一、准备训练数据

主要的数据有两个:

1.小黄鸡的聊天语料:噪声很大

2.微博的标题和评论:质量相对较高

二、数据的处理和保存

由于数据中存到大量的噪声,可以对其进行基础的处理,然后分别把input和target使用两个文件保存,即input中的第n行尾问,target的第n行为答

后续可能会把单个字作为特征(存放在input_word.txt),也可能会把词语作为特征(input.txt)

2.1 小黄鸡的语料的处理

def format_xiaohuangji_corpus(word=false):
    """处理小黄鸡的语料"""
    if word:
        corpus_path = "./chatbot/corpus/xiaohuangji50w_nofenci.conv"
        input_path = "./chatbot/corpus/input_word.txt"
        output_path = "./chatbot/corpus/output_word.txt"
    else:
 
        corpus_path = "./chatbot/corpus/xiaohuangji50w_nofenci.conv"
        input_path = "./chatbot/corpus/input.txt"
        output_path = "./chatbot/corpus/output.txt"
 
    f_input = open(input_path, "a")
    f_output = open(output_path, "a")
    pair = []
    for line in tqdm(open(corpus_path), ascii=true):
        if line.strip() == "e":
            if not pair:
                continue
            else:
                assert len(pair) == 2, "长度必须是2"
                if len(pair[0].strip()) >= 1 and len(pair[1].strip()) >= 1:
                    f_input.write(pair[0] + "\n")
                    f_output.write(pair[1] + "\n")
                pair = []
        elif line.startswith("m"):
            line = line[1:]
            if word:
                pair.append(" ".join(list(line.strip())))
            else:
                pair.append(" ".join(jieba_cut(line.strip())))

2.2 微博语料的处理

def format_weibo(word=false):
    """
    微博数据存在一些噪声,未处理
    :return:
    """
    if word:
        origin_input = "./chatbot/corpus/stc_weibo_train_post"
        input_path = "./chatbot/corpus/input_word.txt"
 
        origin_output = "./chatbot/corpus/stc_weibo_train_response"
        output_path = "./chatbot/corpus/output_word.txt"
 
    else:
        origin_input = "./chatbot/corpus/stc_weibo_train_post"
        input_path = "./chatbot/corpus/input.txt"
 
        origin_output = "./chatbot/corpus/stc_weibo_train_response"
        output_path = "./chatbot/corpus/output.txt"
 
    f_input = open(input_path, "a")
    f_output = open(output_path, "a")
    with open(origin_input) as in_o, open(origin_output) as out_o:
        for _in, _out in tqdm(zip(in_o, out_o), ascii=true):
            _in = _in.strip()
            _out = _out.strip()
 
            if _in.endswith(")") or _in.endswith("」") or _in.endswith(")"):
                _in = re.sub("(.*)|「.*?」|\(.*?\)", " ", _in)
            _in = re.sub("我在.*?alink|alink|(.*?\d+x\d+.*?)|#|】|【|-+|_+|via.*?:*.*", " ", _in)
 
            _in = re.sub("\s+", " ", _in)
            if len(_in) < 1 or len(_out) < 1:
                continue
 
            if word:
                _in = re.sub("\s+", "", _in)  # 转化为一整行,不含空格
                _out = re.sub("\s+", "", _out)
                if len(_in) >= 1 and len(_out) >= 1:
                    f_input.write(" ".join(list(_in)) + "\n")
                    f_output.write(" ".join(list(_out)) + "\n")
            else:
                if len(_in) >= 1 and len(_out) >= 1:
                    f_input.write(_in.strip() + "\n")
                    f_output.write(_out.strip() + "\n")
 
    f_input.close()
    f_output.close()

2.3 处理后的结果

三、构造文本序列化和反序列化方法

和之前的操作相同,需要把文本能转化为数字,同时还需实现方法把数字转化为文本

示例代码:

import config
import pickle
 
 
class word2sequence():
    unk_tag = "unk"
    pad_tag = "pad"
    sos_tag = "sos"
    eos_tag = "eos"
 
    unk = 0
    pad = 1
    sos = 2
    eos = 3
 
    def __init__(self):
        self.dict = {
            self.unk_tag: self.unk,
            self.pad_tag: self.pad,
            self.sos_tag: self.sos,
            self.eos_tag: self.eos
        }
        self.count = {}
        self.fited = false
 
