Fuzzy Rule Interpolation-based Reinforcement Learning
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Updated
Aug 1, 2022 - MATLAB
Fuzzy Rule Interpolation-based Reinforcement Learning
This repo implements Deep Q-Network (DQN) for solving the Mountain Car v0 environment (discrete version) of the Gymnasium library using Python 3.8 and PyTorch 2.0.1 with a custom reward function for faster convergence.
Q-Learning algorithm for OpenAI Mountain Car gym.
Deep Active Inference of Mountain Car Problem
Optimization of the Mountain Car problem for CDMO class at @unibo
Artificial Intelligence State-of-the-art algorithms
Fuzzy Rule Interpolation-based Reinforcement Learning (C + AVX port)
using Q-learning in 2 environment
Reinforcement Learning for the Mountain Car Problem using Coarse Coding, delivered as the third and final project of IT3105 - Artificial Intelligence Programming at NTNU.
...and generating ugly state-action maps for MountainCar-v0
Fun project that allows you to control a Mountain Car based on hand recognition using your own Web Cam. End-to-end project using Tensorflow Keras as recognition model.
Mountain Car v0 using Q-Learning
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