Information
# MCP Server for Milvus
> The Model Context Protocol (MCP) is an open protocol that enables seamless integration between LLM applications and external data sources and tools. Whether you're building an AI-powered IDE, enhancing a chat interface, or creating custom AI workflows, MCP provides a standardized way to connect LLMs with the context they need.
This repository contains a MCP server that provides access to [Milvus](https://milvus.io/) vector database functionality.

## Prerequisites
Before using this MCP server, ensure you have:
- Python 3.10 or higher
- A running [Milvus](https://milvus.io/) instance (local or remote)
- [uv](https://github.com/astral-sh/uv) installed (recommended for running the server)
## Usage
The recommended way to use this MCP server is to run it directly with \`uv\` without installation. This is how both Claude Desktop and Cursor are configured to use it in the examples below.
If you want to clone the repository:
\`\`\`bash
git clone https://github.com/zilliztech/mcp-server-milvus.git
cd mcp-server-milvus
\`\`\`
Then you can run the server directly:
\`\`\`bash
uv run src/mcp_server_milvus/server.py --milvus-uri http://localhost:19530
\`\`\`
Alternatively you can change the .env file in the \`src/mcp_server_milvus/\` directory to set the environment variables and run the server with the following command:
\`\`\`bash
uv run src/mcp_server_milvus/server.py
\`\`\`
### Important: the .env file will have higher priority than the command line arguments.
## Supported Applications
This MCP server can be used with various LLM applications that support the Model Context Protocol:
- **Claude Desktop**: Anthropic's desktop application for Claude
- **Cursor**: AI-powered code editor with MCP support
- **Custom MCP clients**: Any application implementing the MCP client specification
## Usage with Claude Desktop
1. Install Claude Desktop from https://claude.ai/download
2. Open your Claude Desktop configuration:
- macOS: \`~/Library/Application Support/Claude/claude_desktop_config.json\`
3. Add the following configuration:
\`\`\`json
\{
"mcpServers": \{
"milvus": \{
"command": "/PATH/TO/uv",
"args": [
"--directory",
"/path/to/mcp-server-milvus/src/mcp_server_milvus",
"run",
"server.py",
"--milvus-uri",
"http://localhost:19530"
]
\}
\}
\}
\`\`\`
4. Restart Claude Desktop
## Usage with Cursor
[Cursor also supports MCP](https://docs.cursor.com/context/model-context-protocol) tools. You can add the Milvus MCP server to Cursor in two ways:
### Option 1: Using Cursor Settings UI
1. Go to \`Cursor Settings\` > \`Features\` > \`MCP\`
2. Click on the \`+ Add New MCP Server\` button
3. Fill out the form:
- **Type**: Select \`stdio\` (since you're running a command)
- **Name**: \`milvus\`
- **Command**: \`/PATH/TO/uv --directory /path/to/mcp-server-milvus/src/mcp_server_milvus run server.py --milvus-uri http://127.0.0.1:19530\`
> ⚠️ Note: Use \`127.0.0.1\` instead of \`localhost\` to avoid potential DNS resolution issues.
### Option 2: Using Project-specific Configuration (Recommended)
Create a \`.cursor/mcp.json\` file in your project root:
1. Create the \`.cursor\` directory in your project root:
\`\`\`bash
mkdir -p /path/to/your/project/.cursor
\`\`\`
2. Create a \`mcp.json\` file with the following content:
\`\`\`json
\{
"mcpServers": \{
"milvus": \{
"command": "/PATH/TO/uv",
"args": [
"--directory",
"/path/to/mcp-server-milvus/src/mcp_server_milvus",
"run",
"server.py",
"--milvus-uri",
"http://127.0.0.1:19530"
]
\}
\}
\}
\`\`\`
3. Restart Cursor or reload the window
After adding the server, you may need to press the refresh button in the MCP settings to populate the tool list. The Agent will automatically use the Milvus tools when relevant to your queries.
### Verifying the Integration
To verify that Cursor has successfully integrated with your Milvus MCP server:
