feat: add Milvus vectorDB (#1467)

# What does this PR do?
See https://github.com/meta-llama/llama-stack/pull/1171 which is the
original PR. Author: @zc277584121

feat: add [Milvus](https://milvus.io/) vectorDB

note: I use the MilvusClient to implement it instead of
AsyncMilvusClient, because when I tested AsyncMilvusClient, it would
raise issues about evenloop, which I think AsyncMilvusClient SDK is not
robust enough to be compatible with llama_stack framework.

## Test Plan
have passed the unit test and ene2end test
Here is my end2end test logs, including the client code, client log,
server logs from inline and remote settings

[test_end2end_logs.zip](https://github.com/user-attachments/files/18964391/test_end2end_logs.zip)

---------

Signed-off-by: ChengZi <chen.zhang@zilliz.com>
Co-authored-by: Cheney Zhang <chen.zhang@zilliz.com>
This commit is contained in:
Ashwin Bharambe 2025-03-06 20:59:31 -08:00 committed by GitHub
parent 1e3be1e4d7
commit 330cc9d09d
No known key found for this signature in database
GPG key ID: B5690EEEBB952194
10 changed files with 310 additions and 2 deletions

View file

@ -34,7 +34,7 @@ We are working on adding a few more APIs to complete the application lifecycle.
The goal of Llama Stack is to build an ecosystem where users can easily swap out different implementations for the same API. Examples for these include: The goal of Llama Stack is to build an ecosystem where users can easily swap out different implementations for the same API. Examples for these include:
- LLM inference providers (e.g., Fireworks, Together, AWS Bedrock, Groq, Cerebras, SambaNova, vLLM, etc.), - LLM inference providers (e.g., Fireworks, Together, AWS Bedrock, Groq, Cerebras, SambaNova, vLLM, etc.),
- Vector databases (e.g., ChromaDB, Weaviate, Qdrant, FAISS, PGVector, etc.), - Vector databases (e.g., ChromaDB, Weaviate, Qdrant, Milvus, FAISS, PGVector, etc.),
- Safety providers (e.g., Meta's Llama Guard, AWS Bedrock Guardrails, etc.) - Safety providers (e.g., Meta's Llama Guard, AWS Bedrock Guardrails, etc.)
Providers come in two flavors: Providers come in two flavors:

View file

@ -68,6 +68,7 @@ A number of "adapters" are available for some popular Inference and Vector Store
| FAISS | Single Node | | FAISS | Single Node |
| SQLite-Vec| Single Node | | SQLite-Vec| Single Node |
| Chroma | Hosted and Single Node | | Chroma | Hosted and Single Node |
| Milvus | Hosted and Single Node |
| Postgres (PGVector) | Hosted and Single Node | | Postgres (PGVector) | Hosted and Single Node |
| Weaviate | Hosted | | Weaviate | Hosted |

