Xiaohongshu MCP Skill (with Python Client)
name: xiaohongshu-mcp
by borye · published 2026-03-22
$ claw add gh:borye/borye-xiaohongshu-mcp---
name: xiaohongshu-mcp
description: >
Automate Xiaohongshu (RedNote) content operations using a Python client for the xiaohongshu-mcp server.
Use for: (1) Publishing image, text, and video content, (2) Searching for notes and trends,
(3) Analyzing post details and comments, (4) Managing user profiles and content feeds.
Triggers: xiaohongshu automation, rednote content, publish to xiaohongshu, xiaohongshu search, social media management.
---
# Xiaohongshu MCP Skill (with Python Client)
Automate content operations on Xiaohongshu (小红书) using a bundled Python script that interacts with the `xpzouying/xiaohongshu-mcp` server (8.4k+ stars).
**Project:** [xpzouying/xiaohongshu-mcp](https://github.com/xpzouying/xiaohongshu-mcp)
1. Local Server Setup
This skill requires the `xiaohongshu-mcp` server to be running on your local machine.
Step 1: Download Binaries
Download the appropriate binaries for your system from the [GitHub Releases](https://github.com/xpzouying/xiaohongshu-mcp/releases) page.
| Platform | MCP Server | Login Tool |
| -------- | ---------- | ---------- |
| macOS (Apple Silicon) | `xiaohongshu-mcp-darwin-arm64` | `xiaohongshu-login-darwin-arm64` |
| macOS (Intel) | `xiaohongshu-mcp-darwin-amd64` | `xiaohongshu-login-darwin-amd64` |
| Windows | `xiaohongshu-mcp-windows-amd64.exe` | `xiaohongshu-login-windows-amd64.exe` |
| Linux | `xiaohongshu-mcp-linux-amd64` | `xiaohongshu-login-linux-amd64` |
Grant execute permission to the downloaded files:
chmod +x xiaohongshu-mcp-darwin-arm64 xiaohongshu-login-darwin-arm64Step 2: Login (First Time Only)
Run the login tool. It will open a browser window with a QR code. Scan it with your Xiaohongshu mobile app.
./xiaohongshu-login-darwin-arm64> **Important**: Do not log into the same Xiaohongshu account on any other web browser, as this will invalidate the server's session.
Step 3: Start the MCP Server
Run the MCP server in a separate terminal window. It will run in the background.
# Run in headless mode (recommended)
./xiaohongshu-mcp-darwin-arm64
# Or, run with a visible browser for debugging
./xiaohongshu-mcp-darwin-arm64 -headless=falseThe server will be available at `http://localhost:18060`.
2. Using the Skill
This skill includes a Python client (`scripts/xhs_client.py`) to interact with the local server. You can use it directly from the shell.
Available Commands
| Command | Description | Example |
| --- | --- | --- |
| `status` | Check login status | `python scripts/xhs_client.py status` |
| `search <keyword>` | Search for notes | `python scripts/xhs_client.py search "咖啡"` |
| `detail <id> <token>` | Get note details | `python scripts/xhs_client.py detail "note_id" "xsec_token"` |
| `feeds` | Get recommended feed | `python scripts/xhs_client.py feeds` |
| `publish <title> <content> <images>` | Publish a note | `python scripts/xhs_client.py publish "Title" "Content" "url1,url2"` |
Example Workflow: Market Research
1. **Check Status**: First, ensure the server is running and you are logged in.
```shell
python ~/clawd/skills/xiaohongshu-mcp/scripts/xhs_client.py status
```
2. **Search for a Keyword**: Find notes related to your research topic. The output will include the `feed_id` and `xsec_token` needed for the next step.
```shell
python ~/clawd/skills/xiaohongshu-mcp/scripts/xhs_client.py search "户外电源"
```
3. **Get Note Details**: Use the `feed_id` and `xsec_token` from the search results to get the full content and comments of a specific note.
```shell
python ~/clawd/skills/xiaohongshu-mcp/scripts/xhs_client.py detail "64f1a2b3c4d5e6f7a8b9c0d1" "security_token_here"
```
4. **Analyze**: Review the note's content, comments, and engagement data to gather insights.
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