mirror of
https://github.com/saymrwulf/stable-baselines3.git
synced 2026-05-14 20:58:03 +00:00
453 lines
15 KiB
Python
453 lines
15 KiB
Python
import operator
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import warnings
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import gym
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import numpy as np
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import pytest
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from gym import spaces
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from stable_baselines3 import SAC, TD3, HerReplayBuffer
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from stable_baselines3.common.monitor import Monitor
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from stable_baselines3.common.running_mean_std import RunningMeanStd
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from stable_baselines3.common.vec_env import (
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DummyVecEnv,
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VecFrameStack,
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VecNormalize,
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sync_envs_normalization,
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unwrap_vec_normalize,
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)
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ENV_ID = "Pendulum-v1"
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class DummyRewardEnv(gym.Env):
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metadata = {}
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def __init__(self, return_reward_idx=0):
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self.action_space = gym.spaces.Discrete(2)
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self.observation_space = gym.spaces.Box(low=np.array([-1.0]), high=np.array([1.0]))
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self.returned_rewards = [0, 1, 3, 4]
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self.return_reward_idx = return_reward_idx
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self.t = self.return_reward_idx
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def step(self, action):
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self.t += 1
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index = (self.t + self.return_reward_idx) % len(self.returned_rewards)
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returned_value = self.returned_rewards[index]
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return np.array([returned_value]), returned_value, self.t == len(self.returned_rewards), {}
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def reset(self):
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self.t = 0
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return np.array([self.returned_rewards[self.return_reward_idx]])
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class DummyDictEnv(gym.GoalEnv):
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"""
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Dummy gym goal env for testing purposes
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"""
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def __init__(self):
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super(DummyDictEnv, self).__init__()
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self.observation_space = spaces.Dict(
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{
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"observation": spaces.Box(low=-20.0, high=20.0, shape=(4,), dtype=np.float32),
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"achieved_goal": spaces.Box(low=-20.0, high=20.0, shape=(4,), dtype=np.float32),
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"desired_goal": spaces.Box(low=-20.0, high=20.0, shape=(4,), dtype=np.float32),
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}
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)
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self.action_space = spaces.Box(low=-1, high=1, shape=(3,), dtype=np.float32)
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def reset(self):
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return self.observation_space.sample()
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def step(self, action):
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obs = self.observation_space.sample()
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reward = self.compute_reward(obs["achieved_goal"], obs["desired_goal"], {})
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done = np.random.rand() > 0.8
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return obs, reward, done, {}
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def compute_reward(self, achieved_goal: np.ndarray, desired_goal: np.ndarray, _info) -> np.float32:
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distance = np.linalg.norm(achieved_goal - desired_goal, axis=-1)
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return -(distance > 0).astype(np.float32)
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class DummyMixedDictEnv(gym.Env):
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"""
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Dummy mixed gym env for testing purposes
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"""
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def __init__(self):
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super().__init__()
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self.observation_space = spaces.Dict(
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{
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"obs1": spaces.Box(low=-20.0, high=20.0, shape=(4,), dtype=np.float32),
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"obs2": spaces.Discrete(1),
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"obs3": spaces.Box(low=-20.0, high=20.0, shape=(4,), dtype=np.float32),
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}
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)
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self.action_space = spaces.Box(low=-1, high=1, shape=(3,), dtype=np.float32)
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def reset(self):
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return self.observation_space.sample()
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def step(self, action):
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obs = self.observation_space.sample()
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done = np.random.rand() > 0.8
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return obs, 0.0, done, {}
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def allclose(obs_1, obs_2):
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"""
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Generalized np.allclose() to work with dict spaces.
