mirror of
https://github.com/vale981/ray
synced 2025-03-06 02:21:39 -05:00
397 lines
16 KiB
Python
397 lines
16 KiB
Python
import logging
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import numpy as np
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import math
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from typing import List, Tuple, Any
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import ray
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from ray.rllib.evaluation.worker_set import WorkerSet
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from ray.rllib.execution.common import \
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AGENT_STEPS_TRAINED_COUNTER, APPLY_GRADS_TIMER, COMPUTE_GRADS_TIMER, \
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LAST_TARGET_UPDATE_TS, LEARN_ON_BATCH_TIMER, \
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LOAD_BATCH_TIMER, NUM_TARGET_UPDATES, STEPS_SAMPLED_COUNTER, \
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STEPS_TRAINED_COUNTER, WORKER_UPDATE_TIMER, _check_sample_batch_type, \
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_get_global_vars, _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.framework import try_import_tf
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from ray.rllib.utils.metrics.learner_info import LearnerInfoBuilder, \
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LEARNER_INFO
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from ray.rllib.utils.sgd import do_minibatch_sgd
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from ray.rllib.utils.typing import PolicyID, SampleBatchType, ModelGradients
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tf1, tf, tfv = try_import_tf()
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logger = logging.getLogger(__name__)
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class TrainOneStep:
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"""Callable that improves the policy and updates workers.
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This should be used with the .for_each() operator. A tuple of the input
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and learner stats will be returned.
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Examples:
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>>> rollouts = ParallelRollouts(...)
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>>> train_op = rollouts.for_each(TrainOneStep(workers))
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>>> print(next(train_op)) # This trains the policy on one batch.
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SampleBatch(...), {"learner_stats": ...}
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Updates the STEPS_TRAINED_COUNTER counter and LEARNER_INFO field in the
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local iterator context.
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"""
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def __init__(self,
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workers: WorkerSet,
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policies: List[PolicyID] = frozenset([]),
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num_sgd_iter: int = 1,
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sgd_minibatch_size: int = 0):
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self.workers = workers
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self.local_worker = workers.local_worker()
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self.policies = policies
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self.num_sgd_iter = num_sgd_iter
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self.sgd_minibatch_size = sgd_minibatch_size
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def __call__(self,
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batch: SampleBatchType) -> (SampleBatchType, List[dict]):
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_check_sample_batch_type(batch)
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metrics = _get_shared_metrics()
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learn_timer = metrics.timers[LEARN_ON_BATCH_TIMER]
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with learn_timer:
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# Subsample minibatches (size=`sgd_minibatch_size`) from the
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# train batch and loop through train batch `num_sgd_iter` times.
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if self.num_sgd_iter > 1 or self.sgd_minibatch_size > 0:
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lw = self.workers.local_worker()
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learner_info = do_minibatch_sgd(
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batch, {
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pid: lw.get_policy(pid)
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for pid in self.policies
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or self.local_worker.policies_to_train
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}, lw, self.num_sgd_iter, self.sgd_minibatch_size, [])
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# Single update step using train batch.
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else:
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learner_info = \
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self.workers.local_worker().learn_on_batch(batch)
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metrics.info[LEARNER_INFO] = learner_info
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learn_timer.push_units_processed(batch.count)
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metrics.counters[STEPS_TRAINED_COUNTER] += batch.count
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if isinstance(batch, MultiAgentBatch):
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metrics.counters[
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AGENT_STEPS_TRAINED_COUNTER] += batch.agent_steps()
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# Update weights - after learning on the local worker - on all remote
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# workers.
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if self.workers.remote_workers():
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with metrics.timers[WORKER_UPDATE_TIMER]:
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weights = ray.put(self.workers.local_worker().get_weights(
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self.policies or self.local_worker.policies_to_train))
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for e in self.workers.remote_workers():
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e.set_weights.remote(weights, _get_global_vars())
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# Also update global vars of the local worker.
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self.workers.local_worker().set_global_vars(_get_global_vars())
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return batch, learner_info
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class MultiGPUTrainOneStep:
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"""Multi-GPU version of TrainOneStep.
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This should be used with the .for_each() operator. A tuple of the input
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and learner stats will be returned.
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Examples:
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>>> rollouts = ParallelRollouts(...)
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>>> train_op = rollouts.for_each(MultiGPUTrainOneStep(workers, ...))
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>>> print(next(train_op)) # This trains the policy on one batch.
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SampleBatch(...), {"learner_stats": ...}
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Updates the STEPS_TRAINED_COUNTER counter and LEARNER_INFO field in the
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local iterator context.
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"""
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def __init__(self,
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*,
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workers: WorkerSet,
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sgd_minibatch_size: int,
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num_sgd_iter: int,
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num_gpus: int,
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shuffle_sequences: bool,
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_fake_gpus: bool = False,
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framework: str = "tf"):
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self.workers = workers
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self.local_worker = workers.local_worker()
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self.num_sgd_iter = num_sgd_iter
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self.sgd_minibatch_size = sgd_minibatch_size
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self.shuffle_sequences = shuffle_sequences
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self.framework = framework
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# Collect actual GPU devices to use.
