mirror of
https://github.com/saymrwulf/stable-baselines3.git
synced 2026-05-31 23:28:05 +00:00
* First commit * Fixing missing refs from a quick merge from master * Reformat * Adding DictBuffers * Reformat * Minor reformat * added slow dict test. Added SACMultiInputPolicy for future. Added private static image transpose helper to common policy * Ran black on buffers * Ran isort * Adding StackedObservations classes used within VecStackEnvs wrappers. Made test_dict_env shorter and removed slow * Running isort :facepalm * Fixed typing issues * Adding docstrings and typing. Using util for moving data to device. * Fixed trailing commas * Fix types * Minor edits * Avoid duplicating code * Fix calls to parents * Adding assert to buffers. Updating changelong * Running format on buffers * Adding multi-input policies to dqn,td3,a2c. Fixing warnings. Fixed bug with DictReplayBuffer as Replay buffers use only 1 env * Fixing warnings, splitting is_vectorized_observation into multiple functions based on space type * Created envs folder in common. Updated imports. Moved stacked_obs to vec_env folder * Moved envs to envs directory. Moved stacked obs to vec_envs. Started update on documentation * Fixes * Running code style * Update docstrings on torch_layers * Decapitalize non-constant variables * Using NatureCNN architecture in combined extractor. Increasing img size in multi input env. Adding memory reduction in test * Update doc * Update doc * Fix format * Removing NineRoom env. Using nested preprocess. Removing mutable default args * running code style * Passing channel check through to stacked dict observations. * Running black * Adding channel control to SimpleMultiObsEnv. Passing check_channels to CombinedExtractor * Remove optimize memory for dict buffers * Update doc * Move identity env * Minor edits + bump version * Update doc * Fix doc build * Bug fixes + add support for more type of dict env * Fixes + add multi env test * Add support for vectranspose * Fix stacked obs for dict and add tests * Add check for nested spaces. Fix dict-subprocvecenv test * Fix (single) pytype error * Simplify CombinedExtractor * Fix tests * Fix check * Merge branch 'master' into feat/dict_observations * Fix for net_arch with dict and vector obs * Fixes * Add consistency test * Update env checker * Add some docs on dict obs * Update default CNN feature vector size * Refactor HER (#351) * Start refactoring HER * Fixes * Additional fixes * Faster tests * WIP: HER as a custom replay buffer * New replay only version (working with DQN) * Add support for all off-policy algorithms * Fix saving/loading * Remove ObsDictWrapper and add VecNormalize tests with dict * Stable-Baselines3 v1.0 (#354) * Bump version and update doc * Fix name * Apply suggestions from code review Co-authored-by: Adam Gleave <adam@gleave.me> * Update docs/index.rst Co-authored-by: Adam Gleave <adam@gleave.me> * Update wording for RL zoo Co-authored-by: Adam Gleave <adam@gleave.me> * Add gym-pybullet-drones project (#358) * Update projects.rst Added gym-pybullet-drones * Update projects.rst Longer title underline * Update changelog Co-authored-by: Antonin Raffin <antonin.raffin@ensta.org> * Include SuperSuit in projects (#359) * include supersuit * longer title underline * Update changelog.rst * Fix default arguments + add bugbear (#363) * Fix potential bug + add bug bear * Remove unused variables * Minor: version bump * Add code of conduct + update doc (#373) * Add code of conduct * Fix DQN doc example * Update doc (channel-last/first) * Apply suggestions from code review Co-authored-by: Anssi <kaneran21@hotmail.com> * Apply suggestions from code review Co-authored-by: Adam Gleave <adam@gleave.me> Co-authored-by: Anssi <kaneran21@hotmail.com> Co-authored-by: Adam Gleave <adam@gleave.me> * Make installation command compatible with ZSH (#376) * Add quotes * Add Zsh bracket info * Add clarify pip installation line * Make note bold * Add Zsh pip installation note * Add handle timeouts param * Fixes * Fixes (buffer size, extend test) * Fix `max_episode_length` redefinition * Fix potential issue * Add some docs on dict obs * Fix performance bug * Fix slowdown * Add package to install (#378) * Add package to install * Update docs packages installation command Co-authored-by: Antonin RAFFIN <antonin.raffin@ensta.org> * Fix backward compat + add test * Fix VecEnv detection * Update doc * Fix vec env check * Support for `VecMonitor` for gym3-style environments (#311) * add vectorized monitor * auto format of the code * add documentation and VecExtractDictObs * refactor and add test cases * add test cases and format * avoid circular import and fix doc * fix type * fix type * oops * Update stable_baselines3/common/monitor.py Co-authored-by: Antonin RAFFIN <antonin.raffin@ensta.org> * Update stable_baselines3/common/monitor.py Co-authored-by: Antonin RAFFIN <antonin.raffin@ensta.org> * add test cases * update changelog * fix mutable argument * quick fix * Apply suggestions from code review * fix terminal observation for gym3 envs * delete comment * Update doc and bump version * Add warning when already using `Monitor` wrapper * Update vecmonitor tests * Fixes Co-authored-by: Antonin RAFFIN <antonin.raffin@ensta.org> * Reformat * Fixed loading of ``ent_coef`` for ``SAC`` and ``TQC``, it was not optimized anymore (#392) * Fix ent coef loading bug * Add test * Add comment * Reuse save path * Add test for GAE + rename `RolloutBuffer.dones` for clarification (#375) * Fix return computation + add test for GAE * Rename `last_dones` to `episode_starts` for clarification * Revert advantage * Cleanup test * Rename variable * Clarify