StochOPy WebApp is hosted online at
-
Updated
Dec 11, 2017 - Python
StochOPy WebApp is hosted online at
StochOptim provides user friendly functions to solve optimization problems using stochastic algorithms
StochANNPy (STOCHAstic Artificial Neural Network for PYthon) provides user-friendly routines compatible with Scikit-Learn for stochastic learning.
Unity In Editor Deep Learning Tools. Using KerasSharp, TensorflowSharp, Unity MLAgent. In-Editor training and no python needed.
A fully decentralized hyperparameter optimization framework
CMA-ES in MATLAB
Bandit and Evolutionary Algorithms using Python
Self-Interpretable Agent implemented on the Procgen game 'Dodgeball'.
All code for the results and figures shown in the report for the course AE4350.
Course on computational design, non-linear optimization, and dynamics of soft systems at UIUC.
lagom: A PyTorch infrastructure for rapid prototyping of reinforcement learning algorithms.
ESKit is a portable library written in C, that provides implementations of some self-adaptive evolution strategies
Python library for stochastic numerical optimization
Evolutionary & genetic algorithms for Julia
This github repository contains the official code for the papers, "Robustness Assessment for Adversarial Machine Learning: Problems, Solutions and a Survey of Current Neural Networks and Defenses" and "One Pixel Attack for Fooling Deep Neural Networks"
The official repo for GECCO 2022 paper High-Performance Evolutionary Algorithms for Online Neuronal Control in vivo and in silico
This repository contains an improvement for any covariance-matix-adaptation-like evolution strategy exploiting gradient or its estimation
Website with interactive client-side CMA-ES (blackbox optimizer) demos. Reinforcement-learning demos allow users to control RL-trained robots.
NSGA2, NSGA3, R-NSGA3, MOEAD, Genetic Algorithms (GA), Differential Evolution (DE), CMAES, PSO
Add a description, image, and links to the cmaes topic page so that developers can more easily learn about it.
To associate your repository with the cmaes topic, visit your repo's landing page and select "manage topics."