High-level utils for PyTorch DL & RL research. It was developed with a focus on reproducibility, fast experimentation and code/ideas reusing. Being able to research/develop something new, rather than write another regular train loop.
Break the cycle - use the Catalyst!
Common installation:
pip install -U catalyst
More specific with additional requirements:
pip install catalyst[rl] # installs DL+RL based catalyst
pip install catalyst[contrib] # installs DL+contrib based catalyst
pip install catalyst[all] # installs everything. Very convenient to deploy on a new server
Catalyst is compatible with: Python 3.6+. PyTorch 1.0.0+.
- Detailed classification tutorial
- Advanced segmentation tutorial
- Comprehensive classification pipeline
- Binary and semantic segmentation pipeline
API documentation and an overview of the library can be found here .
In the examples folder of the repository, you can find advanced tutorials and Catalyst best practices.
To learn more about Catalyst internals and to be aware of the most important features, you can read Catalyst-info, our blog where we regularly write facts about the framework.
We supervise the Awesome Catalyst list. You can make a PR with your project to the list.
We release a major release once a month with a name like YY.MM
.
And micro-releases with hotfixes and framework improvements in the format YY.MM.#
.
You can view the changelog on the GitHub Releases page.
Catalyst helps you write compact but full-featured DL & RL pipelines in a few lines of code. You get a training loop with metrics, early-stopping, model checkpointing and other features without the boilerplate.
- Universal train/inference loop.
- Configuration files for model/data hyperparameters.
- Reproducibility – all source code and environment variables will be saved.
- Callbacks – reusable train/inference pipeline parts.
- Training stages support.
- Easy customization.
- PyTorch best practices (SWA, AdamW, Ranger optimizer, OneCycleLRWithWarmup, FP16 and more).
- DL – runner for training and inference, all of the classic machine learning and computer vision metrics and a variety of callbacks for training, validation and inference of neural networks.
- RL – scalable Reinforcement Learning, on-policy & off-policy algorithms and their improvements with distributed training support.
- contrib - additional modules contributed by Catalyst users.
- data - useful tools and scripts for data processing.
import torch
from catalyst.dl import SupervisedRunner
# experiment setup
logdir = "./logdir"
num_epochs = 42
# data
loaders = {"train": ..., "valid": ...}
# model, criterion, optimizer
model = Net()
criterion = torch.nn.CrossEntropyLoss()
optimizer = torch.optim.Adam(model.parameters())
scheduler = torch.optim.lr_scheduler.ReduceLROnPlateau(optimizer)
# model runner
runner = SupervisedRunner()
# model training
runner.train(
model=model,
criterion=criterion,
optimizer=optimizer,
scheduler=scheduler,
loaders=loaders,
logdir=logdir,
num_epochs=num_epochs,
verbose=True,
)
For Catalyst.RL introduction, please follow OpenAI Gym example.
Catalyst has its own DockerHub page:
catalystteam/catalyst:{CATALYST_VERSION}
– simple image with Catalystcatalystteam/catalyst:{CATALYST_VERSION}-fp16
– Catalyst with FP16catalystteam/catalyst:{CATALYST_VERSION}-dev
– Catalyst for development with all the requirementscatalystteam/catalyst:{CATALYST_VERSION}-dev-fp16
– Catalyst for development with FP16
To build a docker from the sources and get more information and examples, please visit docker folder.
We appreciate all contributions. If you are planning to contribute back bug-fixes, please do so without any further discussion. If you plan to contribute new features, utility functions or extensions, please first open an issue and discuss the feature with us.
- Please see the contribution guide for more information.
- By participating in this project, you agree to abide by its Code of Conduct.
This project is licensed under the Apache License, Version 2.0 see the LICENSE file for details
Please use this bibtex if you want to cite this repository in your publications:
@misc{catalyst,
author = {Kolesnikov, Sergey},
title = {Reproducible and fast DL & RL.},
year = {2018},
publisher = {GitHub},
journal = {GitHub repository},
howpublished = {\url{https://github.com/catalyst-team/catalyst}},
}