谷歌BERT预训练源码解析(一):训练数据生成

时间:2024-10-06 13:05:38

目录
预训练源码结构简介
输入输出
源码解析
参数
主函数
创建训练实例
下一句预测&实例生成
随机遮蔽
输出
结果一览
预训练源码结构简介
关于BERT,简单来说,它是一个基于Transformer架构,结合遮蔽词预测和上下句识别的预训练NLP模型。至于效果:在11种不同NLP测试中创出最佳成绩
关于介绍BERT的文章我看了一些,个人感觉介绍的最全面的是机器之心
再放上谷歌官方源码链接:BERT官方源码
在看本博客之前,读者先要了解:
1.Transformer架构
2.BERT模型的创新之处
3.python语言及tensorflow框架
我会在代码中直接指出对应的原理,如果没有了解架构直接刚代码可能会有些吃力
BERT的预训练主要分为三个部分:
1.预训练数据的预处理(create_pretraining_data.py)
2.核心模型的构建(modeling.py)
3.训练过程(run_pretraining.py)
我将分三次分别介绍这三个部分的源码,这次先介绍训练数据的训练数据生成脚本即create_pretraining_data.py。

输入输出
关于输入和输出,我们可以直接从官方提供的训练命令行中窥之一二

python create_pretraining_data.py \
--input_file=./sample_text.txt \
--output_file=/tmp/tf_examples.tfrecord \
--vocab_file=$BERT_BASE_DIR/vocab.txt \
--do_lower_case=True \
--max_seq_length=128 \
--max_predictions_per_seq=20 \
--masked_lm_prob=0.15 \
--random_seed=12345 \
--dupe_factor=5
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可以看到 这里谷歌为我们提供了一个小的训练样本sample_text.txt(输入),将这个训练样本进行处理后输出到**tf_examples.tfrecord(输出)**这个文件。在sample_text.txt中,空行前后是不同的文章,每个文章中的每句话都占一行(也就是说每篇文章的上下两行是一篇文章的上下句)。vocab_file是官方模型中提供的词汇表。
sample_text.txt

源码解析
参数
input_file:指定输入文档路径
output_file:指定输出路径
vocab_file:指定词典路径(谷歌已在预训练模型中提供)
do_lower_case:为True则忽略大小写
max_seq_length:每一条训练数据(两句话)相加后的最大长度限制
max_predictions_per_seq:每一条训练数据mask的最大数量
random_seed:一个随机种子
dupe_factor:对文档多次重复随机产生训练集,随机的次数
masked_lm_prob:一条训练数据产生mask的概率,即每条训练数据随机产生max_predictions_per_seq×masked_lm_prob数量的mask
short_seq_prob:为了缩小预训练和微调过程的差距,以此概率产生小于max_seq_length的训练数据

from __future__ import absolute_import
from __future__ import division
from __future__ import print_function

import collections
import random

import tokenization
import tensorflow as tf

flags = tf.flags

FLAGS = flags.FLAGS

flags.DEFINE_string("input_file", None,
"Input raw text file (or comma-separated list of files).")

flags.DEFINE_string(
"output_file", None,
"Output TF example file (or comma-separated list of files).")

flags.DEFINE_string("vocab_file", None,
"The vocabulary file that the BERT model was trained on.")

flags.DEFINE_bool(
"do_lower_case", True,
"Whether to lower case the input text. Should be True for uncased "
"models and False for cased models.")

flags.DEFINE_integer("max_seq_length", 128, "Maximum sequence length.")

flags.DEFINE_integer("max_predictions_per_seq", 20,
"Maximum number of masked LM predictions per sequence.")

flags.DEFINE_integer("random_seed", 12345, "Random seed for data generation.")

flags.DEFINE_integer(
"dupe_factor", 10,
"Number of times to duplicate the input data (with different masks).")

flags.DEFINE_float("masked_lm_prob", 0.15, "Masked LM probability.")

flags.DEFINE_float(
"short_seq_prob", 0.1,
"Probability of creating sequences which are shorter than the "
"maximum length.")
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主函数
首先获取输入文本列表,对输入文本创建训练实例,再进行输出
简要介绍一下FullTokenizer这个类,它以vocab_file为词典,将词转化为该词对应的id,对于某些特殊词,如johanson,会先将johanson按照最大长度拆分,再看拆分的部分是否在vocab_file里。vocab_file里有没有"johanson"这个词,但有"johan"和"##son"这两个词,所以将"johanson"这个词拆分成两个词(##表示非开头匹配)

def main(_):
tf.logging.set_verbosity(tf.logging.INFO)

tokenizer = tokenization.FullTokenizer(
vocab_file=FLAGS.vocab_file, do_lower_case=FLAGS.do_lower_case)

input_files = []
for input_pattern in FLAGS.input_file.split(","):
input_files.extend(tf.gfile.Glob(input_pattern)) #获得输入文件列表

tf.logging.info("*** Reading from input files ***")
for input_file in input_files:
tf.logging.info(" %s", input_file)

rng = random.Random(FLAGS.random_seed)
instances = create_training_instances( #创建训练实例
input_files, tokenizer, FLAGS.max_seq_length, FLAGS.dupe_factor,
FLAGS.short_seq_prob, FLAGS.masked_lm_prob, FLAGS.max_predictions_per_seq,
rng)

output_files = FLAGS.output_file.split(",")
tf.logging.info("*** Writing to output files ***")
for output_file in output_files:
tf.logging.info(" %s", output_file)

write_instance_to_example_files(instances, tokenizer, FLAGS.max_seq_length, #输出
FLAGS.max_predictions_per_seq, output_files)
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创建训练实例
这部分先将文章和每篇文章的每个句子加到二维列表,再将列表传入create_instances_from_document生成训练实例.
返回值:instances 一个列表 里面包含每个样例的TrainingInstance类

def create_training_instances(input_files, tokenizer, max_seq_length,
dupe_factor, short_seq_prob, masked_lm_prob,
max_predictions_per_seq, rng):
"""Create `TrainingInstance`s from raw text."""
all_documents = [[]]

# Input file format:
# (1) One sentence per line. These should ideally be actual sentences, not
# entire paragraphs or arbitrary spans of text. (Because we use the
# sentence boundaries for the "next sentence prediction" task).
# (2) Blank lines between documents. Document boundaries are needed so
# that the "next sentence prediction" task doesn't span between documents.
for input_file in input_files:
with tf.gfile.GFile(input_file, "r") as reader:
while True:
line = tokenization.convert_to_unicode(reader.readline())
if not line:
break
line = line.strip()

# Empty lines are used as document delimiters
if not line:
all_documents.append([])
tokens = tokenizer.tokenize(line)
if tokens:
all_documents[-1].append(tokens) #二维列表 [文章,句子]

# Remove empty documents
all_documents = [x for x in all_documents if x] #删除空列表
rng.shuffle(all_documents) #随机排序

vocab_words = list(tokenizer.vocab.keys())
instances = []
for _ in range(dupe_factor):
for document_index in range(len(all_documents)):
instances.extend(
create_instances_from_document(
all_documents, document_index, max_seq_length, short_seq_prob,
masked_lm_prob, max_predictions_per_seq, vocab_words, rng))

rng.shuffle(instances)
return instances
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下一句预测&实例生成
这部分是生成训练数据的具体过程,对每条数据生成TrainingInstance。这里的每条数据其实包含两个句子的信息。TrainingInstance包括tokens,segement_ids,is_random_next,masked_lm_positions,masked_lm_labels。下面给出这些属性的含义
tokens:词
segement_id:句子编码 第一句为0 第二句为1
is_random_next:第二句是随机查找,还是为第一句的下文
masked_lm_positions:tokens中被mask的位置
masked_lm_labels:tokens中被mask的原来的词
本部分含有BERT的创新点之一:下一句预测 类标的生成
返回值:instances
以下在关键代码出进行注释

def create_instances_from_document(
all_documents, document_index, max_seq_length, short_seq_prob,
masked_lm_prob, max_predictions_per_seq, vocab_words, rng):
"""Creates `TrainingInstance`s for a single document."""
document = all_documents[document_index]

# Account for [CLS], [SEP], [SEP]
max_num_tokens = max_seq_length - 3

# We *usually* want to fill up the entire sequence since we are padding
# to `max_seq_length` anyways, so short sequences are generally wasted
# computation. However, we *sometimes*
# (i.e., short_seq_prob == 0.1 == 10% of the time) want to use shorter
# sequences to minimize the mismatch between pre-training and fine-tuning.
# The `target_seq_length` is just a rough target however, whereas
# `max_seq_length` is a hard limit.
target_seq_length = max_num_tokens
if rng.random() < short_seq_prob: #产生一个随机数如果小于short_seq_prob 则产生一个较短的训练序列
target_seq_length = rng.randint(2, max_num_tokens)

