FrozenLake-v1-8x8-no_slippery q-learning reinforcement-learning custom-implementation

Q-Learning Agent playing FrozenLake-v1

This is a trained model of a Q-Learning agent playing FrozenLake-v1 .

n_training_episodes = 200000 # Total training episodes <br> learning_rate = 0.8 # Learning rate <br>

Evaluation parameters

n_eval_episodes = 100 # Total number of test episodes <br>

Environment parameters <br>

env_id = "FrozenLake-v1" # Name of the environment <br> max_steps = 100 # Max steps per episode <br> gamma = 0.99 # Discounting rate <br> eval_seed = [] # The evaluation seed of the environment <br>

Exploration parameters <br>

epsilon = 1.0 # Exploration rate <br> max_epsilon = 1.0 # Exploration probability at start <br> min_epsilon = 0.05 # Minimum exploration probability <br> decay_rate = 0.00005 # Exponential decay rate for exploration prob <br>