164 lines
6.4 KiB
Python
164 lines
6.4 KiB
Python
import abc
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from collections import defaultdict
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from queue import Queue
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from typing import Any, Dict, Optional
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from ray.rllib.algorithms.appo.appo import APPOConfig
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from ray.rllib.algorithms.appo.utils import CircularBuffer
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from ray.rllib.algorithms.impala.impala_learner import IMPALALearner
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from ray.rllib.core.learner.learner import Learner
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from ray.rllib.core.learner.utils import update_target_network
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from ray.rllib.core.rl_module.apis import TargetNetworkAPI, ValueFunctionAPI
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from ray.rllib.core.rl_module.multi_rl_module import MultiRLModuleSpec
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from ray.rllib.core.rl_module.rl_module import RLModuleSpec
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from ray.rllib.utils.annotations import override
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from ray.rllib.utils.lambda_defaultdict import LambdaDefaultDict
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from ray.rllib.utils.metrics import (
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LAST_TARGET_UPDATE_TS,
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NUM_ENV_STEPS_TRAINED_LIFETIME,
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NUM_MODULE_STEPS_TRAINED,
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NUM_TARGET_UPDATES,
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)
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from ray.rllib.utils.schedules.scheduler import Scheduler
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from ray.rllib.utils.typing import ModuleID, ShouldModuleBeUpdatedFn
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class APPOLearner(IMPALALearner):
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"""Adds KL coeff updates via `after_gradient_based_update()` to IMPALA logic.
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Framework-specific subclasses must override `_update_module_kl_coeff()`.
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"""
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@override(IMPALALearner)
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def build(self):
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self._last_update_ts_by_mid = defaultdict(int)
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# Use a CircularBuffer as learner-in-queue if configured to do so.
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if self.config.use_circular_buffer:
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self._learner_thread_in_queue = CircularBuffer(
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num_batches=self.config.circular_buffer_num_batches,
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iterations_per_batch=self.config.circular_buffer_iterations_per_batch,
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)
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# Otherwise, use a simple Queue.
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else:
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# For APPO use a large queue.
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self._learner_thread_in_queue = Queue(maxsize=self.config.simple_queue_size)
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# Now build the super class. Otherwise the learner-queue would be overridden.
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super().build()
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# Make target networks.
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self.module.foreach_module(
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lambda mid, mod: (
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mod.make_target_networks()
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if isinstance(mod, TargetNetworkAPI)
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else None
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)
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)
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# The current kl coefficients per module as (framework specific) tensor
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# variables.
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self.curr_kl_coeffs_per_module: LambdaDefaultDict[
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ModuleID, Scheduler
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] = LambdaDefaultDict(
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lambda module_id: self._get_tensor_variable(
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self.config.get_config_for_module(module_id).kl_coeff
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)
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)
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@override(Learner)
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def add_module(
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self,
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*,
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module_id: ModuleID,
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module_spec: RLModuleSpec,
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config_overrides: Optional[Dict] = None,
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new_should_module_be_updated: Optional[ShouldModuleBeUpdatedFn] = None,
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) -> MultiRLModuleSpec:
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marl_spec = super().add_module(
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module_id=module_id,
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module_spec=module_spec,
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config_overrides=config_overrides,
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new_should_module_be_updated=new_should_module_be_updated,
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)
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# Create target networks for added Module, if applicable.
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if isinstance(self.module[module_id].unwrapped(), TargetNetworkAPI):
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self.module[module_id].unwrapped().make_target_networks()
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return marl_spec
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@override(IMPALALearner)
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def remove_module(self, module_id: str) -> MultiRLModuleSpec:
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marl_spec = super().remove_module(module_id)
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self.curr_kl_coeffs_per_module.pop(module_id)
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return marl_spec
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@override(Learner)
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def after_gradient_based_update(self, *, timesteps: Dict[str, Any]) -> None:
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"""Updates the target Q Networks."""
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super().after_gradient_based_update(timesteps=timesteps)
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# TODO (sven): Maybe we should have a `after_gradient_based_update`
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# method per module?
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curr_timestep = timesteps.get(NUM_ENV_STEPS_TRAINED_LIFETIME, 0)
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for module_id, module in self.module._rl_modules.items():
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config = self.config.get_config_for_module(module_id)
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if isinstance(module.unwrapped(), TargetNetworkAPI) and (
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curr_timestep - self._last_update_ts_by_mid[module_id]
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>= (
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config.target_network_update_freq
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* config.circular_buffer_num_batches
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* config.circular_buffer_iterations_per_batch
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* config.train_batch_size_per_learner
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)
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):
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for (
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main_net,
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target_net,
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) in module.unwrapped().get_target_network_pairs():
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update_target_network(
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main_net=main_net,
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target_net=target_net,
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tau=config.tau,
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)
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# Increase lifetime target network update counter by one.
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self.metrics.log_value(
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(module_id, NUM_TARGET_UPDATES), 1, reduce="lifetime_sum"
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)
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# Update the (single-value -> window=1) last updated timestep metric.
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self._last_update_ts_by_mid[module_id] = curr_timestep
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self.metrics.log_value(
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(module_id, LAST_TARGET_UPDATE_TS), curr_timestep, reduce="max"
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)
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if (
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config.use_kl_loss
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and self.metrics.peek((module_id, NUM_MODULE_STEPS_TRAINED), default=0)
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> 0
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):
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self._update_module_kl_coeff(module_id=module_id, config=config)
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@classmethod
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@override(Learner)
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def rl_module_required_apis(cls) -> list[type]:
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# In order for a PPOLearner to update an RLModule, it must implement the
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# following APIs:
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return [TargetNetworkAPI, ValueFunctionAPI]
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@abc.abstractmethod
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def _update_module_kl_coeff(self, module_id: ModuleID, config: APPOConfig) -> None:
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"""Dynamically update the KL loss coefficients of each module.
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The update is completed using the mean KL divergence between the action
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distributions current policy and old policy of each module. That action
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distribution is computed during the most recent update/call to `compute_loss`.
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Args:
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module_id: The module whose KL loss coefficient to update.
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config: The AlgorithmConfig specific to the given `module_id`.
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"""
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AppoLearner = APPOLearner
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