The banking sector's transformation through artificial intelligence and machine learning technologies has created unprecedented challenges in data governance that extend beyond traditional management practices. Financial institutions now operate complex data ecosystems where AI models serve critical functions across credit scoring, risk assessment, fraud detection, and customer analytics. The integration of AI technologies into traditional data warehouse architectures introduces unique governance requirements that demand comprehensive solutions addressing data lineage, quality assurance, regulatory compliance, and privacy protection. This framework presents a unified approach to data governance that embeds AI lifecycle stages directly into data warehouse metadata management and operational pipelines. The architecture encompasses five core components: AI-integrated metadata management for comprehensive model tracking, sophisticated data lineage mechanisms for end-to-end visibility, automated quality monitoring tailored for AI applications, granular access controls aligned with privacy requirements, and scalable technical infrastructure supporting cloud-native deployment. The implementation demonstrates successful integration across multiple regulatory frameworks, including Basel III, BCBS 239, GDPR, and CCPA requirements. The case study reveals significant operational improvements through automated governance processes, substantial reductions in deployment timelines, and enhanced regulatory compliance posture. The framework addresses critical challenges, including legacy system integration complexity, cultural change management, and performance optimization requirements. Future developments emphasize cloud-native architectures, advanced AI governance capabilities, industry standardization initiatives, and sustainable governance models supporting continuous improvement and adaptation to evolving regulatory landscapes.
Ashish Dibouliya (Thu,) studied this question.