View file

@ -2,7 +2,7 @@
The goal of Llama Stack is to build an ecosystem where users can easily swap out different implementations for the same API. Examples for these include: The goal of Llama Stack is to build an ecosystem where users can easily swap out different implementations for the same API. Examples for these include:
- LLM inference providers (e.g., Fireworks, Together, AWS Bedrock, Groq, Cerebras, SambaNova, vLLM, etc.), - LLM inference providers (e.g., Fireworks, Together, AWS Bedrock, Groq, Cerebras, SambaNova, vLLM, etc.),
- Vector databases (e.g., ChromaDB, Weaviate, Qdrant, FAISS, PGVector, etc.), - Vector databases (e.g., ChromaDB, Weaviate, Qdrant, Milvus, FAISS, PGVector, etc.),
- Safety providers (e.g., Meta's Llama Guard, AWS Bedrock Guardrails, etc.) - Safety providers (e.g., Meta's Llama Guard, AWS Bedrock Guardrails, etc.)
Providers come in two flavors: Providers come in two flavors:
@ -55,5 +55,6 @@ vector_io/sqlite-vec
vector_io/chromadb vector_io/chromadb
vector_io/pgvector vector_io/pgvector
vector_io/qdrant vector_io/qdrant
vector_io/milvus
vector_io/weaviate vector_io/weaviate
``` ```

View file

@ -0,0 +1,31 @@
---
orphan: true
---
# Milvus
[Milvus](https://milvus.io/) is an inline and remote vector database provider for Llama Stack. It
allows you to store and query vectors directly within a Milvus database.
That means you're not limited to storing vectors in memory or in a separate service.
## Features
- Easy to use
- Fully integrated with Llama Stack
## Usage
To use Milvus in your Llama Stack project, follow these steps:
1. Install the necessary dependencies.
2. Configure your Llama Stack project to use Milvus.
3. Start storing and querying vectors.
## Installation
You can install Milvus using pymilvus:
```bash
pip install pymilvus
```
## Documentation
See the [Milvus documentation](https://milvus.io/docs/install-overview.md) for more details about Milvus in general.

View file

@ -0,0 +1,19 @@
# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
from typing import Dict
from llama_stack.providers.datatypes import Api, ProviderSpec
from .config import MilvusVectorIOConfig
async def get_provider_impl(config: MilvusVectorIOConfig, deps: Dict[Api, ProviderSpec]):
from llama_stack.providers.remote.vector_io.milvus.milvus import MilvusVectorIOAdapter
impl = MilvusVectorIOAdapter(config, deps[Api.inference])
await impl.initialize()
return impl

View file

@ -0,0 +1,20 @@
# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
from typing import Any, Dict
from pydantic import BaseModel
from llama_stack.schema_utils import json_schema_type
@json_schema_type
class MilvusVectorIOConfig(BaseModel):
db_path: str
@classmethod
def sample_run_config(cls, __distro_dir__: str, **kwargs: Any) -> Dict[str, Any]:
return {"db_path": "${env.MILVUS_DB_PATH}"}

View file

@ -110,4 +110,22 @@ def available_providers() -> List[ProviderSpec]:
), ),
api_dependencies=[Api.inference], api_dependencies=[Api.inference],
), ),
remote_provider_spec(
Api.vector_io,
AdapterSpec(
adapter_type="milvus",
pip_packages=["pymilvus"],
module="llama_stack.providers.remote.vector_io.milvus",
config_class="llama_stack.providers.remote.vector_io.milvus.MilvusVectorIOConfig",
),
api_dependencies=[Api.inference],
),
InlineProviderSpec(
api=Api.vector_io,
provider_type="inline::milvus",
pip_packages=["pymilvus"],
module="llama_stack.providers.inline.vector_io.milvus",
config_class="llama_stack.providers.inline.vector_io.milvus.MilvusVectorIOConfig",
api_dependencies=[Api.inference],
),
] ]

View file

@ -0,0 +1,21 @@
# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
from typing import Dict
from llama_stack.providers.datatypes import Api, ProviderSpec
from .config import MilvusVectorIOConfig
async def get_adapter_impl(config: MilvusVectorIOConfig, deps: Dict[Api, ProviderSpec]):
from .milvus import MilvusVectorIOAdapter
assert isinstance(config, MilvusVectorIOConfig), f"Unexpected config type: {type(config)}"
impl = MilvusVectorIOAdapter(config, deps[Api.inference])
await impl.initialize()
return impl

View file

@ -0,0 +1,22 @@
# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
from typing import Any, Dict, Optional
from pydantic import BaseModel
from llama_stack.schema_utils import json_schema_type
@json_schema_type
class MilvusVectorIOConfig(BaseModel):
uri: str
token: Optional[str] = None
consistency_level: str = "Strong"
@classmethod
def sample_run_config(cls, __distro_dir__: str, **kwargs: Any) -> Dict[str, Any]:
return {"uri": "${env.MILVUS_ENDPOINT}", "token": "${env.MILVUS_TOKEN}"}

View file

@ -0,0 +1,175 @@
# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
import hashlib
import logging
import os
import uuid
from typing import Any, Dict, List, Optional, Union
from numpy.typing import NDArray
from pymilvus import MilvusClient
from llama_stack.apis.inference import InterleavedContent
from llama_stack.apis.vector_dbs import VectorDB
