Description: Data quality monitoring is the process of ensuring that data is accurate, complete, and reliable. This process involves the continuous evaluation of data throughout its lifecycle, from collection to storage and analysis. Data quality is crucial for informed decision-making in any organization, as inaccurate or incomplete data can lead to erroneous conclusions and ultimately harmful decisions. Key characteristics of data quality monitoring include error identification, data validation, consistency verification, and data integrity assessment. Furthermore, this process focuses not only on detecting issues but also on implementing corrective measures to improve data quality. In a world where the amount of generated data is overwhelming, data quality monitoring has become an essential practice for organizations seeking to maintain competitiveness and operational efficiency. The relevance of this process extends across various industries, from healthcare to finance, where data accuracy can significantly impact outcomes and customer satisfaction.