Why does numpy.power return 0 for small exponents while math.pow returns the correct answer?

In [25]: np.power(10,-100)
Out[25]: 0

In [26]: math.pow(10,-100)
Out[26]: 1e-100


I would expect both the commands to return 1e-100. This is not a precision issue either, since the issue persists even after increasing precision to 500. Is there some setting which I can change to get the correct answer?

Oh, it's much "worse" than that:

In [2]: numpy.power(10,-1)
Out[2]: 0


But this is a hint to what's going on: 10 is an integer, and numpy.power doesn't coerce the numbers to floats. But this works:

In [3]: numpy.power(10.,-1)
Out[3]: 0.10000000000000001

In [4]: numpy.power(10.,-100)
Out[4]: 1e-100


Note, however, that the power operator, **, does convert to float:

In [5]: 10**-1
Out[5]: 0.1

• This is something that should definitely come up with an auto-warning with the numpy module
– mjp
Commented Oct 25, 2016 at 22:25

numpy method assumes you want integer returned since you supplied an integer.

np.power(10.0,-100)


works as you would expect.

Given input two input values, you can check the datatype of the object that np.power will return by inspecting the types attribute:

>>> np.power.types
['bb->b', 'BB->B', 'hh->h', 'HH->H', 'ii->i', 'II->I', 'll->l', 'LL->L', 'qq->q',
'QQ->Q', 'ee->e', 'ff->f', 'dd->d', 'gg->g', 'FF->F', 'DD->D', 'GG->G', 'OO->O']


Python-compatible integer types are denoted by l, compatible-compatible Python floats by d (documents).

np.power effectively decides what to return by checking the types of the arguments passed and using the first matching signature from this list.

So given 10 and -100, np.power matches the integer integer -> integer signature and returns the integer 0.

On the other hand, if one of the arguments is a float then the integer argument will also be cast to a float, and the float float -> float signature is used (and the correct float value is returned).