what it is
AI Enablement is the step where AI use becomes real, controlled, and repeatable—not just experimentation. The focus is on selecting feasible use cases, implementing the operating basics (guardrails + ownership), and shipping a first capability that is safe and measurable.
This can be internal (operations/productivity) or customer-facing (academy tutor, insights automation)—depending on readiness and risk.
How it works (3 steps)
Use-case selection (feasibility first)
We shortlist and score use cases by:
Guardrails + operating model
We define:
MVP delivery + measurement
We implement a first version with clear KPIs (adoption, time saved, quality, safety), then iterate.