1

I was trying to track the error of the whole data set and compute the error of the whole data set in pytorch. I wrote the following (reproducible example and fully contained) in cifar10 pytorch 0.3.1:

import torch
from torch.autograd import Variable
import torch.optim as optim

import torchvision
import torchvision.transforms as transforms

from math import inf

from pdb import set_trace as st

def error_criterion(outputs,labels):
    max_vals, max_indices = torch.max(outputs,1)
    train_error = (max_indices != labels).sum().data[0]/max_indices.size()[0]
    return train_error

def evalaute_mdl_data_set(loss,error,net,dataloader,enable_cuda,iterations=inf):
    '''
    Evaluate the error of the model under some loss and error with a specific data set.
    '''
    running_loss,running_error = 0,0
    for i,data in enumerate(dataloader):
        if i >= iterations:
            break
        inputs, labels = extract_data(enable_cuda,data,wrap_in_variable=True)
        outputs = net(inputs)
        running_loss += loss(outputs,labels).data[0]
        running_error += error(outputs,labels)
    return running_loss/(i+1),running_error/(i+1)

def extract_data(enable_cuda,data,wrap_in_variable=False):
    inputs, labels = data
    if enable_cuda:
        inputs, labels = inputs.cuda(), labels.cuda() #TODO potential speed up?
    if wrap_in_variable:
        inputs, labels = Variable(inputs), Variable(labels)
    return inputs, labels

def train_and_track_stats(enable_cuda, nb_epochs, trainloader,testloader, net,optimizer,criterion,error_criterion, iterations=inf):
    ''' Add stats before training '''
    train_loss_epoch, train_error_epoch = evalaute_mdl_data_set(criterion, error_criterion, net, trainloader, enable_cuda, iterations)
    test_loss_epoch, test_error_epoch = evalaute_mdl_data_set(criterion, error_criterion, net, testloader, enable_cuda, iterations)
    print(f'[-1, -1], (train_loss: {train_loss_epoch}, train error: {train_error_epoch}) , (test loss: {test_loss_epoch}, test error: {test_error_epoch})')
    ##
    ''' Start training '''
    print('about to start training')
    for epoch in range(nb_epochs):  # loop over the dataset multiple times
        running_train_loss,running_train_error = 0.0,0.0
        for i,data_train in enumerate(trainloader):
            ''' zero the parameter gradients '''
            optimizer.zero_grad()
            ''' train step = forward + backward + optimize '''
            inputs, labels = extract_data(enable_cuda,data_train,wrap_in_variable=True)
            outputs = net(inputs)
            loss = criterion(outputs, labels)
            loss.backward()
            optimizer.step()
            running_train_loss += loss.data[0]
            running_train_error += error_criterion(outputs,labels)
        ''' End of Epoch: collect stats'''
        train_loss_epoch, train_error_epoch = running_train_loss/(i+1), running_train_error/(i+1)
        #train_loss_epoch, train_error_epoch = evalaute_mdl_data_set(criterion,error_criterion,net,trainloader,enable_cuda,iterations)
        test_loss_epoch, test_error_epoch = evalaute_mdl_data_set(criterion,error_criterion,net,testloader,enable_cuda,iterations)
        print(f'[{epoch}, {i+1}], (train_loss: {train_loss_epoch}, train error: {train_error_epoch}) , (test loss: {test_loss_epoch}, test error: {test_error_epoch})')
    return train_loss_epoch, train_error_epoch, test_loss_epoch, test_error_epoch

class Flatten(torch.nn.Module):
    def forward(self, input):
        return input.view(input.size(0), -1)

def main():
    enable_cuda = True
    print('running main')
    num_workers = 0
    ''' Get Data set '''
    batch_size_test = 10000
    batch_size_train = 10000
    data_path = './data'
    transform = [transforms.ToTensor(),transforms.Normalize( (0.5, 0.5, 0.5), (0.5, 0.5, 0.5) )]
    transform = transforms.Compose(transform)
    trainset = torchvision.datasets.CIFAR10(root=data_path, train=True,download=False, transform=transform)
    trainloader = torch.utils.data.DataLoader(trainset, batch_size=batch_size_train,shuffle=True, num_workers=num_workers)
    testset = torchvision.datasets.CIFAR10(root=data_path, train=False,download=False, transform=transform)
    testloader = torch.utils.data.DataLoader(testset, batch_size=batch_size_test,shuffle=False, num_workers=num_workers)
    ''' Get model '''
    net = torch.nn.Sequential(
        torch.nn.Conv2d(3,13,5), #(in_channels, out_channels, kernel_size),
        Flatten(),
        torch.nn.Linear(28*28*13, 13),
        torch.nn.Linear(13, 10)
    )
    net.cuda()
    ''' Train '''
    nb_epochs = 10
    lr = 0.1
    err_criterion = error_criterion
    criterion = torch.nn.CrossEntropyLoss()
    optimizer = optim.SGD(net.parameters(), lr=lr, momentum=0.0)
    train_and_track_stats(enable_cuda, nb_epochs, trainloader,testloader, net,optimizer,criterion,err_criterion, iterations=inf)
    ''' Done '''
    print('Done')

if __name__ == '__main__':
    main()

