Model giliran prestasi bagi pelayan portal UUM
Despite of the increasing number of Web servers in use, only several people is definitively known about their performance characteristics. Until now, there is no complete model of Web server performance for UUM Web Portal. The main objective of this study is to develop a Generalized System-Level Mod...
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UUM ETD |
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Abdul Rahim, Rahela |
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TK5015.888 Web sites |
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TK5015.888 Web sites Khairiny, Khalid Model giliran prestasi bagi pelayan portal UUM |
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Despite of the increasing number of Web servers in use, only several people is definitively known about their performance characteristics. Until now, there is no complete model of Web server performance for UUM Web Portal. The main objective of this study is to develop a Generalized System-Level Model at a system-level point of view of Web server performance for UUM Web Portal. A system-level performance model views the system being modeled as a "black box" which only the arrival rate and service time is considered. It is important in order to measure Web server performance metrics such as server utilization, average server throughput, average number of packet in the server and average response time. This study is refers to infinite population and
finite queue. It is suitable model because it is easy to define and fast to interpret the
result but still represents the real situation. In addition, the complex problem is easily to
understand. The developed model can increase the knowledge and understanding about the importance of system-level model in Web server performance. It also offers a basic result for Web server assessment in details. Finally, it can assist the management in making decision about system performance to enhance the server system at UUM Computer Centre as well |
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Thesis |
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Master's degree |
author |
Khairiny, Khalid |
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Khairiny, Khalid |
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Khairiny, Khalid |
title |
Model giliran prestasi bagi pelayan portal UUM |
title_short |
Model giliran prestasi bagi pelayan portal UUM |
title_full |
Model giliran prestasi bagi pelayan portal UUM |
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Model giliran prestasi bagi pelayan portal UUM |
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Model giliran prestasi bagi pelayan portal UUM |
title_sort |
model giliran prestasi bagi pelayan portal uum |
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Universiti Utara Malaysia |
granting_department |
Centre for Graduate Studies |
publishDate |
2007 |
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https://etd.uum.edu.my/5271/1/s86479.pdf https://etd.uum.edu.my/5271/2/s86479_abstract.pdf |
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my-uum-etd.52712015-12-10T01:11:30Z Model giliran prestasi bagi pelayan portal UUM 2007 Khairiny, Khalid Abdul Rahim, Rahela Centre for Graduate Studies Pusat Pengajian Siswazah TK5015.888 Web sites Despite of the increasing number of Web servers in use, only several people is definitively known about their performance characteristics. Until now, there is no complete model of Web server performance for UUM Web Portal. The main objective of this study is to develop a Generalized System-Level Model at a system-level point of view of Web server performance for UUM Web Portal. A system-level performance model views the system being modeled as a "black box" which only the arrival rate and service time is considered. It is important in order to measure Web server performance metrics such as server utilization, average server throughput, average number of packet in the server and average response time. This study is refers to infinite population and finite queue. It is suitable model because it is easy to define and fast to interpret the result but still represents the real situation. In addition, the complex problem is easily to understand. The developed model can increase the knowledge and understanding about the importance of system-level model in Web server performance. It also offers a basic result for Web server assessment in details. Finally, it can assist the management in making decision about system performance to enhance the server system at UUM Computer Centre as well 2007 Thesis https://etd.uum.edu.my/5271/ https://etd.uum.edu.my/5271/1/s86479.pdf text eng validuser https://etd.uum.edu.my/5271/2/s86479_abstract.pdf text eng public http://lintas.uum.edu.my:8080/elmu/index.jsp?module=webopac-l&action=fullDisplayRetriever.jsp&szMaterialNo=0000792939 masters masters Universiti Utara Malaysia Saleh, A.R., Hibadullah, F. & Ahmad, K. B. (2002). Penggunaan internet di kalangan pelajar: kajian kes di Kota Bharu. Laporan penyelidikan, Universiti Utara Malaysia. Anderson, M., Cao, J., Khil, M. & Nyberg, C. (2003). Performance modeling of an Apache Web server with bursty arrival traffic. Proceedings of the International conference on Internet computing. Almeida, V. A. F., Almeida, J. M. D. & Murta, C. S. (1996). Performance analysis of a WWW server. No. 1996-018. Banks, J., Carson, J. S. & Nelson, B. L. (1995). Discrete-event system simulation. Prentice Hall International, Inc-New Jersey. Beckers, J.V.L., Hendrawan, I., Kooij, R.E. & Van Der Mei, R. (2001). Generalized processor sharing performance models for internet access lines. Proceedings of 9th IFIP Conference on performance modeling and evaluation of ATM & IP networks, Budapest. Bertsekas, D. & Gallager, R. (1992). Data networks, 2nd Edition. Prentice Hall, Inc. Englewood Cliffs, N.J. Brij, M. & Myra, S. (eds). (1999). WEBKDD'99: Web usage analysis and user profiling. Vol. 1, No. 2: pp 108-110. Browning, T. 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Proceedings of the 38th conference on decision & control Phoenix, Arizona USA. Stadelmann, M. R. & Agrawal S. C. (1996). UNIX Web server Performance Analysis. Proceedings of International CMG conference, pp 1026-1033. Ozekici, S. (1990). Queueing theory and application. Hemisphere Publishing Corporation. New York. Tavana, M. & Rappaport, J. (1997). Optimal allocation of arrivals to a collection of parallel workstations. International Journal of Operations & Production Management. Vol. 17, No. 3: pp 305-325. Urgaonkar, B., Giovanni, P., Shenoy, P., Spreitzer, M. & Tantawi, A. (2005). An analytical model for mult-tier Internet services and its applications. Proceedings of SIGMETRICS'05, pp 291-302. Van Der Mei, R.D., Hariharan, R. & Reeser, P.K. (2001). Web server performance modeling. Telecommunication System. Vol. 16, No. 3-4: pp. 361-378. Wells, L., Christensen, S. Kristensen, L. M. & Mortensen, K. H. (2001). Simulation based performance analysis of Web servers. Proceedings of 9th International Workshop on Petri Nets and performance models. IEEE Computer Society: pp 59-68. Zhen Liu, Niclausse, N. & Villanueva, C. J. (2001). Traffic model and performance evaluation of Web servers. Performance Evaluation an International Journal. Vol. 46: pp 77-100. |