{"id":21927,"date":"2024-06-13T18:55:24","date_gmt":"2024-06-13T13:25:24","guid":{"rendered":"https:\/\/www.cigniti.com\/blog\/?p=21927"},"modified":"2024-06-14T11:08:07","modified_gmt":"2024-06-14T05:38:07","slug":"mastering-data-journey-quality-datagovernance-lineage","status":"publish","type":"post","link":"https:\/\/www.cigniti.com\/blog\/mastering-data-journey-quality-datagovernance-lineage\/","title":{"rendered":"hDs Chapter 5 – Mastering the Data Journey: Quality, Governance, and Lineage for Informed Decision-Making"},"content":{"rendered":"

In the digital age, data is the lifeblood of organizations, driving strategies, innovation, and decisions. However, harnessing its power requires more than just collecting the data. It demands meticulous management of data quality, governance, and lineage. These pillars form the backbone of informed decision-making, enabling organizations to transform raw data into actionable insights.<\/p>\n

According to Gartner, poor data quality costs organizations an average of $12.9 million every year. Apart from the immediate impact on revenue, over the long term, poor-quality data increases the complexity of data ecosystems and leads to poor decision-making.<\/em><\/strong><\/p>\n

The data journey encompasses the entire lifecycle of data within an organization, from creation and acquisition to consumption and drawing insights. This journey involves numerous stages, such as collection, storage, processing, analysis, and dissemination. At each stage, maintaining the integrity and utility of data is crucial. Without robust data quality, governance, and lineage, the journey can become fragmented, leading to inaccurate insights and misguided decisions.<\/p>\n

The Pillars of Data Journey<\/strong><\/h2>\n

1. <\/strong>Data Quality<\/strong><\/h3>\n

Data quality refers to the degree to which data meets accuracy, relevance, completeness, and consistency. High-quality data is essential for reliable analytics and decision-making. Poor data quality can result in significant financial loss and damaged reputations.<\/p>\n

To master data quality, organizations should:<\/p>\n