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I have a function that deals with complex data type and I am using numba for faster processing. I declare a zero array using numpy, with complex data type, to be filled in later in the function. But while running numba is not able to overload the zero generating function. To reproduce the error I have provided an MWE.

import numpy as np
from numba import njit

@njit
def my_func(idx):
    a = np.zeros((10, 5), dtype=complex)
    a[idx] = 10
    return a

my_func(4)

The following error is shown where the array a is being initialized.

numba.core.errors.TypingError: Failed in nopython mode pipeline (step: nopython frontend)

No implementation of function Function(<built-in function zeros>) found for signature:
zeros(Tuple(Literal[int](10), Literal[int](5)), dtype=Function(<class 'complex'>))
There are 2 candidate implementations:

 Of which 2 did not match due to:
  Overload of function 'zeros': File: numba\core\typing\npydecl.py: Line 511.
    With argument(s): '(UniTuple(int64 x 2), dtype=Function(<class 'complex'>))':
   No match.

I am assuming this has got to do with the data type of the variable a (I need it to be complex). How can I go about this error?

Any help would be appreciated, thanks.

6
  • I suppose that you can rewrite this so that my_func operates inplace on an argument a. Jun 4 at 9:12
  • @hilberts_drinking_problem, this is just an example. The actual function is much more involved and it would be difficult to make an inplace replacement for the function
    – learner
    Jun 4 at 9:33
  • I take your point, but in some sense you are trying to implement functionality that one would want to be in numba. Jun 4 at 9:43
  • Also, it seems that replacing complex with np.complex64 or np.complex128 works, while other choices I tried do not. Jun 4 at 9:45
  • Presumably, this corresponds to a pair of 32-bit floats and 64-bit floats. Jun 4 at 9:52
1

Your problem has nothing to do with complex numbers. If you specified a = np.zeros((10, 5), dtype=int), you'd run into the same problem.

While numpy takes python native data types int, float and complex and treats them as np.int32, np.float64 and np.complex128, numba doesn't do that by itself however.

So whenever you specify data types inside jitted functions, you either use numpy data types:

import numpy as np
from numba import njit

@njit
def my_func(idx):
    a = np.zeros((10, 5), dtype=np.complex128)
    a[idx] = 10
    return a

my_func(4)

Or you use numba data types either via direct import:

import numpy as np
from numba import njit, complex128

@njit
def my_func(idx):
    a = np.zeros((10, 5), dtype=complex128)
    a[idx] = 10
    return a

my_func(4)

or via types:

import numpy as np
from numba import njit, types

@njit
def my_func(idx):
    a = np.zeros((10, 5), dtype=types.complex128)
    a[idx] = 10
    return a

my_func(4)

To my knowledge, it really doesn't make a difference, which one of these options you use. Here is the relevant part of the numba documentation.

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