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Poutyne Logo

poutyne version - PyPI PyPI status License: LGPL v3 Python version - PyPI CI/CD codecov Downloads

Here is Poutyne.

Poutyne is a simplified framework for PyTorch and handles much of the boilerplating code needed to train neural networks.

Use Poutyne to:

  • Train models easily.
  • Use callbacks to save your best model, perform early stopping and much more.

Read the documentation at Poutyne.org.

Poutyne is compatible with the latest version of PyTorch and Python >= 3.8.

Cite

@misc{Paradis_Poutyne_A_Simplified_2020,
    author = {Paradis, Frédérik and Beauchemin, David and Godbout, Mathieu and Alain, Mathieu and Garneau, Nicolas and Otte, Stefan and Tremblay, Alexis and Bélanger, Marc-Antoine and Laviolette, François},
    title  = {{Poutyne: A Simplified Framework for Deep Learning}},
    year   = {2020},
    url    = {https://poutyne.org}
}

Getting started: few seconds to Poutyne

The core data structure of Poutyne is a Model, a way to train your own PyTorch neural networks.

How Poutyne works is that you create your PyTorch module (neural network) as usual but when comes the time to train it you feed it into the Poutyne Model, which handles all the steps, stats and callbacks, similar to what Keras does.

Here is a simple example:

# Import the Poutyne Model and define a toy dataset
from poutyne import Model
import torch
import torch.nn as nn
import numpy as np
import torchmetrics

num_features = 20
num_classes = 5
hidden_state_size = 100

num_train_samples = 800
train_x = np.random.randn(num_train_samples, num_features).astype('float32')
train_y = np.random.randint(num_classes, size=num_train_samples).astype('int64')

num_valid_samples = 200
valid_x = np.random.randn(num_valid_samples, num_features).astype('float32')
valid_y = np.random.randint(num_classes, size=num_valid_samples).astype('int64')

num_test_samples = 200
test_x = np.random.randn(num_test_samples, num_features).astype('float32')
test_y = np.random.randint(num_classes, size=num_test_samples).astype('int64')

Select a PyTorch device so that it runs on GPU if you have one:

cuda_device = 0
device = torch.device("cuda:%d" % cuda_device if torch.cuda.is_available() else "cpu")

Create yourself a PyTorch network:

network = nn.Sequential(
    nn.Linear(num_features, hidden_state_size),
    nn.ReLU(),
    nn.Linear(hidden_state_size, num_classes)
)

You can now use Poutyne's model to train your network easily:

model = Model(
    network,
    'sgd',
    'cross_entropy',
    batch_metrics=['accuracy'],
    epoch_metrics=['f1', torchmetrics.AUROC(num_classes=num_classes, task="multiclass")],
    device=device
)
model.fit(
    train_x, train_y,
    validation_data=(valid_x, valid_y),
    epochs=5,
    batch_size=32
)

Since Poutyne is inspired by Keras, one might have notice that this is really similar to some of its functions.

You can evaluate the performances of your network using the evaluate method of Poutyne's model:

loss, (accuracy, f1score) = model.evaluate(test_x, test_y)

Or only predict on new data:

predictions = model.predict(test_x)

See the complete code here. Also, see this for an example for regression.

One of the strengths Poutyne are callbacks. They allow you to save checkpoints, log training statistics and more. See this notebook for an introduction to callbacks. In that vein, Poutyne also offers an ModelBundle class that offers automatic checkpointing, logging and more using callbacks under the hood. Here is an example of usage.

from poutyne import ModelBundle

# Everything is saved in ./saves/my_classification_network
model_bundle = ModelBundle.from_network(
    './saves/my_classification_network', network, optimizer='sgd', task='classif', device=device
)

model_bundle.train_data(train_x, train_y, validation_data=(valid_x, valid_y), epochs=5)

model_bundle.test_data(test_x, test_y)

See the complete code here. Also, see this for an example for regression.


Installation

Before installing Poutyne, you must have the latest version of PyTorch in your environment.

  • Install the stable version of Poutyne:
pip install poutyne
  • Install the latest development version of Poutyne:
pip install -U git+https://github.com/GRAAL-Research/poutyne.git@dev
  • Install and develop on top of the provided Docker Image
docker pull ghcr.io/graal-research/poutyne:latest

Learning Material

Blog posts

  • Medium PyTorch post - Presentation of the basics of Poutyne and how it can help you be more efficient when developing neural networks with PyTorch.

Examples

Look at notebook files with full working examples:

or in Google Colab:

Videos


Contributing to Poutyne

We welcome user input, whether it is regarding bugs found in the library or feature propositions ! Make sure to have a look at our contributing guidelines for more details on this matter.


Sponsors

This project supported by Frédérik Paradis and David Beauchemin. Join the sponsors - show your ❤️ and support, and appear on the list!


License

Poutyne is LGPLv3 licensed, as found in the LICENSE file.


Why this name, Poutyne?

Poutyne's name comes from poutine, the well-known dish from Quebec. It is usually composed of French fries, squeaky cheese curds and brown gravy. However, in Quebec, poutine also has the meaning of something that is an "ordinary or common subject or activity". Thus, Poutyne will get rid of the ordinary boilerplate code that plain PyTorch training usually entails.

Poutine Yuri Long from Arlington, VA, USA [CC BY 2.0]