Multi-File Reader MCP Server

Created By
strawgatea year ago
MCP Server for reading many files at the same time
Overview

What is Multi-File Reader MCP Server?

Multi-File Reader MCP Server is a FastMCP server designed to read the content of multiple files simultaneously, providing an efficient way to handle file operations.

How to use Multi-File Reader MCP Server?

To use the Multi-File Reader, add the specified configuration to your McpServer setup and ensure the read_files tool is included in your command arguments.

Key features of Multi-File Reader MCP Server?

  • read_files Tool: Reads multiple file paths and returns their content or error messages for unreadable files.
  • Progress Reporting: Provides real-time updates on the reading process.
  • Error Handling: Manages common file-related errors such as FileNotFoundError and PermissionError.

Use cases of Multi-File Reader MCP Server?

  1. Reading configuration files in bulk for applications.
  2. Processing logs from multiple sources for analysis.
  3. Extracting data from various text files for data aggregation.

FAQ from Multi-File Reader MCP Server?

  • Can the server read any file type?

Yes, as long as the file paths are correctly specified and accessible.

  • What happens if a file cannot be read?

The server will return an error message indicating the issue, such as FileNotFoundError or PermissionError.

  • Is there a limit to the number of files that can be read at once?

The limit depends on the server's configuration and available resources.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
strawgate
Star
0
Language
Python
License
-

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