MCP Cosyvoice
An Mcp service based on Python that calls the Ali CosyVoice1 API to convert text to audio
rating : 2 points
downloads : 8.7K
What is the Mcp CosyVoice service?
This is a Text-to-Speech (TTS) service that converts the input text content into high-quality voice audio files by calling the Alibaba Cloud CosyVoice API.How to use the Mcp CosyVoice service?
You can convert text into voice files by simply calling it through a Python script after configuring the API key.Applicable scenarios
It is suitable for various scenarios that require speech synthesis, such as voice assistant development, audiobook production, and educational applications.Main features
Text-to-speech
Convert any input text into natural and fluent voice audio
Python integration
Provide a simple Python interface for easy integration into existing projects
Alibaba Cloud technology support
Based on the Alibaba Cloud CosyVoice API, provide high-quality speech synthesis
Advantages
A simple and easy-to-use Python interface
Based on the stable and reliable speech synthesis service of Alibaba Cloud
Support custom output directories
Limitations
Requires an Alibaba Cloud API key
Currently only supports the Python environment
Limited output audio formats
How to use
Create a Python virtual environment
Create a virtual environment using Python 3.12
Activate the virtual environment
Activate the virtual environment according to the operating system (Windows example)
Install dependencies
Install all the dependency packages required by the project
Call the service
Configure and call the service through StdioServerParams in the code
Usage examples
Convert ancient poems to voice
Convert ancient poem text into voice files
Product introduction voice
Generate a voice version for the product introduction
Frequently Asked Questions
How to obtain an Alibaba Cloud API key?
Which audio formats are supported?
Does it support custom voice styles?
Related resources
Alibaba Cloud CosyVoice documentation
Official documentation of the Alibaba Cloud CosyVoice service
Python virtual environment guide
Official guide for using Python virtual environments

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
16.6K
4.3 points

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
14.8K
4.5 points

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
24.5K
5 points

Duckduckgo MCP Server
Certified
The DuckDuckGo Search MCP Server provides web search and content scraping services for LLMs such as Claude.
Python
44.7K
4.3 points

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#
20.2K
5 points

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
44.3K
4.5 points

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
30.2K
4.8 points

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
62.4K
4.7 points

