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isac.py
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isac.py
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# Copyright (c) Meta Platforms, Inc. and affiliates.
#
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.
#
from dataclasses import dataclass, MISSING
from typing import Dict, Iterable, Optional, Tuple, Type, Union
from tensordict import TensorDictBase
from tensordict.nn import NormalParamExtractor, TensorDictModule, TensorDictSequential
from torch.distributions import Categorical
from torchrl.data import Composite, Unbounded
from torchrl.modules import (
IndependentNormal,
MaskedCategorical,
ProbabilisticActor,
TanhNormal,
)
from torchrl.objectives import DiscreteSACLoss, LossModule, SACLoss, ValueEstimators
from benchmarl.algorithms.common import Algorithm, AlgorithmConfig
from benchmarl.models.common import ModelConfig
class Isac(Algorithm):
"""Independent Soft Actor Critic.
Args:
share_param_critic (bool): Whether to share the parameters of the critics withing agent groups
num_qvalue_nets (integer): number of Q-Value networks used.
loss_function (str): loss function to be used with
the value function loss.
delay_qvalue (bool): Whether to separate the target Q value
networks from the Q value networks used for data collection.
target_entropy (float or str, optional): Target entropy for the
stochastic policy. Default is "auto", where target entropy is
computed as :obj:`-prod(n_actions)`.
discrete_target_entropy_weight (float): weight for the target entropy term when actions are discrete
alpha_init (float): initial entropy multiplier.
min_alpha (float): min value of alpha.
max_alpha (float): max value of alpha.
fixed_alpha (bool): if ``True``, alpha will be fixed to its
initial value. Otherwise, alpha will be optimized to
match the 'target_entropy' value.
scale_mapping (str): positive mapping function to be used with the std.
choices: "softplus", "exp", "relu", "biased_softplus_1";
use_tanh_normal (bool): if ``True``, use TanhNormal as the continuyous action distribution with support bound
to the action domain. Otherwise, an IndependentNormal is used.
"""
def __init__(
self,
share_param_critic: bool,
num_qvalue_nets: int,
loss_function: str,
delay_qvalue: bool,
target_entropy: Union[float, str],
discrete_target_entropy_weight: float,
alpha_init: float,
min_alpha: Optional[float],
max_alpha: Optional[float],
fixed_alpha: bool,
scale_mapping: str,
use_tanh_normal: bool,
**kwargs
):
super().__init__(**kwargs)
self.share_param_critic = share_param_critic
self.delay_qvalue = delay_qvalue
self.num_qvalue_nets = num_qvalue_nets
self.loss_function = loss_function
self.target_entropy = target_entropy
self.discrete_target_entropy_weight = discrete_target_entropy_weight
self.alpha_init = alpha_init
self.min_alpha = min_alpha
self.max_alpha = max_alpha
self.fixed_alpha = fixed_alpha
self.scale_mapping = scale_mapping
self.use_tanh_normal = use_tanh_normal
#############################
# Overridden abstract methods
#############################
def _get_loss(
self, group: str, policy_for_loss: TensorDictModule, continuous: bool
) -> Tuple[LossModule, bool]:
if continuous:
# Loss
loss_module = SACLoss(
actor_network=policy_for_loss,
qvalue_network=self.get_continuous_value_module(group),
num_qvalue_nets=self.num_qvalue_nets,
loss_function=self.loss_function,
alpha_init=self.alpha_init,
min_alpha=self.min_alpha,
max_alpha=self.max_alpha,
action_spec=self.action_spec,
fixed_alpha=self.fixed_alpha,
target_entropy=self.target_entropy,
delay_qvalue=self.delay_qvalue,
)
loss_module.set_keys(
state_action_value=(group, "state_action_value"),
action=(group, "action"),
reward=(group, "reward"),
priority=(group, "td_error"),
done=(group, "done"),
terminated=(group, "terminated"),
)
else:
loss_module = DiscreteSACLoss(
actor_network=policy_for_loss,
qvalue_network=self.get_discrete_value_module(group),
num_qvalue_nets=self.num_qvalue_nets,
loss_function=self.loss_function,
alpha_init=self.alpha_init,
min_alpha=self.min_alpha,
max_alpha=self.max_alpha,
action_space=self.action_spec,
fixed_alpha=self.fixed_alpha,
target_entropy=self.target_entropy,
target_entropy_weight=self.discrete_target_entropy_weight,
delay_qvalue=self.delay_qvalue,
num_actions=self.action_spec[group, "action"].space.n,
)
loss_module.set_keys(
action_value=(group, "action_value"),
action=(group, "action"),
reward=(group, "reward"),
priority=(group, "td_error"),
done=(group, "done"),
terminated=(group, "terminated"),
)
loss_module.make_value_estimator(
ValueEstimators.TD0, gamma=self.experiment_config.gamma
)
return loss_module, True
def _get_parameters(self, group: str, loss: LossModule) -> Dict[str, Iterable]:
items = {
"loss_actor": list(loss.actor_network_params.flatten_keys().values()),
"loss_qvalue": list(loss.qvalue_network_params.flatten_keys().values()),
}
if not self.fixed_alpha:
items.update({"loss_alpha": [loss.log_alpha]})
return items
def _get_policy_for_loss(
self, group: str, model_config: ModelConfig, continuous: bool
) -> TensorDictModule:
n_agents = len(self.group_map[group])
if continuous:
logits_shape = list(self.action_spec[group, "action"].shape)
