Abstract
The research introduces a novel
framework that incorporates real-time monitoring, dynamic resource allocation, and adaptive
threshold settings to ensure consistent SLA adherence while optimizing computing
performance. Extensive simulations are conducted using synthetic and real-world datasets to
evaluate the performance of the proposed algorithm. The results demonstrate that the
optimized load balancing approach outperforms traditional algorithms in terms of SLA
compliance, resource utilization, and energy efficiency. The findings suggest that the
integration of optimization techniques into load balancing algorithms can significantly enhance
the operational efficiency of data centers, paving the way for future advancements in
autonomous and self-optimizing data centers.