Jaycee-404/Hybrid-Model-for-Skin-Disease-Classification-EfficientNetB0-and-ViT-
A Hybrid Deep Learning Model using ViT and EfficientNetB0 for skin lesion classification on the HAM10000 dataset. It leverages data augmentation and early stopping to improve accuracy and reduce overfitting.
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Python
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MIT
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May 19, 2025
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