29 Mar 26

Tasks Will Disappear. Workflows Will Not.

Stephanie Denino (Head of Advisory, FOUNT)

As agentic AI automates individual tasks, task-level measurement becomes less useful. The workflow becomes the stable unit to measure: whether outcomes improve, friction falls, and employees can work better alongside AI. Organizations need workflow-level data now to manage that shift.

Foundations
7 min read

Agentic AI is going to make a lot of measurement frameworks obsolete. Understanding which ones, and why, is worth your attention before it happens to yours.

The dynamic is this: agentic AI will increasingly execute individual tasks inside workflows. Tasks that once required a human will be automated, accelerated, or disappear entirely: searching for an answer, completing a form, updating a system, generating a report. This is already happening in early deployments, and it will accelerate.

What will not disappear is the need to accomplish goals through workflows: handling a customer escalation, conducting a sales call, coordinating patient care, hiring into a team. These workflows will keep evolving as AI becomes involved, but the underlying goal remains, and workers will still be accountable for the outcome. They will just get there differently.

The workflow, not the task, becomes the unit of work.

That has a major implication for measurement. When tasks change or disappear, task-level measurement becomes far less useful. You cannot benchmark productivity against activities that no longer exist in the same form. What remains stable, and therefore measurable over time, is the workflow and its outcome.

Organizations will need visibility into whether the workflow itself is improving: whether it is faster and easier, whether outcomes are better, and whether the experience of running it is improving.

There is a second implication, and it is bigger. As AI takes over more tasks, leaders across technology, digital, AI, operations, and HR become responsible for something new: the experience employees have performing workflows alongside AI, and whether the AI in the loop is helping or creating new friction of its own.

Without this visibility, AI transformations may look compelling on paper but fail in the field. The worker becomes, in effect, the customer of every leader deploying AI, and of the AI agents themselves.

Soon, organizations will feed AI agents data about how employees experience their workflows: the friction they encounter, where they slow down, and what creates rework. Those agents will use that context to improve how the end-to-end workflow gets done.

That feedback loop only works if organizations capture workflow-level data in the first place, and most do not.

The question worth asking now is how your organization will build that capability before it becomes critical.

Foundations
7 min read

Agentic AI is going to make a lot of measurement frameworks obsolete. Understanding which ones, and why, is worth your attention before it happens to yours.

The dynamic is this: agentic AI will increasingly execute individual tasks inside workflows. Tasks that once required a human will be automated, accelerated, or disappear entirely: searching for an answer, completing a form, updating a system, generating a report. This is already happening in early deployments, and it will accelerate.

What will not disappear is the need to accomplish goals through workflows: handling a customer escalation, conducting a sales call, coordinating patient care, hiring into a team. These workflows will keep evolving as AI becomes involved, but the underlying goal remains, and workers will still be accountable for the outcome. They will just get there differently.

The workflow, not the task, becomes the unit of work.

That has a major implication for measurement. When tasks change or disappear, task-level measurement becomes far less useful. You cannot benchmark productivity against activities that no longer exist in the same form. What remains stable, and therefore measurable over time, is the workflow and its outcome.

Organizations will need visibility into whether the workflow itself is improving: whether it is faster and easier, whether outcomes are better, and whether the experience of running it is improving.

There is a second implication, and it is bigger. As AI takes over more tasks, leaders across technology, digital, AI, operations, and HR become responsible for something new: the experience employees have performing workflows alongside AI, and whether the AI in the loop is helping or creating new friction of its own.

Without this visibility, AI transformations may look compelling on paper but fail in the field. The worker becomes, in effect, the customer of every leader deploying AI, and of the AI agents themselves.

Soon, organizations will feed AI agents data about how employees experience their workflows: the friction they encounter, where they slow down, and what creates rework. Those agents will use that context to improve how the end-to-end workflow gets done.

That feedback loop only works if organizations capture workflow-level data in the first place, and most do not.

The question worth asking now is how your organization will build that capability before it becomes critical.

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