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Urgent point aware energy-efficient scheduling of tasks with hard deadline on virtualized cloud system

机译:紧急点意识到虚拟化云系统硬截止日期的任务的节能计划

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摘要

Cloud computing platform has emerged to be a promising computing paradigm of recent time. Various applications from different domains having rigid deadline constraints are deployed in the cloud system for their respective benefits. Energy-efficient execution of these applications, meeting their deadline constraints is a challenge. Most of the existing research on the energy-efficient scheduling of these applications in the cloud domain consider a linear relationship between the energy consumption and the resource utilization of the system, and they focus on maximizing the utilization of resources to reduce the active number of computing nodes to minimize energy consumption. In this paper, we first devise a power consumption model for the cloud system which considers both the static and dynamic components of it and assumes a nonlinear relationship with utilization. Then we introduce the concept of urgent points in case of tasks having deadline in the context of a heterogeneous cloud computing environment. Then we propose two energy-efficient scheduling approaches, named UPS and UPS-ES designed based on the urgent points of the tasks and two threshold values of the host utilization. Extensive simulation experiments are conducted both for synthetic tasksets and Google cloud tracelogs. The results are compared with a state of the art scheduling policy and found that our policies perform significantly better than them, with an energy reduction of up to 42% while the deadline constraints of all the tasks are met. (C) 2020 Elsevier Inc. All rights reserved.
机译:云计算平台已经出现成为最近时间的有希望的计算范式。具有刚性截止日期约束的不同域的各种应用部署在云系统中,以实现各自的益处。节能执行这些应用程序,满足其截止日期约束是一项挑战。大多数关于云域中这些应用的节能调度的大多数研究考虑了系统的能量消耗和系统资源利用之间的线性关系,他们专注于最大化资源利用率,以减少有效计算的有效数量节点最小化能量消耗。在本文中,我们首先设计了云系统的功耗模型,该模型考虑了它的静态和动态分量,并假设与利用率的非线性关系。然后,我们在异构云计算环境的上下文中具有截止日期的任务的情况下介绍了紧急点的概念。然后,我们提出了两个可节能的调度方法,根据任务的紧急点和主机利用率的两个阈值设计,名称为UPS和UPS-E。广泛的仿真实验是对合成的案件和谷歌云Tracelog进行的。结果与艺术调度政策的状态进行了比较,发现我们的政策显着比它们更好地表现,能量减少高达42%,而所有任务的截止日期约束则得到满足。 (c)2020 Elsevier Inc.保留所有权利。

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