Crafting Your Own RAG System: Leveraging 30+ LLMs for Enhanced Performance
Offered By: Devoxx via YouTube
Course Description
Overview
Discover how to build a powerful Retrieval-Augmented Generation (RAG) system using Java that leverages over 30 different Large Language Models. Learn the step-by-step process of ingesting documents, selecting optimal text splitter strategies, finding similar documents, answering questions, and creating a chatbot. Explore methods for testing and comparing various AI models, including open-source and private options, whether locally stored or accessed online. Gain valuable insights into setting up a well-balanced RAG system using Java, identifying the best-performing and most cost-effective LLMs for enhanced performance.
Syllabus
Crafting your own RAG system: Leveraging 30+ LLMs for enhanced performance by Stephan Janssen
Taught by
Devoxx
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