This package is an integration module of Optuna, an automatic Hyperparameter optimization software framework. The modules in this package provide users with extended functionalities for Optuna in combination with third-party libraries such as PyTorch, sklearn, and TensorFlow.
Note
You can find more information in our official documentations and API reference.
Optuna-Integration is available via pip and on conda.
# PyPI
$ pip install optuna-integration
# Anaconda Cloud
$ conda install -c conda-forge optuna-integration
Important
As dependencies of all the modules are large and complicated, the commands above install only the common dependencies.
Dependencies for each module can be installed via pip.
For example, if you would like to install the dependencies of optuna_integration.botorch
and optuna_integration.lightgbm
, you can install them via:
$ pip install optuna-integration[botorch,lightgbm]
Note
Optuna-Integration supports from Python 3.8 to Python 3.12. Optuna Docker image is also provided at DockerHub.
Here is the table of optuna-integration
modules:
Warning
*
shows deprecated modules and they might be removed in the future.
- GitHub Discussions for questions.
- GitHub Issues for bug reports and feature requests.
Any contributions to Optuna-Integration are more than welcome!
For general guidelines how to contribute to the project, take a look at CONTRIBUTING.md.
If you use Optuna in one of your research projects, please cite our KDD paper "Optuna: A Next-generation Hyperparameter Optimization Framework":
BibTeX
@inproceedings{akiba2019optuna,
title={{O}ptuna: A Next-Generation Hyperparameter Optimization Framework},
author={Akiba, Takuya and Sano, Shotaro and Yanase, Toshihiko and Ohta, Takeru and Koyama, Masanori},
booktitle={The 25th ACM SIGKDD International Conference on Knowledge Discovery \& Data Mining},
pages={2623--2631},
year={2019}
}