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
03:35 MIN
Using Graph RAG for superior context retrieval
Graphs and RAGs Everywhere... But What Are They? - Andreas Kollegger - Neo4j
05:31 MIN
Understanding retrieval-augmented generation (RAG)
Exploring LLMs across clouds
03:45 MIN
Comparing LLM, vector search, and graph RAG approaches
Give Your LLMs a Left Brain
03:01 MIN
Using knowledge graphs to give LLMs a left brain
Give Your LLMs a Left Brain
03:17 MIN
Using RAG to enrich LLMs with proprietary data
RAG like a hero with Docling
04:12 MIN
Understanding LLMs, context windows, and RAG
Beyond Prompting: Building Scalable AI with Multi-Agent Systems and MCP
01:48 MIN
Solving LLM limitations with RAG and vector databases
Accelerating GenAI Development: Harnessing Astra DB Vector Store and Langflow for LLM-Powered Apps
03:29 MIN
Why large language models need retrieval augmented generation
Build RAG from Scratch
Featured Partners
Related Videos
Large Language Models ❤️ Knowledge Graphs
Michael Hunger
Give Your LLMs a Left Brain
Stephen Chin
Graphs and RAGs Everywhere... But What Are They? - Andreas Kollegger - Neo4j
Knowledge graph based chatbot
Tomaz Bratanic
Building Blocks of RAG: From Understanding to Implementation
Ashish Sharma
Build RAG from Scratch
Phil Nash
Carl Lapierre - Exploring Advanced Patterns in Retrieval-Augmented Generation
Carl Lapierre
Lies, Damned Lies and Large Language Models
Jodie Burchell
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.


Understanding Recruitment Group
Barcelona, Spain
Remote
Node.js
Computer Vision
Machine Learning


NLP People
Municipality of Valencia, Spain
Intermediate
GIT
Linux
NoSQL
NumPy
Keras
+11

NLP People
Municipality of Valencia, Spain
Intermediate
NumPy
Keras
Pandas
PyTorch
Tensorflow
+3

webLyzard
Vienna, Austria
DevOps
Docker
PostgreSQL
Kubernetes
Elasticsearch
+2



NLP People
Barcelona, Spain
Remote
Senior
Machine Learning
Natural Language Processing