Weakly Supervised Text-to-SQL Parsing through Question Decomposition

Overview

Weakly Supervised Text-to-SQL Parsing through Question Decomposition

The official repository for the paper "Weakly Supervised Text-to-SQL Parsing through Question Decomposition" by Tomer Wolfson, Daniel Deutch and Jonathan Berant, accepted to the Finings of NAACL 2022.

This repository contains the code and data used in our paper:

  1. Code for automatically synthesizing SQL queries from question decompositions + answers
  2. Code for the models used in our paper mapping text-to-SQL and text-to-QDMR

Setup 🙌🏼

  1. Create the virtual environment
conda create -n [ENV_NAME] python=3.8
conda activate [ENV_NAME]
  1. Clone the repository
git clone https://github.com/tomerwolgithub/question-decomposition-to-sql
cd question-decomposition-to-sql
  1. Install the relevant requirements
pip install -r requirements.txt 
python -m spacy download en_core_web_lg
  1. To train the QDMR parser model please setup a separate environment (due to different Hugginface versions):
conda create -n qdmr_parser_env python=3.8
conda activate qdmr_parser_env
pip install -r requirements_qdmr_parser.txt 
python -m spacy download en_core_web_lg

Download Resources 🗝️

1. QDMR Parsing Datasets:

2. Text-to-SQL Datasets:

3. Databases (schema & contents):

Convert the MySQL databases of Academic, IMDB, Yelp and GeoQuery to sqlite format using the tool of Jean-Luc Lacroix:

./mysql2sqlite academic_mysql.sql | sqlite3 academic_sqlite.db

Data Generation 🔨

Our SQL synthesis is given examples of <QDMR, database, answer> and automatically generates a SQL that executes to the correct answer. The QDMR decompositions are either manually annotated or automatically predicted by a trained QDMR parser.

Begin by copying all relevant sqlite databases to the data_generation directory.

mkdir data_generation/data
mkdir data_generation/data/spider_databases # copy Spider databases here
mkdir data_generation/data/other_databases # copy Academic, IMDB, Yelp and Geo databases here
  1. The SQL synthesis expects a formatted csv file, see example. Note that the SQL query in these files is only used to compute the answer.
  2. This may take several hours, as multiple candidate SQL are being executed on their respective database.
  3. To synthesize SQL from the <QDMR, database, answer> examples run:
python data_generation/main.py \
--input_file input_qdmr_examples.csv \
--output_file qdmr_grounded_sql.csv \
--json_steps True

Synthesized Data

The SQL synthesized using QDMR + answer supervision is available for each dataset in the data/sql_synthesis_results/ directory.

  • data/sql_synthesis_results/gold_qdmr_supervision: contains SQL synthesized using gold QDMRs that are manually annotated
  • data/sql_synthesis_results/predicted_qdmr_supervision: contains SQL synthesized using QDMRs predicted by a trained parser

Models 🗂️

QDMR Parser

The QDMR parser is a T5-large sequence-to-sequence model that is finetuned to map questions to their QDMR. The model expects as input two csv files as its train and dev sets. Use the files from the downloaded Break dataset to train the parser. Make sure that you are in the relevant python environment (requirements_qdmr_parser.txt).

To train the QDMR parser configure the following parameters in train.py:

  • data_dir: the path to the directory containing the NL to QDMR datasets
  • training_set_file: name of the train set csv (e.g. break_train.csv)
  • dev_set_file: name of the dev set csv (e.g. break_dev.csv)
  • output_dir: the directory to store the trained model

After configuration, train the model as follows:

TOKENIZERS_PARALLELISM=false CUDA_VISIBLE_DEVICES=0 python src/qdmr_parser/train.py

To test a trained model and store its predictions, configure the following parameters in test.py:

  • checkpoint_path: path to the trained QDMR parser model to be evaluated
  • dev_set_file: name of the dev set csv to generate predictions for
  • predictions_output_file: the output file to store the parser's generated predictions

And run the following command:

TOKENIZERS_PARALLELISM=false CUDA_VISIBLE_DEVICES=0 python src/qdmr_parser/test.py

Text-to-SQL

The text-to-SQL models are T5-large sequence-to-sequence models, finetuned to map questions to executable SQL queries. We compare the models trained on gold SQL queries, annotated by experts, to our synthesized SQL from QDMR and answer supervision.

