Virtual resource auction based on Bayesian incentive strategy in large-scale clouds

被引:0
作者
Zeng S. [1 ]
机构
[1] Department of Communication, Hunan Institute of Engineering, Fuxing Road #88, Hunan
关键词
Auction model; Bayesian incentive strategy; Cloud computing; Virtual resource;
D O I
10.1504/IJNVO.2020.107573
中图分类号
学科分类号
摘要
In cloud platforms, resource pricing service plays a key role to regulate the behaviours of both resource providers and consumers. However, the increasing diversity of user quality-of-service (QoS) requirements makes existing pricing models difficult to be implemented in an efficient manner. In this paper, we design an auction model which is not only useful for cloud clients but also can significantly increase the resource revenue for providers. To support QoS-aware resource pricing, we normalise QoS parameters-based user's scores and use the Bayesian incentive strategy to regulate resource auctions. The key advantage of this auction model is that it supports multi-attributes auction and budget-balancing among bidders. Extensive experiments are conducted in a campus-based cloud, and the results are compared with other existing pricing models. The results indicate that the proposed auction model can significantly improve the resource revenue of cloud providers as well as maintain desirable QoS level for cloud clients. Copyright © 2020 Inderscience Enterprises Ltd.
引用
收藏
页码:387 / 401
页数:14
相关论文
共 34 条
[21]  
Lin M., Yao Z., A data transmission model based on adaptive periodic push strategy for IaaS cloud computing platforms, International Journal of Grid and Distributed Computing, 8, 6, pp. 281-288, (2015)
[22]  
Macias M., Rana O., Et al., Maximizing revenue in grid markets using an economically enhanced resource manager, Concurrency and Computation: Practice & Experience, 22, 14, pp. 1990-2011, (2010)
[23]  
Manvi S.S., Shyam G.K., Resource management for infrastructure as a service (IaaS) in cloud computing: A survey, Journal of Network and Computer Applications, 41, 3, pp. 424-440, (2014)
[24]  
Parsa S., Parand F.-A., Et al., Micro-economics based resource allocation in grid-federation environment, Cluster Computing, 14, 4, pp. 433-444, (2011)
[25]  
Prodan R., Wieczorek M., Et al., Double auction-based scheduling of scientific applications in distributed grid and cloud environments, Journal of Grid Computing, 9, 4, pp. 531-548, (2011)
[26]  
Radhanikanth G.V.R., Narahari Y., Reverse combinatorial auction-based protocols for resource selection in grids, International Journal of Grid and Utility Computing, 1, 2, pp. 109-120, (2009)
[27]  
Sandhu R., Sood S.K., Scheduling of big data applications on distributed cloud based on QoS parameters, Cluster Computing, 18, 2, pp. 817-828, (2015)
[28]  
Shaw S.B., Singh A.K., Use of proactive and reactive hotspot detection technique to reduce the number of virtual machine migration and energy consumption in cloud data center, Computers and Electrical Engineering, 47, 3, pp. 241-254, (2015)
[29]  
Singh S., Chana I., QRSF: QoS-aware resource scheduling framework in cloud computing, Journal of Supercomputing, 71, 1, pp. 241-292, (2014)
[30]  
Tsakalozos K., Roussopoulos M., Et al., Hint-based execution of workloads in clouds with Nefeli, IEEE Transactions on Parallel and Distributed Systems, 24, 7, pp. 1331-1340, (2013)