I tried giving numba a go, as I was told it works very well for numerical/scientific computing applications. However, it seems that I've already run into a problem in the following scenario:
I have a function that computes a 12x12 Jacobian matrix, represented by a numpy array, and then returns this Jacobian. However, when I attempt to decorate said function with
@numba.njit, I get the following error:
This is not usually a problem with Numba itself but instead often caused by the use of unsupported features or an issue in resolving types.
As a basic example of my usage, the following code tries to declare a 12x12 numpy zero matrix, but it fails:
import numpy as np import numba @numba.njit def numpy_matrix_test(): A = np.zeros([12,12]) return A A_out = numpy_matrix_test() print(A_out)
Since I assumed declaring numpy arrays in such a way was common enough that numba would be able to handle them, I'm quite surprised.