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I’m not getting split when I use torch.utils.data.random_split.

I get correct numbers for train_size and val_size, but when I do random_split, both train_data and val_data get full_data. There is no split happening.

Please help me with this issue.

class DeviceLoader(Dataset):

def __init__(self, root_dir, train=True, transform=None):
    self.file_path = root_dir
    self.train = train
    self.transform = transform
    self.file_names = ['%s/%s'%(root,file) for root,_,files in os.walk(root_dir) for file in files]
    self.len = len(self.file_names)
    self.labels = {'BP_Raw_Images':0, 'DT_Raw_Images':1, 'GL_Raw_Images':2, 'PO_Raw_Images':3, 'WS_Raw_Images':4}

def __len__(self):
    return(len(self.file_names))

def __getitem__(self, idx):
    file_name = self.file_names[idx]
    device = file_name.split('/')[5]
    img = self.pil_loader(file_name)
    if(self.transform):
        img = self.transform(img)
    cat = self.labels[device]            
    if(self.train):
        return(img, cat)
    else:
        return(img, file_name)
full_data = DeviceLoader(root_dir=’/kaggle/input/devices/dataset/’, transform=transforms, train=True)
train_size = int(0.7*len(full_data))
val_size = len(full_data) - train_size
train_data, val_data = torch.utils.data.random_split(full_data,[train_size,val_size])

Expected result is to split the full_data into train_data(2000) and val_data(500). But instead, I get full_data(2500) in both train and val.

1 Answer 1

4

From the image below you could see, it actually makes a subset of data but the original dataset is still there. This might be confusing. I did the following on mnist dataset

train, validate, test = data.random_split(training_set, [50000, 10000, 10000])
print(len(train))
print(len(validate))
print(len(test))

output:

50000
10000
10000

enter image description here

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