PyTorch implementation for the Neuro-Symbolic Sudoku Solver leveraging the power of Neural Logic Machines (NLM)

Overview

Neuro-Symbolic Sudoku Solver

PyTorch implementation for the Neuro-Symbolic Sudoku Solver leveraging the power of Neural Logic Machines (NLM). Please note that this is not an officially supported Google product. This project is a direct application of work done as part of original NLM project. We have applied NLM concept to solve more complex (Solving Sudoku) problems.

Star us on GitHub — it helps!

Neural Logic Machine (NLM) is a neural-symbolic architecture for both inductive learning and logic reasoning. NLMs use tensors to represent logic predicates. This is done by grounding the predicate as True or False over a fixed set of objects. Based on the tensor representation, rules are implemented as neural operators that can be applied over the premise tensors and generate conclusion tensors. Learn more about NLM from the paper.

Predicate Logic

We have used below boolean predicates as inputs to NLM architecture:

  1. isRow(r, num): Does number num present in row r inside Sudoku grid?
  2. isColumn(c, num): Does number num present in column c inside Sudoku grid?
  3. isSubMat(r, c, num): Does number num present in 3x3 sub-matrix starting with row r and column c.

Note here that isRow and isColumn are binary predicates and isSubMat is ternary predicate. We have stacked the results of isRow and isColumn and inputted as binary predicate.

The core architecture of the model contains deep reinforcement learning leveraging representation power of first order logic predicates.

Prerequisites

  • Python 3.x
  • PyTorch 0.4.0
  • Jacinle. We use the version ed90c3a for this repo.
  • Other required python packages specified by requirements.txt. See the Installation.

Installation

Clone this repository:

git clone https://github.com/ashutosh1919/neuro-symbolic-sudoku-solver.git --recursive

Install Jacinle included as a submodule. You need to add the bin path to your global PATH environment variable:

export PATH=
   
    /third_party/Jacinle/bin:$PATH

   

Create a conda environment for NLM, and install the requirements. This includes the required python packages from both Jacinle and NLM. Most of the required packages have been included in the built-in anaconda package:

conda create -n nlm anaconda
conda install pytorch torchvision -c pytorch

Usage

This repo is extension of original NLM repository. We haven't removed the codebase of problems solved in the base repository but we are only maintaining the Sudoku codebase in this repository.

Below is the file structure for the code we have added to original repository to understand things better.

The code in difflogic/envs/sudoku contains information about the environment for reinforcement learning. grid.py selects dataset randomly from 1 Million Sudoku Dataset from Kaggle. grid_env.py creates reinforcement learning environment which can perform actions.

The code in scripts/sudoku/learn_policy.py trains the model whereas scripts/sudoku/inference.py generates prediction from trained model.

We also provide pre-trained models for 3 decision-making tasks in models directory,

Taking the Sudoku task as an example.

# To train the model:
$ jac-run scripts/sudoku/learn_policy.py --task sudoku --dump-dir models

# To infer the model:
$ jac-run scripts/sudoku/inference.py --task sudoku --load-checkpoint models/checkpoints/checkpoint_10.pth

Below is the sample output that you should get after running inference.py where the program will generate a problem Sudoku grid and NLM model will solve it.

We have trained model with tuning with different parameters and we got below results.

Contributors

Thanks goes to these wonderful people (emoji key):


Ashutosh Hathidara

💻 🤔 🚧 🎨 📖 💬 🔬

pandeylalit9

💻 🤔 🎨 🚧 🔬 📖 💬

This project follows the all-contributors specification. Contributions of any kind welcome!

References

Owner
Ashutosh Hathidara
A passionate individual who always thrive to work on end to end products which develop sustainable and scalable social and technical systems to create impact.
Ashutosh Hathidara
This repo is about implementing different approaches of pose estimation and also is a sub-task of the smart hospital bed project :smile:

Pose-Estimation This repo is a sub-task of the smart hospital bed project which is about implementing the task of pose estimation 😄 Many thanks to th

Max 11 Oct 17, 2022
ACL'2021: LM-BFF: Better Few-shot Fine-tuning of Language Models

LM-BFF (Better Few-shot Fine-tuning of Language Models) This is the implementation of the paper Making Pre-trained Language Models Better Few-shot Lea

Princeton Natural Language Processing 607 Jan 07, 2023
Code repository for "Free View Synthesis", ECCV 2020.

