对Pytorch中nn.ModuleList 和 nn.Sequential详解

发布时间:2020-09-04 05:47:05 作者:ustc_lijia
来源:脚本之家 阅读:537

简而言之就是,nn.Sequential类似于Keras中的贯序模型,它是Module的子类,在构建数个网络层之后会自动调用forward()方法,从而有网络模型生成。而nn.ModuleList仅仅类似于pytho中的list类型,只是将一系列层装入列表,并没有实现forward()方法,因此也不会有网络模型产生的副作用。

需要注意的是,nn.ModuleList接受的必须是subModule类型,例如:

nn.ModuleList(
      [nn.ModuleList([Conv(inp_dim + j * increase, oup_dim, 1, relu=False, bn=False) for j in range(5)]) for i in
       range(nstack)])

其中,二次嵌套的list内部也必须额外使用一个nn.ModuleList修饰实例化,否则会无法识别类型而报错!

摘录自

nn.ModuleList is just like a Python list. It was designed to store any desired number of nn.Module's. It may be useful, for instance, if you want to design a neural network whose number of layers is passed as input:

class LinearNet(nn.Module):
 def __init__(self, input_size, num_layers, layers_size, output_size):
   super(LinearNet, self).__init__()
 
   self.linears = nn.ModuleList([nn.Linear(input_size, layers_size)])
   self.linears.extend([nn.Linear(layers_size, layers_size) for i in range(1, self.num_layers-1)])
   self.linears.append(nn.Linear(layers_size, output_size)

nn.Sequential allows you to build a neural net by specifying sequentially the building blocks (nn.Module's) of that net. Here's an example:

class Flatten(nn.Module):
 def forward(self, x):
  N, C, H, W = x.size() # read in N, C, H, W
  return x.view(N, -1)
 
simple_cnn = nn.Sequential(
      nn.Conv2d(3, 32, kernel_size=7, stride=2),
      nn.ReLU(inplace=True),
      Flatten(), 
      nn.Linear(5408, 10),
     )

In nn.Sequential, the nn.Module's stored inside are connected in a cascaded way. For instance, in the example that I gave, I define a neural network that receives as input an image with 3 channels and outputs 10 neurons. That network is composed by the following blocks, in the following order: Conv2D -> ReLU -> Linear layer. Moreover, an object of type nn.Sequential has a forward() method, so if I have an input image x I can directly call y = simple_cnn(x) to obtain the scores for x. When you define an nn.Sequential you must be careful to make sure that the output size of a block matches the input size of the following block. Basically, it behaves just like a nn.Module

On the other hand, nn.ModuleList does not have a forward() method, because it does not define any neural network, that is, there is no connection between each of the nn.Module's that it stores. You may use it to store nn.Module's, just like you use Python lists to store other types of objects (integers, strings, etc). The advantage of using nn.ModuleList's instead of using conventional Python lists to store nn.Module's is that Pytorch is “aware” of the existence of the nn.Module's inside an nn.ModuleList, which is not the case for Python lists. If you want to understand exactly what I mean, just try to redefine my class LinearNet using a Python list instead of a nn.ModuleList and train it. When defining the optimizer() for that net, you'll get an error saying that your model has no parameters, because PyTorch does not see the parameters of the layers stored in a Python list. If you use a nn.ModuleList instead, you'll get no error.

以上这篇对Pytorch中nn.ModuleList 和 nn.Sequential详解就是小编分享给大家的全部内容了,希望能给大家一个参考,也希望大家多多支持亿速云。

推荐阅读:
  1. Pytorch如何转tflite
  2. PyTorch如何实现ResNet50、ResNet101和ResNet152

免责声明:本站发布的内容(图片、视频和文字)以原创、转载和分享为主,文章观点不代表本网站立场,如果涉及侵权请联系站长邮箱:is@yisu.com进行举报,并提供相关证据,一经查实,将立刻删除涉嫌侵权内容。

pytorch nn.modulelist nn.sequential

上一篇:利用angularjs1.4制作的简易滑动门效果

下一篇:Pytorch中膨胀卷积的用法详解

相关阅读

您好,登录后才能下订单哦!

密码登录
登录注册
其他方式登录
点击 登录注册 即表示同意《亿速云用户服务条款》