Flexible RAG: Development and Evaluation Strategies for Complex User Requests
Offered By: Weights & Biases via YouTube
Course Description
Overview
Explore advanced strategies for developing and evaluating flexible Retrieval-Augmented Generation (RAG) systems in this comprehensive talk. Learn how to handle complex user requests, query diverse data sources and types, and evaluate sophisticated user queries. Discover techniques to overcome limitations of basic RAG systems when dealing with cross-analysis, structured data queries, and sequential reasoning. Gain insights into tool use approaches that enhance RAG system flexibility across various user requests and data sources. Delve into practical methods for improving RAG capabilities to tackle intricate information retrieval and generation tasks.
Syllabus
Flexible RAG: Development and evaluation strategies
Taught by
Weights & Biases
Related Courses
Cohere vs. OpenAI Embeddings - Multilingual SearchJames Briggs via YouTube Supercharging Semantic Search with Pinecone and Cohere
Pinecone via YouTube Generative AI and Long-Term Memory for LLMs
James Briggs via YouTube Cohere AI's LLM for Semantic Search in Python
James Briggs via YouTube Making a Sci-Fi Game with Cohere LLM and Stability AI - Generative AI Tutorial
Samuel Chan via YouTube