Constructing Neural Network-Based Models for Simulating Dynamical Systems

Overview

Constructing Neural Network-Based Models for Simulating Dynamical Systems

Note this repo is work in progress prior to reviewing

This is a companion repo for the review paper Constructing Neural Network-Based Models for Simulating Dynamical Systems. The goal is to provide PyTorch implementations that can be used as a starting point for implementation for other applications.

If you use the work please cite it using:

{
    TODO add bibtex key
}

Installing dependencies

python3 -m pip install -r requirements.txt

Where are the models located?

The table below contains the commands necessary to train and evaluate the models described in the review paper. Each experiment can be run using default parameters by executing the script in the python interpreter as follows:

python3 experiments/
   
    .py ...

   
Name Section Command
Vanilla Direct-Solution 3.2 python3 experiments/direct_solution.py --model vanilla
Automatic Differentiation in Direct-Solution 3.3 python3 experiments/direct_solution.py --model autodiff
Physics Informed Neural Networks 3.4 python3 experiments/direct_solution.py --model pinn
Hidden Physics Networks 3.5 python3 experiments/direct_solution.py --model hnn
Direct Time-Stepper 4.2.1 python3 experiments/time_stepper.py --solver direct
Residual Time-Stepper 4.2.2 python3 experiments/time_stepper.py --solver resnet
Euler Time-Stepper 4.2.3 python3 experiments/time_stepper.py --solver euler
Neural ODEs Time-Stepper 4.2.4 python3 experiments/time_stepper.py --solver {rk4,dopri5,tsit5}
Neural State-Space Model 4.3.1 ...
Neural ODEs with input 4.3.2-3 ...
Lagrangian Time-Stepper 4.4.1 ...
Hamiltonian Time-Stepper 4.4.1 ...
Deep Potential Time-Stepper 4.4.2 ...
Deep Markov-Model 4.5.1 ...
Latent Neural ODEs 4.5.2 python3 experiments/latent_neural_odes.py
Bayesian Neural ODEs 4.5.3 ...
Neural SDEs 4.5.4 ...

Docker Image

In an effort to ensure that the code can be executed in the future, we provide a docker image. The Docker image allows the code to be run in a Linux based virtual machine on any platform supported by Docker.

To use the docker image, invoke the build command in the root of this repository:

docker build . -t python_dynamical_systems

Following this "containers" containing the code and all dependencies can be instantiated via the "run" command:

docker run -ti python_dynamical_systems bash

The command will establish an interactive connection to the container. Following this you can execute the code as if it was running on your host machine:

python3 experiments/time_stepper.py ...
Owner
Christian Møldrup Legaard
Christian Møldrup Legaard
PyTorch implementation of D2C: Diffuison-Decoding Models for Few-shot Conditional Generation.

D2C: Diffuison-Decoding Models for Few-shot Conditional Generation Project | Paper PyTorch implementation of D2C: Diffuison-Decoding Models for Few-sh

Jiaming Song 90 Dec 27, 2022
🛰️ Awesome Satellite Imagery Datasets

Awesome Satellite Imagery Datasets List of aerial and satellite imagery datasets with annotations for computer vision and deep learning. Newest datase

Christoph Rieke 3k Jan 03, 2023
Code base for "On-the-Fly Test-time Adaptation for Medical Image Segmentation"

On-the-Fly Adaptation Official Pytorch Code base for On-the-Fly Test-time Adaptation for Medical Image Segmentation Paper Introduction One major probl

Jeya Maria Jose 17 Nov 10, 2022
The PASS dataset: pretrained models and how to get the data - PASS: Pictures without humAns for Self-Supervised Pretraining

The PASS dataset: pretrained models and how to get the data - PASS: Pictures without humAns for Self-Supervised Pretraining

Yuki M. Asano 249 Dec 22, 2022
Unofficial Implementation of RobustSTL: A Robust Seasonal-Trend Decomposition Algorithm for Long Time Series (AAAI 2019)

RobustSTL: A Robust Seasonal-Trend Decomposition Algorithm for Long Time Series (AAAI 2019) This repository contains python (3.5.2) implementation of

Doyup Lee 222 Dec 21, 2022
Official implementation for paper: A Latent Transformer for Disentangled Face Editing in Images and Videos.

