A python package for consensus-based particle dynamics, focusing on optimization and sampling.
Minimizing a function using CBXPy can be done as follows
from cbx.dynamics import CBO # import the CBO class
f = lambda x: x[0]**2 + x[1]**2 # define the function to minimize
x = CBO(f, d=2).optimize() # run the optimizationA documentation together with more examples and usage instructions is available at https://pdips.github.io/CBXpy.
Currently CBXPy can only be installed from PyPI with pip
pip install cbxOriginally designed for optimization problems
the scheme was introduced as CBO (Consensus Based Optimization). Given an ensemble of points
where
with a parameter
Among others CBXPy currently implments
- CBO (Consensus Based Optimization) [1],
- CBS (Consensus Based Sampling) [2],
- CBO with memory [3],
- Batching schemes [4].
[1] A consensus-based model for global optimization and its mean-field limit, Pinnau, R., Totzeck, C., Tse, O. and Martin, S., Mathematical Models and Methods in Applied Sciences 2017
[2] Consensus-based sampling, Carrillo, J.A., Hoffmann, F., Stuart, A.M., and Vaes, U, Studies in Applied Mathematics 2022
[3] Leveraging Memory Effects and Gradient Information in Consensus-Based Optimization: On Global Convergence in Mean-Field Law, Riedl, K., 2022
[4] A consensus-based global optimization method for high dimensional machine learning problems, Carrillo, J.A., Jin, S., Li, L. and Zhu, Y., ESAIM: Control, Optimisation and Calculus of Variations 2021