An effective partition-based framework for virtual machine migration in cloud services

Liji Luo, Siwei Wei, Hua Tang, Chunzhi Wang
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Abstract

As the scale of data centers continues to expand, optimizing resource utilization becomes increasingly critical. Employing virtual machine (VM) migration technology to maintain hosts within an appropriate workload range holds substantial promise for enhancing platform resource utilization, workload equilibrium, and energy efficiency. This study endeavors to reframe virtual machine migration as a partition problem and introduces an integrated framework that adeptly evaluate workload status and precisely identifies the optimal migration target, thus mitigating the expenses associated with virtual machine migration. Our framework commences by employing workload prediction to evaluate host status for determining the most opportune timing for migration. Subsequently, we leverage Service Level Agreements (SLA) violation as the optimization objective to ascertain the optimal status threshold, thereby facilitating effective workload partition of the host. Finally, the framework employs multi-dimensional host resource balance as a guide to schedule host migration in diverse areas, ensuring robust resource utilization post-migration. Experimental results show that compared with three benchmark VM allocation algorithms, SESA, PPRG, and ThrRs. Our framework achieves a significant \(17\%\) increase in multidimensional resource utilization across various types of data centers, accompanied by a noteworthy \(27\%\) reduction in SLA violation rate with fewer time consumption and energy expenditure during VM migration.

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基于分区的云服务虚拟机迁移有效框架
随着数据中心规模的不断扩大,优化资源利用率变得越来越重要。采用虚拟机(VM)迁移技术将主机保持在适当的工作负载范围内,对提高平台资源利用率、工作负载平衡和能源效率大有裨益。本研究致力于将虚拟机迁移重构为一个分区问题,并引入了一个集成框架,该框架能有效评估工作负载状态,精确确定最佳迁移目标,从而降低与虚拟机迁移相关的费用。我们的框架首先利用工作负载预测来评估主机状态,以确定最合适的迁移时机。随后,我们利用违反服务水平协议(SLA)作为优化目标,以确定最佳状态阈值,从而促进对主机进行有效的工作负载分区。最后,该框架采用多维主机资源平衡作为指导,在不同区域安排主机迁移,确保迁移后资源的稳健利用。实验结果表明,与 SESA、PPRG 和 ThrRs 这三种基准虚拟机分配算法相比,我们的框架实现了显著的性能提升。我们的框架在各种类型的数据中心实现了多维资源利用率的显著提高,同时在虚拟机迁移过程中减少了时间消耗和能源消耗,显著降低了SLA违反率。
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