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Learn RAG Components and Best Practices
Everyone’s talking about RAG (Retrieval-Augmented Generation), but let’s be honest: the standard demo usually goes something like this: split your content into chunks, toss them into a vector database, cross your fingers, and hope the LLM comes back with something vaguely useful. That’s fine for a project with straightforward content, but in the case of a hundred thousand Drupal nodes, you need a different RAG setup and strategy.
In this session, we’ll look at how to make RAG actually reliable. We’ll cover:
Introduction to RAG and embeddings: a tour through the basics of combining large language models with external knowledge.
Hybrid retrieval: mixing semantic embeddings with old-school keyword search (BM25) so you don’t miss the obvious.
Smarter chunking: using headings, paragraphs, and semantic cues instead of arbitrary splits.
Re-ranking: allowing smaller models to refine the retrieval process before the LLM takes over.
Context injection: using user profiles, session data, and relationships between nodes to give the model the “bigger picture.”
You’ll leave with a clear sense of how to move from basic “embeddings in a box” to a proper AI assistant that respects your content structure, scales with Drupal, and maybe, just maybe, makes your users think you’ve built magic.
Bring your curiosity, and perhaps a cup of tea. We’ll be doing more than chunking this time.
Видео Learn RAG Components and Best Practices канала Stanford WebCamp
In this session, we’ll look at how to make RAG actually reliable. We’ll cover:
Introduction to RAG and embeddings: a tour through the basics of combining large language models with external knowledge.
Hybrid retrieval: mixing semantic embeddings with old-school keyword search (BM25) so you don’t miss the obvious.
Smarter chunking: using headings, paragraphs, and semantic cues instead of arbitrary splits.
Re-ranking: allowing smaller models to refine the retrieval process before the LLM takes over.
Context injection: using user profiles, session data, and relationships between nodes to give the model the “bigger picture.”
You’ll leave with a clear sense of how to move from basic “embeddings in a box” to a proper AI assistant that respects your content structure, scales with Drupal, and maybe, just maybe, makes your users think you’ve built magic.
Bring your curiosity, and perhaps a cup of tea. We’ll be doing more than chunking this time.
Видео Learn RAG Components and Best Practices канала Stanford WebCamp
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6 мая 2026 г. 1:32:35
00:44:10
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