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"""
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if isinstance(obs_1, dict):
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all_close = True
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for key in obs_1.keys():
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if not np.allclose(obs_1[key], obs_2[key]):
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all_close = False
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break
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return all_close
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return np.allclose(obs_1, obs_2)
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def make_env():
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return Monitor(gym.make(ENV_ID))
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def make_dict_env():
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return Monitor(DummyDictEnv())
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def test_deprecation():
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venv = DummyVecEnv([lambda: gym.make("CartPole-v1")])
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venv = VecNormalize(venv)
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with warnings.catch_warnings(record=True) as record:
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assert np.allclose(venv.ret, venv.returns)
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# Deprecation warning when using .ret
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assert len(record) == 1
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def check_rms_equal(rmsa, rmsb):
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if isinstance(rmsa, dict):
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for key in rmsa.keys():
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assert np.all(rmsa[key].mean == rmsb[key].mean)
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assert np.all(rmsa[key].var == rmsb[key].var)
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assert np.all(rmsa[key].count == rmsb[key].count)
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else:
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assert np.all(rmsa.mean == rmsb.mean)
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assert np.all(rmsa.var == rmsb.var)
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assert np.all(rmsa.count == rmsb.count)
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def check_vec_norm_equal(norma, normb):
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assert norma.observation_space == normb.observation_space
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assert norma.action_space == normb.action_space
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assert norma.num_envs == normb.num_envs
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check_rms_equal(norma.obs_rms, normb.obs_rms)
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check_rms_equal(norma.ret_rms, normb.ret_rms)
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assert norma.clip_obs == normb.clip_obs
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assert norma.clip_reward == normb.clip_reward
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assert norma.norm_obs == normb.norm_obs
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assert norma.norm_reward == normb.norm_reward
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assert np.all(norma.returns == normb.returns)
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assert norma.gamma == normb.gamma
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assert norma.epsilon == normb.epsilon
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assert norma.training == normb.training
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def _make_warmstart(env_fn, **kwargs):
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"""Warm-start VecNormalize by stepping through 100 actions."""
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venv = DummyVecEnv([env_fn])
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venv = VecNormalize(venv, **kwargs)
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venv.reset()
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venv.get_original_obs()
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for _ in range(100):
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actions = [venv.action_space.sample()]
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venv.step(actions)
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return venv
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def _make_warmstart_cliffwalking(**kwargs):
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"""Warm-start VecNormalize by stepping through CliffWalking"""
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return _make_warmstart(lambda: gym.make("CliffWalking-v0"), **kwargs)
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def _make_warmstart_cartpole():
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"""Warm-start VecNormalize by stepping through CartPole"""
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return _make_warmstart(lambda: gym.make("CartPole-v1"))
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def _make_warmstart_dict_env(**kwargs):
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"""Warm-start VecNormalize by stepping through DummyDictEnv"""
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return _make_warmstart(make_dict_env, **kwargs)
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def test_runningmeanstd():
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"""Test RunningMeanStd object"""
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for (x_1, x_2, x_3) in [
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(np.random.randn(3), np.random.randn(4), np.random.randn(5)),
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(np.random.randn(3, 2), np.random.randn(4, 2), np.random.randn(5, 2)),
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]:
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rms = RunningMeanStd(epsilon=0.0, shape=x_1.shape[1:])
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x_cat = np.concatenate([x_1, x_2, x_3], axis=0)
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moments_1 = [x_cat.mean(axis=0), x_cat.var(axis=0)]
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rms.update(x_1)
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rms.update(x_2)
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rms.update(x_3)
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moments_2 = [rms.mean, rms.var]
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assert np.allclose(moments_1, moments_2)
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def test_combining_stats():
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np.random.seed(4)
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for shape in [(1,), (3,), (3, 4)]:
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values = []
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rms_1 = RunningMeanStd(shape=shape)
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rms_2 = RunningMeanStd(shape=shape)
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rms_3 = RunningMeanStd(shape=shape)
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for _ in range(15):
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value = np.random.randn(*shape)
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rms_1.update(value)
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rms_3.update(value)
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values.append(value)
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for _ in range(19):
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# Shift the values
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value = np.random.randn(*shape) + 1.0
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rms_2.update(value)
