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ModelForge: A no-code toolkit for fine-tuning HuggingFace models

Project description

ModelForge 🔧⚡

PyPI Downloads License: MIT Python 3.11 Version

Fine-tune LLMs on your laptop's GPU—no code, no PhD, no hassle.

ModelForge v2.0 is a complete architectural overhaul bringing 2x faster training, modular providers, advanced strategies, and production-ready code quality.

logo

✨ What's New in v2.0

  • 🚀 2x Faster Training with Unsloth provider
  • 🧩 Multiple Providers: HuggingFace, Unsloth (more coming!)
  • 🎯 Advanced Strategies: SFT, QLoRA, RLHF, DPO
  • 📊 Built-in Evaluation with task-specific metrics
  • 🏗️ Modular Architecture for easy extensibility
  • 🔒 Production-Ready with proper error handling and logging

See What's New in v2.0 →

🚀 Features

  • GPU-Powered Fine-Tuning: Optimized for NVIDIA GPUs (even 4GB VRAM)
  • One-Click Workflow: Upload data → Configure → Train → Test
  • Hardware-Aware: Auto-detects GPU and recommends optimal models
  • No-Code UI: Beautiful React interface, no CLI or notebooks
  • Multiple Providers: HuggingFace (standard) or Unsloth (2x faster)
  • Advanced Strategies: SFT, QLoRA, RLHF, DPO support
  • Automatic Evaluation: Built-in metrics for all tasks

📖 Supported Tasks

  • Text Generation: Chatbots, instruction following, code generation, creative writing
  • Summarization: Document condensing, article summarization, meeting notes
  • Question Answering: RAG systems, document search, FAQ bots

🎯 Quick Start

Prerequisites

  • Python 3.11.x (Python 3.12 not yet supported)
  • NVIDIA GPU with 4GB+ VRAM (6GB+ recommended)
  • CUDA installed and configured
  • HuggingFace Account with access token (Get one here)
  • Linux or Windows operating system

⚠️ macOS is NOT supported. ModelForge requires NVIDIA CUDA which is not available on macOS. Use Linux or Windows with NVIDIA GPU.

Windows Users: See Windows Installation Guide for platform-specific instructions, especially for Unsloth support.

Installation

# Install ModelForge
pip install modelforge-finetuning

# Install PyTorch with CUDA support
# Visit https://pytorch.org/get-started/locally/ for your CUDA version
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cu126

Set HuggingFace Token

Linux:

export HUGGINGFACE_TOKEN=your_token_here

Windows PowerShell:

$env:HUGGINGFACE_TOKEN="your_token_here"

Or use .env file:

echo "HUGGINGFACE_TOKEN=your_token_here" > .env

Run ModelForge

modelforge run

Open your browser to http://localhost:8000 and start training!

Full Quick Start Guide →

📚 Documentation

Getting Started

Installation

Configuration & Usage

Providers

Training Strategies

API Reference

Troubleshooting

Contributing

📖 Full Documentation Index →

🔧 Platform Support

Platform HuggingFace Provider Unsloth Provider Notes
Linux ✅ Full support ✅ Full support Recommended
Windows (Native) ✅ Full support ❌ Not supported Use WSL or Docker for Unsloth
WSL 2 ✅ Full support ✅ Full support Recommended for Windows users
Docker ✅ Full support ✅ Full support With NVIDIA runtime

Platform-Specific Installation Guides →

⚠️ Important Notes

Windows Users

Unsloth provider is NOT supported on native Windows. For 2x faster training with Unsloth:

  1. Option 1: WSL (Recommended) - WSL Installation Guide
  2. Option 2: Docker - Docker Installation Guide

The HuggingFace provider works perfectly on native Windows.

Unsloth Constraints

When using Unsloth provider, you MUST specify a fixed max_sequence_length:

{
  "provider": "unsloth",
  "max_seq_length": 2048  // ✅ Required - cannot be -1
}

Auto-inference (max_seq_length: -1) is NOT supported with Unsloth.

Learn more about Unsloth →

📂 Dataset Format

ModelForge uses JSONL format. Each task has specific fields:

Text Generation:

{"input": "What is AI?", "output": "AI stands for Artificial Intelligence..."}
{"input": "Explain ML", "output": "Machine Learning is a subset of AI..."}

Summarization:

{"input": "Long article text...", "output": "Short summary."}

Question Answering:

{"context": "Document text...", "question": "What is X?", "answer": "X is..."}

Complete Dataset Format Guide →

🤝 Contributing

We welcome contributions! ModelForge v2.0's modular architecture makes it easy to:

  • Add new providers - Just 2 files needed
  • Add new strategies - Just 2 files needed
  • Add model recommendations - Simple JSON configs
  • Improve documentation
  • Fix bugs and add features

Contributing Guide →

Adding Model Recommendations

ModelForge uses modular configuration files for model recommendations. See the Model Configuration Guide for instructions on adding new recommended models.

🛠 Tech Stack

  • Backend: Python, FastAPI, SQLAlchemy
  • Frontend: React.js
  • ML: PyTorch, Transformers, PEFT, TRL
  • Training: LoRA, QLoRA, bitsandbytes
  • Providers: HuggingFace Hub, Unsloth

Results on NVIDIA RTX 3090. Your results may vary.

📜 License

MIT License - see LICENSE file for details.

🙏 Acknowledgments

  • HuggingFace for Transformers and model hub
  • Unsloth AI for optimized training kernels
  • The open-source ML community

📧 Support


ModelForge v2.0 - Making LLM fine-tuning accessible to everyone 🚀

Get Started → | Documentation → | GitHub →

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