Handling data analytics on unstructured data using mongo DB
-
https://doi.org/10.14419/ijet.v7i2.12.11320
Received date: April 9, 2018
Accepted date: April 9, 2018
Published date: April 3, 2018
-
Abstract
Nowadays the amount of data generated from various device sources and business transactions is very huge. Most of the transactional, business data generated is unstructured. Business organizations use the data to perform analytics for decision making. Performing Analytics on such huge unstructured data has become a challenge for organizations. Enough tools and techniques both with free ware and proprietary license release are available to handle structured data are available. In earlier systems, unstructured data is converted into structured data and then stored in Database Management System (DBMS) for performing further analytics. This is a time consuming process. As the amount of data being generated is increasing tremendously, it has become impossible to transform huge amounts of data into structured data. In order to perform analytics of the digital data, we require different business processes to handle unstructured data directly and efficiently. In this paper, a skillful mechanism is being proposed to handle unstructured data using MongoDB and perform required analytics. The experimental approach and the results are presented.
-
References
- Kumar P., Gopal M. Ivel, S. [2014]. “Extract Transform and Load Strategy for Unstructured Data into Data Warehouse Using Map Re-duce Paradigm and Big Data Analytics", IJIRCCE International Journal of Innovative Research in Computer and Communication Engineering.
- J. Clerk Maxwell, A Treatise on Electricity and Magnetism, 3rd ed., vol. 2. Oxford: Clarendon, 1892, pp.68-73.
- Kumar P., Gopal M. Ivel, S. [2014]. “Extract Transform and Load Strategy for Unstructured Data into Data Warehouse Using Map Re-duce Paradigm and Big Data Analytics", IJIRCCE International Journal of Innovative Research in Computer and Communication Engineering, 02[12].
- “Challenges and Opportunities with Big Data" by A Community White Paper developed by leading researchers across the United States.
- Manoj Manuja Deepak Garg, “Semantic Web Mining of Un-structured Data: Challenges and Opportunities" by International Journal of Engineering [IJE], Volume [5] : Issue [3] : 2011
- Subramaniyaswamy V, Vijayakumar V, Logesh R and Indragandhi V, “Unstructured Data Analysis on Big Data using Map Reduce" in Procedia Computer Science 50 [ 2015 ] 456 – 465
- El-Sappagh, S. H., Hendawi, A. M., Bastawissy, A. H. [2011]. “A proposed model for data warehouse ETL processes", Journal of King Saud University, Computer and Information Sciences, 23[2], 91-104.
- Shaker H. Ali El-Sappagh, Abdeltawab M. Ahmed Hendawi , Ali Hamed El Bastawissy, “A proposed model for data warehouse ETL processes" in Journal of King Saud University.
- “How is Extraction important in ETL process?" by Sweety Patel Department of Computer Science, Fairleigh Dickinson University, USA, Mrudang D. Pandya Ganpat University, Ganpat Vidyanagar, Mehsana, Gujarat.
- “A Review Paper on scope of ETL in Retail Domain" by Satkaur, Anuj Mehta, Research Scholar, S.K.I.E.T. Asst. Prof., S.K.I.E.T. Kurukshetra, Haryana, India Kurukshetra, Haryana, India, in Interna-tional Journal of Advanced Research in Computer Science and Software Engineering .
- White Paper , “Extract, Transform, and Load Big Data with Apache Hadoop" in Big Data Analytics
- Konstantin Shvachko, Hairong Kuang, Sanjay Radia, Robert Chans-ler, “The Hadoop Distributed File System" in 2010 IEEE.
- N. Nataraj, Dr. R.V. Nataraj, “Analysis of ETL Process in Data Warehouse" in International Journal of Engineering Research and General Science Volume 2, Issue 6, October-November, 2014, ISSN 2091-2730
- Satkaur, Anuj Mehta, “Proposed Work on ETL" in International Journal of Advanced Research in Computer Science and Software Engineering, Volume 3, Issue 6, June2013
- Padmapriya. G, M. Hemalatha, “A Recent Survey on Unstructured Data to Structured Data in Distributed Data Mining" in Padmapriya et al, Int. J. Computer Technology Applications, Vol 5 [2], 338-344.
-
Downloads
-
How to Cite
Kanth Aluvalu, R., & A.Jabbar, M. (2018). Handling data analytics on unstructured data using mongo DB. International Journal of Engineering and Technology, 7(2.12), 344-347. https://doi.org/10.14419/ijet.v7i2.12.11320