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rms_3.update(value)
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values.append(value)
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rms_1.combine(rms_2)
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assert np.allclose(rms_3.mean, rms_1.mean)
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assert np.allclose(rms_3.var, rms_1.var)
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rms_4 = rms_3.copy()
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assert np.allclose(rms_4.mean, rms_3.mean)
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assert np.allclose(rms_4.var, rms_3.var)
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assert np.allclose(rms_4.count, rms_3.count)
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assert id(rms_4.mean) != id(rms_3.mean)
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assert id(rms_4.var) != id(rms_3.var)
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x_cat = np.concatenate(values, axis=0)
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assert np.allclose(x_cat.mean(axis=0), rms_4.mean)
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assert np.allclose(x_cat.var(axis=0), rms_4.var)
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def test_obs_rms_vec_normalize():
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env_fns = [lambda: DummyRewardEnv(0), lambda: DummyRewardEnv(1)]
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env = DummyVecEnv(env_fns)
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env = VecNormalize(env)
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env.reset()
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assert np.allclose(env.obs_rms.mean, 0.5, atol=1e-4)
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assert np.allclose(env.ret_rms.mean, 0.0, atol=1e-4)
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env.step([env.action_space.sample() for _ in range(len(env_fns))])
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assert np.allclose(env.obs_rms.mean, 1.25, atol=1e-4)
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assert np.allclose(env.ret_rms.mean, 2, atol=1e-4)
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# Check convergence to true mean
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for _ in range(3000):
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env.step([env.action_space.sample() for _ in range(len(env_fns))])
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assert np.allclose(env.obs_rms.mean, 2.0, atol=1e-3)
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assert np.allclose(env.ret_rms.mean, 5.688, atol=1e-3)
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@pytest.mark.parametrize("make_env", [make_env, make_dict_env])
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def test_vec_env(tmp_path, make_env):
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"""Test VecNormalize Object"""
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clip_obs = 0.5
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clip_reward = 5.0
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orig_venv = DummyVecEnv([make_env])
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norm_venv = VecNormalize(orig_venv, norm_obs=True, norm_reward=True, clip_obs=clip_obs, clip_reward=clip_reward)
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_, done = norm_venv.reset(), [False]
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while not done[0]:
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actions = [norm_venv.action_space.sample()]
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obs, rew, done, _ = norm_venv.step(actions)
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if isinstance(obs, dict):
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for key in obs.keys():
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assert np.max(np.abs(obs[key])) <= clip_obs
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else:
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assert np.max(np.abs(obs)) <= clip_obs
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assert np.max(np.abs(rew)) <= clip_reward
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path = tmp_path / "vec_normalize"
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norm_venv.save(path)
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deserialized = VecNormalize.load(path, venv=orig_venv)
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check_vec_norm_equal(norm_venv, deserialized)
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def test_get_original():
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venv = _make_warmstart_cartpole()
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for _ in range(3):
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actions = [venv.action_space.sample()]
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obs, rewards, _, _ = venv.step(actions)
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obs = obs[0]
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orig_obs = venv.get_original_obs()[0]
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rewards = rewards[0]
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orig_rewards = venv.get_original_reward()[0]
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assert np.all(orig_rewards == 1)
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assert orig_obs.shape == obs.shape
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assert orig_rewards.dtype == rewards.dtype
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assert not np.array_equal(orig_obs, obs)
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assert not np.array_equal(orig_rewards, rewards)
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np.testing.assert_allclose(venv.normalize_obs(orig_obs), obs)
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np.testing.assert_allclose(venv.normalize_reward(orig_rewards), rewards)
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def test_get_original_dict():
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venv = _make_warmstart_dict_env()
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for _ in range(3):
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actions = [venv.action_space.sample()]
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obs, rewards, _, _ = venv.step(actions)
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# obs = obs[0]
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orig_obs = venv.get_original_obs()
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rewards = rewards[0]
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orig_rewards = venv.get_original_reward()[0]
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for key in orig_obs.keys():
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assert orig_obs[key].shape == obs[key].shape
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assert orig_rewards.dtype == rewards.dtype
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assert not allclose(orig_obs, obs)
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assert not np.array_equal(orig_rewards, rewards)
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assert allclose(venv.normalize_obs(orig_obs), obs)
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np.testing.assert_allclose(venv.normalize_reward(orig_rewards), rewards)
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def test_normalize_external():
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venv = _make_warmstart_cartpole()
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rewards = np.array([1, 1])
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norm_rewards = venv.normalize_reward(rewards)
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assert norm_rewards.shape == rewards.shape
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# Episode return is almost always >= 1 in CartPole. So reward should shrink.
