Releases: DLR-RM/rl-baselines3-zoo
Releases · DLR-RM/rl-baselines3-zoo
SB3 v1.4.0: TRPO, ARS and multi env training for off-policy algorithms
Breaking Changes
- Dropped python 3.6 support
- Upgrade to Stable-Baselines3 (SB3) >= 1.4.0
- Upgrade to sb3-contrib >= 1.4.0
New Features
- Added mujoco hyperparameters
- Added MuJoCo pre-trained agents
- Added script to parse best hyperparameters of an optuna study
- Added TRPO support
- Added ARS support and pre-trained agents
Documentation
- Replace front image
SB3 v1.3.0: rliable plots and bug fixes
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
- Upgrade to panda-gym 1.1.1
- Upgrade to Stable-Baselines3 (SB3) >= 1.3.0
- Upgrade to sb3-contrib >= 1.3.0
New Features
- Added support for using rliable for performance comparison
Bug fixes
- Fix training with Dict obs and channel last images
Other
- Updated docker image
- constrained gym version: gym>=0.17,<0.20
- Better hyperparameters for A2C/PPO on Pendulum
SB3 v1.2.0
Breaking Changes
- Upgrade to Stable-Baselines3 (SB3) >= 1.2.0
- Upgrade to sb3-contrib >= 1.2.0
Bug fixes
- Fix
--load-last-checkpoint
(@SammyRamone) - Fix
TypeError
forgym.Env
class entry points inExperimentManager
(@schuderer) - Fix usage of callbacks during hyperparameter optimization (@SammyRamone)
Other
- Added python 3.9 to Github CI
- Increased DQN replay buffer size for Atari games (@nikhilrayaprolu)
SB3 v1.1.0
Breaking Changes
- Upgrade to Stable-Baselines3 (SB3) >= 1.1.0
- Upgrade to sb3-contrib >= 1.1.0
- Add timeout handling (cf SB3 doc)
HER
is now a replay buffer class and no more an algorithm- Removed
PlotNoiseRatioCallback
- Removed
PlotActionWrapper
- Changed
'lr'
key in Optuna param dict to'learning_rate'
so the dict can be directly passed to SB3 methods (@justinkterry)
New Features
- Add support for recording videos of best models and checkpoints (@mcres)
- Add support for recording videos of training experiments (@mcres)
- Add support for dictionary observations
- Added experimental parallel training (with
utils.callbacks.ParallelTrainCallback
) - Added support for using multiple envs for evaluation
- Added
--load-last-checkpoint
option for the enjoy script - Save Optuna study object at the end of hyperparameter optimization and plot the results (
plotly
package required) - Allow to pass multiple folders to
scripts/plot_train.py
- Flag to save logs and optimal policies from each training run (@justinkterry)
Bug fixes
- Fixed video rendering for PyBullet envs on Linux
- Fixed
get_latest_run_id()
so it works in Windows too (@NicolasHaeffner) - Fixed video record when using
HER
replay buffer
Documentation
- Updated README (dict obs are now supported)
Other
- Added
is_bullet()
toExperimentManager
- Simplify
close()
for the enjoy script - Updated docker image to include latest black version
- Updated TD3 Walker2D model (thanks @modanesh)
- Fixed typo in plot title (@scottemmons)
- Minimum cloudpickle version added to
requirements.txt
(@amy12xx) - Fixed atari-py version (ROM missing in newest release)
- Updated
SAC
andTD3
search spaces - Cleanup eval_freq documentation and variable name changes (@justinkterry)
- Add clarifying print statement when printing saved hyperparameters during optimization (@justinkterry)
- Clarify n_evaluations help text (@justinkterry)
- Simplified hyperparameters files making use of defaults
- Added new TQC+HER agents
- Add
panda-gym
environments (@qgallouedec)
Stable-Baselines3 v1.0 - 100+ pre-trained models
Blog post: https://araffin.github.io/post/sb3/
Breaking Changes
- Upgrade to SB3 >= 1.0
- Upgrade to sb3-contrib >= 1.0
New Features
- Added 100+ trained agents + benchmark file
- Add support for loading saved model under python 3.8+ (no retraining possible)
- Added Robotics pre-trained agents (@sgillen)
Bug fixes
- Bug fixes for
HER
handling action noise - Fixed double reset bug with
HER
and enjoy script
Documentation
- Added doc about plotting scripts
Other
- Updated
HER
hyperparameters
Big refactor - SB3 upgrade - Last before v1.0
Breaking Changes
- Removed
LinearNormalActionNoise
- Evaluation is now deterministic by default, except for Atari games
sb3_contrib
is now requiredTimeFeatureWrapper
was moved to the contrib repo- Replaced old
plot_train.py
script with updatedplot_training_success.py
- Renamed
n_episodes_rollout
totrain_freq
tuple to match latest version of SB3
New Features
- Added option to choose which
VecEnv
class to use for multiprocessing - Added hyperparameter optimization support for
TQC
- Added support for
QR-DQN
from SB3 contrib
Bug fixes
- Improved detection of Atari games
- Fix potential bug in plotting script when there is not enough timesteps
- Fixed a bug when using HER + DQN/TQC for hyperparam optimization
Documentation
- Improved documentation (@cboettig)
Other
- Refactored train script, now uses a
ExperimentManager
class - Replaced
make_env
with SB3 built-inmake_vec_env
- Add more type hints (
utils/utils.py
done) - Use f-strings when possible
- Changed
PPO
atari hyperparameters (removed vf clipping) - Changed
A2C
atari hyperparameters (eps value of the optimizer) - Updated benchmark script
- Updated hyperparameter optim search space (commented gSDE for A2C/PPO)
- Updated
DQN
hyperparameters for CartPole - Do not wrap channel-first image env (now natively supported by SB3)
- Removed hack to log success rate
- Simplify plot script