AI is reshaping how organisations plan, produce, and manage content — but not everyone is starting from the same place. In our recent AI Readiness Research Report, published in partnership with WordPress VIP, digital leaders made one thing clear: becoming AI-ready isn’t a single initiative. It’s a multidimensional architecture, technology, governance, operations, and strategy.
Across 99 responses, patterns emerged, from common challenges, to shared priorities, and clear indicators of what it takes to build an AI-ready foundation. Those insights form the five pillars below: the essential areas that determine whether your organisation can harness AI responsibly and at scale.
Each pillar represents an essential area for focus. Together they create a holistic picture of what it means to be AI-ready, grounded in what digital leaders told us about their systems, priorities, and challenges. Let’s dive in!
1. Content Architecture
Behind every powerful AI experience is structured, meaningful content. Modular, semantically rich content makes it possible for AI models to understand context, power personalisation, and automate tasks with confidence.
What the data says: Only 22% of respondents describe their content architecture as fully structured and modular, while 65% say it is partially structured. A further 7% operate in an unstructured state. These figures show that most enterprises are still transitioning toward the kind of structured, interoperable content architecture that AI depends on.
The takeaway: AI requires well-structured content inputs to deliver reliable outputs. A clear architecture allows for automation, enrichment, and precise personalisation.
2. Platform Flexibility
As AI capabilities evolve, so must the platforms that support them. Open, extensible, API-first CMSs allow teams to integrate new tools, experiment safely, and adapt their stack without vendor lock-in.
What the data says: When asked whether their CMS acts as a content orchestration layer rather than just a publishing platform, only about 37% of respondents agreed, with nearly 32% neutral and 31% disagreeing. This suggests that while organisations aspire to build connected ecosystems, most platforms are not yet composable or open enough to support continuous AI experimentation.
The takeaway: Composable, flexible platforms enable continuous AI experimentation and long-term scalability.
3. Governance and Control
AI readiness isn’t just about speed — it’s about safety, quality, and trust. That means maintaining editorial control, ensuring brand consistency, and managing compliance across every touchpoint. It is important to have a human-in-the-loop review process to ensure AI assisted content is responsibly managed.
What the data says: Governance and risk management emerged repeatedly across responses. Around 53% of respondents cited security, privacy, and compliance concerns as a major challenge, while roughly 36% named integration issues and 34% identified skills and knowledge gaps. These concerns underline the need for robust governance frameworks and oversight mechanisms before scaling AI adoption.
The takeaway: AI readiness is also risk readiness. The ability to innovate safely is what separates early adopters from sustainable leaders.
4. Operational Capability
Successful AI adoption requires more than new tools. It demands new workflows, skills, measurement tools and cultural alignment. Editorial teams need guidance, training, and processes that allow them to work with AI — not around it.
What the data says: Across the research, respondents highlighted operational limitations as a key barrier to progress. Integration challenges, ROI, and lack of strategy/direction were identified as almost equally challenging issues. At the same time, 63% of leaders identified AI workflow integration as their top investment priority, showing clear intent to modernise operations and empower teams to work alongside AI effectively.
The takeaway: AI is not a technology solution alone. It represents an organisational shift in how teams create, collaborate, and measure success.
5. Strategic Alignment
The final pillar ties everything together. AI initiatives succeed when they are aligned to broader content and business strategies, with a stakeholder alignment on both the opportunities and risks.
What the data says: Nearly 94% of respondents said that effective AI adoption is either vital or important to their organisation’s future success. Yet only about one third believe their current CMS gives them a competitive advantage in adopting and scaling AI. This gap between belief and capability highlights why alignment between leadership, systems, and strategy is so critical.
The takeaway: The most successful teams treat AI as a strategic driver, not a tactical tool. Alignment ensures that technology decisions support long-term value creation.
Becoming AI-Ready: A Holistic Transformation
The path to AI readiness is neither linear nor one-size-fits-all. But the organisations leading the way share a common approach: they invest in foundations, design for flexibility, govern responsibly, empower their teams, and anchor every decision to long-term strategy.
These five pillars provide a framework for that journey, a practical lens for evaluating where you are today, and which steps will move you closer to an AI-enabled future.
The path to AI readiness is neither linear nor one-size-fits-all, but it is achievable with the right foundations. What we see across the leading organisations is a shared mindset: build on solid architecture, embrace openness, establish responsible governance, empower teams, and make AI a core part of strategic decision-making.
At Human Made, we believe AI should make your organisation more creative, flexible, and connected — not more complicated. It’s about giving teams the confidence to experiment, the tools to scale, and the clarity to move with purpose.
These five pillars offer a practical framework for that journey. They’re not just indicators of AI maturity; they’re the building blocks of a publishing ecosystem that’s ready for the next decade of digital transformation.
Explore the full report, or get in touch if you’d like to learn how we help enterprise teams build AI-ready systems that deliver measurable, long-term value.
