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Keras保存模型问题

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这是一个变分自动编码器网络,我必须定义一个生成潜在z的采样方法,我认为这可能是错误的 . 这个py文件正在进行训练,另一个py文件正在进行在线预测,所以我需要保存keras模型,保存模型没有任何问题,但是当我从'h5'文件加载模型时,它显示错误:

NameError: name 'latent_dim' is not defined

以下是代码:

df_test = df[df['label']==cluster_num].iloc[:,:data_num.shape[1]]

data_scale_ = preprocessing.StandardScaler().fit(df_test.values)

data_num_ = data_scale.transform(df_test.values)

models_deep_learning_scaler.append(data_scale_)

batch_size = data_num_.shape[0]//10

original_dim = data_num_.shape[1]

latent_dim = data_num_.shape[1]*2

intermediate_dim = data_num_.shape[1]*10

nb_epoch = 1

epsilon_std = 0.001



x = Input(shape=(original_dim,))

init_drop = Dropout(0.2, input_shape=(original_dim,))(x)

h = Dense(intermediate_dim, activation='relu')(init_drop)

z_mean = Dense(latent_dim)(h)

z_log_var = Dense(latent_dim)(h)





def sampling(args):

    z_mean, z_log_var = args

    epsilon = K.random_normal(shape=(latent_dim,), mean=0.,

                              std=epsilon_std)

    return z_mean + K.exp(z_log_var / 2) * epsilon



# note that "output_shape" isn't necessary with the TensorFlow backend

z = Lambda(sampling, output_shape=(latent_dim,))([z_mean, z_log_var])



# we instantiate these layers separately so as to reuse them later



decoder_h = Dense(intermediate_dim, activation='relu')

decoder_mean = Dense(original_dim, activation='linear')

h_decoded = decoder_h(z)

x_decoded_mean = decoder_mean(h_decoded)





def vae_loss(x, x_decoded_mean):

    xent_loss = original_dim * objectives.mae(x, x_decoded_mean)

    kl_loss = - 0.5 * K.sum(1 + z_log_var - K.square(z_mean) - K.exp(z_log_var), axis=-1)

    return xent_loss + kl_loss



vae = Model(x, x_decoded_mean)

vae.compile(optimizer=Adam(lr=0.01), loss=vae_loss)



train_ratio = 0.95

train_num = int(data_num_.shape[0]*train_ratio)



x_train = data_num_[:train_num,:]

x_test = data_num_[train_num:,:]



vae.fit(x_train, x_train,

        shuffle=True,

        nb_epoch=nb_epoch,

        batch_size=batch_size,

        validation_data=(x_test, x_test))

vae.save('./models/deep_learning_'+str(cluster_num)+'.h5')

del vae

from keras.models import load_model
vae = load_model('./models/deep_learning_'+str(cluster_num)+'.h5')

它显示错误: NameError: name 'latent_dim' is not defined

1 回答

  • 2

    对于变分损失,您使用的是许多Keras模块未知的变量 . 你需要通过 load_model 函数的 custom_objects param传递它们 .

    在你的情况下:

    vae.save('./vae_'+str(cluster_num)+'.h5')
    vae.summary()
    
    del vae
    
    from keras.models import load_model
    vae = load_model('./vae_'+str(cluster_num)+'.h5', custom_objects={'latent_dim': latent_dim, 'epsilon_std': epsilon_std, 'vae_loss': vae_loss})
    vae.summary()
    

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