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One for All: Unified Workload Prediction for Dynamic Multi-tenant Edge Cloud Platforms

Shaoyuan Huang, Zheng Wang, Heng Zhang, Xiaofei Wang, Cheng Zhang, Wenyu Wang

202330 citationsDOIOpen Access PDF

Abstract

Workload prediction in multi-tenant edge cloud platforms (MT-ECP) is vital for efficient application deployment and resource provisioning. However, the heterogeneous application patterns, variable infrastructure performance, and frequent deployments in MT-ECP pose significant challenges for accurate and efficient workload prediction. Clustering-based methods for dynamic MT-ECP modeling often incur excessive costs due to the need to maintain numerous data clusters and models, which leads to excessive costs. Existing end-to-end time series prediction methods are challenging to provide consistent prediction performance in dynamic MT-ECP. In this paper, we propose an end-to-end framework with global pooling and static content awareness, DynEformer, to provide a unified workload prediction scheme for dynamic MT-ECP. Meticulously designed global pooling and information merging mechanisms can effectively identify and utilize global application patterns to drive local workload predictions. The integration of static content-aware mechanisms enhances model robustness in real-world scenarios. Through experiments on five real-world datasets, DynEformer achieved state-of-the-art in the dynamic scene of MT-ECP and provided a unified end-to-end prediction scheme for MT-ECP.

Topics & Concepts

PoolingCloud computingComputer scienceWorkloadProvisioningRobustness (evolution)Software deploymentDistributed computingCluster analysisEdge computingEnhanced Data Rates for GSM EvolutionData miningReal-time computingComputer networkArtificial intelligenceOperating systemBiochemistryGeneChemistryCloud Computing and Resource ManagementTraffic Prediction and Management TechniquesIoT and Edge/Fog Computing