MCP Character Counter

Created By
webreactiva-devsa year ago
A lightweight Model Context Protocol (MCP) server that provides detailed character analysis for text.
Overview

What is MCP Character Counter?

MCP Character Counter is a lightweight Model Context Protocol (MCP) server designed to provide detailed character analysis for text, including counts of total characters, characters without spaces, letters, numbers, and symbols.

How to use MCP Character Counter?

To use the MCP Character Counter, you need to clone the repository, install the necessary dependencies, and configure it with either Claude Desktop or GitHub Copilot. After setup, you can analyze text character counts by sending commands to the server.

Key features of MCP Character Counter?

  • Count total characters in text
  • Count characters excluding spaces
  • Count letters (a-z, A-Z)
  • Count numbers (0-9)
  • Count symbols (non-alphanumeric characters)
  • Detailed breakdown of character types

Use cases of MCP Character Counter?

  1. Analyzing character composition in user inputs.
  2. Counting characters for text validation in applications.
  3. Providing insights into text data for developers and researchers.

FAQ from MCP Character Counter?

  • What programming language is MCP Character Counter built with?

It is built with JavaScript and requires Node.js v17 or higher.

  • Can I use it with any IDE?

Yes, it can be integrated with Claude Desktop and GitHub Copilot for various development environments.

  • Is there a license for this project?

Yes, it is licensed under the MIT License.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
webreactiva-devs
Star
0
Language
JavaScript
License
-

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