MasashiSode MOBO Save

constrained/unconstrained multi-objective bayesian optimization package.

Project README

MOBO (Multi-Objective Bayesian Optimization)

constrained/unconstrained multi-objective bayesian optimization package

under development

Install

$ git clone https://github.com/MasashiSode/MOBO.git
$ cd MOBO
$ pipenv install

Usage

import numpy as np
import matplotlib.pyplot as plt

from mobo.optimizer import NSGA2
from mobo.model import ExactGPModel
from mobo.acquisition import ei
from mobo.bayesopt import MultiObjectiveBayesianOpt
from mobo.test_functions import zdt1

if __name__ == "__main__":

    # multi objective genetic algorithm (NSGA2) is implemented with 'DEAP'
    # Gaussian Process model is implemented with 'gpytorch'
    opt = MultiObjectiveBayesianOpt(evaluation_function=zdt1,
                                    surrogate_model=ExactGPModel,
                                    optimizer=NSGA2,
                                    acquisition=ei,
                                    n_objective_dimension=2,
                                    n_design_variables_dimension=30,
                                    n_initial_sample=16,
                                    bayesian_optimization_iter_max=10,
                                    likelihood_optimization_iter_max=1000,
                                    likelihood_optimization_criteria=1e-8,
                                    n_new_samples=16)
    result = opt.optimize()

    front = np.array(result[1])

    plt.scatter(front[:, 0], front[:, 1], c="b")
    plt.axis("tight")
    print(result)
    plt.show()

under development

Documentation

under development
MOBO's Documentation

ToDo

  • implement another multi objective optimizer
  • implement constrained EI
  • implement EHVI
  • implement UCB
  • validation
Open Source Agenda is not affiliated with "MasashiSode MOBO" Project. README Source: MasashiSode/MOBO

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