MSR Technology Group, USA.
World Journal of Advanced Engineering Technology and Sciences, 2026, 18(02), 148-157
Article DOI: 10.30574/wjaets.2026.18.2.0054
Received on 16 December 2025; revised on 25 January 2026; accepted on 28 January 2026
The rapid evolution of cloud computing technologies has created significant challenges for organizations attempting to modernize legacy database systems. This research presents an innovative framework for adaptive cloud database modernization using artificial intelligence-enhanced decision models. Traditional migration approaches often fail due to inadequate assessment of workload characteristics, cost implications, and performance requirements. Our proposed AI-enhanced decision model incorporates machine learning algorithms to analyze historical database usage patterns, predict migration outcomes, and recommend optimal modernization strategies. The framework was validated through implementation in three enterprise environments, demonstrating an average 34% reduction in migration time and 28% cost savings compared to conventional approaches. Key findings indicate that AI-driven decision models can accurately predict post-migration performance with 89% accuracy and identify potential compatibility issues before they impact production systems. The research contributes a practical methodology for organizations undertaking cloud database modernization initiatives, offering data-driven insights that reduce risks and optimize resource allocation. This work bridges the gap between theoretical cloud migration frameworks and practical implementation challenges faced by database administrators and cloud architects.
Cloud database migration; Artificial intelligence; Decision support systems; Database modernization; Machine learning; Cloud computing; Legacy systems
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Sangeetha Mandapaka. A Machine Learning–Enabled Approach to Adaptive Cloud Database Modernization. World Journal of Advanced Engineering Technology and Sciences, 2026, 18(02), 148-157. Article DOI: https://doi.org/10.30574/wjaets.2026.18.2.0054