重庆分公司,新征程启航
为企业提供网站建设、域名注册、服务器等服务
这篇文章主要讲解了“怎么使用pytorch框架”,文中的讲解内容简单清晰,易于学习与理解,下面请大家跟着小编的思路慢慢深入,一起来研究和学习“怎么使用pytorch框架”吧!
专注于为中小企业提供成都网站设计、网站建设服务,电脑端+手机端+微信端的三站合一,更高效的管理,为中小企业商城免费做网站提供优质的服务。我们立足成都,凝聚了一批互联网行业人才,有力地推动了1000多家企业的稳健成长,帮助中小企业通过网站建设实现规模扩充和转变。
中文新闻情感分类 Bert-Pytorch-transformers
使用pytorch框架以及transformers包,以及Bert的中文预训练模型
文件目录
data
Train_DataSet.csv
Train_DataSet_Label.csv
main.py
NewsData.py
#main.py
from transformers import BertTokenizer
from transformers import BertForSequenceClassification
from transformers import BertConfig
from transformers import BertPreTrainedModel
import torch
import torch.nn as nn
from transformers import BertModel
import time
import argparse
from NewsData import NewsData
import os
def get_train_args():
parser=argparse.ArgumentParser()
parser.add_argument('--batch_size',type=int,default=10,help = '每批数据的数量')
parser.add_argument('--nepoch',type=int,default=3,help = '训练的轮次')
parser.add_argument('--lr',type=float,default=0.001,help = '学习率')
parser.add_argument('--gpu',type=bool,default=True,help = '是否使用gpu')
parser.add_argument('--num_workers',type=int,default=2,help='dataloader使用的线程数量')
parser.add_argument('--num_labels',type=int,default=3,help='分类类数')
parser.add_argument('--data_path',type=str,default='./data',help='数据路径')
opt=parser.parse_args()
print(opt)
return opt
def get_model(opt):
#类方法.from_pretrained()获取预训练模型,num_labels是分类的类数
model = BertForSequenceClassification.from_pretrained('bert-base-chinese',num_labels=opt.num_labels)
return model
def get_data(opt):
#NewsData继承于pytorch的Dataset类
trainset = NewsData(opt.data_path,is_train = 1)
trainloader=torch.utils.data.DataLoader(trainset,batch_size=opt.batch_size,shuffle=True,num_workers=opt.num_workers)
testset = NewsData(opt.data_path,is_train = 0)
testloader=torch.utils.data.DataLoader(testset,batch_size=opt.batch_size,shuffle=False,num_workers=opt.num_workers)
return trainloader,testloader
def train(epoch,model,trainloader,testloader,optimizer,opt):
print('\ntrain-Epoch: %d' % (epoch+1))
model.train()
start_time = time.time()
print_step = int(len(trainloader)/10)
for batch_idx,(sue,label,posi) in enumerate(trainloader):
if opt.gpu:
sue = sue.cuda()
posi = posi.cuda()
label = label.unsqueeze(1).cuda()
optimizer.zero_grad()
#输入参数为词列表、位置列表、标签
outputs = model(sue, position_ids=posi,labels = label)
loss, logits = outputs[0],outputs[1]
loss.backward()
optimizer.step()
if batch_idx % print_step == 0:
print("Epoch:%d [%d|%d] loss:%f" %(epoch+1,batch_idx,len(trainloader),loss.mean()))
print("time:%.3f" % (time.time() - start_time))
def test(epoch,model,trainloader,testloader,opt):
print('\ntest-Epoch: %d' % (epoch+1))
model.eval()
total=0
correct=0
with torch.no_grad():
for batch_idx,(sue,label,posi) in enumerate(testloader):
if opt.gpu:
sue = sue.cuda()
posi = posi.cuda()
labels = label.unsqueeze(1).cuda()
label = label.cuda()
else:
labels = label.unsqueeze(1)
outputs = model(sue, labels=labels)
loss, logits = outputs[:2]
_,predicted=torch.max(logits.data,1)
total+=sue.size(0)
correct+=predicted.data.eq(label.data).cpu().sum()
s = ("Acc:%.3f" %((1.0*correct.numpy())/total))
print(s)
if __name__=='__main__':
opt = get_train_args()
model = get_model(opt)
trainloader,testloader = get_data(opt)
if opt.gpu:
model.cuda()
optimizer=torch.optim.SGD(model.parameters(),lr=opt.lr,momentum=0.9)
if not os.path.exists('./model.pth'):
for epoch in range(opt.nepoch):
train(epoch,model,trainloader,testloader,optimizer,opt)
test(epoch,model,trainloader,testloader,opt)
torch.save(model.state_dict(),'./model.pth')
else:郑州治疗妇科哪个医院好 http://www.120kdfk.com/
model.load_state_dict(torch.load('model.pth'))
print('模型存在,直接test')
test(0,model,trainloader,testloader,opt)
#NewsData.py
from transformers import BertTokenizer
from transformers import BertForSequenceClassification
from transformers import BertConfig
from transformers import BertPreTrainedModel
import torch
import torch.nn as nn
from transformers import BertModel
import time
import argparse
class NewsData(torch.utils.data.Dataset):
def __init__(self,root,is_train = 1):
self.tokenizer = BertTokenizer.from_pretrained('bert-base-chinese')
self.data_num = 7346
self.x_list = []
self.y_list = []
self.posi = []
with open(root + '/Train_DataSet.csv',encoding='UTF-8') as f:
for i in range(self.data_num+1):
line = f.readline()[:-1] + '这是一个中性的数据'
data_one_str = line.split(',')[len(line.split(','))-2]
data_two_str = line.split(',')[len(line.split(','))-1]
if len(data_one_str) < 6:
z = len(data_one_str)
data_one_str = data_one_str + ',' + data_two_str[0:min(200,len(data_two_str))]
else:
data_one_str = data_one_str
if i==0:
continue
word_l = self.tokenizer.encode(data_one_str, add_special_tokens=False)
if len(word_l)<100:
while(len(word_l)!=100):
word_l.append(0)
else:
word_l = word_l[0:100]
word_l.append(102)
l = word_l
word_l = [101]
word_l.extend(l)
self.x_list.append(torch.tensor(word_l))
self.posi.append(torch.tensor([i for i in range(102)]))
with open(root + '/Train_DataSet_Label.csv',encoding='UTF-8') as f:
for i in range(self.data_num+1):
#print(i)
label_one = f.readline()[-2]
if i==0:
continue
label_one = int(label_one)
self.y_list.append(torch.tensor(label_one))
#训练集或者是测试集
if is_train == 1:
self.x_list = self.x_list[0:6000]
self.y_list = self.y_list[0:6000]
self.posi = self.posi[0:6000]
else:
self.x_list = self.x_list[6000:]
self.y_list = self.y_list[6000:]
self.posi = self.posi[6000:]
self.len = len(self.x_list)
def __getitem__(self, index):
return self.x_list[index], self.y_list[index],self.posi[index]
def __len__(self):
return self.len
感谢各位的阅读,以上就是“怎么使用pytorch框架”的内容了,经过本文的学习后,相信大家对怎么使用pytorch框架这一问题有了更深刻的体会,具体使用情况还需要大家实践验证。这里是创新互联,小编将为大家推送更多相关知识点的文章,欢迎关注!