The GraphRAG Manifesto: Unlock Better GenAI Results With Knowledge Graphs | Read Now

Neo4j logo

Nodes2024

Dev Conference by Neo4j

Register for NODES 24

You only need to register once to attend all sessions.

GenAI Beyond Chat with RAG, Knowledge Graphs, and Python

Session Track: AI

Session Time:

Session description

In this GenAI workshop, you will learn how knowledge graphs and Retrieval Augmented Generation (RAG) can support your GenAI projects. GenAI and large language models (LLMs) have the potential to increase productivity and provide access to data, but they need grounding and good context to be truly useful. In this workshop, you will: - use Vector indexes and embeddings in Neo4j to perform similarity and keyword search - use Python, LangChain, and OpenAI to create a knowledge graph of unstructured data - learn about LLMs, hallucination, and integrating knowledge graphs - explore RAG and its role in grounding LLM-generated content After completing this workshop, you will be able to explain the terms LLM, RAG, grounding, and knowledge graphs. You will also have the knowledge and skills to create simple LLM-based applications using Neo4j and Python. This workshop will put you on the path to controlling LLMs and enabling their integration into your projects.

Speaker

photo of Martin O

Martin O'Hanlon

Technical Curriculum Developer, Neo4j

Martin is an experienced computer science educator and open source software developer. Martin creates educational content for Neo4j and supports developers in using graph technology to understand their data. As a child he wanted to be either a Computer Scientist, Astronaut or Snowboard Instructor.