MCP Email Verify
Validate email addresses using the AbstractAPI Email Validation API.
MCP Email Verify
A lightweight Model Context Protocol (MCP) server that enables your LLM to validate email addresses. This tool checks email format, domain validity, and deliverability using the AbstractAPI Email Validation API. Perfect for integrating email validation into AI applications like Claude Desktop.
What is Model Context Protocol (MCP)?
At its core, MCP is a standardized protocol designed to streamline communication between AI models and external systems. Think of it as a universal language that allows different AI agents, tools, and services to interact seamlessly.
Features
- Email Verification: Verify email addresses in real-time.
- MCP Integration: Seamlessly connect with MCP-compatible LLMs.
- Easy Setup: Built with Python and the MCP SDK for quick deployment.
MCP follows a client-server architecture:
Watch the Demo
Click the image below to watch a video demo of the MCP Email Verify tool in action:
Requirements
- Python: Python 3.11.0 or higher.
- UV: 0.6.9 or higher.
Setup
1. Clone the Repository
git clone https://github.com/Abhi5h3k/MCP-Email-Verify.git
cd MCP-Email-Verify
2. Install UV
If you don’t have UV installed, you can install it using the following commands:
powershell -ExecutionPolicy ByPass -c "irm https://astral.sh/uv/install.ps1 | iex"
Verify the installation:
uv --version
3. Set Up the Virtual Environment
Create a virtual environment using UV:
uv venv
Activate the virtual environment: On Windows:
.venv\Scripts\activate
4. Install Dependencies Install the required dependencies from pyproject.toml using UV:
uv install
Running the Server
- Set Up Environment Variables Create a .env file in the root directory and add your AbstractAPI key:
ABSTRACT_API_KEY=your_api_key_here
- Run the Server Start the MCP server:
uv run server.py
Usage
- Register the Server with Claude Desktop Update the claude_desktop_config.json file to include your MCP server:
{
"mcpServers": {
"verify_mail": {
"command": "uv",
"args": [
"--directory",
"C:\\ABSOLUTE\\PATH\\TO\\MCP-Email-Verify",
"run",
"server.py"
]
}
}
}
-
Restart Claude Desktop Restart Claude Desktop to detect the new tool.
-
Verify Emails Use prompts like:
"I was trying to email Thanos at [email protected] to ask him to bring back my favorite TV show, but I’m not sure if it’s a valid email. Can you check if it’s real or just a snap in the dark?"
Development
Formatting and Linting This project uses black and isort for code formatting and import sorting.
- Install development dependencies:
uv add black isort --dev - Format the code:
black . - Sort imports:
isort .
Set up pre-commit
pre-commit install
pre-commit run --all-files
Available On Smithery.ai Server: MCP Email Verify
Article: Model Context Protocol (MCP): A Beginner's Guide to the Future of AI Communication
関連サーバー
Fider
Interact with Fider, an open-source customer feedback tool, to manage user suggestions and feedback.
Yandex Tracker
Integrates with Yandex Tracker, allowing an AI assistant to interact with its task management system via the MCP protocol.
Google Sheets
A server that connects to the Google Sheets API, enabling AI-driven spreadsheet automation and data manipulation.
Kibela
Integrates with the Kibela API to manage knowledge-based content.
Siri Shortcuts
List, open, and run shortcuts from the macOS Shortcuts app.
sodukusolver MCP server
A simple note storage system that allows adding and summarizing notes using a custom URI scheme.
UpTier
Desktop task manager with clean To Do-style UI and 25+ MCP tools for prioritization, goal tracking, and multi-profile workflows.
Monarch Money
Access and manage your Monarch Money financial data and operations.
harvest-mcp-server
Harvest time tracking integration with 40+ tools for managing time entries, projects, clients, tasks, and generating time reports via the Harvest API v2
Sheet-Cello
A specialized Google Sheets integration server that allows the LLM to read, write, and manage spreadsheet data in real-time. This server supports cell-level manipulation, bulk range updates, and full worksheet retrieval, enabling the model to perform data analysis, logging, and automated reporting directly within Google Worksheets.If you have functions which take range value then first read the sheet and decide where user is asking to add data and define range by your own.Provides 46 tools for Gsheet