A Novel Heterogenous Dominant Sequence Clustering for Task Scheduling and Optimal Load Balancing Using JSO in Cloud

B. K. M. Pushparani
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Abstract

Cloud computing (CC) is rapidly increasing and being used more and more in information technology (IT) contexts. Among the hottest issues in the world of CC is task scheduling. In cloud datacentres, load balancing is accomplished using a variety of scheduling techniques, although lengthening the parallel time. By taking task duration and VM capacity into account, this study proposes a cluster-based task scheduling paradigm. The makespan and execution duration should be reduced, the suggested system engages in dynamic load balancing. In this study, we suggest a unique method called HDDSC-JSO, which employs the Jellyfish Swarm Optimization (JSO) algorithm for load balancing and heterogeneous Density based dominant sequence clustering (HDDSC) for job scheduling. Using the HDSC technique, It presents a graph of one or more groups representing user tasks, the tasks of users are first clustered. The Adapted Diverse Expeditious Termination Time (ADETT) method is used to score each work after task clustering. whenever the job with the greatest priority is scheduled first. Next, using a JSO algorithm, load balancing is carried out, distributing the load according to the weight and capacity of the server as well as the connection of the client to the server. Task allocation chooses a heavily weighted or unconnected server, lengthening the response time. Finally, measures including response time, makespan, resource consumption, and service dependability were used to assess the suggested architecture.
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基于JSO的异构优势序列聚类云任务调度和最优负载均衡
云计算(CC)正在迅速发展,并在信息技术(IT)环境中得到越来越多的应用。任务调度是CC领域最热门的问题之一。在云数据中心中,负载平衡是使用各种调度技术来实现的,尽管这会延长并行时间。通过考虑任务持续时间和虚拟机容量,本研究提出了一种基于集群的任务调度范式。应该减少makespan和执行持续时间,建议系统进行动态负载平衡。本研究提出了一种独特的HDDSC-JSO方法,该方法采用水母群优化(JSO)算法进行负载均衡,采用基于异构密度的优势序列聚类(HDDSC)算法进行作业调度。采用HDSC技术,将一个或多个用户任务组的图形表示出来,首先对用户的任务进行聚类。采用自适应多元快速终止时间(addet)方法对任务聚类后的每个作业进行评分。当优先级最高的作业被排在第一位时。接下来,使用JSO算法进行负载均衡,根据服务器的权重和容量以及客户端到服务器的连接情况来分配负载。任务分配选择权重较大或未连接的服务器,从而延长响应时间。最后,使用包括响应时间、完工时间、资源消耗和服务可靠性在内的度量来评估建议的体系结构。
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