# How does the “view” method work in PyTorch?

I am confused about the method `view()` in the following code snippet.

``````class Net(nn.Module):
def __init__(self):
super(Net, self).__init__()
self.conv1 = nn.Conv2d(3, 6, 5)
self.pool  = nn.MaxPool2d(2,2)
self.conv2 = nn.Conv2d(6, 16, 5)
self.fc1   = nn.Linear(16*5*5, 120)
self.fc2   = nn.Linear(120, 84)
self.fc3   = nn.Linear(84, 10)

def forward(self, x):
x = self.pool(F.relu(self.conv1(x)))
x = self.pool(F.relu(self.conv2(x)))
x = x.view(-1, 16*5*5)
x = F.relu(self.fc1(x))
x = F.relu(self.fc2(x))
x = self.fc3(x)
return x

net = Net()
``````

My confusion is regarding the following line.

``````x = x.view(-1, 16*5*5)
``````

What does `tensor.view()` function do? I have seen its usage in many places, but I can't understand how it interprets its parameters.

What happens if I give negative values as parameters to the `view()` function? For example, what happens if I call, `tensor_variable.view(1, 1, -1)`?

Can anyone explain the main principle of `view()` function with some examples?

The view function is meant to reshape the tensor.

Say you have a tensor

``````import torch
a = torch.range(1, 16)
``````

`a` is a tensor that has 16 elements from 1 to 16(included). If you want to reshape this tensor to make it a `4 x 4` tensor then you can use

``````a = a.view(4, 4)
``````

Now `a` will be a `4 x 4` tensor. Note that after the reshape the total number of elements need to remain the same. Reshaping the tensor `a` to a `3 x 5` tensor would not be appropriate.

### What is the meaning of parameter -1?

If there is any situation that you don't know how many rows you want but are sure of the number of columns, then you can specify this with a -1. (Note that you can extend this to tensors with more dimensions. Only one of the axis value can be -1). This is a way of telling the library: "give me a tensor that has these many columns and you compute the appropriate number of rows that is necessary to make this happen".

This can be seen in the neural network code that you have given above. After the line `x = self.pool(F.relu(self.conv2(x)))` in the forward function, you will have a 16 depth feature map. You have to flatten this to give it to the fully connected layer. So you tell pytorch to reshape the tensor you obtained to have specific number of columns and tell it to decide the number of rows by itself.

Drawing a similarity between numpy and pytorch, `view` is similar to numpy's reshape function.

• "view is similar to numpy's reshape" -- why didn't they just call it `reshape` in PyTorch?! – MaxB Apr 30 '17 at 1:53
• @MaxB Unlike reshape, the new tensor returned by "view" shares the underlying data with the original tensor, so it is really a view into the old tensor instead of creating a brand new one. – qihqi May 4 '17 at 5:28
• @qihqi "Unlike reshape" Incorrect. – MaxB May 5 '17 at 23:19
• @blckbird "reshape always copies memory. view never copies memory." github.com/torch/cutorch/issues/98 – devinbost Jul 26 '17 at 16:37
• @CharlieParker that will flatten out the tensor. – Kashyap Nov 8 '17 at 7:47

Let's do some examples, from simpler to more difficult.

1. The `view` method returns a tensor with the same data as the `self` tensor (which means that the returned tensor has the same number of elements), but with a different shape. For example:

``````a = torch.arange(1, 17)  # a's shape is (16,)

a.view(4, 4) # output below
1   2   3   4
5   6   7   8
9  10  11  12
13  14  15  16
[torch.FloatTensor of size 4x4]

a.view(2, 2, 4) # output below
(0 ,.,.) =
1   2   3   4
5   6   7   8

(1 ,.,.) =
9  10  11  12
13  14  15  16
[torch.FloatTensor of size 2x2x4]
``````
2. Assuming that `-1` is not one of the parameters, when you multiply them together, the result must be equal to the number of elements in the tensor. If you do: `a.view(3, 3)`, it will raise a `RuntimeError` because shape (3 x 3) is invalid for input with 16 elements. In other words: 3 x 3 does not equal 16 but 9.

3. You can use `-1` as one of the parameters that you pass to the function, but only once. All that happens is that the method will do the math for you on how to fill that dimension. For example `a.view(2, -1, 4)` is equivalent to `a.view(2, 2, 4)`. [16 / (2 x 4) = 2]

4. Notice that the returned tensor shares the same data. If you make a change in the "view" you are changing the original tensor's data:

``````b = a.view(4, 4)
b[0, 2] = 2
a[2] == 3.0
False
``````
5. Now, for a more complex use case. The documentation says that each new view dimension must either be a subspace of an original dimension, or only span d, d + 1, ..., d + k that satisfy the following contiguity-like condition that for all i = 0, ..., k - 1, stride[i] = stride[i + 1] x size[i + 1]. Otherwise, `contiguous()` needs to be called before the tensor can be viewed. For example:

``````a = torch.rand(5, 4, 3, 2) # size (5, 4, 3, 2)
a_t = a.permute(0, 2, 3, 1) # size (5, 3, 2, 4)

# The commented line below will raise a RuntimeError, because one dimension
# spans across two contiguous subspaces
# a_t.view(-1, 4)

a_t.contiguous().view(-1, 4)

# To see why the first one does not work and the second does,
# compare a.stride() and a_t.stride()
a.stride() # (24, 6, 2, 1)
a_t.stride() # (24, 2, 1, 6)
``````

Notice that for `a_t`, stride[0] != stride[1] x size[1] since 24 != 2 x 3

• Point 5 is a bit complicated. To help understanding, after `permute`, elements in `a_t` are not "contiguous" in memory, hence failing the call `a_t.view(-1, 4)` – Milo Lu Dec 3 '18 at 3:53

I figured it out that `x.view(-1, 16 * 5 * 5)` is equivalent to `x.flatten(1)`, where the parameter 1 indicates the flatten process starts from the 1st dimension(not flattening the 'sample' dimension) As you can see, the latter usage is semantically more clear and easier to use, so I prefer `flatten()`.

• It would be good to explain how your answer relates to and solves the original question. – Jon Scott Feb 14 at 10:10