1Director and Professor, Management, Studies, T. John College, Bangalore, Affiliated to Bangalore University, Bangalore, Karnataka
2Asst Professor, Management Studies, T. John College, Bangalore Affiliated to Bangalore University, Bangalore, Karnataka
3Asst Prof, T. John Institute of Management Science, Bangalore, Affiliated to Bangalore University
4Accredited by NAAC ‘A ’, and Approved by AICTE, New Delhi
Online published on 27 September, 2019.
Data Quality (DQ) is a niche area required for the integrity of the data management by covering gaps of data issues. This is one of the key functions that aid data governance by monitoring data to find exceptions undiscovered by current data management operations. Data Quality checks may be defined at attribute level to have full control on its remediation steps. DQ checks and business rules may easily overlap if an organization is not attentive of its DQ scope. Business teams should understand the DQ scope thoroughly in order to avoid overlap. Data quality checks are redundant if business logic covers the same functionality and fulfills the same purpose as DQ. The DQ scope of an organization should be defined in DQ strategy and well implemented. Some data quality checks may be translated into business rules after repeated instances of exceptions in the past.
Data, Quality, Logic, Validity, Accuracy, Consistency, Remediation, Completeness, High Impact