The gap between AI ambition and AI execution in enterprise asset management is not a technology problem. It is a data, culture, and platform readiness problem — and the cost of staying on the wrong side is growing fast.
Sixty-five percent of maintenance teams say they will adopt AI by the end of 2026. Only 32 percent have done it so far.
That is not a rounding error. It is a 33-point gap between intent and execution — and it matters more than most operational leaders realize. Unplanned downtime now costs Fortune 500 manufacturers $1.5 trillion annually, a figure that has climbed 74 percent in just five years. At the same time, agentic AI adoption in manufacturing is projected to quadruple from 6 percent to 24 percent by year-end. The organizations that close this gap will capture outsized value. The ones that do not will watch the distance between themselves and their competitors widen every quarter.
The tempting explanation is that AI is still too immature for the plant floor. That is no longer true. The real barriers are less photogenic: data that is not ready, teams that have not been prepared, and technology stacks that were never designed to work together.