return computation * Clarify docs * Add multi-episode rollout test * Reformat Co-authored-by: Anssi "Miffyli" Kanervisto <kaneran21@hotmail.com> * Fixed saving of `A2C` and `PPO` policy when using gSDE (#401) * Improve doc and replay buffer loading * Add support for images * Fix doc * Update Procgen doc * Update changelog * Update docstrings Co-authored-by: Adam Gleave <adam@gleave.me> Co-authored-by: Jacopo Panerati <jacopo.panerati@utoronto.ca> Co-authored-by: Justin Terry <justinkterry@gmail.com> Co-authored-by: Anssi <kaneran21@hotmail.com> Co-authored-by: Tom Dörr <tomdoerr96@gmail.com> Co-authored-by: Tom Dörr <tom.doerr@tum.de> Co-authored-by: Costa Huang <costa.huang@outlook.com> * Update doc and minor fixes * Update doc * Added note about MultiInputPolicy in error of NatureCNN * Merge branch 'master' into feat/dict_observations * Address comments * Naming clarifications * Actually saving the file would be nice * Fix edge case when doing online sampling with HER * Cleanup * Add sanity check Co-authored-by: Antonin RAFFIN <antonin.raffin@ensta.org> Co-authored-by: Anssi "Miffyli" Kanervisto <kaneran21@hotmail.com> Co-authored-by: Adam Gleave <adam@gleave.me> Co-authored-by: Jacopo Panerati <jacopo.panerati@utoronto.ca> Co-authored-by: Justin Terry <justinkterry@gmail.com> Co-authored-by: Tom Dörr <tomdoerr96@gmail.com> Co-authored-by: Tom Dörr <tom.doerr@tum.de> Co-authored-by: Costa Huang <costa.huang@outlook.com>
309 lines
9.8 KiB
Python
309 lines
9.8 KiB
Python
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 A2C, DDPG, DQN, PPO, SAC, TD3
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from stable_baselines3.common.env_util import make_vec_env
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from stable_baselines3.common.envs import BitFlippingEnv, SimpleMultiObsEnv
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from stable_baselines3.common.evaluation import evaluate_policy
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from stable_baselines3.common.vec_env import DummyVecEnv, SubprocVecEnv, VecFrameStack, VecNormalize
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class DummyDictEnv(gym.Env):
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"""Custom Environment for testing purposes only"""
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metadata = {"render.modes": ["human"]}
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def __init__(
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self,
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use_discrete_actions=False,
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channel_last=False,
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nested_dict_obs=False,
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vec_only=False,
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):
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super().__init__()
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if use_discrete_actions:
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self.action_space = spaces.Discrete(3)
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else:
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self.action_space = spaces.Box(low=-1, high=1, shape=(2,), dtype=np.float32)
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N_CHANNELS = 1
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HEIGHT = 64
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WIDTH = 64
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if channel_last:
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obs_shape = (HEIGHT, WIDTH, N_CHANNELS)
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else:
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obs_shape = (N_CHANNELS, HEIGHT, WIDTH)
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self.observation_space = spaces.Dict(
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{
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# Image obs
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"img": spaces.Box(low=0, high=255, shape=obs_shape, dtype=np.uint8),
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# Vector obs
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"vec": spaces.Box(low=-1, high=1, shape=(2,), dtype=np.float32),
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# Discrete obs
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"discrete": spaces.Discrete(4),
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}
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)
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# For checking consistency with normal MlpPolicy
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if vec_only:
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self.observation_space = spaces.Dict(
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{
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# Vector obs
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"vec": spaces.Box(low=-1, high=1, shape=(2,), dtype=np.float32),
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}
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)
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if nested_dict_obs:
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# Add dictionary observation inside observation space
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self.observation_space.spaces["nested-dict"] = spaces.Dict({"nested-dict-discrete": spaces.Discrete(4)})
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def seed(self, seed=None):
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if seed is not None:
