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2018 | OriginalPaper | Chapter

Analysis of Different Pattern Evaluation Procedures for Big Data Visualization in Data Analysis

Authors : Srinivasa Rao Madala, V. N. Rajavarman, T. Venkata Satya Vivek

Published in: Data Engineering and Intelligent Computing

Publisher: Springer Singapore

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Abstract

Data visualization is the main focusing concept in big data analysis for processing and analyzing multi variate data, because of rapid growth of data size and complexity of data. Basically data visualization may achieve three main problems, i.e. 1. Structured and Unstructured pattern evaluation in big data analysis. 2. Shrink the attributes in data indexed big data analysis. 3. Rearrange of attributes in parallel index based data storage. So in this paper we analyze different techniques for solving above three problems with feasibility of each client requirement in big data analysis for visualization in real time data stream extraction based on indexed data arrangement. We have analyzed different prototypes in available parallel co-ordinate and also evaluate quantitative exert review in real time configurations for processing data visualization. Report different data visualization analysis results for large and scientific data created by numerical simulation in practice sessions analysed in big data presentation.

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Metadata
Title
Analysis of Different Pattern Evaluation Procedures for Big Data Visualization in Data Analysis
Authors
Srinivasa Rao Madala
V. N. Rajavarman
T. Venkata Satya Vivek
Copyright Year
2018
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-10-3223-3_44

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