# We DON'T just concatenate all of the tokens from a document into a long
# sequence and choose an arbitrary split point because this would make the
# next sentence prediction task too easy. Instead, we split the input into
# segments "A" and "B" based on the actual "sentences" provided by the user
# input.
instances = []
current_chunk = [] #产生训练集的候选集
current_length = 0
i = 0
while i < len(document):
segment = document[i]
current_chunk.append(segment)
current_length += len(segment)
if i == len(document) - 1 or current_length >= target_seq_length:
if current_chunk:
# `a_end` is how many segments from `current_chunk` go into the `A`
# (first) sentence.
a_end = 1
if len(current_chunk) >= 2:
a_end = rng.randint(1, len(current_chunk) - 1) #从current_chunk中随机选出一个文档作为句子1的截止文档

tokens_a = []
for j in range(a_end):
tokens_a.extend(current_chunk[j]) #将截止文档之前的文档都加入到tokens_a

tokens_b = []
# Random next
is_random_next = False
if len(current_chunk) == 1 or rng.random() < 0.5: #候选集只有一句的情况则随机抽取句子作为句子2;或以0.5的概率随机抽取句子作为句子2
is_random_next = True
target_b_length = target_seq_length - len(tokens_a)

# This should rarely go for more than one iteration for large
# corpora. However, just to be careful, we try to make sure that
# the random document is not the same as the document
# we're processing.
for _ in range(10):
random_document_index = rng.randint(0, len(all_documents) - 1)
if random_document_index != document_index:
break

random_document = all_documents[random_document_index] #随机找一个文档作为截止文档
random_start = rng.randint(0, len(random_document) - 1) #随机找一个初始文档
for j in range(random_start, len(random_document)):
tokens_b.extend(random_document[j]) #将随机文档加入到token_b
if len(tokens_b) >= target_b_length:
break
# We didn't actually use these segments so we "put them back" so
# they don't go to waste.
num_unused_segments = len(current_chunk) - a_end
i -= num_unused_segments
# Actual next
else:
is_random_next = False 以第1句的后续作为句子2
for j in range(a_end, len(current_chunk)):
tokens_b.extend(current_chunk[j])
truncate_seq_pair(tokens_a, tokens_b, max_num_tokens, rng) #对两个句子进行长度剪裁

assert len(tokens_a) >= 1
assert len(tokens_b) >= 1

tokens = []
segment_ids = []
tokens.append("[CLS]")
segment_ids.append(0)
for token in tokens_a:
tokens.append(token)
segment_ids.append(0)

tokens.append("[SEP]")
segment_ids.append(0)

for token in tokens_b:
tokens.append(token)
segment_ids.append(1)
tokens.append("[SEP]")
segment_ids.append(1)

(tokens, masked_lm_positions,
masked_lm_labels) = create_masked_lm_predictions( #对token创建mask
tokens, masked_lm_prob, max_predictions_per_seq, vocab_words, rng)
instance = TrainingInstance(
tokens=tokens,
segment_ids=segment_ids,
is_random_next=is_random_next,
masked_lm_positions=masked_lm_positions,
masked_lm_labels=masked_lm_labels)
instances.append(instance)
current_chunk = []
current_length = 0
i += 1

return instances
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随机遮蔽
这部分对token进行随机mask。这部分是BERT的创新点之二,随机遮蔽。为了防止双向模型在多层之后“看到自己”。这里对一部分词进行随机遮蔽,并在预训练中进行预测。遮蔽方案:
1.以80%的概率直接变成[MASK]
2.以10%的概率保留原词
3.以10%的概率在词典中随机找一个词替代
返回值:经过随机遮蔽后的(词,遮蔽位置,遮蔽前原词)

def create_masked_lm_predictions(tokens, masked_lm_prob,
max_predictions_per_seq, vocab_words, rng):
"""Creates the predictions for the masked LM objective."""

