基于虚拟机故障预测的云环境智能资源管理模型

D. Saxena, Ashutosh Kumar Singh
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引用次数: 5

摘要

提出了一种基于虚拟机故障预测的智能云资源管理(FP-IRM)模型,该模型能够主动估计虚拟机故障并有效地对所有可用资源进行分类。具体来说,开发了一种新的集成预测器来实时确定任何资源(CPU,存储)拥塞发生之前。主动触发虚拟机迁移流程,有效管理虚拟机因物理资源不足而导致的故障。FP-IRM模型通过使用真实世界的基准Google Cluster VM跟踪数据集来实现和评估。实验模拟和与最先进技术的比较证实了所提出模型的影响性能,与比较方法相比,该模型将活动服务器的数量减少了51.2%,并将资源利用率提高了24.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VM Failure Prediction based Intelligent Resource Management Model for Cloud Environments
This paper proposes a Virtual Machine (VM) failure prediction based intelligent cloud resource management (FP-IRM) model that estimates failure of VMs proactively and assorts all the available resources effectively. Specifically, a novel ensemble predictor is developed to determine any resource (CPU, storage) congestion prior to occurrence in real-time. Accordingly, the VM migration process is triggered proactively to proficiently manage the VM failures by reason of insufficient physical resources. FP-IRM model is implemented and evaluated by using a real-world benchmark Google Cluster VM traces dataset. The experimental simulation and comparison with state-of-the-arts confirms the influential performance of the proposed model which has reduced the number of active servers up to 51.2 % and an improved resource utilization up to 24.3 % over the comparative approaches.
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