To deploy AI safely and profitably at scale, CIOs must cut through AI hype and focus on IT capability maturity.

CIOs are drowning in AI market hype. Massive infrastructure investments and speculation about artificial general intelligence dominate boardroom conversations, yet most firms lack the IT maturity to deploy AI safely or profitably. Worse, vendor‑driven FOMO fuels premature rollouts that destroy more value than they create.

AI will keep advancing – with or without AGI – but successful deployment depends far more on IT capability maturity than on better models. Today’s models are already powerful enough to deliver meaningful value. Organizations with mature governance, high‑quality data platforms, managed levels of tech-debt, and AI‑literate workforces capture that value. Those without these foundations struggle regardless of how advanced AI technology becomes. One variable is outside your control. The other isn’t.

Building the guide

Over the past two months, we engaged the leading Forrester analysts and subject‑matter experts responsible for each High‑Performance IT capability. We started with Forrester’s High‑Performance IT framework and its twenty level‑two capabilities that define what any IT organization must excel at to deploy technology safely, reliably, and at scale.

Then we asked a simple question: What does each capability need to look like to support AI deployment at scale, safely, with measurable returns? Here are three examples from that broader capability set:

  • Strengthen IT governance to scale AI with confidence. Forrester’s 2025 State of AI Survey shows a trust gap: Most AI decision‑makers believe their leaders have a compelling AI vision, but only 31% of individual contributors believe those leaders are knowledgeable about the technologies they promote. This misalignment undermines trust and slows adoption. Strong governance across strategy alignment, performance measurement, financial discipline, and stakeholder engagement, creates coherence and accountable execution.
  • Anchor reliable AI in modern data platforms and governance. Data capabilities determine AI outcomes more than model sophistication. AI‑ready data platforms (knowledge graphs, vector databases, feature stores, versioning, elastic compute) combined with mature data management (observability, quality monitoring, metadata and lineage, access controls) ensure trustworthy, repeatable AI performance.
  • Use security and risk to safeguard AI integrity. Agentic AI introduces risks that traditional cybersecurity architectures cannot contain. Forrester’s AEGIS framework defines the guardrails across GRC, IAM, data, app security, threat management, and Zero Trust needed to secure AI agents and prevent issues such as prompt injection, model poisoning, and adversarial manipulation.

We also developed a scenario‑planning tool that separates what CIOs control from what they don’t. Four AI readiness scenarios show that capability maturity determines outcomes regardless of whether AI advances incrementally or hits breakthrough acceleration. Prepared organizations win in both futures; unprepared organizations fail in both.

Retaking control

This research helps CIOs shift the AI conversation from prediction to accountability. It positions AI strategy as an IT capability maturity challenge, not a technology timing bet. With this framework, CIOs can make investment decisions based on organizational readiness rather than market anxiety.

Forrester clients can access the report here. Our analysts are ready to help you assess your IT capability maturity so that you can scale AI safely and deliver business outcomes that matter.