Every organization we work with has plenty of data.
They have system telemetry, process mining outputs, engagement survey results, and productivity dashboards. What they typically do not have is a clear answer to this question: in the workflows that matter most to our AI transformation, what is actually getting in the way?
System data tells you what happened. It does not tell you why effort is high, where time goes, or what workers do off-system to compensate for a process that does not quite work. Process mining shows patterns in structured flows and misses the informal coordination, judgment calls, and workarounds that never touch a system. Engagement surveys reveal that workers are frustrated, but rarely which workflows are most broken or what would fix them.
The gap is a data philosophy problem rather than a technology problem. We have gotten comfortable measuring what systems can easily log, and uncomfortable relying on what workers know firsthand.
What changes that equation is asking workers directly: specific, brief questions about the workflows they actually run.
A head of AI at a Fortune 500 insurance company described the challenge well. His team had undertaken a massive workflow mapping effort across HR, finance, and product, a critical input to their AI strategy. “The workload is heavy, it’s slow, and we rely heavily on external consultants to drive it. At the end of the day, we still don’t have quantitative data behind it — so I can’t measure progress.”
That is the problem with qualitative methods at scale. Interviews and workshops provide depth, but they are slow and expensive, and they produce insights that are hard to prioritize and impossible to track over time.
The alternative is a structured, workflow-specific feedback mechanism that takes workers under two minutes to complete, reaches a statistically meaningful sample, and produces quantified data on where effort is high, where friction concentrates, and what causes it, across every workflow you care about.
Within three weeks, that insurance company had visibility across workflows and roles, quantitative data on effort and friction, root causes behind the biggest issues, and clarity on which workflows to prioritize first.
More importantly, they had a baseline, which means they can measure whether the changes they make are improving work over time instead of assuming they are.
Most organizations can identify friction. Fewer can track whether they are fixing it, and that is the piece that matters.
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