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.
Похожие серверы
Alpha Vantage MCP Server
спонсорAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Sailor
Generate and render Mermaid diagrams as images using LLMs.
TokRepo MCP Server
Search, install, and share AI skills, prompts, and MCP configs from a curated registry of 200+ assets via CLI or MCP protocol.
Claude Prompts MCP Server
A universal MCP server that loads prompts from an external JSON configuration file.
i18next MCP Server
An MCP server for managing translations in i18next projects, allowing AI assistants to interact directly with translation files.
ZeroPath MCP Server
Interact with your product security findings using natural language.
Armis Security Scanner
AI-powered security scanning. Scans code, files, and git diffs for vulnerabilities in real-time using the Armis scanning API.
DevTools MCP Server
A comprehensive MCP server with 30+ developer tools including JSON/XML formatting, UUID generation, hashing, encoding, regex testing, color conversion, JWT decoding, timestamp conversion, and more.
Onyx MCP Server
Search and query Onyx programming language documentation and GitHub code examples.
Digma
A code observability MCP enabling dynamic code analysis based on OTEL/APM data to assist in code reviews, issues identification and fix, highlighting risky code etc.
AppDeploy
AppDeploy lets you deploy a real, full-stack web app directly from an AI chat and turn your AI conversations into live apps, without leaving the chat or touching infrastructure.