Implementation of the PAMELI algorithm for computationally expensive multi-objective optimization
-
Updated
Jun 30, 2020 - Python
Implementation of the PAMELI algorithm for computationally expensive multi-objective optimization
A transformative approach to manufacturing optimization, focusing on the textile forming process. This research synergizes domain-specific knowledge with simulation modeling and introduces Bayesian optimization for efficient parameter space exploration.
General-purpose library for fitting models to data with correlated Gaussian-distributed noise
This GOMORS algorithm is the modified version of what is uploaded in this repository: https://github.com/drkupi/GOMORS_pySOT.
Source files of experiment resutls for the manusctipt that submitted to ESWA.
Surrogate adaptive randomized search for hyper-parameters tuning in sklearn.
A Surrogate-Assisted Evolutionary Algorithm with Hypervolume Triggered Fidelity Adjustment for Noisy Multiobjective Integer Programming
Statistical learning models library for blackbox optimization
Code written for the BSc Project: Estimating Control Landscapes with Neural Networks by Susan Chen and Katie Xiao as part of our Imperial College London Physics degrees.
NKCS model for exploring aspects of (surrogate-assisted) coevolution.
MITIM (MIT Integrated Modeling) Suite for Fusion Applications
A python package for parameter uncertainty quantification and optimization
surF - a surrogate modeling method based on Discrete Fourier Transform
Python package for design of experiments
SKSurrogate is a suite of tools that implements surrogate optimization for expensive functions based on scikit-learn. The main purpose of SKSurrogate is to facilitate hyperparameter optimization for machine learning models and optimized pipeline design (AutoML).
Self-Supervised Deep Learning based Surrogate Models for Fault-Tolerant Edge Computing
MVRSM algorithm for optimising mixed-variable expensive cost functions.
Benchmarking Surrogate-based Optimisation Algorithms on Expensive Black-box Functions
Python platform for parallel Surrogate-Based Optimization
This is the official repository of the AI for TSP competition at IJCAI 2021
Add a description, image, and links to the surrogate-based-optimization topic page so that developers can more easily learn about it.
To associate your repository with the surrogate-based-optimization topic, visit your repo's landing page and select "manage topics."