Text Classification (Model2Vec)
A server for text classification using static embeddings from Model2Vec, supporting multiple transports like stdio and HTTP/SSE.
Text Classification MCP Server (Model2Vec)
A powerful Model Context Protocol (MCP) server that provides comprehensive text classification tools using fast static embeddings from Model2Vec (Minish Lab).
🛠️ Complete MCP Tools & Resources
This server provides 6 essential tools, 2 resources, and 1 prompt template for text classification:
🏷️ Classification Tools
classify_text- Classify single text with confidence scoresbatch_classify- Classify multiple texts simultaneously
📝 Category Management Tools
add_custom_category- Add individual custom categoriesbatch_add_custom_categories- Add multiple categories at oncelist_categories- View all available categoriesremove_categories- Remove unwanted categories
📊 Resources
categories://list- Access category list programmaticallymodel://info- Get model and system information
💬 Prompt Templates
classification_prompt- Ready-to-use classification prompt template
🚀 Key Features
- Zero-install: Just
uv run— dependencies are declared inline (PEP 723) - Multiple Transports: Supports stdio (local), HTTP/SSE, and Streamable HTTP
- Fast Classification: Uses efficient static embeddings from Model2Vec
- 10 Default Categories: Technology, business, health, sports, entertainment, politics, science, education, travel, food
- Custom Categories: Add your own categories with descriptions
- Batch Processing: Classify multiple texts at once
- Resource Endpoints: Access category lists and model information
- Prompt Templates: Built-in prompts for classification tasks
📋 Installation
Prerequisites
- Python 3.10+
uvpackage manager
Quick Setup
No separate install step needed — dependencies are declared inline in the script (PEP 723) and resolved automatically by uv.
🏃♂️ Running the Server
Stdio Transport (Default)
uv run text_classifier_server.py
HTTP/SSE Transport
# SSE on default port 8000
uv run text_classifier_server.py --http
# SSE on custom port
uv run text_classifier_server.py --http 9000
Streamable HTTP Transport
uv run text_classifier_server.py --streamable-http
🔧 Configuration
For Claude Desktop
Stdio Transport (Local)
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"text-classifier": {
"command": "uv",
"args": ["run", "/path/to/text_classifier_server.py"]
}
}
}
HTTP Transport (Remote)
Start the server with uv run text_classifier_server.py --http, then add:
{
"mcpServers": {
"text-classifier": {
"url": "http://localhost:8000/sse"
}
}
}
For Claude Code
claude mcp add text-classifier -- uv run /Users/olivier/DEV/mcp-text-classifier/text_classifier_server.py
🛠️ Available Tools
classify_text
Classify a single text into predefined categories with confidence scores.
Parameters:
text(string): The text to classifytop_k(int, optional): Number of top categories to return (default: 3)
Returns: JSON with predictions, confidence scores, and category descriptions
Example:
classify_text("Apple announced new AI features", top_k=3)
batch_classify
Classify multiple texts simultaneously for efficient processing.
Parameters:
texts(list): List of texts to classifytop_k(int, optional): Number of top categories per text (default: 1)
Returns: JSON with batch classification results
Example:
batch_classify(["Tech news", "Sports update", "Business report"], top_k=2)
add_custom_category
Add a new custom category for classification.
Parameters:
category_name(string): Name of the new categorydescription(string): Description to generate the category embedding
Returns: JSON with operation result
Example:
add_custom_category("automotive", "Cars, vehicles, transportation, automotive industry")
batch_add_custom_categories
Add multiple custom categories in a single operation for efficiency.
Parameters:
categories_data(list): List of dictionaries with 'name' and 'description' keys
Returns: JSON with batch operation results
Example:
batch_add_custom_categories([
{"name": "automotive", "description": "Cars, vehicles, transportation"},
{"name": "music", "description": "Music, songs, artists, albums, concerts"}
])
list_categories
List all available categories and their descriptions.
Parameters: None
Returns: JSON with all categories and their descriptions
remove_categories
Remove one or multiple categories from the classification system.
Parameters:
category_names(list): List of category names to remove
Returns: JSON with removal results for each category
Example:
remove_categories(["automotive", "custom_category"])
📚 Available Resources
categories://list: Get list of available categories with metadatamodel://info: Get information about the loaded Model2Vec model and system status
💬 Available Prompts
classification_prompt: Template for text classification tasks with context and instructions
Parameters:
text(string): The text to classify
Returns: Formatted prompt for classification with available categories listed
🧪 Testing
Test with MCP Inspector
npx @modelcontextprotocol/inspector uv run text_classifier_server.py
🔍 Troubleshooting
Model download fails
# Manual model download
uv run python -c "from model2vec import StaticModel; StaticModel.from_pretrained('minishlab/potion-base-8M')"
📖 Technical Details
- Model:
minishlab/potion-base-8Mfrom Model2Vec - Similarity: Cosine similarity between text and category embeddings
- Performance: ~30MB model, fast inference with static embeddings
- Protocol: MCP specification 2024-11-05
- Transports: stdio, HTTP+SSE, Streamable HTTP
🤝 Contributing
- Fork the repository
- Create a feature branch
- Add tests for new functionality
- Submit a pull request
📄 License
MIT License - see LICENSE file for details.
🙏 Acknowledgments
- Model2Vec by Minish Lab for fast static embeddings
- Anthropic for the Model Context Protocol specification
- FastMCP for the excellent Python MCP framework
Need help? Check the troubleshooting section or open an issue in the repository.
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