More than a hundred strange attractors

Related tags

Deep Learningdysts
Overview

dysts

Analyze more than a hundred chaotic systems.

An embedding of all chaotic systems in the collection

Basic Usage

Import a model and run a simulation with default initial conditions and parameter values

from dysts.flows import Lorenz

model = Lorenz()
sol = model.make_trajectory(1000)
# plt.plot(sol[:, 0], sol[:, 1])

Modify a model's parameter values and re-integrate

model = Lorenz()
model.gamma = 1
model.ic = [0, 0, 0.2]
sol = model.make_trajectory(1000)
# plt.plot(sol[:, 0], sol[:, 1])

Load a precomputed trajectory for the model

eq = Lorenz()
sol = eq.load_trajectory(subsets="test", noise=False, granularity="fine")
# plt.plot(sol[:, 0], sol[:, 1])

Integrate new trajectories from all 131 chaotic systems with a custom granularity

from dysts.base import make_trajectory_ensemble

all_out = make_trajectory_ensemble(100, resample=True, pts_per_period=75)

Load a precomputed collection of time series from all 131 chaotic systems

from dysts.datasets import load_dataset

data = load_dataset(subsets="train", data_format="numpy", standardize=True)

Additional functionality and examples can be found in the demonstrations notebook.. The full API documentation can be found here.

Reference

For additional details, please see the preprint. If using this code for published work, please consider citing the paper.

William Gilpin. "Chaos as an interpretable benchmark for forecasting and data-driven modelling" Advances in Neural Information Processing Systems (NeurIPS) 2021 https://arxiv.org/abs/2110.05266

Installation

Install from PyPI

pip install dysts

To obtain the latest version, including new features and bug fixes, download and install the project repository directly from GitHub

git clone https://github.com/williamgilpin/dysts
cd dysts
pip install -I . 

Test that everything is working

python -m unittest

Alternatively, to use this as a regular package without downloading the full repository, install directly from GitHub

pip install git+git://github.com/williamgilpin/dysts

The key dependencies are

  • Python 3+
  • numpy
  • scipy
  • pandas
  • sdeint (optional, but required for stochastic dynamics)
  • numba (optional, but speeds up generation of trajectories)

These additional optional dependencies are needed to reproduce some portions of this repository, such as benchmarking experiments and estimation of invariant properties of each dynamical system:

  • nolds (used for calculating the correlation dimension)
  • darts (used for forecasting benchmarks)
  • sktime (used for classification benchmarks)
  • tsfresh (used for statistical quantity extraction)
  • pytorch (used for neural network benchmarks)

Contributing

New systems. If you know of any systems should be included, please feel free to submit an issue or pull request. The biggest bottleneck when adding new models is a lack of known parameter values and initial conditions, and so please provide a reference or code that contains all parameter values necessary to reproduce the claimed dynamics. Because there are an infinite number of chaotic systems, we currently are only including systems that have appeared in published work.

Development and Maintainence. We are very grateful for any suggestions or contributions. See the to-do list below for some of the ongoing work.

Benchmarks

The benchmarks reported in our preprint can be found in benchmarks. An overview of the contents of the directory can be found in BENCHMARKS.md, while individual task areas are summarized in corresponding Jupyter Notebooks within the top level of the directory.

Contents

  • Code to generate benchmark forecasting and training experiments are included in benchmarks
  • Pre-computed time series with training and test partitions are included in data
  • The raw definitions metadata for all chaotic systems are included in the database file chaotic_attractors. The Python implementations of differential equations can be found in the flows module

Implementation Notes

  • Currently there are 131 continuous time models, including several delay diffential equations. There is also a separate module with 10 discrete maps, which is currently being expanded.
  • The right hand side of each dynamical equation is compiled using numba, wherever possible. Ensembles of trajectories are vectorized where needed.
  • Attractor names, default parameter values, references, and other metadata are stored in parseable JSON database files. Parameter values are based on standard or published values, and default initial conditions were generated by running each model until the moments of the autocorrelation function all become stationary.
  • The default integration step is stored in each continuous-time model's dt field. This integration timestep was chosen based on the highest significant frequency observed in the power spectrum, with significance being determined relative to random phase surrogates. The period field contains the timescale associated with the dominant frequency in each system's power spectrum. When using the model.make_trajectory() method with the optional setting resample=True, integration is performed at the default dt. The integrated trajectory is then resampled based on the period. The resulting trajectories will have have consistant dominant timescales across models, despite having different integration timesteps.

