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Energy-aware scheduling scheme using workload-aware consolidation technique in cloud data centres

机译:云数据中心中使用工作负荷感知合并技术的能源感知调度方案

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摘要

To reduce energy consumption in cloud data centres, in this paper, we propose two algorithms called the Energy-aware Scheduling algorithm using Workload-aware Consolidation Technique (ESWCT) and the Energy-aware Live Migration algorithm using Workload-aware Consolidation Technique (ELMWCT). As opposed to traditional energy-aware scheduling algorithms, which often focus on only one-dimensional resource, the two algorithms are based on the fact that multiple resources (such as CPU, memory and network bandwidth) are shared by users concurrently in cloud data centres and heterogeneous workloads have different resource consumption characteristics. Both algorithms investigate the problem of consolidating heterogeneous workloads. They try to execute all Virtual Machines (VMs) with the minimum amount of Physical Machines (PMs), and then power off unused physical servers to reduce power consumption. Simulation results show that both algorithms efficiently utilise the resources in cloud data centres, and the multidimensional resources have good balanced utilizations, which demonstrate their promising energy saving capability.
机译:为了减少云数据中心的能耗,在本文中,我们提出了两种算法,分别是使用工作负荷感知合并技术(ESWCT)的能量感知调度算法和使用工作负荷感知合并技术(ELMWCT)的能量感知实时迁移算法。 。与通常只关注一维资源的传统能源感知调度算法相反,这两种算法基于以下事实:用户在云数据中心同时共享多个资源(例如CPU,内存和网络带宽)异构工作负载具有不同的资源消耗特征。两种算法都研究了整合异构工作负载的问题。他们尝试使用最少数量的物理机(PM)执行所有虚拟机(VM),然后关闭未使用的物理服务器的电源以降低功耗。仿真结果表明,两种算法均能有效利用云数据中心的资源,多维资源具有良好的均衡利用率,证明了其有希望的节能能力。

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