As massive data acquisition and storage becomes increasingly affordable, a large number of enterprises are employing statisticians to make the sophisticated data analysis. Particularly, information extraction is done when the data is unstructured or semi-structured in nature. There are emerging efforts taken by both academia and industry on pushing information extraction inside parallel DBMSs. This leads to solving an significant and important issue on what can be a better choice for large scale data processing and analytics. To address this issue, we highlight the comparison and analysis of the three techniques which are nothing but the Parallel DBMS, MapReduce and Bulk Synchronous Processing in this paper.
CITATION STYLE
Vaidya, M., Deshpande, S., & Thakare, V. (2014). Design and Analysis of Large Data Processing Techniques. International Journal of Computer Applications, 100(8), 24–28. https://doi.org/10.5120/17546-8139
Mendeley helps you to discover research relevant for your work.