Skip to content

MOEA/D is a general-purpose algorithm framework. It decomposes a multi-objective optimization problem into a number of single-objective optimization sub-problems and then uses a search heuristic to optimize these sub-problems simultaneously and cooperatively.

License

Notifications You must be signed in to change notification settings

moead-framework/framework

Repository files navigation

MOEA/D Framework

status Python application codecov PyPI GitHub build status

This python package moead-framework is a modular framework for multi-objective evolutionary algorithms by decomposition. The goal is to provide a modular framework for scientists and researchers interested in experimenting with MOEA/D and its numerous variants.

The documentation is available here: https://moead-framework.github.io/framework/ and can be edited in the folder docs of this repository.

Installation instructions

Create a virtual environment with conda or virtualenv

The package is available in pypi with a linux environment for python 3.6, 3.7, 3.8 and 3.9, you can install it with:

pip install moead-framework

Example

The example requires two files :

from moead_framework.aggregation import Tchebycheff   
from moead_framework.algorithm.combinatorial import Moead   
from moead_framework.problem.combinatorial import Rmnk  
from moead_framework.tool.result import save_population
    
    
###############################
#   Initialize the problem    #
###############################
# The file is available here : https://github.com/moead-framework/data/blob/master/problem/RMNK/Instances/rmnk_0_2_100_1_0.dat
# Others instances are available here : https://github.com/moead-framework/data/tree/master/problem/RMNK/Instances
instance_file = "rmnk_0_2_100_1_0.dat"
rmnk = Rmnk(instance_file=instance_file)
    
    
#####################################
#      Initialize the algorithm     #
#####################################
number_of_weight = 10
number_of_weight_neighborhood = 2
number_of_evaluations = 1000
# The file is available here : https://github.com/moead-framework/data/blob/master/weights/SOBOL-2objs-10wei.ws
# Others weights files are available here : https://github.com/moead-framework/data/tree/master/weights
weight_file = "SOBOL-" + str(rmnk.number_of_objective) + "objs-" + str(number_of_weight) + "wei.ws"
    
    
###############################
#    Execute the algorithm    #
###############################
moead = Moead(problem=rmnk,
                max_evaluation=number_of_evaluations,
                number_of_weight_neighborhood=number_of_weight_neighborhood,
                weight_file=weight_file,
                aggregation_function=Tchebycheff,
                )
    
population = moead.run()
    
    
###############################
#       Save the result       #
###############################
save_file = "moead-rmnk" + str(rmnk.number_of_objective) \
                + "-N" + str(number_of_weight) \
                + "-T" + str(number_of_weight_neighborhood) \
                + "-iter" + str(number_of_evaluations) \
                + ".txt"
    
save_population(save_file, population)

How to contribute

A guide is available to explain the process of contributing to the project. The contribution can be the report of a bug, the request for a new feature or modifying the code of the framework to improve it.

We have a code of conduct, please follow it in all your interactions with the project.

Support

If you have any questions about the project, don't hesitate to create a new discussion with GitHub Discussions. It is the space for our community to have conversations, ask questions and post answers without opening issues.

For developers

Requirements for developers

These requirements must be installed to use the commands in the following sections (unit test, documentation, package) :

pip install -r requirements.txt

pip install -r requirements-dev.txt

Tests:

You can execute unit tests with the following command in the git repository:

python3 -m unittest 

Generate the documentation locally

The documentation can be generated locally if you want check changes. The documentation is generated with sphinx 2.4.4 (see the section 'Requirements for developers').

You can generate the documentation with the following commands :

cd docs/

make html

Build the package

The package is built with a github action. If you want to create manually a new package:

python3 setup.py sdist bdist_wheel

python3 -m twine upload dist/*

About

MOEA/D is a general-purpose algorithm framework. It decomposes a multi-objective optimization problem into a number of single-objective optimization sub-problems and then uses a search heuristic to optimize these sub-problems simultaneously and cooperatively.

Topics

Resources

License

Code of conduct

Stars

Watchers

Forks