Abstract Generative AI models have the potential to increase
productivity and provide access to data, but they need good context to
be truly useful. In this HANDS-on workshop, you will learn how
KNOWLEDGE GRAPHS AND RETRIEVAL AUGMENTED GENERATION (RAG) can help
your GENAI PROJECTS AVOID HALLUCINATION AND PROVIDE ACCESS TO RELIABLE
DATA. In this HANDS-on workshop, you will: Learn about Large Language
Models (LLMs), hallucination and integrating KNOWLEDGE GRAPHS Explore
Retrieval Augmented Generation (RAG) Use vector indexes and embeddings
to find similar data Query GRAPHS USING NATURAL LANGUAGE Use Python
and OpenAI to create GRAPHRAG RETRIEVERS AND GENAI APPLICATIONS This
workshop will put you on the path to controlling Generative AI
applications and integrating them into your projects. Logistics The
workshop will be delivered using NEO4J'S GRAPHACADEMY PLATFORM,
learners will only need a laptop and an internet connection.
Everything else will be provided. The only prerequisite for this
workshop is a KNOWLEDGE OF PYTHON AND BEING CAPABLE OF READING SIMPLE
PROGRAMS. About the speaker 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.
https://www.linkedin.com/in/martinohanlon/
[https://www.linkedin.com/in/martinohanlon/]
culture
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10/07/2025 Last update