Multinationals gather data from countless sources—customer interactions, supply chains, market analytics, and business operations. However, data fragmentation across countries and departments can hinder AI’s effectiveness. Optimizing AI begins with centralizing data repositories, setting global data standards, and automating data integration processes. Such centralization ensures that AI models have access to consistent, comprehensive, and up-to-date information, enabling more accurate predictions, optimization strategies, and strategic insights.