Building an AI-Powered Data Governance Framework for Large Enterprises
Keywords:
AI-driven data governance, regulatory compliance, machine learning, SnowflakeAbstract
Robust governance of framework is very essential for rapid evolution of data privacy regulations as it balances the regulatory compliance with seamless data accessibility in large enterprises. Traditional governance mechanism is often incapable in addressing the dynamic nature of compliance requirements and the complexity of enterprise data ecosystems. This study explains the integration of artificial intelligence (AI) in data governance to enhance security, integrity, and regulatory adherence which utilises Snowflake's data cloud capabilities and cloud-based compliance frameworks, AI-powered governance models can automate policy enforcement, anomaly detection, and access control mechanisms.
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References
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