Acknowledgements

  • Two existing collections of named systems can be found on the webpages of Jürgen Meier and J. C. Sprott. The current version of dysts contains all systems from both collections.
  • Several of the analysis routines (such as calculation of the correlation dimension) use the library nolds. If re-using the fractal dimension code that depends on nolds, please be sure to credit that library and heed its license. The Lyapunov exponent calculation is based on the QR factorization approach used by Wolf et al 1985 and Eckmann et al 1986, with implementation details adapted from conventions in the Julia library DynamicalSystems.jl

Ethics & Reporting

Dataset datasheets and metadata are reported using the dataset documentation guidelines described in Gebru et al 2018; please see our preprint for a full dataset datasheet and other information. We note that all datasets included here are mathematical in nature, and do not contain human or clinical observations. If any users become aware of unintended harms that may arise due to the use of this data, we encourage reporting them by submitting an issue on this repository.

Development to-do list

A partial list of potential improvements in future versions

  • Speed up the delay equation implementation
    • We need to roll our own implementation of DDE23 in the utils module.
  • Improve calculations of Lyapunov exponents for delay systems
  • Implement multivariate multiscale entropy and re-calculate for all attractors
  • Add a method for parallel integrating multiple systems at once, based on a list of names and a set of shared settings
    • Can use multiprocessing for a few systems, but greater speedups might be possible by compiling all right hand sides into a single function acting on a large vector.
    • Can also use this same utility to integrate multiple initial conditions for the same model
  • Add a separate jacobian database file, and add an attribute that can be used to check if an analytical one exists. This will speed up numerical integration, as well as potentially aid in calculating Lyapunov exponents.
  • Align the initial phases, potentially by picking default starting initial conditions that lie on the attractor, but which are as close as possible to the origin
  • Expand and finalize the discrete dysts.maps module
    • Maps are deterministic but not differentiable, and so not all analysis methods will work on them. Will probably need a decorator to declare whether utilities work on flows, maps, or both
  • Switch stochastic integration to a newer package, like torchsde or sdepy
Owner
William Gilpin
Physics researcher at Harvard. Soon @GilpinLab at UT Austin
William Gilpin
"Projelerle Yapay Zeka Ve Bilgisayarlı Görü" Kitabımın projeleri

"Projelerle Yapay Zeka Ve Bilgisayarlı Görü" Kitabımın projeleri Bu Github Reposundaki tüm projeler; kaleme almış olduğum "Projelerle Yapay Zekâ ve Bi

Ümit Aksoylu 4 Aug 03, 2022
DeconvNet : Learning Deconvolution Network for Semantic Segmentation

DeconvNet: Learning Deconvolution Network for Semantic Segmentation Created by Hyeonwoo Noh, Seunghoon Hong and Bohyung Han at POSTECH Acknowledgement

Hyeonwoo Noh 325 Oct 20, 2022
code for "Self-supervised edge features for improved Graph Neural Network training",

Self-supervised edge features for improved Graph Neural Network training Data availability: Here is a link to the raw data for the organoids dataset.

Neal Ravindra 23 Dec 02, 2022
Implementation of Deep Deterministic Policy Gradiet Algorithm in Tensorflow

ddpg-aigym Deep Deterministic Policy Gradient Implementation of Deep Deterministic Policy Gradiet Algorithm (Lillicrap et al.arXiv:1509.02971.) in Ten

Steven Spielberg P 247 Dec 07, 2022
Disagreement-Regularized Imitation Learning

Due to a normalization bug the expert trajectories have lower performance than the rl_baseline_zoo reported experts. Please see the following link in

Kianté Brantley 25 Apr 28, 2022
Differentiable simulation for system identification and visuomotor control

gradsim gradSim: Differentiable simulation for system identification and visuomotor control gradSim is a unified differentiable rendering and multiphy

