What is RAG: Understanding Retrieval-Augmented Generation - Qdrant
By A Mystery Man Writer
Description
Explore how RAG enables LLMs to retrieve and utilize relevant external data when generating responses, rather than being limited to their original training data alone.
From HuggingFace dataset to Qdrant vector database in 12 minutes flat
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