Cross-Layer Optimization for End-to-End Performance in Enterprise Ecosystems
Description
This article presents a cross-layer optimization framework designed to increase end-to-end performance in an enterprise ecosystem. By integrating the application, middleware, and infrastructure layers, the framework addresses the boundaries of traditional, silent attitudes that fail to consider complex interdependencies. Advanced dependence provides significant improvement in structure delays, throwing, and resource use efficiency through advanced dependence mapping techniques, machine learning-allocation, adaptive load balance, and future defect mitigation. The graph-based representation for architecture dependence analysis, learning reinforcement for configuration for confirmation, reference-incolents appoints a neural network to detect traffic management and discrepancy. Implementation results display a sufficient increase in overall system reliability in service availability, event solution time, and diverse operating conditions. The ability of the framework to optimize the workload pattern while changing the workload pattern while maintaining performance objectives represents a transformative approach to enterprise system management, enabling organizations to achieve unprecedented levels of operational efficiency.
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SJMD-175-2025-678-684.pdf
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