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Dqn SpaceInvadersNoFrameskip V4

Developed by ThomasSimonini
This is a DQN agent trained using the Stable Baselines3 library, specifically designed to play the SpaceInvadersNoFrameskip-v4 game.
Downloads 32
Release Time : 6/7/2022

Model Overview

This model is trained with the Deep Q-Network (DQN) algorithm and can autonomously play the Atari game Space Invaders, learning strategies through reinforcement learning from the game environment.

Model Features

Implemented with Stable Baselines3
Utilizes the reliable stable-baselines3 library to ensure the quality and performance of the algorithm implementation.
Optimized for Atari Games
Specifically trained and optimized for the Atari game environment SpaceInvadersNoFrameskip-v4.
Frame Stacking
Uses a 4-frame stacking technique to help the agent understand dynamic changes in the game.

Model Capabilities

Autonomous Atari gameplay
Reinforcement learning strategy acquisition
Game state comprehension
Real-time decision making

Use Cases

Game AI
Space Invaders Auto Player
This model can autonomously play Space Invaders without human intervention.
Average reward 329.00 +/- 157.97
Reinforcement Learning Research
DQN Algorithm Benchmark
Can serve as a performance benchmark for the DQN algorithm on Atari games.
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