Changelog
Release 2.2.1 (2023-11-17)
Support for options at reset, bug fixes and better error messages
Note
SB3 v2.2.0 was yanked after a breaking change was found in GH#1751. Please use SB3 v2.2.1 and not v2.2.0.
Breaking Changes:
Switched to
rufffor sorting imports (isort is no longer needed), black and ruff version now require a minimum versionDropped
x is Falsein favor ofnot x, which means that callbacks that wrongly returned None (instead of a boolean) will cause the training to stop (@iwishiwasaneagle)
New Features:
Improved error message of the
env_checkerfor env wrongly detected as GoalEnv (compute_reward()is defined)Improved error message when mixing Gym API with VecEnv API (see GH#1694)
Add support for setting
optionsat reset with VecEnv via theset_options()method. Same as seeds logic, options are reset at the end of an episode (@ReHoss)Added
rollout_buffer_classandrollout_buffer_kwargsarguments to on-policy algorithms (A2C and PPO)
Bug Fixes:
Prevents using squash_output and not use_sde in ActorCritcPolicy (@PatrickHelm)
Performs unscaling of actions in collect_rollout in OnPolicyAlgorithm (@PatrickHelm)
Moves VectorizedActionNoise into
_setup_learn()in OffPolicyAlgorithm (@PatrickHelm)Prevents out of bound error on Windows if no seed is passed (@PatrickHelm)
Calls
callback.update_locals()beforecallback.on_rollout_end()in OnPolicyAlgorithm (@PatrickHelm)Fixed replay buffer device after loading in OffPolicyAlgorithm (@PatrickHelm)
Fixed
render_modewhich was not properly loaded when usingVecNormalize.load()Fixed success reward dtype in
SimpleMultiObsEnv(@NixGD)Fixed check_env for Sequence observation space (@corentinlger)
Prevents instantiating BitFlippingEnv with conflicting observation spaces (@kylesayrs)
Fixed ResourceWarning when loading and saving models (files were not closed), please note that only path are closed automatically, the behavior stay the same for tempfiles (they need to be closed manually), the behavior is now consistent when loading/saving replay buffer
SB3-Contrib
Added
set_optionsforAsyncEvalAdded
rollout_buffer_classandrollout_buffer_kwargsarguments to TRPO
RL Zoo
Removed gym dependency, the package is still required for some pretrained agents.
Added –eval-env-kwargs to train.py (@Quentin18)
Added ppo_lstm to hyperparams_opt.py (@technocrat13)
Upgraded to pybullet_envs_gymnasium>=0.4.0
Removed old hacks (for instance limiting offpolicy algorithms to one env at test time)
Updated docker image, removed support for X server
Replaced deprecated optuna.suggest_uniform(…) by optuna.suggest_float(…, low=…, high=…)
SBX (SB3 + Jax)
Added
DDPGandTD3algorithms
Deprecations:
Others:
Fixed
stable_baselines3/common/callbacks.pytype hintsFixed
stable_baselines3/common/utils.pytype hintsFixed
stable_baselines3/common/vec_envs/vec_transpose.pytype hintsFixed
stable_baselines3/common/vec_env/vec_video_recorder.pytype hintsFixed
stable_baselines3/common/save_util.pytype hintsUpdated docker images to Ubuntu Jammy using micromamba 1.5
Fixed
stable_baselines3/common/buffers.pytype hintsFixed
stable_baselines3/her/her_replay_buffer.pytype hintsBuffers do no call an additional
.copy()when storing new transitionsFixed
ActorCriticPolicy.extract_features()signature by adding an optionalfeatures_extractorargumentUpdate dependencies (accept newer Shimmy/Sphinx version and remove
sphinx_autodoc_typehints)Fixed
stable_baselines3/common/off_policy_algorithm.pytype hintsFixed
stable_baselines3/common/distributions.pytype hintsFixed
stable_baselines3/common/vec_env/vec_normalize.pytype hintsFixed
stable_baselines3/common/vec_env/__init__.pytype hintsSwitched to PyTorch 2.1.0 in the CI (fixes type annotations)
Fixed
stable_baselines3/common/policies.pytype hintsSwitched to
mypyonly for checking typesAdded tests to check consistency when saving/loading files
Documentation:
Updated RL Tips and Tricks (include recommendation for evaluation, added links to DroQ, ARS and SBX).
Fixed various typos and grammar mistakes
Release 2.1.0 (2023-08-17)
Float64 actions , Gymnasium 0.29 support and bug fixes
Breaking Changes:
Removed Python 3.7 support
SB3 now requires PyTorch >= 1.13
New Features:
Added Python 3.11 support
Added Gymnasium 0.29 support (@pseudo-rnd-thoughts)
SB3-Contrib
Fixed MaskablePPO ignoring
stats_window_sizeargumentAdded Python 3.11 support
RL Zoo
Upgraded to Huggingface-SB3 >= 2.3
Added Python 3.11 support
Bug Fixes:
Relaxed check in logger, that was causing issue on Windows with colorama
Fixed off-policy algorithms with continuous float64 actions (see #1145) (@tobirohrer)
Fixed
env_checker.pywarning messages for out of bounds in complex observation spaces (@Gabo-Tor)
Deprecations:
Others:
Updated GitHub issue templates
Fix typo in gym patch error message (@lukashass)
Refactor
test_spaces.pytests
Documentation:
Fixed callback example (@BertrandDecoster)
Fixed policy network example (@kyle-he)
Added mobile-env as new community project (@stefanbschneider)
Added [DeepNetSlice](https://github.com/AlexPasqua/DeepNetSlice) to community projects (@AlexPasqua)
Release 2.0.0 (2023-06-22)
Gymnasium support
Warning
Stable-Baselines3 (SB3) v2.0 will be the last one supporting python 3.7 (end of life in June 2023). We highly recommended you to upgrade to Python >= 3.8.
Breaking Changes:
Switched to Gymnasium as primary backend, Gym 0.21 and 0.26 are still supported via the
shimmypackage (@carlosluis, @arjun-kg, @tlpss)The deprecated
online_samplingargument ofHerReplayBufferwas removedRemoved deprecated
stack_observation_spacemethod ofStackedObservationsRenamed environment output observations in
evaluate_policyto prevent shadowing the input observations during callbacks (@npit)Upgraded wrappers and custom environment to Gymnasium
Refined the
HumanOutputFormatfile check: now it verifies if the object is an instance ofio.TextIOBaseinstead of only checking for the presence of awritemethod.Because of new Gym API (0.26+), the random seed passed to
vec_env.seed(seed=seed)will only be effective after thenenv.reset()call.
