mirror of
https://github.com/explosion/spaCy.git
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235 lines
8.9 KiB
Python
235 lines
8.9 KiB
Python
from typing import Union, Iterable, Sequence, TypeVar, List, Callable
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from typing import Optional, Any
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from functools import partial
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import itertools
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from ..util import registry, minibatch
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Sizing = Union[Iterable[int], int]
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ItemT = TypeVar("ItemT")
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BatcherT = Callable[[Iterable[ItemT]], Iterable[List[ItemT]]]
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@registry.batchers("spacy.batch_by_padded.v1")
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def configure_minibatch_by_padded_size(
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*,
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size: Sizing,
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buffer: int,
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discard_oversize: bool,
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get_length: Optional[Callable[[ItemT], int]] = None
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) -> BatcherT:
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"""Create a batcher that uses the `batch_by_padded_size` strategy.
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The padded size is defined as the maximum length of sequences within the
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batch multiplied by the number of sequences in the batch.
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size (int or Iterable[int]): The largest padded size to batch sequences into.
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Can be a single integer, or a sequence, allowing for variable batch sizes.
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buffer (int): The number of sequences to accumulate before sorting by length.
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A larger buffer will result in more even sizing, but if the buffer is
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very large, the iteration order will be less random, which can result
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in suboptimal training.
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discard_oversize (bool): Whether to discard sequences that are by themselves
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longer than the largest padded batch size.
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get_length (Callable or None): Function to get the length of a sequence item.
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The `len` function is used by default.
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"""
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# Avoid displacing optional values from the underlying function.
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optionals = {"get_length": get_length} if get_length is not None else {}
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return partial(
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minibatch_by_padded_size,
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size=size,
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buffer=buffer,
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discard_oversize=discard_oversize,
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**optionals
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)
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@registry.batchers("spacy.batch_by_words.v1")
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def configure_minibatch_by_words(
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*,
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size: Sizing,
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tolerance: float,
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discard_oversize: bool,
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get_length: Optional[Callable[[ItemT], int]] = None
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) -> BatcherT:
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"""Create a batcher that uses the "minibatch by words" strategy.
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size (int or Iterable[int]): The target number of words per batch.
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Can be a single integer, or a sequence, allowing for variable batch sizes.
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tolerance (float): What percentage of the size to allow batches to exceed.
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discard_oversize (bool): Whether to discard sequences that by themselves
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exceed the tolerated size.
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get_length (Callable or None): Function to get the length of a sequence
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item. The `len` function is used by default.
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"""
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optionals = {"get_length": get_length} if get_length is not None else {}
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return partial(
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minibatch_by_words,
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size=size,
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tolerance=tolerance,
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discard_oversize=discard_oversize,
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**optionals
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)
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@registry.batchers("spacy.batch_by_sequence.v1")
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def configure_minibatch(
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size: Sizing, get_length: Optional[Callable[[ItemT], int]] = None
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) -> BatcherT:
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"""Create a batcher that creates batches of the specified size.
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size (int or Iterable[int]): The target number of items per batch.
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Can be a single integer, or a sequence, allowing for variable batch sizes.
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"""
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optionals = {"get_length": get_length} if get_length is not None else {}
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return partial(minibatch, size=size, **optionals)
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def minibatch_by_padded_size(
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seqs: Iterable[ItemT],
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size: Sizing,
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buffer: int = 256,
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discard_oversize: bool = False,
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get_length: Callable = len,
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) -> Iterable[List[ItemT]]:
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"""Minibatch a sequence by the size of padded batches that would result,
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with sequences binned by length within a window.
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The padded size is defined as the maximum length of sequences within the
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batch multiplied by the number of sequences in the batch.
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size (int): The largest padded size to batch sequences into.
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buffer (int): The number of sequences to accumulate before sorting by length.
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A larger buffer will result in more even sizing, but if the buffer is
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very large, the iteration order will be less random, which can result
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in suboptimal training.
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discard_oversize (bool): Whether to discard sequences that are by themselves
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longer than the largest padded batch size.
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get_length (Callable or None): Function to get the length of a sequence item.
