I am trying to insert a
dropout layer into my model. So I load the old model, create a new model architecture, and transfer the weights.
However when I save the new model, the memory footprint is a lot smaller:
113 megabytes vs original 338 megabytes. I suspect I must be making a mistake in the process, but the model seems to save and is running. The accuracy is about 15% lower but can't tell if that is dropout effect.
Here is my code:
def add_dropout(layer_num = None, prob = .4): #layer num is where you will insert the dropout layer model = load_model(model_path) layers_set1 = [layer for layer in model.layers[:layer_num + 1]] x = layers_set1[-1].output x = Dropout(prob, name = "drop_test1")(x) layers_set2 = [layer for layer in model.layers[layer_num+1:]] for layer in layers_set2: print(layer) x = layer(x) final_model = Model(inputs = layers_set1.input, outputs = x) for num, layer in enumerate(layers_set1): weights = layer.get_weights() final_model.layers[num].set_weights(weights) for num, layer in enumerate(layers_set2, start = len(layers_set1) + 1): weights = layer.get_weights() final_model.layers[num].set_weights(weights) final_model.save(os.path.join(save_dir, "dropout_added.h5"))