temptation to let AI substitute for clear thinking rather than support it is a risk that no survey can fully quantify.