cand_indexes = []
for (i, token) in enumerate(tokens):
if token == "[CLS]" or token == "[SEP]":
continue
cand_indexes.append(i)

rng.shuffle(cand_indexes) #打乱顺序

output_tokens = list(tokens)

masked_lm = collections.namedtuple("masked_lm", ["index", "label"]) # p定义一个名为masked_lm的元组,里面有两个属性

num_to_predict = min(max_predictions_per_seq,
max(1, int(round(len(tokens) * masked_lm_prob)))) #所有要mask的词的数量为定值,取两个定义好参数的最小值

masked_lms = []
covered_indexes = set()
for index in cand_indexes:
if len(masked_lms) >= num_to_predict:
break
if index in covered_indexes:
continue
covered_indexes.add(index) #要被mask的词的index

masked_token = None
# 80% of the time, replace with [MASK]
if rng.random() < 0.8:
masked_token = "[MASK]"
else:
# 10% of the time, keep original
if rng.random() < 0.5:
masked_token = tokens[index]
# 10% of the time, replace with random word
else:
masked_token = vocab_words[rng.randint(0, len(vocab_words) - 1)]

output_tokens[index] = masked_token #用masked_token替换原词

masked_lms.append(masked_lm(index=index, label=tokens[index]))

masked_lms = sorted(masked_lms, key=lambda x: x.index)

masked_lm_positions = []
masked_lm_labels = []
for p in masked_lms:
masked_lm_positions.append(p.index) #被mask的index
masked_lm_labels.append(p.label) #被mask的label(即原词)

return (output_tokens, masked_lm_positions, masked_lm_labels)
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输出
最后是将处理好的数据保存为tfrecord文件。首先将token转为id,增加input_mask用于记录实句长度。最后将不到最大长度的部分用0补齐。

def write_instance_to_example_files(instances, tokenizer, max_seq_length,
max_predictions_per_seq, output_files):
"""Create TF example files from `TrainingInstance`s."""
writers = []
for output_file in output_files:
writers.append(tf.python_io.TFRecordWriter(output_file))

writer_index = 0

total_written = 0
for (inst_index, instance) in enumerate(instances):
input_ids = tokenizer.convert_tokens_to_ids(instance.tokens) #词转id
input_mask = [1] * len(input_ids)
segment_ids = list(instance.segment_ids)
assert len(input_ids) <= max_seq_length

while len(input_ids) < max_seq_length: #未到最大长度时后面补0
input_ids.append(0)
input_mask.append(0)
segment_ids.append(0)

assert len(input_ids) == max_seq_length
assert len(input_mask) == max_seq_length
assert len(segment_ids) == max_seq_length

masked_lm_positions = list(instance.masked_lm_positions) #mask位置记录
masked_lm_ids = tokenizer.convert_tokens_to_ids(instance.masked_lm_labels) #mask预测值转id
masked_lm_weights = [1.0] * len(masked_lm_ids) #mask位置的权重都为1,用于排除后续的“0”以便loss计算

while len(masked_lm_positions) < max_predictions_per_seq: #补0
masked_lm_positions.append(0)
masked_lm_ids.append(0)
masked_lm_weights.append(0.0)

next_sentence_label = 1 if instance.is_random_next else 0

features = collections.OrderedDict()
features["input_ids"] = create_int_feature(input_ids)
features["input_mask"] = create_int_feature(input_mask)
features["segment_ids"] = create_int_feature(segment_ids)
features["masked_lm_positions"] = create_int_feature(masked_lm_positions)
features["masked_lm_ids"] = create_int_feature(masked_lm_ids)
features["masked_lm_weights"] = create_float_feature(masked_lm_weights)
features["next_sentence_labels"] = create_int_feature([next_sentence_label])

tf_example = tf.train.Example(features=tf.train.Features(feature=features)) #生成训练样例

writers[writer_index].write(tf_example.SerializeToString()) #输出到文件
writer_index = (writer_index + 1) % len(writers)

total_written += 1

if inst_index < 20: 对前20个训练样例进行打印
tf.logging.info("*** Example ***")
tf.logging.info("tokens: %s" % " ".join(
[tokenization.printable_text(x) for x in instance.tokens]))

for feature_name in features.keys():
feature = features[feature_name]
values = []
if feature.int64_list.value:
values = feature.int64_list.value
elif feature.float_list.value:
values = feature.float_list.value
tf.logging.info(
"%s: %s" % (feature_name, " ".join([str(x) for x in values])))

for writer in writers:
writer.close()

tf.logging.info("Wrote %d total instances", total_written)
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结果一览
最后打印的结果是这酱的

谷歌对训练数据的处理就介绍这么多,如果有错误欢迎大家批评指正,如果有问题也欢迎大家提问互相探讨。关于模型篇的代码解析我会在下一篇博客中给出。
---------------------
作者:保持一份率性
来源:****
原文:https://blog.****.net/weixin_39470744/article/details/84373933
版权声明:本文为博主原创文章,转载请附上博文链接!

谷歌BERT预训练源码解析(一):训练数据生成