    def to_index(self, word):
        """word -> index"""
        assert self.fited == true, "必须先进行fit操作"
        return self.dict.get(word, self.unk)
 
    def to_word(self, index):
        """index -> word"""
        assert self.fited, "必须先进行fit操作"
        if index in self.inversed_dict:
            return self.inversed_dict[index]
        return self.unk_tag
 
    def __len__(self):
        return len(self.dict)
 
    def fit(self, sentence):
        """
        :param sentence:[word1,word2,word3]
        :param min_count: 最小出现的次数
        :param max_count: 最大出现的次数
        :param max_feature: 总词语的最大数量
        :return:
        """
        for a in sentence:
            if a not in self.count:
                self.count[a] = 0
            self.count[a] += 1
 
        self.fited = true
 
    def build_vocab(self, min_count=1, max_count=none, max_feature=none):
 
        # 比最小的数量大和比最大的数量小的需要
        if min_count is not none:
            self.count = {k: v for k, v in self.count.items() if v >= min_count}
        if max_count is not none:
            self.count = {k: v for k, v in self.count.items() if v <= max_count}
 
        # 限制最大的数量
        if isinstance(max_feature, int):
            count = sorted(list(self.count.items()), key=lambda x: x[1])
            if max_feature is not none and len(count) > max_feature:
                count = count[-int(max_feature):]
            for w, _ in count:
                self.dict[w] = len(self.dict)
        else:
            for w in sorted(self.count.keys()):
                self.dict[w] = len(self.dict)
 
        # 准备一个index->word的字典
        self.inversed_dict = dict(zip(self.dict.values(), self.dict.keys()))
 
    def transform(self, sentence, max_len=none, add_eos=false):
        """
        实现吧句子转化为数组(向量)
        :param sentence:
        :param max_len:
        :return:
        """
        assert self.fited, "必须先进行fit操作"
 
        r = [self.to_index(i) for i in sentence]
        if max_len is not none:
            if max_len > len(sentence):
                if add_eos:
                    r += [self.eos] + [self.pad for _ in range(max_len - len(sentence) - 1)]
                else:
                    r += [self.pad for _ in range(max_len - len(sentence))]
            else:
                if add_eos:
                    r = r[:max_len - 1]
                    r += [self.eos]
                else:
                    r = r[:max_len]
        else:
            if add_eos:
                r += [self.eos]
        # print(len(r),r)
        return r
 
    def inverse_transform(self, indices):
        """
        实现从数组 转化为 向量
        :param indices: [1,2,3....]
        :return:[word1,word2.....]
        """
        sentence = []
        for i in indices:
            word = self.to_word(i)
            sentence.append(word)
        return sentence
 
 
# 之后导入该word_sequence使用
word_sequence = pickle.load(open("./pkl/ws.pkl", "rb")) if not config.use_word else pickle.load(
    open("./pkl/ws_word.pkl", "rb"))
 
if __name__ == '__main__':
    from word_sequence import word2sequence
    from tqdm import tqdm
    import pickle
 
    word_sequence = word2sequence()
    # 词语级别
    input_path = "../corpus/input.txt"
    target_path = "../corpus/output.txt"
    for line in tqdm(open(input_path).readlines()):
        word_sequence.fit(line.strip().split())
    for line in tqdm(open(target_path).readlines()):
        word_sequence.fit(line.strip().split())
 
    # 使用max_feature=5000个数据
    word_sequence.build_vocab(min_count=5, max_count=none, max_feature=5000)
    print(len(word_sequence))
    pickle.dump(word_sequence, open("./pkl/ws.pkl", "wb"))

word_sequence.py:

class wordsequence(object):
    pad_tag = 'pad'  # 填充标记
    unk_tag = 'unk'  # 未知词标记
    sos_tag = 'sos'  # start of sequence
    eos_tag = 'eos'  # end of sequence
 
    pad = 0
    unk = 1
    sos = 2
    eos = 3
 
    def __init__(self):
        self.dict = {
            self.pad_tag: self.pad,
            self.unk_tag: self.unk,
            self.sos_tag: self.sos,
            self.eos_tag: self.eos
        }
        self.count = {}  # 保存词频词典
        self.fited = false
 
    def to_index(self, word):
        """
        word --> index
        :param word:
        :return:
        """
        assert self.fited == true, "必须先进行fit操作"
        return self.dict.get(word, self.unk)
 
