Comment by k__
7 months ago
I always wondered why a RAG index has to be a vector DB.
If the model understands text/code and can generate text/code it should be able to talk to OpenSearch no problem.
7 months ago
I always wondered why a RAG index has to be a vector DB.
If the model understands text/code and can generate text/code it should be able to talk to OpenSearch no problem.
It doesn't have to be a vector DB - and in fact I'm seeing increasing skepticism that embedding vector DBs are the best way to implement RAG.
A full-text search index using BM25 or similar may actually work a lot better for many RAG applications.
I wrote up some notes on building FTS-based RAG here: https://simonwillison.net/2024/Jun/21/search-based-rag/
I've been using SQLite FTS (which is essentially BM25) and it works so well I haven't really bothered with vector databases, or Postgres, or anything else yet. Maybe when my corpus exceeds 2GB...
What are the arguments for embedded vector DBs being suboptimal in RAG, out of curiosity?
The biggest one is that it's hard to get "zero matches" from an embeddings database. You get back all results ordered by distance from the user's query, but it will really scrape the bottom of the barrel if there aren't any great matches - which can lead to bugs like this one: https://simonwillison.net/2024/Jun/6/accidental-prompt-injec...
The other problem is that embeddings search can miss things that a direct keyword match would have caught. If you have key terms that are specific to your corpus - product names for example - there's a risk that a vector match might not score those as highly as BM25 would have so you may miss the most relevant documents.
Finally, embeddings are much more black box and hard to debug and reason about. We have decades of experience tweaking and debugging and improving BM25-style FTS search - the whole field of "Information Retrieval". Throwing that all away in favour of weird new embedding vectors is suboptimal.
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In 2019 I was using vector search to narrow the search space within 100s of millions of documents and then do full text search on the top 10k or so docs.
That seems like a better stacking of the technologies even now
Interesting. Why did you need to “narrow” the search space using vector space? Did you build custom embeddings and feel confident about retrieval segments?
I did similar in 2019 but typically in reverse, FTS, and a dual tower model to rerank. Vector search was an additional capability but never augmented the FTS.
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You can view RAG as a bigger word2vec. The canonical example being "king - man + woman = queen". Words, or now chunks, have geometric distribution, cluster, and relationships... on semantic levels
What is happening is that text is being embedded into a different space, and that format is an array of floats (a point in the embedding space). When we do retrieval, we embed the query and then find other points close to that query. The reason for Vector DB is (1) to optimize for this use-case, we have many specialized data stores / indexes (redis, elastic, dolt, RDBMS) (2) often to be memory based for faster retrieval. PgVector will be interesting to watch. I personally use Qdrant
Full-text search will never be able to do some of the things that are possible in the embedding space. The most capable systems will use both techniques
"When we do retrieval, we embed the query and then find other points close to that query."
To me that just sounds like OpenSearch with extra steps.
How is this different/better than a search engine?
Inner product similarity in an embedding space is often a very valuable feature in a ranker, and the effort/wow ratio at the prototype phase is good, but the idea that it’s the only pillar of an IR stack is SaaS marketing copy.
Vector DBs are cool, you want one handy (particularly for recommender tasks). I recommend FAISS as a solid baseline all these years later. If you’re on modern x86_64 then SVS is pretty shit hot.
A search engine that only uses a vector DB is a PoC.
For folks who want to go deeper on the topic, Lars basically invented the modern “news feed”, which looks a lot like a production RAG system would [1].
1. https://youtu.be/BuE3DIJGWOw
Honestly you clocked the secret: it doesn’t.
It makes sense for the hype, though. As we got LLM’s we also got wayyyy better embedding models, but they’re not dependencies.