remote::weaviate
Description
Weaviate is a vector database provider for Llama Stack. It allows you to store and query vectors directly within a Weaviate database. That means you’re not limited to storing vectors in memory or in a separate service.
Features
Weaviate supports:
Store embeddings and their metadata
Vector search
Full-text search
Hybrid search
Document storage
Metadata filtering
Multi-modal retrieval
Usage
To use Weaviate in your Llama Stack project, follow these steps:
Install the necessary dependencies.
Configure your Llama Stack project to use chroma.
Start storing and querying vectors.
Installation
To install Weaviate see the Weaviate quickstart documentation.
Documentation
See Weaviate’s documentation for more details about Weaviate in general.
Configuration
Field |
Type |
Required |
Default |
Description |
---|---|---|---|---|
|
|
No |
The API key for the Weaviate instance |
|
|
|
No |
localhost:8080 |
The URL of the Weaviate cluster |
|
|
No |
Config for KV store backend (SQLite only for now) |
Sample Configuration
weaviate_api_key: null
weaviate_cluster_url: ${env.WEAVIATE_CLUSTER_URL:=localhost:8080}
kvstore:
type: sqlite
db_path: ${env.SQLITE_STORE_DIR:=~/.llama/dummy}/weaviate_registry.db