Job Tracker AI
An AI-powered chat server for tracking job interview processes, integrated with Supabase.
Job Tracker MCP Server
A Model Context Protocol (MCP) server for tracking job interview processes using AI-powered chat interaction.
Overview
This service exposes structured tools (via MCP) that enable users to log, update, and query their ongoing job applications, interviews, contacts, and outcomes — all through natural language conversations with an LLM. Backed by Supabase for fast prototyping and persistent storage, it's designed to work seamlessly with LLMs like GPT Claude.
Features
- Structured Event Tracking
- Applications
- Interviews
- Offers
- Follow-ups
- Company & Role Management
- Company profiles
- Role details and requirements
- Data Management
- Compensation tracking
- Contact history
- Application status updates
- AI-Powered Assistance
- Context-aware Q&A
- Natural language interaction
- Intelligent insights
Design
The Job Tracker is built with a modern, scalable architecture:
Backend Infrastructure
- Supabase Backend
- PostgreSQL database for robust data storage
- Row Level Security (RLS) for data privacy
- Built-in authentication and user management
System Components
┌──────────────┐ ┌──────────────┐ ┌──────────────┐
│ LLM Chat │────>│ MCP Tools │────>│ Supabase │
│ Interface │ │ Server │ │ Backend │
└──────────────┘ └──────────────┘ └──────────────┘
- MCP Tools Layer: Exposes structured endpoints for LLM interaction
- Data Models:
- Companies
- Roles (applications)
- Interview Events
- Contacts
The system leverages Supabase's serverless architecture, eliminating the need for traditional backend maintenance while providing enterprise-grade reliability and security.
How To Use
Prerequisites
- Node.js installed on your system
- A Supabase account and project
- Your Supabase project URL and user token
Setup in Your AI Development Environment
- Add the following configuration to your AI agent's MCP servers configuration:
{
"mcpServers": {
"job-tracker": {
"command": "node",
"args": ["<path-to-job-tracker>/dist/index.js", "access-token"]
}
}
}
Replace the placeholders:
<path-to-job-tracker>: Path to the installed job-tracker-mcp directory<access-token>: Your access token
Available Commands
Once configured, you can interact with the job tracker through natural language in your AI chat. Examples:
- "Add a new company I'm applying to"
- "Log a new interview for [company]"
- "Update the status of my application at [company]"
- "Show me all my upcoming interviews"
- "List all companies I've applied to"
The AI will automatically use the appropriate MCP tools to manage your job search data.
Printing Logs
The log file is written to mcp-tool.log in your user's home directory.
To view the application's logs in real-time, you can use the following command in your terminal:
tail -f ~/.config/job-tracker-mcp/mcp-tool.log
관련 서버
Kone.vc
스폰서Monetize your AI agent with contextual product recommendations
MCP Task Orchestrator
A Kotlin MCP server for comprehensive task management, allowing AI assistants to interact with project data.
YouTube MCP
Connect AI assistants to YouTube - search, transcripts, metadata, and more.
Cal.com Calendar
Integrates with the Cal.com Calendar API for appointment scheduling.
Elasticflow.app
AI-native team workspace - tables, documents, workflow automation, live dashboards & analytics
OSHA Compliance Assistant
Check workplace safety compliance against OSHA General Industry standards (29 CFR 1910) with cited regulation sections and corrective actions.
Fathom AI
Access fathom ai api endpoints via mcp server and llm.
Hilanet MCP
Provides HR-related tools for a corporate dystopia.
Anytype MCP Server
Interact with the Anytype API using natural language.
Homelab MCP
MCP servers for managing homelab infrastructure through Claude Desktop. Monitor Docker/Podman containers, Ollama AI models, Pi-hole DNS, Unifi networks, and Ansible inventory.
Evernote
Connects your Evernote account to an LLM, enabling natural language search and queries over your notes.