动手学深度学习60 机器翻译与数据集
1. 机器翻译与数据集
import os
import torch
from d2l import torch as d2l
#@save
d2l.DATA_HUB['fra-eng'] = (d2l.DATA_URL + 'fra-eng.zip',
'94646ad1522d915e7b0f9296181140edcf86a4f5')
#@save
def read_data_nmt():
"""载入“英语-法语”数据集"""
data_dir = d2l.download_extract('fra-eng')
with open(os.path.join(data_dir, 'fra.txt'), 'r',
encoding='utf-8') as f:
return f.read()
raw_text = read_data_nmt()
print(raw_text[:75])
#@save
# 标点符号也要翻译
def preprocess_nmt(text):
"""预处理“英语-法语”数据集"""
def no_space(char, prev_char):
return char in set(',.!?') and prev_char != ' '
# 使用空格替换不间断空格
# 使用小写字母替换大写字母
text = text.replace('\u202f', ' ').replace('\xa0', ' ').lower()
# 在单词和标点符号之间插入空格
out = [' ' + char if i > 0 and no_space(char, text[i - 1]) else char
for i, char in enumerate(text)]
return ''.join(out)
text = preprocess_nmt(raw_text)
print(text[:80])
#@save
def tokenize_nmt(text, num_examples=None):
"""词元化“英语-法语”数据数据集"""
source, target = [], []
for i, line in enumerate(text.split('\n')):
if num_examples and i > num_examples:
break
parts = line.split('\t')
if len(parts) == 2:
source.append(parts[0].split(' '))
target.append(parts[1].split(' '))
return source, target
# 英语 法语
source, target = tokenize_nmt(text)
source[:6], target[:6]
#@save
def show_list_len_pair_hist(legend, xlabel, ylabel, xlist, ylist):
"""绘制列表长度对的直方图"""
d2l.set_figsize()
_, _, patches = d2l.plt.hist(
[[len(l) for l in xlist], [len(l) for l in ylist]])
d2l.plt.xlabel(xlabel)
d2l.plt.ylabel(ylabel)
for patch in patches[1].patches:
patch.set_hatch('/')
d2l.plt.legend(legend)
show_list_len_pair_hist(['source', 'target'], '# tokens per sequence',
'count', source, target);
# <pad> 填充 <bos> 句子开始 <eos> 句子结束
# 词小于等于2 就不要了。
src_vocab = d2l.Vocab(source, min_freq=2,
reserved_tokens=['<pad>', '<bos>', '<eos>'])
len(src_vocab)
# 怎么让句子变成一样的长度 填充或者删除。
#@save
def truncate_pad(line, num_steps, padding_token):
"""截断或填充文本序列"""
if len(line) > num_steps:
return line[:num_steps] # 截断
return line + [padding_token] * (num_steps - len(line)) # 填充
truncate_pad(src_vocab[source[0]], 10, src_vocab['<pad>'])
#@save
# valid_len 告诉句子实际长度是多少【记录原始数据多长】 不管填充的内容,计算时不要学pad
def build_array_nmt(lines, vocab, num_steps):
"""将机器翻译的文本序列转换成小批量"""
lines = [vocab[l] for l in lines]
lines = [l + [vocab['<eos>']] for l in lines]
array = torch.tensor([truncate_pad(
l, num_steps, vocab['<pad>']) for l in lines])
valid_len = (array != vocab['<pad>']).type(torch.int32).sum(1)
return array, valid_len
#@save
def load_data_nmt(batch_size, num_steps, num_examples=600):
"""返回翻译数据集的迭代器和词表"""
text = preprocess_nmt(read_data_nmt())
source, target = tokenize_nmt(text, num_examples)
src_vocab = d2l.Vocab(source, min_freq=2,
reserved_tokens=['<pad>', '<bos>', '<eos>'])
tgt_vocab = d2l.Vocab(target, min_freq=2,
reserved_tokens=['<pad>', '<bos>', '<eos>'])
src_array, src_valid_len = build_array_nmt(source, src_vocab, num_steps)
tgt_array, tgt_valid_len = build_array_nmt(target, tgt_vocab, num_steps)
data_arrays = (src_array, src_valid_len, tgt_array, tgt_valid_len)
data_iter = d2l.load_array(data_arrays, batch_size)
return data_iter, src_vocab, tgt_vocab
train_iter, src_vocab, tgt_vocab = load_data_nmt(batch_size=2, num_steps=8)
for X, X_valid_len, Y, Y_valid_len in train_iter:
print('X:', X.type(torch.int32))
print('X的有效长度:', X_valid_len)
print('Y:', Y.type(torch.int32))
print('Y的有效长度:', Y_valid_len)
break
原文地址:https://blog.csdn.net/weixin_42831564/article/details/142793595
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