Sparse Physics-based and Interpretable Neural Networks

Related tags

Deep LearningSPINN
Overview

Sparse Physics-based and Interpretable Neural Networks for PDEs

This repository contains the code and manuscript for research done on Sparse Physics-based and Interpretable Neural Networks for PDEs. More details are available in the following publication:

  • Amuthan A. Ramabathiran and Prabhu Ramachandran^, "SPINN: Sparse, Physics-based, and partially Interpretable Neural Networks for PDEs", Journal of Computational Physics, Volume 445, pages 110600, 2021 doi:10.1016/j.jcp.2021.110600. (^ Joint first author). arXiv:2102.13037.

Installation

Running the code in this repository requires a few pre-requisites to be set up. The Python packages required are in the requirements.txt. Here are some instructions to help you set these up:

  1. Setup a suitable Python distribution, using conda or a virtualenv.

  2. Clone this repository:

    $ git clone https://github.com/nn4pde/SPINN.git
    $ cd SPINN
  1. If you use conda, run the following from your Python environment:
    $ conda env create -f environment.yml
    $ conda activate spinn
  1. If you use a virtualenv or some other Python distribution and wish to use pip:
    $ pip install -r requirements.txt

Once you install the packages you should hopefully be able to run the examples. The examples all support live-plotting of the results. Matplotlib is required for the live plotting of any of the 1D problems and Mayavi is needed for any 2D/3D problems. These are already specified in the requirements.txt and environments.yml files.

Running the code

All the problems discussed in the paper are available in the code subdirectory. The supplementary text in the paper discusses the design of the code at a very high level. You can run any of the problems as follows:

  $ cd code
  $ python ode3.py -h

And this will provide a variety of help options that you can use. You can see the results live by doing:

  $ python ode3.py --plot

These require matlplotlib.

The 2D problems also feature live plotting with Mayavi if it is installed, for example:

  $ python advection1d.py --plot

You should see the solution as well as the computational nodes. Where applicable you can see an exact solution as a wireframe.

If you have a GPU and it is configured to work with PyTorch, you can use it like so:

  $ python poisson2d_irreg_dom.py --gpu

Generating the results

All the results shown in the paper are automated using the automan package which should already be installed as part of the above installation. This will perform all the required simulations (this can take a while) and also generate all the plots for the manuscript.

To learn how to use the automation, do this:

    $ python automate.py -h

By default the simulation outputs are in the outputs directory and the final plots for the paper are in manuscript/figures.

To generate all the figures in one go, run the following (this will take a while):

    $ python automate.py

If you wish to only run a particular set of problems and see those results you can do the following:

   $ python automate.py PROBLEM

where PROBLEM can be any of the demonstrated problems. For example:

  $ python automate.py ode1 heat cavity

Will only run those three problems. Please see the help output (-h) and look at the code for more details.

By default we do not need to use a GPU for the automation but if you have one, you can edit the automate.py and set USE_GPU = True to make use of your GPU where possible.

Building the paper

Once you have generated all the figures from the automation you can easily compile the manuscript. The manuscript is written with LaTeX and if you have that installed you may do the following:

$ cd manuscript
$ latexmk spinn_manuscript.tex -pdf
PSTR: End-to-End One-Step Person Search With Transformers (CVPR2022)

PSTR (CVPR2022) This code is an official implementation of "PSTR: End-to-End One-Step Person Search With Transformers (CVPR2022)". End-to-end one-step

Jiale Cao 28 Dec 13, 2022
Graph Robustness Benchmark: A scalable, unified, modular, and reproducible benchmark for evaluating the adversarial robustness of Graph Machine Learning.

