2022-02-09 19:34:43 +05:30
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import logging
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import platform
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from typing import Any, Dict, List, Optional
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import numpy as np
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import random
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from enum import Enum
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# Import ray before psutil will make sure we use psutil's bundled version
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import ray # noqa F401
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import psutil # noqa E402
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from ray.util.debug import log_once
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from ray.rllib.policy.sample_batch import SampleBatch, MultiAgentBatch
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from ray.rllib.utils.annotations import ExperimentalAPI
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from ray.rllib.utils.deprecation import Deprecated
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from ray.rllib.utils.metrics.window_stat import WindowStat
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from ray.rllib.utils.typing import SampleBatchType
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from ray.rllib.execution.buffers.replay_buffer import warn_replay_capacity
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# Constant that represents all policies in lockstep replay mode.
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_ALL_POLICIES = "__all__"
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logger = logging.getLogger(__name__)
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@ExperimentalAPI
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class StorageUnit(Enum):
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TIMESTEPS = "timesteps"
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SEQUENCES = "sequences"
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EPISODES = "episodes"
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@ExperimentalAPI
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class ReplayBuffer:
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def __init__(
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self, capacity: int = 10000, storage_unit: str = "timesteps", **kwargs
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):
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"""Initializes a (FIFO) ReplayBuffer instance.
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Args:
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capacity: Max number of timesteps to store in this FIFO
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buffer. After reaching this number, older samples will be
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dropped to make space for new ones.
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storage_unit: Either 'timesteps', `sequences` or
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`episodes`. Specifies how experiences are stored.
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**kwargs: Forward compatibility kwargs.
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"""
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if storage_unit in ["timesteps", StorageUnit.TIMESTEPS]:
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self._storage_unit = StorageUnit.TIMESTEPS
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elif storage_unit in ["sequences", StorageUnit.SEQUENCES]:
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self._storage_unit = StorageUnit.SEQUENCES
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elif storage_unit in ["episodes", StorageUnit.EPISODES]:
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self._storage_unit = StorageUnit.EPISODES
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else:
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raise ValueError(
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"storage_unit must be either 'timesteps', `sequences` or `episodes`."
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)
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# The actual storage (list of SampleBatches or MultiAgentBatches).
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self._storage = []
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# Caps the number of timesteps stored in this buffer
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if capacity <= 0:
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raise ValueError(
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"Capacity of replay buffer has to be greater than zero "
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"but was set to {}.".format(capacity)
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)
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self.capacity = capacity
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# The next index to override in the buffer.
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self._next_idx = 0
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# len(self._hit_count) must always be less than len(capacity)
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self._hit_count = np.zeros(self.capacity)
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# Whether we have already hit our capacity (and have therefore
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# started to evict older samples).
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self._eviction_started = False
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# Number of (single) timesteps that have been added to the buffer
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# over its lifetime. Note that each added item (batch) may contain
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# more than one timestep.
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self._num_timesteps_added = 0
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self._num_timesteps_added_wrap = 0
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# Number of (single) timesteps that have been sampled from the buffer
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# over its lifetime.
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self._num_timesteps_sampled = 0
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self._evicted_hit_stats = WindowStat("evicted_hit", 1000)
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self._est_size_bytes = 0
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self.batch_size = None
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def __len__(self) -> int:
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"""Returns the number of items currently stored in this buffer."""
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return len(self._storage)
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@ExperimentalAPI
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@Deprecated(old="add_batch", new="add", error=False)
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def add_batch(self, batch: SampleBatchType, **kwargs) -> None:
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"""Deprecated in favor of new ReplayBuffer API."""
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return self.add(batch, **kwargs)
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@ExperimentalAPI
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@Deprecated(old="replay", new="sample", error=False)
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def replay(self, num_items: int = 1, **kwargs) -> Optional[SampleBatchType]:
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"""Deprecated in favor of new ReplayBuffer API."""
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return self.sample(num_items, **kwargs)
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@ExperimentalAPI
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def add(self, batch: SampleBatchType, **kwargs) -> None:
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"""Adds a batch of experiences to this buffer.
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Also splits experiences into chunks of timesteps, sequences
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or episodes, depending on self._storage_unit. Calls
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self._add_single_batch.
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Args:
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batch: Batch to add to this buffer's storage.
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**kwargs: Forward compatibility kwargs.
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"""
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assert batch.count > 0, batch
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warn_replay_capacity(item=batch, num_items=self.capacity / batch.count)
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if (
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type(batch) == MultiAgentBatch
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and self._storage_unit != StorageUnit.TIMESTEPS
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):
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raise ValueError(
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"Can not add MultiAgentBatch to ReplayBuffer "
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"with storage_unit {}"
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"".format(str(self._storage_unit))
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)
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if self._storage_unit == StorageUnit.TIMESTEPS:
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self._add_single_batch(batch, **kwargs)
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elif self._storage_unit == StorageUnit.SEQUENCES:
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timestep_count = 0
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for seq_len in batch.get(SampleBatch.SEQ_LENS):
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start_seq = timestep_count
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end_seq = timestep_count + seq_len
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self._add_single_batch(batch[start_seq:end_seq], **kwargs)
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timestep_count = end_seq
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elif self._storage_unit == StorageUnit.EPISODES:
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for eps in batch.split_by_episode():
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if (
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eps.get(SampleBatch.T)[0] == 0
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and eps.get(SampleBatch.DONES)[-1] == True # noqa E712
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):
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# Only add full episodes to the buffer
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self._add_single_batch(eps, **kwargs)
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else:
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if log_once("only_full_episodes"):
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logger.info(
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"This buffer uses episodes as a storage "
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"unit and thus allows only full episodes "
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"to be added to it. Some samples may be "
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"dropped."
