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TinyFish AI Web Agent

by @ai.mino

AI-powered web automation. Navigate websites using AI agents for one page or a thousand

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0 stars TypeScript Unknown Updated: 2026-01-28

Send to Your Agent

Copy this prompt and paste it into Claude, Cursor, or any MCP client to install instantly.

Install the TinyFish AI Web Agent MCP server for me.

Server: TinyFish AI Web Agent
Description: AI-powered web automation. Navigate websites using AI agents for one page or a thousand
Install command: 

GitHub: 

Please install this MCP server and confirm when ready.

Paste into any AI agent with MCP support — works with Claude Desktop, Cursor, Cline, and more.

Quick Install

Config file: ~/Library/Application Support/Claude/claude_desktop_config.json

  1. Open Claude Desktop app
  2. Go to Settings → Developer → Edit Config
  3. Paste the config below into the file
  4. Restart Claude Desktop

Add this to your ~/Library/Application Support/Claude/claude_desktop_config.json

Installation Methods

Tools (1)

execute

Execute TinyFish AI Web Agent operations

Compatibility

Claude Desktop
Cursor
Cline
VS Code
Devin (formerly Windsurf)

About

AI-powered web automation. Navigate websites using AI agents for one page or a thousand

Overview

AI-powered web automation. Navigate websites using AI agents for one page or a thousand

Tools

  • execute: Execute TinyFish AI Web Agent operations

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Compare LLM Pricing

This server works with Claude, GPT-4o, and other models. Compare API costs side-by-side to find the cheapest option for your workflow.