--- license: openrail --- ***Disclaimer: This work is part of an educational project. It is not intended for clinical application. As such it can not make real world predictions for skin lesions. To get recommendations regarding skin lesions one should ask for expert advice such as provided by a dermatologist.*** The model (xception_v4_1_07_0.699.h5) was trained as described in this kaggle notebook: https://www.kaggle.com/bnzn261029/capstone1-ham10k-skincancer The code repository on github: https://github.com/bsenst/capstone1-skin-lesion-classifier The dataset on kaggle: https://www.kaggle.com/datasets/kmader/skin-cancer-mnist-ham10000 The gradio app on huggingface spaces: https://huggingface.co/spaces/bsenst/keras-image-classifier |Layer (type)|Output Shape|Param| |-|-|-| |input_2 (InputLayer)|[(None, 150, 150, 3)]|0| |xception (Functional)|(None, 5, 5, 2048)|20861480| |global_average_pooling2d (GlobalAveragePooling2D) |(None, 2048)|0| |dense (Dense)|(None, 7)|14343| Total params: 20,875,823 Trainable params: 14,343 Non-trainable params: 20,861,480