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What is An official Model Context Protocol server for keeping and retrieving memories in the Qdrant vector search engine.?
The mcp-server-qdrant is an official Model Context Protocol server that acts as a semantic memory layer on top of the Qdrant database, enabling seamless integration between LLM applications and external data sources and tools. It provides standardized tools for storing and retrieving information in the Qdrant vector search engine.
Documentation
mcp-server-qdrant: A Qdrant MCP server
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 is an example of how to create a MCP server for Qdrant, a vector search engine.
Overview
An official Model Context Protocol server for keeping and retrieving memories in the Qdrant vector search engine.
It acts as a semantic memory layer on top of the Qdrant database.
Components# Tools
qdrant-store
Store some information in the Qdrant database
Input:
information (string): Information to store
metadata (JSON): Optional metadata to store
collection_name (string): Name of the collection to store the information in. This field is required if there are no default collection name.
If there is a default collection name, this field is not enabled.
Returns: Confirmation message
qdrant-find
Retrieve relevant information from the Qdrant database
Input:
query (string): Query to use for searching
collection_name (string): Name of the collection to store the information in. This field is required if there are no default collection name.
If there is a default collection name, this field is not enabled.
Returns: Information stored in the Qdrant database as separate messages
Environment Variables
The configuration of the server is done using environment variables:
Name
Description
Default Value
QDRANT_URL
URL of the Qdrant server
None
QDRANT_API_KEY
API key for the Qdrant server
None
COLLECTION_NAME
Name of the default collection to use.
None
QDRANT_LOCAL_PATH
Path to the local Qdrant database (alternative to QDRANT_URL)
None
EMBEDDING_PROVIDER
Embedding provider to use (currently only "fastembed" is supported)
stdio (default): Standard input/output transport, might only be used by local MCP clients
sse: Server-Sent Events transport, perfect for remote clients
streamable-http: Streamable HTTP transport, perfect for remote clients, more recent than SSE
The default transport is stdio if not specified.
When SSE transport is used, the server will listen on the specified port and wait for incoming connections. The default
port is 8000, however it can be changed using the FASTMCP_PORT environment variable.
A Dockerfile is available for building and running the MCP server:
docker build -t mcp-server-qdrant .
# Run the container
docker run -p 8000:8000 \
- e FASTMCP_HOST="0.0.0.0" \
- e QDRANT_URL="http://your-qdrant-server:6333" \
- e QDRANT_API_KEY="your-api-key" \
- e COLLECTION_NAME="your-collection" \
mcp-server-qdrant
[!TIP]
Please note that we set FASTMCP_HOST="0.0.0.0" to make the server listen on all network interfaces. This is
necessary when running the server in a Docker container.
Installing via Smithery
To install Qdrant MCP Server for Claude Desktop automatically via Smithery:
npx @smithery/cli install mcp-server-qdrant --client claude
Manual configuration of Claude Desktop
To use this server with the Claude Desktop app, add the following configuration to the "mcpServers" section of your
claude_desktop_config.json:
This MCP server will automatically create a collection with the specified name if it doesn't exist.
By default, the server will use the sentence-transformers/all-MiniLM-L6-v2 embedding model to encode memories.
For the time being, only FastEmbed models are supported.
Support for other tools
This MCP server can be used with any MCP-compatible client. For example, you can use it with
Cursor and VS Code, which provide built-in support for the Model Context
Protocol.
Using with Cursor/Windsurf
You can configure this MCP server to work as a code search tool for Cursor or Windsurf by customizing the tool
descriptions:
QDRANT_URL="http://localhost:6333" \
COLLECTION_NAME="code-snippets" \
TOOL_STORE_DESCRIPTION="Store reusable code snippets for later retrieval. \
The 'information' parameter should contain a natural language description of what the code does, \
while the actual code should be included in the 'metadata' parameter as a 'code' property. \
The value of 'metadata' is a Python dictionary with strings as keys. \
Use this whenever you generate some code snippet." \
TOOL_FIND_DESCRIPTION="Search for relevant code snippets based on natural language descriptions. \
The 'query' parameter should describe what you're looking for, \
and the tool will return the most relevant code snippets. \
Use this when you need to find existing code snippets for reuse or reference." \
uvx mcp-server-qdrant --transport sse # Enable SSE transport
In Cursor/Windsurf, you can then configure the MCP server in your settings by pointing to this running server using
SSE transport protocol. The description on how to add an MCP server to Cursor can be found in the Cursor
documentation. If you are
running Cursor/Windsurf locally, you can use the following URL:
http://localhost:8000/sse
[!TIP]
We suggest SSE transport as a preferred way to connect Cursor/Windsurf to the MCP server, as it can support remote
connections. That makes it easy to share the server with your team or use it in a cloud environment.
