How TopBraid EDG and Neo4j Work Together for Smarter Graph Applications

Table of Contents
< All Topics
Print

How TopBraid EDG and Neo4j Work Together for Smarter Graph Applications

Until now, choosing a graph technology often meant picking a side. RDF or LPG. Each offered unique advantages. Using both in one solution was difficult. Now that has changed.

Our integration with Neo4j lets you manage your metadata and taxonomies in TopBraid EDG, then push them into Neo4j to power advanced applications like semantic search, graph analytics, and even Graph RAG (Retrieval-Augmented Generation).

Why does this matter?

TopBraid EDG uses RDF and SHACL, which are ideal for modeling taxonomies, ontologies, and reference data. Neo4j uses labeled property graphs, which are better suited for querying and visualizing large volumes of instance data.

These technologies once operated in separate ecosystems. This integration connects them.

A simple story: One graph, many uses

Suppose you have curated a taxonomy of academic topics in EDG. You have structured it with parent and child relationships such as “Computer Science” and its related subfields. You push this taxonomy to Neo4j with a single click.

Next, you want to build a recommendation engine for research articles. You import article data into Neo4j, run a Cypher query, and receive a list of suggestions based on shared or related topics.

If you need to adjust your taxonomy, you make the change in EDG. You push the update to Neo4j. Your graph now reflects the latest structure. Your recommendation results instantly improve with no manual rework.

Smarter together

This integration offers the benefits of both technologies:

  • Centralized modeling: EDG remains the trusted source for structured metadata
  • Scalable graph applications: Neo4j handles exploration, analysis, and delivery

You can now support intelligent search, AI pipelines, and knowledge-based applications with clean and connected data behind every query.

Smarter graph applications begin with smarter graph foundations.

Interested in seeing more? Watch a Demo

Categories

Related Resources

Kim Healy

Feature Focus – Neo4j

Resource Hub Search Table of Contents < All Topics Main Knowledge Graphs Feature Focus – Neo4j Print Feature Focus – Neo4jThis video showcases the integration

Read More »
Kim Healy

Feature Focus – AI Linking

TopBraid EDG uses vector databases and AI to power advanced linking and search capabilities. Learn how AI-generated vectors enable similarity comparisons between data assets and glossary terms, making it easier to align business and technical metadata. See how this approach strengthens data discovery, governance, and semantic understanding across your organization.

Read More »
Ready to get started?
Ready to get started?