from easydict import EasyDict | |
collector_env_num = 8 | |
evaluator_env_num = 5 | |
minigrid_r2d2_config = dict( | |
exp_name='debug_minigrid_doorkey_r2d2_seed0', | |
env=dict( | |
collector_env_num=collector_env_num, | |
evaluator_env_num=evaluator_env_num, | |
# typical MiniGrid env id: | |
# {'MiniGrid-Empty-8x8-v0', 'MiniGrid-FourRooms-v0', 'MiniGrid-DoorKey-8x8-v0','MiniGrid-DoorKey-16x16-v0'}, | |
# please refer to https://github.com/Farama-Foundation/MiniGrid for details. | |
env_id='MiniGrid-DoorKey-16x16-v0', | |
n_evaluator_episode=5, | |
max_step=300, | |
stop_value=0.96, | |
), | |
policy=dict( | |
cuda=True, | |
on_policy=False, | |
priority=True, | |
priority_IS_weight=True, | |
model=dict( | |
obs_shape=2835, | |
action_shape=7, | |
encoder_hidden_size_list=[128, 128, 512], | |
), | |
discount_factor=0.997, | |
nstep=5, | |
burnin_step=2, | |
# (int) the whole sequence length to unroll the RNN network minus | |
# the timesteps of burnin part, | |
# i.e., <the whole sequence length> = <unroll_len> = <burnin_step> + <learn_unroll_len> | |
learn_unroll_len=40, | |
learn=dict( | |
# according to the R2D2 paper, actor parameter update interval is 400 | |
# environment timesteps, and in per collect phase, we collect <n_sample> sequence | |
# samples, the length of each sequence sample is <burnin_step> + <learn_unroll_len>, | |
# e.g. if n_sample=32, <sequence length> is 100, thus 32*100/400=8, | |
# we will set update_per_collect=8 in most environments. | |
update_per_collect=8, | |
batch_size=64, | |
learning_rate=0.0005, | |
target_update_theta=0.001, | |
), | |
collect=dict( | |
# NOTE: It is important that set key traj_len_inf=True here, | |
# to make sure self._traj_len=INF in serial_sample_collector.py. | |
# In sequence-based policy, for each collect_env, | |
# we want to collect data of length self._traj_len=INF | |
# unless the episode enters the 'done' state. | |
# In each collect phase, we collect a total of <n_sample> sequence samples. | |
n_sample=32, | |
traj_len_inf=True, | |
env_num=collector_env_num, | |
), | |
eval=dict(env_num=evaluator_env_num, ), | |
other=dict( | |
eps=dict( | |
type='exp', | |
start=0.95, | |
end=0.05, | |
decay=1e5, | |
), | |
replay_buffer=dict( | |
replay_buffer_size=100000, | |
# (Float type) How much prioritization is used: 0 means no prioritization while 1 means full prioritization | |
alpha=0.6, | |
# (Float type) How much correction is used: 0 means no correction while 1 means full correction | |
beta=0.4, | |
) | |
), | |
), | |
) | |
minigrid_r2d2_config = EasyDict(minigrid_r2d2_config) | |
main_config = minigrid_r2d2_config | |
minigrid_r2d2_create_config = dict( | |
env=dict( | |
type='minigrid', | |
import_names=['dizoo.minigrid.envs.minigrid_env'], | |
), | |
env_manager=dict(type='subprocess'), | |
policy=dict(type='r2d2'), | |
) | |
minigrid_r2d2_create_config = EasyDict(minigrid_r2d2_create_config) | |
create_config = minigrid_r2d2_create_config | |
if __name__ == "__main__": | |
# or you can enter `ding -m serial -c minigrid_r2d2_config.py -s 0` | |
from ding.entry import serial_pipeline | |
serial_pipeline([main_config, create_config], seed=0) | |