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<Deep Learning with Python 2nd Edition> Chapter 8.2 using a convnet model with data augmentation and dropout to classify images of dogs and cats. The book says that the test accuracy is 83.5% but I tried many times, using same model/code and same inputs but got all test accuracy results below 80%. Can anyone try those codes and get results around 83.5%? Or is the book description not correct?
The text was updated successfully, but these errors were encountered:
改成不用GPU就不报错。发自我的 iPhone在 2024年7月24日,14:33,shenchenbing ***@***.***> 写道:
callbacks = [ keras.callbacks.ModelCheckpoint( filepath="convnet_from_scratch.keras", save_best_only=True, monitor="val_loss") ] history = model.fit( train_dataset, epochs=30, validation_data=validation_dataset, callbacks=callbacks)这步模型训练报错,input arguments看不出来问题
具体是报了什么错?
我倒是没碰到报错的情况,就是自己跑出来的测试精度和书里面有一些差异。
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<Deep Learning with Python 2nd Edition> Chapter 8.2 using a convnet model with data augmentation and dropout to classify images of dogs and cats. The book says that the test accuracy is 83.5% but I tried many times, using same model/code and same inputs but got all test accuracy results below 80%. Can anyone try those codes and get results around 83.5%? Or is the book description not correct?
The text was updated successfully, but these errors were encountered: