Comparison of NoSQL Database and Traditional Database-An emphatic analysis

M. Sandeep Kumar - Vellore Institute of Technology University, India
Prabhu .J - Vellore Institute of Technology University, India


Citation Format:



DOI: http://dx.doi.org/10.30630/joiv.2.2.58

Abstract


A Huge amount of data is manipulated by using the web application, Facebook, Twitter, social sites etc. Most of the data are unstructured data. It is not desirable for storing, performing and analyzing data in the relational database for huge data. It affords way towards performing NoSQL database and uses fully for handling the big data. In this paper, we present the performance in store and query operation in NoSQL database, estimating the performance of both reads and write operation using simple and complex queries. Result represents that comparing Cassandra with relation database, Cassandra outperforms the relation database. Most of the organization used only Hbase and Cassandra for benefit of cost. Comparison Various NoSQL Database, issues while performing NoSQL database.

 


Full Text:

PDF

References


Gupta, S., & Narsimha, G. (2017). Efficient Query Analysis and Performance Evaluation of the NoSQL Data Store for Big Data. In Proceedings of the First International Conference on Computational Intelligence and Informatics (pp. 549-558). Springer Singapore.

Gudivada, V. N., Rao, D., & Raghavan, V. V. (2014, June). NoSQL systems for big data management. In Services (SERVICES), 2014 IEEE World Congress on (pp. 190-197). IEEE.

Hecht, R., & Jablonski, S. (2011, December). NoSQL evaluation: A use case oriented survey. In Cloud and Service Computing (CSC), 2011 International Conference on (pp. 336-341). IEEE.

Wu, C. M., Huang, Y. F., & Lee, J. (2015). Comparisons between MongoDB and My-SQL databases on the two websites. American Journal of Software Engineering and Applications, 4(2), 35.

Abramova, V., & Bernardino, J. (2013, July). NoSQL databases: MongoDB vs Cassandra. In Proceedings of the International C* Conference on computer science and software engineering (pp. 14-22). ACM

Brewer, E. A. (2000, July). Towards robust distributed systems. In PODC (Vol. 7).

Gilbert, S., & Lynch, N. (2002). Brewer's conjecture and the feasibility of consistent, available, partition-tolerant web services. Acm Sigact News, 33(2), 51-59.

Wada, H., Fekete, A., Zhao, L., Lee, K., & Liu, A. (2011, January). Data Consistency Properties and the Trade-offs in Commercial Cloud Storage: the Consumers' Perspective. In CIDR (Vol. 11, pp. 134-143).

Chang, F., Dean, J., Ghemawat, S., Hsieh, W. C., Wallach, D. A., Burrows, M., & Gruber, R. E. (2008). Big table: A distributed storage system for structured data. ACM Transactions on Computer Systems (TOCS), 26(2), 4.

DeCandia, G., Hastorun, D., Jampani, M., Kakulapati, G., Lakshman, A., Pilchin, A., ... & Vogels, W. (2007). Dynamo: amazon's highly available key-value store. ACM SIGOPS Operating systems review, 41(6), 205-220.

Nayak, A., Poriya, A., & Poojary, D. (2013). Type of NOSQL databases and its comparison with relational databases. International Journal of Applied Information Systems, 5(4), 16-19.

Lourenço, J. R., Cabral, B., Carreiro, P., Vieira, M., & Bernardino, J. (2015). Choosing the right NoSQL database for the job: a quality attribute evaluation. Journal of Big Data, 2(1), 18.

Sahafizadeh, E., & Nematbakhsh, M. A. (2015). A Survey on Security Issues in Big Data and NoSQL. Advances in Computer Science: an International Journal, 4(4), 68-72.

Oussous, A., Benjelloun, F. Z., Lahcen, A. A., & Belfkih, S. (2013). Comparison and classification of NoSQL databases for big data. International Journal of Database Theory and Application, 6(4.2013).

Agrawal, D., Das, S., & El Abbadi, A. (2011, March). Big data and cloud computing: current state and future opportunities. In Proceedings of the 14th International Conference on Extending Database Technology (pp. 530-533). ACM.

Grolinger, K., Higashino, W. A., Tiwari, A., & Capretz, M. A. (2013). Data management in cloud environments: NoSQL and NewSQL data stores. Journal of Cloud Computing: Advances, Systems, and Applications, 2(1), 22.

Kulshrestha, S., & Sachdeva, S. (2014, August). Performance comparison for data storage-Db4o and MySQL databases. In Contemporary Computing (IC3), 2014 Seventh International Conference on (pp. 166-170). IEEE.

Sandholm, T., & Lee, D. (2014). Notes on Cloud computing principles. Journal of Cloud Computing, 3(1), 21.