Homepage | Paper | Datasets | Leaderboard | Documentation Graph Robustness Benchmark (GRB) provides scalable, unified, modular, and reproducible evalu

THUDM 66 Dec 22, 2022
A `Neural = Symbolic` framework for sound and complete weighted real-value logic

Logical Neural Networks LNNs are a novel Neuro = symbolic framework designed to seamlessly provide key properties of both neural nets (learning) and s

International Business Machines 138 Dec 19, 2022
Pytorch codes for "Self-supervised Multi-view Stereo via Effective Co-Segmentation and Data-Augmentation"

Self-Supervised-MVS This repository is the official PyTorch implementation of our AAAI 2021 paper: "Self-supervised Multi-view Stereo via Effective Co

hongbin_xu 127 Jan 04, 2023
Gradient Inversion with Generative Image Prior

Gradient Inversion with Generative Image Prior This repository is an implementation of "Gradient Inversion with Generative Image Prior", accepted to N

MLLab @ Postech 25 Jan 09, 2023
Code release of paper "Deep Multi-View Stereo gone wild"

Deep MVS gone wild Pytorch implementation of "Deep MVS gone wild" (Paper | website) This repository provides the code to reproduce the experiments of

François Darmon 53 Dec 24, 2022
SymPy-powered, Wolfram|Alpha-like answer engine totally in your browser, without backend computation

SymPy Beta SymPy Beta is a fork of SymPy Gamma. The purpose of this project is to run a SymPy-powered, Wolfram|Alpha-like answer engine totally in you

Liumeo 25 Dec 21, 2022
Revisiting, benchmarking, and refining Heterogeneous Graph Neural Networks.

Heterogeneous Graph Benchmark Revisiting, benchmarking, and refining Heterogeneous Graph Neural Networks. Roadmap We organize our repo by task, and on

THUDM 176 Dec 17, 2022
Hands-On Machine Learning for Algorithmic Trading, published by Packt

Hands-On Machine Learning for Algorithmic Trading Hands-On Machine Learning for Algorithmic Trading, published by Packt This is the code repository fo

Packt 981 Dec 29, 2022
Fbone (Flask bone) is a Flask (Python microframework) starter/template/bootstrap/boilerplate application.

Fbone (Flask bone) is a Flask (Python microframework) starter/template/bootstrap/boilerplate application.

Wilson 1.7k Dec 30, 2022
Answer a series of contextually-dependent questions like they may occur in natural human-to-human conversations.

SCAI-QReCC-21 [leaderboards] [registration] [forum] [contact] [SCAI] Answer a series of contextually-dependent questions like they may occur in natura

19 Sep 28, 2022
Styleformer - Official Pytorch Implementation

Styleformer -- Official PyTorch implementation Styleformer: Transformer based Generative Adversarial Networks with Style Vector(https://arxiv.org/abs/

Jeeseung Park 159 Dec 12, 2022
MediaPipe Kullanarak İleri Seviye Bilgisayarla Görü

MediaPipe Kullanarak İleri Seviye Bilgisayarla Görü

Burak Bagatarhan 12 Mar 29, 2022
Channel Pruning for Accelerating Very Deep Neural Networks (ICCV'17)

Channel Pruning for Accelerating Very Deep Neural Networks (ICCV'17)

Yihui He 1k Jan 03, 2023
Extracting and filtering paraphrases by bridging natural language inference and paraphrasing

nli2paraphrases Source code repository accompanying the preprint Extracting and filtering paraphrases by bridging natural language inference and parap

Matej Klemen 1 Mar 09, 2022
Latent Execution for Neural Program Synthesis

Latent Execution for Neural Program Synthesis This repo provides the code to replicate the experiments in the paper Xinyun Chen, Dawn Song, Yuandong T

Xinyun Chen 16 Oct 02, 2022
FrankMocap: A Strong and Easy-to-use Single View 3D Hand+Body Pose Estimator

FrankMocap pursues an easy-to-use single view 3D motion capture system developed by Facebook AI Research (FAIR). FrankMocap provides state-of-the-art 3D pose estimation outputs for body, hand, and bo

Facebook Research 1.9k Jan 07, 2023
Automatic deep learning for image classification.

AutoDL AutoDL automates machine learning tasks enabling you to easily achieve strong predictive performance in your applications. With just a few line

wenqi 2 Oct 12, 2022
PyBrain - Another Python Machine Learning Library.

PyBrain -- the Python Machine Learning Library =============================================== INSTALLATION ------------ Quick answer: make sure you

2.8k Dec 31, 2022
Pre-trained NFNets with 99% of the accuracy of the official paper

NFNet Pytorch Implementation This repo contains pretrained NFNet models F0-F6 with high ImageNet accuracy from the paper High-Performance Large-Scale

Benjamin Schmidt 133 Dec 09, 2022