New Features:
Added Gymnasium support (Gym 0.21 and 0.26 are supported via the
shimmypackage)
SB3-Contrib
Fixed QRDQN update interval for multi envs
RL Zoo
Gym 0.26+ patches to continue working with pybullet and TimeLimit wrapper
Renamed CarRacing-v1 to CarRacing-v2 in hyperparameters
Huggingface push to hub now accepts a –n-timesteps argument to adjust the length of the video
Fixed record_video steps (before it was stepping in a closed env)
Dropped Gym 0.21 support
Bug Fixes:
Fixed
VecExtractDictObsdoes not handle terminal observation (@WeberSamuel)Set NumPy version to
>=1.20due to use ofnumpy.typing(@troiganto)Fixed loading DQN changes
target_update_interval(@tobirohrer)Fixed env checker to properly reset the env before calling
step()when checking forInfandNaN(@lutogniew)Fixed HER
truncate_last_trajectory()(@lbergmann1)Fixed HER desired and achieved goal order in reward computation (@JonathanKuelz)
Deprecations:
Others:
Fixed
stable_baselines3/a2c/*.pytype hintsFixed
stable_baselines3/ppo/*.pytype hintsFixed
stable_baselines3/sac/*.pytype hintsFixed
stable_baselines3/td3/*.pytype hintsFixed
stable_baselines3/common/base_class.pytype hintsFixed
stable_baselines3/common/logger.pytype hintsFixed
stable_baselines3/common/envs/*.pytype hintsFixed
stable_baselines3/common/vec_env/vec_monitor|vec_extract_dict_obs|util.pytype hintsFixed
stable_baselines3/common/vec_env/base_vec_env.pytype hintsFixed
stable_baselines3/common/vec_env/vec_frame_stack.pytype hintsFixed
stable_baselines3/common/vec_env/dummy_vec_env.pytype hintsFixed
stable_baselines3/common/vec_env/subproc_vec_env.pytype hintsUpgraded docker images to use mamba/micromamba and CUDA 11.7
Updated env checker to reflect what subset of Gymnasium is supported and improve GoalEnv checks
Improve type annotation of wrappers
Tests envs are now checked too
Added render test for
VecEnvandVecEnvWrapperUpdate issue templates and env info saved with the model
Changed
seed()method return type fromListtoSequenceUpdated env checker doc and requirements for tuple spaces/goal envs
Documentation:
Added Deep RL Course link to the Deep RL Resources page
Added documentation about
VecEnvAPI vs Gym APIUpgraded tutorials to Gymnasium API
Make it more explicit when using
VecEnvvs Gym envAdded UAV_Navigation_DRL_AirSim to the project page (@heleidsn)
Added
EvalCallbackexample (@sidney-tio)Update custom env documentation
Added pink-noise-rl to projects page
Fix custom policy example,
ortho_initwas ignoredAdded SBX page
Release 1.8.0 (2023-04-07)
Multi-env HerReplayBuffer, Open RL Benchmark, Improved env checker
Warning
Stable-Baselines3 (SB3) v1.8.0 will be the last one to use Gym as a backend. Starting with v2.0.0, Gymnasium will be the default backend (though SB3 will have compatibility layers for Gym envs). You can find a migration guide here: https://gymnasium.farama.org/content/migration-guide/. If you want to try the SB3 v2.0 alpha version, you can take a look at PR #1327.
Breaking Changes:
Removed shared layers in
mlp_extractor(@AlexPasqua)Refactored
StackedObservations(it now handles dict obs,StackedDictObservationswas removed)You must now explicitely pass a
features_extractorparameter when callingextract_features()Dropped offline sampling for
HerReplayBufferAs
HerReplayBufferwas refactored to support multiprocessing, previous replay buffer are incompatible with this new versionHerReplayBufferdoesn’t require amax_episode_lengthanymore
New Features:
Added
repeat_action_probabilityargument inAtariWrapper.Only use
NoopResetEnvandMaxAndSkipEnvwhen needed inAtariWrapperAdded support for dict/tuple observations spaces for
VecCheckNan, the check is now active in theenv_checker()(@DavyMorgan)Added multiprocessing support for
HerReplayBufferHerReplayBuffernow supports all datatypes supported byReplayBufferProvide more helpful failure messages when validating the
observation_spaceof custom gym environments usingcheck_env(@FieteO)Added
stats_window_sizeargument to control smoothing in rollout logging (@jonasreiher)
SB3-Contrib
Added warning about potential crashes caused by
check_envin theMaskablePPOdocs (@AlexPasqua)Fixed
sb3_contrib/qrdqn/*.pytype hintsRemoved shared layers in
mlp_extractor(@AlexPasqua)
RL Zoo
Upgraded to new HerReplayBuffer implementation that supports multiple envs
Removed TimeFeatureWrapper for Panda and Fetch envs, as the new replay buffer should handle timeout.
Tuned hyperparameters for RecurrentPPO on Swimmer
Documentation is now built using Sphinx and hosted on read the doc
Removed use_auth_token for push to hub util
Reverted from v3 to v2 for HumanoidStandup, Reacher, InvertedPendulum and InvertedDoublePendulum since they were not part of the mujoco refactoring (see https://github.com/openai/gym/pull/1304)
Fixed gym-minigrid policy (from MlpPolicy to MultiInputPolicy)
Replaced deprecated optuna.suggest_loguniform(…) by optuna.suggest_float(…, log=True)
Switched to ruff and pyproject.toml
Removed online_sampling and max_episode_length argument when using HerReplayBuffer
Bug Fixes:
Fixed Atari wrapper that missed the reset condition (@luizapozzobon)
Added the argument
dtype(default tofloat32) to the noise for consistency with gym action (@sidney-tio)Fixed PPO train/n_updates metric not accounting for early stopping (@adamfrly)
Fixed loading of normalized image-based environments
Fixed
DictRolloutBuffer.addwith multidimensional action space (@younik)
Deprecations:
Others:
Fixed
tests/test_tensorboard.pytype hintFixed
tests/test_vec_normalize.pytype hintFixed
stable_baselines3/common/monitor.pytype hintAdded tests for StackedObservations
Removed Gitlab CI file
Moved from
setup.cgtopyproject.tomlconfiguration fileSwitched from
flake8toruffUpgraded AutoROM to latest version
Fixed
stable_baselines3/dqn/*.pytype hintsAdded
extra_no_romsoption for package installation without Atari Roms
Documentation:
Renamed
load_parameterstoset_parameters(@DavyMorgan)Clarified documentation about subproc multiprocessing for A2C (@Bonifatius94)
Fixed typo in
A2Cdocstring (@AlexPasqua)Renamed timesteps to episodes for
log_intervaldescription (@theSquaredError)Removed note about gif creation for Atari games (@harveybellini)
Added information about default network architecture
Update information about Gymnasium support
Release 1.7.0 (2023-01-10)
Warning
Shared layers in MLP policy (mlp_extractor) are now deprecated for PPO, A2C and TRPO.
This feature will be removed in SB3 v1.8.0 and the behavior of net_arch=[64, 64]
will create separate networks with the same architecture, to be consistent with the off-policy algorithms.
