Findymail MCP Server

0
0 Reviews
0 Stars
Findymail MCP Server provides email validation and email-finding capabilities by connecting with the Findymail API. It allows users to verify if an email is deliverable, and to find work emails using personal details or profile URLs such as LinkedIn. It's designed for integration into larger systems to enhance email accuracy and outreach effectiveness.
Added on:
Created by:
Apr 23 2025
Findymail MCP Server

Findymail MCP Server

0 Reviews
0
0
Findymail MCP Server
Findymail MCP Server provides email validation and email-finding capabilities by connecting with the Findymail API. It allows users to verify if an email is deliverable, and to find work emails using personal details or profile URLs such as LinkedIn. It's designed for integration into larger systems to enhance email accuracy and outreach effectiveness.
Added on:
Created by:
Apr 23 2025
Meerkats Ai
Featured

What is Findymail MCP Server?

This MCP server offers robust email validation and discovery functions by utilizing the Findymail API. It can verify the validity and deliverability of email addresses, ensuring reliable communication. Additionally, it enables users to find professional work emails for individuals by inputting their names, company details, or profile URLs. Suitable for CRM, marketing, and recruitment applications, it helps improve outreach accuracy and increases the chances of successful communication. The system can be easily set up using local or Docker configurations, and integrated into various environments via specified MCP settings.

Who will use Findymail MCP Server?

  • CRM system developers
  • Marketing automation teams
  • Recruitment agencies
  • Sales professionals
  • Data enrichment services

How to use the Findymail MCP Server?

  • Step 1: Clone the repository or obtain the MCP server files.
  • Step 2: Install dependencies using 'npm install'.
  • Step 3: Configure environment variables with your Findymail API key.
  • Step 4: Build the server with 'npm run build'.
  • Step 5: Run the server locally with 'npm start' or deploy via Docker using 'docker-compose up -d'.
  • Step 6: Add MCP configuration to your system, specifying command, environment, and auto-approve settings.
  • Step 7: Use the available tools to validate emails or find work emails by providing relevant input data.

Findymail MCP Server's Core Features & Benefits

The Core Features
  • validate_email
  • find_work_email
  • find_work_email_from_profile
The Benefits
  • Improves email outreach accuracy
  • Reduces bounce rates
  • Enriches contact data with verified emails
  • Seamless integration into existing systems
  • Supports multiple input methods for finding emails

Findymail MCP Server's Main Use Cases & Applications

  • Email validation for marketing campaigns
  • Finding professional emails for recruitment outreach
  • Enriching CRM contacts with verified email addresses
  • Automating email verification in lead generation processes

FAQs of Findymail MCP Server

Developer

  • Meerkats-Ai

You may also like:

Developer Tools

A desktop application for managing server and client interactions with comprehensive functionalities.
A Model Context Protocol server for Eagle that manages data exchange between Eagle app and data sources.
A chat-based client that integrates and uses various MCP tools directly within a chat environment for enhanced productivity.
A Docker image hosting multiple MCP servers accessible through a unified entry point with supergateway integration.
Provides access to YNAB account balances, transactions, and transaction creation through MCP protocol.
A fast, scalable MCP server for managing real-time multi-client Zerodha trading operations.
A remote SSH client facilitating secure, proxy-based access to MCP servers for remote tool utilization.
A Spring-based MCP server integrating AI capabilities for managing and processing Minecraft mod communication protocols.
A minimalistic MCP client with essential chat features, supporting multiple models and contextual interactions.
A secure MCP server enabling AI agents to interact with Authenticator App for 2FA codes and passwords.

Research And Data

A server implementation supporting Model Context Protocol, integrating CRIC's industrial AI capabilities.
Provides real-time traffic, air quality, weather, and bike-sharing data for Valencia city in a unified platform.
A React application demonstrating integration with Supabase via MCP tools and Tambo for UI component registration.
A MCP client integrating Brave Search API for web searches, utilizing MCP protocol for efficient communication.
A protocol server enabling seamless communication between Umbraco CMS and external applications.
NOL integrates LangChain and Open Router to create a multi-client MCP server using Next.js
Connects LLMs to Firebolt Data Warehouse for autonomous querying, data access, and insight generation.
A client framework for connecting AI agents to MCP servers, enabling tool discovery and integration.
Spring Link facilitates linking and managing multiple Spring Boot applications efficiently within a unified environment.
An open-source client to interact with multiple MCP servers, enabling seamless tool access for Claude.

Communication

A server that leverages AI and WhatsApp API to enhance messaging capabilities and automation.
A server integrating LINE Messaging API to connect AI Agents with LINE Official Accounts, enabling message exchange and user profile retrieval.
A server that manages airtime top-ups and transactions using Africa's Talking API for multiple African countries.
A server implementation for MCP with HTTP interface, providing core communication functionalities.
A Python-based client facilitating communication between various components via messaging protocols.
A protocol to enable AI-driven operations and integrations within Chatwork via customizable MCP configurations.
A Python-based MCP that integrates a Gemini client with an MCP server to facilitate communication and data exchange.
Enables DingTalk integration by implementing MCP for communication, data exchange, and automation within DingTalk ecosystem.
A customized MCP client designed for study, based on dolphin-mcp, supporting resource management and communication.
A Python-based MCP server managing remote procedure calls and server-client communication for modular applications.