mirror of
https://github.com/vale981/ray
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244 lines
8.6 KiB
Python
244 lines
8.6 KiB
Python
import logging
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from typing import List, Tuple
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import time
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from ray.util.iter import from_actors, LocalIterator
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from ray.util.iter_metrics import SharedMetrics
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from ray.rllib.evaluation.metrics import get_learner_stats
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from ray.rllib.evaluation.rollout_worker import get_global_worker
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from ray.rllib.evaluation.worker_set import WorkerSet
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from ray.rllib.execution.common import STEPS_SAMPLED_COUNTER, LEARNER_INFO, \
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SAMPLE_TIMER, GRAD_WAIT_TIMER, _check_sample_batch_type, \
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_get_shared_metrics
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from ray.rllib.policy.sample_batch import SampleBatch, DEFAULT_POLICY_ID, \
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MultiAgentBatch
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from ray.rllib.utils.sgd import standardized
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from ray.rllib.utils.typing import PolicyID, SampleBatchType, ModelGradients
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logger = logging.getLogger(__name__)
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def ParallelRollouts(workers: WorkerSet, *, mode="bulk_sync",
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num_async=1) -> LocalIterator[SampleBatch]:
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"""Operator to collect experiences in parallel from rollout workers.
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If there are no remote workers, experiences will be collected serially from
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the local worker instance instead.
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Args:
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workers (WorkerSet): set of rollout workers to use.
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mode (str): One of 'async', 'bulk_sync', 'raw'. In 'async' mode,
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batches are returned as soon as they are computed by rollout
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workers with no order guarantees. In 'bulk_sync' mode, we collect
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one batch from each worker and concatenate them together into a
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large batch to return. In 'raw' mode, the ParallelIterator object
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is returned directly and the caller is responsible for implementing
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gather and updating the timesteps counter.
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num_async (int): In async mode, the max number of async
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requests in flight per actor.
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Returns:
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A local iterator over experiences collected in parallel.
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Examples:
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>>> rollouts = ParallelRollouts(workers, mode="async")
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>>> batch = next(rollouts)
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>>> print(batch.count)
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50 # config.rollout_fragment_length
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>>> rollouts = ParallelRollouts(workers, mode="bulk_sync")
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>>> batch = next(rollouts)
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>>> print(batch.count)
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200 # config.rollout_fragment_length * config.num_workers
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Updates the STEPS_SAMPLED_COUNTER counter in the local iterator context.
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"""
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# Ensure workers are initially in sync.
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workers.sync_weights()
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def report_timesteps(batch):
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metrics = _get_shared_metrics()
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metrics.counters[STEPS_SAMPLED_COUNTER] += batch.count
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return batch
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if not workers.remote_workers():
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# Handle the serial sampling case.
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def sampler(_):
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while True:
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yield workers.local_worker().sample()
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return (LocalIterator(sampler, SharedMetrics())
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.for_each(report_timesteps))
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# Create a parallel iterator over generated experiences.
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rollouts = from_actors(workers.remote_workers())
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if mode == "bulk_sync":
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return rollouts \
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.batch_across_shards() \
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.for_each(lambda batches: SampleBatch.concat_samples(batches)) \
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.for_each(report_timesteps)
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elif mode == "async":
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return rollouts.gather_async(
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num_async=num_async).for_each(report_timesteps)
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elif mode == "raw":
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return rollouts
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else:
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raise ValueError("mode must be one of 'bulk_sync', 'async', 'raw', "
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"got '{}'".format(mode))
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def AsyncGradients(
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workers: WorkerSet) -> LocalIterator[Tuple[ModelGradients, int]]:
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"""Operator to compute gradients in parallel from rollout workers.
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Args:
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workers (WorkerSet): set of rollout workers to use.
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Returns:
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A local iterator over policy gradients computed on rollout workers.
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Examples:
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>>> grads_op = AsyncGradients(workers)
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>>> print(next(grads_op))
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{"var_0": ..., ...}, 50 # grads, batch count
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Updates the STEPS_SAMPLED_COUNTER counter and LEARNER_INFO field in the
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local iterator context.
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"""
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# Ensure workers are initially in sync.
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workers.sync_weights()
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# This function will be applied remotely on the workers.
