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Resource-utilization-aware task scheduling in cloud platform using three-way clustering

机译:使用三通群集的云平台中的资源利用 - 感知任务调度

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摘要

Task clustering is an effective approach of improving cloud computing resource utilization, which includes other benefits such as better QoS, load balance and low energy consumption. Different existing clustering methods have sharp boundaries, three-way clustering as an application of three-way decision, uses core region and fringe region to represent a cluster. In this paper, we propose a novel idea of clustering weight algorithm called TWCW algorithm(Three-way clustering weight) based on three-way decision to overcome the low utilization aiming at improving energy-efficient. The algorithm encompasses two steps, the identified tasks are assigned into the core region and the uncertain tasks are assigned into the fringe region based on diversity of cloud tasks and the dynamic nature of resources using the three-way K-means clustering firstly. The cluster center of CSi, centroid(i) = {mips, ram, bw} is obtained from the result of three-way clustering. In the second step is to score clusters and schedule tasks. We define a scoring matrix to record scores of the weight between clusters and the preference of attributes within clusters according to the cluster center, and then schedule tasks based on scoring matrix. We validate the high utilization of resources of the proposed algorithm by using simulation of CloudSim. The experiment shows the proposed algorithms significantly reduce energy consumption while significant improving response time of tasks comparing with K-means algorithm and FCM algorithm.
机译:任务聚类是提高云计算资源利用的有效方法,包括其他益处,例如更好的QoS,负载平衡和低能量消耗。不同现有的聚类方法具有尖锐的边界,三通聚类作为三向决策的应用,使用核心区域和边缘区域来表示簇。在本文中,我们提出了一种基于三向决定的TWCW算法(三元聚类重量)集群重量算法的新颖思想,以克服旨在改善节能的低利用率。该算法包括两个步骤,所识别的任务被分配给核心区域,并且不确定的任务基于云任务的分集和首先使用三向k均值聚类的资源的动态性质分配给边缘区域。 CSI的集群中心,质心(i)= {MIPS,RAM,BW}是从三通聚类的结果获得的。在第二步中是要得分集群和时间表任务。我们定义了评分矩阵,以记录群集之间的重量的分数,以及根据群集中心的集群内的属性的偏好,然后根据评分矩阵安排任务。我们使用CloudSim的模拟验证所提出算法的资源的高利用率。该实验表明,该算法显着降低能耗,同时与K均值算法和FCM算法进行了显着改善任务的响应时间。

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