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Official PyTorch implementation of "Generate-Retrieve-Generate: A Novel Approach to Open-Domain Question Answering"

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Table of Contents

Introduction

Welcome to the repository for Generator-Retriever-Generator: A Novel Approach to Open-domain Question Answering. In this work, we present the GRG approach for tackling open-domain question answering challenges.

GRG Approach

GRG Approach Diagram

Requirements

Make sure you have the required environment set up to run the GRG project:

$ conda create -n grg
$ conda activate grg
$ pip install -r requirements.txt

In the Document Generator (DG) directory you'll encounter code designed to create documents using few-shot learning methodologies

In the Document Generator (DG) directory, you'll uncover a retriever specifically crafted for the document generator, employing sentence transformers for enhanced performance.

Will be available soon................

Will be available soon................

Citation

If you find these codes or data useful, please consider citing our paper as:

@article{abdallah2023generator,
  title={Generator-Retriever-Generator: A Novel Approach to Open-domain Question Answering},
  author={Abdallah, Abdelrahman and Jatowt, Adam},
  journal={arXiv preprint arXiv:2307.11278},
  year={2023}
}

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Official PyTorch implementation of "Generate-Retrieve-Generate: A Novel Approach to Open-Domain Question Answering"

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