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https://gymnasium.farama.org/ https://gymnasium.farama.org/api/env/

gymnasium
!pip install gymnasium
import gymnasium as gym

Methods
gym.make() chooses universe
env.reset() starts the game
env.step(action) takes a step and returns (observation, reward, done, terminated, info)
env.seed() initializes random state

Attributes
gym.Env.observation_space observation space
gym.Env.action_space available actions
gym.Env.reward_range rewards
gym.Env.metadata metadata
gym.Env.spec information used to initialize env

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