Data dictionary tools for MySQL

List of tools that enable design and building of data dictionaries .

Data Dictionary is a set of important information about data used within an organization (metadata). This information includes names, definitions, and attributes about data, owners, and creators of assets. Data Dictionary tools provide insights into meaning and purposes of data elements. They add useful aliases about the scope and characteristics of data elements, as well as the rules for their usage and application.

Tree Schema

The Tree Schema data dictionary provides a single place to define all of the key terms and lingo that drive your business. The Tree Schema dictionary is automatically synced with the tags within Tree Schema, making it easy to define the labels that are important to your business and leverage them to tag your data assets.

Desktop/Cloud: Cloud
ER Diagram: No
Export: -
Metadata stored in: -
Commercial: Commercial
Free edition: Yes
Notable features: Automatically syncs tags with business glossay
Runs on: (for desktop): -
Data dictionary overview
Edit a keyword

Atlan

Atlan's data dictionary allows you to document databases, data warehouses, data lakes and BI tools in one easy interface. It uses automation to generate pre-configured critical data quality metrics and automation to help propogate column descriptions through your data ecosystem. Using Atlan's interface, you can easily update table descriptions, column descriptions, assigns owners and stewards and attach a powerful readme to every object. Atlan also allows you to capture relationships such as primary key, foreign key relationships, lineage and more.

Desktop/Cloud: Cloud
ER Diagram: No
Export: -
Metadata stored in: Graph Database
Commercial: Commercial
Free edition: No
Notable features: Automated data dictionary, column level search, visual frequency, versioned data dictionary
Runs on: (for desktop): -

Alation Data Catalog

Alation data dictionary defines and describes technical data terms. Data terms could be database schemas, tables, or columns. Once connected to data sources, Alation automatically indexes data and populates catalog pages. For example, a column catalog page shows the technical column name, a business title name, the data type, and popularity. Additional context can be added to the data dictionary, for shared understanding across the organization.

Desktop/Cloud: Cloud
ER Diagram: Yes
Export: MS Excel
Metadata stored in: -
Commercial: Commercial
Free edition: No
Notable features: ML auto-suggested business glossary terms
Runs on: (for desktop): -

GenMyModel

With GenMyModel’s data modeling capabilities, data architects not only keep glossaries and data models under control, but they can design and reverse engineer data models and link them to other IT and business models, such as UML, Archimate and BPMN.The resulting data dictionary stores metadata such as table, column and field descriptions,
in a format that is independent of the underlying database system so generation can be generic.

Desktop/Cloud: Cloud
ER Diagram: Yes
Export: HTML,MS Word,Online HTML,PDF,Plain text,XML
Metadata stored in: Online repository
Commercial: Commercial
Free edition: Yes
Notable features: -
Runs on: (for desktop): -

Key functionality of Data Dictionary tools is to give users the ability to document data. Moreover, very important is the possibility to create a collection of multiple repositories, based on different system engines. For a better understanding of the data, some tools allow visualization of the data structure using ERD (Entity-Relationship Diagrams).

From the organization's point of view, a community module within a data dictionary tool proves to be useful. It facilitates the proper information flow, as well as provides sharing opinions on specific objects among the members of an organization.

Nowadays, data discovery and understanding becomes crucial for proper organization performance. There are many benefits to using Data Dictionaries, such as:
• helps avoid data inconsistencies problems,
• it allows introducing unified nomenclature used in the project,
• Make data searchable, and understandable,
• Create a single source of truth about the data from different repositories,

The prepared list includes simple, open-source data dictionaries as well as more advanced software.