    def to_word(self, index):
        """
        index -- > word
        :param index:
        :return:
        """
        assert self.fited, '必须先进行fit操作'
        if index in self.inverse_dict:
            return self.inverse_dict[index]
        return self.unk_tag
 
    def fit(self, sentence):
        """
        传入句子,统计词频
        :param sentence:
        :return:
        """
        for word in sentence:
            # 对word出现的频率进行统计,当word不在sentence时,返回值是0,当word在sentence中时,返回+1,以此进行累计计数
            # self.count[word] = self.dict.get(word, 0) + 1
            if word not in self.count:
                self.count[word] = 0
            self.count[word] += 1
        self.fited = true
 
    def build_vocab(self, min_count=2, max_count=none, max_features=none):
        """
        构造词典
        :param min_count:最小词频
        :param max_count: 最大词频
        :param max_features: 词典中词的数量
        :return:
        """
        # self.count.pop(key),和del self.count[key] 无法在遍历self.count的同时进行删除key.因此浅拷贝temp后对temp遍历并删除self.count
        temp = self.count.copy()
        for key in temp:
            cur_count = self.count.get(key, 0)  # 当前词频
            if min_count is not none:
                if cur_count < min_count:
                    del self.count[key]
            if max_count is not none:
                if cur_count > max_count:
                    del self.count[key]
            if max_features is not none:
                self.count = dict(sorted(list(self.count.items()), key=lambda x: x[1], reversed=true)[:max_features])
        for key in self.count:
            self.dict[key] = len(self.dict)
        #  准备一个index-->word的字典
        self.inverse_dict = dict(zip(self.dict.values(), self.dict.keys()))
 
    def transforms(self, sentence, max_len=10, add_eos=false):
        """
        把sentence转化为序列
        :param sentence: 传入的句子
        :param max_len: 句子的最大长度
        :param add_eos: 是否添加结束符
        add_eos : true时,输出句子长度为max_len + 1
        add_eos : false时,输出句子长度为max_len
        :return:
        """
        assert self.fited, '必须先进行fit操作!'
        if len(sentence) > max_len:
            sentence = sentence[:max_len]
        #  提前计算句子长度,实现ass_eos后,句子长度统一
        sentence_len = len(sentence)
        #  sentence[1,3,4,5,unk,eos,pad,....]
        if add_eos:
            sentence += [self.eos_tag]
        if sentence_len < max_len:
            #  句子长度不够,用pad来填充
            sentence += (max_len - sentence_len) * [self.pad_tag]
        #  对于新出现的词采用特殊标记
        result = [self.dict.get(i, self.unk) for i in sentence]
 
        return result
 
    def invert_transform(self, indices):
        """
        序列转化为sentence
        :param indices:
        :return:
        """
        # return [self.inverse_dict.get(i, self.unk_tag) for i in indices]
        result = []
        for i in indices:
            if self.inverse_dict[i] == self.eos_tag:
                break
            result.append(self.inverse_dict.get(i, self.unk_tag))
        return result
 
    def __len__(self):
        return len(self.dict)
 
 
if __name__ == '__main__':
    num_sequence = wordsequence()
    print(num_sequence.dict)
    str1 = ['中国', '您好', '我爱你', '中国', '我爱你', '北京']
    num_sequence.fit(str1)
    num_sequence.build_vocab()
    print(num_sequence.transforms(str1))
    print(num_sequence.dict)
    print(num_sequence.inverse_dict)
    print(num_sequence.invert_transform([5, 4]))  # 这儿要传列表

运行结果:

四、构建dataset和dataloader

创建dataset.py 文件,准备数据集

import config
import torch
from torch.utils.data import dataset, dataloader
from word_sequence import wordsequence
 
 
class chatdataset(dataset):
    def __init__(self):
        self.input_path = config.chatbot_input_path
        self.target_path = config.chatbot_target_path
        self.input_lines = open(self.input_path, encoding='utf-8').readlines()
        self.target_lines = open(self.target_path, encoding='utf-8').readlines()
        assert len(self.input_lines) == len(self.target_lines), 'input和target长度不一致'
 
    def __getitem__(self, item):
        input = self.input_lines[item].strip().split()
        target = self.target_lines[item].strip().split()
        if len(input) == 0 or len(target) == 0:
            input = self.input_lines[item + 1].strip().split()
            target = self.target_lines[item + 1].strip().split()
        # 此处句子的长度如果大于max_len,那么应该返回max_len
        input_length = min(len(input), config.max_len)
        target_length = min(len(target), config.max_len)
        return input, target, input_length, target_length
 
    def __len__(self):
        return len(self.input_lines)
 
 
def collate_fn(batch):
    #  1.排序
    batch = sorted(batch, key=lambda x: x[2], reversed=true)
    input, target, input_length, target_length = zip(*batch)
 
