M

MCP Server Qdrant

A Machine Control Protocol (MCP) server based on the Qdrant vector database, supporting text storage, semantic search, and integration of the FastEmbed embedding model.
2 points
22

What is MCP Server for Qdrant?

MCP Server for Qdrant is a middleware service that allows users to store text information and its metadata in the Qdrant vector database through a simple protocol and supports fast retrieval of this information through semantic search.

How to use MCP Server for Qdrant?

You can run the service by installing the Python package or Docker container, and then use the provided tools or APIs to store and search for information.

Use cases

Suitable for scenarios such as AI applications requiring long - term memory storage, knowledge management systems, and intelligent question - answering systems.

Main features

Text storageStore text information along with optional metadata in the Qdrant database
Semantic searchSearch based on the meaning of the text content rather than keywords
FastEmbed integrationBuilt - in support for an efficient text embedding model
Docker supportProvide a containerized deployment solution

Advantages and limitations

Advantages
Simple and easy - to - use API interface
Efficient semantic search ability
Flexible metadata support
Out - of - the - box embedding model
Limitations
Requires pre - configuration of the Qdrant database
Additional optimization is required for large - scale deployment
The default embedding model may not be suitable for all scenarios

How to use

Installation
Install the service via pip or source code
Configuration
Set environment variables or create an.env file to configure the Qdrant connection
Run the service
Start the MCP server
Use the tools
Use the provided tools to store and search for information

Usage examples

Store chat recordsStore the conversation history between the user and the AI for subsequent reference
Search for relevant knowledgeWhen the user asks a similar question, relevant historical records can be quickly found

Frequently Asked Questions

Do I need to deploy the Qdrant database myself?
Can I change the embedding model?
Is there a size limit for the stored information?

Related resources

Qdrant official documentation
Official documentation for the Qdrant vector database
FastEmbed project
GitHub repository for the FastEmbed embedding model
MCP protocol introduction
Basic concepts of the Machine Control Protocol
Installation
Copy the following command to your Client for configuration
Note: Your key is sensitive information, do not share it with anyone.
S
Search1api
The Search1API MCP Server is a server based on the Model Context Protocol (MCP), providing search and crawling functions, and supporting multiple search services and tools.
TypeScript
343
4 points
D
Duckduckgo MCP Server
Certified
The DuckDuckGo Search MCP Server provides web search and content scraping services for LLMs such as Claude.
Python
830
4.3 points
B
Bing Search MCP
An MCP server for integrating Microsoft Bing Search API, supporting web page, news, and image search functions, providing network search capabilities for AI assistants.
Python
229
4 points
A
Apple Notes MCP
A server that provides local Apple Notes database access for the Claude desktop client, supporting reading and searching of note content.
Python
208
4.3 points
M
Modelcontextprotocol
Certified
This project is an implementation of an MCP server integrated with the Sonar API, providing real-time web search capabilities for Claude. It includes guides on system architecture, tool configuration, Docker deployment, and multi-platform integration.
TypeScript
1.1K
5 points
B
Bilibili MCP Js
Certified
A Bilibili video search server based on the Model Context Protocol (MCP), providing API interfaces to support video content search, paginated queries, and video information return, including LangChain call examples and test scripts.
TypeScript
245
4.2 points
M
MCP Server Weread
The WeRead MCP Server is a lightweight service that bridges WeRead data and AI clients, enabling in - depth interaction between reading notes and AI.
TypeScript
377
4 points
M
MCP Obsidian
This project is an MCP server used to interact with the Obsidian note application through the Local REST API plugin of Obsidian. It provides various tools to operate and manage files in Obsidian, including listing files, retrieving file content, searching, modifying content, and deleting files.
Python
885
5 points
Featured MCP Services
N
Notion Api MCP
Certified
A Python-based MCP Server that provides advanced to-do list management and content organization functions through the Notion API, enabling seamless integration between AI models and Notion.
Python
141
4.5 points
D
Duckduckgo MCP Server
Certified
The DuckDuckGo Search MCP Server provides web search and content scraping services for LLMs such as Claude.
Python
830
4.3 points
M
Markdownify MCP
Markdownify is a multi-functional file conversion service that supports converting multiple formats such as PDFs, images, audio, and web page content into Markdown format.
TypeScript
1.7K
5 points
G
Gitlab MCP Server
Certified
The GitLab MCP server is a project based on the Model Context Protocol that provides a comprehensive toolset for interacting with GitLab accounts, including code review, merge request management, CI/CD configuration, and other functions.
TypeScript
88
4.3 points
U
Unity
Certified
UnityMCP is a Unity editor plugin that implements the Model Context Protocol (MCP), providing seamless integration between Unity and AI assistants, including real - time state monitoring, remote command execution, and log functions.
C#
567
5 points
F
Figma Context MCP
Framelink Figma MCP Server is a server that provides access to Figma design data for AI programming tools (such as Cursor). By simplifying the Figma API response, it helps AI more accurately achieve one - click conversion from design to code.
TypeScript
6.7K
4.5 points
M
Minimax MCP Server
The MiniMax Model Context Protocol (MCP) is an official server that supports interaction with powerful text-to-speech, video/image generation APIs, and is suitable for various client tools such as Claude Desktop and Cursor.
Python
754
4.8 points
C
Context7
Context7 MCP is a service that provides real-time, version-specific documentation and code examples for AI programming assistants. It is directly integrated into prompts through the Model Context Protocol to solve the problem of LLMs using outdated information.
TypeScript
5.2K
4.7 points
AIbase
Zhiqi Future, Your AI Solution Think Tank
© 2025AIbase