The document outlines five best practices for effective data quality management, emphasizing the importance of preventative measures against data errors and the establishment of a dedicated team to oversee data integrity. It highlights the cyclic nature of data quality management, including assessment, measurement, and incorporating quality practices into business processes. Regular audits and timely actions are recommended to maintain data accuracy and enhance overall business performance.
Related topics: