This tutorial is designed for AI researchers, data scientists, and developers interested in leveraging Large Language Models (LLMs) for graph-based reasoning tasks. It offers a detailed overview of techniques for integrating graphs into LLMs and includes a hands-on demonstration of practical applications. Attendees will learn how to advance reasoning tasks by using graph data with LLMs, fulfilling the need for advanced natural language reasoning in complex relationships.
Event Date: August 25th, 2024, KDD Conference
Location : Barcelona, Spain
Categories : Machine Learning
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