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assert np.all(norm_rewards < 1)
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def test_normalize_dict_selected_keys():
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venv = _make_warmstart_dict_env(norm_obs=True, norm_obs_keys=["observation"])
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for _ in range(3):
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actions = [venv.action_space.sample()]
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obs, rewards, _, _ = venv.step(actions)
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orig_obs = venv.get_original_obs()
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# "observation" is expected to be normalized
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np.testing.assert_array_compare(operator.__ne__, obs["observation"], orig_obs["observation"])
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assert allclose(venv.normalize_obs(orig_obs), obs)
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# other keys are expected to be presented "as is"
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np.testing.assert_array_equal(obs["achieved_goal"], orig_obs["achieved_goal"])
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@pytest.mark.parametrize("model_class", [SAC, TD3, HerReplayBuffer])
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@pytest.mark.parametrize("online_sampling", [False, True])
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def test_offpolicy_normalization(model_class, online_sampling):
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if online_sampling and model_class != HerReplayBuffer:
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pytest.skip()
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make_env_ = make_dict_env if model_class == HerReplayBuffer else make_env
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env = DummyVecEnv([make_env_])
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env = VecNormalize(env, norm_obs=True, norm_reward=True, clip_obs=10.0, clip_reward=10.0)
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eval_env = DummyVecEnv([make_env_])
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eval_env = VecNormalize(eval_env, training=False, norm_obs=True, norm_reward=False, clip_obs=10.0, clip_reward=10.0)
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if model_class == HerReplayBuffer:
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model = SAC(
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"MultiInputPolicy",
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env,
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verbose=1,
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learning_starts=100,
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policy_kwargs=dict(net_arch=[64]),
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replay_buffer_kwargs=dict(
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max_episode_length=100,
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online_sampling=online_sampling,
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n_sampled_goal=2,
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),
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replay_buffer_class=HerReplayBuffer,
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seed=2,
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)
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else:
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model = model_class("MlpPolicy", env, verbose=1, learning_starts=100, policy_kwargs=dict(net_arch=[64]))
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# Check that VecNormalize object is correctly updated
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assert model.get_vec_normalize_env() is env
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model.set_env(eval_env)
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assert model.get_vec_normalize_env() is eval_env
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model.learn(total_timesteps=10)
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model.set_env(env)
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model.learn(total_timesteps=150, eval_env=eval_env, eval_freq=75)
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# Check getter
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assert isinstance(model.get_vec_normalize_env(), VecNormalize)
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@pytest.mark.parametrize("make_env", [make_env, make_dict_env])
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def test_sync_vec_normalize(make_env):
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env = DummyVecEnv([make_env])
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assert unwrap_vec_normalize(env) is None
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env = VecNormalize(env, norm_obs=True, norm_reward=True, clip_obs=100.0, clip_reward=100.0)
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assert isinstance(unwrap_vec_normalize(env), VecNormalize)
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if not isinstance(env.observation_space, spaces.Dict):
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env = VecFrameStack(env, 1)
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assert isinstance(unwrap_vec_normalize(env), VecNormalize)
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eval_env = DummyVecEnv([make_env])
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eval_env = VecNormalize(eval_env, training=False, norm_obs=True, norm_reward=True, clip_obs=100.0, clip_reward=100.0)
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if not isinstance(env.observation_space, spaces.Dict):
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eval_env = VecFrameStack(eval_env, 1)
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env.seed(0)
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env.action_space.seed(0)
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env.reset()
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# Initialize running mean
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latest_reward = None
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for _ in range(100):
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_, latest_reward, _, _ = env.step([env.action_space.sample()])
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# Check that unnormalized reward is same as original reward
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original_latest_reward = env.get_original_reward()
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assert np.allclose(original_latest_reward, env.unnormalize_reward(latest_reward))
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obs = env.reset()
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dummy_rewards = np.random.rand(10)
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original_obs = env.get_original_obs()
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# Check that unnormalization works
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assert allclose(original_obs, env.unnormalize_obs(obs))
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# Normalization must be different (between different environments)
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assert not allclose(obs, eval_env.normalize_obs(original_obs))
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# Test syncing of parameters
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sync_envs_normalization(env, eval_env)
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# Now they must be synced
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assert allclose(obs, eval_env.normalize_obs(original_obs))
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assert allclose(env.normalize_reward(dummy_rewards), eval_env.normalize_reward(dummy_rewards))
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def test_discrete_obs():
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with pytest.raises(ValueError, match=".*only supports.*"):
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_make_warmstart_cliffwalking()
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# Smoke test that it runs with norm_obs False
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_make_warmstart_cliffwalking(norm_obs=False)
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def test_non_dict_obs_keys():
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with pytest.raises(ValueError, match=".*is applicable only.*"):
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_make_warmstart(lambda: DummyRewardEnv(), norm_obs_keys=["key"])
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with pytest.raises(ValueError, match=".* explicitely pass the observation keys.*"):
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_make_warmstart(lambda: DummyMixedDictEnv())
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# Ignore Discrete observation key
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_make_warmstart(lambda: DummyMixedDictEnv(), norm_obs_keys=["obs1", "obs3"])
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