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CIFAR-10 is a dataset that consists of several images divided into the following 10 classes: 0. Airplanes
- Cars
- Birds
- Cats
- Deer
- Dogs
- Frogs
- Horses
- Ships
- Trucks
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The dataset stands for the Canadian Institute For Advanced Research (CIFAR)
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CIFAR-10 is widely used for machine learning and computer vision applications.
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The dataset consists of 60,000 32x32 color images and 6,000 images of each class.
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Images have low resolution (32x32).
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In this notebook uses two models
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frist one is CNN model with
- training accuracy: 87.7%
- test accuracy: 77.3%
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second model is Upsampling layer ==> ResNet-50 ==> two Dense layers then one last Dense layer for output
- training accuracy: 97.8%
- test accuracy: 88.4%
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each model runed for 10 epochs without data augmentation