示例#1
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def test_continuous_action_space_norm():
    env = NormalizedGymEnv('MountainCarContinuous-v0')
    env.reset()
    env.step([0.1])
    env.close()
    assert GymEnv.env_action_space_is_discrete(env) is False
    assert GymEnv.get_env_action_space_dim(env) == 1
示例#2
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def test_discrete_action_space_norm():
    env = NormalizedGymEnv('CartPole-v0')
    env.reset()
    env.step(1)
    env.close()
    assert GymEnv.env_action_space_is_discrete(env) is True
    assert GymEnv.get_env_action_space_dim(env) == 2
示例#3
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def test_norm_reward():
    env = NormalizedGymEnv('MountainCarContinuous-v0', normalize_rewards=True)
    env.reset()
    [env.step([0.01]) for _ in range(env.spec.timestep_limit + 1)]