# Different types of divisions in TensorFlow

I am very new to TensorFlow. So I came across this different types of division in TensorFlow from here. Code printed below:

``````a = tf.constant([2, 2], name='a')
b = tf.constant([[0, 1], [2, 3]], name='b')
with tf.Session() as sess:
print(sess.run(tf.div(b, a)))             ⇒ [[0 0] [1 1]]
print(sess.run(tf.divide(b, a)))          ⇒ [[0. 0.5] [1. 1.5]]
print(sess.run(tf.truediv(b, a)))         ⇒ [[0. 0.5] [1. 1.5]]
print(sess.run(tf.floordiv(b, a)))        ⇒ [[0 0] [1 1]]
print(sess.run(tf.realdiv(b, a)))         ⇒ # Error: only works for real values
print(sess.run(tf.truncatediv(b, a)))     ⇒ [[0 0] [1 1]]
print(sess.run(tf.floor_div(b, a)))       ⇒ [[0 0] [1 1]]
``````

Since I am a noob in programming languages I could not understand some of their documentation which included things like "computes division python style", etc. If someone can explain the differences between all and their practical aspect, I would be grateful.

tf.div - Enforces python v2 division semantics e.g. uses integer division (also known as "floor division") if both arguments are integers and normal floating point division if arguments are float or complex numbers. The result is integer if both arguments are integers, float otherwise.

``````tf.div(7, 5)
# >>> 1
tf.div(-7, 5)
# >>> -2
tf.div(7.0, 5.0)
# >>> 1.4
``````

tf.truediv - enforces python v3 division semantics, e.g. if both arguments are integers they are first cast into float type (the documentation web page specifies which type of integer is converted to which type of float) and then the normal floating point division is applied:

``````tf.truediv(7, 5)
# >>> 1.4
tf.truediv(-7, 5)
# >>> -1.4
tf.truediv(7.0, 5.0)
# >>> 1.4
``````

tf.divide(x,y) essentially calls `x/y`, therefore the result depends on the behavior of the `/` operator in the environment in which the division is performed.

tf.floordiv and tf.floor_div return the same result as tf.div if both arguments are integers and `tf.floor(tf.div(x,y))` if both arguments are floating point numbers:

``````tf.floordiv(7, 5)
# >>> 1
tf.floordiv(-7, 5)
# >>> -2
tf.floordiv(7.0, 5.0)
# >>> 1.0
tf.floordiv(-7.0, 5.0)
# >>> -2.0
``````

tf.realdiv - normal floating point division, this is the operation that tf.truediv calls after it casts its arguments.

tf.truncatediv - rounds the result of division towards zero:

``````tf.truncatediv(7, 5)
# >>> 1
tf.truncatediv(-7, 5)
# UNLIKE tf.floordiv and tf.div
# >>> -1
``````
• Can you explain the error in realdiv given as works only for real values? – DuttaA May 30 '18 at 7:17
• @DuttaA the error message I get when I try to call `tf.realdiv` with integer arguments suggests that it only supports floating point and complex numbers as arguments, contradicting documentation which states that integer types are supported. I would suggest to open a separate question here at stackoverflow or an issue ticket at tensorflow's official repository to resolve this matter. – openmark May 30 '18 at 8:36