2.3 KiB
ReZero: Enhancing LLM search ability by trying one-more-time
ReZero trains a small language model to develop effective search behaviors instead of memorizing static data. It interacts with multiple synthetic search engines, each with unique retrieval mechanisms, to refine queries and persist in searching until it finds exact answers. The project focuses on reinforcement learning, preventing overfitting, and optimizing for efficiency in real-world search applications.
Quick Demo | Setup | Data and Training | Models | References | Acknowledgements
Quick Demo 🚀

Run the interactive web interface to see ReZero in action:
python app.py
This will launch a Gradio interface where you can interact with the model and test different search behaviors.
Setup 🛠️
# Clone the repository
git clone https://github.com/menloresearch/ReZero
cd ReZero
# Create virtual environment
python -m venv .venv
# Activate the environment
source .venv/bin/activate
# Install dependencies
pip install --upgrade pip
pip install -e .
# Set up environment variables (required for websearch demo)
cp .env.example .env
# Edit .env and add your Tavily API key if you want to use the websearch demo
Data and Training 🧠
All necessary training data is included in the data/
folder. To train:
python train_grpo.py
If you want to regenerate the data, please run:
python scripts/generate_data.py
Models 🤖
You can find our models on Hugging Face 🤗! We're committed to open-source and easy access for the research community.
Model | Backbone | Size | Link |
---|---|---|---|
ReZero-v0.1 | Llama-3.2-3B | 3B | 🤗 Menlo/ReZero-v0.1-llama-3.2-3b-it-grpo-250404 |
References 📖
Acknowledgements 🤝
- This project is kickstarted from the source code of AutoDidact