Note
A2C and PPO saved with SB3 < 1.7.0 will show a warning about missing keys in the state dict when loaded with SB3 >= 1.7.0. To suppress the warning, simply save the model again. You can find more info in issue #1233
Breaking Changes:
Removed deprecated
create_eval_env,eval_env,eval_log_path,n_eval_episodesandeval_freqparameters, please use anEvalCallbackinsteadRemoved deprecated
sde_net_archparameterRemoved
retattributes inVecNormalize, please usereturnsinsteadVecNormalizenow updates the observation space when normalizing images
New Features:
Introduced mypy type checking
Added option to have non-shared features extractor between actor and critic in on-policy algorithms (@AlexPasqua)
Added
with_biasargument tocreate_mlpAdded support for multidimensional
spaces.MultiBinaryobservationsFeatures extractors now properly support unnormalized image-like observations (3D tensor) when passing
normalize_images=FalseAdded
normalized_imageparameter toNatureCNNandCombinedExtractorAdded support for Python 3.10
SB3-Contrib
Fixed a bug in
RecurrentPPOwhere the lstm states where incorrectly reshaped forn_lstm_layers > 1(thanks @kolbytn)Fixed
RuntimeError: rnn: hx is not contiguouswhile predicting terminal values forRecurrentPPOwhenn_lstm_layers > 1
RL Zoo
Added support for python file for configuration
Added
monitor_kwargsparameter
Bug Fixes:
Fixed
ProgressBarCallbackunder-reporting (@dominicgkerr)Fixed return type of
evaluate_actionsinActorCritcPolicyto reflect that entropy is an optional tensor (@Rocamonde)Fixed type annotation of
policyinBaseAlgorithmandOffPolicyAlgorithmAllowed model trained with Python 3.7 to be loaded with Python 3.8+ without the
custom_objectsworkaroundRaise an error when the same gym environment instance is passed as separate environments when creating a vectorized environment with more than one environment. (@Rocamonde)
Fix type annotation of
modelinevaluate_policyFixed
Selfreturn type usingTypeVarFixed the env checker, the key was not passed when checking images from Dict observation space
Fixed
normalize_imageswhich was not passed to parent class in some casesFixed
load_from_vectorthat was broken with newer PyTorch version when passing PyTorch tensor
Deprecations:
You should now explicitely pass a
features_extractorparameter when callingextract_features()Deprecated shared layers in
MlpExtractor(@AlexPasqua)
Others:
Used issue forms instead of issue templates
Updated the PR template to associate each PR with its peer in RL-Zoo3 and SB3-Contrib
Fixed flake8 config to be compatible with flake8 6+
Goal-conditioned environments are now characterized by the availability of the
compute_rewardmethod, rather than by their inheritance togym.GoalEnvReplaced
CartPole-v0byCartPole-v1is testsFixed
tests/test_distributions.pytype hintsFixed
stable_baselines3/common/type_aliases.pytype hintsFixed
stable_baselines3/common/torch_layers.pytype hintsFixed
stable_baselines3/common/env_util.pytype hintsFixed
stable_baselines3/common/preprocessing.pytype hintsFixed
stable_baselines3/common/atari_wrappers.pytype hintsFixed
stable_baselines3/common/vec_env/vec_check_nan.pytype hintsExposed modules in
__init__.pywith the__all__attribute (@ZikangXiong)Upgraded GitHub CI/setup-python to v4 and checkout to v3
Set tensors construction directly on the device (~8% speed boost on GPU)
Monkey-patched
np.bool = boolso gym 0.21 is compatible with NumPy 1.24+Standardized the use of
from gym import spacesModified
get_system_infoto avoid issue linked to copy-pasting on GitHub issue
Documentation:
Updated Hugging Face Integration page (@simoninithomas)
Changed
envtovec_envwhen environment is vectorizedUpdated custom policy docs to better explain the
mlp_extractor’s dimensions (@AlexPasqua)Updated custom policy documentation (@athatheo)
Improved tensorboard callback doc
Clarify doc when using image-like input
Added RLeXplore to the project page (@yuanmingqi)
Release 1.6.2 (2022-10-10)
Progress bar in the learn() method, RL Zoo3 is now a package
Breaking Changes:
New Features:
Added
progress_barargument in thelearn()method, displayed using TQDM and rich packagesAdded progress bar callback
The RL Zoo can now be installed as a package (
pip install rl_zoo3)
SB3-Contrib
RL Zoo
RL Zoo is now a python package and can be installed using
pip install rl_zoo3
Bug Fixes:
self.num_timestepswas initialized properly only after the first call toon_step()for callbacksSet importlib-metadata version to
~=4.13to be compatible withgym=0.21
Deprecations:
Added deprecation warning if parameters
eval_env,eval_freqorcreate_eval_envare used (see #925) (@tobirohrer)
Others:
Fixed type hint of the
env_idparameter inmake_vec_envandmake_atari_env(@AlexPasqua)
Documentation:
Extended docstring of the
wrapper_classparameter inmake_vec_env(@AlexPasqua)
Release 1.6.1 (2022-09-29)
Bug fix release
Breaking Changes:
Switched minimum tensorboard version to 2.9.1
New Features:
Support logging hyperparameters to tensorboard (@timothe-chaumont)
Added checkpoints for replay buffer and
VecNormalizestatistics (@anand-bala)Added option for
Monitorto append to existing file instead of overriding (@sidney-tio)The env checker now raises an error when using dict observation spaces and observation keys don’t match observation space keys
SB3-Contrib
Fixed the issue of wrongly passing policy arguments when using
CnnLstmPolicyorMultiInputLstmPolicywithRecurrentPPO(@mlodel)
Bug Fixes:
Fixed issue where
PPOgives NaN if rollout buffer provides a batch of size 1 (@hughperkins)Fixed the issue that
predictdoes not always return action asnp.ndarray(@qgallouedec)Fixed division by zero error when computing FPS when a small number of time has elapsed in operating systems with low-precision timers.
Added multidimensional action space support (@qgallouedec)
Fixed missing verbose parameter passing in the
EvalCallbackconstructor (@burakdmb)Fixed the issue that when updating the target network in DQN, SAC, TD3, the
running_meanandrunning_varproperties of batch norm layers are not updated (@honglu2875)Fixed incorrect type annotation of the replay_buffer_class argument in
common.OffPolicyAlgorithminitializer, where an instance instead of a class was required (@Rocamonde)Fixed loading saved model with different number of environments
Removed
forward()abstract method declaration fromcommon.policies.BaseModel(already defined intorch.nn.Module) to fix type errors in subclasses (@Rocamonde)Fixed the return type of
.load()and.learn()methods inBaseAlgorithmso that they now useTypeVar(@Rocamonde)Fixed an issue where keys with different tags but the same key raised an error in
common.logger.HumanOutputFormat(@Rocamonde and @AdamGleave)Set importlib-metadata version to ~=4.13
Deprecations:
Others:
Fixed
DictReplayBuffer.next_observationstyping (@qgallouedec)Added support for
device="auto"in buffers and made it default (@qgallouedec)Updated
ResultsWriter(used internally byMonitorwrapper) to automatically create missing directories whenfilenameis a path (@dominicgkerr)
Documentation:
Added an example of callback that logs hyperparameters to tensorboard. (@timothe-chaumont)
Fixed typo in docstring “nature” -> “Nature” (@Melanol)
Added info on split tensorboard logs into (@Melanol)
Fixed typo in ppo doc (@francescoluciano)
Fixed typo in install doc(@jlp-ue)
Clarified and standardized verbosity documentation
Added link to a GitHub issue in the custom policy documentation (@AlexPasqua)
Update doc on exporting models (fixes and added torch jit)
Fixed typos (@Akhilez)
Standardized the use of
"for string representation in documentation
Release 1.6.0 (2022-07-11)
Recurrent PPO (PPO LSTM), better defaults for learning from pixels with SAC/TD3
Breaking Changes:
