The Gap Between Interest and Execution
According to Docker’s State of Agentic AI report, 60% of organisations already have AI agents in production and 94% view it as a strategic priority. But most of those deployments are narrow, internal, and cautious. Security is cited as the number one barrier by 40% of respondents. That is not a technology problem. That is a readiness problem.
What a Readiness Audit Actually Covers
A proper AI agent readiness audit looks at four areas. First, your data landscape: what information would agents need to access, and how is it currently stored, governed, and secured? Second, your process inventory: which workflows are repetitive enough, structured enough, and bounded enough to be safely handed to an agent? Third, your technical environment: what systems would agents need to connect to, and are those integrations feasible? Fourth, your governance posture: do you have policies in place for AI use, data handling, and human oversight?
Why Skipping This Step Is Expensive
Organisations that skip the readiness phase tend to build agents that work in demos and fail in production. They connect agents to systems without thinking through access controls. They automate processes that were never documented properly in the first place. The result is rework, risk, and a loss of confidence in the whole initiative.
Who This Is For
Any Australian SME or enterprise that is taking AI agents seriously in 2025 needs an honest external view of where they stand. An AI readiness audit is not a technology project. It is a business strategy exercise that sets the foundation for everything that comes after.

