It seems that tf.train.init_from_checkpoint initalizes variables created via tf.get_variable but not those created via tf.Variable.

For example, let's create two variables and save them:

import tensorflow as tf

tf.Variable(1.0, name='foo')
saver = tf.train.Saver()
with tf.Session() as sess:
  saver.save(sess, './model', global_step=0)

If I load them again via a tf.train.Saver, everything works fine: variables are loaded back to 1 even though they are initialized at zero here:

import tensorflow as tf

foo = tf.Variable(0.0, name='foo')
bar = tf.get_variable('bar', initializer=0.0)
saver = tf.train.Saver()
with tf.Session() as sess:
  saver.restore(sess, './model-0')
  print(f'foo: {foo.eval()}  bar: {bar.eval()}')
  # foo: 1.0  bar: 1.0

However if I use tf.train.init_from_checkpoint I get

import tensorflow as tf

foo = tf.Variable(0.0, name='foo')
bar = tf.get_variable('bar', initializer=0.0)
tf.train.init_from_checkpoint('./model-0', {'/':'/'})
with tf.Session() as sess:
  print(f'foo: {foo.eval()}  bar: {bar.eval()}')
  # foo: 0.0  bar: 1.0

bar is set back to 1 as expected but foo remains at 0.

Is this the intended behavior? If so, why?

  • As no one seems to answer, I'll try to fix my previous attempt. It was mostly superficial and not to the point. Hope it makes sense now – Sharky Mar 24 at 22:21
  • @Sharky your answer points to the code where that happens -- indeed it has to happen somewhere -- but it does not answer my question about the rationale of this choice. For all I know, this could be a bug, and your answer does not shed any light on that. – user209974 Mar 25 at 15:19
  • I update once again, sorry for having hard time making my point – Sharky Mar 25 at 15:56

Yes, this is intended. This behaviour is described in _init_from_checkpoint method, which iterates over assignment map when loading variables to restore.

 for tensor_name_in_ckpt, current_var_or_name in sorted(
    var = None

It first sets variable it's going to restore to None and will reset in to current variable name if one of several conditions is met. In this particular case, loop contains statement

if "/" in current_var_or_name

So, it will load variables from a dictionary store_vars, created earlier. It was created right after _init_from_checkpoint checks whether current variable from assignment map is tf.Variable, which is False at this time.

 if _is_variable(current_var_or_name) or (
        isinstance(current_var_or_name, list)
        and all(_is_variable(v) for v in current_var_or_name)):
      var = current_var_or_name
      store_vars = vs._get_default_variable_store()._vars 

store_vars is created by internal class _VariableStore, more precisely, by it's _get_default_variable_store() method. This class uses get_variable as variable constructor. Because of the fact that tf.Variable doesn't have default scope, and tf.get_variable first calls tf.get_variable_scope(), which returns the current variable scope. 'foo' is outside of this scope. Besides tf.Variable will create a new variable every time it is called and doesn't allow sharing.

store_vars is constructed from default scope members and therefore, it contains only 'bar' variable, and foo is added to variables collection later with tf.Variable op.

However, if assignment_map will contain {'foo':foo, 'bar':bar}, the abovementioned for _init_from_checkpoint will find these variables and load them. So in this case your code will ouput foo: 1.0 bar: 1.0

You can find code in https://github.com/tensorflow/tensorflow/blob/r1.13/tensorflow/python/training/checkpoint_utils.py

and https://github.com/tensorflow/tensorflow/blob/r1.13/tensorflow/python/ops/variable_scope.py Also see this answer What is the default variable_scope in Tensorflow?

  • Yes, it does not allow sharing -- why would that imply that it could not be restored? After all, tf.Variable does get restored by a tf.train.Saver.restore as I show in my second example. – user209974 Feb 27 at 16:38
  • Because tf.train.init_from_checkpoint replaces tf.Variable with tf.get_variable initializers so they could be load from a checkpoint file. As per github.com/tensorflow/tensorflow/blob/r1.12/tensorflow/python/… – Sharky Feb 27 at 16:59
  • So why is the initializer not being replaced in the case of a tf.Variable? – user209974 Feb 27 at 17:04
  • Because tf.train.init_from_checkpoint ignores tf.Variable. I'll update answer with a little clarification. – Sharky Feb 27 at 17:30

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