2023
DOI: 10.1007/s11227-023-05163-w
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SeQual: an unsupervised feature selection method for cloud workload traces

Abstract: One challenge of studying cloud workload traces is the lack of available users’ identities. Therefore, clustering methods were used to address this challenge through extracting these identities from workload traces. For better extraction, it is beneficial to select attributes (columns in the traces) for clustering by using feature selection methods. However, the use of general selection methods requires details that are not available for workload traces (e.g. predefined number of clusters). Therefore, in this … Show more

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