# In tensorflow what is the difference between tf.add and operator (+)?

In tensorflow tutorials, I see both codes like `tf.add(tf.matmul(X, W), b)` and `tf.matmul(X, W) + b`, what is the difference between using the math function `tf.add()`, `tf.assign()`, etc and the operators `+` and `=`, etc, in precision or other aspects?

There's no difference in precision between `a+b` and `tf.add(a, b)`. The former translates to `a.__add__(b)` which gets mapped to `tf.add` by means of following line in math_ops.py

`_OverrideBinaryOperatorHelper(gen_math_ops.add, "add")`

The only difference is that node name in the underlying Graph is `add` instead of `Add`. You can generally compare things by looking at the underlying Graph representation like this

``````tf.reset_default_graph()
dtype = tf.int32
a = tf.placeholder(dtype)
b = tf.placeholder(dtype)
c = a+b
print(tf.get_default_graph().as_graph_def())
``````

You could also see this directly by inspecting the `__add__` method. There's an extra level of indirection because it's a closure, but you can get the underlying function as follows

``````real_function = tf.Tensor.__add__.im_func.func_closure[0].cell_contents
print(real_function.__module__ + "." + real_function.__name__)
``````

And you'll see output below which means that they call same underlying function

``````tensorflow.python.ops.gen_math_ops.add
``````

You can see from `tf.Tensor.OVERLOADABLE_OPERATORS` that following Python special methods are potentially overloaded by appropriate TensorFlow versions

``````{'__abs__',
'__and__',
'__div__',
'__floordiv__',
'__ge__',
'__getitem__',
'__gt__',
'__invert__',
'__le__',
'__lt__',
'__mod__',
'__mul__',
'__neg__',
'__or__',
'__pow__',
'__rand__',
'__rdiv__',
'__rfloordiv__',
'__rmod__',
'__rmul__',
'__ror__',
'__rpow__',
'__rsub__',
'__rtruediv__',
'__rxor__',
'__sub__',
'__truediv__',
'__xor__'}
``````

Those methods are described in Python reference 3.3.7: emulating numeric types. Note that Python data model does not provide a way to overload assignment operator `=` so assignment always uses native Python implementation.

• So why these tensorflow methods are defined at all? – Hossein Jun 21 '17 at 10:46
• @Hossein Because we at Google love being extra. – cs95 Jun 22 '18 at 4:33

Yaroslav nicely explained that there is no real difference. I will just add when using `tf.add` is beneficial.

tf.add has one important parameter which is `name`. It allows you to name the operation in a graph which will be visible in tensorboard. So my rule of thumb, if it will be beneficial to name an operation in tensorboard, I use `tf.` equivalent, otherwise I go for brevity and use overloaded version.

``````a = [1,1,1,1]
b = [1,1,1,1]
Now, the value of `p` printed will be `[2,2,2,2]` and simple `a+b` printed will be `[1,1,1,1,1,1,1,1]`.