Prediction based task scheduling approach for floodplain application in cloud environment

被引:0
作者
Gurleen Kaur
Anju Bala
机构
[1] Thapar Institute of Engineering and Technology,Computer Science and Engineering Department
来源
Computing | 2021年 / 103卷
关键词
Resource prediction; Resource scheduling; Cloud environment; Virtual machine; Ensembling; Machine learning; Quality of service; 00A69;
D O I
暂无
中图分类号
学科分类号
摘要
Natural and environmental sciences are one of the scientific domains which seek a lot of attention as it requires high performance computation and large storage space. Cloud computing is such a platform that offers a customizable infrastructure where scientific applications can provision the required resources prior to execution. The elasticity characteristic of cloud computing and it’s pay-as-you-go pricing model can reduce the resource usage cost for cloud client’s. The various services offered by the cloud providers and the extravagant developments in the domain of cloud computing has attracted many scientists to deploy their applications on cloud. The change in number of tasks of scientific application directly affects the demand of cloud resources. Therefore, to handle the fluctuating demand of resources, there is a need to manage the resources in an efficient manner. This research work focuses on the design of a prediction based scheduling approach which maps the tasks of scientific application with the optimal VM by combining the features of swarm intelligence and multi-criteria decision making approach. The proposed approach improves the accuracy rate, minimizes the execution time, cost and service level agreement violation rate in comparison to existing scheduling heuristics.
引用
收藏
页码:895 / 916
页数:21
相关论文
共 54 条
  • [1] Huang Q(2014)Prediction-based dynamic resource scheduling for virtualized cloud systems J Netw 9 375-383
  • [2] Shuang K(2018)Dynamic scheduling strategy with efficient node availability prediction for handling divisible loads in multi-cloud systems J Parallel Distrib Comput 113 1-16
  • [3] Xu P(2018)An autonomic resource pro-visioning approach for service-based cloud applications: a hybrid approach Futur Gener Comput Syst 78 191-210
  • [4] Li J(2018)A GSA based hybrid algorithm for bi-objective workflow scheduling in cloud computing Futur Gener Comput Syst 83 14-26
  • [5] Liu X(2018)A genetic algorithm-based task scheduling for cloud resource crowd-funding model Int J Commun Syst 31 e3394-493
  • [6] Su S(2016)On the use of models for high-performance scientific computing applications: an experience report Softw Syst Model 1–24 2016-989
  • [7] Kang S(2015)A survey of data-intensive scientific workflow management J Grid Comput 13 457-18
  • [8] Veeravalli B(2015)Intelligent failure prediction models for scientific workflows Expert Syst Appl 42 980-1225
  • [9] Aung KMM(2016)Secure scientific applications scheduling technique for cloud computing environment using global league championship algorithm PLoS ONE 11 1-1029
  • [10] Ghobaei-Arani M(2015)Artificial bee colony based energy-aware resource utilization technique for cloud computing Concurr Comput Pract Exp 27 1207-13069