When I run it I get the following error:

python my_cifar10.py
running main
[-1, -1], (train_loss: 2.3172860145568848, train error: 0.0054) , (test loss: 2.317185878753662, test error: 0.0038)
about to start training
[0, 5], (train_loss: 2.22599835395813, train error: 0.015160000000000002) , (test loss: 2.0623881816864014, test error: 0.0066)
[1, 5], (train_loss: 2.014406657218933, train error: 0.00896) , (test loss: 1.9619578123092651, test error: 0.0195)
[2, 5], (train_loss: 1.9428715705871582, train error: 0.01402) , (test loss: 1.918603539466858, test error: 0.0047)
[3, 5], (train_loss: 1.9434458494186402, train error: 0.01192) , (test loss: 1.9194672107696533, test error: 0.0125)
[4, 5], (train_loss: 1.8804980754852294, train error: 0.00794) , (test loss: 1.8549214601516724, test error: 0.004)
[5, 5], (train_loss: 1.8573726177215577, train error: 0.010159999999999999) , (test loss: 1.8625996112823486, test error: 0.0158)
[6, 5], (train_loss: 1.8454653739929199, train error: 0.01524) , (test loss: 1.8155865669250488, test error: 0.0122)
[7, 5], (train_loss: 1.8140610456466675, train error: 0.01066) , (test loss: 1.808283805847168, test error: 0.0101)
[8, 5], (train_loss: 1.8036894083023072, train error: 0.00832) , (test loss: 1.799634575843811, test error: 0.007)
[9, 5], (train_loss: 1.8023016452789307, train error: 0.0077399999999999995) , (test loss: 1.8030155897140503, test error: 0.0114)
Done

Clearly it has to be wrong cuz the test error is nearly zero with a model that is ridiculously small and simple (1 conv 2 fcs).

the code seems so simple that I can't figure out what is going wrong. I've been doing stuff and changing things for a few days now. Any new suggestions what to try?

3
  • I can't reproduce the error. I was just testing on cpu and got [-1, -1], (train_loss: 2.3224891445520894, train error: 0.8735254156010229) , (test loss: 2.3210103873965107, test error: 0.8691653481012658) about to start training [0, 391], (train_loss: 1.8232954066732656, train error: 0.6340393222506394) , (test loss: 1.7517535837390754, test error: 0.6045292721518988) .... The loss makes sense: If you have 10 classes with random guessing you will be right ~ 1/10 of the time resulting in a crossentropy loss of ln(-1/10) = 2.3. So the error should be in the error_criterion function.
    – McLawrence
    Apr 13, 2018 at 8:06
  • I coud not reproduce before, because I changed the batch size to 128
    – McLawrence
    Apr 13, 2018 at 8:52
  • @McLawrence it seems to be an overflow error cuz of byte tensor or something. Related post: discuss.pytorch.org/t/… thanks for the help! Apr 13, 2018 at 19:13

2 Answers 2

2

If your batch size is too large, with your code the values of

(max_indices == labels).sum()
(max_indices != labels).sum()

do not add up to the batch size. This is due to the fact, that you use a torch.ByteTensor which will overflow for values > 255 when summing.

using

(max_indices != labels).int().sum()

will resolve the issue by casting the Tensor to int before summing.

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  • interesting! makes me feel that perhaps this is not the standard way to compute the error of a model? Do you know what is the standard way? I also assume that its not the fastest? Why do I need to do all this re-casting business? Apr 13, 2018 at 19:15
  • what does .init() do? Apr 13, 2018 at 19:19
  • @CharlieParker: I think your way of computing the error is a legitimate way. Which .init()do you mean? do you mean .int()?
    – McLawrence
    Apr 16, 2018 at 18:59
  • oh! Yea I mean .int() Apr 16, 2018 at 18:59
  • 1
    .int() just recasts the tensor to int. It is not important if you cast to int or float here (as you did in your answer) because in python3 division between two integers results in a float.
    – McLawrence
    Apr 16, 2018 at 19:17
0

As one solution on pytorch forum suggested a good idea is to recast things:

def error_criterion(outputs,labels):
    max_vals, max_indices = torch.max(outputs,1)
    train_error = (max_indices != labels).float().sum()/max_indices.size()[0]
    return train_error

The comparision (max_indices != labels) returns a torch.ByteTensor, which can overflow using your batch size of 10000. Adding a .floatto this line (max_indices != labels).float().sum() seems to make things go away.

Things seem fine now:

$ python my_cifar10.py
running main
[-1, -1], (train_loss: 2.3301061153411866, train error: 0.9383399844169616) , (test loss: 2.3303537368774414, test error: 0.9396999478340149)
about to start training
[0, 5], (train_loss: 2.1861009120941164, train error: 0.8279399871826172) , (test loss: 2.044313907623291, test error: 0.7494999766349792)
[1, 5], (train_loss: 2.009986090660095, train error: 0.7244199872016907) , (test loss: 1.9966429471969604, test error: 0.7224999666213989)
[2, 5], (train_loss: 2.0178127527236938, train error: 0.712559974193573) , (test loss: 1.9238039255142212, test error: 0.6651999950408936)
[3, 5], (train_loss: 1.9113547801971436, train error: 0.6625399827957154) , (test loss: 1.8861572742462158, test error: 0.6486999988555908)
[4, 5], (train_loss: 1.8807836771011353, train error: 0.6485799789428711) , (test loss: 1.8632378578186035, test error: 0.6452999711036682)
[5, 5], (train_loss: 1.8648049116134644, train error: 0.6440199613571167) , (test loss: 1.875121831893921, test error: 0.652999997138977)
[6, 5], (train_loss: 1.8700860738754272, train error: 0.6511399745941162) , (test loss: 1.830731987953186, test error: 0.633899986743927)
[7, 5], (train_loss: 1.8432915449142455, train error: 0.6376399874687195) , (test loss: 1.8518757820129395, test error: 0.6491999626159668)
[8, 5], (train_loss: 1.830060887336731, train error: 0.634719979763031) , (test loss: 1.7997492551803589, test error: 0.6247000098228455)
[9, 5], (train_loss: 1.8012208938598633, train error: 0.6230199933052063) , (test loss: 1.8045140504837036, test error: 0.628600001335144)
Done

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