105 Dec 18, 2022
[NeurIPS-2021] Mosaicking to Distill: Knowledge Distillation from Out-of-Domain Data

MosaicKD Code for NeurIPS-21 paper "Mosaicking to Distill: Knowledge Distillation from Out-of-Domain Data" 1. Motivation Natural images share common l

ZJU-VIPA 37 Nov 10, 2022
Object Depth via Motion and Detection Dataset

ODMD Dataset ODMD is the first dataset for learning Object Depth via Motion and Detection. ODMD training data are configurable and extensible, with ea

Brent Griffin 172 Dec 21, 2022
A simple, fully convolutional model for real-time instance segmentation.

You Only Look At CoefficienTs ██╗ ██╗ ██████╗ ██╗ █████╗ ██████╗████████╗ ╚██╗ ██╔╝██╔═══██╗██║ ██╔══██╗██╔════╝╚══██╔══╝ ╚██

Daniel Bolya 4.6k Dec 30, 2022
List of content farm sites like g.penzai.com.

内容农场网站清单 Google 中文搜索结果包含了相当一部分的内容农场式条目,比如「小 X 知识网」「小 X 百科网」。此种链接常会 302 重定向其主站,页面内容为自动生成,大量堆叠关键字,揉杂一些爬取到的内容,完全不具可读性和参考价值。 尤为过分的是,该类网站可能有成千上万个分身域名被 Goog

WDMPA 541 Jan 03, 2023
Pytorch Lightning Distributed Accelerators using Ray

Distributed PyTorch Lightning Training on Ray This library adds new PyTorch Lightning accelerators for distributed training using the Ray distributed

166 Dec 27, 2022
This application explain how we can easily integrate Deepface framework with Python Django application

deepface_suite This application explain how we can easily integrate Deepface framework with Python Django application install redis cache install requ

Mohamed Naji Aboo 3 Apr 18, 2022
Facial Action Unit Intensity Estimation via Semantic Correspondence Learning with Dynamic Graph Convolution

FAU Implementation of the paper: Facial Action Unit Intensity Estimation via Semantic Correspondence Learning with Dynamic Graph Convolution. Yingruo

Evelyn 78 Nov 29, 2022
Pytorch implementation of NEGEV method. Paper: "Negative Evidence Matters in Interpretable Histology Image Classification".

Pytorch 1.10.0 code for: Negative Evidence Matters in Interpretable Histology Image Classification (https://arxiv. org/abs/xxxx.xxxxx) Citation: @arti

Soufiane Belharbi 4 Dec 01, 2022
source code for https://arxiv.org/abs/2005.11248 "Accelerating Antimicrobial Discovery with Controllable Deep Generative Models and Molecular Dynamics"

Accelerating Antimicrobial Discovery with Controllable Deep Generative Models and Molecular Dynamics This work will be published in Nature Biomedical

International Business Machines 71 Nov 15, 2022
JAX-based neural network library

Haiku: Sonnet for JAX Overview | Why Haiku? | Quickstart | Installation | Examples | User manual | Documentation | Citing Haiku What is Haiku? Haiku i

DeepMind 2.3k Jan 04, 2023
Individual Tree Crown classification on WorldView-2 Images using Autoencoder -- Group 9 Weak learners - Final Project (Machine Learning 2020 Course)

Created by Olga Sutyrina, Sarah Elemili, Abduragim Shtanchaev and Artur Bille Individual Tree Crown classification on WorldView-2 Images using Autoenc

2 Dec 08, 2022
a reimplementation of Holistically-Nested Edge Detection in PyTorch

pytorch-hed This is a personal reimplementation of Holistically-Nested Edge Detection [1] using PyTorch. Should you be making use of this work, please

Simon Niklaus 375 Dec 06, 2022
A Simple Key-Value Data-store written in Python

mercury-db This is a File Based Key-Value Datastore that supports basic CRUD (Create, Read, Update, Delete) operations developed using Python. The dat

Vaidhyanathan S M 1 Jan 09, 2022