예제 #1
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    def test_split_with_larger_number(self):
        sample_list = list(range(self.CHUNK_SIZE))

        chunk, rest = utils.split(sample_list, self.CHUNK_SIZE + 1)

        self.assertEqual(len(chunk), self.CHUNK_SIZE)
        self.assertEqual(len(rest), 0)
예제 #2
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    def test_split(self):
        sample_list = list(range(self.CHUNK_SIZE))
        split_size = 10

        chunk, rest = utils.split(sample_list, split_size)

        self.assertEqual(len(chunk), split_size)
        self.assertEqual(len(rest), self.CHUNK_SIZE - split_size)
예제 #3
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 def fit(self, X, n_epochs=50, batch_size=256):
     indices_fracs = split(fracs=[0.9, 0.1], N=len(X), seed=0)
     X_train, X_valid = X[indices_fracs[0]], X[indices_fracs[1]]
     self.autoencoder.fit(X_train,
                          X_train,
                          epochs=n_epochs,
                          batch_size=batch_size,
                          shuffle=True,
                          validation_data=(X_valid, X_valid))
예제 #4
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 def fit_generator(self, X, n_epochs, batch_size=256):
     indices_fracs = split(fracs=[0.9, 0.1], N=len(X), seed=0)
     X_train, X_valid = X[indices_fracs[0]], X[indices_fracs[1]]
     dataAugmentaion = ImageDataGenerator(fill_mode="nearest")
     self.autoencoder.fit_generator(dataAugmentaion.flow(X_train,
                                                         X_train,
                                                         batch_size=32),
                                    validation_data=(X_valid, X_valid),
                                    steps_per_epoch=len(X_train) // 32,
                                    epochs=10)
예제 #5
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 def fit(self, X, n_epochs=50, batch_size=256):
     es = EarlyStopping(monitor='val_loss', verbose=1, patience=10)
     indices_fracs = split(fracs=[0.9, 0.1], N=len(X), seed=0)
     X_train, X_valid = X[indices_fracs[0]], X[indices_fracs[1]]
     self.autoencoder.fit(X_train,
                          X_train,
                          epochs=n_epochs,
                          batch_size=batch_size,
                          shuffle=True,
                          validation_data=(X_valid, X_valid),
                          callbacks=[es])