Changed the way policy “aliases” are handled (“MlpPolicy”, “CnnPolicy”, …), removing the former
register_policyhelper,policy_baseparameter and usingpolicy_aliasesstatic attributes instead (@Gregwar)SB3 now requires PyTorch >= 1.11
Changed the default network architecture when using
CnnPolicyorMultiInputPolicywith SAC or DDPG/TD3,share_features_extractoris now set to False by default and thenet_arch=[256, 256](instead ofnet_arch=[]that was before)
New Features:
SB3-Contrib
Added Recurrent PPO (PPO LSTM). See https://github.com/Stable-Baselines-Team/stable-baselines3-contrib/pull/53
Bug Fixes:
Fixed saving and loading large policies greater than 2GB (@jkterry1, @ycheng517)
Fixed final goal selection strategy that did not sample the final achieved goal (@qgallouedec)
Fixed a bug with special characters in the tensorboard log name (@quantitative-technologies)
Fixed a bug in
DummyVecEnv’s andSubprocVecEnv’s seeding function. None value was unchecked (@ScheiklP)Fixed a bug where
EvalCallbackwould crash when trying to synchronizeVecNormalizestats when observation normalization was disabledAdded a check for unbounded actions
Fixed issues due to newer version of protobuf (tensorboard) and sphinx
Fix exception causes all over the codebase (@cool-RR)
Prohibit simultaneous use of optimize_memory_usage and handle_timeout_termination due to a bug (@MWeltevrede)
Fixed a bug in
kl_divergencecheck that would fail when using numpy arrays with MultiCategorical distribution
Deprecations:
Others:
Upgraded to Python 3.7+ syntax using
pyupgradeRemoved redundant double-check for nested observations from
BaseAlgorithm._wrap_env(@TibiGG)
Documentation:
Added link to gym doc and gym env checker
Fix typo in PPO doc (@bcollazo)
Added link to PPO ICLR blog post
Added remark about breaking Markov assumption and timeout handling
Added doc about MLFlow integration via custom logger (@git-thor)
Updated Huggingface integration doc
Added copy button for code snippets
Added doc about EnvPool and Isaac Gym support
Release 1.5.0 (2022-03-25)
Bug fixes, early stopping callback
Breaking Changes:
Switched minimum Gym version to 0.21.0
New Features:
Added
StopTrainingOnNoModelImprovementto callback collection (@caburu)Makes the length of keys and values in
HumanOutputFormatconfigurable, depending on desired maximum width of output.Allow PPO to turn of advantage normalization (see PR #763) @vwxyzjn
SB3-Contrib
coming soon: Cross Entropy Method, see https://github.com/Stable-Baselines-Team/stable-baselines3-contrib/pull/62
Bug Fixes:
Fixed a bug in
VecMonitor. The monitor did not consider theinfo_keywordsduring stepping (@ScheiklP)Fixed a bug in
HumanOutputFormat. Distinct keys truncated to the same prefix would overwrite each others value, resulting in only one being output. This now raises an error (this should only affect a small fraction of use cases with very long keys.)Routing all the
nn.Modulecalls through implicit rather than explict forward as per pytorch guidelines (@manuel-delverme)Fixed a bug in
VecNormalizewhere error occurs whennorm_obsis set to False for environment with dictionary observation (@buoyancy99)Set default
envargument toNoneinHerReplayBuffer.sample(@qgallouedec)Fix
batch_sizetyping inDQN(@qgallouedec)Fixed sample normalization in
DictReplayBuffer(@qgallouedec)
Deprecations:
Others:
Fixed pytest warnings
Removed parameter
remove_time_limit_terminationin off policy algorithms since it was dead code (@Gregwar)
Documentation:
Added doc on Hugging Face integration (@simoninithomas)
Added furuta pendulum project to project list (@armandpl)
Fix indentation 2 spaces to 4 spaces in custom env documentation example (@Gautam-J)
Update MlpExtractor docstring (@gianlucadecola)
Added explanation of the logger output
Update
Directly Accessing The Summary Writerin tensorboard integration (@xy9485)
Release 1.4.0 (2022-01-18)
TRPO, ARS and multi env training for off-policy algorithms
Breaking Changes:
Dropped python 3.6 support (as announced in previous release)
Renamed
maskargument of thepredict()method toepisode_start(used with RNN policies only)local variables
action,doneandrewardwere renamed to their plural form for offpolicy algorithms (actions,dones,rewards), this may affect custom callbacks.Removed
episode_rewardfield fromRolloutReturn()type
Warning
An update to the HER algorithm is planned to support multi-env training and remove the max episode length constrain.
(see PR #704)
This will be a backward incompatible change (model trained with previous version of HER won’t work with the new version).
New Features:
Added
norm_obs_keysparam forVecNormalizewrapper to configure which observation keys to normalize (@kachayev)Added experimental support to train off-policy algorithms with multiple envs (note:
HerReplayBuffercurrently not supported)Handle timeout termination properly for on-policy algorithms (when using
TimeLimit)Added
skipoption toVecTransposeImageto skip transforming the channel order when the heuristic is wrongAdded
copy()andcombine()methods toRunningMeanStd
SB3-Contrib
Added Trust Region Policy Optimization (TRPO) (@cyprienc)
Added Augmented Random Search (ARS) (@sgillen)
Coming soon: PPO LSTM, see https://github.com/Stable-Baselines-Team/stable-baselines3-contrib/pull/53
Bug Fixes:
Fixed a bug where
set_env()withVecNormalizewould result in an error with off-policy algorithms (thanks @cleversonahum)FPS calculation is now performed based on number of steps performed during last
learncall, even whenreset_num_timestepsis set toFalse(@kachayev)Fixed evaluation script for recurrent policies (experimental feature in SB3 contrib)
Fixed a bug where the observation would be incorrectly detected as non-vectorized instead of throwing an error
The env checker now properly checks and warns about potential issues for continuous action spaces when the boundaries are too small or when the dtype is not float32
Fixed a bug in
VecFrameStackwith channel first image envs, where the terminal observation would be wrongly created.
Deprecations:
Others:
Added a warning in the env checker when not using
np.float32for continuous actionsImproved test coverage and error message when checking shape of observation
Added
newline="\n"when opening CSV monitor files so that each line ends with\r\ninstead of\r\r\non Windows while Linux environments are not affected (@hsuehch)Fixed
deviceargument inconsistency (@qgallouedec)
Documentation:
Add drivergym to projects page (@theDebugger811)
Add highway-env to projects page (@eleurent)
Add tactile-gym to projects page (@ac-93)
Fix indentation in the RL tips page (@cove9988)
Update GAE computation docstring
Add documentation on exporting to TFLite/Coral
Added JMLR paper and updated citation
Added link to RL Tips and Tricks video
Updated
BaseAlgorithm.loaddocstring (@Demetrio92)Added a note on
loadbehavior in the examples (@Demetrio92)Updated SB3 Contrib doc
Fixed A2C and migration guide guidance on how to set epsilon with RMSpropTFLike (@thomasgubler)
Fixed custom policy documentation (@IperGiove)
Added doc on Weights & Biases integration
Release 1.3.0 (2021-10-23)
Bug fixes and improvements for the user
Warning
This version will be the last one supporting Python 3.6 (end of life in Dec 2021). We highly recommended you to upgrade to Python >= 3.7.
Breaking Changes:
sde_net_archargument in policies is deprecated and will be removed in a future version._get_latent(ActorCriticPolicy) was removedAll logging keys now use underscores instead of spaces (@timokau). Concretely this changes:
time/total timestepstotime/total_timestepsfor off-policy algorithms (PPO and A2C) and the eval callback (on-policy algorithms already used the underscored version),rollout/exploration ratetorollout/exploration_rateandrollout/success ratetorollout/success_rate.