1. Setup directory

Setup the data for the text-to-SQL experiments as follows:

data
├── tables.json			# Spider tables.json
└── databases
│   └── academic			
│       └── academic.sqlite	# Sqlite version of the populated Academic database (see downloads)
│   └── geo			
│       └── geo.sqlite		# Sqlite version of the populated Geo database (see downloads)
│   └── imdb			
│       └── imdb.sqlite		# Sqlite version of the populated IMDB database (see downloads)
│   └── spider_databases 	# Spider databases directory
│       └── activity_1
│           └── activity_1.sqlite
│       └── ...   
│   └── yelp			
│       └── yelp.sqlite		# Sqlite version of the populated Yelp database (see downloads)
└── queries
    └── geo	# See experiments data
        ├── geo_qdmr_train.json
	└── geo_qdmr_predicted_train.json
	└── geo_gold_train.json
	└── geo_gold_dev.json
	└── geo_gold_test.json
	└── geo_gold_train.sql
	└── geo_gold_dev.sql
	└── geo_gold_test.sql
    └── spider
        ├── spider_qdmr_train.json		# See experiments data
	└── spider_qdmr_predicted_train.json 	# See experiments data
	└── spider_gold_train.json 	# Spider training set
	└── spider_gold_dev.json 	# Spider dev set
	└── spider_gold_train.sql 	# Spider training set SQL queries
	└── spider_gold_dev.sql 	# Spider dev set SQL queries

Database files are described in the downloads section. See the experiments section for the exact train and test files.

2. Train model

To train the text-to-SQL model configure its following parameters in train.py:

  • dataset: either spider or geo
  • target_encoding: sql for gold sql and either qdmr_formula or qdmr_sql for the QDMR experiments
  • data_dir: path to the directory containing the experiments data
  • output_dir: the directory to store the trained model
  • db_dir: the directory to store the trained model
  • training_set_file: training set file in the data directory e.g. spider/spider_gold_train.json
  • dev_set_file: dev set file in the data directory e.g. spider/spider_gold_dev.json
  • dev_set_sql: dev set SQL queries in the data directory e.g. spider/spider_gold_dev.sql

Following configuration, to train the model run:

CUDA_VISIBLE_DEVICES=0 python train.py 

3. Test model

To test the text-to-SQL model first configure the relevant parameters and checkpoint_path in test.py. Following the configuration, generate the trained model predictions using:

CUDA_VISIBLE_DEVICES=0 python test.py 

Experiments ⚗️

Data

Gold SQL:

For the Spider experiments we use its original train and dev json and sql files. For Geo880, Academic, IMDB and Yelp we format the original datasets in json files available here.

QDMR Synthesized SQL:

The QDMR text-to-SQL models are not trained directly on the synthesized SQL. Instead, we train on an encoded QDMR representation with its phrase-DB linking (from the SQL synthesis). This representation is automatically mapped to SQL to evaluate the models execution accuracy. To generate these grounded QDMRs we use the output of the data generation phase. The function encoded_grounded_qdmr in src/data_generation/write_encoding.py recieves the json file containing the synthesized SQL examples. It then encodes them as lisp style formulas of QDMR steps and their relevant phrase-DB linking.

For convenience, you can download the encoded QDMR training sets used in our experiments here. These include:

  • qdmr_ground_enc_spider_train.json: 5,349 examples, synthesized using gold QDMR + answer supervision
  • qdmr_ground_enc_predicted_spider_train_few_shot: 5,075 examples, synthesized examples using 700 gold QDMRs, predicted QDMR + answer supervision
  • qdmr_ground_enc_predicted_spider_train_30_db.json: 1,129 examples, synthesized using predicted QDMR + answer supervision
  • qdmr_ground_enc_predicted_spider_train_40_db.json: 1,440 examples, synthesized using predicted QDMR + answer supervision
  • qdmr_ground_enc_predicted_spider_train_40_db_V2.json: 1,552 examples, synthesized using predicted QDMR + answer supervision
  • qdmr_ground_enc_geo880_train.json: 454 examples, synthesized using gold QDMR + answer supervision
  • qdmr_ground_enc_predicted_geo_train_zero_shot.json: 432 examples, synthesized using predicted QDMR + answer supervision

Configurations

The configurations for training the text-to-SQL models on Spider. Other parameters are fixed in train.py.

