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codingjaguar

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Memory Plugin for Claude Code

github.com
2 points·by codingjaguar·il y a 5 mois·0 comments

Semantic highlight model to cut token cost for RAG

huggingface.co
2 points·by codingjaguar·il y a 6 mois·0 comments

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codingjaguar
·il y a 7 mois·discuss
well it's apples and oranges. Why do people buy F150 instead of fitting things into the trunk of a Corolla? cuz they got a lot of stuff.

For people who run thousands of QPS on billions of vectors, Milvus is a solid choice. For someone playing with a twitter demo with a few thousand vectors, any vector db can do the job well. In fact there is a fun project Milvus Lite designed for that case :)

I've seen many builders migrate from pgvector to Milvus as their apps scale. But perhaps they wish they had considered scalability earlier.

(I'm from Milvus so i could be biased.)
codingjaguar
·il y a 8 mois·discuss
This quite aligns with our observation at Milvus. Recently, we helped several users migrate from pgvector as the workload grew substantially.

It’s worth recognising the strengths of pgvector:

• For small-to-medium scale workloads (e.g., up to millions of vectors, relatively static data), embedding storage and similarity queries inside Postgres can be a simple, familiar architecture.

• If you already use Postgres and your vector workloads are light (low QPS, few dimensions, little metadata filtering / low concurrency), then piggy-backing vector search on Postgres is attractive: minimal added infrastructure.

• For teams that don’t want to introduce a separate vector service, or want to keep things within an existing RDBMS, pgvector is a compelling choice.

From our experience helping users scale vector search in production, several pain-points emerge when scaling vector workloads inside a general-purpose RDBMS like Postgres:

1. Index build / update overhead • Postgres isn’t built from the ground-up for high-velocity vector insertions plus large-scale approximate nearest neighbour (ANN) index maintenance, for example, lacking RaBitQ binary quantization supported in purpose built vector db like Milvus.

• For large datasets (tens/hundreds of millions or beyond), building or rebuilding HNSW/IVF indices inside Postgres can be memory- and time-intensive.

• In production systems where vectors are continuously ingested, updated, deleted, this becomes operationally tricky.

2. Filtered search

• Many use-cases require combining vector similarity with scalar/metadata filters (e.g., “give me top 10 similar embeddings where user_status = ‘active’ AND time > X”).

• Need to understand low level planner to juggle pre-filtering, post-filtering, and planner’s cost model wasn’t built for vector similarity search. For a system not designed primarily as a vector DB, this gets complex. Users shouldn't have to worry about such low level details.

3. Lack of support for full-text search / hybrid search

• Purpose built vector db such as Milvus has mature full-text search / BM25 / Sparse vector support.
codingjaguar
·il y a 2 ans·discuss
SQL was introduced in 1970s. Considering vector search was only adopted in the last 5 years, I’m not surprised by the lack of standards on vector API. At Google embedding as retrieval became popular in 2019-2020.

This is the new kid in town so you would see soon all major SQL dbs will support vector. However, any serious user, O(10M) vectors or above, would still require a dedicated vector db for performance reasons.