Linkedin Mcp Assistant
@ertiqah
About Linkedin Mcp Assistant
No overview available yet
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"linkedin": {
"command": "npx",
"args": [
"-y",
"linkedin-mcp-runner"
],
"env": {
"LINKEDIN_MCP_API_KEY": "<YOUR_API_KEY> (fetch from ligo.ertiqah.com/integrations/claude"
}
}
}
}Tools
10Publish a text post to LinkedIn, optionally including media (images/videos) specified by URL.
Schedule a text post for LinkedIn at a specific future date and time, optionally including media (images/videos) specified by URL.
Publish a text post (tweet) to Twitter.
Ask questions about the user's LinkedIn profile, content, or network, with support for multi-turn conversations.
Generate three LinkedIn post variants from any content (article, newsletter, notes, etc.) to optimize engagement.
Retrieve the user's recent LinkedIn posts with engagement metrics.
Retrieve the user's LinkedIn profile information including headline, summary, experience, and education.
Set or update the LinkedIn profile URL to analyze. Required before using profile/posts retrieval tools if not set previously.
Force a refresh of the LinkedIn profile data to update any recent changes.
Force a refresh of LinkedIn posts data to capture recently published content.
Overview
What is Linkedin Mcp Assistant?
It is a Model Context Protocol (MCP) server that lets GPT-based assistants—such as Claude and ChatGPT—pull your public LinkedIn data (with your consent) and respond like a creative strategist. It acts as a co‑pilot trained on your actual LinkedIn content, enabling you to create posts, analyze traction, and rewrite in your own voice.
How to use Linkedin Mcp Assistant?
For Claude: download the Claude desktop app, visit ligo.ertiqah.com/integrations/claude, click “Generate Installation Command”, copy and run it in your terminal, then start chatting. For ChatGPT (CustomGPT): go to ligo.ertiqah.com/integrations/chatgpt, authenticate with LiGo, and start using the CustomGPT directly—no installation needed.
Key features of Linkedin Mcp Assistant
- Works with both Claude and ChatGPT
- Accesses your public LinkedIn data with your consent
- Analyzes which posts got the most traction
- Identifies your writing tone from past posts
- Helps create, rewrite, or brainstorm LinkedIn content
Use cases of Linkedin Mcp Assistant
- Ask your assistant to analyze your last five posts and suggest what to write next
- Rewrite a draft to sound more like your recent posts with a stronger hook
- Brainstorm new post ideas tailored to your personal voice and past content
FAQ from Linkedin Mcp Assistant
Which assistants does it work with?
It works with both Claude (via the desktop app) and ChatGPT (via a CustomGPT).
Do I need to install anything to use it?
For Claude, you need to download the desktop app and run a generated installation command in your terminal. For ChatGPT, no installation is required—just authenticate with the LiGo platform.
What data does it access?
It accesses your public LinkedIn data, and only with your explicit consent.
How do I see examples of posts made with it?
You can visit the MCP Leaderboard, which showcases the latest 50 posts made using the integration, with full text and links to the original LinkedIn posts.
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