# Is there a difference between scipy.pi, numpy.pi, or math.pi?

In a project using SciPy and NumPy, when should one use scipy.pi vs numpy.pi vs just math.pi? Is there a difference between these values?

• It's because you don't always use all of them, and you'd not want to install and import a module just to get Pi. Commented Sep 28, 2012 at 18:40

>>> import math
>>> import numpy as np
>>> import scipy
>>> math.pi == np.pi == scipy.pi
True


So it doesn't matter, they are all the same value.

The only reason all three modules provide a pi value is so if you are using just one of the three modules, you can conveniently have access to pi without having to import another module. They're not providing different values for pi.

• All other things being equal, I would use math.pi simply because it is in the standard library if the module doesn't depend on numpy or scipy otherwise -- But as you say, use pi in whichever module you're importing to begin with because they're all the same value. Commented Sep 28, 2012 at 18:46
• If you're already using numpy use np.pi, but it doesn't make sense to import NumPy just for pi when it's in math. Commented Aug 11, 2016 at 18:40

One thing to note is that not all libraries will use the same meaning for pi, of course, so it never hurts to know what you're using. For example, the symbolic math library Sympy's representation of pi is not the same as math and numpy:

import math
import numpy
import scipy
import sympy

print(math.pi == numpy.pi)
> True
print(math.pi == scipy.pi)
> True
print(math.pi == sympy.pi)
> False

• sympy Pi isn't stored as a constant/float, it's an object that contains the constant
– Naib
Commented Jun 15, 2015 at 8:53
• sympy's is exactly pi, represented symbolically, for doing symbolic math. the others are floating point approximations for doing floating point math. Commented Feb 22, 2016 at 16:41
• math.pi == float(sympy.pi) return True Commented Apr 12, 2022 at 2:28

If we look its source code, scipy.pi is precisely math.pi; in fact, it's defined as

import math as _math
pi = _math.pi


In their source codes, math.pi is defined to be equal to 3.14159265358979323846 and numpy.pi is defined to be equal to 3.141592653589793238462643383279502884; both are well above the 15 digit accuracy of a float in Python, so it doesn't matter which one you use.

That said, if you're not already using numpy or scipy, importing them just for np.pi or scipy.pi would add unnecessary dependency while math is a Python standard library, so there's not dependency issues. For example, for pi in tensorflow code in python, one could use tf.constant(math.pi).