Solid
Optimizer
A comprehensive framework for solving optimization problems without gradient calculations.
🎯 A comprehensive gradient-free optimization framework written in Python
575 stars
12 watching
61 forks
Language: Python
last commit: over 5 years ago
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algorithmartificial-intelligencecontinuous-optimizationdiscrete-optimizationevolutionary-algorithmgenetic-algorithmgenetic-algorithm-frameworkharmony-searchhill-climbinglibrarymachine-learningmachine-learning-algorithmsmetaheuristicsoptimizationoptimization-algorithmsparticle-swarm-optimizationpythonsimulated-annealingstochastic-optimizerstabu-search
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