Artificial intelligence technologies function as a connective infrastructure between isolated data repositories in cloud environments. Organizational data frequently exists in disconnected systems, creating barriers to comprehensive insights and decision-making. The bridge-building capability of AI offers a promising solution to this fragmentation. By conceptualizing data silos as isolated islands, a framework emerges for understanding both technical and organizational integration challenges. AI integration mechanisms, including APIs and microservices, serve as architectural bridges between previously disconnected systems. The data harmonization process parallels culinary practices, where AI techniques blend diverse information sources into cohesive insights while maintaining appropriate human oversight. Semantic layer technologies function as universal translators, enabling effective communication between disparate enterprise systems like CRM and ERP platforms. The transformative impact of these integration methods extends beyond technical considerations to organizational culture, requiring attention to implementation factors and ethical dimensions of cross-system data sharing. As organizations increasingly depend on distributed data resources, AI-powered integration strategies will become essential for competitive advantage in data-driven business environments.
Keywords: Artificial Intelligence, Cloud Computing, data integration, enterprise systems, interoperability