
Model Context Protocol (MCP) Server for the RAG Web Browser Actor 🌐
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What is the Model Context Protocol (MCP) Server?
The MCP Server for the RAG Web Browser Actor is an implementation that allows AI applications to connect to external tools and data sources, enabling secure interactions between AI applications and resources.
How to use the MCP Server?
To use the MCP Server, configure it with Claude Desktop by editing the configuration file to recognize the MCP server, and then restart Claude Desktop. You can perform web searches by asking Claude to find information or analyze research papers.
Key features of the MCP Server?
- Enables web search and scraping of URLs to return cleaned content as Markdown.
- Fetches content from a single URL and returns it as Markdown.
- Supports integration with AI applications like Claude Desktop.
Use cases of the MCP Server?
- Performing web searches for information retrieval.
- Analyzing recent research papers on large language models (LLMs).
- Assisting AI agents in accessing external data sources securely.
FAQ from the MCP Server?
- What is the purpose of the MCP Server?
The MCP Server facilitates secure connections between AI applications and external resources, enhancing their capabilities.
- What are the prerequisites for using the MCP Server?
You need MacOS or Windows, Claude Desktop, Node.js (v18 or higher), and an Apify API Token.
- Can I test the MCP Server locally?
Yes, you can test the server locally using the provided example client and debugging tools.
Model Context Protocol (MCP) Server for the RAG Web Browser Actor 🌐
Implementation of an MCP server for the RAG Web Browser Actor. This Actor serves as a web browser for large language models (LLMs) and RAG pipelines, similar to a web search in ChatGPT.
🔄 What is model context protocol?
The Model Context Protocol (MCP) enables AI applications (and AI agents), such as Claude Desktop, to connect to external tools and data sources. MCP is an open protocol that enables secure, controlled interactions between AI applications, AI Agents, and local or remote resources.
🎯 What does this MCP server do?
The RAG Web Browser Actor allows an AI assistant to:
- Perform web search, scrape the top N URLs from the results, and return their cleaned content as Markdown
- Fetch a single URL and return its content as Markdown
🧱 Components
Tools
- search: Query Google Search, scrape the top N URLs from the results, and returns their cleaned content as Markdown.
- Arguments:
query
(string, required): Search term or URLmax_results
(number, optional): Maximum number of search results to scrape (default: 1)
- Arguments:
Prompts
- search: Search phrase or a URL at Google and return crawled web pages as text or Markdown
- Arguments:
query
(string, required): Search term or URLmax_results
(number, optional): Maximum number of search results to scrape (default: 1)
- Arguments:
Resources
The server does not provide any resources and prompts.
🛠️ Configuration
Prerequisites
- MacOS or Windows
- The latest version of Claude Desktop must be installed (or another MCP client)
- Node.js (v18 or higher)
- Apify API Token (
APIFY_API_TOKEN
)
Install
Claude Desktop
Configure Claude Desktop to recognize the MCP server.
-
Open your Claude Desktop configuration and edit the following file:
- On macOS:
~/Library/Application\ Support/Claude/claude_desktop_config.json
- On Windows:
%APPDATA%/Claude/claude_desktop_config.json
"mcpServers": { "mcp-server-rag-web-browser": { "command": "npx", "args": [ "/path/to/mcp-server-rag-web-browser/build/index.js", ] "env": { "APIFY-API-TOKEN": "your-apify-api-token" } } }
- On macOS:
-
Restart Claude Desktop
- Fully quit Claude Desktop (ensure it’s not just minimized or closed).
- Restart Claude Desktop.
- Look for the 🔌 icon to confirm that the Exa server is connected.
-
Examples
You can ask Claude to perform web searches, such as:
What is an MCP server and how can it be used? What is an LLM, and what are the recent news updates? Find and analyze recent research papers about LLMs.
👷🏼 Development
Local Development
If you're working on an unpublished server, you can access the local server via the following command:
"mcpServers": {
"mcp-server-rag-web-browser": {
"command": "/path/to/mcp-server-rag-web-browser/build/index.js",
}
"env": {
"APIFY-API-TOKEN": "your-apify-api-token"
}
}
Local client
To test the server locally, you can use example_client
:
node build/example_client.js
The script will start the MCP server, fetch available tools, and then call the search
tool with a query.
Debugging
Call the RAG Web Browser Actor to test it:
APIFY_API_TOKEN=your-apify-api-token node build/example_call_web_browser.js
Since MCP servers operate over standard input/output (stdio), debugging can be challenging. For the best debugging experience, use the MCP Inspector.
Build the mcp-server-rag-web-browser package:
npm run build
You can launch the MCP Inspector via npm
with this command:
npx @modelcontextprotocol/inspector node ~/apify/mcp-server-rag-web-browser/build/index.js APIFY_API_TOKEN=your-apify-api-token
Upon launching, the Inspector will display a URL that you can access in your browser to begin debugging.
