Information Technology Reference
In-Depth Information
7
Conclusion
Under the resource provisioning in Cloud Computing, the long-held dream of
computing as a utility, has the potential to transform a large part of the IT industry,
making software even more attractive as a service and shaping the way IT hardware is
designed and purchased. Developers with innovative ideas for new Internet services
no longer require the large capital outlays in hardware to deploy their service or the
human expense to operate it. They need not be concerned about over- provisioning for
a service whose popularity does not meet their predictions, thus wasting costly
resources, or under- provisioning for one that becomes wildly popular, thus missing
potential customers and revenue. The Methodology based on Infrastructure as a
Service layer to access resources on-demand. A Rule Based Resource Manager is
proposed to scale up private cloud and presents a cost effective solution in terms of
money spent to scale up private cloud on-demand by taking public cloud's resources
and that never permits secure information to cross the organization's firewall in
hybrid cloud. Also set the time for public cloud and private cloud to fulfill the request.
References
[1]
Gong, C., Liu, J., Zhang, O., Chen, H., Gong, Z.: The Characteristics of Cloud
Computing. In: Parallel Processing Workshops, pp. 275-279 (2010)
[2]
Pateria, P.K., Marria, N.: On-Demand Resource Provisioning in Sky Environment.
International Journal of Computer Science and its Application, 275-280 (2010)
[3]
Hua, Z.Y., Jian, Z., Hua, Z.W.: Discussion of Intelligent Cloud Computing System. In:
International Conference on Web Information Systems and Mining, pp. 319-322 (2010)
[4]
Zhan, J., Wang, L., Tu, B., Li, Y., Wang, P., Zhou, W., Meng, D.: Phoenix Cloud:
Consolidating Different Computing Loads on Shared Cluster System for Large
Organization. In: Proceeding of the First Workshop of Cloud Computing and its
Application (July 17, 2010)
[5]
Wang, S.-C., Yan, K.-Q., Liao, W.-P., Wang, S.-S.: Towards a Load Balancing in a
Three-level Cloud Computing Network
[6]
Hu, Wong, J., Iszlai, G., Litoiu, M.: Resource Provisioning for Cloud Computing. In:
Conference of Center for Advanced Studies on Collaborative Research (2009)
[7]
Noureddine, M., Bashroush, R.: Modality cost analysis based methodology for cost
effective datacenter capacity planning in the cloud. Special Issue on the International
Conference on Information and Communication System, ICIC 2011, pp. 1-9 (2011)
[8]
Chaisiri, S., Lee, B.-S., Niyato, D.: Optimization of Resource Provisioning Cost in Cloud
Computing, pp. 1-32
[9]
Jung, G., Sim, K.M.: Agent-based Adaptive Resource Allocation on the Cloud
Computing Environment. In: 2011 40th International Conference on Parallel Processing
Workshops (ICPPW), pp. 345-351 (2011)
[10]
Suhail Rehman, M., Sakr, M.F.: Initial Findings for Provisioning Variation in Cloud
Computing. In: International Conference on Cloud Computing, pp. 473-479 (2010)
[11]
Shin, D., Akkan, H.: Domain based Virtualized Resource Management in Cloud
Computing
[12]
Goudarzi, H., Pedram, M.: Maximizing profit in cloud computing system via resource
allocation, pp. 1-6. University of Southern California, Los Angeles (2011)
 
Search WWH ::




Custom Search