How does one go about creating variables with placeholders as initializers? The following graph breaks down with:

InvalidArgumentError: You must feed a value for placeholder tensor 'Placeholder_1' with dtype float
     [[node Placeholder_1 (defined at <ipython-input-10-b8d54264dc85>:3)  = Placeholder[dtype=DT_FLOAT, shape=[], _device="/job:localhost/replica:0/task:0/device:CPU:0"]()]]

My code:

a = tf.placeholder(dtype=tf.float32,shape=())
d = tf.placeholder(dtype=tf.float32,shape=())
b = tf.get_variable(name='b',initializer=d)
with tf.Session() as sess:
    print(sess.run(c, feed_dict={a:5.,d:10.}))

The documentation on initializers in tensorflow says:

Initializer for the variable if one is created. Can either be an initializer object or a Tensor. If it's a Tensor, its shape must be known unless validate_shape is False.

However if i comment out the line where i create b the code seems to run. My fetch is not even dependent upon b.

How do i go about creating variables that initialize according to some placeholder?


I think your problem is described in https://github.com/tensorflow/tensorflow/issues/4920

My workaround would be to use tf.assign which would act like a lazy initializer, the shape would be before infered from d with tf.zeros_like. To get idea how does it work I made b a resource variable so it maintains state between sess.run calls.

a = tf.placeholder(dtype=tf.float32,shape=(), name='a')
d = tf.placeholder(dtype=tf.float32,shape=(), name='d')
b = tf.get_variable(name='b', initializer=tf.zeros_like(d), use_resource=True)
b_init = tf.assign(b, d)
add_one = tf.assign(b,tf.add(b,tf.ones_like(b)))
with tf.Session() as sess:
    print(sess.run([c, b_init], feed_dict={a:5.,d:10.}))    
    for i in range(10): 
        print(sess.run([c,b], feed_dict={a:5.,d:10.}))

The output

[15.0, 10.0]
[15.0, 11.0]
[15.0, 12.0]
[15.0, 13.0]
[15.0, 14.0]
[15.0, 15.0]
[15.0, 16.0]
[15.0, 17.0]
[15.0, 18.0]
[15.0, 19.0]
[15.0, 20.0]
  • Thank you for the suggestion. Could you help me by confirming if the solution at github.com/tensorflow/tensorflow/issues/13351 works. i am unable to make it work – MiloMinderbinder Mar 15 at 0:25
  • your solution assigns b equal to d on each iteration which is not the behavior intended. – MiloMinderbinder Mar 15 at 7:05
  • I've edited the code to illustrate how you should use it. Split the assign and get_variable and use assign only before the loop. I've added add_one op that adds one to b and assigns it the value of addition to illustrate that it works. Moreover, I had to use resource variable so it maintains state between sess.run calls. Hope it clarifies things. – MPękalski Mar 15 at 8:11
  • Bring your cheeks over here my man!! Thank you, it works!! – MiloMinderbinder Mar 15 at 9:30

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