from llama_stack.apis.vector_io import Chunk, QueryChunksResponse, VectorIO
from llama_stack.providers.datatypes import Api, VectorDBsProtocolPrivate
from llama_stack.providers.inline.vector_io.milvus import MilvusVectorIOConfig as InlineMilvusVectorIOConfig
from llama_stack.providers.utils.memory.vector_store import (
EmbeddingIndex,
VectorDBWithIndex,
)
from .config import MilvusVectorIOConfig as RemoteMilvusVectorIOConfig
logger = logging.getLogger(__name__)
class MilvusIndex(EmbeddingIndex):
def __init__(self, client: MilvusClient, collection_name: str, consistency_level="Strong"):
self.client = client
self.collection_name = collection_name.replace("-", "_")
self.consistency_level = consistency_level
async def delete(self):
if self.client.has_collection(self.collection_name):
self.client.drop_collection(collection_name=self.collection_name)
async def add_chunks(self, chunks: List[Chunk], embeddings: NDArray):
assert len(chunks) == len(embeddings), (
f"Chunk length {len(chunks)} does not match embedding length {len(embeddings)}"
)
if not self.client.has_collection(self.collection_name):
self.client.create_collection(
self.collection_name,
dimension=len(embeddings[0]),
auto_id=True,
consistency_level=self.consistency_level,
)
data = []
for chunk, embedding in zip(chunks, embeddings, strict=False):
chunk_id = generate_chunk_id(chunk.metadata["document_id"], chunk.content)
data.append(
{
"chunk_id": chunk_id,
"vector": embedding,
"chunk_content": chunk.model_dump(),
}
)
try:
self.client.insert(
self.collection_name,
data=data,
)
except Exception as e:
logger.error(f"Error inserting chunks into Milvus collection {self.collection_name}: {e}")
raise e
async def query(self, embedding: NDArray, k: int, score_threshold: float) -> QueryChunksResponse:
search_res = self.client.search(
collection_name=self.collection_name,
data=[embedding],
limit=k,
output_fields=["*"],
search_params={"params": {"radius": score_threshold}},
)
chunks = [Chunk(**res["entity"]["chunk_content"]) for res in search_res[0]]
scores = [res["distance"] for res in search_res[0]]
return QueryChunksResponse(chunks=chunks, scores=scores)
class MilvusVectorIOAdapter(VectorIO, VectorDBsProtocolPrivate):
def __init__(
self, config: Union[RemoteMilvusVectorIOConfig, InlineMilvusVectorIOConfig], inference_api: Api.inference
) -> None:
self.config = config
self.cache = {}
self.client = None
self.inference_api = inference_api
async def initialize(self) -> None:
if isinstance(self.config, RemoteMilvusVectorIOConfig):
logger.info(f"Connecting to Milvus server at {self.config.uri}")
self.client = MilvusClient(**self.config.model_dump(exclude_none=True))
else:
logger.info(f"Connecting to Milvus Lite at: {self.config.db_path}")
uri = os.path.expanduser(self.config.db_path)
self.client = MilvusClient(uri=uri)
async def shutdown(self) -> None:
self.client.close()
async def register_vector_db(
self,
vector_db: VectorDB,
) -> None:
if isinstance(self.config, RemoteMilvusVectorIOConfig):
consistency_level = self.config.consistency_level
else:
consistency_level = "Strong"
index = VectorDBWithIndex(
vector_db=vector_db,
index=MilvusIndex(self.client, vector_db.identifier, consistency_level=consistency_level),
inference_api=self.inference_api,
)
self.cache[vector_db.identifier] = index
async def _get_and_cache_vector_db_index(self, vector_db_id: str) -> Optional[VectorDBWithIndex]:
if vector_db_id in self.cache:
return self.cache[vector_db_id]
vector_db = await self.vector_db_store.get_vector_db(vector_db_id)
if not vector_db:
raise ValueError(f"Vector DB {vector_db_id} not found")
index = VectorDBWithIndex(
vector_db=vector_db,
index=MilvusIndex(client=self.client, collection_name=vector_db.identifier),
inference_api=self.inference_api,
)
self.cache[vector_db_id] = index
return index
async def unregister_vector_db(self, vector_db_id: str) -> None:
if vector_db_id in self.cache:
await self.cache[vector_db_id].index.delete()
del self.cache[vector_db_id]
async def insert_chunks(
self,
vector_db_id: str,
chunks: List[Chunk],
ttl_seconds: Optional[int] = None,
) -> None:
index = await self._get_and_cache_vector_db_index(vector_db_id)
if not index:
raise ValueError(f"Vector DB {vector_db_id} not found")
await index.insert_chunks(chunks)
async def query_chunks(
self,
vector_db_id: str,
query: InterleavedContent,
params: Optional[Dict[str, Any]] = None,
) -> QueryChunksResponse:
index = await self._get_and_cache_vector_db_index(vector_db_id)
if not index:
raise ValueError(f"Vector DB {vector_db_id} not found")
return await index.query_chunks(query, params)
def generate_chunk_id(document_id: str, chunk_text: str) -> str:
"""Generate a unique chunk ID using a hash of document ID and chunk text."""
hash_input = f"{document_id}:{chunk_text}".encode("utf-8")
return str(uuid.UUID(hashlib.md5(hash_input).hexdigest()))
# TODO: refactor this generate_chunk_id along with the `sqlite-vec` implementation into a separate utils file