feat(vector-io): configurable embedding models for all providers (v2)\n\nAdds embedding_model and embedding_dimension fields to all VectorIOConfig classes.\nRouter respects provider defaults with fallback.\nIntroduces embedding_utils helper.\nComprehensive docs & samples.\nResolves #2729

This commit is contained in:
skamenan7 2025-07-17 11:51:40 -04:00
parent c8f274347d
commit d55dd3e9a0
24 changed files with 482 additions and 14 deletions

View file

@ -13,6 +13,8 @@ Please refer to the remote provider documentation.
| `db_path` | `<class 'str'>` | No | PydanticUndefined | |
| `kvstore` | `utils.kvstore.config.RedisKVStoreConfig \| utils.kvstore.config.SqliteKVStoreConfig \| utils.kvstore.config.PostgresKVStoreConfig \| utils.kvstore.config.MongoDBKVStoreConfig` | No | sqlite | Config for KV store backend (SQLite only for now) |
| `consistency_level` | `<class 'str'>` | No | Strong | The consistency level of the Milvus server |
| `embedding_model` | `str \| None` | No | | Optional default embedding model for this provider. If not specified, will use system default. |
| `embedding_dimension` | `int \| None` | No | | Optional embedding dimension override. Only needed for models with variable dimensions (e.g., Matryoshka embeddings). If not specified, will auto-lookup from model registry. |
## Sample Configuration