Suppose I have a layer (i.e. a collection of ops under the same name scope) in Tensorflow. How can I duplicate it together with input connections?

More specifically, suppose I have the following graph:

A --> B --> C --> D

now I want to duplicate C as C1, where C is a whole name scope:

A --> B --> C --> D
        \-> C

How can I do that in TensorFlow?


This can be done using tf.contrib.graph_editor. Let's see how it can be done:

import tensorflow.contrib.graph_editor as ge

# Get the SubgraphView of given layer
layer_sgv = ge.make_view_from_scope(layer_name, tf.get_default_graph())

# Retrieve the incoming tensors to the layer from ops outside.
# We need these to preserve input hierarchy while duplicating.
replacement_ts = {}
for op in layer_sgv.inputs:
    replacement_ts[op] = op

# Duplicate the layer
duplicate_sgv, info = ge.copy_with_input_replacements(

You can read more on SubgraphView here.

  • thanks! do you know how I can elegantly copy the weights of variables? – Dmitrii Oct 29 '18 at 3:36

The solution can be divided to 2 parts.

1. Replicate the graph of the layer

This is straightforward: just use the same code that you created that layer to do that. I suggest using Keras instead of raw TensorFlow — that will give you more flexibility and easiness in doing this step.

2. Copy the weights

The idea is you only need to copy tf.Variables, which are basically a group of following ops: initializer, kernel, and assign. Here is a good explanation. So the code will look as follows:

vars = tf.trainable_variables()  # getting the variables
vars_vals = sess.run(vars)       # getting their weights as numpy arrays
vars_duplicates = ...            # here, get the weights of your layer,
                                 # that should be in the same order
for var, val in zip(vars_duplicates, vars_vals):
    var.load(val, sess)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.