I have some variables created within a certain scope like this:

with tf.variable_scope("my_scope"):

I then want to get the list of all the variables in "my_scope" so I can pass it to an optimizer. What is the right way to do this?


2 Answers 2


I think you want tf.get_collection(tf.GraphKeys.GLOBAL_VARIABLES, scope='my_scope'). This will get all variables in a scope.

To pass to an optimizer you do not want all variables you would just want the trainable variables. Those are also kept in a default collection, which is tf.GraphKeys.TRAINABLE_VARIABLES.

  • 18
    tf.GraphKeys.VARIABLES is deprecated in v0.12 (as I learned from this answer: stackoverflow.com/a/40918792/1827383). Use tf.GraphKeys.GLOBAL_VARIABLES instead. Dec 2, 2016 at 5:45
  • do you have have to create an op out of that and then run it in a session? It seems the code is incomplete, do you mind making it self contained? Jan 26, 2017 at 3:06
  • Thanks for your answer! How about this situation: there are two sub scopes tf.variable_scope(1st) and tf.variable_scope(2nd) inside a scope tf.variable_scope(main) and I want to get two lists of scopes 1st and 2nd so as to optimize separately.
    – ytutow
    Aug 24, 2017 at 1:00
  • I think this answer is wrong (tested in tensorflow 1.4). tf.get_collection gets by NAME scope, and not by VARIABLE scope. You could have a bunch of variables declared under variable_scope("foo"), and tf.get_collection(..,"foo") would return nothing.
    – Uri Merhav
    Nov 17, 2017 at 19:48
  • 1
    One might want to detect the scope name automatically: tf.get_collection(tf.GraphKeys.TRAINABLE_VARIABLES, scope=tf.get_variable_scope().name)
    – borgr
    Aug 14, 2018 at 10:43

User correctly pointed out that you need tf.get_collection(). I will just give a simple example how to do this:

import tensorflow as tf

with tf.name_scope('some_scope1'):
    a = tf.Variable(1, 'a')
    b = tf.Variable(2, 'b')
    c = tf.Variable(3, 'c')

with tf.name_scope('some_scope2'):
    d = tf.Variable(4, 'd')
    e = tf.Variable(5, 'e')
    f = tf.Variable(6, 'f')

h = tf.Variable(8, 'h')

for i in tf.get_collection(tf.GraphKeys.GLOBAL_VARIABLES, scope='some_scope'):
    print i   # i.name if you want just a name

Notice that you can provide any of the graphKeys and scope is a regular expression:

scope: (Optional.) If supplied, the resulting list is filtered to include only items whose name attribute matches using re.match. Items without a name attribute are never returned if a scope is supplied and the choice or re.match means that a scope without special tokens filters by prefix.

So if you will pass 'some_scope' you will get 6 variables.

  • what if I then wanted to put all other variables in a separate collection. For example, GLOBAL_VARIABLES contains a through h, and 'some_scope' ends up with a through f, but then I want to have a second operation that just gets anything that isn't in my other collection (without using the regex)
    – reese0106
    Feb 9, 2018 at 18:33
  • How would you use this paired with session.run() to get the list of variables ?
    – monolith
    Mar 24, 2018 at 17:50

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