Martin O'Hanlon
Martin O'Hanlon - Make LLMs make sense with GraphRAG
#1about 2 minutes
Understanding the problem of LLM hallucinations
Large language models are powerful but often invent facts, a problem known as hallucination, which presents made-up information as truth.
#2about 5 minutes
Demonstrating how context can ground LLM responses
A live demo in the OpenAI playground shows how an LLM hallucinates a weather report but provides a factual response when given context.
#3about 2 minutes
Introducing retrieval-augmented generation (RAG)
Retrieval-augmented generation is an architectural pattern that improves LLM outputs by augmenting the prompt with retrieved, factual information.
#4about 5 minutes
Understanding the fundamentals of graph databases
Graph databases like Neo4j model data using nodes for entities, labels for categorization, and relationships to represent connections between them.
#5about 6 minutes
Using graphs for specific, fact-based queries
While vector embeddings are good for fuzzy matching, knowledge graphs excel at providing context for highly specific, fact-based questions.
#6about 3 minutes
Demonstrating GraphRAG with a practical example
A live demo shows how adding factual context from a knowledge graph, such as a beach closure, dramatically improves the LLM's recommendation.
#7about 2 minutes
Summarizing the two main uses of GraphRAG
GraphRAG serves two key purposes: extracting entities from unstructured text to build a knowledge graph and using that graph to provide better context for LLMs.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
08:58 MIN
Using Graph RAG for superior context retrieval
Graphs and RAGs Everywhere... But What Are They? - Andreas Kollegger - Neo4j
15:49 MIN
Understanding retrieval-augmented generation (RAG)
Exploring LLMs across clouds
17:46 MIN
Comparing LLM, vector search, and graph RAG approaches
Give Your LLMs a Left Brain
14:45 MIN
Using knowledge graphs to give LLMs a left brain
Give Your LLMs a Left Brain
00:40 MIN
Using RAG to enrich LLMs with proprietary data
RAG like a hero with Docling
00:53 MIN
Understanding LLMs, context windows, and RAG
Beyond Prompting: Building Scalable AI with Multi-Agent Systems and MCP
05:45 MIN
Solving LLM limitations with RAG and vector databases
Accelerating GenAI Development: Harnessing Astra DB Vector Store and Langflow for LLM-Powered Apps
06:05 MIN
Understanding Retrieval-Augmented Generation (RAG)
Graphs and RAGs Everywhere... But What Are They? - Andreas Kollegger - Neo4j
Featured Partners
Related Videos
Large Language Models ❤️ Knowledge Graphs
Michael Hunger
Graphs and RAGs Everywhere... But What Are They? - Andreas Kollegger - Neo4j
Give Your LLMs a Left Brain
Stephen Chin
Knowledge graph based chatbot
Tomaz Bratanic
Building Blocks of RAG: From Understanding to Implementation
Ashish Sharma
Carl Lapierre - Exploring Advanced Patterns in Retrieval-Augmented Generation
Carl Lapierre
How to Avoid LLM Pitfalls - Mete Atamel and Guillaume Laforge
Meta Atamel & Guillaume Laforge
Build RAG from Scratch
Phil Nash
Related Articles
View all articles.png?w=240&auto=compress,format)
.gif?w=240&auto=compress,format)


From learning to earning
Jobs that call for the skills explored in this talk.


AI Engineer Knowledge Graphs & Large Language Models
digatus it group
Remote
€62-79K
Intermediate
Neo4j
TypeScript
Microservices
+1







AI/ML Team Lead - Generative AI (LLMs, AWS)
Provectus
Remote
€96K
Senior
PyTorch
Tensorflow
Computer Vision
+2