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dqn_and_double_dqn.py
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dqn_and_double_dqn.py
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"""
Run DQN on grid world.
"""
import gym
from torch import nn as nn
from rlkit.exploration_strategies.base import \
PolicyWrappedWithExplorationStrategy
from rlkit.exploration_strategies.epsilon_greedy import EpsilonGreedy
from rlkit.policies.argmax import ArgmaxDiscretePolicy
from rlkit.torch.dqn.dqn import DQNTrainer
from rlkit.torch.networks import Mlp
import rlkit.torch.pytorch_util as ptu
from rlkit.data_management.env_replay_buffer import EnvReplayBuffer
from rlkit.launchers.launcher_util import setup_logger
from rlkit.samplers.data_collector import MdpPathCollector
from rlkit.torch.torch_rl_algorithm import TorchBatchRLAlgorithm
def experiment(variant):
expl_env = gym.make('CartPole-v0')
eval_env = gym.make('CartPole-v0')
obs_dim = expl_env.observation_space.low.size
action_dim = eval_env.action_space.n
qf = Mlp(
hidden_sizes=[32, 32],
input_size=obs_dim,
output_size=action_dim,
)
target_qf = Mlp(
hidden_sizes=[32, 32],
input_size=obs_dim,
output_size=action_dim,
)
qf_criterion = nn.MSELoss()
eval_policy = ArgmaxDiscretePolicy(qf)
expl_policy = PolicyWrappedWithExplorationStrategy(
EpsilonGreedy(expl_env.action_space),
eval_policy,
)
eval_path_collector = MdpPathCollector(
eval_env,
eval_policy,
)
expl_path_collector = MdpPathCollector(
expl_env,
expl_policy,
)
trainer = DQNTrainer(
qf=qf,
target_qf=target_qf,
qf_criterion=qf_criterion,
**variant['trainer_kwargs']
)
replay_buffer = EnvReplayBuffer(
variant['replay_buffer_size'],
expl_env,
)
algorithm = TorchBatchRLAlgorithm(
trainer=trainer,
exploration_env=expl_env,
evaluation_env=eval_env,
exploration_data_collector=expl_path_collector,
evaluation_data_collector=eval_path_collector,
replay_buffer=replay_buffer,
**variant['algorithm_kwargs']
)
algorithm.to(ptu.device)
algorithm.train()
if __name__ == "__main__":
# noinspection PyTypeChecker
variant = dict(
algorithm="SAC",
version="normal",
layer_size=256,
replay_buffer_size=int(1E6),
algorithm_kwargs=dict(
num_epochs=3000,
num_eval_steps_per_epoch=5000,
num_trains_per_train_loop=1000,
num_expl_steps_per_train_loop=1000,
min_num_steps_before_training=1000,
max_path_length=1000,
batch_size=256,
),
trainer_kwargs=dict(
discount=0.99,
learning_rate=3E-4,
),
)
setup_logger('name-of-experiment', variant=variant)
# ptu.set_gpu_mode(True) # optionally set the GPU (default=False)
experiment(variant)