    #  2.进行padding的操作
    input = torch.longtensor([wordsequence.transform(i, max_len=config.max_len) for i in input])
    target = torch.longtensor([wordsequence.transforms(i, max_len=config.max_len, add_eos=true) for i in target])
    input_length = torch.longtensor(input_length)
    target_length = torch.longtensor(target_length)
 
    return input, target, input_length, target_length
 
 
data_loader = dataloader(dataset=chatdataset(), batch_size=config.batch_size, shuffle=true, collate_fn=collate_fn,
                         drop_last=true)
 
 
if __name__ == '__main__':
    print(len(data_loader))
    for idx, (input, target, input_length, target_length) in enumerate(data_loader):
        print(idx)
        print(input)
        print(target)
        print(input_length)
        print(target_length)

五、完成encoder编码器逻辑

encode.py:

import torch.nn as nn
import config
from torch.nn.utils.rnn import pad_packed_sequence, pack_padded_sequence
 
 
class encoder(nn.module):
    def __init__(self):
        super(encoder, self).__init__()
        #  torch.nn.embedding(num_embeddings词典大小即不重复词数,embedding_dim单个词用多长向量表示)
        self.embedding = nn.embedding(
            num_embeddings=len(config.word_sequence.dict),
            embedding_dim=config.embedding_dim,
            padding_idx=config.word_sequence.pad
        )
        self.gru = nn.gru(
            input_size=config.embedding_dim,
            num_layers=config.num_layer,
            hidden_size=config.hidden_size,
            bidirectional=false,
            batch_first=true
        )
 
    def forward(self, input, input_length):
        """
        :param input: [batch_size, max_len]
        :return:
        """
        embedded = self.embedding(input)  # embedded [batch_size, max_len, embedding_dim]
        # 加速循环过程
        embedded = pack_padded_sequence(embedded, input_length, batch_first=true)  # 打包
        out, hidden = self.gru(embedded)
        out, out_length = pad_packed_sequence(out, batch_first=true, padding_value=config.num_sequence.pad)  # 解包
 
        # hidden即h_n [num_layer*[1/2],batchsize, hidden_size]
        # out : [batch_size, seq_len/max_len, hidden_size]
        return out, hidden, out_length
 
 
if __name__ == '__main__':
    from dataset import data_loader
 
    encoder = encoder()
    print(encoder)
    for input, target, input_length, target_length in data_loader:
        out, hidden, out_length = encoder(input, input_length)
        print(input.size())
        print(out.size())
        print(hidden.size())
        print(out_length)
        break

六、完成decoder解码器的逻辑

decode.py:

import torch
import torch.nn as nn
import config
import torch.nn.functional as f
from word_sequence import wordsequence
 
 
class decode(nn.module):
    def __init__(self):
        super().__init__()
        self.max_seq_len = config.max_len
        self.vocab_size = len(wordsequence)
        self.embedding_dim = config.embedding_dim
        self.dropout = config.dropout
 
        self.embedding = nn.embedding(num_embeddings=self.vocab_size, embedding_dim=self.embedding_dim,
                                      padding_idx=wordsequence.pad)
        self.gru = nn.gru(input_size=self.embedding_dim, hidden_size=config.hidden_size, num_layers=1, batch_first=true,
                          dropout=self.dropout)
        self.log_softmax = nn.logsoftmax()
        self.fc = nn.linear(config.hidden_size, self.vocab_size)
 
    def forward(self, encoder_hidden, target, target_length):
        # encoder_hidden [batch_size,hidden_size]
        # target [batch_size,seq-len]
        decoder_input = torch.longtensor([[wordsequence.sos]] * config.batch_size).to(config.device)
        decoder_outputs = torch.zeros(config.batch_size, config.max_len, self.vocab_size).to(
            config.device)  # [batch_size,seq_len,14]
 
        decoder_hidden = encoder_hidden  # [batch_size,hidden_size]
 
