Website | Docs | Install Guide | Tutorial
Optuna is an automatic hyperparameter optimization software framework, particularly designed for machine learning. It features an imperative, define-by-run style user API. Thanks to our define-by-run API, the code written with Optuna enjoys high modularity, and the user of Optuna can dynamically construct the search spaces for the hyperparameters.
Optuna has modern functionalities as follows:
- Lightweight, versatile, and platform agnostic architecture
- Parallel distributed optimization
- Pruning of unpromising trials
We use the terms study and trial as follows:
- Study: optimization based on an objective function
- Trial: a single execution of the objective function
Please refer to sample code below. The goal of a study is to find out the optimal set of
hyperparameter values (e.g., classifier
and svm_c
) through multiple trials (e.g.,
n_trials=100
). Optuna is a framework designed for the automation and the acceleration of the
optimization studies.
import ...
# Define an objective function to be minimized.
def objective(trial):
# Invoke suggest methods of a Trial object to generate hyperparameters.
regressor_name = trial.suggest_categorical('classifier', ['SVR', 'RandomForest'])
if regressor_name == 'SVR':
svr_c = trial.suggest_loguniform('svr_c', 1e-10, 1e10)
regressor_obj = sklearn.svm.SVR(C=svr_c)
else:
rf_max_depth = trial.suggest_int('rf_max_depth', 2, 32)
regressor_obj = sklearn.ensemble.RandomForestRegressor(max_depth=rf_max_depth)
X, y = sklearn.datasets.load_boston(return_X_y=True)
X_train, X_val, y_train, y_val = sklearn.model_selection.train_test_split(X, y, random_state=0)
regressor_obj.fit(X_train, y_train)
y_pred = regressor_obj.predict(X_val)
error = sklearn.metrics.mean_squared_error(y_val, y_pred)
return error # An objective value linked with the Trial object.
study = optuna.create_study() # Create a new study.
study.optimize(objective, n_trials=100) # Invoke optimization of the objective function.
Integrations modules, which allow pruning, or early stopping, of unpromising trials are available for the following libraries:
- XGBoost
- LightGBM
- Chainer
- Keras
- TensorFlow
- tf.keras
- MXNet
- PyTorch Ignite
- PyTorch Lightning
- FastAI
- AllenNLP
Optuna is available at the Python Package Index and on Anaconda Cloud.
# PyPI
$ pip install optuna
# Anaconda Cloud
$ conda install -c conda-forge optuna
Optuna supports Python 3.5 or newer.
- GitHub Issues for bug reports, feature requests and questions.
- Gitter for interactive chat with developers.
- Stack Overflow for questions.
Any contributions to Optuna are welcome! When you send a pull request, please follow the contribution guide.
MIT License (see LICENSE).
Takuya Akiba, Shotaro Sano, Toshihiko Yanase, Takeru Ohta, and Masanori Koyama. 2019. Optuna: A Next-generation Hyperparameter Optimization Framework. In KDD (arXiv).