
Whisper Speech Recognition MCP Server
A high-performance speech recognition MCP server based on Faster Whisper, providing efficient audio transcription capabilities.
What is Fast-Whisper-MCP-Server?
Fast-Whisper-MCP-Server is a high-performance speech recognition server based on Faster Whisper, designed to provide efficient audio transcription capabilities.
How to use Fast-Whisper-MCP-Server?
To use the server, clone the repository, install the required dependencies, and start the server using the provided scripts. You can then configure it with compatible applications like Claude Desktop.
Key features of Fast-Whisper-MCP-Server?
- Integrated with Faster Whisper for efficient speech recognition
- Batch processing acceleration for improved transcription speed
- Automatic CUDA acceleration if available
- Support for multiple model sizes (tiny to large-v3)
- Output formats include VTT subtitles, SRT, and JSON
- Model instance caching to avoid repeated loading
- Dynamic batch size adjustment based on GPU memory
Use cases of Fast-Whisper-MCP-Server?
- Transcribing audio files for content creation
- Real-time speech recognition for applications
- Batch processing of multiple audio files for analysis
FAQ from Fast-Whisper-MCP-Server?
- What are the system requirements?
Requires Python 3.10+, Faster Whisper, and PyTorch with CUDA support for optimal performance.
- Can it handle multiple audio files at once?
Yes! It supports batch transcription of audio files in a folder.
- Is there a GUI available?
Currently, it is command-line based, but it can be integrated with GUI applications like Claude Desktop.
Whisper Speech Recognition MCP Server
中文文档
A high-performance speech recognition MCP server based on Faster Whisper, providing efficient audio transcription capabilities.
Features
- Integrated with Faster Whisper for efficient speech recognition
- Batch processing acceleration for improved transcription speed
- Automatic CUDA acceleration (if available)
- Support for multiple model sizes (tiny to large-v3)
- Output formats include VTT subtitles, SRT, and JSON
- Support for batch transcription of audio files in a folder
- Model instance caching to avoid repeated loading
- Dynamic batch size adjustment based on GPU memory
Installation
Dependencies
- Python 3.10+
- faster-whisper>=0.9.0
- torch==2.6.0+cu126
- torchaudio==2.6.0+cu126
- mcp[cli]>=1.2.0
Installation Steps
- Clone or download this repository
- Create and activate a virtual environment (recommended)
- Install dependencies:
pip install -r requirements.txt
PyTorch Installation Guide
Install the appropriate version of PyTorch based on your CUDA version:
-
CUDA 12.6:
pip install torch==2.6.0 torchvision==0.21.0 torchaudio==2.6.0 --index-url https://download.pytorch.org/whl/cu126
-
CUDA 12.1:
pip install torch==2.5.1 torchvision==0.20.1 torchaudio==2.5.1 --index-url https://download.pytorch.org/whl/cu121
-
CPU version:
pip install torch==2.6.0 torchvision==0.21.0 torchaudio==2.6.0 --index-url https://download.pytorch.org/whl/cpu
You can check your CUDA version with nvcc --version
or nvidia-smi
.
Usage
Starting the Server
On Windows, simply run start_server.bat
.
On other platforms, run:
python whisper_server.py
Configuring Claude Desktop
-
Open the Claude Desktop configuration file:
- Windows:
%APPDATA%\Claude\claude_desktop_config.json
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json
- Windows:
-
Add the Whisper server configuration:
{
"mcpServers": {
"whisper": {
"command": "python",
"args": ["D:/path/to/whisper_server.py"],
"env": {}
}
}
}
- Restart Claude Desktop
Available Tools
The server provides the following tools:
- get_model_info - Get information about available Whisper models
- transcribe - Transcribe a single audio file
- batch_transcribe - Batch transcribe audio files in a folder
Performance Optimization Tips
- Using CUDA acceleration significantly improves transcription speed
- Batch processing mode is more efficient for large numbers of short audio files
- Batch size is automatically adjusted based on GPU memory size
- Using VAD (Voice Activity Detection) filtering improves accuracy for long audio
- Specifying the correct language can improve transcription quality
Local Testing Methods
- Use MCP Inspector for quick testing:
mcp dev whisper_server.py
-
Use Claude Desktop for integration testing
-
Use command line direct invocation (requires mcp[cli]):
mcp run whisper_server.py
Error Handling
The server implements the following error handling mechanisms:
- Audio file existence check
- Model loading failure handling
- Transcription process exception catching
- GPU memory management
- Batch processing parameter adaptive adjustment
Project Structure
whisper_server.py
: Main server codemodel_manager.py
: Whisper model loading and cachingaudio_processor.py
: Audio file validation and preprocessingformatters.py
: Output formatting (VTT, SRT, JSON)transcriber.py
: Core transcription logicstart_server.bat
: Windows startup script
License
MIT
Acknowledgements
This project was developed with the assistance of these amazing AI tools and models:
- GitHub Copilot - AI pair programmer
- Trae - Agentic AI coding assistant
- Cline - AI-powered terminal
- DeepSeek - Advanced AI model
- Claude-3.7-Sonnet - Anthropic's powerful AI assistant
- Gemini-2.0-Flash - Google's multimodal AI model
- VS Code - Powerful code editor
- Whisper - OpenAI's speech recognition model
- Faster Whisper - Optimized Whisper implementation
Special thanks to these incredible tools and the teams behind them.