Linkedin-Scrap-MCP-Server
@itsShashankSrivastava
About Linkedin-Scrap-MCP-Server
No overview available yet
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"Linkedin-Scrap-MCP-Server": {
"command": "uv",
"args": [
"run",
"linkedin.py"
]
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Linkedin-Scrap-MCP-Server?
Linkedin-Scrap-MCP-Server is an MCP (Model Context Protocol) server that fetches real-time LinkedIn profile information via the Fresh LinkedIn Profile Data API. It exposes a single tool, get_profile, which accepts a LinkedIn profile URL and returns structured JSON data including skills and other basic public settings. It is intended for developers who need programmatic access to LinkedIn profile data within MCP-compatible applications.
How to use Linkedin-Scrap-MCP-Server?
Clone the repository, install dependencies with uv add mcp[cli] httpx requests, and set the RAPIDAPI_KEY environment variable. Start the server with uv run linkedin.py. Configure your MCP client by adding an entry to config.json with the path to uv and the server directory.
Key features of Linkedin-Scrap-MCP-Server
- Real-time LinkedIn profile data including skills
- Asynchronous HTTP requests via httpx
- Secure API key management with dotenv
- Single
get_profiletool for easy integration - Error messages returned on API failures
Use cases of Linkedin-Scrap-MCP-Server
- Fetch real-time LinkedIn profile information for analysis
- Retrieve skills and public profile data programmatically
- Integrate LinkedIn data into MCP-based assistants or agents
- Automate profile data collection for recruitment or research
FAQ from Linkedin-Scrap-MCP-Server
What is the RAPIDAPI_KEY and how do I get it?
The RAPIDAPI_KEY is required to authenticate requests to the Fresh LinkedIn Profile Data API. You must sign up at RapidAPI, subscribe to that API, and then set the key as an environment variable.
What are the runtime dependencies?
Python 3.7+, the MCP framework, httpx, and python-dotenv are required. The server also uses uv for dependency management and execution.
What happens if the API call fails?
If the LinkedIn API request fails, the get_profile tool returns a clear error message explaining what went wrong. A missing RAPIDAPI_KEY will raise a ValueError.
What data does the get_profile tool return?
It returns structured JSON containing profile details like skills and other basic public settings. Additional extended fields are disabled by default.
More Other MCP servers

Peekaboo MCP – lightning-fast macOS screenshots for AI agents
steipetePeekaboo is a macOS CLI & optional MCP server that enables AI agents to capture screenshots of applications, or the entire system, with optional visual question answering through local or remote AI models.
Mobile Mcp
mobile-nextModel Context Protocol Server for Mobile Automation and Scraping (iOS, Android, Emulators, Simulators and Real Devices)
Production-ready MCP integrations for AI applications
Klavis-AIKlavis AI: MCP integration platforms that let AI agents use tools reliably at any scale
Inbox Zero AI MCP
elie222The world's best AI personal assistant for email. Open source app to help you reach inbox zero fast.
Awesome Mlops
visengerA curated list of references for MLOps
Comments