**UPDATE:** TensorFlow 0.9 has a new method that "fixes" all this **but only if you're using a VariableScope with **`reuse`

set to `True`

. tf.report_uninitialized_variables which can be used in one line with `sess.run( tf.initialize_variables( list( tf.get_variable(name) for name in sess.run( tf.report_uninitialized_variables( tf.all_variables( ) ) ) ) ) )`

or more intelligently through the ability to specify the variables you expect to be initialized:

```
def guarantee_initialized_variables(session, list_of_variables = None):
if list_of_variables is None:
list_of_variables = tf.all_variables()
uninitialized_variables = list(tf.get_variable(name) for name in
session.run(tf.report_uninitialized_variables(list_of_variables)))
session.run(tf.initialize_variables(uninitialized_variables))
return unintialized_variables
```

This is still less ideal than actually knowing which variables are and are not initialized and taking care of that properly, but in the case of misdirection like the `optim`

classes (see below) it may be hard to avoid.

Also note, tf.initialize_variables cannot evaluate tf.report_uninitialized_variables, so both of them have to be run within the context of the session to work.

There is an inelegant but concise way to do it. Before introducing your new variables run `temp = set(tf.all_variables())`

and afterwards run `sess.run(tf.initialize_variables(set(tf.all_variables()) - temp))`

. These together will only initialize any variables created after the temp value is assigned.

I've been playing with transfer learning, so I wanted a quick way to do it too, but this is the best way I could find. Especially when using things like AdamOptimizer, which doesn't give you easy (or any, I'm not sure) access to the variables it uses. So the following actually shows up in my code. (I initialize the new layer's variables explicitly, and run it once to show the initial error before transfer learning. Just for a sanity check.)

```
temp = set(tf.all_variables())
train_step = tf.train.AdamOptimizer(1e-4).minimize(cross_entropy)
#I honestly don't know how else to initialize ADAM in TensorFlow.
sess.run(tf.initialize_variables(set(tf.all_variables()) - temp))
```

And it solves all my problems.

**EDIT:** @Lifu_Huang's answer states the proper way to fix my problem. Theoretically, you should use tf.train.Optimizer.get_slot_names and tf.train.Optimizer.get_slot:

```
optim = tf.train.AdadeltaOptimizer(1e-4)
loss = cross_entropy(y,yhat)
train_step = optim.minimize(loss)
sess.run(tf.initialize_variables([optim.get_slot(loss, name)
for name in optim.get_slot_names()])
```

This however gives me `AttributeError: 'NoneType' object has no attribute 'initializer'`

. I'll make edits when I figure out what I did wrong, so you don't make my mistakes.

`tf.train.Optimizer.minimize(loss)`

function is defined to be in the documentation`optim.apply_gradients(optim.compute_gradients(loss))`

. This would make your example the same as mine, except you throw out all the`None`

s. Can you run the`train_step`

after that? When I ran it, all the slots were`None`

so the optimizer remained uninitialized and the neural network failed to run. – Poik Oct 10 '16 at 1:10