Exploring state and action spaces
The Cliff Walking environment involves an agent crossing a grid world from start to goal while avoiding falling off a cliff. If the player moves to a cliff location it returns to the start location. The player makes moves until they reach the goal, which ends the episode. Your task is to explore the state and action spaces of this environment.
This exercise is part of the course
Reinforcement Learning with Gymnasium in Python
Exercise instructions
- Create an environment instance for Cliff Walking with with the environment ID
CliffWalking
. - Compute the size of the action space and store it in
num_actions
. - Compute the size of the state space and store it in
num_states
.
Hands-on interactive exercise
Have a go at this exercise by completing this sample code.
# Create the Cliff Walking environment
env = ____
# Compute the size of the action space
num_actions = ____
# Compute the size of the state space
num_states = ____
print("Number of actions:", num_actions)
print("Number of states:", num_states)