Code for Multi-Objective Simultaneous Optimistic Optimisation
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Updated
Oct 15, 2017 - MATLAB
Code for Multi-Objective Simultaneous Optimistic Optimisation
Constrained multi-objective derivative-free global solver
The Stepping Stones Search Algorithm. A simple derivative-free optimizer.
Derivative-free nonlinear global optimizer with python interface
A collection of black-box optimizers with a focus on evolutionary algorithms
Tutorial on Bayesian optimization in R
Paper: Challenges in High-dimensional Reinforcement Learning with Evolution Strategies
Client of distributed ZOOpt in Julia
A python package of Zeroth-Order Optimization (ZOOpt)
Derivative-free solver for the minimization of a function over the convex hull of a set of vectors
A julia implementation of the CMA Evolution Strategy for derivative-free optimization of potentially non-linear, non-convex or noisy functions over continuous domains.
A simple Python-3 implementation of the derivative-free Torczon algorithm for nonlinear constrained optimization
Offical Pytorch Implementation of EnKG
Methods for derivative-free optimization of continuous functions
Implementation of Penalty-Decomposition Derivative-Free method for the Minimization of Partially Separable functions
A Julia package for solving multi-objective optimization problems with composite structure (F = f + h). Implements Conditional Gradient, Proximal Gradient, and Partially Derivative-Free algorithms that operate directly on the vector-valued objective, without scalarization or heuristics (direct / vector-optimization methods).
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