EIIG incorporates all key metrics such as data quality score (based on data profiling etc.), trust score (based on qualifiers such as certification), and user rating in the knowledge graph and overlays such information with popular BI reporting tools such as Tableau and Qlik.
Data users as well as data managers/stewards can view such trust related at every stage of the data flow from source to destination.
Data consumers can see such scores right in a BI report and dive into EIIG platform to get more detailed information such as data lineage and location of all PII assets, for example.
In this way, trust in data is propagated and self-service enhanced, since the data users have better understanding of and confidence in the data they are using.
Recent Posts
- Understanding Active Metadata: Enhancing Data Management and Decision-Making Introduction
- EIIG’s Self-Defined Data Fabric and the Alignment with COBIT 5’s Five Principles
- How to Ensure Accurate and Trustworthy Reporting from Mainframe Data with Self-defined Data Fabric
- What is Metadata? A Brief Introduction to Metadata and Metadata Management
- Understanding Data Catalogs: The Key to Efficient Data Management