University of the Cumberlands, USA.
World Journal of Advanced Engineering Technology and Sciences, 2025, 15(02), 1766-1773
Article DOI: 10.30574/wjaets.2025.15.2.0680
Received on 03 April 2025; revised on 11 May 2025; accepted on 13 May 2025
Self-Optimizing Cloud Substrate Networks represent a paradigm shift in cloud infrastructure management, combining graph theory foundations with artificial intelligence to create dynamic, adaptive systems. This article explores a comprehensive framework for such networks, detailing the mathematical representation of substrate networks as attribute-rich graphs and introducing sophisticated mechanisms for dynamic resource mapping. By incorporating application-specific optimization tailored to diverse workload requirements and leveraging predictive resource allocation through machine learning, these systems proactively address potential performance bottlenecks before they emerge. Experimental results demonstrate significant improvements over traditional network management approaches in key metrics including latency management, resource utilization, adaptation to changing conditions, and failure recovery. The implementation balances the benefits of specialized optimization with the practicality of generalized approaches, while identifying promising future research directions to enhance scalability, explainability, and cross-domain optimization capabilities.
Cloud Substrate Networks; Graph-Theoretic Modeling; Application-Specific Optimization; Predictive Resource Allocation; Artificial Intelligence
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Mohan Ranga Rao Dontineni. Self-Optimizing cloud substrate networks: An AI-driven approach to dynamic infrastructure optimization. World Journal of Advanced Engineering Technology and Sciences, 2025, 15(02), 1766-1773. Article DOI: https://doi.org/10.30574/wjaets.2025.15.2.0680.