Here's an example which issues the same warning:
import numpy as np
A = np.array()
RuntimeWarning: overflow encountered in long_scalars
In the example above it happens because
a is of dtype
int32, and the maximim value storable in an
int32 is 2**31-1. Since
10**10 > 2**32-1, the exponentiation results in a number that is bigger than that which can be stored in an
Note that you can not rely on
np.seterr(all='warn') to catch all overflow errors in numpy.
without any warning, although it is also due to an overflow error. (The correct answer is
17! = 355687428096000L).
According to numpy developer, Robert Kern,
Unlike true floating point errors (where the hardware FPU sets a
whenever it does an atomic operation that overflows), we need to
implement the integer overflow detection ourselves. We do it on
scalars, but not arrays because it would be too slow to implement
every atomic operation on arrays.
So the burden is on you to choose appropriate
dtypes so that no operation overflows.