Genetic algorithm-based cost minimization pricing model for on-demand IaaS cloud service

被引:0
作者
Sahil Kansal
Harish Kumar
Sakshi Kaushal
Arun Kumar Sangaiah
机构
[1] Panjab University,Department of Computer Science and Engineering, University Institute of Engineering and Technology
[2] Vellore Institute of Technology (VIT),School of Computing Science and Engineering
来源
The Journal of Supercomputing | 2020年 / 76卷
关键词
On-demand pricing; Cloud computing; Infrastructure as a Service; Genetic algorithm;
D O I
暂无
中图分类号
学科分类号
摘要
Cloud computing has emerged as the most effective distributed computing paradigm. It has grabbed the attention of many organizations owing to its business prospects and significant features like agility and flexibility. Dynamic scalability of cloud services and availability of number of homogenous cloud service providers in market make it difficult for the provider to fix the prices of cloud services, especially on-demand Infrastructure-as-a-Service cloud service instances. It is quite problematic for provider to map the dynamics of prices with the variation in service requirement and satisfying the users’ quality of service requirement simultaneously. At the same time, it is very essential for the provider to determine the lower bound price of the services beyond which he could not afford the provisioning of the services. This paper presents dynamic demand-based pricing model for on-demand IaaS cloud service instances that will assist the provider to dynamically determine the price of provisioning the cloud services by considering the provider’s and users’ utility concurrently. Genetic algorithm is applied for the optimized evaluation users’ request parameters and provider’s computation capacity that will minimize the cost of execution. Experimental results demonstrate that price evaluation is more efficient and users’ utility increases considerably using the proposed framework in comparison with the existing utility-based pricing model.
引用
收藏
页码:1536 / 1561
页数:25
相关论文
共 66 条
[1]  
Galante G(2016)An analysis of public clouds elasticity in the execution of scientific applications: a survey J Grid Comput 14 193-216
[2]  
De Bona LCE(2010)A view of cloud computing Commun ACM 53 50-58
[3]  
Mury AR(2013)Economic models for cloud service markets: pricing and capacity planning Theor Comput Sci 496 113-124
[4]  
Schulze B(2014)Service models and pricing schemes for cloud computing Clust Comput 17 529-535
[5]  
da Rosa Righi R(2012)On understanding the economics and elasticity challenges of deploying business applications on public cloud infrastructure J Internet Serv Appl 3 173-193
[6]  
Armbrust M(2016)Comparative analysis of quality metrics for community detection in social networks using genetic algorithm Neural Netw World 26 625-635
[7]  
Fox A(2015)An ANFIS approach for evaluation of team-level service climate in GSD projects using Taguchi-genetic learning algorithm Appl Soft Comput 30 628-548
[8]  
Griffith R(2017)A novel framework for internet of knowledge protection in social networking services J Comput Sci 9 531-1380
[9]  
Joseph AD(2011)Double auction-based scheduling of scientific applications in distributed grid and cloud environments J Grid Comput 26 1368-90
[10]  
Katz R(2010)Autonomic metered pricing for a utility computing service Future Gen Comput Syst 41 79-2184