Wavelet scattering transforms in Python with GPU acceleration
Project description
Kymatio: Wavelet scattering in Python - v0.3.0 “Erdre”
Kymatio is an implementation of the wavelet scattering transform in the Python programming language, suitable for large-scale numerical experiments in signal processing and machine learning. Scattering transforms are translation-invariant signal representations implemented as convolutional networks whose filters are not learned, but fixed (as wavelet filters).
Use Kymatio if you need a library that:
- supports 1-D, 2-D, and 3-D wavelets,
- integrates wavelet scattering in a deep learning architecture, and
- runs seamlessly on CPU and GPU hardware, with major deep learning APIs, such as PyTorch, TensorFlow, and Jax.
The Kymatio environment
Flexibility
The Kymatio organization associates the developers of several pre-existing packages for wavelet scattering, including ScatNet
, scattering.m
, PyScatWave
, WaveletScattering.jl
, and PyScatHarm
.
Interfacing Kymatio into deep learning frameworks allows the programmer to backpropagate the gradient of wavelet scattering coefficients, thus integrating them within an end-to-end trainable pipeline, such as a deep neural network.
Portability
Each of these algorithms is written in a high-level imperative paradigm, making it portable to any Python library for array operations as long as it enables complex-valued linear algebra and a fast Fourier transform (FFT).
Each algorithm comes packaged with a frontend and backend. The frontend takes care of interfacing with the user. The backend defines functions necessary for computation of the scattering transform.
Currently, there are eight available frontend–backend pairs, NumPy (CPU), scikit-learn (CPU), pure PyTorch (CPU and GPU), PyTorch>=1.10 (CPU and GPU), PyTorch+scikit-cuda (GPU), PyTorch>=1.10+scikit-cuda (GPU), TensorFlow (CPU and GPU), Keras (CPU and GPU), and Jax (CPU and GPU).
Scalability
Kymatio integrates the construction of wavelet filter banks in 1D, 2D, and 3D, as well as memory-efficient algorithms for extracting wavelet scattering coefficients, under a common application programming interface.
Running Kymatio on a graphics processing unit (GPU) rather than a multi-core conventional central processing unit (CPU) allows for significant speedups in computing the scattering transform. The current speedup with respect to CPU-based MATLAB code is of the order of 10 in 1D and 3D and of the order of 100 in 2D.
We refer to our official benchmarks for further details.
How to cite
If you use this package, please cite our paper Kymatio: Scattering Transforms in Python:
Andreux M., Angles T., Exarchakis G., Leonarduzzi R., Rochette G., Thiry L., Zarka J., Mallat S., Andén J., Belilovsky E., Bruna J., Lostanlen V., Chaudhary M., Hirn M. J., Oyallon E., Zhang S., Cella C., Eickenberg M. (2020). Kymatio: Scattering Transforms in Python. Journal of Machine Learning Research 21(60):1−6, 2020. (paper) (bibtex)
Installation
Dependencies
Kymatio requires:
- Python (>= 3.7)
- SciPy (>= 0.13)
Standard installation
We strongly recommend running Kymatio in an Anaconda environment, because this simplifies the installation of other
dependencies. You may install the latest version of Kymatio using the package manager pip
, which will automatically download
Kymatio from the Python Package Index (PyPI):
pip install kymatio
Linux and macOS are the two officially supported operating systems.
Frontends
NumPy
To explicitly call the NumPy frontend, run:
from kymatio.numpy import Scattering2D
scattering = Scattering2D(J=2, shape=(32, 32))
Scikit-learn
You can call also call Scattering2D
as a scikit-learn Transformer
using:
from kymatio.sklearn import Scattering2D
scattering_transformer = Scattering2D(2, (32, 32))
PyTorch
Using PyTorch, you can instantiate Scattering2D
as a torch.nn.Module
:
from kymatio.torch import Scattering2D
scattering = Scattering2D(J=2, shape=(32, 32))
TensorFlow and Keras
Similarly, in TensorFlow, you can instantiate Scattering2D
as a tf.Module
:
from kymatio.tensorflow import Scattering2D
scattering = Scattering2D(J=2, shape=(32, 32))
Alternatively, you can call Scattering2D
as a Keras Layer
using:
from tensorflow.keras.layers import Input
from kymatio.keras import Scattering2D
inputs = Input(shape=(32, 32))
scattering = Scattering2D(J=2)(inputs)
Jax
Finally, with Jax installed, you can also instantiate a Jax Scattering2D
object:
from kymatio.jax import Scattering2D
scattering = Scattering2D(J=2, shape=(32, 32))
Installation from source
Assuming the Kymatio source has been downloaded, you may install it by running
pip install -r requirements.txt
python setup.py install
Developers can also install Kymatio via:
pip install -r requirements.txt
python setup.py develop
GPU acceleration
Certain frontends, numpy
and sklearn
, only allow processing on the CPU and are therefore slower. The torch
, tensorflow
, keras
, and jax
frontends, however, also support GPU processing, which can significantly accelerate computations. Additionally, the torch
backend supports an optimized skcuda
backend which currently provides the fastest performance in computing scattering transforms.
To use it, you must first install the scikit-cuda
and cupy
dependencies:
pip install scikit-cuda cupy
Then you may instantiate a scattering object using the backend='torch_skcuda'
argument:
from kymatio.torch import Scattering2D
scattering = Scattering2D(J=2, shape=(32, 32), backend='torch_skcuda')
Documentation
The documentation of Kymatio is officially hosted on the kymat.io website.
Online resources
Building the documentation from source
The documentation can also be found in the doc/
subfolder of the GitHub repository.
To build the documentation locally, please clone this repository and run
pip install -r requirements_optional.txt
cd doc; make clean; make html
Support
We wish to thank the Scientific Computing Core at the Flatiron Institute for the use of their computing resources for testing.
We would also like to thank École Normale Supérieure for their support.
Kymatio
Kyma (κύμα) means wave in Greek. By the same token, Kymatio (κυμάτιο) means wavelet.
Note that the organization and the library are capitalized (Kymatio) whereas the corresponding Python module is written in lowercase (import kymatio
).
The recommended pronunciation for Kymatio is kim-ah-tio. In other words, it rhymes with patio, not with ratio.
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