In Tensorflow I can assign names to operations and tensors to retrieve them later. For example in one function I can do

input_layer=tf.placeholder(tf.float32, shape= [None,300], name='input_layer')

And then in another function later, I can do


I came to believe that this is handy for making my tf code as modular as possible.

I would like to be able to do the same with my loss but how can I assign a custom name to that operation? The problem is that the build in loss functions (e.g., tf.losses.mean_squared_error) do not have a parameter for the name (in contrast to tf.placeholder, tf.variable and so on).

The way I refer to my loss at the moment is


(retrieving the last loss operation that has been added to the graph). Am I missing something obvious?

3 Answers 3


I know that this is not exactly THE answer but it's a fix that could work for you.

Given that, as you pointed, the tf.losses.mean_squared_error function doesn't have a name parameter you could implement your own MSE (based on TF operations of course)

Just replace

tf_loss = tf.losses.mean_squared_error(labels,predictions)


custom_loss = tf.reduce_mean(tf.squared_difference(labels,predictions),name='loss')

And as reduce_mean does accept a name parameter you could get what you want.

Full example code available here


I guess using a non trainable Variable should do the trick:

labels = np.random.normal(size=10)
predictions = np.random.normal(size=10)

sess = tf.Session()
loss_var = tf.Variable(10.0, name='mse_loss', trainable=False, dtype=tf.float32)

loss = tf.losses.mean_squared_error(labels, predictions)
mse_loss = loss_var.assign(loss)


I've found that the shortest way to do this is by using tf.identity.

loss = tf.losses.mean_squared_error(labels, predictions)
loss = tf.identity(loss, name = "loss")

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