.. image:: https://github.com/skorch-dev/skorch/blob/master/assets/skorch_bordered.svg :width: 30% ------------ |build| |coverage| |docs| |huggingface| |powered| A scikit-learn compatible neural network library that wraps PyTorch. .. |build| image:: https://github.com/skorch-dev/skorch/workflows/tests/badge.svg :alt: Test Status .. |coverage| image:: https://github.com/skorch-dev/skorch/blob/master/assets/coverage.svg :alt: Test Coverage .. |docs| image:: https://readthedocs.org/projects/skorch/badge/?version=latest :alt: Documentation Status :target: https://skorch.readthedocs.io/en/latest/?badge=latest .. |huggingface| image:: https://github.com/skorch-dev/skorch/actions/workflows/test-hf-integration.yml/badge.svg :alt: Hugging Face Integration :target: https://github.com/skorch-dev/skorch/actions/workflows/test-hf-integration.yml .. |powered| image:: https://github.com/skorch-dev/skorch/blob/master/assets/powered.svg :alt: Powered by :target: https://github.com/ottogroup/ ========= Resources ========= - `Documentation `_ - `Source Code `_ - `Installation `_ ======== Examples ======== To see more elaborate examples, look `here `__. .. code:: python import numpy as np from sklearn.datasets import make_classification from torch import nn from skorch import NeuralNetClassifier X, y = make_classification(1000, 20, n_informative=10, random_state=0) X = X.astype(np.float32) y = y.astype(np.int64) class MyModule(nn.Module): def __init__(self, num_units=10, nonlin=nn.ReLU()): super().__init__() self.dense0 = nn.Linear(20, num_units) self.nonlin = nonlin self.dropout = nn.Dropout(0.5) self.dense1 = nn.Linear(num_units, num_units) self.output = nn.Linear(num_units, 2) self.softmax = nn.Softmax(dim=-1) def forward(self, X, **kwargs): X = self.nonlin(self.dense0(X)) X = self.dropout(X) X = self.nonlin(self.dense1(X)) X = self.softmax(self.output(X)) return X net = NeuralNetClassifier( MyModule, max_epochs=10, lr=0.1, # Shuffle training data on each epoch iterator_train__shuffle=True, ) net.fit(X, y) y_proba = net.predict_proba(X) In an `sklearn Pipeline `_: .. code:: python from sklearn.pipeline import Pipeline from sklearn.preprocessing import StandardScaler pipe = Pipeline([ ('scale', StandardScaler()), ('net', net), ]) pipe.fit(X, y) y_proba = pipe.predict_proba(X) With `grid search `_: .. code:: python from sklearn.model_selection import GridSearchCV # deactivate skorch-internal train-valid split and verbose logging net.set_params(train_split=False, verbose=0) params = { 'lr': [0.01, 0.02], 'max_epochs': [10, 20], 'module__num_units': [10, 20], } gs = GridSearchCV(net, params, refit=False, cv=3, scoring='accuracy', verbose=2) gs.fit(X, y) print("best score: {:.3f}, best params: {}".format(gs.best_score_, gs.best_params_)) skorch also provides many convenient features, among others: - `Learning rate schedulers `_ (Warm restarts, cyclic LR and many more) - `Scoring using sklearn (and custom) scoring functions `_ - `Early stopping `_ - `Checkpointing `_ - `Parameter freezing/unfreezing `_ - `Progress bar `_ (for CLI as well as jupyter) - `Automatic inference of CLI parameters `_ - `Integration with GPyTorch for Gaussian Processes `_ - `Integration with Hugging Face 🤗 `_ ============ Installation ============ skorch requires Python 3.9 or higher. conda installation ================== You need a working conda installation. Get the correct miniconda for your system from `here `__. To install skorch, you need to use the conda-forge channel: .. code:: bash conda install -c conda-forge skorch We recommend to use a `conda virtual environment `_. **Note**: The conda channel is *not* managed by the skorch maintainers. More information is available `here `__. pip installation ================ To install with pip, run: .. code:: bash python -m pip install -U skorch Again, we recommend to use a `virtual environment `_ for this. From source =========== If you would like to use the most recent additions to skorch or help development, you should install skorch from source. Using conda ----------- To install skorch from source using conda, proceed as follows: .. code:: bash git clone https://github.com/skorch-dev/skorch.git cd skorch conda create -n skorch-env python=3.12 conda activate skorch-env python -m pip install torch python -m pip install . If you want to help developing, run: .. code:: bash git clone https://github.com/skorch-dev/skorch.git cd skorch conda create -n skorch-env python=3.12 conda activate skorch-env python -m pip install torch python -m pip install '.[test,docs,dev,extended]' py.test # unit tests pylint skorch # static code checks You may adjust the Python version to any of the supported Python versions. Using pip --------- For pip, follow these instructions instead: .. code:: bash git clone https://github.com/skorch-dev/skorch.git cd skorch # create and activate a virtual environment # install pytorch version for your system (see below) python -m pip install . If you want to help developing, run: .. code:: bash git clone https://github.com/skorch-dev/skorch.git cd skorch # create and activate a virtual environment # install pytorch version for your system (see below) python -m pip install -e '.[test,docs,dev,extended]' py.test # unit tests pylint skorch # static code checks PyTorch ======= PyTorch is not covered by the dependencies, since the PyTorch version you need is dependent on your OS and device. For installation instructions for PyTorch, visit the `PyTorch website `__. skorch officially supports the last four minor PyTorch versions, which currently are: - 2.10.0 - 2.11.0 - 2.12.1 - 2.13.0 However, that doesn't mean that older versions don't work, just that they aren't tested. Since skorch mostly relies on the stable part of the PyTorch API, older PyTorch versions should work fine. In general, running this to install PyTorch should work: .. code:: bash python -m pip install torch ================== External resources ================== - @jakubczakon: `blog post `_ "8 Creators and Core Contributors Talk About Their Model Training Libraries From PyTorch Ecosystem" 2020 - @BenjaminBossan: `talk 1 `_ "skorch: A scikit-learn compatible neural network library" at PyCon/PyData 2019 - @githubnemo: `poster `_ for the PyTorch developer conference 2019 - @thomasjpfan: `talk 2 `_ "Skorch: A Union of Scikit learn and PyTorch" at SciPy 2019 - @thomasjpfan: `talk 3 `_ "Skorch - A Union of Scikit-learn and PyTorch" at PyData 2018 - @BenjaminBossan: `talk 4 `_ "Extend your scikit-learn workflow with Hugging Face and skorch" at PyData Amsterdam 2023 (`slides 4 `_) ============= Communication ============= - `GitHub discussions `_: user questions, thoughts, install issues, general discussions. - `GitHub issues `_: bug reports, feature requests, RFCs, etc. - Slack: We run the #skorch channel on the `PyTorch Slack server `_, for which you can `request access here `_.