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)
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@ExperimentalAPI
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def _add_single_batch(self, item: SampleBatchType, **kwargs) -> None:
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"""Add a SampleBatch of experiences to self._storage.
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An item consists of either one or more timesteps, a sequence or an
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episode. Differs from add() in that it does not consider the storage
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unit or type of batch and simply stores it.
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Args:
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item: The batch to be added.
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**kwargs: Forward compatibility kwargs.
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"""
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self._num_timesteps_added += item.count
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self._num_timesteps_added_wrap += item.count
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if self._next_idx >= len(self._storage):
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self._storage.append(item)
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self._est_size_bytes += item.size_bytes()
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else:
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self._storage[self._next_idx] = item
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# Eviction of older samples has already started (buffer is "full").
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if self._eviction_started:
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self._evicted_hit_stats.push(self._hit_count[self._next_idx])
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self._hit_count[self._next_idx] = 0
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# Wrap around storage as a circular buffer once we hit capacity.
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if self._num_timesteps_added_wrap >= self.capacity:
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self._eviction_started = True
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self._num_timesteps_added_wrap = 0
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self._next_idx = 0
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else:
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self._next_idx += 1
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@ExperimentalAPI
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def sample(self, num_items: int, **kwargs) -> Optional[SampleBatchType]:
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"""Samples `num_items` items from this buffer.
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Samples in the results may be repeated.
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Examples for storage of SamplesBatches:
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- If storage unit `timesteps` has been chosen and batches of
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size 5 have been added, sample(5) will yield a concatenated batch of
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15 timesteps.
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- If storage unit 'sequences' has been chosen and sequences of
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different lengths have been added, sample(5) will yield a concatenated
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batch with a number of timesteps equal to the sum of timesteps in
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the 5 sampled sequences.
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- If storage unit 'episodes' has been chosen and episodes of
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different lengths have been added, sample(5) will yield a concatenated
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batch with a number of timesteps equal to the sum of timesteps in
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the 5 sampled episodes.
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Args:
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num_items: Number of items to sample from this buffer.
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**kwargs: Forward compatibility kwargs.
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Returns:
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Concatenated batch of items.
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"""
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idxes = [random.randint(0, len(self) - 1) for _ in range(num_items)]
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sample = self._encode_sample(idxes)
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self._num_timesteps_sampled += sample.count
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return sample
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@ExperimentalAPI
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def stats(self, debug: bool = False) -> dict:
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"""Returns the stats of this buffer.
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Args:
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debug: If True, adds sample eviction statistics to the returned
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stats dict.
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Returns:
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A dictionary of stats about this buffer.
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"""
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data = {
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"added_count": self._num_timesteps_added,
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"added_count_wrapped": self._num_timesteps_added_wrap,
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"eviction_started": self._eviction_started,
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"sampled_count": self._num_timesteps_sampled,
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"est_size_bytes": self._est_size_bytes,
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"num_entries": len(self._storage),
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}
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if debug:
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data.update(self._evicted_hit_stats.stats())
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return data
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@ExperimentalAPI
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def get_state(self) -> Dict[str, Any]:
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"""Returns all local state.
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Returns:
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The serializable local state.
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"""
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state = {"_storage": self._storage, "_next_idx": self._next_idx}
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state.update(self.stats(debug=False))
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return state
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@ExperimentalAPI
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def set_state(self, state: Dict[str, Any]) -> None:
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"""Restores all local state to the provided `state`.
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Args:
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state: The new state to set this buffer. Can be
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obtained by calling `self.get_state()`.
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"""
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# The actual storage.
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self._storage = state["_storage"]
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self._next_idx = state["_next_idx"]
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# Stats and counts.
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self._num_timesteps_added = state["added_count"]
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self._num_timesteps_added_wrap = state["added_count_wrapped"]
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self._eviction_started = state["eviction_started"]
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self._num_timesteps_sampled = state["sampled_count"]
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self._est_size_bytes = state["est_size_bytes"]
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def _encode_sample(self, idxes: List[int]) -> SampleBatchType:
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"""Fetches concatenated samples at given indeces from the storage."""
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samples = []
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for i in idxes:
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self._hit_count[i] += 1
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samples.append(self._storage[i])
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if samples:
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# We assume all samples are of same type
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sample_type = type(samples[0])
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out = sample_type.concat_samples(samples)
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else:
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out = SampleBatch()
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out.decompress_if_needed()
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return out
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def get_host(self) -> str:
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"""Returns the computer's network name.
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Returns:
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The computer's networks name or an empty string, if the network
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name could not be determined.
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"""
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return platform.node()
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