Deep reinforcement Q learning model to find the treasure at a fixed location from a random location in a maze
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Updated
Mar 9, 2022 - Python
Deep reinforcement Q learning model to find the treasure at a fixed location from a random location in a maze
Using the "Advantage Actor Critic(A2C)" Reinforcement Learning method, the 'Agent' is trained to play Atari's Breakout.
comparison of q-learning and deep q-learning
Tic Tac Toe game, designed to be used to train a Deep Neural Network via Reinforcement Learning (DQN). It can also be played by 2 humans and features a hard coded AI that never looses and will win if you do not do perfect play against it.
Reinfocement Learning Approach to solve Shortest Path Problem.
Deep Q Network with TensorFlow, used to solve CartPole environment from Gym.
I developed and trained a deep convolutional Q-learning model to enable an agent to successfully solve the Pacman gym environment.
Deep Q-learning for playing flappy bird game
In this project, an artificial agent is trained to solve the Maze task using DQN algorithm
Deep Reinforcement Learning algorithms to play Connect4 using a combination of Supervised Learning and Reinforcement Learning
Training AI to play snake
Project for AI in computer games
Dueling DQN agents in Pong game. Pong game written by @bearpaw7
This is a chatbot that I build using ChatGPT.
Artificial Neural Network (MLP) and Deep Q-Learning Implementation from scratch, only using numpy.
Experimentation on Carla Simulator for running DQN RL agents for Autonomous Driving
Researching new methods to leverage Coverage and Path Planning using DeepRL
reinforcement learning for power grid optimal operations and maintenance
Gamelike car simulation playground.
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