        for t in range(config.max_len):
            decoder_output_t, decoder_hidden = self.forward_step(decoder_input, decoder_hidden)
            decoder_outputs[:, t, :] = decoder_output_t
            value, index = torch.topk(decoder_output_t, 1)  # index [batch_size,1]
            decoder_input = index
        return decoder_outputs, decoder_hidden
 
    def forward_step(self, decoder_input, decoder_hidden):
        """
        :param decoder_input:[batch_size,1]
        :param decoder_hidden:[1,batch_size,hidden_size]
        :return:[batch_size,vocab_size],decoder_hidden:[1,batch_size,didden_size]
        """
        embeded = self.embedding(decoder_input)  # embeded: [batch_size,1 , embedding_dim]
        out, decoder_hidden = self.gru(embeded, decoder_hidden)  # out [1, batch_size, hidden_size]
        out = out.squeeze(0)
        out = f.log_softmax(self.fc(out), dim=1)  # [batch_size, vocab_size]
        out = out.squeeze(0)
        # print("out size:",out.size(),decoder_hidden.size())
        return out, decoder_hidden

关于 decoder_outputs[:,t,:] = decoder_output_t的演示

decoder_outputs 形状 [batch_size, seq_len, vocab_size]
decoder_output_t 形状[batch_size, vocab_size]

示例代码:

import torch
 
a = torch.zeros((2, 3, 5))
print(a.size())
print(a)
 
b = torch.randn((2, 5))
print(b.size())
print(b)
 
a[:, 0, :] = b
print(a.size())
print(a)

运行结果:

关于torch.topk, torch.max(),torch.argmax()

value, index = torch.topk(decoder_output_t , k = 1)
decoder_output_t [batch_size, vocab_size]

示例代码:

import torch
 
a = torch.randn((3, 5))
print(a.size())
print(a)
 
values, index = torch.topk(a, k=1)
print(values)
print(index)
print(index.size())
 
values, index = torch.max(a, dim=-1)
print(values)
print(index)
print(index.size())
 
index = torch.argmax(a, dim=-1)
print(index)
print(index.size())
 
index = a.argmax(dim=-1)
print(index)
print(index.size())

运行结果:

若使用teacher forcing ,将采用下次真实值作为下个time step的输入

# 注意unsqueeze 相当于浅拷贝,不会对原张量进行修改
 decoder_input = target[:,t].unsqueeze(-1)
 target 形状 [batch_size, seq_len]
 decoder_input 要求形状[batch_size, 1]

示例代码:

import torch
 
a = torch.randn((3, 5))
print(a.size())
print(a)
 
b = a[:, 3]
print(b.size())
print(b)
c = b.unsqueeze(-1)
print(c.size())
print(c)

运行结果:

七、完成seq2seq的模型

seq2seq.py:

import torch
import torch.nn as nn
 
 
class seq2seq(nn.module):
    def __init__(self, encoder, decoder):
        super(seq2seq, self).__init__()
        self.encoder = encoder
        self.decoder = decoder
 
    def forward(self, input, target, input_length, target_length):
        encoder_outputs, encoder_hidden = self.encoder(input, input_length)
        decoder_outputs, decoder_hidden = self.decoder(encoder_hidden, target, target_length)
        return decoder_outputs, decoder_hidden
 
    def evaluation(self, inputs, input_length):
        encoder_outputs, encoder_hidden = self.encoder(inputs, input_length)
        decoded_sentence = self.decoder.evaluation(encoder_hidden)
        return decoded_sentence

八、完成训练逻辑

为了加速训练,可以考虑在gpu上运行,那么在我们自顶一个所以的tensor和model都需要转化为cuda支持的类型。

当前的数据量为500多万条,在gtx1070(8g显存)上训练,大概需要90分一个epoch,耐心的等待吧

train.py:

import torch
import config
from torch import optim
import torch.nn as nn
from encode import encoder
from decode import decoder
from seq2seq import seq2seq
from dataset import data_loader as train_dataloader
from word_sequence import wordsequence
 
encoder = encoder()
decoder = decoder()
model = seq2seq(encoder, decoder)
 
