Data Quality Management

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==Abstract==
 
==Abstract==
  
As part of the digital transformation, data has become more readily available and more important than ever before. Organisations are performing data analytics to leverage key resources and optimise to gain a competitive advantage. As such, data is becomingly more and more valuable to project and program managers who are driving decision making based on data insight. The value of the data is highly reflected by the quality of the data. If the data quality is poor, managers risk taking misguided decisions based on unreliable data. Therefore, data quality management has become increasingly important for project and program decision makers.  
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As part of the digital transformation, data has become more readily available and more important than ever before. Organisations are performing data analytics to leverage key resources and optimise to gain a competitive advantage. As such, data is becomingly increasingly valuable to project and program managers who are driving decision making based on data insight. The value of the data is highly reflected by the quality of the data. If the data quality is poor, managers risk taking misguided decisions based on unreliable data. Therefore, data quality management has become increasingly important for project and program decision makers.
  
 
==Overview==
 
==Overview==

Revision as of 13:43, 17 February 2018

Contents

Abstract

As part of the digital transformation, data has become more readily available and more important than ever before. Organisations are performing data analytics to leverage key resources and optimise to gain a competitive advantage. As such, data is becomingly increasingly valuable to project and program managers who are driving decision making based on data insight. The value of the data is highly reflected by the quality of the data. If the data quality is poor, managers risk taking misguided decisions based on unreliable data. Therefore, data quality management has become increasingly important for project and program decision makers.

Overview

Data Quality

Measuring and Defining Data Quality

Completeness Accuracy Validity Consistency Integrity Timeliness

Framework: Data Quality Life Cycle

Quality Management

ISO 9001, reasons and benefits of implementing a quality management system

Fundamental Principles of Data Quality Management

Three Pillars of DQM

People
Process
Continuous Improvement

Components of DQM

Data Discovery

Profiling

Quality Rules

Quality Monitoring

Quality Reporting

Remediation

Glossary

DQM: Data Quality Management //ISO: International Organisation for Standardization

References


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