Policy·Europe

Data Management Gaps Hinder AI Deployment, Warns EY's Campbell

Global AI Watch · Editorial Team··4 min read
Data Management Gaps Hinder AI Deployment, Warns EY's Campbell
Perspectiva editorial

Data management maturity now rivals workforce skills as a key AI deployment barrier, emphasizing infrastructure focus by 2027.

What Changed

Despite increasing AI adoption, data maturity remains a critical shortfall for many companies. Daren Campbell of EY Americas has identified seven warning signs suggesting that organizations need to urgently revamp their data management strategies to deploy AI at scale. This is not an isolated issue but a recurring challenge akin to similar shortcomings identified during the early phases of cloud computing adoption.

Strategic Implications

Organizations without robust data management are unlikely to achieve sustainable impacts from AI projects. Entities like EY and Capital One, investing in data modernization, gain significant leverage over competitors. Firms heavily reliant on outdated systems may face operational inefficiencies and competitive disadvantage unless they pivot rapidly.

What Happens Next

Investment in data infrastructure is likely to surge, with many organizations expected to implement comprehensive data governance frameworks by mid-2027. Policymakers might also introduce stricter data management regulations, mandating better data tracking and governance standards.

Second-Order Effects

Enhanced data strategies will likely boost adjacent AI service markets, including data analytics and cloud services. The ripple effect may reach supply chain operations, demanding more transparent data practices across networks.

Free Daily Briefing

Top AI intelligence stories delivered each morning.

Subscribe Free →

Explore Trackers