15、PyTorch教程--- Convents简介

修道院是关于从头开始构建CNN模型的。网络架构将包含以下步骤的组合 -

Conv2d(卷积层)
MaxPool2d(最大池化层)
Rectified Linear Unit(修正线性单元)
View(展平层)
Linear Layer(全连接层)
训练模型
训练模型的过程与图像分类问题相同。以下代码片段完成了在提供的数据集上训练模型的步骤 -

def fit(epoch,model,data_loader,phase 
= 'training',volatile = False):
   if phase == 'training':
      model.train()
   if phase == 'training':
      model.train()
   if phase == 'validation':
      model.eval()
   volatile=True
   running_loss = 0.0
   running_correct = 0
   for batch_idx , (data,target) in enumerate(data_loader):
      if is_cuda:
         data,target = data.cuda(),target.cuda()
         data , target = Variable(data,volatile),Variable(target)
      if phase == 'training':
         optimizer.zero_grad()
         output = model(data)
       

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转载自blog.csdn.net/Knowledgebase/article/details/133311959