Modern enterprises require trusted analytics capable of supporting strategic decisions across increasingly distributed digital ecosystems. Traditional Business Intelligence platforms often suffer from inconsistent master records, fragmented governance policies, poor metadata synchronization, and disconnected analytical pipelines. This paper presents an advanced enterprise framework known as Intelligent Data Governance Fabrics that combines AI-powered governance, Master Data Management, cloud-native data warehousing, semantic metadata intelligence, Data Mesh principles, and Generative AI analytics governance into a unified analytical architecture. The research introduces a scalable governance-driven enterprise model designed to improve analytical trustworthiness, strengthen compliance, enhance metadata observability, and accelerate real-time decision intelligence. The paper further explores governance-aware GenAI systems, zero-trust analytical architectures, predictive metadata management, autonomous stewardship automation, and hybrid multi-cloud governance ecosystems.
Rajesh Chavan (Thu,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: