Adaptive Detection of Software Aging under Workload Shift
PositiveArtificial Intelligence
Software aging is a phenomenon that affects long-running systems, resulting in gradual performance degradation and an increased risk of failures. To address this issue, a new adaptive approach utilizing machine learning for software aging detection in dynamic workload environments has been proposed. This study compares static models with adaptive models, specifically the Drift Detection Method (DDM) and Adaptive Windowing (ADWIN). Experiments demonstrate that while static models experience significant performance drops with unseen workloads, the adaptive model with ADWIN maintains high accuracy, achieving an F1-Score above 0.93.
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