Research Article | Open Access | Download PDF
Volume 4 | Issue 5 | Year 2013 | Article Id. IJCTT-V4I5P35 | DOI : https://doi.org/10.14445/22312803/IJCTT-V4I5P35
Advanced Replica-Based Data Access Prediction and Optimization Approach in Distributed Environment
P. Sathiya, K. N. Vimal Shankar
Citation :
P. Sathiya, K. N. Vimal Shankar, "Advanced Replica-Based Data Access Prediction and Optimization Approach in Distributed Environment," International Journal of Computer Trends and Technology (IJCTT), vol. 4, no. 5, pp. 1129-1134, 2013. Crossref, https://doi.org/10.14445/22312803/IJCTT-V4I5P35
Abstract
The main purpose of the distributed system is to coordinate the use of shared resources or provide communication services to the users. In order to achieve high performances in distributed storage systems have been considering techniques of data replication, migration, distribution, and access parallelism. The data can be access in distributed manner within organizations allows more redundancy and high flexibility in structure for system behaviour. In this system applies many strategies for supporting the online prediction of system behaviour using PSO technique. The main aspect to accessing data is finding the system behaviour and checks the operation conducting on the system through the reducing the iteration process in migration and replication with support strategies models to designed for schedulers. If procedure a high throughput strategies models in a data access optimization behaviour for a map-reduce framework and also to predicate system behaviour. The data access operation finds to automatic and online prediction of read-and-write operations performed by optimization processes and dynamically to predict CPU performances to accessing the resources in efficient way. Data can be process in PSO technique based on scheduler by observe the metadata that placed in the data centres.
Keywords
Distributed System, data centre, PSO (particle swarm optimization), map-reduce framework, CPU, metadata, Optimization
References
[1] Renato Porfirio Ishii and Rodrigo Fernandes de Mello, “An Online Data Access Prediction and Optimization Approach for Distributed Systems” IEEE transactions on parallel and distributed systems, vol. 23, no. 6, june 2012.
[2] Zheng Wei, Student Member, IEEE and Joseph JaJa, Fellow, IEEE, “An Optimized High-Throughput Strategy for Constructing Inverted Files”.
[3] R.P. Ishii and R.F. de Mello, “An Adaptive and Historical Approach to Optimize Data Access in Grid Computing Environments,” INFOCOMP J. Computer Science, vol. 10, no. 2,pp. 26-43, http://www.dcc.ufla.br/infocomp/, 2011.
[4] Rajiv Ranjan, Aaron Harwood and Rajkumar Buyya, P2P Networks Group and GRIDS Laboratory, “A Study on Peer-to-Peer Based Discovery of Grid Resource Information” December 1, 2006.
[5] Zheng Wei and Joseph JaJa “A Fast Algorithm for Constructing Inverted Files on Heterogeneous Platforms”.
[6] Mr. P.Mathiyalagan, U.R.Dhepthie and Dr.S.N.Sivanandam, “Grid Scheduling Using Enhanced PSOAlgorithm” , IJCSE ,Vol. 02, No. 02, 2010, 140-145.
[7] Berthier Ribeiro-Neto, Edleno S. Moura, Marden S. Neubert, Nivio Ziviani, “Efficient Distributed Algorithmsto Build Inverted Files”.
[8] Jeffrey Dean and Sanjay Ghemawat “MapReduce: Simplified Data Processing on Large Clusters”
[9] H.H.E. AL-Mistarihi and C.H. Yong, “On Fairness, Optimizing Replica Selection in Data Grids,” IEEE Trans. Parallel Distributed Systems, vol. 20, no. 8, pp. 1102-1111, Aug. 2009.
[10] M. Devarakonda and R. Iyer, “Predictability of Process Resource Usage: A Measurement-Based Study on Unix,” IEEE Trans. Software Eng., vol. 15, no. 2, pp.1579-1586,http://dx.doi.org/10.1109/ Dec. 1989.
[11] M. Faerman, A. Su, R. Wolski, and F. Berman, “Adaptive Performance Prediction for Distributed Data-intensive Applications,” Proc. ACM/IEEE Conf. Supercomputing (Supercomputing ’99), p. 36, 1999.
[12] M. Wang, K. Au, A. Ailamaki, A. Brockwell, C. Faloutsos, and G.R. Ganger, “Storage Device Performance Prediction with Cart Models,” Proc. IEEE CS 12th Ann. Int’l Symp. Modeling, Analysis, and Simulation of Computer and Telecomm. Systems (MASCOTS ’04), pp. 588-595, 2004.
[13] L. Senger, R.F. Mello, M.J. Santana, and R.H.C. Santana, “An On-Line Approach for Classifying and Extracting Application Behavior on Linux,” High Performance Computing: Paradigm and Infrastructure, pp. 381-401, John Wiley and Sons Inc., 2005.
[14] L.J. Senger, M. Santana, and R. Santana, “An Instance-based Learning Approach for Predicting Parallel Applications Execution Times,” Proc. Third Int’l Information and Telecomm. Technologies Symp., pp. 9-15, Dec. 2005.
[15] G. Fox and D. Gannon, “Computational Grids,” Computing in Science and Eng., vol. 3, no. 4, pp. 74-77, 2001.