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I'd like to reset (randomize) the weights of all layers in my Keras (deep learning) model. The reason is that I want to be able to train the model several times with different data splits without having to do the (slow) model recompilation every time.

Inspired by this discussion, I'm trying the following code:

# Reset weights
for layer in KModel.layers:
    if hasattr(layer,'init'):
        input_dim = layer.input_shape[1]
        new_weights = layer.init((input_dim, layer.output_dim),name='{}_W'.format(layer.name))
        layer.trainable_weights[0].set_value(new_weights.get_value())

However, it only partly works.

Partly, becuase I've inspected some layer.get_weights() values, and they seem to change. But when I restart the training, the cost values are much lower than the initial cost values on the first run. It's almost like I've succeeded resetting some of the weights, but not all of them.

Answers

Save the initial weights right after compiling the model but before training it:

model.save_weights('model.h5')

and then after training, "reset" the model by reloading the initial weights:

model.load_weights('model.h5')

This gives you an apples to apples model to compare different data sets and should be quicker than recompiling the entire model.

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