SQL Gold (Spider):

{'dataset': 'spider',
'target_encoding': 'sql',
'db_dir': 'databases/spider_databases',
'training_set_file': 'queries/spider/spider_gold_train.json',
'dev_set_file': 'queries/spider/spider_gold_dev.json',
'dev_set_sql': 'queries/spider/spider_gold_dev.sql'}

QDMR Gold (Spider):

{'dataset': 'spider',
'target_encoding': 'qdmr_formula',
'db_dir': 'databases/spider_databases',
'training_set_file': 'queries/spider/spider_qdmr_train.json',
'dev_set_file': 'queries/spider/spider_gold_dev.json',
'dev_set_sql': 'queries/spider/spider_gold_dev.sql'}

SQL Predicted (Spider):

{'dataset': 'spider',
'target_encoding': 'qdmr_formula',
'db_dir': `databases/spider_databases',
'training_set_file': 'queries/spider/spider_qdmr_predicted_train.json',
'dev_set_file': 'queries/spider/spider_gold_dev.json',
'dev_set_sql': 'queries/spider/spider_gold_dev.sql'}

The configurations for training the text-to-SQL models on Geo880.

SQL Gold (Geo):

{'dataset': 'geo',
'target_encoding': 'sql',
'db_dir': 'databases',
'training_set_file': 'queries/geo/geo_gold_train.json',
'dev_set_file': 'queries/spider/geo_gold_dev.json',
'dev_set_sql': 'queries/spider/geo_gold_dev.sql'}

QDMR Gold (Geo):

{'dataset': 'geo',
'target_encoding': 'qdmr_sql',
'db_dir': 'databases',
'training_set_file': 'queries/geo/geo_qdmr_train.json',
'dev_set_file': 'queries/spider/geo_gold_dev.json',
'dev_set_sql': 'queries/spider/geo_gold_dev.sql'}

QDMR Predicted (Geo):

{'dataset': 'geo',
'target_encoding': 'qdmr_sql',
'db_dir': 'databases',
'training_set_file': 'queries/geo/geo_qdmr_predicted_train.json',
'dev_set_file': 'queries/spider/geo_gold_dev.json',
'dev_set_sql': 'queries/spider/geo_gold_dev.sql'}

Evaluation

Text-to-SQL model performance is evaluated using SQL execution accuracy in src/text_to_sql/eval_spider.py. The script automatically converts encoded QDMR predictions to SQL before executing them on the target database.

Citation ✍🏽

bibtex
@inproceedings{wolfson-etal-2022-weakly,
    title={"Weakly Supervised Text-to-SQL Parsing through Question Decomposition"},
    author={"Wolfson, Tomer and Deutch, Daniel and Berant, Jonathan"},
    booktitle = {"Findings of the Association for Computational Linguistics: NAACL 2022"},
    year={"2022"},
}

License

This repository and its data is released under the MIT license.

For the licensing of all external datasets and databases used throughout our experiments:

An efficient implementation of GPNN

Efficient-GPNN An efficient implementation of GPNN as depicted in "Drop the GAN: In Defense of Patches Nearest Neighbors as Single Image Generative Mo

7 Apr 16, 2022
Recursive Bayesian Networks

Recursive Bayesian Networks This repository contains the code to reproduce the results from the NeurIPS 2021 paper Lieck R, Rohrmeier M (2021) Recursi

Robert Lieck 11 Oct 18, 2022
Efficient and Scalable Physics-Informed Deep Learning and Scientific Machine Learning on top of Tensorflow for multi-worker distributed computing

Notice: Support for Python 3.6 will be dropped in v.0.2.1, please plan accordingly! Efficient and Scalable Physics-Informed Deep Learning Collocation-

tensordiffeq 74 Dec 09, 2022
Video Frame Interpolation without Temporal Priors (a general method for blurry video interpolation)

Video Frame Interpolation without Temporal Priors (NeurIPS2020) [Paper] [video] How to run Prerequisites NVIDIA GPU + CUDA 9.0 + CuDNN 7.6.5 Pytorch 1

YoujianZhang 31 Sep 04, 2022
Implementation of StyleSpace Analysis: Disentangled Controls for StyleGAN Image Generation in PyTorch

