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| datasets | tf.kerasÊý¾Ý¼¯Ä£¿é£¬°üÀ¨boston_housing£¬cifar10£¬fashion_mnist£¬imdb £¬mnist |
| layers | Keras²ãAPI |
| losses | ¸÷ÖÖËðʧº¯Êý |
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| models | Ä£ÐÍ´´½¨Ä£¿é£¬ÒÔ¼°ÓëÄ£ÐÍÏà¹ØµÄAPI |
| optimizers | ÓÅ»¯·½·¨ |
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| regularizers | ÕýÔò»¯£¬L1,L2µÈ |
| utils | ¸¨Öú¹¦ÄÜʵÏÖ |
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import tensorflow as tf from tensorflow import keras
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# ÅäÖÃÓÅ»¯·½·¨£¬Ëðʧº¯ÊýºÍÆÀ¼ÛÖ¸±ê
model.compile(optimizer=tf.train.AdamOptimizer(0.001),
loss='categorical_crossentropy',
metrics=['accuracy'])
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# Ö¸Ã÷ѵÁ·Êý¾Ý¼¯£¬ÑµÁ·epoch,Åú´Î´óСºÍÑéÖ¤¼¯Êý¾Ýmodel.fit/fit_generator(dataset, epochs=10,
batch_size=3,
validation_data=val_dataset,
)
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# ¶ÔеÄÑù±¾½øÐÐÔ¤²â model.predict(x, batch_size=32)
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model.save_weights('./my_model')
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model.load_weights('my_model')
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# ±£´æÄ£Ðͼܹ¹ÓëÈ¨ÖØÔÚh5ÎļþÖÐ
model.save('my_model.h5')
# ¼ÓÔØÄ£ÐÍ£º°üÀ¨¼Ü¹¹ºÍ¶ÔÓ¦µÄÈ¨ÖØ
model = keras.models.load_model('my_model.h5')
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