New Features:
Added methods
get_distributionandpredict_valuesforActorCriticPolicyfor A2C/PPO/TRPO (@cyprienc)Added methods
forward_actorandforward_criticforMlpExtractorAdded
sb3.get_system_info()helper function to gather version information relevant to SB3 (e.g., Python and PyTorch version)Saved models now store system information where agent was trained, and load functions have
print_system_infoparameter to help debugging load issues
Bug Fixes:
Fixed
dtypeof observations forSimpleMultiObsEnvAllow VecNormalize to wrap discrete-observation environments to normalize reward when observation normalization is disabled
Fixed a bug where
DQNwould throw an error when usingDiscreteobservation and stochastic actionsFixed a bug where sub-classed observation spaces could not be used
Added
force_resetargument toload()andset_env()in order to be able to calllearn(reset_num_timesteps=False)with a new environment
Deprecations:
Others:
Cap gym max version to 0.19 to avoid issues with atari-py and other breaking changes
Improved error message when using dict observation with the wrong policy
Improved error message when using
EvalCallbackwith two envs not wrapped the same way.Added additional infos about supported python version for PyPi in
setup.py
Documentation:
Add Rocket League Gym to list of supported projects (@AechPro)
Added gym-electric-motor to project page (@wkirgsn)
Added policy-distillation-baselines to project page (@CUN-bjy)
Added ONNX export instructions (@batu)
Update read the doc env (fixed
docutilsissue)Fix PPO environment name (@IljaAvadiev)
Fix custom env doc and add env registration example
Update algorithms from SB3 Contrib
Use underscores for numeric literals in examples to improve clarity
Release 1.2.0 (2021-09-03)
Hotfix for VecNormalize, training/eval mode support
Breaking Changes:
SB3 now requires PyTorch >= 1.8.1
VecNormalizeretattribute was renamed toreturns
New Features:
Bug Fixes:
Hotfix for
VecNormalizewhere the observation filter was not updated at reset (thanks @vwxyzjn)Fixed model predictions when using batch normalization and dropout layers by calling
train()andeval()(@davidblom603)Fixed model training for DQN, TD3 and SAC so that their target nets always remain in evaluation mode (@ayeright)
Passing
gradient_steps=0to an off-policy algorithm will result in no gradient steps being taken (vs as many gradient steps as steps done in the environment during the rollout in previous versions)
Deprecations:
Others:
Enabled Python 3.9 in GitHub CI
Fixed type annotations
Refactored
predict()by moving the preprocessing toobs_to_tensor()method
Documentation:
Updated multiprocessing example
Added example of
VecEnvWrapperAdded a note about logging to tensorboard more often
Added warning about simplicity of examples and link to RL zoo (@MihaiAnca13)
Release 1.1.0 (2021-07-01)
Dict observation support, timeout handling and refactored HER buffer
Breaking Changes:
All customs environments (e.g. the
BitFlippingEnvorIdentityEnv) were moved tostable_baselines3.common.envsfolderRefactored
HERwhich is now theHerReplayBufferclass that can be passed to any off-policy algorithmHandle timeout termination properly for off-policy algorithms (when using
TimeLimit)Renamed
_last_donesanddonesto_last_episode_startsandepisode_startsinRolloutBuffer.Removed
ObsDictWrapperasDictobservation spaces are now supported
her_kwargs = dict(n_sampled_goal=2, goal_selection_strategy="future", online_sampling=True)
# SB3 < 1.1.0
# model = HER("MlpPolicy", env, model_class=SAC, **her_kwargs)
# SB3 >= 1.1.0:
model = SAC("MultiInputPolicy", env, replay_buffer_class=HerReplayBuffer, replay_buffer_kwargs=her_kwargs)
Updated the KL Divergence estimator in the PPO algorithm to be positive definite and have lower variance (@09tangriro)
Updated the KL Divergence check in the PPO algorithm to be before the gradient update step rather than after end of epoch (@09tangriro)
Removed parameter
channels_lastfromis_image_spaceas it can be inferred.The logger object is now an attribute
model.loggerthat be set by the user usingmodel.set_logger()Changed the signature of
logger.configureandutils.configure_logger, they now return aLoggerobjectRemoved
Logger.CURRENTandLogger.DEFAULTMoved
warn(), debug(), log(), info(), dump()methods to theLoggerclass.learn()now throws an import error when the user tries to log to tensorboard but the package is not installed
New Features:
Added support for single-level
Dictobservation space (@JadenTravnik)Added
DictRolloutBufferDictReplayBufferto support dictionary observations (@JadenTravnik)Added
StackedObservationsandStackedDictObservationsthat are used withinVecFrameStackAdded simple 4x4 room Dict test environments
HerReplayBuffernow supportsVecNormalizewhenonline_sampling=FalseAdded VecMonitor and VecExtractDictObs wrappers to handle gym3-style vectorized environments (@vwxyzjn)
Ignored the terminal observation if the it is not provided by the environment such as the gym3-style vectorized environments. (@vwxyzjn)
Added policy_base as input to the OnPolicyAlgorithm for more flexibility (@09tangriro)
Added support for image observation when using
HERAdded
replay_buffer_classandreplay_buffer_kwargsarguments to off-policy algorithmsAdded
kl_divergencehelper forDistributionclasses (@09tangriro)Added support for vector environments with
num_envs > 1(@benblack769)Added
wrapper_kwargsargument tomake_vec_env(@amy12xx)
Bug Fixes:
Fixed potential issue when calling off-policy algorithms with default arguments multiple times (the size of the replay buffer would be the same)
Fixed loading of
ent_coefforSACandTQC, it was not optimized anymore (thanks @Atlis)Fixed saving of
A2CandPPOpolicy when using gSDE (thanks @liusida)Fixed a bug where no output would be shown even if
verbose>=1after passingverbose=0onceFixed observation buffers dtype in DictReplayBuffer (@c-rizz)
Fixed EvalCallback tensorboard logs being logged with the incorrect timestep. They are now written with the timestep at which they were recorded. (@skandermoalla)
Deprecations:
Others:
Added
flake8-bugbearto tests dependencies to find likely bugsUpdated
env_checkerto reflect support of dict observation spacesAdded Code of Conduct
Added tests for GAE and lambda return computation
Updated distribution entropy test (thanks @09tangriro)
Added sanity check
batch_size > 1in PPO to avoid NaN in advantage normalization
Documentation:
Added gym pybullet drones project (@JacopoPan)
Added link to SuperSuit in projects (@justinkterry)
Fixed DQN example (thanks @ltbd78)
Clarified channel-first/channel-last recommendation
Update sphinx environment installation instructions (@tom-doerr)
Clarified pip installation in Zsh (@tom-doerr)
Clarified return computation for on-policy algorithms (TD(lambda) estimate was used)
Added example for using
ProcgenEnvAdded note about advanced custom policy example for off-policy algorithms
Fixed DQN unicode checkmarks
Updated migration guide (@juancroldan)
Pinned
docutils==0.16to avoid issue with rtd themeClarified callback
save_freqdefinitionAdded doc on how to pass a custom logger
Remove recurrent policies from
A2Cdocs (@bstee615)
Release 1.0 (2021-03-15)
First Major Version
Breaking Changes:
Removed
stable_baselines3.common.cmd_util(already deprecated), please useenv_utilinstead
New Features:
Added support for
custom_objectswhen loading models
Bug Fixes:
Fixed a bug with
DQNpredict method when usingdeterministic=Falsewith image space
Documentation:
Fixed examples
Added new project using SB3: rl_reach (@PierreExeter)
Added note about slow-down when switching to PyTorch
Add a note on continual learning and resetting environment
Others:
Updated RL-Zoo to reflect the fact that is it more than a collection of trained agents
Added images to illustrate the training loop and custom policies (created with https://excalidraw.com/)
Updated the custom policy section
Pre-Release 0.11.1 (2021-02-27)
Bug Fixes:
Fixed a bug where
train_freqwas not properly converted when loading a saved model
Pre-Release 0.11.0 (2021-02-27)
Breaking Changes:
evaluate_policynow returns rewards/episode lengths from aMonitorwrapper if one is present, this allows to return the unnormalized reward in the case of Atari games for instance.Renamed
common.vec_env.is_wrappedtocommon.vec_env.is_vecenv_wrappedto avoid confusion with the newis_wrapped()helperRenamed
_get_data()to_get_constructor_parameters()for policies (this affects independent saving/loading of policies)Removed
n_episodes_rolloutand merged it withtrain_freq, which now accepts a tuple(frequency, unit):replay_bufferincollect_rolloutis no more optional
# SB3 < 0.11.0
# model = SAC("MlpPolicy", env, n_episodes_rollout=1, train_freq=-1)
# SB3 >= 0.11.0:
model = SAC("MlpPolicy", env, train_freq=(1, "episode"))
New Features:
Add support for
