Leveraging Generative AI for Enhanced Scalability and Efficiency in Distributed Cloud Databases


연구 분야: Databases



학회: 2025 8th International Symposium on Big Data and Applied Statistics (ISBDAS)


초록

Data-driven application deployment imposes needs for distributed cloud databases that need to handle extensive data quantities efficiently as they provide guarantee and scaling properties and operational performance. Distributed databases now benefit from advanced capabilities enabled by AI systems that promote better database operation and scalability capacity. This research explores the integration of generative artificial intelligence systems with distributed cloud databases to solve database query optimization challenges while managing operational workloads and making fault predictions and ensuring data consistency initiatives. Through our research on generative AI's predictive functions and generative capabilities we formulate innovative techniques that connect automated schema design and adaptive indexing with intelligent data partitioning approaches. Generative AI reveals new capabilities in anomaly prevention that escalate system dependability and slash operational interruptions. The framework implements reinforcement learning and transformers to acquire performance database data which subsequently exploits this information to generate outcomes that coincide with adjusting workload patterns. Experimental results beyond cloud database benchmark testing validate higher query execution performance together with strengthened system resource capacity and accelerated performance. The research incorporates ethical considerations along with privacy analysis while making key points to determine suitable AI deployment in cloud environments. Research demonstrates that generative AI changes distributed cloud database procedures by enabling scalable efficient intelligent operational database management systems. This research enhances understanding of AI applications in cloud computing yet serves as a reference for future domain evolution.


Author Profile
Chakradhar Bandla

Information Technology University of the Cumberlands

정보 없음

📄 논문 정보

발행 연도 2025년
인용수 7
출판 국가
사이트 IEEE
좋아요 수 0

연관 논문 목록 (348건)