What is the difference between
name_scope? The variable scope tutorial talks about
variable_scope implicitly opening
name_scope. I also noticed that creating a variable in a
name_scope automatically expands its name with the scope name as well. So, what is the difference?
What is the difference between
import tensorflow as tf def scoping(fn, scope1, scope2, vals): with fn(scope1): a = tf.Variable(vals, name='a') b = tf.get_variable('b', initializer=vals) c = tf.constant(vals, name='c') with fn(scope2): d = tf.add(a * b, c, name='res') print '\n '.join([scope1, a.name, b.name, c.name, d.name]), '\n' return d d1 = scoping(tf.variable_scope, 'scope_vars', 'res', [1, 2, 3]) d2 = scoping(tf.name_scope, 'scope_name', 'res', [1, 2, 3]) with tf.Session() as sess: writer = tf.summary.FileWriter('logs', sess.graph) sess.run(tf.global_variables_initializer()) print sess.run([d1, d2]) writer.close()
Here I create a function that creates some variables and constants and groups them in scopes (depending by the type I provided). In this function I also print the names of all the variables. After that I executes the graph to get values of the resulting values and save event-files to investigate them in tensorboard. If you run this, you will get the following:
scope_vars scope_vars/a:0 scope_vars/b:0 scope_vars/c:0 scope_vars/res/res:0 scope_name scope_name/a:0 b:0 scope_name/c:0 scope_name/res/res:0
This gives you the answer:
Now you see that
tf.variable_scope() adds a prefix to the names of all variables (no matter how you create them), ops, constants. On the other hand
tf.name_scope() ignores variables created with
tf.get_variable() because it assumes that you know which variable and in which scope you wanted to use.
A good documentation on Sharing variables tells you that
tf.variable_scope(): Manages namespaces for names passed to
The same documentation provides a more details how does Variable Scope work and when it is useful.
When you create a variable with
tf.get_variable instead of
tf.Variable, Tensorflow will start checking the names of the vars created with the same method to see if they collide. If they do, an exception will be raised. If you created a var with
tf.get_variable and you try to change the prefix of your variable names by using the
tf.name_scope context manager, this won't prevent the Tensorflow of raising an exception. Only
tf.variable_scope context manager will effectively change the name of your var in this case. Or if you want to reuse the variable you should call scope.reuse_variables() before creating the var the second time.
tf.name_scope just add a prefix to all tensor created in that scope (except the vars created with
tf.variable_scope add a prefix to the variables created with
tf.variable_scope is an evolution of
tf.name_scope to handle
Variable reuse. As you noticed, it does more than
tf.name_scope, so there is no real reason to use
tf.name_scope: not surprisingly, a TF developper advises to just use
My understanding for having
tf.name_scope still lying around is that there are subtle incompatibilities in the behavior of those two, which invalidates
tf.variable_scope as a drop-in replacement for