I need to write a file with the result of the data test of a Convolutional Neural Network that I trained. The data include speech data collection. The file format needs to be "file name, prediction", but I am having a hard time to extract the file name. I load the data like this:

import torchvision
from torchvision import transforms
from torch.utils.data import DataLoader


trans = transforms.Compose([
    transforms.Normalize((0.1307,), (0.3081,))

test_dataset = torchvision.datasets.MNIST(

test_loader = DataLoader(dataset=test_dataset, batch_size=1, shuffle=False)

and I am trying to write to the file as follows:

f = open("test_y", "w")
with torch.no_grad():
    for i, (images, labels) in enumerate(test_loader, 0):
        outputs = model(images)
        _, predicted = torch.max(outputs.data, 1)
        file = os.listdir(TEST_DATA_PATH + "/all")[i]
        format = file + ", " + str(predicted.item()) + '\n'

The problem with os.listdir(TESTH_DATA_PATH + "/all")[i] is that it is not synchronized with the loaded files order of test_loader. What can I do?

3 Answers 3


Well, it depends on how your Dataset is implemented. For instance, in the torchvision.datasets.MNIST(...) case, you cannot retrieve the filename simply because there is no such thing as the filename of a single sample (MNIST samples are loaded in a different way).

As you did not show your Dataset implementation, I'll tell you how this could be done with the torchvision.datasets.ImageFolder(...) (or any torchvision.datasets.DatasetFolder(...)):

f = open("test_y", "w")
with torch.no_grad():
    for i, (images, labels) in enumerate(test_loader, 0):
        outputs = model(images)
        _, predicted = torch.max(outputs.data, 1)
        sample_fname, _ = test_loader.dataset.samples[i]
        f.write("{}, {}\n".format(sample_fname, predicted.item()))

You can see that the path of the file is retrieved during the __getitem__(self, index), especifically here.

If you implemented your own Dataset (and perhaps would like to support shuffle and batch_size > 1), then I would return the sample_fname on the __getitem__(...) call and do something like this:

for i, (images, labels, sample_fname) in enumerate(test_loader, 0):
    # [...]

This way you wouldn't need to care about shuffle. And if the batch_size is greater than 1, you would need to change the content of the loop for something more generic, e.g.:

f = open("test_y", "w")
for i, (images, labels, samples_fname) in enumerate(test_loader, 0):
    outputs = model(images)
    pred = torch.max(outputs, 1)[1]
        ", ".join(x)
        for x in zip(map(str, pred.cpu().tolist()), samples_fname)
    ]) + "\n")
  • 1
    thanks for the hint! i can read filename list from datasets.ImageFolder.samples[i][0] Dec 3, 2019 at 2:26
  • I used your code but i am challenged to get filename for all of my images. could you please have a look here stackoverflow.com/questions/71430015/… ? thanks a lot
    – Mona Jalal
    Mar 10 at 20:24
  • @MonaJalal this first solution only works if your situattion is the same as the OP: batch_size=1, shuffle=False. Otherwise, you have to wrap your dataset with a custom one, as I suggested in the answer, returning sample_fname in your __getitem__(...).
    – Berriel
    Mar 10 at 21:26

In general case DataLoader is there to provide you the batches from the Dataset(s) it has inside.

AS @Barriel mentioned in case of single/multi-label classification problems, the DataLoader doesn't have image file name, just the tensors representing the images , and the classes / labels.

However, DataLoader constructor when loading objects can take small things (together with the Dataset you may pack the targets/labels and the file names if you like) , even a dataframe

This way, the DataLoader may somehow grab that what you need.


If you using PyCharm or any IDE that has debug tool, let use it to take a look inside your data_loader, hope you can see a list of filenames, like my case.

In my case, My data_loader was created by mmsegmentation. Data_loader created by mmsegmentation

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