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:
print(sess.run(y))
x = 'y'
with tf.Session() as sess:
print(sess.run(y))
```

## 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:
init.run()
print(sess.run(y))
tf.assign(x, 'y')
with tf.Session() as sess:
init.run()
print(sess.run(y))
```

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?

`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.