mcp-linkedin
mcp-linkedin
An MCP server that lets AI assistants publish to LinkedIn on your behalf.
What it does
This is a Model Context Protocol (MCP) server that wraps the Unipile API to give AI assistants (Claude Code, Claude Desktop, or any MCP-compatible client) the ability to create posts, comments, and reactions on LinkedIn. The AI writes the content; this tool handles the publishing. All publishing actions default to preview mode — nothing goes live without explicit confirmation.
Features
3 tools: publish, comment, react
Dry run by default (preview before publishing)
Auto-likes posts immediately after publishing
Media attachments (local files or URLs — images and video)
Company @mentions (auto-resolved via Unipile)
Works with Claude Code, Claude Desktop, and any MCP client
Prerequisites
Node.js 18+ — uses ES modules,
node:test, and top-level awaitUnipile account — Unipile is the service that connects to LinkedIn's API. Sign up, connect your LinkedIn account, and get your API key and DSN from the dashboard.
Installation
git clone https://github.com/timkulbaev/mcp-linkedin.git
cd mcp-linkedin
npm installConfiguration
Claude Code
Add to ~/.claude/mcp.json:
{
"mcpServers": {
"linkedin": {
"command": "node",
"args": ["/absolute/path/to/mcp-linkedin/index.js"],
"env": {
"UNIPILE_API_KEY": "your-unipile-api-key",
"UNIPILE_DSN": "apiXX.unipile.com:XXXXX"
}
}
}
}Claude Desktop
Add to ~/Library/Application Support/Claude/claude_desktop_config.json (macOS):
{
"mcpServers": {
"linkedin": {
"command": "node",
"args": ["/absolute/path/to/mcp-linkedin/index.js"],
"env": {
"UNIPILE_API_KEY": "your-unipile-api-key",
"UNIPILE_DSN": "apiXX.unipile.com:XXXXX"
}
}
}
}Restart Claude Code or Claude Desktop after editing the config.
Environment variables
Variable | Required | Description |
| Yes | Your Unipile API key (from the Unipile dashboard) |
| Yes | Your Unipile DSN (e.g. |
These are passed via the MCP config, not a .env file. The server reads them from process.env at startup.
Tools
linkedin_publish
Creates an original LinkedIn post.
dry_run defaults to true. Call with dry_run: true first to get a preview, then call again with dry_run: false to actually publish.
Parameter | Type | Required | Default | Description |
| string | yes | — | Post body, max 3000 characters |
| string[] | no |
| Local file paths or URLs (jpg, png, gif, webp, mp4) |
| string[] | no |
| Company names to @mention (auto-resolved) |
| boolean | no |
| Preview without publishing |
Preview response (dry_run: true):
{
"status": "preview",
"post_text": "Hello LinkedIn!",
"character_count": 16,
"character_limit": 3000,
"media": [],
"mentions": [],
"warnings": [],
"ready_to_publish": true
}Publish response (dry_run: false):
{
"status": "published",
"post_id": "7437514186450104320",
"post_text": "Hello LinkedIn!",
"posted_at": "2026-03-11T15:06:04.849Z",
"auto_like": "liked"
}After publish, save the post_id and construct the post URL:
https://www.linkedin.com/feed/update/urn:li:activity:{post_id}/linkedin_comment
Posts a comment on an existing LinkedIn post.
dry_run defaults to true.
Parameter | Type | Required | Default | Description |
| string | yes | — | LinkedIn post URL or raw URN (urn:li:activity:... or urn:li:ugcPost:...) |
| string | yes | — | Comment text |
| boolean | no |
| Preview without posting |
linkedin_react
Reacts to a LinkedIn post. This action is immediate — there is no dry_run.
Parameter | Type | Required | Default | Description |
| string | yes | — | LinkedIn post URL or raw URN |
| string | no |
| One of: |
How it works
┌──────────────────────────────────┐
│ mcp-linkedin │
AI Assistant ──► │ │
(via MCP stdio) │ Posts/Comments/Reactions ──► Unipile API ──► LinkedIn
└──────────────────────────────────┘The AI assistant calls tools via MCP's JSON-RPC protocol over stdio
Calls Unipile API which handles LinkedIn OAuth — no token management needed
Safe publishing workflow
The dry_run default exists to prevent accidental publishing. The intended flow:
AI calls the tool with
dry_run: true(the default)You see the preview: final text, character count, media validation, resolved mentions, warnings
You confirm or ask for changes
AI calls again with
dry_run: falsePost goes live
dry_run is true by default. The AI cannot publish without explicitly setting it to false, which requires going through the preview step first.
Media handling
Pass local file paths (
/path/to/image.jpg) or URLs (https://example.com/img.png)URLs are downloaded to
/tmp/mcp-linkedin-media/and cleaned up after publish (whether it succeeds or fails)Supported formats: jpg, jpeg, png, gif, webp (images), mp4 (video)
Each file is validated before upload: must exist, be non-empty, and be a supported type
Failed files appear in the preview's
mediaarray with"valid": falseand an error message
Company @mentions
Pass company names as strings:
mentions: ["Microsoft", "OpenAI"]The server slugifies each name and looks it up via Unipile's LinkedIn company search
Resolved companies are injected as
{{0}},{{1}}placeholders in the post text — LinkedIn renders these as clickable @mentionsIf a company name appears in the post text, it gets replaced in place; if not, the placeholder is appended
Unresolved names appear as warnings in the preview. The post can still be published without them.
Testing
npm test # 28 unit tests, zero extra dependencies (Node.js built-in test runner)
npm run lint # Biome linterProject structure
mcp-linkedin/
index.js Entry point (stdio transport)
package.json
src/
server.js MCP server and tool registration
unipile-client.js Unipile API wrapper (posts, comments, reactions)
media-handler.js URL download and file validation
tools/
publish.js linkedin_publish handler
comment.js linkedin_comment handler
react.js linkedin_react handler
tests/
unit.test.js 28 unit testsGetting a Unipile account
Sign up for a Unipile account
In the dashboard, connect your LinkedIn account
Copy your API key and DSN from the dashboard settings
Paste them into the MCP config (see Configuration above)
Unipile has a free tier that covers basic usage.
License
MIT — see LICENSE.
Credits
Built by Timur Kulbaev. Uses the Model Context Protocol by Anthropic and the Unipile API.
Latest Blog Posts
MCP directory API
We provide all the information about MCP servers via our MCP API.
curl -X GET 'https://glama.ai/api/mcp/v1/servers/timkulbaev/mcp-linkedin'
If you have feedback or need assistance with the MCP directory API, please join our Discord server