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if not num_gpus:
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_fake_gpus = True
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num_gpus = 1
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type_ = "cpu" if _fake_gpus else "gpu"
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self.devices = [
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"/{}:{}".format(type_, 0 if _fake_gpus else i)
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for i in range(int(math.ceil(num_gpus)))
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]
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# Make sure total batch size is dividable by the number of devices.
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# Batch size per tower.
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self.per_device_batch_size = sgd_minibatch_size // len(self.devices)
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# Total batch size.
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self.batch_size = self.per_device_batch_size * len(self.devices)
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assert self.batch_size % len(self.devices) == 0
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assert self.batch_size >= len(self.devices), "Batch size too small!"
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def __call__(self,
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samples: SampleBatchType) -> (SampleBatchType, List[dict]):
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_check_sample_batch_type(samples)
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# Handle everything as if multi agent.
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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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metrics = _get_shared_metrics()
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load_timer = metrics.timers[LOAD_BATCH_TIMER]
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learn_timer = metrics.timers[LEARN_ON_BATCH_TIMER]
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# Load data into GPUs.
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with load_timer:
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num_loaded_samples = {}
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for policy_id, batch in samples.policy_batches.items():
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# Not a policy-to-train.
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if policy_id not in self.local_worker.policies_to_train:
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continue
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# Decompress SampleBatch, in case some columns are compressed.
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batch.decompress_if_needed()
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# Load the entire train batch into the Policy's only buffer
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# (idx=0). Policies only have >1 buffers, if we are training
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# asynchronously.
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num_loaded_samples[policy_id] = self.local_worker.policy_map[
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policy_id].load_batch_into_buffer(
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batch, buffer_index=0)
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# Execute minibatch SGD on loaded data.
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with learn_timer:
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# Use LearnerInfoBuilder as a unified way to build the final
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# results dict from `learn_on_loaded_batch` call(s).
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# This makes sure results dicts always have the same structure
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# no matter the setup (multi-GPU, multi-agent, minibatch SGD,
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# tf vs torch).
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learner_info_builder = LearnerInfoBuilder(
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num_devices=len(self.devices))
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for policy_id, samples_per_device in num_loaded_samples.items():
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policy = self.local_worker.policy_map[policy_id]
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num_batches = max(
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1,
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int(samples_per_device) // int(self.per_device_batch_size))
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logger.debug("== sgd epochs for {} ==".format(policy_id))
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for _ in range(self.num_sgd_iter):
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permutation = np.random.permutation(num_batches)
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for batch_index in range(num_batches):
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# Learn on the pre-loaded data in the buffer.
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# Note: For minibatch SGD, the data is an offset into
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# the pre-loaded entire train batch.
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results = policy.learn_on_loaded_batch(
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permutation[batch_index] *
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self.per_device_batch_size,
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buffer_index=0)
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learner_info_builder.add_learn_on_batch_results(
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results, policy_id)
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# Tower reduce and finalize results.
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learner_info = learner_info_builder.finalize()
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load_timer.push_units_processed(samples.count)
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learn_timer.push_units_processed(samples.count)
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metrics.counters[STEPS_TRAINED_COUNTER] += samples.count
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metrics.counters[AGENT_STEPS_TRAINED_COUNTER] += samples.agent_steps()
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metrics.info[LEARNER_INFO] = learner_info
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if self.workers.remote_workers():
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with metrics.timers[WORKER_UPDATE_TIMER]:
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weights = ray.put(self.workers.local_worker().get_weights(
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self.local_worker.policies_to_train))
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for e in self.workers.remote_workers():
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e.set_weights.remote(weights, _get_global_vars())
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# Also update global vars of the local worker.
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self.workers.local_worker().set_global_vars(_get_global_vars())
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return samples, learner_info
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# Backward compatibility.
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TrainTFMultiGPU = MultiGPUTrainOneStep
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class ComputeGradients:
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"""Callable that computes gradients with respect to the policy loss.
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This should be used with the .for_each() operator.
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Examples:
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>>> grads_op = rollouts.for_each(ComputeGradients(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 LEARNER_INFO info field in the local iterator context.
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"""
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def __init__(self, workers: WorkerSet):
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self.workers = workers
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def __call__(self, samples: SampleBatchType) -> Tuple[ModelGradients, int]:
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_check_sample_batch_type(samples)
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metrics = _get_shared_metrics()
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with metrics.timers[COMPUTE_GRADS_TIMER]:
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grad, info = self.workers.local_worker().compute_gradients(samples)
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# RolloutWorker.compute_gradients returns pure single agent stats
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# in a non-multi agent setup.
