import gym import numpy as np import pytest from gym import spaces from stable_baselines3.common.bit_flipping_env import BitFlippingEnv from stable_baselines3.common.env_checker import check_env from stable_baselines3.common.identity_env import ( FakeImageEnv, IdentityEnv, IdentityEnvBox, IdentityEnvMultiBinary, IdentityEnvMultiDiscrete, ) ENV_CLASSES = [BitFlippingEnv, IdentityEnv, IdentityEnvBox, IdentityEnvMultiBinary, IdentityEnvMultiDiscrete, FakeImageEnv] @pytest.mark.parametrize("env_id", ["CartPole-v0", "Pendulum-v0"]) def test_env(env_id): """ Check that environmnent integrated in Gym pass the test. :param env_id: (str) """ env = gym.make(env_id) with pytest.warns(None) as record: check_env(env) # Pendulum-v0 will produce a warning because the action space is # in [-2, 2] and not [-1, 1] if env_id == "Pendulum-v0": assert len(record) == 1 else: # The other environments must pass without warning assert len(record) == 0 @pytest.mark.parametrize("env_class", ENV_CLASSES) def test_custom_envs(env_class): env = env_class() check_env(env) def test_high_dimension_action_space(): """ Test for continuous action space with more than one action. """ env = FakeImageEnv() # Patch the action space env.action_space = spaces.Box(low=-1, high=1, shape=(20,), dtype=np.float32) # Patch to avoid error def patched_step(_action): return env.observation_space.sample(), 0.0, False, {} env.step = patched_step check_env(env) @pytest.mark.parametrize( "new_obs_space", [ # Small image spaces.Box(low=0, high=255, shape=(32, 32, 3), dtype=np.uint8), # Range not in [0, 255] spaces.Box(low=0, high=1, shape=(64, 64, 3), dtype=np.uint8), # Wrong dtype spaces.Box(low=0, high=255, shape=(64, 64, 3), dtype=np.float32), # Not an image, it should be a 1D vector spaces.Box(low=-1, high=1, shape=(64, 3), dtype=np.float32), # Tuple space is not supported by SB spaces.Tuple([spaces.Discrete(5), spaces.Discrete(10)]), # Dict space is not supported by SB when env is not a GoalEnv spaces.Dict({"position": spaces.Discrete(5)}), ], ) def test_non_default_spaces(new_obs_space): env = FakeImageEnv() env.observation_space = new_obs_space # Patch methods to avoid errors env.reset = new_obs_space.sample def patched_step(_action): return new_obs_space.sample(), 0.0, False, {} env.step = patched_step with pytest.warns(UserWarning): check_env(env) def check_reset_assert_error(env, new_reset_return): """ Helper to check that the error is caught. :param env: (gym.Env) :param new_reset_return: (Any) """ def wrong_reset(): return new_reset_return # Patch the reset method with a wrong one env.reset = wrong_reset with pytest.raises(AssertionError): check_env(env) def test_common_failures_reset(): """ Test that common failure cases of the `reset_method` are caught """ env = IdentityEnvBox() # Return an observation that does not match the observation_space check_reset_assert_error(env, np.ones((3,))) # The observation is not a numpy array check_reset_assert_error(env, 1) # Return not only the observation check_reset_assert_error(env, (env.observation_space.sample(), False)) def check_step_assert_error(env, new_step_return=()): """ Helper to check that the error is caught. :param env: (gym.Env) :param new_step_return: (tuple) """ def wrong_step(_action): return new_step_return # Patch the step method with a wrong one env.step = wrong_step with pytest.raises(AssertionError): check_env(env) def test_common_failures_step(): """ Test that common failure cases of the `step` method are caught """ env = IdentityEnvBox() # Wrong shape for the observation check_step_assert_error(env, (np.ones((4,)), 1.0, False, {})) # Obs is not a numpy array check_step_assert_error(env, (1, 1.0, False, {})) # Return a wrong reward check_step_assert_error(env, (env.observation_space.sample(), np.ones(1), False, {})) # Info dict is not returned check_step_assert_error(env, (env.observation_space.sample(), 0.0, False)) # Done is not a boolean check_step_assert_error(env, (env.observation_space.sample(), 0.0, 3.0, {})) check_step_assert_error(env, (env.observation_space.sample(), 0.0, 1, {}))