Experiments for Neural Flows paper

Overview

Neural Flows: Efficient Alternative to Neural ODEs [arxiv]

TL;DR: We directly model the neural ODE solutions with neural flows, which is much faster and achieves better results on time series applications, since it avoids using expensive numerical solvers.

image

Marin Biloš, Johanna Sommer, Syama Sundar Rangapuram, Tim Januschowski, Stephan Günnemann

Abstract: Neural ordinary differential equations describe how values change in time. This is the reason why they gained importance in modeling sequential data, especially when the observations are made at irregular intervals. In this paper we propose an alternative by directly modeling the solution curves - the flow of an ODE - with a neural network. This immediately eliminates the need for expensive numerical solvers while still maintaining the modeling capability of neural ODEs. We propose several flow architectures suitable for different applications by establishing precise conditions on when a function defines a valid flow. Apart from computational efficiency, we also provide empirical evidence of favorable generalization performance via applications in time series modeling, forecasting, and density estimation.

This repository acts as a supplementary material which implements the models and experiments as described in the main paper. The definition of models relies on the stribor package for normalizing and neural flows. The baselines use torchdiffeq package for differentiable ODE solvers.

Installation

Install the local package nfe (which will also install all the dependencies):

pip install -e .

Download data

Download and preprocess real-world data and generate synthetic data (or run commands in download_all.sh manually):

. scripts/download_all.sh

Many experiments will automatically download data if it's not already downloaded so this step is optional.

Note: MIMIC-III and IV have to be downloaded manually. Use notebooks in data_preproc to preprocess data.

After downloading everything, your directory tree should look like this:

├── nfe
│   ├── experiments
│   │   ├── base_experiment.py
│   │   ├── data
│   │   │   ├── activity
│   │   │   ├── hopper
│   │   │   ├── mimic3
│   │   │   ├── mimic4
│   │   │   ├── physionet
│   │   │   ├── stpp
│   │   │   ├── synth
│   │   │   └── tpp
│   │   ├── gru_ode_bayes
│   │   ├── latent_ode
│   │   ├── stpp
│   │   ├── synthetic
│   │   └── tpp
│   ├── models
│   └── train.py
├── scripts
│   ├── download_all.sh
│   └── run_all.sh
└── setup.py

Models

Models are located in nfe/models. It contains the implementation of CouplingFlow and ResNetFlow. The ODE models and continuous (ODE or flow-based) GRU and LSTM layers can be found in the same directory.

Example: Coupling flow

import torch
from nfe import CouplingFlow

dim = 4
model = CouplingFlow(
    dim,
    n_layers=2, # Number of flow layers
    hidden_dims=[32, 32], # Hidden layers in single flow
    time_net='TimeLinear', # Time embedding network
)

t = torch.rand(3, 10, 1) # Time points at which IVP is evaluated
x0 = torch.randn(3, 1, dim) # Initial conditions at t=0

xt = model(x0, t) # IVP solutions at t given x0
xt.shape # torch.Size([3, 10, 4])

Example: GRU flow

import torch
from nfe import GRUFlow

dim = 4
model = GRUFlow(
    dim,
    n_layers=2, # Number of flow layers
    hidden_dims=[32, 32], # Hidden layers in single flow
    time_net='TimeTanh', # Time embedding network
)

t = torch.rand(3, 10, 1) # Time points at which IVP is evaluated
x = torch.randn(3, 10, dim) # Initial conditions, RNN inputs

xt = model(x, t) # IVP solutions at t_i given x_{1:i}
xt.shape # torch.Size([3, 10, 4])

Experiments

Run all experiments: . scripts/run_all.sh. Or run individual commands manually.

Synthetic

Example:

python -m nfe.train --experiment synthetic --data [ellipse|sawtooth|sink|square|triangle] --model [ode|flow] --flow-model [coupling|resnet] --solver [rk4|dopri5]

Smoothing

Example:

python -m nfe.train --experiment latent_ode --data [activity|hopper|physionet] --classify [0|1] --model [ode|flow] --flow-model [coupling|resnet]

Reference:

  • Yulia Rubanova, Ricky Chen, David Duvenaud. "Latent ODEs for Irregularly-Sampled Time Series" (2019) [paper]. We adapted the code from here.

Filtering

Request MIMIC-III and IV data, and download locally. Use notebooks to preprocess data.

Example:

python -m nfe.train --experiment gru_ode_bayes --data [mimic3|mimic4] --model [ode|flow] --odenet gru --flow-model [gru|resnet]

Reference:

  • Edward De Brouwer, Jaak Simm, Adam Arany, Yves Moreau. "GRU-ODE-Bayes: Continuous modeling of sporadically-observed time series" (2019) [paper]. We adapted the code from here.

Temporal point process

Example:

python -m nfe.train --experiment tpp --data [poisson|renewal|hawkes1|hawkes2|mooc|reddit|wiki] --model [rnn|ode|flow] --flow-model [coupling|resnet] --decoder [continuous|mixture] --rnn [gru|lstm] --marks [0|1]

Reference:

  • Junteng Jia, Austin R. Benson. "Neural Jump Stochastic Differential Equations" (2019) [paper]. We adapted the code from here.

Spatio-temporal

Example:

python -m nfe.train --experiment stpp --data [bike|covid|earthquake] --model [ode|flow] --density-model [independent|attention]

Reference:

  • Ricky T. Q. Chen, Brandon Amos, Maximilian Nickel. "Neural Spatio-Temporal Point Processes" (2021) [paper]. We adapted the code from here.

