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My cnn model contains a Lambda layer. when I load the model after saving model, the code throwing a error ”TypeError: Unexpected keyword argument passed to optimizer: name“.

def generate_matrix(input):
    ...

    return gram_output

def get_model():
    x = Input(shape = (300,300,3))
    vgg = VGG19(include_top=False, weights='imagenet')
    feats = Model(vgg.input,vgg.get_layer("block5_conv1").output)
    for layer in feats.layers:
        layer.trainable = False
    x1 = feats(x)
    x2 = Lambda(generate_matrix, name = "matrix")(x1)
    ...
    model = Model(inputs = x, outputs = predictions)
    model.summary()
    return model

model = get_model()
model.compile(...)
model.train(...)
model.save("my_model.h5")

load my model

model = tf.keras.models.load_model("my_model.h5",custom_objects ={"matrix": generate_matrix})

error:

TypeError: Unexpected keyword argument passed to optimizer: name

Howerer, there is no error when I load the weights of my model.

1.save weights of my model

model.save("my_model_weights.h5")

2.load weights

model = get_model()
model.load_weights("my_model_weights.h5")
  1. save model
model.save("my_model2.h5")
  1. load model
model = tf.keras.models.load_model("my_model.h5",custom_objects ={"matrix": generate_matrix})

it will success. why?

  • Did you train the model using keras and now you are loading it with tf.keras? – Matias Valdenegro Nov 11 '19 at 12:02
  • Can you post your optimizer? – Daniel Möller Nov 11 '19 at 12:35
  • @Matias Valdenegro I always use tf.keras when training and loading – xingxinghanzi Nov 12 '19 at 1:34
  • @Daniel Möller model.compile(loss='categorical_crossentropy', optimizer=optimizers.SGD(lr=1e-5, momentum=0.9, decay=1e-6), metrics=['accuracy']) – xingxinghanzi Nov 12 '19 at 1:34

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