A scoring model for picking the first workflow to automate when every department wants attention.
The strongest AI projects are rarely the flashiest. They start with one painful workflow, a clear owner, and a tight definition of what better looks like in the business.
What this means operationally
Before writing code, map the current process end to end. Find where people wait, copy, chase, reconcile, rewrite, or approve the same information twice. That is usually where an AI system can create measurable leverage.
- Keep the first version focused on one outcome.
- Use real workflow data instead of sanitized demo examples.
- Ship to the people who will use it, then improve it with them.
The shipping discipline
For ai strategy work, speed comes from constraint. The fewer open questions a system has to solve on day one, the faster it can become reliable enough for real operations.
That is the difference between an experiment and a business system: an experiment proves what is possible; a business system earns trust by running the same way every week.