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self.observation_space.seed(seed)
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def step(self, action):
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reward = 0.0
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done = False
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return self.observation_space.sample(), reward, done, {}
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def compute_reward(self, achieved_goal, desired_goal, info):
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return np.zeros((len(achieved_goal),))
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def reset(self):
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return self.observation_space.sample()
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def render(self, mode="human"):
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pass
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@pytest.mark.parametrize("model_class", [PPO, A2C])
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def test_goal_env(model_class):
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env = BitFlippingEnv(n_bits=4)
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# check that goal env works for PPO/A2C that cannot use HER replay buffer
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model = model_class("MultiInputPolicy", env, n_steps=64).learn(250)
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evaluate_policy(model, model.get_env())
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@pytest.mark.parametrize("model_class", [PPO, A2C, DQN, DDPG, SAC, TD3])
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def test_consistency(model_class):
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"""
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Make sure that dict obs with vector only vs using flatten obs is equivalent.
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This ensures notable that the network architectures are the same.
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"""
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use_discrete_actions = model_class == DQN
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dict_env = DummyDictEnv(use_discrete_actions=use_discrete_actions, vec_only=True)
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dict_env = gym.wrappers.TimeLimit(dict_env, 100)
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env = gym.wrappers.FlattenObservation(dict_env)
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dict_env.seed(10)
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obs = dict_env.reset()
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kwargs = {}
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n_steps = 256
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if model_class in {A2C, PPO}:
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kwargs = dict(
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n_steps=128,
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)
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else:
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# Avoid memory error when using replay buffer
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# Reduce the size of the features and make learning faster
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kwargs = dict(
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buffer_size=250,
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train_freq=8,
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gradient_steps=1,
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)
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if model_class == DQN:
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kwargs["learning_starts"] = 0
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dict_model = model_class("MultiInputPolicy", dict_env, gamma=0.5, seed=1, **kwargs)
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action_before_learning_1, _ = dict_model.predict(obs, deterministic=True)
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dict_model.learn(total_timesteps=n_steps)
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normal_model = model_class("MlpPolicy", env, gamma=0.5, seed=1, **kwargs)
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action_before_learning_2, _ = normal_model.predict(obs["vec"], deterministic=True)
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normal_model.learn(total_timesteps=n_steps)
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action_1, _ = dict_model.predict(obs, deterministic=True)
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action_2, _ = normal_model.predict(obs["vec"], deterministic=True)
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assert np.allclose(action_before_learning_1, action_before_learning_2)
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assert np.allclose(action_1, action_2)
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@pytest.mark.parametrize("model_class", [PPO, A2C, DQN, DDPG, SAC, TD3])
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@pytest.mark.parametrize("channel_last", [False, True])
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def test_dict_spaces(model_class, channel_last):
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"""
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Additional tests for PPO/A2C/SAC/DDPG/TD3/DQN to check observation space support
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with mixed observation.