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if isinstance(samples, MultiAgentBatch):
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metrics.info[LEARNER_INFO] = info
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else:
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metrics.info[LEARNER_INFO] = {DEFAULT_POLICY_ID: info}
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return grad, samples.count
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class ApplyGradients:
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"""Callable that applies gradients and updates workers.
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This should be used with the .for_each() operator.
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Examples:
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>>> apply_op = grads_op.for_each(ApplyGradients(workers))
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>>> print(next(apply_op))
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None
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Updates the STEPS_TRAINED_COUNTER counter in the local iterator context.
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"""
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def __init__(self,
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workers,
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policies: List[PolicyID] = frozenset([]),
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update_all=True):
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"""Creates an ApplyGradients instance.
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Args:
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workers (WorkerSet): workers to apply gradients to.
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update_all (bool): If true, updates all workers. Otherwise, only
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update the worker that produced the sample batch we are
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currently processing (i.e., A3C style).
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"""
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self.workers = workers
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self.local_worker = workers.local_worker()
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self.policies = policies
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self.update_all = update_all
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def __call__(self, item: Tuple[ModelGradients, int]) -> None:
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if not isinstance(item, tuple) or len(item) != 2:
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raise ValueError(
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"Input must be a tuple of (grad_dict, count), got {}".format(
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item))
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gradients, count = item
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metrics = _get_shared_metrics()
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metrics.counters[STEPS_TRAINED_COUNTER] += count
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apply_timer = metrics.timers[APPLY_GRADS_TIMER]
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with apply_timer:
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self.workers.local_worker().apply_gradients(gradients)
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apply_timer.push_units_processed(count)
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# Also update global vars of the local worker.
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self.workers.local_worker().set_global_vars(_get_global_vars())
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if self.update_all:
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if self.workers.remote_workers():
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with metrics.timers[WORKER_UPDATE_TIMER]:
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weights = ray.put(self.workers.local_worker().get_weights(
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self.policies or self.local_worker.policies_to_train))
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for e in self.workers.remote_workers():
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e.set_weights.remote(weights, _get_global_vars())
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else:
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if metrics.current_actor is None:
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raise ValueError(
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"Could not find actor to update. When "
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"update_all=False, `current_actor` must be set "
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"in the iterator context.")
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with metrics.timers[WORKER_UPDATE_TIMER]:
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weights = self.workers.local_worker().get_weights(
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self.policies or self.local_worker.policies_to_train)
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metrics.current_actor.set_weights.remote(
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weights, _get_global_vars())
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class AverageGradients:
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"""Callable that averages the gradients in a batch.
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This should be used with the .for_each() operator after a set of gradients
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have been batched with .batch().
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Examples:
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>>> batched_grads = grads_op.batch(32)
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>>> avg_grads = batched_grads.for_each(AverageGradients())
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>>> print(next(avg_grads))
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{"var_0": ..., ...}, 1600 # averaged grads, summed batch count
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"""
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def __call__(self, gradients: List[Tuple[ModelGradients, int]]
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) -> Tuple[ModelGradients, int]:
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acc = None
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sum_count = 0
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for grad, count in gradients:
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if acc is None:
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acc = grad
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else:
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acc = [a + b for a, b in zip(acc, grad)]
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sum_count += count
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logger.info("Computing average of {} microbatch gradients "
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"({} samples total)".format(len(gradients), sum_count))
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return acc, sum_count
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class UpdateTargetNetwork:
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"""Periodically call policy.update_target() on all trainable policies.
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This should be used with the .for_each() operator after training step
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has been taken.
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Examples:
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>>> train_op = ParallelRollouts(...).for_each(TrainOneStep(...))
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>>> update_op = train_op.for_each(
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... UpdateTargetIfNeeded(workers, target_update_freq=500))
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>>> print(next(update_op))
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None
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Updates the LAST_TARGET_UPDATE_TS and NUM_TARGET_UPDATES counters in the
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local iterator context. The value of the last update counter is used to
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track when we should update the target next.
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"""
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def __init__(self,
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workers: WorkerSet,
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target_update_freq: int,
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by_steps_trained: bool = False,
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policies: List[PolicyID] = frozenset([])):
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self.workers = workers
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self.local_worker = workers.local_worker()
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self.target_update_freq = target_update_freq
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self.policies = policies
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if by_steps_trained:
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self.metric = STEPS_TRAINED_COUNTER
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else:
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self.metric = STEPS_SAMPLED_COUNTER
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def __call__(self, _: Any) -> None:
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metrics = _get_shared_metrics()
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cur_ts = metrics.counters[self.metric]
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last_update = metrics.counters[LAST_TARGET_UPDATE_TS]
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if cur_ts - last_update > self.target_update_freq:
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to_update = self.policies or self.local_worker.policies_to_train
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self.workers.local_worker().foreach_trainable_policy(
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lambda p, p_id: p_id in to_update and p.update_target())
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metrics.counters[NUM_TARGET_UPDATES] += 1
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metrics.counters[LAST_TARGET_UPDATE_TS] = cur_ts
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