# device在config文件中实现
model.to(config.device)
 
print(model)
 
model.load_state_dict(torch.load("model/seq2seq_model.pkl"))
optimizer = optim.adam(model.parameters())
optimizer.load_state_dict(torch.load("model/seq2seq_optimizer.pkl"))
criterion = nn.nllloss(ignore_index=wordsequence.pad, reduction="mean")
 
 
def get_loss(decoder_outputs, target):
    target = target.view(-1)  # [batch_size*max_len]
    decoder_outputs = decoder_outputs.view(config.batch_size * config.max_len, -1)
    return criterion(decoder_outputs, target)
 
 
def train(epoch):
    for idx, (input, target, input_length, target_len) in enumerate(train_dataloader):
        input = input.to(config.device)
        target = target.to(config.device)
        input_length = input_length.to(config.device)
        target_len = target_len.to(config.device)
 
        optimizer.zero_grad()
        ##[seq_len,batch_size,vocab_size] [batch_size,seq_len]
        decoder_outputs, decoder_hidden = model(input, target, input_length, target_len)
        loss = get_loss(decoder_outputs, target)
        loss.backward()
        optimizer.step()
 
        print('train epoch: {} [{}/{} ({:.0f}%)]\tloss: {:.6f}'.format(
            epoch, idx * len(input), len(train_dataloader.dataset),
                   100. * idx / len(train_dataloader), loss.item()))
 
        torch.save(model.state_dict(), "model/seq2seq_model.pkl")
        torch.save(optimizer.state_dict(), 'model/seq2seq_optimizer.pkl')
 
 
if __name__ == '__main__':
    for i in range(10):
        train(i)

训练10个epoch之后的效果如下,可以看出损失依然很高:

train epoch: 9 [2444544/4889919 (50%)]	loss: 4.923604
train epoch: 9 [2444800/4889919 (50%)]	loss: 4.364594
train epoch: 9 [2445056/4889919 (50%)]	loss: 4.613254
train epoch: 9 [2445312/4889919 (50%)]	loss: 4.143538
train epoch: 9 [2445568/4889919 (50%)]	loss: 4.412729
train epoch: 9 [2445824/4889919 (50%)]	loss: 4.516526
train epoch: 9 [2446080/4889919 (50%)]	loss: 4.124945
train epoch: 9 [2446336/4889919 (50%)]	loss: 4.777015
train epoch: 9 [2446592/4889919 (50%)]	loss: 4.358538
train epoch: 9 [2446848/4889919 (50%)]	loss: 4.513412
train epoch: 9 [2447104/4889919 (50%)]	loss: 4.202757
train epoch: 9 [2447360/4889919 (50%)]	loss: 4.589584

九、评估逻辑

decoder 中添加评估方法

def evaluate(self, encoder_hidden):
	 """
	 评估, 和fowward逻辑类似
	 :param encoder_hidden: encoder最后time step的隐藏状态 [1, batch_size, hidden_size]
	 :return:
	 """
	 batch_size = encoder_hidden.size(1)
	 # 初始化一个[batch_size, 1]的sos张量,作为第一个time step的输出
	 decoder_input = torch.longtensor([[config.target_ws.sos]] * batch_size).to(config.device)
	 # encoder_hidden 作为decoder第一个时间步的hidden [1, batch_size, hidden_size]
	 decoder_hidden = encoder_hidden
	 # 初始化[batch_size, seq_len, vocab_size]的outputs 拼接每个time step结果
	 decoder_outputs = torch.zeros((batch_size, config.chatbot_target_max_len, self.vocab_size)).to(config.device)
	 # 初始化一个空列表,存储每次的预测序列
	 predict_result = []
	 # 对每个时间步进行更新
	 for t in range(config.chatbot_target_max_len):
	     decoder_output_t, decoder_hidden = self.forward_step(decoder_input, decoder_hidden)
	     # 拼接每个time step,decoder_output_t [batch_size, vocab_size]
	     decoder_outputs[:, t, :] = decoder_output_t
	     # 由于是评估,需要每次都获取预测值
	     index = torch.argmax(decoder_output_t, dim = -1)
	     # 更新下一时间步的输入
	     decoder_input = index.unsqueeze(1)
	     # 存储每个时间步的预测序列
	     predict_result.append(index.cpu().detach().numpy()) # [[batch], [batch]...] ->[seq_len, vocab_size]
	 # 结果转换为ndarry,每行是一个预测结果即单个字对应的索引, 所有行为seq_len长度
	 predict_result = np.array(predict_result).transpose()  # (batch_size, seq_len)的array
	 return decoder_outputs, predict_result

eval.py

import torch
import torch.nn as nn
import torch.nn.functional as f
from dataset import get_dataloader
import config
import numpy as np
from seq2seq import seq2seqmodel
import os
from tqdm import tqdm
 
