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-- tags: - reinforcement-learning - model-based-rl - dreamer - breakout - atari - gymnasium
Dreamer Agent for Breakout
This is a Model-Based Reinforcement Learning agent using the Dreamer architecture trained on Atari Breakout. Unlike model-free algorithms (like PPO), Dreamer learns a world model to predict future states and rewards, allowing it to "dream" and learn behaviors within its own internal simulation.
Training Details
- Algorithm: Dreamer (Model-Based RL)
- Environment: BreakoutNoFrameskip-v4
- Framework: PyTorch/TensorFlow (Dreamer implementation)
- Key Components: Recurrent State-Space Model (RSSM), Actor, and Critic.
Performance
- Behavior: Known for high sample efficiency and learning latent representations of the game environment.
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