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license: mit | |
title: DeepRetrieval | |
emoji: π | |
colorTo: purple | |
pinned: true | |
short_description: Hacking Real Search Engines and Retrievers! | |
sdk: static | |
# DeepRetrieval | |
## Overview | |
DeepRetrieval is a novel approach that uses reinforcement learning (RL) to train Large Language Models (LLMs) for query generation without requiring supervised data. Instead of relying on expensive human-annotated or distilled reference queries, DeepRetrieval enables LLMs to learn through direct trial and error, using retrieval metrics as rewards. | |
## Key Features | |
- **No Supervision Required**: Eliminates the need for expensive human-annotated or distilled reference queries | |
- **RL-Based Framework**: Uses reinforcement learning to optimize query generation directly for retrieval performance | |
- **State-of-the-Art Performance**: Achieves remarkable results across diverse retrieval tasks | |
Please view our [GitHub page](https://github.com/pat-jj/DeepRetrieval) for instructions. | |
[DeepRetrieval Paper](https://arxiv.org/pdf/2503.00223) |