StyleSpace Analysis: Disentangled Controls for StyleGAN Image Generation Implementation of StyleSpace Analysis: Disentangled Controls for StyleGAN Ima

Xuanchi Ren 86 Dec 07, 2022
A Keras implementation of CapsNet in the paper: Sara Sabour, Nicholas Frosst, Geoffrey E Hinton. Dynamic Routing Between Capsules

NOTE This implementation is fork of https://github.com/XifengGuo/CapsNet-Keras , applied to IMDB texts reviews dataset. CapsNet-Keras A Keras implemen

Lauro Moraes 5 Oct 23, 2022
GPU-accelerated Image Processing library using OpenCL

pyclesperanto pyclesperanto is a python package for clEsperanto - a multi-language framework for GPU-accelerated image processing. clEsperanto uses Op

17 Dec 25, 2022
A spherical CNN for weather forecasting

DeepSphere-Weather - Deep Learning on the sphere for weather/climate applications. The code in this repository provides a scalable and flexible framew

DeepSphere 47 Dec 25, 2022
This implementation contains the application of GPlearn's symbolic transformer on a commodity futures sector of the financial market.

GPlearn_finiance_stock_futures_extension This implementation contains the application of GPlearn's symbolic transformer on a commodity futures sector

Chengwei <a href=[email protected]"> 189 Dec 25, 2022
Black-Box-Tuning - Black-Box Tuning for Language-Model-as-a-Service

Black-Box-Tuning Source code for paper "Black-Box Tuning for Language-Model-as-a

Tianxiang Sun 149 Jan 04, 2023
Deep learning library for solving differential equations and more

DeepXDE Voting on whether we should have a Slack channel for discussion. DeepXDE is a library for scientific machine learning. Use DeepXDE if you need

Lu Lu 1.4k Dec 29, 2022
Adaptive Prototype Learning and Allocation for Few-Shot Segmentation (CVPR 2021)

ASGNet The code is for the paper "Adaptive Prototype Learning and Allocation for Few-Shot Segmentation" (accepted to CVPR 2021) [arxiv] Overview data/

Gen Li 91 Dec 23, 2022
NeRF Meta-Learning with PyTorch

NeRF Meta Learning With PyTorch nerf-meta is a PyTorch re-implementation of NeRF experiments from the paper "Learned Initializations for Optimizing Co

Sanowar Raihan 78 Dec 18, 2022
[CVPR 2021] 'Searching by Generating: Flexible and Efficient One-Shot NAS with Architecture Generator'

[CVPR2021] Searching by Generating: Flexible and Efficient One-Shot NAS with Architecture Generator Overview This is the entire codebase for the paper

35 Dec 01, 2022
Code for Transformer Hawkes Process, ICML 2020.

Transformer Hawkes Process Source code for Transformer Hawkes Process (ICML 2020). Run the code Dependencies Python 3.7. Anaconda contains all the req

Simiao Zuo 111 Dec 26, 2022
TResNet: High Performance GPU-Dedicated Architecture

TResNet: High Performance GPU-Dedicated Architecture paperV2 | pretrained models Official PyTorch Implementation Tal Ridnik, Hussam Lawen, Asaf Noy, I

426 Dec 28, 2022
Gym environment for FLIPIT: The Game of "Stealthy Takeover"

gym-flipit Gym environment for FLIPIT: The Game of "Stealthy Takeover" invented by Marten van Dijk, Ari Juels, Alina Oprea, and Ronald L. Rivest. Desi

Lisa Oakley 2 Dec 15, 2021
My tensorflow implementation of "A neural conversational model", a Deep learning based chatbot

Deep Q&A Table of Contents Presentation Installation Running Chatbot Web interface Results Pretrained model Improvements Upgrade Presentation This wor

Conchylicultor 2.9k Dec 28, 2022
The repository contains reproducible PyTorch source code of our paper Generative Modeling with Optimal Transport Maps, ICLR 2022.

Generative Modeling with Optimal Transport Maps The repository contains reproducible PyTorch source code of our paper Generative Modeling with Optimal

Litu Rout 30 Dec 22, 2022
Generate images from texts. In Russian

ruDALL-E Generate images from texts pip install rudalle==1.1.0rc0 🤗 HF Models: ruDALL-E Malevich (XL) ruDALL-E Emojich (XL) (readme here) ruDALL-E S

AI Forever 1.6k Dec 31, 2022