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I am having an error when running code using the @jit decorator. It appears that some information for the function scipy.special.gammainc() can't be located:

Failed at nopython (nopython frontend)
Unknown attribute 'gammainc' for Module(<module 'scipy.special' from 'C:\home\Miniconda\lib\site-packages\scipy\special\__init__.pyc'>) $164.2 $164.3 = getattr(attr=gammainc, value=$164.2)

Without the @jit decorator the code will run fine. Maybe there is something required to make the attributes of the scipy.special module visible to Numba?

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  • Have you tried from scipy import special or from scipy.special import ge...? Sometimes importing from scipy is tricky.
    – hpaulj
    Aug 12, 2015 at 21:26
  • Thanks for these suggestions, unfortunately I am still getting the errors when I attempt all of the above import methods: Failed at nopython (nopython frontend) Untyped global name 'gammainc' Aug 13, 2015 at 2:22

1 Answer 1

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The problem is that gammainc isn't one of the small list of functions that Numba inherently knows how to deal with (see http://numba.pydata.org/numba-doc/dev/reference/numpysupported.html) - in fact none of the scipy functions are. This means you can't use it in "nopython" mode, unfortunately - it just has to treat it as a normal python function call.

If you remove nopython=True, it should work. However, that isn't hugely satisfactory, because it may well be slower. Without seeing your code it's difficult to know exact what to suggest. However, in general:

  • loops (that don't contain things like gammainc) will be sped up, even without nopython.

  • gammainc is a "ufunc", which means it can be readily applied to a whole array at a time, and should run quickly anyway.

  • you can call func.inspect_types() to see it's been able to compile.

As a trivial example:

from scipy.special import gammainc
import numba as nb
import numpy as np

@nb.jit # note - no "nopython"
def f(x):
  for n in range(x.shape[0]):
    x[n] += 1
  y = gammainc(x,2.5)
  for n in range(y.shape[0]):
    y[n] -= 1
  return y

f(np.linspace(0,20)) # forces it to be JIT'd and outputs an array

Then f.inspect_types() identifies the two loops as "lifted loops", meaning they'll be JIT'd and run quickly. The bit with gammainc is not JIT'd, but is applied to the whole array at once and so should be fast too.

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  • Excellent response, David. Like you say the code runs fine without nopython=True. I was just trying to take things to the end and eek out the most from Numba as possible, but from your explanation above it sounds like I will nevertheless get performance improvements when compiling in object mode. I get what looks to be a 20% increase in performance when using \@jit with object mode on this one function containing gammainc, but I've been spoiled already with the massive gains I've seen after using \@jit on the other functions, so getting nopython mode to work on this function was my goal. Aug 13, 2015 at 15:02

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