Task scheduling and resource allocation of seasonal requests of users in cloud using NMKA and CM-GA techniques

S. Prathiba, S. Sankar
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Abstract

Purpose The purpose of this paper is to provide energy-efficient task scheduling and resource allocation (RA) in cloud data centers (CDC). Design/methodology/approach Task scheduling and RA is proposed in this paper for cloud environment, which schedules the user’s seasonal requests and allocates resources in an optimized manner. The proposed study does the following operations: data collection, feature extraction, feature reduction and RA. Initially, the online streaming data of seasonal requests of multiple users were gathered. After that, the features are extracted based on user requests along with the cloud server, and the extracted features are lessened using modified principal component analysis. For RA, the split data of the user request is identified and that data is pre-processed by computing closed frequent itemset along with entropy values. After that, the user requests are scheduled using the normalized K-means algorithm (NKMA) centered on the entropy values. Finally, the apt resources are allotted to that scheduled task using the Cauchy mutation-genetic algorithm (CM-GA). The investigational outcomes exhibit that the proposed study outruns other existing algorithms in respect to response time, execution time, clustering accuracy, precision and recall. Findings The proposed NKMA and CM-GA technique’s performance is analyzed by comparing them with the existing techniques. The NKMA performance is analyzed with KMA and Fuzzy C-means regarding Prc (Precision), Rca (Recall), F ms (f measure), Acr (Accuracy)and Ct (Clustering Time). The performance is compared to about 500 numbers of tasks. For all tasks, the NKMA provides the highest values for Prc, Rca, Fms and Acr, takes the lowest time (Ct) for clustering the data. Then, the CM-GA optimization for optimally allocating the resource in the cloud is contrasted with the GA and particle swarm optimization with respect to Rt (Response Time), Pt (Process Time), Awt (Average Waiting Time), Atat (Average Turnaround Time), Lcy (Latency) and Tp (Throughput). For all number of tasks, the proposed CM-GA gives the lowest values for Rt, Pt, Awt, Atat and Lcy and also provides the highest values for Tp. So, from the results, it is known that the proposed technique for seasonal requests RA works well and the method optimally allocates the resources in the cloud. Originality/value The proposed approach provides energy-efficient task scheduling and RA and it paves the way for the development of effective CDC.
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基于NMKA和CM-GA技术的云环境下用户季节性请求的任务调度和资源分配
目的为云数据中心(CDC)提供节能的任务调度和资源分配(RA)。本文针对云环境提出了任务调度和RA,对用户的季节性请求进行调度,优化资源分配。本研究主要进行以下操作:数据收集、特征提取、特征约简和RA。首先,收集多个用户季节性请求的在线流数据。然后,根据用户请求和云服务器提取特征,并使用改进的主成分分析对提取的特征进行精简。对于RA,识别用户请求的分割数据,并通过计算封闭频繁项集和熵值对该数据进行预处理。之后,使用以熵值为中心的规范化k -均值算法(NKMA)调度用户请求。最后,使用柯西突变遗传算法(CM-GA)将apt资源分配给该调度任务。研究结果表明,所提出的研究在响应时间、执行时间、聚类准确性、精度和召回率方面优于其他现有算法。通过与现有的NKMA和CM-GA技术进行比较,分析了所提出的NKMA和CM-GA技术的性能。用KMA和模糊C-means分析NKMA的性能,包括Prc (Precision)、Rca (Recall)、F ms (F measure)、Acr (Accuracy)和Ct (Clustering Time)。将性能与大约500个任务进行比较。对于所有任务,NKMA提供的Prc、Rca、Fms和Acr的值最高,聚类数据所需的时间(Ct)最短。然后,将CM-GA优化与遗传算法和粒子群优化在Rt(响应时间)、Pt(处理时间)、Awt(平均等待时间)、Atat(平均周转时间)、Lcy(延迟)和Tp(吞吐量)方面进行对比。对于所有数量的任务,所提出的CM-GA给出了Rt、Pt、Awt、Atat和Lcy的最低值,并提供了Tp的最高值。因此,从结果来看,所提出的季节性请求RA技术效果良好,并且该方法可以最佳地分配云中的资源。该方法提供了高效节能的任务调度和RA,为开发高效的CDC铺平了道路。
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