Home| Contact Us| New Journals| Browse Journals| Journal Prices| For Authors|

Print ISSN: 0974-7710
Online ISSN:
0974-7729


  About IJWA
  Aims & Scope
Editorial Board
Contact us
Current Issue
Next Issue
Previous Issue
Sample Issue
Be a Reviewer
Publisher
Subscription
 
  How To Order
  Order Online
Price Information
Request for Complimentary
Print Copy
 
  For Authors
  Guidelines for Contributors
Online Submission
Call for Papers
Author Rights
 
 
RELATED JOURNALS
Journal of Digital Information Management (JDIM)
Journal of E-Technology(JET)

 

 
International Journal of Web Applications

Web Services Deployment in Cloud Environment
Monika Simjanoska, Goran Velkoski, Sasko Ristov, Marjan Gusev
University Sts Cyril and Methodius Faculty of Computer Sciences and Engineering Skopje, Rugjer, Boshkovikj 16 1000 Skopje Macedonia
Abstract: The services including both hardware and software are available in cloud environment which is scalable. The sharing of hardware services in cloud computing is quite challenging and they need to be addressed. In the cloud multiple tenants use same hardware resources, and use database sources the challenges in cloud have to be solved. In this work, we use web service, hosted two difference multitenant cloud structure. We applied the experimental data to develop machine learning based classifier which can be able to differentiate the two multi-tenant configurations. The importance of this approach is to learn the use new workloads and to prevent the new virtual machine instances.
Keywords: Cloud Computing, Machine Learning, Performance Web Services Deployment in Cloud Environment
DOI:https://doi.org/10.6025/ijwa/2022/14/3/55-60
Full_Text   PDF 1.46 MB   Download:   102  times
References:

[1] Armbrust, M., Fox, A., Griffith, R., Joseph, A.D., Katz, R., Konwinski, A., Lee, G., Patterson, D., Rabkin, A., Stoica, I. & Zaharia, M. (2010) A view of cloud computing. Communications of the ACM, 53, 50–58 [DOI: 10.1145/1721654.1721672].
[2] Bezemer, C.P. & Zaidman, A. Multi-tenant saas applications: Maintenance dream or nightmare? In: Proceedings of the Joint ERCIM Workshop on Software Evolution (EVOL) and International Workshop on Principles of Software Evolution (IWPSE), ser. IWPSE-EVOL’10.
[3] Ganapathi, A., Chen, Y., Fox, A., Katz, R. & Patterson, D. (2010) Statistics-driven workload modeling for the cloud. In: Data Engineering Workshops (ICDEW), IEEE 26th international Conference on, pp. 87–92.
[4] Bodik, P., Griffith, R., Sutton, C., Fox, A., Jordan, M. & Patterson, D. (2009) Statistical machine learning makes automatic control practical for internet datacenters. In: Proceedings of the 2009 Conference on Hot Topics in Cloud Computing, pp. 12–12. International Journal of Web Applications Volume 14 Number 3 60 September 2022
[5] Xiong, P., Chi, Y., Zhu, S., Moon, H.J., Pu, C. & Hacigumus, H. (2011) Intelligent management of virtualized resources for database systems in cloud environment. In: Data Engineering (ICDE), IEEE 27th International Conference on, pp. 87–98.
[6] Chen, H., Kumar, P., Kesavan, M., Schwan, K., Gavrilovska, A. & Joshi, Y. (2011) Spatially aware optimization of energy consumption in consolidated datacenter systems. Proceedings of the InterPACK, Portland, OR.
[7] Li, A., Zong, X., Kandula, S., Yang, X. & Zhang, M. (2011) “Cloudprophet: towards application performance prediction in cloud,” SIGCOMM Comput. Community Review, 41, 426–427.
[8] Liew, S.H. & Su, Y.-Y. (2012) Cloudguide: Helping users estimate cloud deployment cost and performance for legacy web applications. In: Cloud Computing Technology and Science (Cloudcom) Conference on, dec. 2012 (edited by I. E. E. E., IV International), pp. 90–98.
[9] OpenStack (2013) [Online]. “Openstack Cloud Software,”. Available: openstack.org.
[10] Juric, M.B., Rozman, I., Brumen, B., Colnaric, M. & Hericko, M. (2006) Comparison of performance of web services, WSSecurity, RMI, and RMI-SSL. Journal of Systems and Software, 79, 689–700.
[11] Soap, U.I. (2013) [Online]. “Functional Testing Tool for Web Service Testing,”. Available: www.soapui.org/.
[12] Han, J. & Kamber, M. (2006). Data Mining: Concepts and Techniques, 2nd edn. Elsevier: Amsterdam.
[13] MATLAB (2013). Available: www.mathworks.com.


Home | Aim & Scope | Editorial Board | Author Guidelines | Publisher | Subscription | Previous Issue | Contact Us |Upcoming Conferences|Sample Issues|Library Recommendation Form|

 

Copyright © 2010 dline.info