Lark_doc

Created By
Xeonicea year ago
Overview

What is MCP Lark Doc Manage?

MCP Lark Doc Manage is a Model Context Protocol server designed for searching and accessing Lark (Feishu) documents, enabling users to retrieve and manage document content efficiently.

How to use MCP Lark Doc Manage?

To use MCP Lark Doc Manage, you need to create a Lark Enterprise Application, configure the necessary environment variables, and run the server using the provided command. Ensure you have the required permissions set up in your Lark application.

Key features of MCP Lark Doc Manage?

  • Supports access to both Lark Doc and Wiki document types.
  • Automatic document type detection and ID extraction.
  • OAuth-based user authentication with token management.
  • Comprehensive error handling and reporting.

Use cases of MCP Lark Doc Manage?

  1. Retrieving content from Lark documents for analysis.
  2. Searching for specific information within Lark Wiki documents.
  3. Managing document access and permissions in a collaborative environment.

FAQ from MCP Lark Doc Manage?

  • What types of documents can I access?

You can access both Lark Docs and Wiki documents.

  • Do I need to set up an application to use this?

Yes, you must create a Lark Enterprise Application and configure it before using the server.

  • What happens if I encounter an error?

The server provides detailed error messages to help troubleshoot issues.

Server Config

{
  "mcpServers": {
    "lark_doc": {
      "command": "/path/to/your/uvx",
      "args": [
        "mcp-lark-doc-manage"
      ],
      "env": {
        "LARK_APP_ID": "your_app_id",
        "LARK_APP_SECRET": "your_app_secret",
        "OAUTH_HOST": "localhost",
        "OAUTH_PORT": "9997",
        "FOLDER_TOKEN": "your_folder_token",
        "DEBUG": "1"
      }
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
Xeonice
Star
-
Language
-
License
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