# Calculating percentage of number with Tensorflow

I have tried this:

``````>>> import tensorflow as tf
>>> mul = tf.multiply(50,100)
>>> div = tf.divide(mul,50)
>>> mul
<tf.Tensor 'Mul_3:0' shape=() dtype=int32>
>>> div
<tf.Tensor 'truediv_2:0' shape=() dtype=float64>
>>> import tensorflow as tf
>>> x=50
>>> mul = tf.multiply(x,100)
>>> div = tf.divide(mul,50)
>>> mul
<tf.Tensor 'Mul_4:0' shape=() dtype=int32>
>>> div
<tf.Tensor 'truediv_3:0' shape=() dtype=float64>
``````

I am not seeing any numbers. I want to get the percentage done by tensorflow.
Kindly, let me know what I am missing here. Even when I tried evaluating, I got session based error. It's true that I need o establish session, but do not know how I can call it inside.
Please let me know if I missed something.

• You need run `tf.Session().run(div)`. – giser_yugang Feb 22 at 6:26
• I guess it will still not work sir. Can you demonstrate it? – Jaffer Wilson Feb 22 at 6:28

Try this it will certainly help:

``````>>> import tensorflow as tf
>>> a = tf.placeholder(tf.float32)
>>> b = tf.placeholder(tf.float32)
>>> sess = tf.Session()
>>> percentage = tf.divide(tf.multiply(a,100),b)
>>> sess.run(tf.global_variables_initializer())
>>> sess.run(percentage,feed_dict={a:4,b:20})
20.0
>>> sess.run(percentage,feed_dict={a:50,b:50})
100.0
>>> sess.close()
``````

You can refer to simple example:
https://stackoverflow.com/a/39747526/4948889
Hope this helps.

• @WaiHaLee It helped me. And was exactly what I was looking for. I get the output as percentage. – Jaffer Wilson Feb 22 at 10:43

In the print statements you get,

``````<tf.Tensor 'Mul_4:0' shape=() dtype=int32>
``````

And other such statements. This is because Python is printing out the Tensor Objects and not their values. There are two methods to solve this .

1. Enable eager execution.

``````import tensorflow as tf
tf.enable_eager_execution()
``````

This will enable eager mode and you will get values of the tensors instead of the Tensor objects. This initializes the tensors immediately as they are declared ( and hence eager ).

1. Using `tf.Session()` A tf.Session() objects runs and evaluates tensors in the graph. It runs on graph mode and not eager mode.

``````with tf.Session as session:
print( session.run( div ) )
``````