Data Quality Rules: Difference between revisions

From Data Quality Rules Wiki
Jump to navigation Jump to search
(Created page with "'''<span style="color:red">This site is currently under construction!</span>'''")
 
No edit summary
Line 1: Line 1:
'''<span style="color:red">This site is currently under construction!</span>'''
'''<span style="color:red">This site is currently under construction!</span>'''
== Why? ==
The collection and central provision of data quality rules on a website is a crucial step in ensuring data integrity and quality within an organization or community. By creating a central repository for these rules, we promote consistency, accuracy and transparency in the handling of data. It enables all stakeholders to learn from best practice, standardizes data management processes and facilitates the automation of validation and cleansing processes. It also supports regulatory compliance and governance requirements by providing a clear framework for data maintenance. The centralized accessibility of these rules also helps foster a culture of continuous improvement and open sharing within the data community, which ultimately improves overall data quality and maximizes the value of the data to the organization.
== What? ==
== How? ==

Revision as of 12:27, 19 February 2024

This site is currently under construction!

Why?

The collection and central provision of data quality rules on a website is a crucial step in ensuring data integrity and quality within an organization or community. By creating a central repository for these rules, we promote consistency, accuracy and transparency in the handling of data. It enables all stakeholders to learn from best practice, standardizes data management processes and facilitates the automation of validation and cleansing processes. It also supports regulatory compliance and governance requirements by providing a clear framework for data maintenance. The centralized accessibility of these rules also helps foster a culture of continuous improvement and open sharing within the data community, which ultimately improves overall data quality and maximizes the value of the data to the organization.

What?

How?