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 `tf.Variable`

.

Okay, then how do we solve this problem?

Suppose you have the following variable:

```
var = tf.get_trainable_variables()[0]
print(var.to_proto())
# 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 `graph_editor.copy(...)`

, your `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 `tf.Variable`

documentation:

`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.

So, the `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)
tf.add_to_collection(tf.GraphKeys.GLOBAL_VARIABLES, cloned_var)
```

**Solved!**

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!**