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"""
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use_discrete_actions = model_class not in [SAC, TD3, DDPG]
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env = DummyDictEnv(use_discrete_actions=use_discrete_actions, channel_last=channel_last)
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env = gym.wrappers.TimeLimit(env, 100)
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kwargs = {}
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n_steps = 256
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if model_class in {A2C, PPO}:
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kwargs = dict(
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n_steps=128,
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policy_kwargs=dict(
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net_arch=[32],
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features_extractor_kwargs=dict(cnn_output_dim=32),
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),
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)
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else:
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# Avoid memory error when using replay buffer
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# Reduce the size of the features and make learning faster
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kwargs = dict(
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buffer_size=250,
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policy_kwargs=dict(
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net_arch=[32],
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features_extractor_kwargs=dict(cnn_output_dim=32),
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),
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train_freq=8,
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gradient_steps=1,
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)
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if model_class == DQN:
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kwargs["learning_starts"] = 0
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model = model_class("MultiInputPolicy", env, gamma=0.5, seed=1, **kwargs)
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model.learn(total_timesteps=n_steps)
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evaluate_policy(model, env, n_eval_episodes=5, warn=False)
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@pytest.mark.parametrize("model_class", [PPO, A2C])
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def test_multiprocessing(model_class):
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use_discrete_actions = model_class not in [SAC, TD3, DDPG]
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def make_env():
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env = DummyDictEnv(use_discrete_actions=use_discrete_actions, channel_last=False)
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env = gym.wrappers.TimeLimit(env, 100)
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return env
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env = make_vec_env(make_env, n_envs=2, vec_env_cls=SubprocVecEnv)
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kwargs = {}
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n_steps = 256
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if model_class in {A2C, PPO}:
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kwargs = dict(
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n_steps=128,
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policy_kwargs=dict(
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net_arch=[32],
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features_extractor_kwargs=dict(cnn_output_dim=32),
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),
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)
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model = model_class("MultiInputPolicy", env, gamma=0.5, seed=1, **kwargs)
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model.learn(total_timesteps=n_steps)
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@pytest.mark.parametrize("model_class", [PPO, A2C, DQN, DDPG, SAC, TD3])
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@pytest.mark.parametrize("channel_last", [False, True])
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def test_dict_vec_framestack(model_class, channel_last):
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"""
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Additional tests for PPO/A2C/SAC/DDPG/TD3/DQN to check observation space support
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for Dictionary spaces and VecEnvWrapper using MultiInputPolicy.
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"""
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use_discrete_actions = model_class not in [SAC, TD3, DDPG]
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channels_order = {"vec": None, "img": "last" if channel_last else "first"}
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env = DummyVecEnv(
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[lambda: SimpleMultiObsEnv(random_start=True, discrete_actions=use_discrete_actions, channel_last=channel_last)]
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)
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env = VecFrameStack(env, n_stack=3, channels_order=channels_order)
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kwargs = {}
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n_steps = 256
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if model_class in {A2C, PPO}:
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kwargs = dict(
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n_steps=128,
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policy_kwargs=dict(
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net_arch=[32],
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features_extractor_kwargs=dict(cnn_output_dim=32),
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),
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)
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else:
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# Avoid memory error when using replay buffer
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# Reduce the size of the features and make learning faster
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kwargs = dict(
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buffer_size=250,
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policy_kwargs=dict(
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net_arch=[32],
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features_extractor_kwargs=dict(cnn_output_dim=32),
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),
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train_freq=8,
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gradient_steps=1,
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)
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if model_class == DQN:
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kwargs["learning_starts"] = 0
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model = model_class("MultiInputPolicy", env, gamma=0.5, seed=1, **kwargs)
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model.learn(total_timesteps=n_steps)
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evaluate_policy(model, env, n_eval_episodes=5, warn=False)
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@pytest.mark.parametrize("model_class", [PPO, A2C, DQN, DDPG, SAC, TD3])
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def test_vec_normalize(model_class):
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"""
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Additional tests for PPO/A2C/SAC/DDPG/TD3/DQN to check observation space support
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for GoalEnv and VecNormalize using MultiInputPolicy.
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"""
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env = DummyVecEnv([lambda: BitFlippingEnv(n_bits=4, continuous=not (model_class == DQN))])
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env = VecNormalize(env)
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kwargs = {}
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n_steps = 256
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if model_class in {A2C, PPO}:
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kwargs = dict(
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n_steps=128,
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policy_kwargs=dict(
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net_arch=[32],
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),
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)
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else:
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# Avoid memory error when using replay buffer
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# Reduce the size of the features and make learning faster
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kwargs = dict(
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buffer_size=250,
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policy_kwargs=dict(
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net_arch=[32],
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),
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train_freq=8,
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gradient_steps=1,
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)
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if model_class == DQN:
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kwargs["learning_starts"] = 0
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model = model_class("MultiInputPolicy", env, gamma=0.5, seed=1, **kwargs)
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model.learn(total_timesteps=n_steps)
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evaluate_policy(model, env, n_eval_episodes=5, warn=False)
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def test_dict_nested():
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"""
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Make sure we throw an appropiate error with nested Dict observation spaces
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"""
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# Test without manual wrapping to vec-env
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env = DummyDictEnv(nested_dict_obs=True)
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with pytest.raises(NotImplementedError):
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_ = PPO("MultiInputPolicy", env, seed=1)
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# Test with manual vec-env wrapping
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with pytest.raises(NotImplementedError):
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env = DummyVecEnv([lambda: DummyDictEnv(nested_dict_obs=True)])
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