What does `-1` of `view ()` mean in PyTorch? - Stack Overflow

So a.view(-1,1) will result in a vector with the dimension 17x1 because there are 17 values - so v.view(1,-1) will result in a 1x17 vector.. . – Yuna Commented Jun 11, 2018 at 7:31

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)
Tensor Views — PyTorch 2.7 documentation

Typically a PyTorch op returns a new tensor as output, e.g. add(). But in case of view ops, outputs are views of input tensors to avoid unnecessary data copy. No data movement occurs when creating a view, view tensor just changes the way it interprets the same data. Taking a view of contiguous tensor could potentially produce a non-contiguous ...

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)
python pytorch中 .view()函数讲解 - CSDN博客

文章浏览阅读5.2w次,点赞159次,收藏342次。本文介绍了PyTorch中.view()方法的使用,包括手动调整Tensor尺寸和使用-1作为参数自动调整尺寸。通过实例展示了.view()如何等效于reshape和resize,以及如何在保持元素总数不变的情况下灵活变换数组形状。

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)
What does .view(-1) do? - PyTorch Forums

The view(-1) operation flattens the tensor, if it wasn’t already flattened as seen here:. x = torch.randn(2, 3, 4) print(x.shape) > torch.Size([2, 3, 4]) x = x.view(-1) print(x.shape) > torch.Size([24]) It’ll modify the tensor metadata and will not create a copy of it.

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)
How Does the "View" Method Work in Python PyTorch?

tensor.view(*shape) tensor: The original tensor you want to reshape. shape: The desired shape of the output tensor. This can be a tuple of integers or a series of comma-separated integers representing the new shape. Practical Examples of .view() in PyTorch Example 1: Basic Reshaping. Suppose you have a 2D tensor and want to reshape it into a 1D ...

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)
一文读懂 Pytorch 中的 Tensor View 机制 - 知乎 - 知乎专栏

而 tensor view 机制的本质就是通过操作这三个属性,实现以不同的视角来解析同一段连续的内存。 下一节,将会逐个解读 Pytorch 中常用的一些 tensor view 操作。通过代码结合图示的方式,展示上述三个属性是如何推导得到的。 常用的 5 个 View op 详解 1. diagonal. 官方 ...

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)
PyTorch Tensor.view() method (with example) - Sling Academy

Where: self: The input tensor that you want to reshape. *shape: Either a torch.Size object or a sequence of integers that specify the desired shape of the output tensor. You can also use -1 to infer the size of a dimension from the other dimensions.; However, Tensor.view() only works on contiguous tensors, which are tensors that are stored in contiguous memory.

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)
PyTorch View Tutorial [With 11 Examples] - Python Guides

The PyTorch view() function returns a new tensor with a similar number of data and should have a similar number of ... c = s.transpose(0, 1) # View tensors might be non-contiguous. c.is_contiguous() # Here we get a contiguous tensor by calling contiguous() function # And copying the data when c is not contiguous. m = c.contiguous

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)
torch.Tensor.view — PyTorch 2.7 documentation

view (dtype) → Tensor. Returns a new tensor with the same data as the self tensor but of a different dtype.. If the element size of dtype is different than that of self.dtype, then the size of the last dimension of the output will be scaled proportionally.For instance, if dtype element size is twice that of self.dtype, then each pair of elements in the last dimension of self will be combined ...

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)
[Pytorch] Contiguous vs Non-Contiguous Tensor / View - Medium

The tensor data is stored as 1D data sequence. Technically, .view() is an instruction that tells the machine how to stride over the 1D data sequence and provide a tensor view with the given ...

Visit visit

Your search and this result

  • The search term appears in the result: pytorch tensor view 1
  • The website matches one or more of your search terms
  • Other websites that include your search terms link to this result
  • The result is in English (Singapore)