Michael Hunger
Large Language Models ❤️ Knowledge Graphs
#1about 3 minutes
Addressing the key challenges of large language models
LLMs often hallucinate or lack access to private data because they are trained to be helpful, not necessarily factual.
#2about 2 minutes
Using Retrieval Augmented Generation to ground LLMs
The RAG pattern improves LLM accuracy by first retrieving relevant information from a database to provide as context for the answer.
#3about 4 minutes
Representing complex data with knowledge graphs
Knowledge graphs model data as a network of entities and relationships, making complex connections intuitive and easy to query.
#4about 3 minutes
Using LLMs to build a knowledge graph from text
LLMs can automatically extract structured entities and relationships from unstructured documents to populate a knowledge graph.
#5about 3 minutes
Demo of extracting conference data into a graph
An application ingests a conference agenda and uses an LLM to automatically build a knowledge graph of speakers and their talks.
#6about 3 minutes
Combining vector and graph search with GraphRAG
The GraphRAG pattern uses vector search to find entry points into the graph and then traverses relationships to gather richer, more relevant context.
#7about 5 minutes
Code demo of querying a graph with LangChain
A Jupyter notebook demonstrates how to use LangChain and Neo4j to execute a GraphRAG query that avoids LLM hallucinations.
#8about 3 minutes
Benefits and traceability of the GraphRAG approach
This approach provides rich context, enables explainability by tracing data sources, and allows for graph enrichment with clustering algorithms.
#9about 2 minutes
How to control and validate graph extraction quality
You can guide the LLM's extraction process with a predefined schema and validate its output against a human-created baseline for accuracy.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
05:31 MIN
Understanding retrieval-augmented generation (RAG)
Exploring LLMs across clouds
Unlock Moments
Create a free account to watch a limited number of Moments each month.
Upgrade to PRO for unlimited access to the full archive.
Upgrade to PRO for unlimited access to the full archive.
You have an account? Log in
02:03 MIN
Introducing retrieval-augmented generation (RAG)
Martin O'Hanlon - Make LLMs make sense with GraphRAG
Unlock Moments
Create a free account to watch a limited number of Moments each month.
Upgrade to PRO for unlimited access to the full archive.
Upgrade to PRO for unlimited access to the full archive.
You have an account? Log in
03:29 MIN
Why large language models need retrieval augmented generation
Build RAG from Scratch
Unlock Moments
Create a free account to watch a limited number of Moments each month.
Upgrade to PRO for unlimited access to the full archive.
Upgrade to PRO for unlimited access to the full archive.
You have an account? Log in
02:28 MIN
Introducing retrieval-augmented generation to improve accuracy
Knowledge graph based chatbot
Unlock Moments
Create a free account to watch a limited number of Moments each month.
Upgrade to PRO for unlimited access to the full archive.
Upgrade to PRO for unlimited access to the full archive.
You have an account? Log in
02:42 MIN
Powering real-time AI with retrieval augmented generation
Scrape, Train, Predict: The Lifecycle of Data for AI Applications
Unlock Moments
Create a free account to watch a limited number of Moments each month.
Upgrade to PRO for unlimited access to the full archive.
Upgrade to PRO for unlimited access to the full archive.
You have an account? Log in
03:17 MIN
Using RAG to enrich LLMs with proprietary data
RAG like a hero with Docling
Unlock Moments
Create a free account to watch a limited number of Moments each month.
Upgrade to PRO for unlimited access to the full archive.
Upgrade to PRO for unlimited access to the full archive.
You have an account? Log in
03:45 MIN
Understanding retrieval-augmented generation systems
AI Model Management Life Circles: ML Ops For Generative AI Models From Research to Deployment
Unlock Moments
Create a free account to watch a limited number of Moments each month.
Upgrade to PRO for unlimited access to the full archive.
Upgrade to PRO for unlimited access to the full archive.
You have an account? Log in
05:18 MIN
Addressing the core challenges of large language models
Accelerating GenAI Development: Harnessing Astra DB Vector Store and Langflow for LLM-Powered Apps
Unlock Moments
Create a free account to watch a limited number of Moments each month.
Upgrade to PRO for unlimited access to the full archive.
Upgrade to PRO for unlimited access to the full archive.
You have an account? Log in
Featured Partners
Related Videos
Knowledge graph based chatbot
Tomaz Bratanic
Graphs and RAGs Everywhere... But What Are They? - Andreas Kollegger - Neo4j
Carl Lapierre - Exploring Advanced Patterns in Retrieval-Augmented Generation
Carl Lapierre
Building Blocks of RAG: From Understanding to Implementation
Ashish Sharma
Lies, Damned Lies and Large Language Models
Jodie Burchell
Creating Industry ready solutions with LLM Models
Vijay Krishan Gupta & Gauravdeep Singh Lotey
Unlocking the Power of AI: Accessible Language Model Tuning for All
Cedric Clyburn & Legare Kerrison
Martin O'Hanlon - Make LLMs make sense with GraphRAG
Martin O'Hanlon
Related Articles
View all articles.png?w=240&auto=compress,format)


.png?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

auteega GmbH
Senior
NoSQL
DevOps
Docker
MongoDB
PostgreSQL
+4


Deutsches Medizinrechenzentrum GmbH
Remote
DevOps
Microservices
Machine Learning
Continuous Integration