logits_shape[-1] *= 2
else:
logits_shape = [
*self.action_spec[group, "action"].shape,
self.action_spec[group, "action"].space.n,
]
actor_input_spec = Composite(
{group: self.observation_spec[group].clone().to(self.device)}
)
actor_output_spec = Composite(
{
group: Composite(
{"logits": Unbounded(shape=logits_shape)},
shape=(n_agents,),
)
}
)
actor_module = model_config.get_model(
input_spec=actor_input_spec,
output_spec=actor_output_spec,
agent_group=group,
input_has_agent_dim=True,
n_agents=n_agents,
centralised=False,
share_params=self.experiment_config.share_policy_params,
device=self.device,
action_spec=self.action_spec,
)
if continuous:
extractor_module = TensorDictModule(
NormalParamExtractor(scale_mapping=self.scale_mapping),
in_keys=[(group, "logits")],
out_keys=[(group, "loc"), (group, "scale")],
)
policy = ProbabilisticActor(
module=TensorDictSequential(actor_module, extractor_module),
spec=self.action_spec[group, "action"],
in_keys=[(group, "loc"), (group, "scale")],
out_keys=[(group, "action")],
distribution_class=(
IndependentNormal if not self.use_tanh_normal else TanhNormal
),
distribution_kwargs=(
{
"low": self.action_spec[(group, "action")].space.low,
"high": self.action_spec[(group, "action")].space.high,
}
if self.use_tanh_normal
else {}
),
return_log_prob=True,
log_prob_key=(group, "log_prob"),
)
else:
if self.action_mask_spec is None:
policy = ProbabilisticActor(
module=actor_module,
spec=self.action_spec[group, "action"],
in_keys=[(group, "logits")],
out_keys=[(group, "action")],
distribution_class=Categorical,
return_log_prob=True,
log_prob_key=(group, "log_prob"),
)
else:
policy = ProbabilisticActor(
module=actor_module,
spec=self.action_spec[group, "action"],
in_keys={
"logits": (group, "logits"),
"mask": (group, "action_mask"),
},
distribution_kwargs={"neg_inf": -18.0},
out_keys=[(group, "action")],
distribution_class=MaskedCategorical,
return_log_prob=True,
log_prob_key=(group, "log_prob"),
)
return policy
def _get_policy_for_collection(
self, policy_for_loss: TensorDictModule, group: str, continuous: bool
) -> TensorDictModule:
return policy_for_loss
def process_batch(self, group: str, batch: TensorDictBase) -> TensorDictBase:
keys = list(batch.keys(True, True))
group_shape = batch.get(group).shape
nested_done_key = ("next", group, "done")
nested_terminated_key = ("next", group, "terminated")
nested_reward_key = ("next", group, "reward")
if nested_done_key not in keys:
batch.set(
nested_done_key,
batch.get(("next", "done")).unsqueeze(-1).expand((*group_shape, 1)),
)
if nested_terminated_key not in keys:
batch.set(
nested_terminated_key,
batch.get(("next", "terminated"))
.unsqueeze(-1)
.expand((*group_shape, 1)),
)
if nested_reward_key not in keys:
batch.set(
nested_reward_key,
batch.get(("next", "reward")).unsqueeze(-1).expand((*group_shape, 1)),
)
return batch
#####################
# Custom new methods
#####################
def get_discrete_value_module(self, group: str) -> TensorDictModule:
n_agents = len(self.group_map[group])
n_actions = self.action_spec[group, "action"].space.n
critic_input_spec = Composite(
{group: self.observation_spec[group].clone().to(self.device)}
)
critic_output_spec = Composite(
{
group: Composite(
{"action_value": Unbounded(shape=(n_agents, n_actions))},
shape=(n_agents,),
)
}
)
value_module = self.critic_model_config.get_model(
input_spec=critic_input_spec,
output_spec=critic_output_spec,
n_agents=n_agents,
centralised=False,
input_has_agent_dim=True,
agent_group=group,
share_params=self.share_param_critic,
device=self.device,
action_spec=self.action_spec,
)
return value_module
def get_continuous_value_module(self, group: str) -> TensorDictModule:
n_agents = len(self.group_map[group])
modules = []
critic_input_spec = Composite(
{
group: self.observation_spec[group]
.clone()
.update(self.action_spec[group])
}
)
critic_output_spec = Composite(
{
group: Composite(
{"state_action_value": Unbounded(shape=(n_agents, 1))},
shape=(n_agents,),
)
}
)
modules.append(
self.critic_model_config.get_model(
input_spec=critic_input_spec,
output_spec=critic_output_spec,
n_agents=n_agents,
centralised=False,
input_has_agent_dim=True,
agent_group=group,
share_params=self.share_param_critic,
device=self.device,
action_spec=self.action_spec,
)
)
return TensorDictSequential(*modules)
@dataclass
class IsacConfig(AlgorithmConfig):
"""Configuration dataclass for :class:`~benchmarl.algorithms.Isac`."""
share_param_critic: bool = MISSING
num_qvalue_nets: int = MISSING
loss_function: str = MISSING
delay_qvalue: bool = MISSING
target_entropy: Union[float, str] = MISSING
discrete_target_entropy_weight: float = MISSING
alpha_init: float = MISSING
min_alpha: Optional[float] = MISSING
max_alpha: Optional[float] = MISSING
fixed_alpha: bool = MISSING
scale_mapping: str = MISSING
use_tanh_normal: bool = MISSING
@staticmethod
def associated_class() -> Type[Algorithm]:
return Isac
@staticmethod
def supports_continuous_actions() -> bool:
return True
@staticmethod
def supports_discrete_actions() -> bool:
return True
@staticmethod
def on_policy() -> bool:
return False
@staticmethod
def has_independent_critic() -> bool:
return True