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Search results for video game dqn
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Cleanrl
⭐
3,947
High-quality single file implementation of Deep Reinforcement Learning algorithms with research-friendly features (PPO, DQN, C51, DDPG, TD3, SAC, PPG)
Gameaisdk
⭐
681
基于图像的游戏AI自动化框架
Simple_dqn
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656
Simple deep Q-learning agent.
Rl_games
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603
RL implementations
Flappybird
⭐
555
基于Java基础类库编写的Flappy Bird
Aigames
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484
use AI to play some games.
Deep Rl Trading
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248
playing idealized trading games with deep reinforcement learning
Minatar
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231
Jericho
⭐
229
A learning environment for man-made Interactive Fiction games.
Learning To Communicate Pytorch
⭐
187
Learning to Communicate with Deep Multi-Agent Reinforcement Learning in PyTorch
Atari
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185
AI research environment for the Atari 2600 games 🤖.
Retro Learning Environment
⭐
178
The Retro Learning Environment (RLE) -- a learning framework for AI
Drl
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151
Repository for codes of 'Deep Reinforcement Learning'
Game Ai
⭐
140
Game AI for Machine Learning for Hackers #3
Snake Ai Reinforcement
⭐
106
AI for Snake game trained from pixels using Deep Reinforcement Learning (DQN).
Kg Dqn
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56
Tetrisrl
⭐
52
A Tetris environment to train machine learning agents
Fruit Api
⭐
50
A Universal Deep Reinforcement Learning Framework
Dota2dqn
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47
This is a deep Q-network (reinforcement learning) AI for Dota 2
Left Shift
⭐
35
Using deep reinforcement learning to tackle the game 2048.
Pongreinforcementlearning
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35
Deep DQN Based Reinforcement Learning for simple Pong PyGame
Deep_q_learning
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34
A collection of experiments in reinforcement learning. For now, consists only of Deep Q Learning, but willl eventually contain others.
Gym Nes Mario Bros
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33
🐍 🏋 OpenAI GYM for Nintendo NES emulator FCEUX and 1983 game Mario Bros. + Double Q Learning for mastering the game
Connect4
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29
Solving board games like Connect4 using Deep Reinforcement Learning
Nesgym
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27
NES environment for openai gym
Playing Custom Games Using Deep Learning
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22
Implementation of Google's paper on playing atari games using deep learning in python.
Dqn Flappybird
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20
Play flappy bird with DQN, a demo for reinforcement learning, implemented using PyTorch
Snakeplissken
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15
A.I. snake game build using pygame | pytorch | python
Catchgame Qlearningexample Tensorflow
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12
Catch game example is translated by TensorFlow
Touhou10 Dqn
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12
DQN AI environment for the bullet hell games from Touhou 10 - Mountaion of Faith, using PyTorch
Dqn Play Supermario
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10
implement the classic reinforcement learning algorithm DQN to play supermariobrother
Serpinco_
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10
A Deep Q Network A.I agent that plays the old classic Nokia Snakes Game!
Dqn_game_tensorflow
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10
playing Atari game with Deep Q Learning (DQN & DDQN) in tensorflow
Snake Reinforcement Deep Q Learning
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10
Play Snake Game with Deep Q-Network(DQN)
Playing_atari
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9
learning to play atari games with reinforcement learning
Dqn_unity_keras
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9
Simple example of DQN for Unity using Keras
2018 Ai Study Seminar
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9
Snake On Pygame
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9
Snake game implemented in Pygame that can be controlled by human input and AI agents (DQN). Who's best? 🐍 🤖
Actor Critic Pytorch
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8
Actor Critic model to play Cartpole game
Rl_2048
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8
Implementation of Deep Q-network to play the game 2048 using Keras.
Flappybird
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7
FlappyBird Reinforcement Learning based on Pygame, OpenCV, Tensorflow
Bipedalwalker V2
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7
Solving openAI's game 'BipedalWalker-v2' with Deep Reinforcement Learning
Atari Dqn
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7
Beating ATARI games with Deep Q Learning.
Deeprl
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6
Standard DQN and dueling network for simple games
Pongconvolutionaldqn
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6
Example of DQN Convolutional Learning to play Pong
Dqn Attack Defense
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6
Implementation of Deep Q Learning to Solve Erdos-Selfridge-Spencer Games
Pong Dqn
⭐
5
RL Agent for Atari Game Pong
Playing_atari_with_reinforcement_learning
⭐
5
Implementation of multiple RL algorithms in pytorch (DQN, AC, ACER) and trained agents to play digital games
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