 
 
model = seq2seqmodel().to(config.device)
if os.path.exists('./model/chatbot_model.pkl'):
    model.load_state_dict(torch.load('./model/chatbot_model.pkl'))
 
 
def eval():
    model.eval()
    loss_list = []
    test_data_loader = get_dataloader(train = false)
    with torch.no_grad():
        bar = tqdm(test_data_loader, desc = 'testing', total = len(test_data_loader))
        for idx, (input, target, input_length, target_length) in enumerate(bar):
            input = input.to(config.device)
            target = target.to(config.device)
            input_length = input_length.to(config.device)
            target_length = target_length.to(config.device)
            # 获取模型的预测结果
            decoder_outputs, predict_result = model.evaluation(input, input_length)
            # 计算损失
            loss = f.nll_loss(decoder_outputs.view(-1, len(config.target_ws)), target.view(-1), ignore_index = config.target_ws.pad)
            loss_list.append(loss.item())
            bar.set_description('idx{}:/{}, loss:{}'.format(idx, len(test_data_loader), np.mean(loss_list)))
 
 
if __name__ == '__main__':
    eval()

interface.py:

from cut_sentence import cut
import torch
import config
from seq2seq import seq2seqmodel
import os
 
 
# 模拟聊天场景,对用户输入进来的话进行回答
def interface():
    # 加载训练集好的模型
    model = seq2seqmodel().to(config.device)
    assert os.path.exists('./model/chatbot_model.pkl') , '请先对模型进行训练!'
    model.load_state_dict(torch.load('./model/chatbot_model.pkl'))
    model.eval()
 
    while true:
        # 输入进来的原始字符串,进行分词处理
        input_string = input('me>>:')
        if input_string == 'q':
            print('下次再聊')
            break
        input_cuted = cut(input_string, by_word = true)
        # 进行序列转换和tensor封装
        input_tensor = torch.longtensor([config.input_ws.transfrom(input_cuted, max_len = config.chatbot_input_max_len)]).to(config.device)
        input_length_tensor = torch.longtensor([len(input_cuted)]).to(config.device)
        # 获取预测结果
        outputs, predict = model.evaluation(input_tensor, input_length_tensor)
        # 进行序列转换文本
        result = config.target_ws.inverse_transform(predict[0])
        print('chatbot>>:', result)
 
 
if __name__ == '__main__':
    interface()

config.py:

import torch
from word_sequence import wordsequence
 
 
chatbot_input_path = './corpus/input.txt'
chatbot_target_path = './corpus/target.txt'
 
word_sequence = wordsequence()
max_len = 9
batch_size = 128
embedding_dim = 100
num_layer = 1
hidden_size = 64
dropout = 0.1
model_save_path = './model.pkl'
optimizer_save_path = './optimizer.pkl'
device = torch.device('cuda:0' if torch.cuda.is_available() else 'cpu')

cut.py:

"""
分词
"""
import jieba
import config1
import string
import jieba.posseg as psg  # 返回词性
from lib.stopwords import stopwords
 
# 加载词典
jieba.load_userdict(config1.user_dict_path)
# 准备英文字符
letters = string.ascii_lowercase + '+'
 
 
def cut_sentence_by_word(sentence):
    """实现中英文分词"""
    temp = ''
    result = []
    for word in sentence:
        if word.lower() in letters:
            # 如果是英文字符,则进行拼接空字符串
            temp += word
        else:
            # 遇到汉字后,把英文先添加到结果中
            if temp != '':
                result.append(temp.lower())
                temp = ''
            result.append(word.strip())
    if temp != '':
        # 若英文出现在最后
        result.append(temp.lower())
    return result
 
 
def cut(sentence, by_word=false, use_stopwords=true, with_sg=false):
    """
    :param sentence: 句子
    :param by_word: t根据单个字分词或者f句子
    :param use_stopwords: 是否使用停用词,默认false
    :param with_sg: 是否返回词性
    :return:
    """
    if by_word:
        result = cut_sentence_by_word(sentence)
    else:
        result = psg.lcut(sentence)
        # psg 源码返回i.word,i.flag 即词,定义的词性
        result = [(i.word, i.flag) for i in result]
        # 是否返回词性
        if not with_sg:
            result = [i[0] for i in result]
    # 是否使用停用词
    if use_stopwords:
        result = [i for i in result if i not in stopwords]
 
    return result

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