A Python platform to perform parallel computations of optimisation tasks (global and local) via the asynchronous generalized island model.
-
Updated
Apr 4, 2024 - C++
A Python platform to perform parallel computations of optimisation tasks (global and local) via the asynchronous generalized island model.
(Code) A new workload prediction model using extreme learning machine and enhanced tug of war optimization
(Code IQSO-MLP) nQSV-Net: a novel queuing search variant for global space search and workload modeling
dnn_opt is a machine learning library to perform optimization and neural network training by using meta-heuristics with multi-core and GPU support
Julia library for the Determinant-Optimality Problem (D-OPT)
VNS-SOLVER : implementation of the VNS meta-heuristic using the C programming language
Efficient Time-series Forecasting using Neural Network and Opposition-based Coral Reefs Optimization
HGJO: An improved golden jackal optimization for Otsu’s method based multilevel image thresholding
A ray-based library of Distributed POPulation-based OPtimization for Large-Scale Black-Box Optimization.
Implementation of algorithms for Aircraft Landing Problem
A project @ Production System Analysis.
Graph Algorithms, Genetic Algorithms, Simulated Annealing, Swarm Intelligence, Heuristics, Minimax and Meta-Heuristics
Machine Learning Hyper-parameter Tuning processes
ゲームで学ぶ探索アルゴリズム実践入門~木探索とメタヒューリスティクス(著)青木栄太 のコードをJulia言語で実装してみるrepo。
Master Thesis for M.Sc. Business Education - Pre-Trained Denoising Autoencoders Long Short-Term Memory Networks as probabilistic Models for Estimation of Distribution Genetic Programming
HyPy is a general hyper-heuristic package for solving combinatorial optimization problems by employing and developing hyper-heuristics.
Todo o conteúdo produzido para a unidade curricular IART (Inteligência Artificial), para o curso em Engenharia Informática e Computação na FEUP
Multi-Objective Agent-Based Hyper-Heuristic
Implementation of a solution to Jdata GOC
USI-MSc AI Course: Hands-on Lab Experiences
Add a description, image, and links to the meta-heuristics topic page so that developers can more easily learn about it.
To associate your repository with the meta-heuristics topic, visit your repo's landing page and select "manage topics."