Multi-Objective Reinforcement Learning algorithms implementations.
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Updated
Oct 31, 2024 - Python
Multi-Objective Reinforcement Learning algorithms implementations.
Multi-objective Gymnasium environments for reinforcement learning
AutoOED: Automated Optimal Experimental Design Platform
A Python 3 gradient-free optimization library
[ICML 2020] Prediction-Guided Multi-Objective Reinforcement Learning for Continuous Robot Control
[NeurIPS 2020] Diversity-Guided Efficient Multi-Objective Optimization With Batch Evaluations
A dependency free library of standardized optimization test functions written in pure Python.
Genetic Algorithm (GA) for a Multi-objective Optimization Problem (MOP)
DeepCoord: Self-Learning Network and Service Coordination Using Deep Reinforcement Learning
MOEA/D is a general-purpose algorithm framework. It decomposes a multi-objective optimization problem into a number of single-objective optimization sub-problems and then uses a search heuristic to optimize these sub-problems simultaneously and cooperatively.
Surrogate-Based Architecture Optimization toolbox
Python Multi-Objective Simulation Optimization: a package for using, implementing, and testing simulation optimization algorithms.
Paxplot is a Python visualization library for parallel coordinate plots based on matplotlib.
Code for the paper Optimistic Linear Support and Successor Features as a Basis for Optimal Policy Transfer - ICML 2022
Bayesian Optimization and Uncertainty Analyses Tools
An algorithm to calculate all pure strategy Nash equilibria in multi-objective games with quasiconvex utility functions
Multi-Objective Multi Agent Reinforcement Learning (MOMARL) experiments.
Algorithms for computing or learning equilibria in multi-objective games
Multi-objective Bayesian optimisation framework.
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