VecFrameStackto stack on first or last observation dimension, along with automatic check for image spaces.VecFrameStacknow has achannels_orderargument to tell if observations should be stacked on the first or last observation dimension (originally always stacked on last).Added
common.env_util.is_wrappedandcommon.env_util.unwrap_wrapperfunctions for checking/unwrapping an environment for specific wrapper.Added
env_is_wrapped()method forVecEnvto check if its environments are wrapped with given Gym wrappers.Added
monitor_kwargsparameter tomake_vec_envandmake_atari_envWrap the environments automatically with a
Monitorwrapper when possible.EvalCallbacknow logs the success rate when available (is_successmust be present in the info dict)Added new wrappers to log images and matplotlib figures to tensorboard. (@zampanteymedio)
Add support for text records to
Logger. (@lorenz-h)
Bug Fixes:
Fixed bug where code added VecTranspose on channel-first image environments (thanks @qxcv)
Fixed
DQNpredict method when using singlegym.Envwithdeterministic=FalseFixed bug that the arguments order of
explained_variance()inppo.pyanda2c.pyis not correct (@thisray)Fixed bug where full
HerReplayBufferleads to an index error. (@megan-klaiber)Fixed bug where replay buffer could not be saved if it was too big (> 4 Gb) for python<3.8 (thanks @hn2)
Added informative
PPOconstruction error in edge-case scenario wheren_steps * n_envs = 1(size of rollout buffer), which otherwise causes downstream breaking errors in training (@decodyng)Fixed discrete observation space support when using multiple envs with A2C/PPO (thanks @ardabbour)
Fixed a bug for TD3 delayed update (the update was off-by-one and not delayed when
train_freq=1)Fixed numpy warning (replaced
np.boolwithbool)Fixed a bug where
VecNormalizewas not normalizing the terminal observationFixed a bug where
VecTransposewas not transposing the terminal observationFixed a bug where the terminal observation stored in the replay buffer was not the right one for off-policy algorithms
Fixed a bug where
action_noisewas not used when usingHER(thanks @ShangqunYu)
Deprecations:
Others:
Add more issue templates
Add signatures to callable type annotations (@ernestum)
Improve error message in
NatureCNNAdded checks for supported action spaces to improve clarity of error messages for the user
Renamed variables in the
train()method ofSAC,TD3andDQNto match SB3-Contrib.Updated docker base image to Ubuntu 18.04
Set tensorboard min version to 2.2.0 (earlier version are apparently not working with PyTorch)
Added warning for
PPOwhenn_steps * n_envsis not a multiple ofbatch_size(last mini-batch truncated) (@decodyng)Removed some warnings in the tests
Documentation:
Updated algorithm table
Minor docstring improvements regarding rollout (@stheid)
Fix migration doc for
A2C(epsilon parameter)Fix
clip_rangedocstringFix duplicated parameter in
EvalCallbackdocstring (thanks @tfederico)Added example of learning rate schedule
Added SUMO-RL as example project (@LucasAlegre)
Fix docstring of classes in atari_wrappers.py which were inside the constructor (@LucasAlegre)
Added SB3-Contrib page
Fix bug in the example code of DQN (@AptX395)
Add example on how to access the tensorboard summary writer directly. (@lorenz-h)
Updated migration guide
Updated custom policy doc (separate policy architecture recommended)
Added a note about OpenCV headless version
Corrected typo on documentation (@mschweizer)
Provide the environment when loading the model in the examples (@lorepieri8)
Pre-Release 0.10.0 (2020-10-28)
HER with online and offline sampling, bug fixes for features extraction
Breaking Changes:
Warning: Renamed
common.cmd_utiltocommon.env_utilfor clarity (affectsmake_vec_envandmake_atari_envfunctions)
New Features:
Allow custom actor/critic network architectures using
net_arch=dict(qf=[400, 300], pi=[64, 64])for off-policy algorithms (SAC, TD3, DDPG)Added Hindsight Experience Replay
HER. (@megan-klaiber)VecNormalizenow supportsgym.spaces.Dictobservation spacesSupport logging videos to Tensorboard (@SwamyDev)
Added
share_features_extractorargument toSACandTD3policies
Bug Fixes:
Fix GAE computation for on-policy algorithms (off-by one for the last value) (thanks @Wovchena)
Fixed potential issue when loading a different environment
Fix ignoring the exclude parameter when recording logs using json, csv or log as logging format (@SwamyDev)
Make
make_vec_envsupport theenv_kwargsargument when using an env ID str (@ManifoldFR)Fix model creation initializing CUDA even when device=”cpu” is provided
Fix
check_envnot checking if the env has a Dict actionspace before calling_check_nan(@wmmc88)Update the check for spaces unsupported by Stable Baselines 3 to include checks on the action space (@wmmc88)
Fixed features extractor bug for target network where the same net was shared instead of being separate. This bug affects
SAC,DDPGandTD3when usingCnnPolicy(or custom features extractor)Fixed a bug when passing an environment when loading a saved model with a
CnnPolicy, the passed env was not wrapped properly (the bug was introduced when implementingHERso it should not be present in previous versions)
Deprecations:
Others:
Improved typing coverage
Improved error messages for unsupported spaces
Added
.vscodeto the gitignore
Documentation:
Added first draft of migration guide
Added intro to imitation library (@shwang)
Enabled doc for
CnnPoliciesAdded advanced saving and loading example
Added base doc for exporting models
Added example for getting and setting model parameters
Pre-Release 0.9.0 (2020-10-03)
Bug fixes, get/set parameters and improved docs
Breaking Changes:
Removed
devicekeyword argument of policies; usepolicy.to(device)instead. (@qxcv)Rename
BaseClass.get_torch_variables->BaseClass._get_torch_save_paramsandBaseClass.excluded_save_params->BaseClass._excluded_save_paramsRenamed saved items
tensorstopytorch_variablesfor claritymake_atari_env,make_vec_envandset_random_seedmust be imported with (and not directly fromstable_baselines3.common):
from stable_baselines3.common.cmd_util import make_atari_env, make_vec_env
from stable_baselines3.common.utils import set_random_seed
New Features:
Added
unwrap_vec_wrapper()tocommon.vec_envto extractVecEnvWrapperif neededAdded
StopTrainingOnMaxEpisodesto callback collection (@xicocaio)Added
devicekeyword argument toBaseAlgorithm.load()(@liorcohen5)Callbacks have access to rollout collection locals as in SB2. (@PartiallyTyped)
Added
get_parametersandset_parametersfor accessing/setting parameters of the agentAdded actor/critic loss logging for TD3. (@mloo3)
Bug Fixes:
Added
unwrap_vec_wrapper()tocommon.vec_envto extractVecEnvWrapperif neededFixed a bug where the environment was reset twice when using
evaluate_policyFix logging of
clip_fractionin PPO (@diditforlulz273)Fixed a bug where cuda support was wrongly checked when passing the GPU index, e.g.,
device="cuda:0"(@liorcohen5)Fixed a bug when the random seed was not properly set on cuda when passing the GPU index
Deprecations:
Others:
Improve typing coverage of the
VecEnvFix type annotation of
make_vec_env(@ManifoldFR)Removed
AlreadySteppingErrorandNotSteppingErrorthat were not usedFixed typos in SAC and TD3
Reorganized functions for clarity in
BaseClass(save/load functions close to each other, private functions at top)Clarified docstrings on what is saved and loaded to/from files
Simplified
save_to_zip_filefunction by removing duplicate codeStore library version along with the saved models
DQN loss is now logged
Documentation:
Added
StopTrainingOnMaxEpisodesdetails and example (@xicocaio)Updated custom policy section (added custom features extractor example)
Re-enable
sphinx_autodoc_typehintsUpdated doc style for type hints and remove duplicated type hints
Pre-Release 0.8.0 (2020-08-03)
DQN, DDPG, bug fixes and performance matching for Atari games
Breaking Changes:
AtariWrapperand other Atari wrappers were updated to match SB2 onessave_replay_buffernow receives as argument the file path instead of the folder path (@tirafesi)Refactored
Criticclass forTD3andSAC, it is now calledContinuousCriticand has an additional parametern_criticsSACandTD3now accept an arbitrary number of critics (e.g.policy_kwargs=dict(n_critics=3)) instead of only 2 previously
New Features:
Added
DQNAlgorithm (@Artemis-Skade)Buffer dtype is now set according to action and observation spaces for
ReplayBufferAdded warning when allocation of a buffer may exceed the available memory of the system when
psutilis availableSaving models now automatically creates the necessary folders and raises appropriate warnings (@PartiallyTyped)
Refactored opening paths for saving and loading to use strings, pathlib or io.BufferedIOBase (@PartiallyTyped)
Added
DDPGalgorithm as a special case ofTD3.Introduced
BaseModelabstract parent forBasePolicy, which critics inherit from.