This configuration transforms the Qdrant MCP server into a specialized code search tool that can:
Store code snippets, documentation, and implementation details
Retrieve relevant code examples based on semantic search
Help developers find specific implementations or usage patterns
You can populate the database by storing natural language descriptions of code snippets (in the information parameter)
along with the actual code (in the metadata.code property), and then search for them using natural language queries
that describe what you're looking for.
[!NOTE]
The tool descriptions provided above are examples and may need to be customized for your specific use case. Consider
adjusting the descriptions to better match your team's workflow and the specific types of code snippets you want to
store and retrieve.
If you have successfully installed the mcp-server-qdrant, but still can't get it to work with Cursor, please
consider creating the Cursor rules so the MCP tools are always used when
the agent produces a new code snippet. You can restrict the rules to only work for certain file types, to avoid using
the MCP server for the documentation or other types of content.
Using with Claude Code
You can enhance Claude Code's capabilities by connecting it to this MCP server, enabling semantic search over your
existing codebase.
Setting up mcp-server-qdrant
Add the MCP server to Claude Code:
# Add mcp-server-qdrant configured for code search
claude mcp add code-search \
e QDRANT_URL="http://localhost:6333" \
e COLLECTION_NAME="code-repository" \
e EMBEDDING_MODEL="sentence-transformers/all-MiniLM-L6-v2" \
e TOOL_STORE_DESCRIPTION="Store code snippets with descriptions. The 'information' parameter should contain a natural language description of what the code does, while the actual code should be included in the 'metadata' parameter as a 'code' property." \
e TOOL_FIND_DESCRIPTION="Search for relevant code snippets using natural language. The 'query' parameter should describe the functionality you're looking for." \
uvx mcp-server-qdrant
Verify the server was added:
claude mcp list
Using Semantic Code Search in Claude Code
Tool descriptions, specified in TOOL_STORE_DESCRIPTION and TOOL_FIND_DESCRIPTION, guide Claude Code on how to use
the MCP server. The ones provided above are examples and may need to be customized for your specific use case. However,
Claude Code should be already able to:
Use the qdrant-store tool to store code snippets with descriptions.
Use the qdrant-find tool to search for relevant code snippets using natural language.
Run MCP server in Development Mode
The MCP server can be run in development mode using the mcp dev command. This will start the server and open the MCP
inspector in your browser.
COLLECTION_NAME=mcp-dev fastmcp dev src/mcp_server_qdrant/server.py
Using with VS Code
For one-click installation, click one of the install buttons below:
Manual Installation
Add the following JSON block to your User Settings (JSON) file in VS Code. You can do this by pressing Ctrl + Shift + P and typing Preferences: Open User Settings (JSON).
If you have suggestions for how mcp-server-qdrant could be improved, or want to report a bug, open an issue!
We'd love all and any contributions.
Testing mcp-server-qdrant locally
The MCP inspector is a developer tool for testing and debugging MCP
servers. It runs both a client UI (default port 5173) and an MCP proxy server (default port 3000). Open the client UI in
your browser to use the inspector.
QDRANT_URL=":memory:" COLLECTION_NAME="test" \
fastmcp dev src/mcp_server_qdrant/server.py
Once started, open your browser to http://localhost:5173 to access the inspector interface.
License
This MCP server is licensed under the Apache License 2.0. This means you are free to use, modify, and distribute the
software, subject to the terms and conditions of the Apache License 2.0. For more details, please see the LICENSE file
in the project repository.