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3.2 KiB

DeepSearch - A Hard Working Search Engine 🔍

DeepSearcher

DeepSearch 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 🚀

Run the interactive web interface to see DeepSearch in action:

python app.py

This will launch a Gradio interface where you can interact with the model and test different search behaviors.

You can also evaluate model performance:

# Using the evaluation scripts
python scripts/eval_lora.py --lora_path "/path/to/lora"
python scripts/eval_base.py

Setup 🛠️

  1. Clone the repository with submodules:
git clone --recurse-submodules [repository-url]
cd DeepSearch
  1. Set up your environment variables:
cp .env.example .env
# Edit .env to add your HuggingFace token and OpenRouter API key
  1. Install dependencies using the development setup:
make install

This installs the project in editable mode along with all dependencies specified in pyproject.toml, including:

  • transformers
  • unsloth
  • gradio
  • langchain
  • and other required packages

Data Preparation 📊

DeepSearch uses the Musique dataset for training and evaluation.

Download and prepare all data in one step

make prepare-all-musique

Step-by-step data preparation

  1. Download the Musique dataset:

    make download-musique
    
  2. Prepare the JSONL files for training:

    make prepare-musique-jsonl
    
  3. Extract paragraphs for indexing:

    make extract-musique-paragraphs
    
  4. Build the FAISS index:

    make build-musique-index
    
  5. Prepare development data:

    make prepare-dev-data
    
  6. Validate data preparation:

    make check-data
    

Training 🧠

Train the model using the GRPO (General Reinforcement Learning from Outer Preferences) approach:

python train_grpo.py

You can monitor training progress with TensorBoard:

make tensorboard

List available training runs:

make list-runs

Development 💻

Run tests

make test

Code quality and style

# Format code
make style

# Check code quality
make quality

# Auto-fix issues
make fix

Clean up

make clean

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
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Datasets 📚

We've released our datasets on Hugging Face 🤗 to support reproducibility and further research.

Dataset Description Size Link
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References 📖