Bug Fixes:
Fixed a bug in the
close()method ofSubprocVecEnv, causing wrappers further down in the wrapper stack to not be closed. (@NeoExtended)Fix target for updating q values in SAC: the entropy term was not conditioned by terminals states
Use
cloudpickle.loadinstead ofpickle.loadinCloudpickleWrapper. (@shwang)Fixed a bug with orthogonal initialization when bias=False in custom policy (@rk37)
Fixed approximate entropy calculation in PPO and A2C. (@andyshih12)
Fixed DQN target network sharing features extractor with the main network.
Fixed storing correct
donesin on-policy algorithm rollout collection. (@andyshih12)Fixed number of filters in final convolutional layer in NatureCNN to match original implementation.
Deprecations:
Others:
Refactored off-policy algorithm to share the same
.learn()methodSplit the
collect_rollout()method for off-policy algorithmsAdded
_on_step()for off-policy base classOptimized replay buffer size by removing the need of
next_observationsnumpy arrayOptimized polyak updates (1.5-1.95 speedup) through inplace operations (@PartiallyTyped)
Switch to
blackcodestyle and addedmake format,make check-codestyleandcommit-checksIgnored errors from newer pytype version
Added a check when using
gSDERemoved codacy dependency from Dockerfile
Added
common.sb2_compat.RMSpropTFLikeoptimizer, which corresponds closer to the implementation of RMSprop from Tensorflow.
Documentation:
Updated notebook links
Fixed a typo in the section of Enjoy a Trained Agent, in RL Baselines3 Zoo README. (@blurLake)
Added Unity reacher to the projects page (@koulakis)
Added PyBullet colab notebook
Fixed typo in PPO example code (@joeljosephjin)
Fixed typo in custom policy doc (@RaphaelWag)
Pre-Release 0.7.0 (2020-06-10)
Hotfix for PPO/A2C + gSDE, internal refactoring and bug fixes
Breaking Changes:
render()method ofVecEnvsnow only accept one argument:modeCreated new file common/torch_layers.py, similar to SB refactoring
Contains all PyTorch network layer definitions and features extractors:
MlpExtractor,create_mlp,NatureCNN
Renamed
BaseRLModeltoBaseAlgorithm(along with offpolicy and onpolicy variants)Moved on-policy and off-policy base algorithms to
common/on_policy_algorithm.pyandcommon/off_policy_algorithm.py, respectively.Moved
PPOPolicytoActorCriticPolicyin common/policies.pyMoved
PPO(algorithm class) intoOnPolicyAlgorithm(common/on_policy_algorithm.py), to be shared with A2CMoved following functions from
BaseAlgorithm:_load_from_filetoload_from_zip_file(save_util.py)_save_to_file_ziptosave_to_zip_file(save_util.py)safe_meantosafe_mean(utils.py)check_envtocheck_for_correct_spaces(utils.py. Renamed to avoid confusion with environment checker tools)
Moved static function
_is_vectorized_observationfrom common/policies.py to common/utils.py under nameis_vectorized_observation.Removed
{save,load}_running_averagefunctions ofVecNormalizein favor ofload/save.Removed
use_gaeparameter fromRolloutBuffer.compute_returns_and_advantage.
New Features:
Bug Fixes:
Fixed
render()method forVecEnvsFixed
seed()method forSubprocVecEnvFixed loading on GPU for testing when using gSDE and
deterministic=FalseFixed
register_policyto allow re-registering same policy for same sub-class (i.e. assign same value to same key).Fixed a bug where the gradient was passed when using
gSDEwithPPO/A2C, this does not affectSAC
Deprecations:
Others:
Re-enable unsafe
forkstart method in the tests (was causing a deadlock with tensorflow)Added a test for seeding
SubprocVecEnvand renderingFixed reference in NatureCNN (pointed to older version with different network architecture)
Fixed comments saying “CxWxH” instead of “CxHxW” (same style as in torch docs / commonly used)
Added bit further comments on register/getting policies (“MlpPolicy”, “CnnPolicy”).
Renamed
progress(value from 1 in start of training to 0 in end) toprogress_remaining.Added
policies.pyfiles for A2C/PPO, which define MlpPolicy/CnnPolicy (renamed ActorCriticPolicies).Added some missing tests for
VecNormalize,VecCheckNanandPPO.
