Establishing a Systematic Data Quality Framework
Poor data quality costs businesses an average of $12.9 million annually, affecting operational efficiency, decision-making, and customer satisfaction. To mitigate these risks, companies are increasingly turning to Data Quality Frameworks (DQFs), which provide structured guidelines to ensure data remains accurate, consistent, and trustworthy throughout its lifecycle. Key components of a DQF include data quality standards, governance policies, automated tools, continuous monitoring, and ethical data practices. By implementing a robust DQF, businesses can safeguard their data and drive better outcomes.
Company
Acceldata
Date published
Oct. 6, 2024
Author(s)
-
Word count
1304
Hacker News points
None found.
Language
English