“Pytorch”的版本间差异
		
		
		
		
		
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无编辑摘要  | 
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*torch.clamp(input, min=None, max=None, *, out=None) → Tensor  | 
  *torch.clamp(input, min=None, max=None, *, out=None) → Tensor  | 
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:Clamps all elements in input into the range [ min, max ]. Letting min_value and max_value be min and max, respectively  | 
  :Clamps all elements in input into the range [ min, max ]. Letting min_value and max_value be min and max, respectively  | 
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*torch.eye(n, m=None, out=None)  | 
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:返回一个2维张量,对角线位置全1,其它位置全0  | 
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==Tensor==  | 
  ==Tensor==  | 
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2021年10月17日 (日) 08:26的版本
网络初始化
- Xavier and Kaiming initialization [4]
 
函数
- torch.clamp(input, min=None, max=None, *, out=None) → Tensor
 
- Clamps all elements in input into the range [ min, max ]. Letting min_value and max_value be min and max, respectively
 
- torch.eye(n, m=None, out=None)
 
- 返回一个2维张量,对角线位置全1,其它位置全0
 
Tensor
- cpu() numpy() detach() item() [5]
 
- 注意cuda上面的变量类型只能是tensor,不能是其他
 
torchvision
- PyTorch框架中有一个非常重要且好用的包:torchvision,该包主要由3个子包组成,分别是:torchvision.datasets、torchvision.models、torchvision.transforms [6]
 - __all__ = ["Compose", "ToTensor", "ToPILImage", "Normalize", "Resize",
 
"Scale", "CenterCrop", "Pad", "Lambda", "RandomCrop", "RandomHorizontalFlip", "RandomVerticalFlip", "RandomResizedCrop", "RandomSizedCrop", "FiveCrop", "TenCrop","LinearTransformation", "ColorJitter", "RandomRotation", "Grayscale", "RandomGrayscale"]