Enhanced Big Data Platform for Visualization of Employee Data.

Manishankar S, S. Sathayanarayana

Abstract


In this Digital world storage area capacity required for an Enterprise is quite huge, and processing that Big Data is one of the major challenging areas in today’s information technology. As the heterogeneous data from the various sources grow rapidly, there should be some proficient way for data storage for each enterprise. Most of the Enterprises have a tendency to migrate their data in to servers with high processing capability to handle variety and voluminous data. Major problem that arises in such big data servers of an Enterprise is the process involved in segregating data according to their types. In this research, an efficient methodology is proposed which handles the segregation of data inside a server with multi valued distribution-based clustering. These clustering-based solutions provide an efficient visualization of varying data in the server and also a separate visualization of employee data too. The paper discusses about the simulation of the clustering technique with respect to an Enterprise data and visualization of file storage structure and categorization of data, also it gives a picture of performance of the Big data server. 


Keywords


big data; data storage servers; data analytics; clusterization; visualization.

Full Text:

PDF

References


D. Agrawal, S. Das, and A. El Abbadi, “Big data and cloud computing: current state and future opportunities,” 14th Int. Conf. Extending Database Technol., pp. 530–533, 2011.

S. Kaisler, F. Armour, and J. A. Espinosa, “Introduction to Big Data: Challenges, Opportunities, and Realities Minitrack,” Proc. 47th Hawaii Int. Conf. Syst. Sci., pp. 728–728, 2014.

R. Huang and W. Xu, “Performance evaluation of enabling logistic regression for big data with R,” 2015 IEEE Int. Conf. Big Data (Big Data), pp. 2517–2524, 2015.

V. Čančer, “Criteria weighting by using the 5Ws & H technique,” Bus. Syst. Res., vol. 3, no. 2, pp. 41–48, 2012.

X. Mo and H. Wang, “Asynchronous Index Strategy for high performance real-time big data stream storage,” in Proceedings - 2012 3rd IEEE International Conference on Network Infrastructure and Digital Content, IC-NIDC 2012, 2012, pp. 232–236.

M. Mesiti and S. Valtolina, “Towards a {User}-{Friendly} {Loading} {System} for the {Analysis} of {Big} {Data} in the {Internet} of {Things},” Comput. {Software} {Applications} {Conference} {Workshops} ({COMPSACW}), 2014 {IEEE} 38th {International}, pp. 312–317, 2014.

S. Gokuldev, A. Ashokan, and R. Rajeev, “A DTQ Scheduling Algorithm with Check pointing approach in Computational Grid,” vol. 11, no. 9, pp. 6850–6855, 2016.

A. B. Patel, M. Birla, and U. Nair, “Addressing big data problem using Hadoop and Map Reduce,” in 3rd Nirma University International Conference on Engineering, NUiCONE 2012, 2012.

J. Yang and X. Li, “MapReduce based method for big data semantic clustering,” in Proceedings - 2013 IEEE International Conference on Systems, Man, and Cybernetics, SMC 2013, 2013, pp. 2814–2819.

D. Lazer, R. Kennedy, G. King, and A. Vespignani, “The parable of {Google Flue}: traps in big data analysis,” Science (80-. )., vol. 343, pp. 1203–1205, 2014.

Q. Zhang, Z. Chen, A. Lv, L. Zhao, F. Liu, and J. Zou, “A universal storage architecture for big data in cloud environment,” in Proceedings - 2013 IEEE International Conference on Green Computing and Communications and IEEE Internet of Things and IEEE Cyber, Physical and Social Computing, GreenCom-iThings-CPSCom 2013, 2013, pp. 476–480.

S. Singh and N. Singh, "Big Data analytics," 2012 International Conference on Communication, Information & Computing Technology (ICCICT), Mumbai 2012, pp.1-4.

J. Zhou, Z. Li, Z. Zhang, B. Liang and F. Chen, "Visual Analytics of Relations of Multi-Attributes in Big Infrastructure Data," 2016 Big Data Visual Analytics (BDVA), Sydney, NSW, 2016, pp. 1-2.

A. Saldhi, D. Yadav, D. Saksena, A. Goel, A. Saldhi and S. Indu, "Big data analysis using Hadoop cluster," 2014 IEEE International Conference on Computational Intelligence and Computing Research, Coimbatore, 2014, pp. 1-6.

A. B. Patel, M. Birla and U. Nair, "Addressing big data problem using Hadoop and Map Reduce," 2012 Nirma University International Conference on Engineering (NUiCONE), Ahmedabad, 2012, pp. 1-5.

T. Kurc, U. Catalyurek, Chialin Chang, A. Sussman and J. Saltz, "Visualization of large data sets with the Active Data Repository," in IEEE Computer Graphics and Applications, vol. 21, no. 4, pp. 24-33, Jul/Aug 2001.

V. Hegde, P. Karthika, and M. G. Madhu, “Opinion mining and market analysis,” Int. J. Appl. Eng. Res., vol. 10, no. 10, pp. 25629–25636, 2015.

H. Abbes and F. Gargouri, “Big Data Integration: A MongoDB Database and Modular Ontologies based Approach,” in Procedia Computer Science, 2016, vol. 96, pp. 446–455.




DOI: http://dx.doi.org/10.30630/joiv.2.3.132

Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

JOIV : International Journal on Informatics Visualization
Published by Information Technology Department
Politeknik Negeri Padang, Indonesia

© JOIV - ISSN : 2549-9610 | e-ISSN : 2549-9904 

Phone : +62-82386434344
Email  : hidraamnur@live.com | hidra@pnp.ac.id
              fazrolpnp@gmail.com


Creative Commons License is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

View My Stats