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- # Copyright (c) Facebook, Inc. and its affiliates.
- #
- # This source code is licensed under the MIT license found in the
- # LICENSE file in the root directory of this source tree.
- from typing import Optional, Tuple
- import numpy as np
- import torch
- def compute_mask_indices(
- shape: Tuple[int, int],
- padding_mask: Optional[torch.Tensor],
- mask_prob: float,
- mask_length: int,
- mask_type: str = "static",
- mask_other: float = 0.0,
- min_masks: int = 0,
- no_overlap: bool = False,
- min_space: int = 0,
- require_same_masks: bool = True,
- mask_dropout: float = 0.0,
- ) -> np.ndarray:
- """
- Computes random mask spans for a given shape
- Args:
- shape: the the shape for which to compute masks.
- should be of size 2 where first element is batch size and 2nd is timesteps
- padding_mask: optional padding mask of the same size as shape, which will prevent masking padded elements
- mask_prob: probability for each token to be chosen as start of the span to be masked. this will be multiplied by
- number of timesteps divided by length of mask span to mask approximately this percentage of all elements.
- however due to overlaps, the actual number will be smaller (unless no_overlap is True)
- mask_type: how to compute mask lengths
- static = fixed size
- uniform = sample from uniform distribution [mask_other, mask_length*2]
- normal = sample from normal distribution with mean mask_length and stdev mask_other. mask is min 1 element
- poisson = sample from possion distribution with lambda = mask length
- min_masks: minimum number of masked spans
- no_overlap: if false, will switch to an alternative recursive algorithm that prevents spans from overlapping
- min_space: only used if no_overlap is True, this is how many elements to keep unmasked between spans
- require_same_masks: if true, will randomly drop out masks until same amount of masks remains in each sample
- mask_dropout: randomly dropout this percentage of masks in each example
- """
- bsz, all_sz = shape
- mask = np.full((bsz, all_sz), False)
- all_num_mask = int(
- # add a random number for probabilistic rounding
- mask_prob * all_sz / float(mask_length)
- + np.random.rand()
- )
- all_num_mask = max(min_masks, all_num_mask)
- mask_idcs = []
- for i in range(bsz):
- if padding_mask is not None:
- sz = all_sz - padding_mask[i].long().sum().item()
- num_mask = int(
- # add a random number for probabilistic rounding
- mask_prob * sz / float(mask_length)
- + np.random.rand()
- )
- num_mask = max(min_masks, num_mask)
- else:
- sz = all_sz
- num_mask = all_num_mask
- if mask_type == "static":
- lengths = np.full(num_mask, mask_length)
- elif mask_type == "uniform":
- lengths = np.random.randint(mask_other, mask_length * 2 + 1, size=num_mask)
- elif mask_type == "normal":
- lengths = np.random.normal(mask_length, mask_other, size=num_mask)
- lengths = [max(1, int(round(x))) for x in lengths]
- elif mask_type == "poisson":
- lengths = np.random.poisson(mask_length, size=num_mask)
- lengths = [int(round(x)) for x in lengths]
- else:
- raise Exception("unknown mask selection " + mask_type)
- if sum(lengths) == 0:
- lengths[0] = min(mask_length, sz - 1)
- if no_overlap:
- mask_idc = []
- def arrange(s, e, length, keep_length):
- span_start = np.random.randint(s, e - length)
- mask_idc.extend(span_start + i for i in range(length))
- new_parts = []
- if span_start - s - min_space >= keep_length:
- new_parts.append((s, span_start - min_space + 1))
- if e - span_start - length - min_space > keep_length:
- new_parts.append((span_start + length + min_space, e))
- return new_parts
- parts = [(0, sz)]
- min_length = min(lengths)
- for length in sorted(lengths, reverse=True):
- lens = np.fromiter(
- (e - s if e - s >= length + min_space else 0 for s, e in parts),
- np.int32,
- )
- l_sum = np.sum(lens)
- if l_sum == 0:
- break
- probs = lens / np.sum(lens)
- c = np.random.choice(len(parts), p=probs)
- s, e = parts.pop(c)
- parts.extend(arrange(s, e, length, min_length))
- mask_idc = np.asarray(mask_idc)
- else:
- min_len = min(lengths)
- if sz - min_len <= num_mask:
- min_len = sz - num_mask - 1
- mask_idc = np.random.choice(sz - min_len, num_mask, replace=False)
- mask_idc = np.asarray(
- [
- mask_idc[j] + offset
- for j in range(len(mask_idc))
- for offset in range(lengths[j])
- ]
- )
- mask_idcs.append(np.unique(mask_idc[mask_idc < sz]))
- min_len = min([len(m) for m in mask_idcs])
- for i, mask_idc in enumerate(mask_idcs):
- if len(mask_idc) > min_len and require_same_masks:
- mask_idc = np.random.choice(mask_idc, min_len, replace=False)
- if mask_dropout > 0:
- num_holes = np.rint(len(mask_idc) * mask_dropout).astype(int)
- mask_idc = np.random.choice(
- mask_idc, len(mask_idc) - num_holes, replace=False
- )
- mask[i, mask_idc] = True
- return mask
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