Free View Synthesis Code repository for "Free View Synthesis", ECCV 2020. Setup Install the following Python packages in your Python environment - num

Intelligent Systems Lab Org 253 Dec 07, 2022
MogFace: Towards a Deeper Appreciation on Face Detection

MogFace: Towards a Deeper Appreciation on Face Detection Introduction In this repo, we propose a promising face detector, termed as MogFace. Our MogFa

48 Dec 20, 2022
Evaluation framework for testing segmentation networks in PyTorch

Evaluation framework for testing segmentation networks in PyTorch. What segmentation network to choose for next Kaggle competition? This benchmark knows the answer!

Eugene Khvedchenya 37 Apr 27, 2022
Neural Scene Flow Fields for Space-Time View Synthesis of Dynamic Scenes

Neural Scene Flow Fields PyTorch implementation of paper "Neural Scene Flow Fields for Space-Time View Synthesis of Dynamic Scenes", CVPR 2021 [Projec

Zhengqi Li 583 Dec 30, 2022
Pytorch0.4.1 codes for InsightFace

InsightFace_Pytorch Pytorch0.4.1 codes for InsightFace 1. Intro This repo is a reimplementation of Arcface(paper), or Insightface(github) For models,

1.5k Jan 01, 2023
Distance-Ratio-Based Formulation for Metric Learning

Distance-Ratio-Based Formulation for Metric Learning Environment Python3 Pytorch (http://pytorch.org/) (version 1.6.0+cu101) json tqdm Preparing datas

Hyeongji Kim 1 Dec 07, 2022
Radar-to-Lidar: Heterogeneous Place Recognition via Joint Learning

radar-to-lidar-place-recognition This page is the coder of a pre-print, implemented by PyTorch. If you have some questions on this project, please fee

Huan Yin 37 Oct 09, 2022
Layer 7 DDoS Panel with Cloudflare Bypass ( UAM, CAPTCHA, BFM, etc.. )

Blood Deluxe DDoS DDoS Attack Panel includes CloudFlare Bypass (UAM, CAPTCHA, BFM, etc..)(It works intermittently. Working on it) Don't attack any web

272 Nov 01, 2022
This repository compare a selfie with images from identity documents and response if the selfie match.

aws-rekognition-facecompare This repository compare a selfie with images from identity documents and response if the selfie match. This code was made

1 Jan 27, 2022
Reproducing-BowNet: Learning Representations by Predicting Bags of Visual Words

Reproducing-BowNet Our reproducibility effort based on the 2020 ML Reproducibility Challenge. We are reproducing the results of this CVPR 2020 paper:

6 Mar 16, 2022
Temporal Dynamic Convolutional Neural Network for Text-Independent Speaker Verification and Phonemetic Analysis

TDY-CNN for Text-Independent Speaker Verification Official implementation of Temporal Dynamic Convolutional Neural Network for Text-Independent Speake

Seong-Hu Kim 16 Oct 17, 2022
Certis - Certis, A High-Quality Backtesting Engine

Certis - Backtesting For y'all Certis is a powerful, lightweight, simple backtes

Yeachan-Heo 46 Oct 30, 2022
An open framework for Federated Learning.

Welcome to Intel® Open Federated Learning Federated learning is a distributed machine learning approach that enables organizations to collaborate on m

Intel Corporation 397 Dec 27, 2022
PyTorch implementations of neural network models for keyword spotting

Honk: CNNs for Keyword Spotting Honk is a PyTorch reimplementation of Google's TensorFlow convolutional neural networks for keyword spotting, which ac

Castorini 475 Dec 15, 2022
Predict Breast Cancer Wisconsin (Diagnostic) using Naive Bayes

Naive-Bayes Predict Breast Cancer Wisconsin (Diagnostic) using Naive Bayes Downloading Data Set Use our Breast Cancer Wisconsin Data Set Also you can

Faeze Habibi 0 Apr 06, 2022
Turning pixels into virtual points for multimodal 3D object detection.

Multimodal Virtual Point 3D Detection Turning pixels into virtual points for multimodal 3D object detection. Multimodal Virtual Point 3D Detection, Ti

Tianwei Yin 204 Jan 08, 2023
Feature extraction made simple with torchextractor

torchextractor: PyTorch Intermediate Feature Extraction Introduction Too many times some model definitions get remorselessly copy-pasted just because

Antoine Broyelle 89 Oct 31, 2022
git《Commonsense Knowledge Base Completion with Structural and Semantic Context》(AAAI 2020) GitHub: [fig1]

Commonsense Knowledge Base Completion with Structural and Semantic Context Code for the paper Commonsense Knowledge Base Completion with Structural an

AI2 96 Nov 05, 2022