New GraphAcademy Course: Building Knowledge Graphs With LLMs


There’s a new course on GraphAcademy: Building Knowledge Graphs with LLMs. In this new course, you will learn how to create and query knowledge graphs using large language models (LLMs).

Using the text analysis capabilities of LLMs, you can generate a knowledge graph easily, extracting the entities and relationships relevant to your use case.

A knowledge graph is a source of truth and allows you to access and understand the relationships in your unstructured data. Knowledge graphs are an essential tool in grounding GenAI applications using GraphRAG.

A knowledge graph generated from news reports relating to the 1976 United States presidential election

You will use the Neo4j LLM Graph Builder and Python to build knowledge graphs from unstructured data.

You will learn the steps required to generate a knowledge graph, how to set a schema, and interpret the results.

This is a hands-on course in which you can upload and process your own unstructured data into a graph data model.

You will develop retrievers and use Cypher generation to get data from the graph.

This is an advanced course and you should have an understanding of Neo4j, integrating LLMs into applications, and Cypher. After completing this course, you will have the knowledge and skills to build a knowledge graph from your unstructured data and use it to ground a GenAI chatbot.

Enroll in the Building Knowledge Graphs with LLMs course on Neo4j GraphAcademy.

What is Neo4j GraphAcademy?

At Neo4j GraphAcademy, we offer a wide range of courses completely free of charge, teaching everything from Neo4j Fundamentals to Building Neo4j Applications with .NET.


New GraphAcademy Course: Building Knowledge Graphs With LLMs was originally published in Neo4j Developer Blog on Medium, where people are continuing the conversation by highlighting and responding to this story.