mcts
Here are 21 public repositories matching this topic...
Java based alpha zero reinforcement learning. The generic base module allows implementation of any adversary board game. Example implementation for Tic Tac Toe.
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Sep 10, 2023 - Java
Ultimate Tic Tac Toe for Android
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Mar 9, 2019 - Java
In this project, my primary goal was to implement an AI player class powered by the Monte Carlo Tress Search algorithm which can play for a win as well as defend a defeat to compete with a Human player.
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Dec 30, 2023 - Java
Tic-Tac-Toe game using the Monte Carlo Tree Search algorithm, implemented in Java.
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Feb 13, 2022 - Java
This projects seeks to explore the performance and dynamics of agents playing in a full Java implemetation of the game Imperial (http://bit.ly/Imperial-wiki). An array of different agent architectures are used ranging from simple rule-based to MCTS-Deep-Neural-Network agents.
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Nov 14, 2023 - Java
Chinese Checkers computer player implementing Monte Carlo Tree Search
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Jun 19, 2019 - Java
MCTS for query rewrite
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May 6, 2022 - Java
MCTS/minimax turn-based game AI for Java
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Jun 14, 2018 - Java
Cranes problem with Monte Carlo Tree Search algorithm
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Feb 22, 2021 - Java
Abstract Strategy Board Games
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Jan 5, 2021 - Java
This repository contains the AI engine for a simplified version of Heartstone game
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Mar 24, 2018 - Java
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Apr 20, 2020 - Java
Reversi monte carlo tree search for android
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Aug 15, 2018 - Java
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Sep 15, 2019 - Java
This is the AI we created for a university course. It plays the famous game, Kalah.
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Dec 20, 2020 - Java
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