Business Glossary
Enable data literacy with an automated business glossary
Zeenea’s Business Glossary features enable the creation and sharing of a consistent business language across all data consumers within the organization. Through an easy-to-use interface that is supported by automation capabilities, Data Management teams can:
- Define rules, policies, and KPIs
- Design reliable glossary models
- Get suggestions for business terms
- View the relations between glossary items
The benefits of Zeenea’s Business Glossary
Improve data discovery
Maximize trust in enterprise data
Increase data team productivity
Avoid data misunderstandings
Add context to your data assets
Zeenea provides a user-friendly interface for Data Stewards to easily document business terms and provide more context to their data assets. Add descriptions, tags, associated contacts, and any other properties that are relevant to your organization’s use cases. Either manually document or import your organization’s glossaries and dictionaries through our APIs.
Automatically map your Glossary Items
Zeenea provides data management teams with a unique place to create their categories of semantic concepts, organize them in hierarchies, and configure the way glossary items are mapped with technical assets. This maximizes productivity, enriches your semantic landscape, and improves data discovery for your data consumers.
Leverage your business terms
Data consumers are able to explore all enterprise concepts and definitions through via the Business Glossary, accessible via Zeenea Explorer’s homepage or from the catalog’s search bar. These Glossary “Topics” are predefined by Data Stewards in Zeenea Studio. In this way, business users have one-click access to the list of shared definitions they need for their use cases.
BUSINESS GLOSSARY: AN ESSENTIAL COMPONENT OF A DATA CATALOG
Find out more about Business Glossaries
While the literature on data mesh is extensive, it often describes a final state, rarely how to achieve it in practice. The question then arises:What approach should be adopted to transform data management and implement a data mesh?In this series of articles, get an excerpt from our Practical Guide to Data Mesh where we propose an approach to kick off a data mesh journey in your organization, structured around the four principles of ...
While the literature on data mesh is extensive, it often describes a final state, rarely how to achieve it in practice. The question then arises:What approach should be adopted to transform data management and implement a data mesh?In this series of articles, get an excerpt from our Practical Guide to Data Mesh where we propose an approach to kick off a data mesh journey in your organization, structured around the four principles of ...
An organization needs to handle vast volumes of technical assets that often carry a lot of duplicate information in various systems. Documenting all these assets one by one is a near impossible challenge to overcome for most companies.
With the help of automation, a certain amount of information is collected and this often provides detailed technical documentation of what is in the information system. Standard data catalog solutions then ...