Python implementation of CMA-ES
-
Updated
Sep 24, 2017 - Python
Python implementation of CMA-ES
Homework of Principles of Computational Intelligence course in CE department of Amirkabir University of Technology (Tehran Polytechnic) - Fall 2020.
Implementation of OpenAI's ES in julia
Contains code for RL and NES scheduling algorithms to optimize a flood control problem in a water dam
A Java package for scientific computing
High Performance CPU Library for Neuro-Evolutionary Learning (NEAT) & Genetic Algorithms for Keras models
(EvoApps2022) "Towards a Principled Learning Rate Adaptation for Natural Evolution Strategies"
Evolutionary Algorithm
This repository provides practical implementations, examples, and insights into various optimization methods, making it easier to understand and apply these concepts.
An open (accessible parameters), feed-forward-only NN (neural net) library to use it in an dynamic and free way in evolutionary algorithms. Design is influenced by the Keras Sequetial model.
Python implementation of the Active-Set (1+1)-ES
This repository consists of the code I edited and developed which solves a unique timetabling problem of a large academic department. The code uses an evolutionary algorithm, a simulated hardening process and a type of general adversarial network which produces a range of valid timetables
Vectorized Cartesian Genetic Programming library
Adapting to unseen partners in multi-agent Reinforcement Learning (MARL) using Evolutionary Strategies (ES).
Deep Learning Evolved: Overcoming Sub-Optimal Local Minima with $(\mu / \rho + \lambda)$-Evolution Strategies
Using Genetic Algorithm to solve Optimization Problems
Implementation of the (μ/μ,λ)-Evolution Strategy (ES) with Search Path algorithm in C++
A pure-MATLAB library of EVolutionary (population-based) OPTimization for Large-Scale black-box continuous Optimization (evopt-lso).
Add a description, image, and links to the evolution-strategies topic page so that developers can more easily learn about it.
To associate your repository with the evolution-strategies topic, visit your repo's landing page and select "manage topics."