--- id: 'ai-vecs-python-client' title: 'Python client' subtitle: 'Manage unstructured vector stores in Postgres.' breadcrumb: 'AI Quickstarts' --- Supabase provides a Python client called [`vecs`](https://github.com/supabase/vecs) for managing unstructured vector stores. This client provides a set of useful tools for creating and querying collections in Postgres using the [pgvector](/docs/guides/database/extensions/pgvector) extension. ## Quick start Let's see how Vecs works using a local database. Make sure you have the Supabase CLI [installed](/docs/guides/cli#installation) on your machine. ### Initialize your project Start a local Postgres instance in any folder using the `init` and `start` commands. Make sure you have Docker running! ```bash # Initialize your project supabase init # Start Postgres supabase start ``` ### Create a collection Inside a Python shell, run the following commands to create a new collection called "docs", with 3 dimensions. ```py import vecs # create vector store client vx = vecs.create_client("postgresql://postgres:postgres@localhost:54322/postgres") # create a collection of vectors with 3 dimensions docs = vx.get_or_create_collection(name="docs", dimension=3) ``` ### Add embeddings Now we can insert some embeddings into our "docs" collection using the `upsert()` command: ```py import vecs # create vector store client docs = vecs.get_or_create_collection(name="docs", dimension=3) # a collection of vectors with 3 dimensions vectors=[ ("vec0", [0.1, 0.2, 0.3], {"year": 1973}), ("vec1", [0.7, 0.8, 0.9], {"year": 2012}) ] # insert our vectors docs.upsert(vectors=vectors) ``` ### Query the collection You can now query the collection to retrieve a relevant match: ```py import vecs docs = vecs.get_or_create_collection(name="docs", dimension=3) # query the collection filtering metadata for "year" = 2012 docs.query( data=[0.4,0.5,0.6], # required limit=1, # number of records to return filters={"year": {"$eq": 2012}}, # metadata filters ) ``` ## Deep dive For a more in-depth guide on `vecs` collections, see [API](/docs/guides/ai/python/api). ## Resources - Official Vecs Documentation: https://supabase.github.io/vecs/api - Source Code: https://github.com/supabase/vecs