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batching.py
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batching.py
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# Copyright (c) 2019 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Mask, padding and batching."""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import numpy as np
def mask(batch_tokens, total_token_num, vocab_size, CLS=1, SEP=2, MASK=3):
"""
Add mask for batch_tokens, return out, mask_label, mask_pos;
Note: mask_pos responding the batch_tokens after padded;
"""
max_len = max([len(sent) for sent in batch_tokens])
mask_label = []
mask_pos = []
prob_mask = np.random.rand(total_token_num)
# Note: the first token is [CLS], so [low=1]
replace_ids = np.random.randint(1, high=vocab_size, size=total_token_num)
pre_sent_len = 0
prob_index = 0
for sent_index, sent in enumerate(batch_tokens):
mask_flag = False
prob_index += pre_sent_len
for token_index, token in enumerate(sent):
prob = prob_mask[prob_index + token_index]
if prob > 0.15:
continue
elif 0.03 < prob <= 0.15:
# mask
if token != SEP and token != CLS:
mask_label.append(sent[token_index])
sent[token_index] = MASK
mask_flag = True
mask_pos.append(sent_index * max_len + token_index)
elif 0.015 < prob <= 0.03:
# random replace
if token != SEP and token != CLS:
mask_label.append(sent[token_index])
sent[token_index] = replace_ids[prob_index + token_index]
mask_flag = True
mask_pos.append(sent_index * max_len + token_index)
else:
# keep the original token
if token != SEP and token != CLS:
mask_label.append(sent[token_index])
mask_pos.append(sent_index * max_len + token_index)
pre_sent_len = len(sent)
# ensure at least mask one word in a sentence
while not mask_flag:
token_index = int(np.random.randint(1, high=len(sent) - 1, size=1))
if sent[token_index] != SEP and sent[token_index] != CLS:
mask_label.append(sent[token_index])
sent[token_index] = MASK
mask_flag = True
mask_pos.append(sent_index * max_len + token_index)
mask_label = np.array(mask_label).astype("int64").reshape([-1, 1])
mask_pos = np.array(mask_pos).astype("int64").reshape([-1, 1])
return batch_tokens, mask_label, mask_pos
def prepare_batch_data(insts,
total_token_num,
voc_size=0,
pad_id=None,
cls_id=None,
sep_id=None,
mask_id=None,
return_attn_bias=True,
return_max_len=True,
return_num_token=False):
"""
1. generate Tensor of data
2. generate Tensor of position
3. generate self attention mask, [shape: batch_size * max_len * max_len]
"""
batch_src_ids = [inst[0] for inst in insts]
batch_sent_ids = [inst[1] for inst in insts]
batch_pos_ids = [inst[2] for inst in insts]
labels_list = []
# compatible with squad, whose example includes start/end positions,
# or unique id
for i in range(3, len(insts[0]), 1):
labels = [inst[i] for inst in insts]
labels = np.array(labels).astype("int64").reshape([-1, 1])
labels_list.append(labels)
# First step: do mask without padding
if mask_id >= 0:
out, mask_label, mask_pos = mask(
batch_src_ids,
total_token_num,
vocab_size=voc_size,
CLS=cls_id,
SEP=sep_id,
MASK=mask_id)
else:
out = batch_src_ids
# Second step: padding
src_id, next_sent_index, self_attn_bias = pad_batch_data(
out, pad_idx=pad_id, return_next_sent_pos=True, return_attn_bias=True)
pos_id = pad_batch_data(
batch_pos_ids, pad_idx=pad_id, return_pos=False, return_attn_bias=False)
sent_id = pad_batch_data(
batch_sent_ids,
pad_idx=pad_id,
return_pos=False,
return_attn_bias=False)
if mask_id >= 0:
return_list = [src_id, pos_id, sent_id, self_attn_bias, mask_label, mask_pos] \
+ labels_list + [next_sent_index]
else:
return_list = [src_id, pos_id, sent_id, self_attn_bias] + labels_list \
+ [next_sent_index]
return return_list if len(return_list) > 1 else return_list[0]
def pad_batch_data(insts,
pad_idx=0,
return_pos=False,
return_next_sent_pos=False,
return_attn_bias=False,
return_max_len=False,
return_num_token=False):
"""
Pad the instances to the max sequence length in batch, and generate the
corresponding position data and attention bias.
"""
return_list = []
max_len = max(len(inst) for inst in insts)
# Any token included in dict can be used to pad, since the paddings' loss
# will be masked out by weights and make no effect on parameter gradients.
inst_data = np.array(
[inst + list([pad_idx] * (max_len - len(inst))) for inst in insts])
return_list += [inst_data.astype("int64").reshape([-1, max_len, 1])]
# next_sent_pos for extract first token embedding of each sentence
if return_next_sent_pos:
batch_size = inst_data.shape[0]
max_seq_len = inst_data.shape[1]
next_sent_index = np.array(
range(0, batch_size * max_seq_len, max_seq_len)).astype(
"int64").reshape(-1, 1)
return_list += [next_sent_index]
# position data
if return_pos:
inst_pos = np.array([
list(range(0, len(inst))) + [pad_idx] * (max_len - len(inst))
for inst in insts
])
return_list += [inst_pos.astype("int64").reshape([-1, max_len, 1])]
if return_attn_bias:
# This is used to avoid attention on paddings.
slf_attn_bias_data = np.array([[0] * len(inst) + [-1e9] *
(max_len - len(inst)) for inst in insts])
slf_attn_bias_data = np.tile(
slf_attn_bias_data.reshape([-1, 1, max_len]), [1, max_len, 1])
return_list += [slf_attn_bias_data.astype("float32")]
if return_max_len:
return_list += [max_len]
if return_num_token:
num_token = 0
for inst in insts:
num_token += len(inst)
return_list += [num_token]
return return_list if len(return_list) > 1 else return_list[0]
if __name__ == "__main__":
pass