McKinsey’s State of AI research identified something significant: the top 6% of organizations in AI performance are nearly three times as likely as others to fundamentally redesign their workflows when deploying AI. The difference is structural, not marginal.
The instinct in most organizations is to identify a use case, select a tool, stand up training, and launch. That is process thinking: sequential, organized around the technology. AI high performers do something different. They understand the work before they change it, and they treat workflow redesign as a precondition for successful deployment rather than a follow-on activity.
What does workflow redesign actually mean in practice? It is worth being specific, because the term gets used loosely.
It does not mean updating process flows, changing the technical architecture, or revising job descriptions. All of those may happen as a result, but they are outputs of workflow redesign rather than the thing itself.
Workflow redesign means looking through the worker’s lens at how a specific goal gets accomplished, and deliberately defining what changes in that sequence now that AI is part of the picture. That means deciding where AI and human steps should be restructured to reduce handoffs, where AI creates output requiring judgment the current process does not account for, what can be collapsed, automated, or eliminated, and what new friction the AI creates that must be designed around.
This requires a clear view of the workflow as it currently exists, the real version rather than the process map: where time goes, where effort concentrates, and what workers do that appears in no documentation.
Most organizations do not have that picture when they deploy AI. They are redesigning from an abstraction rather than from reality, and the gap between the intended workflow and the lived one is where AI deployments lose their ROI.
The organizations pulling ahead treat workflow intelligence as infrastructure, something built and maintained rather than commissioned once for a transformation initiative. They go into every AI deployment with a clear, worker-informed view of the workflows they are about to change. They measure, redesign, and remeasure.
That discipline is what separates the 6% from everyone else.
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