AI Adoption Guide
A practical framework for enterprise AI adoption
Why AI Adoption Fails
Studies consistently show that around 70% of AI projects fail to deliver their expected business value. The reasons are rarely technical. The most common causes are:
- No governance — AI tools are deployed without oversight, risk classification, or clear ownership.
- No measurement — Organisations cannot demonstrate ROI because they never defined baselines or tracked adoption metrics.
- No change management — Employees are handed new AI tools without training, context, or incentives to adopt them.
The 5 Dimensions of AI Readiness
Successful AI adoption requires maturity across five dimensions. Weakness in any single dimension creates risk:
- Strategy — Clear AI vision, executive sponsorship, and alignment with business objectives.
- Governance — Policies, approval workflows, risk classification, and compliance frameworks.
- Technology — Infrastructure, data quality, integration capabilities, and security posture.
- People — AI literacy, change readiness, champion networks, and skills development.
- Process — Use case identification, prioritisation methodology, measurement frameworks, and continuous improvement.
Getting Started
The most effective approach to AI adoption follows three steps:
- Start with an assessment — Understand where you stand across all five dimensions before investing in tools or training.
- Identify quick wins — Prioritise use cases that are high-impact and low-effort to build momentum and prove value early.
- Build governance early — Establish agent registration, risk classification, and oversight processes before scaling, not after.