Linkedin Mcp Assistant

Created By
ertiqaha year ago
LiGo MCP is the first Claude + ChatGPT integration designed specifically for LinkedIn creators. It gives your AI assistant access to your actual post history - so it can analyze what’s working, suggest what to write next, rewrite in your tone, and even publish or schedule posts for you. MCP runs through a simple runner setup and supports both Claude’s desktop app and ChatGPT’s Custom GPTs. You can see it live on LiGo’s leaderboard (https://ligo.ertiqah.com/mcp-leaderboard), every post made via MCP appears there, fully attributed. Use this to: - Build a LinkedIn-native content engine - Skip prompt engineering — just talk - Generate smarter, on-brand content - Schedule posts without opening another tab Set it up once. Use it every day.
Overview

Overview

LiGo MCP turns Claude or ChatGPT into a LinkedIn-native content assistant.

It connects your AI assistant to your actual LinkedIn data — including your past posts — so it can analyze what’s working, suggest what to post next, rewrite in your tone, and even publish or schedule content directly.

No more guessing what to write. No switching tabs. No losing your voice.

Whether you're a founder, freelancer, or agency, LiGo MCP helps you build a consistent, high-quality LinkedIn presence — right from chat.

Works with:

  • Claude (via desktop runner)
  • ChatGPT (via CustomGPT)
  • Public leaderboard shows every live post

Use LiGo to create, refine, and ship LinkedIn content that sounds like you — but faster.

Server Config

{
  "mcpServers": {
    "linkedin": {
      "command": "npx",
      "args": [
        "-y",
        "linkedin-mcp-runner"
      ],
      "env": {
        "LINKEDIN_MCP_API_KEY": "<YOUR_API_KEY> (fetch from ligo.ertiqah.com/integrations/claude"
      }
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
ertiqah
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