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def samples_to_grads(samples):
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return get_global_worker().compute_gradients(samples), samples.count
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# Record learner metrics and pass through (grads, count).
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class record_metrics:
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def _on_fetch_start(self):
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self.fetch_start_time = time.perf_counter()
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def __call__(self, item):
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(grads, info), count = item
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metrics = _get_shared_metrics()
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metrics.counters[STEPS_SAMPLED_COUNTER] += count
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metrics.info[LEARNER_INFO] = get_learner_stats(info)
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metrics.timers[GRAD_WAIT_TIMER].push(time.perf_counter() -
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self.fetch_start_time)
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return grads, count
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rollouts = from_actors(workers.remote_workers())
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grads = rollouts.for_each(samples_to_grads)
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return grads.gather_async().for_each(record_metrics())
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class ConcatBatches:
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"""Callable used to merge batches into larger batches for training.
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This should be used with the .combine() operator.
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Examples:
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>>> rollouts = ParallelRollouts(...)
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>>> rollouts = rollouts.combine(ConcatBatches(min_batch_size=10000))
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>>> print(next(rollouts).count)
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10000
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"""
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def __init__(self, min_batch_size: int):
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self.min_batch_size = min_batch_size
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self.buffer = []
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self.count = 0
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self.batch_start_time = None
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def _on_fetch_start(self):
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if self.batch_start_time is None:
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self.batch_start_time = time.perf_counter()
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def __call__(self, batch: SampleBatchType) -> List[SampleBatchType]:
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_check_sample_batch_type(batch)
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self.buffer.append(batch)
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self.count += batch.count
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if self.count >= self.min_batch_size:
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if self.count > self.min_batch_size * 2:
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logger.info("Collected more training samples than expected "
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"(actual={}, expected={}). ".format(
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self.count, self.min_batch_size) +
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"This may be because you have many workers or "
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"long episodes in 'complete_episodes' batch mode.")
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out = SampleBatch.concat_samples(self.buffer)
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timer = _get_shared_metrics().timers[SAMPLE_TIMER]
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timer.push(time.perf_counter() - self.batch_start_time)
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timer.push_units_processed(self.count)
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self.batch_start_time = None
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self.buffer = []
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self.count = 0
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return [out]
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return []
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class SelectExperiences:
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"""Callable used to select experiences from a MultiAgentBatch.
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This should be used with the .for_each() operator.
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Examples:
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>>> rollouts = ParallelRollouts(...)
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>>> rollouts = rollouts.for_each(SelectExperiences(["pol1", "pol2"]))
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>>> print(next(rollouts).policy_batches.keys())
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{"pol1", "pol2"}
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"""
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def __init__(self, policy_ids: List[PolicyID]):
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assert isinstance(policy_ids, list), policy_ids
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self.policy_ids = policy_ids
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def __call__(self, samples: SampleBatchType) -> SampleBatchType:
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_check_sample_batch_type(samples)
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if isinstance(samples, MultiAgentBatch):
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samples = MultiAgentBatch({
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k: v
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for k, v in samples.policy_batches.items()
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if k in self.policy_ids
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}, samples.count)
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return samples
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class StandardizeFields:
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"""Callable used to standardize fields of batches.
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This should be used with the .for_each() operator. Note that the input
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may be mutated by this operator for efficiency.
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Examples:
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>>> rollouts = ParallelRollouts(...)
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>>> rollouts = rollouts.for_each(StandardizeFields(["advantages"]))
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>>> print(np.std(next(rollouts)["advantages"]))
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1.0
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"""
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def __init__(self, fields: List[str]):
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self.fields = fields
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def __call__(self, samples: SampleBatchType) -> SampleBatchType:
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_check_sample_batch_type(samples)
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wrapped = False
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if isinstance(samples, SampleBatch):
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samples = MultiAgentBatch({
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DEFAULT_POLICY_ID: samples
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}, samples.count)
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wrapped = True
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for policy_id in samples.policy_batches:
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batch = samples.policy_batches[policy_id]
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for field in self.fields:
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batch[field] = standardized(batch[field])
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if wrapped:
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samples = samples.policy_batches[DEFAULT_POLICY_ID]
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return samples
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