elifirinci/cifar-10
This project explores the concept of transfer learning using the CIFAR-10 dataset. The work demonstrates how to reuse a convolutional neural network trained on a subset of image classes and then fine-tune it on a different set of classes. This approach is common in real-world deep learning applications where labeled data is limited.
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May 28, 2025
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