MIEB
Collection
MIEB(Multilingual) is a comprehensive image embeddings benchmark, spanning 10 task types, covering 130 tasks and a total of 39 languages.
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Tiny ImageNet contains 100000 images of 200 classes (500 for each class) downsized to 64×64 colored images. Each class has 500 training images, 50 validation images, and 50 test images.
The class labels in the dataset are in English.
{
'image': <PIL.JpegImagePlugin.JpegImageFile image mode=RGB size=64x64 at 0x1A800E8E190,
'label': 15
}
classes.py for the map of numbers & labels.| Train | Valid | |
|---|---|---|
| # of samples | 100000 | 10000 |
def example_usage():
tiny_imagenet = load_dataset('Maysee/tiny-imagenet', split='train')
print(tiny_imagenet[0])
if __name__ == '__main__':
example_usage()