DataViz Model: A Novel Approach towards Big Data Analytics and Visualization

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Rohit More 1 R H Goudar 1

1. Department computer Network Engineering VTU, Belagavi 590018, India

* Corresponding author.


Received: 1 Apr. 2017 / Revised: 28 Jul. 2017 / Accepted: 11 Sep. 2017 / Published: 8 Nov. 2017

Index Terms

Big Data, Big Data analytics, Data Visualization, DataViz


Big Data is the collection of large data sets which contains large amount of data. There are different areas which are generating huge data, this data may be present in the form of semi-structured or unstructured and to get useful information from such raw data there is need of data analysis. Due to Big Data’s excessive volume, variety, and velocity it is very difficult to store and process huge data. The process of extracting the information from such raw data is called Big Data Analytics. Big data Analytics processes data gives result in the form of structured data. Again this data is huge size and very difficult to understand since it is present in the form of CSV or excel or simple text files. So for effective decision making and to understand the information quickly the data need to be visualized as human mind understands images and graphs better and faster than text data. In this paper a model called Data Visualization (Viz) is designed which integrates big data analytics and the data visualization. This model first takes the data from various sources and then processes it and converts it into structured form, if want this data can be stored to RDBMS. Finally the text result can be visualized with the help of Visualization module of the DataViz. Here text result is represented in the form of charts and graphs.

Cite This Paper

Rohit More, R H Goudar,"DataViz Model: A Novel Approach towards Big Data Analytics and Visualization", International Journal of Engineering and Manufacturing(IJEM), Vol.7, No.6, pp.43-49, 2017. DOI: 10.5815/ijem.2017.06.04


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