In a low-level function that is called many times, I need to do the equivalent of python's list.index, but with a numpy array. The function needs to return when it finds the first value, and raise ValueError otherwise. Something like:
>>> a = np.array([1, 2, 3]) >>> np_index(a, 1) 0 >>> np_index(a, 10) Traceback (most recent call last): File "<stdin>", line 1, in <module> ValueError: 10 not in array
I want to avoid a Python loop if possible.
np.where isn't an option as it always iterates through the entire array; I need something that stops once the first index is found.
EDIT: Some more specific information related to the problem.
About 90% of the time, the index I'm searching for is in the first 1/4 to 1/2 of the array. So there's potentially a factor of 2-4 speedup at stake here. The other 10% of the time the value is not in the array at all.
I've profiled things already, and the call to
np.whereis the bottleneck, taking up at least 50% of the total runtime.
It is not essential that it raise a
ValueError; it just has to return something that obviously indicates that the value isn't in the array.
I will probably code up a solution in Cython, as suggested.