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The `len` function is used by default.
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"""
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if isinstance(size, int):
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size_ = itertools.repeat(size)
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else:
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size_ = size
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for outer_batch in minibatch(seqs, size=buffer):
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outer_batch = list(outer_batch)
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target_size = next(size_)
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for indices in _batch_by_length(outer_batch, target_size, get_length):
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subbatch = [outer_batch[i] for i in indices]
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padded_size = max(len(seq) for seq in subbatch) * len(subbatch)
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if discard_oversize and padded_size >= target_size:
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pass
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else:
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yield subbatch
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def minibatch_by_words(
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seqs: Iterable[ItemT],
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size: Sizing,
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tolerance=0.2,
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discard_oversize=False,
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get_length=len,
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) -> Iterable[List[ItemT]]:
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"""Create minibatches of roughly a given number of words. If any examples
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are longer than the specified batch length, they will appear in a batch by
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themselves, or be discarded if discard_oversize=True.
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seqs (Iterable[Sequence]): The sequences to minibatch.
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size (int or Iterable[int]): The target number of words per batch.
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Can be a single integer, or a sequence, allowing for variable batch sizes.
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tolerance (float): What percentage of the size to allow batches to exceed.
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discard_oversize (bool): Whether to discard sequences that by themselves
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exceed the tolerated size.
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get_length (Callable or None): Function to get the length of a sequence
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item. The `len` function is used by default.
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"""
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if isinstance(size, int):
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size_ = itertools.repeat(size)
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elif isinstance(size, List):
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size_ = iter(size)
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else:
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size_ = size
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target_size = next(size_)
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tol_size = target_size * tolerance
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batch = []
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overflow = []
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batch_size = 0
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overflow_size = 0
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for seq in seqs:
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n_words = get_length(seq)
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# if the current example exceeds the maximum batch size, it is returned separately
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# but only if discard_oversize=False.
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if n_words > target_size + tol_size:
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if not discard_oversize:
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yield [seq]
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# add the example to the current batch if there's no overflow yet and it still fits
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elif overflow_size == 0 and (batch_size + n_words) <= target_size:
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batch.append(seq)
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batch_size += n_words
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# add the example to the overflow buffer if it fits in the tolerance margin
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elif (batch_size + overflow_size + n_words) <= (target_size + tol_size):
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overflow.append(seq)
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overflow_size += n_words
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# yield the previous batch and start a new one. The new one gets the overflow examples.
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else:
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if batch:
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yield batch
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target_size = next(size_)
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tol_size = target_size * tolerance
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batch = overflow
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batch_size = overflow_size
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overflow = []
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overflow_size = 0
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# this example still fits
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if (batch_size + n_words) <= target_size:
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batch.append(seq)
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batch_size += n_words
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# this example fits in overflow
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elif (batch_size + n_words) <= (target_size + tol_size):
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overflow.append(seq)
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overflow_size += n_words
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# this example does not fit with the previous overflow: start another new batch
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else:
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if batch:
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yield batch
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target_size = next(size_)
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tol_size = target_size * tolerance
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batch = [seq]
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batch_size = n_words
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batch.extend(overflow)
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if batch:
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yield batch
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def _batch_by_length(
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seqs: Sequence[Any], max_words: int, get_length=len
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) -> List[List[Any]]:
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"""Given a list of sequences, return a batched list of indices into the
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list, where the batches are grouped by length, in descending order.
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Batches may be at most max_words in size, defined as max sequence length * size.
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"""
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# Use negative index so we can get sort by position ascending.
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lengths_indices = [(get_length(seq), i) for i, seq in enumerate(seqs)]
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lengths_indices.sort()
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batches = []
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batch = []
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for length, i in lengths_indices:
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if not batch:
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batch.append(i)
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elif length * (len(batch) + 1) <= max_words:
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batch.append(i)
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else:
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batches.append(batch)
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batch = [i]
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if batch:
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batches.append(batch)
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# Check lengths match
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assert sum(len(b) for b in batches) == len(seqs)
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batches = [list(sorted(batch)) for batch in batches]
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batches.reverse()
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return batches
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