2

I have the following pieces of code:

# Device configuration
device = torch.device('cuda:0' if torch.cuda.is_available() else 'cpu')
seed = 42
np.random.seed(seed)
torch.manual_seed(seed)

# split the dataset into validation and test sets
len_valid_set = int(0.1*len(dataset))
len_train_set = len(dataset) - len_valid_set

print("The length of Train set is {}".format(len_train_set))
print("The length of Test set is {}".format(len_valid_set))

train_dataset , valid_dataset,  = torch.utils.data.random_split(dataset , [len_train_set, len_valid_set])

# shuffle and batch the datasets
train_loader = torch.utils.data.DataLoader(train_dataset, batch_size=8, shuffle=True, num_workers=4)
test_loader = torch.utils.data.DataLoader(valid_dataset, batch_size=8, shuffle=True, num_workers=4)

print("LOADERS",
    len(dataloader),
    len(train_loader),
    len(test_loader))

The length of Train set is 720

The length of Test set is 80

LOADERS 267 90 10

mean = 0.0
std = 0.0
nb_samples = 0.0
for data in train_loader:
    images, landmarks = data["image"], data["landmarks"]
    batch_samples = images.size(0)

    images_data = images.view(batch_samples, images.size(1), -1)
    mean += images_data.mean(2).sum(0)
    std += images_data.std(2).sum(0)
    nb_samples += batch_samples

mean /= nb_samples
std /= nb_samples

And I get this error:

---------------------------------------------------------------------------
RuntimeError                              Traceback (most recent call last)
<ipython-input-23-9e47ddfeff5e> in <module>
      7 
      8     images_data = images.view(batch_samples, images.size(1), -1)
----> 9     mean += images_data.mean(2).sum(0)
     10     std += images_data.std(2).sum(0)
     11     nb_samples += batch_samples

RuntimeError: Can only calculate the mean of floating types. Got Byte instead.

The fixed code is taken from https://stackoverflow.com/a/64349380/2414957 it worked for dataloader but not train_loader

Also, these are the results of

print(type(images_data))
print(images_data)

We have:

<class 'torch.Tensor'>
tensor([[[74, 74, 74,  ..., 63, 63, 63],
         [73, 73, 73,  ..., 61, 61, 61],
         [75, 75, 75,  ..., 61, 61, 61],
         ...,
         [74, 74, 74,  ..., 38, 38, 38],
         [75, 75, 75,  ..., 39, 39, 39],
         [72, 72, 72,  ..., 38, 38, 38]],

        [[75, 75, 75,  ..., 65, 65, 65],
         [75, 75, 75,  ..., 62, 62, 62],
         [75, 75, 75,  ..., 63, 63, 63],
         ...,
         [71, 71, 71,  ..., 39, 39, 39],
         [74, 74, 74,  ..., 38, 38, 38],
         [73, 73, 73,  ..., 37, 37, 37]],

        [[72, 72, 72,  ..., 62, 62, 62],
         [74, 74, 74,  ..., 63, 63, 63],
         [75, 75, 75,  ..., 61, 61, 61],
         ...,
         [74, 74, 74,  ..., 38, 38, 38],
         [74, 74, 74,  ..., 39, 39, 39],
         [73, 73, 73,  ..., 37, 37, 37]],

        ...,

        [[75, 75, 75,  ..., 63, 63, 63],
         [73, 73, 73,  ..., 63, 63, 63],
         [74, 74, 74,  ..., 62, 62, 62],
         ...,
         [74, 74, 74,  ..., 38, 38, 38],
         [73, 73, 73,  ..., 39, 39, 39],
         [73, 73, 73,  ..., 37, 37, 37]],

        [[73, 73, 73,  ..., 62, 62, 62],
         [75, 75, 75,  ..., 62, 62, 62],
         [74, 74, 74,  ..., 63, 63, 63],
         ...,
         [73, 73, 73,  ..., 39, 39, 39],
         [74, 74, 74,  ..., 38, 38, 38],
         [74, 74, 74,  ..., 38, 38, 38]],

        [[74, 74, 74,  ..., 62, 62, 62],
         [74, 74, 74,  ..., 63, 63, 63],
         [74, 74, 74,  ..., 62, 62, 62],
         ...,
         [74, 74, 74,  ..., 38, 38, 38],
         [73, 73, 73,  ..., 38, 38, 38],
         [72, 72, 72,  ..., 36, 36, 36]]], dtype=torch.uint8)

When I tried

images_data = images_data.float()
mean += images_data.mean(2).sum(0)

I didn't get a tensor for 3 values for mean and 3 values for std like I expected but got a very large tensor (each torch.Size([600]))

enter image description here

1

As the error says, your images_data is a ByteTensor, i.e. has dtype uint8. Torch refuses to compute the mean of integers. You can convert the data to float with:

(images_data * 1.0).mean(2)

Or

torch.Tensor.float(images_data).mean(2)
1
  • well it worked similarly as float I have used and gives me a tensor of 600 values for mean instead of tensor of 3 elements – Mona Jalal Oct 14 '20 at 22:23

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