LinkedIn Profile Scraper
Fetches LinkedIn profile information using the Fresh LinkedIn Profile Data API.
LinkedIn Profile Scraper MCP Server
This MCP server uses the Fresh LinkedIn Profile Data API to fetch LinkedIn profile information. It is implemented as a model context protocol (MCP) server and exposes a single tool, get_profile, which accepts a LinkedIn profile URL and returns the profile data in JSON format.
Features
- Fetch Profile Data: Retrieves LinkedIn profile information including skills and other settings (with most additional details disabled).
- Asynchronous HTTP Requests: Uses
httpxfor non-blocking API calls. - Environment-based Configuration: Reads the
RAPIDAPI_KEYfrom your environment variables usingdotenv.
Prerequisites
- Python 3.7+ – Ensure you are using Python version 3.7 or higher.
- MCP Framework: Make sure the MCP framework is installed.
- Required Libraries: Install
httpx,python-dotenv, and other dependencies. - RAPIDAPI_KEY: Obtain an API key from RapidAPI and add it to a
.envfile in your project directory (or set it in your environment).
Installation
-
Clone the Repository:
git clone https://github.com/AIAnytime/Awesome-MCP-Server cd linkedin_profile_scraper -
Install Dependencies:
uv add mcp[cli] httpx requests -
Set Up Environment Variables:
Create a
.envfile in the project directory with the following content:RAPIDAPI_KEY=your_rapidapi_key_here
Running the Server
To run the MCP server, execute:
uv run linkedin.py
The server will start and listen for incoming requests via standard I/O.
MCP Client Configuration
To connect your MCP client to this server, add the following configuration to your config.json. Adjust the paths as necessary for your environment:
{
"mcpServers": {
"linkedin_profile_scraper": {
"command": "C:/Users/aiany/.local/bin/uv",
"args": [
"--directory",
"C:/Users/aiany/OneDrive/Desktop/YT Video/linkedin-mcp/project",
"run",
"linkedin.py"
]
}
}
}
Code Overview
- Environment Setup: The server uses
dotenvto load theRAPIDAPI_KEYrequired to authenticate with the Fresh LinkedIn Profile Data API. - API Call: The asynchronous function
get_linkedin_datamakes a GET request to the API with specified query parameters. - MCP Tool: The
get_profiletool wraps the API call and returns formatted JSON data, or an error message if the call fails. - Server Execution: The MCP server is run with the
stdiotransport.
Troubleshooting
- Missing RAPIDAPI_KEY: If the key is not set, the server will raise a
ValueError. Make sure the key is added to your.envfile or set in your environment. - API Errors: If the API request fails, the tool will return a message indicating that the profile data could not be fetched.
License
This project is licensed under the MIT License. See the LICENSE file for more details.
Verwandte Server
Bright Data
SponsorDiscover, extract, and interact with the web - one interface powering automated access across the public internet.
ScrapeBadger
Access Twitter/X data including user profiles, tweets, followers, trends, lists, and communities via the ScrapeBadger API.
LinkedIn MCP
Scrape LinkedIn profiles and companies, get recommended jobs, and perform job searches.
open-sales-stack
Collection of B2B sales intelligence MCP servers. Includes website analysis, tech stack detection, hiring signals, review aggregation, ad tracking, social profiles, financial reporting and more for AI-powered prospecting
Sports MCP Server
Live sports scores and stats from NBA, NFL, and NHL
Fetch as Markdown MCP Server
Fetches web pages and converts them to clean markdown, focusing on main content extraction.
Crawl MCP
An MCP server for crawling WeChat articles. It supports single and batch crawling with multiple output formats, designed for AI tools like Cursor.
Monad MCP Magic Eden
Retrieve NFT data from the Monad testnet, including holder addresses, collection values, and top-selling collections.
Context Scraper MCP Server
A server for web crawling and content extraction using the Crawl4AI library.
URnetwork
High quality VPN and Proxy connections
Web Scout
A server for web scraping, searching, and analysis using multiple engines and APIs.