
Validating a Big Data f or Data Quality u sing Single Column Data Pattern Profiling Technique
Author(s) -
K. S. Babu,
K. Mohan Kumar
Publication year - 2020
Publication title -
international journal of innovative technology and exploring engineering
Language(s) - English
Resource type - Journals
ISSN - 2278-3075
DOI - 10.35940/ijitee.e2749.039520
Subject(s) - profiling (computer programming) , computer science , data quality , data mining , big data , data governance , data warehouse , data set , pattern matching , data type , artificial intelligence , engineering , metric (unit) , operations management , programming language , operating system
Data quality is important to all private and government organization. Data quality issues can arise in different ways. Due to inconsistent, inaccurate unreliable and loss of data in e-governance, retrieving of accurate data will become a big trouble in decision making. There are some common data quality issues available in a big data. Those issues and causes are cleared by using data profiling. The process of Data profiling methods detects errors, inconsistencies and redundancies in a dataset. Data profiling has different types of analysis techniques to correct the data such as Single Column analysis, Multicolumn analysis, Multi table and Data dependencies. Single column analysis has different set of analysis. In that Pattern matching technique is used to overcome this challenge of inconsistent data along with much needed data quality for analytic results within bounded execution time. Generally pattern matching is performed manually in an organization. Pattern matching helps to discover the various pattern values within the data and validate the values against any organizations. This data pattern profiling method enables to create a valid data set which is used to generate report for future analysis of an organization with more accuracy. This study compares the results of the proposed data pattern logic with other open source tools and proves the efficiency of proposed logic.