# Numpy error: invalid value encountered in power

I have the following code:

``````import numpy

def numpysum(n):
a = numpy.arange(n) ** 2
b = numpy.arange(n) ** 3
c = a + b
return c

size = 3000
c = numpysum(size)
``````

When running, I get the error:

D:\Work\programming\python\test_1\src\test1_numpy.py:6: RuntimeWarning: invalid value encountered in power b = numpy.arange(n) ** 3

Note that the following numpyless function works fine:

``````def pythonsum(n):
a = list(range(n))
b = list(range(n))
c = []
for i in range(len(a)):
a[i] = i ** 2
b[i] = i ** 3
c.append(a[i] + b[i])
return c
``````

I guess it happens because I try to raise a large number to power three. What can I do, beside working with floating point numbers?

I am working with Python 3.2.

-
:The code runs fine.Maybe you did sth else that causes the error? –  George Feb 4 '12 at 12:17
Will it run with `size=1000` on your system? Then it's a data type issue -- consider setting the `dtype` parameter in `arange()`. –  krlmlr Feb 4 '12 at 12:30

numpy is actually looking out for you on this one. Unlke in standard Python, its integer operations don't work on arbitrary-precision objects. I'd guess you were running a 32-bit python, because the same operations don't overflow for me:

``````>>> sys.maxsize
9223372036854775807
>>> size = 3000
>>> c = numpysum(size)
>>>
``````

but they will eventually. Even easier to see if you control the size of the type manually:

``````>>> numpy.arange(10, dtype=numpy.int8)**10
__main__:1: RuntimeWarning: invalid value encountered in power
array([  0,   1,   0, -87,   0,  -7,   0, -15,   0,   0], dtype=int8)
>>> numpy.arange(10, dtype=numpy.int16)**10
array([     0,      1,   1024,  -6487,      0,    761, -23552,  15089,
0,      0], dtype=int16)
>>> numpy.arange(10, dtype=numpy.int32)**10
array([          0,           1,        1024,       59049,     1048576,
9765625,    60466176,   282475249,  1073741824, -2147483648], dtype=int32)
>>> numpy.arange(10, dtype=numpy.int64)**10
array([         0,          1,       1024,      59049,    1048576,
9765625,   60466176,  282475249, 1073741824, 3486784401])
``````

where things improve as the number of bits increases. If you really want numpy array operations on Python arbitrary-size integers, you can set dtype to object:

``````>>> numpy.arange(10, dtype=object)**20
array([0, 1, 1048576, 3486784401, 1099511627776, 95367431640625,
3656158440062976, 79792266297612001, 1152921504606846976,
12157665459056928801], dtype=object)
``````
-
Thanks. Indeed, it's python 32 bit. –  lmsasu Feb 4 '12 at 13:17