# Dueling DDQN with Prioritized Experience Replay Each experiment uses 3 seeds and is trained for 10k environment steps. The parameters used for Dueling DDQN with PER are the same parameters as described in the [following paper](https://arxiv.org/abs/1511.05952). ### Breakout Dueling DDQN with PER - single worker ```bash python3 coach.py -p Atari_Dueling_DDQN_with_PER_OpenAI -lvl breakout ``` Breakout Dueling DDQN with PER ### Pong Dueling DDQN with PER - single worker ```bash python3 coach.py -p Atari_Dueling_DDQN_with_PER_OpenAI -lvl pong ``` Pong Dueling DDQN with PER ### Space Invaders Dueling DDQN with PER - single worker ```bash python3 coach.py -p Atari_Dueling_DDQN_with_PER_OpenAI -lvl space_invaders ``` Space Invaders Dueling DDQN with PER