A Latent Transformer for Disentangled Face Editing in Images and Videos Official implementation for paper: A Latent Transformer for Disentangled Face

InterDigital 108 Dec 09, 2022
Code Release for Learning to Adapt to Evolving Domains

EAML Code release for "Learning to Adapt to Evolving Domains" (NeurIPS 2020) Prerequisites PyTorch = 0.4.0 (with suitable CUDA and CuDNN version) tor

23 Dec 07, 2022
This repository contains Prior-RObust Bayesian Optimization (PROBO) as introduced in our paper "Accounting for Gaussian Process Imprecision in Bayesian Optimization"

Prior-RObust Bayesian Optimization (PROBO) Introduction, TOC This repository contains Prior-RObust Bayesian Optimization (PROBO) as introduced in our

Julian Rodemann 2 Mar 19, 2022
[ICLR 2021] Rank the Episodes: A Simple Approach for Exploration in Procedurally-Generated Environments.

[ICLR 2021] RAPID: A Simple Approach for Exploration in Reinforcement Learning This is the Tensorflow implementation of ICLR 2021 paper Rank the Episo

Daochen Zha 48 Nov 21, 2022
Tutorial on active learning with the Nvidia Transfer Learning Toolkit (TLT).

Active Learning with the Nvidia TLT Tutorial on active learning with the Nvidia Transfer Learning Toolkit (TLT). In this tutorial, we will show you ho

Lightly 25 Dec 03, 2022
Implementation of ReSeg using PyTorch

Implementation of ReSeg using PyTorch ReSeg: A Recurrent Neural Network-based Model for Semantic Segmentation Pascal-Part Annotations Pascal VOC 2010

Onur Kaplan 46 Nov 23, 2022
Codes for "Solving Long-tailed Recognition with Deep Realistic Taxonomic Classifier"

Deep-RTC [project page] This repository contains the source code accompanying our ECCV 2020 paper. Solving Long-tailed Recognition with Deep Realistic

Gina Wu 16 May 26, 2022
Official code of the paper "Expanding Low-Density Latent Regions for Open-Set Object Detection" (CVPR 2022)

OpenDet Expanding Low-Density Latent Regions for Open-Set Object Detection (CVPR2022) Jiaming Han, Yuqiang Ren, Jian Ding, Xingjia Pan, Ke Yan, Gui-So

csuhan 64 Jan 07, 2023
torchsummaryDynamic: support real FLOPs calculation of dynamic network or user-custom PyTorch ops

torchsummaryDynamic Improved tool of torchsummaryX. torchsummaryDynamic support real FLOPs calculation of dynamic network or user-custom PyTorch ops.

Bohong Chen 1 Jan 07, 2022
Решения, подсказки, тесты и утилиты для тренировки по алгоритмам от Яндекса.

Решения и подсказки к тренировке по алгоритмам от Яндекса Что есть внутри Решения с подсказками и комментариями; рекомендую сначала смотреть md файл п

Yankovsky Andrey 50 Dec 26, 2022
PyTorch Implementation of NCSOFT's FastPitchFormant: Source-filter based Decomposed Modeling for Speech Synthesis

FastPitchFormant - PyTorch Implementation PyTorch Implementation of FastPitchFormant: Source-filter based Decomposed Modeling for Speech Synthesis. Qu

Keon Lee 63 Jan 02, 2023
a morph transfer UGATIT for image translation.

Morph-UGATIT a morph transfer UGATIT for image translation. Introduction 中文技术文档 This is Pytorch implementation of UGATIT, paper "U-GAT-IT: Unsupervise

55 Nov 14, 2022
DvD-TD3: Diversity via Determinants for TD3 version

DvD-TD3: Diversity via Determinants for TD3 version The implementation of paper Effective Diversity in Population Based Reinforcement Learning. Instal

3 Feb 11, 2022
Malware Bypass Research using Reinforcement Learning

Malware Bypass Research using Reinforcement Learning

Bobby Filar 76 Dec 26, 2022
PyTorch code of paper "LiVLR: A Lightweight Visual-Linguistic Reasoning Framework for Video Question Answering"

LiVLR-VideoQA We propose a Lightweight Visual-Linguistic Reasoning framework (LiVLR) for VideoQA. The overview of LiVLR: Evaluation on MSRVTT-QA Datas

JJ Jiang 7 Dec 30, 2022