🌐 MCP Agents

Created By
CodeWithHarshAIa year ago
MCP Agents is an AI-powered browser automation tool that lets you interact with websites using natural language. Built with Streamlit, OpenAI, and Puppeteer via the Model Context Protocol (MCP), it supports multi-step navigation, interaction, and content extraction—all with simple text commands.
Overview

What is MCP Agents?

MCP Agents is an AI-powered browser automation tool that allows users to interact with websites using natural language commands. It is built with Streamlit, OpenAI, and Puppeteer via the Model Context Protocol (MCP).

How to use MCP Agents?

To use MCP Agents, clone the repository, install the required dependencies, and run the Streamlit application. You can then type commands like 'Go to Wikipedia and search for Mars' to navigate and interact with web pages.

Key features of MCP Agents?

  • Talk to the web using simple English commands
  • Visual automation capabilities like taking screenshots and clicking elements
  • Flexible agent system powered by the modular MCP framework
  • Secure integration with API keys stored safely
  • Fully interactive user interface to see command results directly

Use cases of MCP Agents?

  1. Product scraping and news summarization
  2. Educational bots that guide users through websites
  3. Daily content extraction from dynamic web pages

FAQ from MCP Agents?

  • Can I use MCP Agents for any website?

Yes, MCP Agents can interact with most websites as long as they are accessible.

  • Is there a cost to use MCP Agents?

MCP Agents is open-source and free to use.

  • What are the system requirements?

You need Python 3.8 or newer, Node.js, and an OpenAI API key.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
CodeWithHarshAI
Star
0
Language
Python
License
MIT license

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