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I'm relatively new to Pytorch and have been training an AutoEncoder model on the MNIST data set. Before training the model, I have three dataloaders for training-, validation- and test sets.

train_loader = DataLoader(train_set, batch_size=batch_size, shuffle=True)
valid_loader = DataLoader(valid_set, batch_size=batch_size, shuffle=True)
test_loader = DataLoader(test_set, batch_size=batch_size, shuffle=True)

# get minibatch
x_train, _ = next(iter(train_loader)) 
x_val, _ = next(iter(valid_loader))
x_test, _ = next(iter(test_loader))

The three minibatches have the following sizes:

torch.Size([128, 784])
torch.Size([128, 784])
torch.Size([128, 784])

However, when I run the training loop (in the validation phase), the shapes of validation data does not match and I get the following error:

ValueError: Using a target size (torch.Size([96, 784])) that is different to the input size (torch.Size([128, 784])) is deprecated.

The simple model looks as

class AE(nn.Module):
def __init__(self,latent_dim):
    super(AE, self).__init__()
    ### Encoder layers
    self.fc_enc1 = nn.Linear(784, 32)
    self.fc_enc2 = nn.Linear(32, 16)
    self.fc_enc3 = nn.Linear(16, latent_dim)
    
    ### Decoder layers
    self.fc_dec1 = nn.Linear(latent_dim, 16)
    self.fc_dec2 = nn.Linear(16,32)
    self.fc_dec3 = nn.Linear(32,784)

def encode(self, x):       
    z = F.relu(self.fc_enc1(x))
    z = F.relu(self.fc_enc2(z))
    z = F.relu(self.fc_enc3(z))
    
    return z

def decode(self, z):    
    xHat = F.relu(self.fc_dec1(z))
    xHat = F.relu(self.fc_dec2(xHat))
    xHat = F.sigmoid(self.fc_dec3(xHat))

    return xHat

def forward(self, x):
    ### Autoencoder returns the reconstruction and latent representation
    z = self.encode(x)
    
    ### decode z
    xHat = self.decode(z)
    return xHat, z 

The training loop looks as following:

AEmodel = AE(latent_dim).to(device)
optimizer = optim.Adam(AEmodel.parameters(), lr=lr)
loss_function = nn.BCELoss()

for epoch in range(1, epochs + 1):
AEmodel.train()
train_loss = 0
for batch_idx, (data, _) in enumerate(train_loader):
    data = data.float().to(device)
    optimizer.zero_grad()
    xHat, z = AEmodel(data)
    loss = loss_function(xHat, data)
    loss.backward()
    train_loss += loss.item()
    optimizer.step()

AEmodel.eval()
valid_loss = 0
with torch.no_grad():
    for i, (data, _) in enumerate(valid_loader):
        data = data.float().to(device)
        valid_loss += loss_function(xHat, data).item()

The error occurs in the last line of the above code. I have not been able to figure out, where the reshaping appears, which causes some mismatching. Am I blind and not seeing an obvious mistake??

1 Answer 1

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Intended or not, in your last loop xHat is constant, because it is not recomputed. It remains the last xHat from your train loop. So you compare xHat to data but they do not come from the same dataloader (they respectively come from train_loader and valid_loader), hence there is nothing enforcing them to have the same shape. I believe you want to recompute xHat at each iteration if your validation loop.

However, that is not the full explanation, because none of the shapes you pasted was (96, 784). I am quite sure it actually is the shape of xHat in your last loop, please just add a print statement there to confirm it. Since it's the last batch of your train_loader, its size is not necessarily equal to your batch size. This happens when the size of your dataset is not divisible by your batch size. Please have a look at the datloader documentation, in particular the drop_last option.

So either you add drop_last=True to your dataloaders (which will make the code run fine, but I am not sure you want it to work like that) or you re-compute xHat at each iteration of your validation loop to have a meaningful autoencoder validation loop.

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