Analysis of Techniques to Retrieve Big Database
DOI:
https://doi.org/10.26438/ijcse/v7i9.6671Keywords:
Big Data, MongoDB, HadoopDB, Aggregation, MapReduceAbstract
In today’s world there are a large amount of data which need to be processed with big databases. In recent years, increase plethora of companies has adopted different-different types of non-relational database. The goal of this research is to implement techniques to retrieve big database for the big datasets and investigate the performance of the big database techniques on CPU utilization and high-performance computing software. It attempts to use NoSQL database to replace the relational database. In this research mainly focuses on the new technology of NoSQL database i.e. MongoDB, HadoopDB. Performance comparison of two big data techniques is carried out. The result found that Aggregation technique consumes less execution time than MapReduce technique and more efficient with MongoDB database where as MapReduce technique has less efficient with HadoopDB. Aggregation technique also produces fine relevant information results with less CPU utilization. The result also shows that MongoDB has the capability to switch SQL databases as compare to HadoopDB.
References
[1] Kirti, M Pardeep, “Database for unstructured, semistructured data- NoSQL”, International journal of advanced research in computer engineering & technology, Vol. 4, Issue.2, pp. 466-469, 2015.
[2] A Ait-Mlouk, F Gharnati, T Agouti, “Application of big data analysis with decision tree for road accident”, Indian Journal of Science Technology, Vol. 10, Issue.29, pp. 1-10, 2017.
[3] N Rajyaguru, M Vinay, “A comparative study of big data on mobile computing”, Indian Journal of Science and Technology, Vol. 10, Issue.21, pp. 1-7, 2017.
[4] A Kamilaris, A Kartakoullis, B X. F Prenafeta, “A review on the big data analysis in agriculture”, Computer and Electronics in Agriculture, Vol. 143, pp. 23-27, 2017.
[5] Dean J and Ghemawat S (2008) MapReduce: Simplified Data Processing on Large Clusters. 137-150.
[6] Dede E, Govindaraju M, Gunter D, Canon R S, Ramakrishan L (2013) Performance evaluation of a MongoDB and hadoop platform for scientific data analysis. 4th Workshop on Scientific Cloud Computing, ACM, pp. 13-20.
[7] Nunan D, Domenico M D (2013) Market research and the ethics of big data. International journal of market research, 55(4):505-520.
[8] Ozarkar K, Rajani R (2014) Optimization technique for efficient dynamic query forms with NoSQL. International journal of science and research, 3(11):2041-2044.
[9] Bhosale H S, Gadekar D P (2014) A review paper on big data and hadoop. International Journal of Scientific and Research Publications, 4(10):1-7.
[10] A D Arasteh, D Mohammadpur, M Meghdadi, “MapReduce based implementation of aggregate functions on Cassandra”, International journal of electronics communication and computer technology, Vol. 4, Issue.3, pp. 604-609, 2014.
[11] R Zuech, M T Khoshgoftaar and R Wald, “Intrusion detection and big heterogeneous data a survey”, Journal of Big Data, Vol.2, Issue.3, pp. 2-41, 2015.
[12] Z Mo, Y Li, “Research of big data based on the views of technology and application”, American journal of industrial and business management, Vol.5, pp. 192-197, 2015.
[13] V S Thiyagarajan, A Ayyasamy, “Privacy preserving over big data through Vssfa and Map-Reduce framework in cloud environment”, Indian Journal of Wireless Personal Communication, Vol. 97, Issue.4, pp. 6239-63, 2017.
[14] K Abouelmehdi, H A Beni and H Khaloufi, “Big healthcare data: preserving security and privacy”, Journal of Big Data, Vol. 5, pp. 1-18, 2018.
[15] M S A Khan, H Jamshed, S Bano, N M Anwar, “Big data management in connected world of Internet of things”, Indian Journal of Science Technology, Vol. 10, Issue.29, pp. 1-9, 2017.
[16] V. M A Martin, K David, A Vignesh, “Big Data and its challenges”, International journal of scientific research in computer science, engineering and information technology, Vol. 3, Issue.3, pp. 533-538, 2018.
[17] M Chevalier, M E Malki, A Kopliku, O Teste, R Tournier, “Implementing Multidimensional Data Warehouses into NoSQL”, ICEIS, Vol. 1, pp. 172-183, 2015.
[18] L Kumar, S Rajawat, K Joshi, “Comparative analysis of NoSQL (MongoDB) with MySQL Database”, International Journal of Modern Trends in Engineering and Research, Vol.2, Issue. 5, pp. 120-127, 2015.
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution 4.0 International License.
Authors contributing to this journal agree to publish their articles under the Creative Commons Attribution 4.0 International License, allowing third parties to share their work (copy, distribute, transmit) and to adapt it, under the condition that the authors are given credit and that in the event of reuse or distribution, the terms of this license are made clear.
