Resume-Generator-MCP-Server

1abhi6/Resume-Generator-MCP-Server

3.2

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The AI Resume Generator MCP Server is a tool designed to create professional, ATS-friendly resumes from various input sources, leveraging AI and automation for efficient resume generation.

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🧠 Resume Generator MCP Server

Generate Ready-to-Send, ATS-Friendly Resumes Instantly

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📖 Table of Contents


💡 About the Project

Resume Generator MCP Server is a powerful, AI-driven backend server that automatically generates ATS-friendly, professional resumes from any input — whether it’s a text, file, or LinkedIn profile.

It uses FastMCP for the Model Context Protocol layer and integrates OpenAI, Meta LLama, LangChain, and other cloud tools to produce high-quality Word and PDF resumes — instantly uploaded to AWS with secure download links.


✨ Features

  • 🧾 Generate resumes from raw text, existing resume, or LinkedIn profile
  • 📄 Enhance and tailor resumes for specific job descriptions
  • 🧠 Uses LLM intelligence (OpenAI + LLama) for resume optimization
  • ☁️ Cloud-powered (AWS S3, Textract, CloudConvert, Neon DB)
  • 🔒 Secure resume storage (auto-deletes after 7 days)
  • 🔁 Supports multiple templates dynamically rendered via docxtpl + Jinja2
  • ⚙️ Modular, scalable, and fully documented MCP server
  • 🌐 Deployed with CI/CD via GitHub Actions on Render & Vercel

🧱 Architecture Overview

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High-Level Flow:

  1. Choose a predefined resume template
  2. Provide your input (LinkedIn URL, text, or file)
  3. AI extracts, structures, and enhances your information
  4. MCP Server generates Word + PDF resumes
  5. You instantly receive secure download links

🧰 Tech Stack

Core Technologies

  • FastMCP
  • Python (LangChain, docxtpl, Jinja2)
  • AWS (S3, Textract, IAM)
  • PostgreSQL (Neon)
  • CloudConvert, ScrapingDog APIs
  • OpenAI + Meta LLama
  • ReactJS (Documentation & Demo UI)
  • Alembic (DB Migration)
  • Stytch Authentication
  • CI/CD with GitHub Actions + Render Deployment

⚙️ Installation

Prerequisites

Ensure you have the following installed:

  • Python 3.10+
  • PostgreSQL (Neon DB connection string)
  • AWS Account with S3, IAM, and Textract access
  • CloudConvert & ScrapingDog API keys
  • Stytch Authentication credentials
  • OpenAI and Meta API keys

Steps

# Clone the repo
git clone https://github.com/1abhi6/Resume-Generator-MCP-Server.git

# Navigate to project directory
cd Resume-Generator-MCP-Server

# uv setup
uv init
uv venv
.venv/Scripts/activate

# Install dependencies
uv sync

# Set environment variables
cp .env.example .env
# Update .env with your credentials

# Run the MCP Server
uv run main.py

We recommend using ngrok


🚀 Usage Guide

Once the server is running locally or deployed:

  1. Choose an input mode:

    • Raw text
    • Resume file (PDF/DOCX/Image)
    • LinkedIn profile URL
  2. Call the corresponding API endpoint or MCP client tool.

  3. Receive instant Word & PDF download links.

Example API usage:

POST /generate-resume
{
  "input": "I am a software engineer with 5 years of experience in Python and AI..."
}

Response:

{
  "pdf_link": "https://s3.amazonaws.com/xyz/resume.pdf",
  "docx_link": "https://s3.amazonaws.com/xyz/resume.docx"
}

🧩 MCP Tools Overview

Primary Tools

  1. Generate Resume from Raw Text
  2. Enhance Existing Resume
  3. Generate Resume based on Job Description
  4. Generate Resume from LinkedIn Profile

Utility Tools

  • Check Server Health
  • Upload Resume File
  • Check Uploaded File

Each tool returns Word + PDF download links of the generated resume.


🔒 Security & Data Handling

  • All resumes are stored in AWS S3 for 7 days only (auto-expiry).
  • Input/output guardrails prevent processing of harmful or sensitive data.
  • OAuth implemented via Stytch Authentication.
  • Secure role-based IAM policies for AWS resources.

🧭 Roadmap

  • Add more customizable templates
  • Introduce multi-language support
  • Add analytics dashboard for resume performance
  • Enable user accounts with history tracking
  • Integrate with more LLM providers

🤝 Contributing

Contributions are welcome!
Please follow these steps:

  1. Fork the repository
  2. Create your feature branch (git checkout -b feature/amazing-feature)
  3. Commit your changes (git commit -m 'Add amazing feature')
  4. Push to the branch (git push origin feature/amazing-feature)
  5. Open a Pull Request

Ensure your code follows proper linting and modular design.


🪪 License

This project is licensed under the MIT License — see the file for details.


🧑‍💻 Support

For support, questions, or feedback:


🙏 Credits

Special thanks to:

  • OpenAI & Meta for LLMs
  • AWS, Stytch, and Neon for cloud infrastructure
  • FastMCP for protocol design
  • All open-source contributors helping make this project better!

If you like this project, give it a star! It helps others find it and motivates future development.