1. Open Cursor Settings > Features > MCP
2. Check that "Milvus" appears in the list of MCP servers
3. Verify that the tools are listed (e.g., milvus_list_collections, milvus_vector_search, etc.)
4. If the server is enabled but shows an error, check the Troubleshooting section below
## Available Tools
The server provides the following tools:
### Search and Query Operations
- \`milvus_text_search\`: Search for documents using full text search
- Parameters:
- \`collection_name\`: Name of collection to search
- \`query_text\`: Text to search for
- \`limit\`: Maximum results (default: 5)
- \`output_fields\`: Fields to include in results
- \`drop_ratio\`: Proportion of low-frequency terms to ignore (0.0-1.0)
- \`milvus_vector_search\`: Perform vector similarity search on a collection
- Parameters:
- \`collection_name\`: Name of collection to search
- \`vector\`: Query vector
- \`vector_field\`: Field containing vectors to search (default: "vector")
- \`limit\`: Maximum results (default: 5)
- \`output_fields\`: Fields to include in results
- \`metric_type\`: Distance metric (COSINE, L2, IP) (default: "COSINE")
- \`milvus_query\`: Query collection using filter expressions
- Parameters:
- \`collection_name\`: Name of collection to query
- \`filter_expr\`: Filter expression (e.g. 'age > 20')
- \`output_fields\`: Fields to include in results
- \`limit\`: Maximum results (default: 10)
### Collection Management
- \`milvus_list_collections\`: List all collections in the database
- \`milvus_create_collection\`: Create a new collection with specified schema
- Parameters:
- \`collection_name\`: Name for the new collection
- \`collection_schema\`: Collection schema definition
- \`index_params\`: Optional index parameters
- \`milvus_load_collection\`: Load a collection into memory for search and query
- Parameters:
- \`collection_name\`: Name of collection to load
- \`replica_number\`: Number of replicas (default: 1)
- \`milvus_release_collection\`: Release a collection from memory
- Parameters:
- \`collection_name\`: Name of collection to release
### Data Operations
- \`milvus_insert_data\`: Insert data into a collection
- Parameters:
- \`collection_name\`: Name of collection
- \`data\`: Dictionary mapping field names to lists of values
- \`milvus_delete_entities\`: Delete entities from a collection based on filter expression
- Parameters:
- \`collection_name\`: Name of collection
- \`filter_expr\`: Filter expression to select entities to delete
## Environment Variables
- \`MILVUS_URI\`: Milvus server URI (can be set instead of --milvus-uri)
- \`MILVUS_TOKEN\`: Optional authentication token
- \`MILVUS_DB\`: Database name (defaults to "default")
## Development
To run the server directly:
\`\`\`bash
uv run server.py --milvus-uri http://localhost:19530
\`\`\`
## Examples
### Using Claude Desktop
#### Example 1: Listing Collections
\`\`\`
What are the collections I have in my Milvus DB?
\`\`\`
Claude will then use MCP to check this information on your Milvus DB.
\`\`\`
I'll check what collections are available in your Milvus database.
Here are the collections in your Milvus database:
1. rag_demo
2. test
3. chat_messages
4. text_collection
5. image_collection
6. customized_setup
7. streaming_rag_demo
\`\`\`
#### Example 2: Searching for Documents
\`\`\`
Find documents in my text_collection that mention "machine learning"
\`\`\`
Claude will use the full-text search capabilities of Milvus to find relevant documents:
\`\`\`
I'll search for documents about machine learning in your text_collection.
> View result from milvus-text-search from milvus (local)
Here are the documents I found that mention machine learning:
[Results will appear here based on your actual data]
\`\`\`
### Using Cursor
#### Example: Creating a Collection
In Cursor, you can ask:
\`\`\`
Create a new collection called 'articles' in Milvus with fields for title (string), content (string), and a vector field (128 dimensions)
\`\`\`
Cursor will use the MCP server to execute this operation:
\`\`\`
I'll create a new collection called 'articles' with the specified fields.
Collection 'articles' has been created successfully with the following schema:
- title: string
- content: string
- vector: float vector[128]
\`\`\`
## Troubleshooting
### Common Issues
#### Connection Errors
If you see errors like "Failed to connect to Milvus server":
1. Verify your Milvus instance is running: \`docker ps\` (if using Docker)
2. Check the URI is correct in your configuration
3. Ensure there are no firewall rules blocking the connection
4. Try using \`127.0.0.1\` instead of \`localhost\` in the URI
#### Authentication Issues
If you see authentication errors:
1. Verify your \`MILVUS_TOKEN\` is correct
2. Check if your Milvus instance requires authentication
3. Ensure you have the correct permissions for the operations you're trying to perform
#### Tool Not Found
If the MCP tools don't appear in Claude Desktop or Cursor:
1. Restart the application
2. Check the server logs for any errors
3. Verify the MCP server is running correctly
4. Press the refresh button in the MCP settings (for Cursor)
### Getting Help
If you continue to experience issues:
1. Check the [GitHub Issues](https://github.com/zilliztech/mcp-server-milvus/issues) for similar problems
2. Join the [Zilliz Community Discord](https://discord.gg/zilliz) for support
3. File a new issue with detailed information about your problem