Survey on Minimizing Payment Cost of Multiple Cloud Service Provider

Authors

  • Daimi Aafiya Dept. of Computer Engineering, M.S. Bidve Engineering College, BAT University, Latur, India

Keywords:

Cloud Service Provider, Service Level Objectives, Payment Cost Minimization, Data Availability

Abstract

Many industries and research center using a cloud service provider (CSP) provider for storing data on that and CSP used many web applications such as web portal, online social network providing services to the clients all over the world. These types of datacenters provide the different unit prices and get/put latencies for resources reservation and allocations. Selection of different CSPs datacenters and cloud customers facing two challenges (I.) How to allocating data to the datacenters in worldwide to satisfy application Service Level Objectives (SLO) requirement which includes both data availability and retrieval latency. (II.) How to allocate reserve resources and data in the datacenters, which belongs to different CSP to minimizing payment cost.Find out the solution of these challenges firstly we used integer programming techniques for handles cost minimization problems. We propose three techniques for reducing the service latency and payment cost 1. Multicast Based Data Transferring, 2. Coefficient Based Data Reallocation and 3. Request Redirection Based Congestion.

 

References

Z. Wu, M. Butkiewicz, D. Perkins, E. Katz-Bassett, and H. V. Madhyastha, “SPANStore: Cost-effective geo-replicated storagespanning multiple cloud services,” in Proc. SOSP, Nov. 2013,pp. 292–308.

G. A. Alvarez et al., “Minerva: An automated resource provisioning toolfor large-scale storage systems,” ACM Trans. Comput. Syst., vol. 19,no. 4, pp. 483–518, Nov. 2001.

S. Agarwal et al., “Volley: Automated data placement for geo-distributecloud services,” in Proc. NSDI, 2010, p. 28

R. Kotla, L. Alvisi, and M. Dahlin, “SafeStore: A durable and practicalstorage system,” in Proc. ATC, Jun. 2007, pp. 129–142.

Y. Yao, Haozhou Wang and K. Liu, “On Storing and Retrieving Geospatial Big-Data in Cloud”, SIGSPTIAL International workshop on use of GIS in the emergency management, ACM, 31-October- 2016.

Christoph Hochreiner, Stefan Schulte and Michael Borkowski, “Predicting cloud resource utilization”, 9th International conference on utility and cloud computing, 6-December-2016.

S.H. Gary Chan and Zhangyu Chang, “Video management and resource allocation for a large-scale VoD cloud”, Nature Communication, 24 January 2016ACM Transaction on Multimedia Computing Communication Application, Vol. 12, Article 72, September 2016.

IbrarYaqoob, SameeUllah Khan, S. Mokhtar and A. Gani, “The rise of big data on cloud computing:Review and open research issues, 2015-Elsevier.

Zhiming Shen, Qin Jia, Weijia Song, “Supercloud: opportunities and challenges.”,SIGOPS Oper. Syst. Rev, Jan-2015.

Boyang Wang, Jiqiang Liu, Ming Li, and ShuoQiu, “Toward Practical Privacy-Preserving Frequent Itemset Mining on Encrypted Cloud Data”, IEEE Transactions on Cloud Computing, 2017.

Miguel Correia, AlyssonBessani, and Bruno Quaresma, “DepSky: Dependable and Secure Storage in a Cloud-of-Clouds”, ACM Transaction Storage, November-2017.

H. Wu, Z. Feng, C. Guo, and Y. Zhang, “ICTCP: Incast congestion control for TCP in data center networks,” in Proc. CoNEXT, Nov. 2010, pp. 1–12. [38] D. Zats, T. D

A. Hussam, P. Lonnie, and W. Hakim, “RACS: A case for cloud storage diversity,” in Proc. SoCC, Jun. 2010, pp. 229–240.

E. Anderson et al., “Hippodrome: Running circles around storage administration,” in Proc. FAST, Jan. 2002, pp. 175–188.

A. Adya et al., “FARSITE: Federated, available, and reliable storage for an incompletely trusted environment,” in Proc. OSDI, Dec. 2002, pp. 1–4.

G. Liu and H. Shen, “Minimum-cost cloud storage service across multiple cloud providers,” in Proc. ICDCS, Jun. 2016, pp. 129–138.

D. Zats, T. Das, P. Mohan, D. Borthakur, and R. Katz, “DeTail: Reducing the flow completion time tail in datacenter networks,” in Proc. SIGCOMM, Sep. 2012, pp. 139–150

D. Niu, B. Li, and S. Zhao, “Quality-assured cloud bandwidth autoscaling for video-on-demand applications,” in Proc. INFOCOM, 2012, pp. 460–468.

H. Roh, C. Jung, W. Lee, and D. Du, “Resource pricing game in geodistributed clouds,” in Proc. INFOCOM, Apr. 2013, pp. 1519–1527.

C. Hong, M. Caesar, and P. B. Godfrey, “Finishing flows quickly with preemptive scheduling,” in Proc. SIGCOMM, Sep. 2012, pp. 127–138.

B. Vamanan, J. Hasan, and T. N. Vijaykumar, “Deadline-aware datacenter TCP (D2TCP),” in Proc. SIGCOMM, Sep. 2012, pp. 115–126.

Downloads

Published

2019-08-31

How to Cite

[1]
D. Aafiya, “Survey on Minimizing Payment Cost of Multiple Cloud Service Provider”, Int. J. Sci. Res. Comp. Sci. Eng., vol. 7, no. 4, pp. 1–5, Aug. 2019.

Issue

Section

Survey Article

Similar Articles

1 2 3 4 5 6 7 8 9 10 > >> 

You may also start an advanced similarity search for this article.