Documentation:
Added a paragraph on “MlpPolicy”/”CnnPolicy” and policy naming scheme under “Developer Guide”
Fixed second-level listing in changelog
Pre-Release 0.6.0 (2020-06-01)
Tensorboard support, refactored logger
Breaking Changes:
Remove State-Dependent Exploration (SDE) support for
TD3Methods were renamed in the logger:
logkv->record,writekvs->write,writeseq->write_sequence,logkvs->record_dict,dumpkvs->dump,getkvs->get_log_dict,logkv_mean->record_mean,
New Features:
Added env checker (Sync with Stable Baselines)
Added
VecCheckNanandVecVideoRecorder(Sync with Stable Baselines)Added determinism tests
Added
cmd_utilandatari_wrappersAdded support for
MultiDiscreteandMultiBinaryobservation spaces (@rolandgvc)Added
MultiCategoricalandBernoullidistributions for PPO/A2C (@rolandgvc)Added support for logging to tensorboard (@rolandgvc)
Added
VectorizedActionNoisefor continuous vectorized environments (@PartiallyTyped)Log evaluation in the
EvalCallbackusing the logger
Bug Fixes:
Fixed a bug that prevented model trained on cpu to be loaded on gpu
Fixed version number that had a new line included
Fixed weird seg fault in docker image due to FakeImageEnv by reducing screen size
Fixed
sde_sample_freqthat was not taken into account for SACPass logger module to
BaseCallbackotherwise they cannot write in the one used by the algorithms
Deprecations:
Others:
Renamed to Stable-Baseline3
Added Dockerfile
Sync
VecEnvswith Stable-BaselinesUpdate requirement:
gym>=0.17Added
.readthedoc.ymlfileAdded
flake8andmake lintcommandAdded Github workflow
Added warning when passing both
train_freqandn_episodes_rolloutto Off-Policy Algorithms
Documentation:
Added most documentation (adapted from Stable-Baselines)
Added link to CONTRIBUTING.md in the README (@kinalmehta)
Added gSDE project and update docstrings accordingly
Fix
TD3example code block
Pre-Release 0.5.0 (2020-05-05)
CnnPolicy support for image observations, complete saving/loading for policies
Breaking Changes:
Previous loading of policy weights is broken and replace by the new saving/loading for policy
New Features:
Added
optimizer_classandoptimizer_kwargstopolicy_kwargsin order to easily customizer optimizersComplete independent save/load for policies
Add
CnnPolicyandVecTransposeImageto support images as input
Bug Fixes:
Fixed
reset_num_timestepsbehavior, soenv.reset()is not called ifreset_num_timesteps=TrueFixed
squashed_outputthat was not pass to policy constructor forSACandTD3(would result in scaled actions for unscaled action spaces)
Deprecations:
Others:
Cleanup rollout return
Added
get_deviceutil to manage PyTorch devicesAdded type hints to logger + use f-strings
Documentation:
Pre-Release 0.4.0 (2020-02-14)
Proper pre-processing, independent save/load for policies
Breaking Changes:
Removed CEMRL
Model saved with previous versions cannot be loaded (because of the pre-preprocessing)
New Features:
Add support for
Discreteobservation spacesAdd saving/loading for policy weights, so the policy can be used without the model
Bug Fixes:
Fix type hint for activation functions
Deprecations:
Others:
Refactor handling of observation and action spaces
Refactored features extraction to have proper preprocessing
Refactored action distributions
Pre-Release 0.3.0 (2020-02-14)
Bug fixes, sync with Stable-Baselines, code cleanup
Breaking Changes:
Removed default seed
Bump dependencies (PyTorch and Gym)
predict()now returns a tuple to match Stable-Baselines behavior
New Features:
Better logging for
SACandPPO
Bug Fixes:
Synced callbacks with Stable-Baselines
Fixed colors in
results_plotterFix entropy computation (now summed over action dim)
Others:
SAC with SDE now sample only one matrix
Added
clip_meanparameter to SAC policyBuffers now return
NamedTupleMore typing
Add test for
explnRenamed
learning_ratetolr_scheduleAdd
version.txtAdd more tests for distribution
Documentation:
Deactivated
sphinx_autodoc_typehintsextension
Pre-Release 0.2.0 (2020-02-14)
Python 3.6+ required, type checking, callbacks, doc build
Breaking Changes:
Python 2 support was dropped, Stable Baselines3 now requires Python 3.6 or above
Return type of
evaluation.evaluate_policy()has been changedRefactored the replay buffer to avoid transformation between PyTorch and NumPy
Created OffPolicyRLModel base class
Remove deprecated JSON format for Monitor
New Features:
Add
seed()method toVecEnvclassAdd support for Callback (cf https://github.com/hill-a/stable-baselines/pull/644)
Add methods for saving and loading replay buffer
Add
extend()method to the buffersAdd
get_vec_normalize_env()toBaseRLModelto retrieveVecNormalizewrapper when it existsAdd
results_plotterfrom Stable BaselinesImprove
predict()method to handle different type of observations (single, vectorized, …)
Bug Fixes:
Fix loading model on CPU that were trained on GPU
Fix
reset_num_timestepsthat was not usedFix entropy computation for squashed Gaussian (approximate it now)
Fix seeding when using multiple environments (different seed per env)
Others:
Add type check
Converted all format string to f-strings
Add test for
OrnsteinUhlenbeckActionNoiseAdd type aliases in
common.type_aliases
Documentation:
fix documentation build
Pre-Release 0.1.0 (2020-01-20)
First Release: base algorithms and state-dependent exploration
New Features:
Initial release of A2C, CEM-RL, PPO, SAC and TD3, working only with
Boxinput spaceState-Dependent Exploration (SDE) for A2C, PPO, SAC and TD3
Maintainers
Stable-Baselines3 is currently maintained by Antonin Raffin (aka @araffin), Ashley Hill (aka @hill-a), Maximilian Ernestus (aka @ernestum), Adam Gleave (@AdamGleave), Anssi Kanervisto (aka @Miffyli) and Quentin Gallouédec (aka @qgallouedec).
Contributors:
In random order…
Thanks to the maintainers of V2: @hill-a @enerijunior @AdamGleave @Miffyli
And all the contributors: @taymuur @bjmuld @iambenzo @iandanforth @r7vme @brendenpetersen @huvar @abhiskk @JohannesAck @EliasHasle @mrakgr @Bleyddyn @antoine-galataud @junhyeokahn @AdamGleave @keshaviyengar @tperol @XMaster96 @kantneel @Pastafarianist @GerardMaggiolino @PatrickWalter214 @yutingsz @sc420 @Aaahh @billtubbs @Miffyli @dwiel @miguelrass @qxcv @jaberkow @eavelardev @ruifeng96150 @pedrohbtp @srivatsankrishnan @evilsocket @MarvineGothic @jdossgollin @stheid @SyllogismRXS @rusu24edward @jbulow @Antymon @seheevic @justinkterry @edbeeching @flodorner @KuKuXia @NeoExtended @PartiallyTyped @mmcenta @richardwu @kinalmehta @rolandgvc @tkelestemur @mloo3 @tirafesi @blurLake @koulakis @joeljosephjin @shwang @rk37 @andyshih12 @RaphaelWag @xicocaio @diditforlulz273 @liorcohen5 @ManifoldFR @mloo3 @SwamyDev @wmmc88 @megan-klaiber @thisray @tfederico @hn2 @LucasAlegre @AptX395 @zampanteymedio @JadenTravnik @decodyng @ardabbour @lorenz-h @mschweizer @lorepieri8 @vwxyzjn @ShangqunYu @PierreExeter @JacopoPan @ltbd78 @tom-doerr @Atlis @liusida @09tangriro @amy12xx @juancroldan @benblack769 @bstee615 @c-rizz @skandermoalla @MihaiAnca13 @davidblom603 @ayeright @cyprienc @wkirgsn @AechPro @CUN-bjy @batu @IljaAvadiev @timokau @kachayev @cleversonahum @eleurent @ac-93 @cove9988 @theDebugger811 @hsuehch @Demetrio92 @thomasgubler @IperGiove @ScheiklP @simoninithomas @armandpl @manuel-delverme @Gautam-J @gianlucadecola @buoyancy99 @caburu @xy9485 @Gregwar @ycheng517 @quantitative-technologies @bcollazo @git-thor @TibiGG @cool-RR @MWeltevrede @carlosluis @arjun-kg @tlpss @JonathanKuelz @Gabo-Tor @iwishiwasaneagle @Melanol @qgallouedec @francescoluciano @jlp-ue @burakdmb @timothe-chaumont @honglu2875 @anand-bala @hughperkins @sidney-tio @AlexPasqua @dominicgkerr @Akhilez @Rocamonde @tobirohrer @ZikangXiong @ReHoss @DavyMorgan @luizapozzobon @Bonifatius94 @theSquaredError @harveybellini @DavyMorgan @FieteO @jonasreiher @npit @WeberSamuel @troiganto @lutogniew @lbergmann1 @lukashass @BertrandDecoster @pseudo-rnd-thoughts @stefanbschneider @kyle-he @PatrickHelm @corentinlger