Citation

@article{bilos2021neuralflows,
  title={{N}eural Flows: {E}fficient Alternative to Neural {ODE}s},
  author={Bilo{\v{s}}, Marin and Sommer, Johanna and Rangapuram, Syama Sundar and Januschowski, Tim and G{\"u}nnemann, Stephan},
  journal={Advances in Neural Information Processing Systems},
  year={2021}
}
Minecraft Hack Detection With Python

Minecraft Hack Detection An attempt to try and use crowd sourced replays to find

Kuleen Sasse 3 Mar 26, 2022
Unofficial Pytorch Lightning implementation of Contrastive Syn-to-Real Generalization (ICLR, 2021)

Unofficial Pytorch Lightning implementation of Contrastive Syn-to-Real Generalization (ICLR, 2021)

Gyeongjae Choi 17 Sep 23, 2021
Single Image Random Dot Stereogram for Tensorflow

TensorFlow-SIRDS Single Image Random Dot Stereogram for Tensorflow SIRDS is a means to present 3D data in a 2D image. It allows for scientific data di

Greg Peatfield 5 Aug 10, 2022
A repository built on the Flow software package to explore cyber-security attacks on intelligent transportation systems.

A repository built on the Flow software package to explore cyber-security attacks on intelligent transportation systems.

George Gunter 4 Nov 14, 2022
Code for Fully Context-Aware Image Inpainting with a Learned Semantic Pyramid

SPN: Fully Context-Aware Image Inpainting with a Learned Semantic Pyramid Code for Fully Context-Aware Image Inpainting with a Learned Semantic Pyrami

12 Jun 27, 2022
A PyTorch re-implementation of Neural Radiance Fields

nerf-pytorch A PyTorch re-implementation Project | Video | Paper NeRF: Representing Scenes as Neural Radiance Fields for View Synthesis Ben Mildenhall

Krishna Murthy 709 Jan 09, 2023
Code for Ditto: Building Digital Twins of Articulated Objects from Interaction

Ditto: Building Digital Twins of Articulated Objects from Interaction Zhenyu Jiang, Cheng-Chun Hsu, Yuke Zhu CVPR 2022, Oral Project | arxiv News 2022

UT Robot Perception and Learning Lab 78 Dec 22, 2022
DISTIL: Deep dIverSified inTeractIve Learning.

DISTIL: Deep dIverSified inTeractIve Learning. An active/inter-active learning library built on py-torch for reducing labeling costs.

decile-team 110 Dec 06, 2022
RuDOLPH: One Hyper-Modal Transformer can be creative as DALL-E and smart as CLIP

[Paper] [Хабр] [Model Card] [Colab] [Kaggle] RuDOLPH 🦌 🎄 ☃️ One Hyper-Modal Transformer can be creative as DALL-E and smart as CLIP Russian Diffusio

AI Forever 232 Jan 04, 2023
Audio Visual Emotion Recognition using TDA

Audio Visual Emotion Recognition using TDA RAVDESS database with two datasets analyzed: Video and Audio dataset: Audio-Dataset: https://www.kaggle.com

Combinatorial Image Analysis research group 3 May 11, 2022
AI drive app that can help user become beautiful.

爱美丽 Beauty 简体中文 Features Beauty is an AI drive app that can help user become beautiful. it contain those functions: face score cheek face beauty repor

Starved Midnight 1 Jan 30, 2022
Official codebase for "B-Pref: Benchmarking Preference-BasedReinforcement Learning" contains scripts to reproduce experiments.

B-Pref Official codebase for B-Pref: Benchmarking Preference-BasedReinforcement Learning contains scripts to reproduce experiments. Install conda env

48 Dec 20, 2022
VarCLR: Variable Semantic Representation Pre-training via Contrastive Learning

    VarCLR: Variable Representation Pre-training via Contrastive Learning New: Paper accepted by ICSE 2022. Preprint at arXiv! This repository contain

squaresLab 32 Oct 24, 2022
Geometric Vector Perceptrons --- a rotation-equivariant GNN for learning from biomolecular structure

Geometric Vector Perceptron Implementation of equivariant GVP-GNNs as described in Learning from Protein Structure with Geometric Vector Perceptrons b

Dror Lab 142 Dec 29, 2022
Official implementation of particle-based models (GNS and DPI-Net) on the Physion dataset.

Physion: Evaluating Physical Prediction from Vision in Humans and Machines [paper] Daniel M. Bear, Elias Wang, Damian Mrowca, Felix J. Binder, Hsiao-Y

Hsiao-Yu Fish Tung 18 Dec 19, 2022
Workshop Materials Delivered on 28/02/2022

intro-to-cnn-p1 Repo for hosting workshop materials delivered on 28/02/2022 Questions you will answer in this workshop Learning Objectives What are co

Beginners Machine Learning 5 Feb 28, 2022
Hierarchical Clustering: O(1)-Approximation for Well-Clustered Graphs

Hierarchical Clustering: O(1)-Approximation for Well-Clustered Graphs This repository contains code to accompany the paper "Hierarchical Clustering: O

3 Sep 25, 2022
COVID-VIT: Classification of Covid-19 from CT chest images based on vision transformer models

COVID-ViT COVID-VIT: Classification of Covid-19 from CT chest images based on vision transformer models This code is to response to te MIA-COV19 compe

17 Dec 30, 2022
MatryODShka: Real-time 6DoF Video View Synthesis using Multi-Sphere Images

Main repo for ECCV 2020 paper MatryODShka: Real-time 6DoF Video View Synthesis using Multi-Sphere Images. visual.cs.brown.edu/matryodshka

Brown University Visual Computing Group 75 Dec 13, 2022
Distributed Asynchronous Hyperparameter Optimization in Python

Hyperopt: Distributed Hyperparameter Optimization Hyperopt is a Python library for serial and parallel optimization over awkward search spaces, which

6.5k Jan 01, 2023