jobspy-mcp-server

The JobSpy MCP Server is a Model Context Protocol server that allows AI assistants to search for jobs across multiple job listing platforms. Users can filter by search terms, location, and time frames, obtaining structured job data that can be easily processed.

GitHub Stars

3

User Rating

Not Rated

Forks

2

Issues

0

Views

7

Favorites

0

README
JobSpy MCP Server

A Model Context Protocol (MCP) server that enables AI assistants like Claude to search for jobs across multiple job listing platforms using the JobSpy tool.

Features
  • Search for jobs across multiple platforms (Indeed, LinkedIn, Glassdoor, etc.)
  • Filter by search terms, location, time frames, and more
  • Get structured job data that AI models can easily process
  • Format results as JSON or CSV
  • Multiple transport options: stdio for Claude integration, SSE for web clients
Prerequisites
  • Node.js 16+
  • Python 3.6+
  • The JobSpy tool installed and available
Installation
# Clone the repository
git clone https://github.com/yourusername/jobspy-mcp-server.git
cd jobspy-mcp-server

# Install dependencies
npm install

# Make sure the JobSpy tool is properly set up
cd ../jobSpy
pip install -r requirements.txt
chmod +x run.sh
Configuration

The server will automatically try to locate the JobSpy script in standard locations:

  • ../jobSpy/run.sh (relative to the server directory)
  • ./run.sh (in the current directory)
  • /app/run.sh (for Docker environments)
Environment Variables

You can configure the server using the following environment variables:

Environment Variable Description Default
JOBSPY_DOCKER_IMAGE Docker image to use for JobSpy jobspy
JOBSPY_ACCESS_TOKEN Access token for JobSpy API (if required) none
PORT Port for the MCP server 9423
HOST Host for HTTP server '0.0.0.0'
ENABLE_SSE Enable Server-Sent Events transport 0
Setting Up Configuration

You can set these configuration values in multiple ways:

1. Using environment variables directly
export JOBSPY_DOCKER_IMAGE=jobspy
export JOBSPY_HOST='0.0.0.0'
export JOBSPY_PORT=9423
export ENABLE_SSE=1
2. Using a .env file

Create a .env file in the root directory with your configuration:

JOBSPY_DOCKER_IMAGE=jobspy
JOBSPY_HOST='0.0.0.0'
JOBSPY_PORT=9423
ENABLE_SSE=1
Usage
Starting the server
npm start
Connecting with Claude Desktop

Add the following to your Claude Desktop config file (typically at ~/Library/Application Support/Claude/claude_desktop_config.json):

{
  "mcpServers": {
    "jobspy": {
      "command": "node",
      "args": ["/path/to/jobspy-mcp-server/src/index.js"],
      "env": {
        "ENABLE_SSE": 0
      }
    }
  }
}
Using with Web Clients (SSE Transport)

The server exposes HTTP endpoints that allow web applications to interact with the JobSpy MCP server:

  • Connect for updates: GET /mcp/connect

    • Establishes a Server-Sent Events (SSE) connection for real-time updates
    • Returns progress updates and job search results
  • Send requests: POST /mcp/request

    • Accepts tool invocation requests in MCP format
    • Returns tool responses

Example JavaScript client for browser:

// Connect to SSE endpoint
const eventSource = new EventSource('http://localhost:9423/mcp/connect');

// Listen for updates
eventSource.onmessage = function(event) {
  const data = JSON.parse(event.data);
  console.log('Received update:', data);
  
  // Handle progress updates
  if (data.type === 'progress') {
    updateProgressBar(data.progress);
  }
};

// Send a search request
async function searchJobs() {
  const response = await fetch('http://localhost:9423/mcp/request', {
    method: 'POST',
    headers: {
      'Content-Type': 'application/json'
    },
    body: JSON.stringify({
      tool: 'search_jobs',
      params: {
        search_term: 'software engineer',
        location: 'San Francisco, CA',
        site_names: 'indeed,linkedin'
      }
    })
  });
  
  return await response.json();
}
API Usage

The server exposes the following endpoints:

Search Jobs
GET /search

Query parameters:

  • site_names: Comma-separated list of job sites to search
  • search_term: Term to search for
  • location: Job location
  • And other JobSpy parameters as needed
Available Tools
search_jobs

Searches for jobs across various job listing websites.

Parameters:

Parameter Type Description Default
site_names string Comma-separated list of job sites to search (indeed,linkedin,zip_recruiter,glassdoor,google,bayt,naukri) "indeed"
search_term string Search term for jobs "software engineer"
location string Location for job search "San Francisco, CA"
google_search_term string Google specific search term null
results_wanted integer Number of results wanted 20
hours_old integer How many hours old the jobs can be 72
country_indeed string Country for Indeed search "USA"
linkedin_fetch_description boolean Whether to fetch LinkedIn job descriptions (slower) false
format string Output format (json or csv) "json"
output string Output filename without extension "jobs"

Example usage with Claude:

I need to find senior software engineer jobs in Boston posted in the last 24 hours on both LinkedIn and Indeed.
Docker Support

A Dockerfile is provided to containerize the MCP server:

# Build the Docker image
docker build -t jobspy-mcp-server .

# Run the container
docker run -p 9423:9423 jobspy-mcp-server
Development
Running in development mode
npm run dev
Running tests
npm test
curl -X POST "http://localhost:9423/api" \
  -H "Content-Type: application/json" \
  -d '{
    "method": "search_jobs",
    "params": {
      "search_term": "software engineer",
      "location": "San Francisco, CA",
      "site_names": "indeed,linkedin",
      "results_wanted": 10,
      "format": "json"
    }
  }'
License

MIT

Author Information
Victor Borg
FidelityCary, NC

7

Followers

71

Repositories

14

Gists

7

Total Contributions

Top Contributors

Threads