Heterogeneous Fair Resource Allocation and Scheduling for Big Data Streams in Cloud Environments

R. Kiruthiga, D. Akila
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引用次数: 3

Abstract

In this paper, Heterogeneous Fair Resource Allocation and Scheduling (HFRAS) for cloud based Big Data Streams, is proposed. In this algorithm, a weight value is determined for the user for each of the requested resource, based on the resource priorities. Then each task is assigned a task priority index (TPI) based on this weight value, task arrival time and expected end time (EET). The requested tasks are divided into various priority queues based on the TPI of the tasks assigned. Then tasks are sorted in the ascending order of TPI and scheduled in which the Dominant Resource Share (DRS) is determined for each user. Experimental results have shown that HFRAS attains lesser execution time, minimum response delay and maximum CPU utilization, when compared to the existing algorithm.
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云环境下大数据流异构公平资源分配与调度
本文提出了基于云的大数据流异构公平资源分配与调度(HFRAS)方法。在该算法中,根据资源优先级为用户确定每个请求资源的权重值。然后根据该权重值、任务到达时间和预期结束时间为每个任务分配一个任务优先级指数(TPI)。根据所分配任务的TPI,将请求的任务划分为各种优先级队列。然后按照TPI的升序对任务进行排序,并调度任务,确定每个用户的主导资源共享(DRS)。实验结果表明,与现有算法相比,HFRAS具有更短的执行时间、最小的响应延迟和最大的CPU利用率。
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