I want to write functions that accept a numerical parameter
x that could be unsized, say
x = 1 or sized, a list, tuple or ndarray, say
x = np.array([1,2]). Is there a good way to write code that handles both cases?
As a concrete example, say the goal is to broadcast
x into an array (of predefined shape
x is just a number and to return an error if
x is an array with the wrong shape.
import numpy as np import sys if np.shape(np.atleast_1d(x)) == (1,): x = np.ones(xshape) * x elif np.shape(x) != xshape: sys.exit("wrong shape for x")
The above code seems to work, aside from difficulties with nesting
x = []. It also seems to go against some recommended practices such as
try / except. Any suggestions appreciated.