Note: this answer and the OP's answer are complementary to each other. Read OP's answer first.
I've spent 4 hours today on this issue. This is one of the places where the ugliness of TensorFlow unfolds (and that's why you should use PyTorch if graph manipulation is your thing).
The crucial point here is: the
tf.Variable is NOT a graph element (more on it here) but a wrapper around 3 ops: the
Assign op, the
Read op, and the
VariableV2 op which is essentially a
ref tensor (more on it here). So, it is something you need to call explicitly in the TensorFlow Framework.
If we look closely at the
graph_editor's code, especially the transform module, we can see that it operates only on the
tf.Graph, not touching anything from the TensorFlow Framework. So, the
graph_editor.copy (and similar) methods does not touch
tf.Variable objects at all. It only copies the tensors and ops that are building blocks of
Okay, then how do we solve this problem?
Suppose you have the following variable:
var = tf.get_trainable_variables()
# variable_name: "dense_1/kernel:0"
# initializer_name: "dense_1/kernel/Assign"
# snapshot_name: "dense_1/kernel/read:0"
# initial_value_name: "dense_1/random_uniform:0"
# trainable: true
You know that after
dense_1 name scope is now
dense_1b. Then, all you need is use
info.transformed(...) to get the corresponding ops and tensors, and do the following:
from tensorflow.core.framework import variable_pb2
var_def = variable_pb2.VariableDef()
var_def.variable_name = 'dense_1b/kernel:0'
var_def.initializer_name = "dense_1b/kernel/Assign"
var_def.snapshot_name = "dense_1b/kernel/read:0"
var_def.initial_value_name = "dense_1/random_uniform:0"
var_def.trainable = True
Now, I want to emphasize on the following part of
variable_def: ... recreates the Variable object with its contents, referencing the variable's nodes in the graph, which must already exist. The graph is not changed.
tf.Variable constructor allows us to create a Variable wrapper on top of existing graph elements. That's exactly what we need:
cloned_var = tf.Variable(variable_def=var_def)
I kept this answer as simple and specific as possible to show the underlying mechanics of
tf.Variables. You can now easily implement the code for more general case to make new variables automatically.
PS: I hate TensorFlow!