A pilot proves that a capability can work in selected conditions. Production readiness asks whether people can trust, operate, support, and improve it under real conditions.
Purpose and ownership
- Is the business outcome and approved scope documented?
- Who owns the process, the technical service, and the risk decision?
- Who can pause or disable the workflow?
Data and knowledge
- Which sources may the solution access?
- Is the information current, authorised, and appropriately retained?
- Can an output link back to evidence where decisions require traceability?
Permissions and actions
- Which tools and records can the solution read or change?
- Are permissions limited to what the use case requires?
- Which actions require human approval?
Quality and evaluation
- Has the system been tested against normal, difficult, ambiguous, and adversarial cases?
- Are quality thresholds and escalation conditions defined?
- Can failures and inappropriate outputs be identified after launch?
Operations and recovery
- Are executions, errors, changes, and costs observable?
- Is there a safe fallback when a model, connection, or data source is unavailable?
- Do support teams have documentation and a recovery procedure?
People and change
- Do users understand what the system does, what it does not do, and when they remain accountable?
- Is feedback captured and reviewed?
- Are process measures reviewed alongside technical measures?
Governance should be proportional to the impact of the use case. The goal is not paperwork; it is clear authority and evidence that allow useful AI to scale responsibly.