I have looked Pytorch source code of MNIST dataset but it seems to read numpy array directly from binaries. How can I just create train_data and train_labels like it? I have already prepared images and txt with labels.
I have learned how to read image and label and write get_item and len, what really confused me is how to make train_data and train_labels, which is torch.Tensor. I tried to arrange them into python lists and convert to torch.Tensor but failed:
for index in range(0,len(self.files)): fn, label = self.files[index] img = self.loader(fn) if self.transform is not None: img = self.transform(img) train_data.append(img) self.train_data = torch.tensor(train_data)
ValueError: only one element tensors can be converted to Python scalars