What difference between tf.cond and if-else?

Scenario 1

import tensorflow as tf

x = 'x'
y = tf.cond(tf.equal(x, 'x'), lambda: 1, lambda: 0)
with tf.Session() as sess:
x = 'y'
with tf.Session() as sess:

Scenario 2

import tensorflow as tf

x = tf.Variable('x')
y = tf.cond(tf.equal(x, 'x'), lambda: 1, lambda: 0)
init = tf.global_variables_initializer()
with tf.Session() as sess:

tf.assign(x, 'y')
with tf.Session() as sess:

The outputs are both 1.

Does it mean only tf.placeholder can work, and not all the tensor, such as tf.variable? When should I choose if-else condition and when to use tf.cond? What are the diffences between them?

  • Your mistake in the code is the following: tf,assign(x, 'y') will simply create the assignment operation, but yet you need to run this operation so that you assign 'y' to x. Therefore, you to try something like that: ass_op = tf.assign(x, 'y') Then under tf.Session(), you need to add: sess.run(ass_op) That is when you will print 0.
    – I. A
    Jul 25, 2018 at 0:09

4 Answers 4


tf.cond is evaluated at the runtime, whereas if-else is evaluated at the graph construction time.

If you want to evaluate your condition depending on the value of the tensor at the runtime, tf.cond is the best option.

  • Do you mean if-condition depends at graph construction time, if at the runtime the condition changes, but it don't have effect on if block, because it is determined at graph construction time.
    – gaussclb
    Aug 5, 2017 at 9:22
  • thats exactly what I meant. Aug 5, 2017 at 9:25
  • Look at the my update. Does it mean x need to be tensor, otherwise tf.cond can't work either?
    – gaussclb
    Aug 5, 2017 at 9:35
  • Yes x should be a tensor; you may use some placeholder to feed the value Aug 5, 2017 at 9:40
  • I try to use tf.variable, but failed. Look at the update. It is amazing. I have heard somebody use tf.variable, is_training to distinguish the training or test phase, and to change the condition of dropout. But I try, tf.variable can't work.
    – gaussclb
    Aug 5, 2017 at 9:48

Did you mean if ... else in Python vs. tf.cond?

You can use if ... else for creating different graph for different external conditions. For example you can make one python script for graphs with 1, 2, 3 hidden layers, and use command line parameters for select which one use.

tf.cond is for add condition block to the graph. For example, you can define Huber function by code like this:

import tensorflow as tf
delta = tf.constant(1.)
x = tf.placeholder(tf.float32, shape=())

def left(x):
    return tf.multiply(x, x) / 2.
def right(x):
    return tf.multiply(delta, tf.abs(x) - delta / 2.)

hubber = tf.cond(tf.abs(x) <= delta,  lambda: left(x),  lambda: right(x))

and calculation in Graph will go by different branch for different input data.

sess = tf.Session()
with sess.as_default():
    print(sess.run(hubber, feed_dict = {x: 0.5}))
    print(sess.run(hubber, feed_dict = {x: 1.0}))
    print(sess.run(hubber, feed_dict = {x: 2.0}))

> 0.125
> 0.5
> 1.5
  • Can I use if-else to replace tf.cond. I use if tf.abs(x)<=delta: huber=left(x); else: huber=right(x). Is it the same?
    – gaussclb
    Aug 5, 2017 at 9:13
  • No, you can't use if ... else for add condition block to the graph. Aug 5, 2017 at 9:14
  • No. It's not same, and it doesn't work. You should first create graph and when launch calculation. But you tried create graph and calculate at the same time. Aug 5, 2017 at 9:21
  • if I use python variable to instead of tf.placeholder about x, and at runtime, I change the value x, will tf.cond judge condition again?
    – gaussclb
    Aug 5, 2017 at 9:26
  • If you don't want to use TF you can do same calculation without it and use only Python. Aug 5, 2017 at 9:30

Since the graph in TensorFlow is static, you cannot modify it once built. Thus you can use if-else outside of the graph at anytime for example while preparing batches and etc., but you can also employ it while constructing the graph. That is, if the condition doesn't depend on the value of any tensor, for example the dimention(having been set) of the tensor or the shape of any tensor. In such scenarios the graph will not be changed due to the condition while excuting the graph. The graph has been fixed after you finished drawing the graph and the if-else condition would not affect the graph while excuting the graph.

But if the condition depends on the value of the tensor in it that condition should be included in the graph and hence tf.cond should be applied.


Simply put: if else is how you do switch in Python, while tf.cond is how you do switch in Tensorflow. During running, if else is fixed in the compiled Python program, while tf.cond is fixed in the constructed Tensorflow graph.

You can think of tf.cond as the Tensorflow's internal way of doing if else.

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