Commit Graph

10 Commits

Author SHA1 Message Date
Sam cabecb801e
FEATURE: disable rate limiting when skipping hyde (#793)
Embedding search is rate limited due to potentially expensive
hyde operation (which require LLM access).

Embedding generally is very cheap compared to it. (usually 100x cheaper)

This raises the limit to 100 per minute for embedding searches,
while keeping the old 4 per minute for HyDE powered search.
2024-09-04 15:51:01 +10:00
Roman Rizzi e408cd080c
FIX: coerce value before downcasing the hyde param (#787) 2024-08-30 12:13:29 -03:00
Sam 0687ec75c3
FEATURE: allow embedding based search without hyde (#777)
This allows callers of embedding based search to bypass hyde.

Hyde will expand the search term using an LLM, but if an LLM is
performing the search we can skip this expansion.

It also introduced some tests for the controller which we did not have
2024-08-28 14:17:34 +10:00
Bianca Nenciu 5861418e9d
FIX: Load categories for AI search results (#614)
Categories should be preloaded when "lazy load categories" is enabled.
2024-05-13 16:47:37 +03:00
Keegan George b515b4f66d
FEATURE: AI Quick Semantic Search (#501)
This PR adds AI semantic search to the search pop available on every page.

It depends on several new and optional settings, like per post embeddings and a reranker model, so this is an experimental endeavour.


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Co-authored-by: Rafael Silva <xfalcox@gmail.com>
2024-03-08 13:02:50 -03:00
Roman Rizzi 156931e1f4
FIX: Perform semantic search only when searchTerm is valid (#216) 2023-09-11 11:32:05 -03:00
Rafael dos Santos Silva 2c0f535bab
FEATURE: HyDE-powered semantic search. (#136)
* FEATURE: HyDE-powered semantic search.

It relies on the new outlet added on discourse/discourse#23390 to display semantic search results in an unobtrusive way.

We'll use a HyDE-backed approach for semantic search, which consists on generating an hypothetical document from a given keywords, which gets transformed into a vector and used in a asymmetric similarity topic search.

This PR also reorganizes the internals to have less moving parts, maintaining one hierarchy of DAOish classes for vector-related operations like transformations and querying.

Completions and vectors created by HyDE will remain cached on Redis for now, but we could later use Postgres instead.

* Missing translation and rate limiting

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Co-authored-by: Roman Rizzi <rizziromanalejandro@gmail.com>
2023-09-05 11:08:23 -03:00
Rafael dos Santos Silva 5e3f4e1b78
FEATURE: Embeddings to main db (#99)
* FEATURE: Embeddings to main db

This commit moves our embeddings store from an external configurable PostgreSQL
instance back into the main database. This is done to simplify the setup.

There is a migration that will try to import the external embeddings into
the main DB if it is configured and there are rows.

It removes support from embeddings models that aren't all_mpnet_base_v2 or OpenAI
text_embedding_ada_002. However it will now be easier to add new models.

It also now takes into account:
  - topic title
  - topic category
  - topic tags
  - replies (as much as the model allows)

We introduce an interface so we can eventually support multiple strategies
for handling long topics.

This PR severely damages the semantic search performance, but this is a
temporary until we can get adapt HyDE to make semantic search use the same
embeddings we have for semantic related with good performance.

Here we also have some ground work to add post level embeddings, but this
will be added in a future PR.

Please note that this PR will also block Discourse from booting / updating if 
this plugin is installed and the pgvector extension isn't available on the 
PostgreSQL instance Discourse uses.
2023-07-13 12:41:36 -03:00
Roman Rizzi 333cb8f212
FIX: Don't try to use pg headlines for semantic search. (#36)
Depends on discourse/discourse#20939.
2023-04-03 11:48:38 -03:00
Roman Rizzi 4e05763a99
FEATURE: Semantic assymetric full-page search (#34)
Depends on discourse/discourse#20915

Hooks to the full-page-search component using an experimental API and performs an assymetric similarity search using our embeddings database.
2023-03-31 15:29:56 -03:00