Creation and manipulation of parameter configuration spaces for automated algorithm configuration and hyperparameter tuning.


Keywords
algorithm, configuration, hyperparameter, optimization, empirical, evaluation, black, box
License
Other
Install
pip install ConfigSpace==0.7.2

Documentation

ConfigSpace

A simple Python/Cython module implementing a domain specific language to manage configuration spaces for algorithm configuration and hyperparameter optimization tasks.
Distributed under BSD 3-clause, see LICENSE except all files in the directory ConfigSpace.nx, which are copied from the networkx package and licensed under a BSD license.

The documentation can be found at https://automl.github.io/ConfigSpace/main/. Further examples can be found in the SMAC documentation.

Minimum Example

from ConfigSpace import ConfigurationSpace

cs = ConfigurationSpace(
    name="myspace",
    space={
        "a": (0.1, 1.5),  # UniformFloat
        "b": (2, 10),  # UniformInt
        "c": ["mouse", "cat", "dog"],  # Categorical
    },
)

configs = cs.sample_configuration(2)

Citing the ConfigSpace

@article{
    title   = {BOAH: A Tool Suite for Multi-Fidelity Bayesian Optimization & Analysis of Hyperparameters},
    author  = {M. Lindauer and K. Eggensperger and M. Feurer and A. Biedenkapp and J. Marben and P. MĂĽller and F. Hutter},
    journal = {arXiv:1908.06756 {[cs.LG]}},
    date    = {2019},
}