In this article, we will discuss how to load different kinds of data in PyTorch.
For demonstration purposes, Pytorch comes with 3 divisions of datasets namely torchaudio, torchvision, and torchtext. We can leverage these demo datasets to understand how to load Sound, Image, and text data using Pytorch.
Torchaudio Dataset
Loading demo yes_no audio dataset in torchaudio using Pytorch.
Yes_No dataset is an audio waveform dataset, which has values stored in form of tuples of 3 values namely waveform, sample_rate, labels, where waveform represents the audio signal, sample_rate represents the frequency and label represent whether Yes or No.
- Import the torch and torchaudio packages. (Install using pip install torchaudio, if necessary)
- Use the torchaudio function with the datasets accessor, followed by the dataset name.
- Now, pass the path in which the dataset has to be stored and specify download = True to download the dataset. Here, ‘./’ specifies the root directory.
- Now, iterate over the loaded dataset using a for loop, and access the 3 values stored in a tuple to see the sample of the dataset.
To load your custom data:
Syntax: torch.utils.data.DataLoader(data, batch_size, shuffle)
Parameters:
- data – audio dataset or the path to the audio dataset
- batch_size – for large dataset, batch_size specifies how much data to load at once
- shuffle – a bool type. Setting it to True will shuffle the data.
Python3
# import the torch and torchaudio dataset packages. import torch import torchaudio # access the dataset in torchaudio package using # datasets followed by dataset name. # './' makes sure that the dataset is stored # in a root directory. # download = True ensures that the # data gets downloaded yesno_data = torchaudio.datasets.YESNO( './' , download = True ) # loading the first 5 data from yesno_data for i in range ( 5 ): waveform, sample_rate, labels = yesno_data[i] print ( "Waveform: {}\nSample rate: {}\nLabels: {}" . format ( waveform, sample_rate, labels)) |
Output:
Torchvision Dataset
Loading demo ImageNet vision dataset in torchvision using Pytorch. Click here to download the dataset by signing up.
Python3
# import the torch and # torchvision dataset packages. import torch import torchvision # access the dataset in torchvision package using # .datasets followed by dataset name. imagenet_data = torchvision.datasets.ImageNet( 'path/to/imagenet_root/' ) |
Code Explanation:
- The procedure is almost the same as loading the audio data.
- Here, instead of torchaudio, torchvision has to be imported.
- Use the torchvision function with the datasets accessor, followed by the dataset name.
- Now, pass the path in which the dataset is present. Since the ImageNet dataset is no longer publicly accessible, download the root data in your local system and pass the path to this function. This will comfortably load the vision data.
To load your custom image data, use torch.utils.data.DataLoader(data, batch_size, shuffle) as mentioned above.
Python3
# import necessary function # from torchvision package from torchvision import transforms, datasets import matplotlib.pyplot as plt # specify the image dataset folder data_dir = r 'path to dataset\train' # perform some transformations like resizing, # centering and tensorconversion # using transforms function transform = transforms.Compose( [transforms.Resize( 255 ), transforms.CenterCrop( 224 ), transforms.ToTensor()]) # pass the image data folder and # transform function to the datasets # .imagefolder function dataset = datasets.ImageFolder(data_dir, transform = transform) # now use dataloder function load the # dataset in the specified transformation. dataloader = torch.utils.data.DataLoader(dataset, batch_size = 32 , shuffle = True ) # iter function iterates through all the # images and labels and stores in two variables images, labels = next ( iter (dataloader)) # print the total no of samples print ( 'Number of samples: ' , len (images)) image = images[ 2 ][ 0 ] # load 3rd sample # visualize the image plt.imshow(image, cmap = 'gray' ) # print the size of image print ( "Image Size: " , image.size()) # print the label print (label) |
Output:
Image size: torch.Size([224,224]) tensor([0, 0, 0, 1, 1, 1])
Torchtext Dataset
Loading demo IMDB text dataset in torchtext using Pytorch. To load your custom text data we use torch.utils.data.DataLoader() method.
Syntax: torch.utils.data.DataLoader(‘path to/imdb_data’, batch_size, shuffle=True)
Code Explanation:
- The procedure is almost the same as loading the image and audio data.
- Here, instead of torchvision, torchtext has to be imported.
- Use the torchtext function with the datasets accessor, followed by dataset name (IMDB).
- Now, pass the split function to the torchtext function to split the dataset to train and test data.
- Now define a function to split each line in the corpus to separate tokens by iterating each line in the corpus as shown. In this way, we can easily load text data using Pytorch.
Python3
# import the torch and torchtext dataset packages. import torch import torchtext # access the dataset in torchtext package # using .datasets followed by dataset name. text_data = torchtext.datasets.IMDB(split = 'train' ) # define a function to tokenize # the words in the corpus def tokenize(label, line): return line.split() # define a empty list to store # the tokenized words tokens = [] # iterate over the text_data and # tokenize each line and store # it in the list tokens for label, line in text_data: tokens + = tokenize(label, line) print ( 'The total no. of tokens in imdb dataset is' , len (tokens)) |
Output: