Python: how to make if else for loops faster, when first value differs from any other?

I am dealing with a function that looks like this:

def A(x):
A=range(n)
A=(bx if condition1 else cx)
for i in range(1,n):
A[i]=((dx[i] if condition2 else ex[i])

return  map(lambda x: x+3, A)

where A is a list and b,c,d,e are operations that take x as variable. Basically, I need to make an if statement for the first value in the A-list, and a different if statement for any other value apart from the first one. Is there a way to make this more efficient?

thank you

• With numba it's possible to optimise loops. Can you be more specific about b,c,d,e operations? – jezrael Jun 12 at 6:07
• b,c,d,e are functions like: min(x*6/3600, 100-x/0,5), or (x*6, x-3), etc....I didn't want to over complicate the question, but they are not complex functions – Luca91 Jun 12 at 6:14
• @Luca91, why returning map instead of list ? – RomanPerekhrest Jun 12 at 6:15
• no particular reason, I was trying different things to end up with a list. – Luca91 Jun 12 at 6:17
• Is it intentional that your list elements are generators? – Jan Christoph Terasa Jun 12 at 6:30

You can use np.where

import numpy as np
def A(x):
A = np.arange(n)
A = (bx if condition1 else cx)
A[1:] = np.where(condition2, dx[1:], ex[1:])

return A + 3

In terms of code restructuring - at least 2 optimizations can be applied in that context:

• prevent double range() call
• prevent redundant looping caused by map call (just to add 3 to each item)

Optimized version:

def func(x):
res = [((bx if condition1 else cx) if i == 0
else (dx[i] if condition2 else ex[i])) + 3
for i in range(0, n)]

return res
• You may want to start with res = [...] instead of appending a single value to an empty list. But at least you now have working code :-) – Martijn Pieters Jun 12 at 6:32
• Also, a list comprehension would perform better than repeated appends. – Martijn Pieters Jun 12 at 6:32
• @MartijnPieters, I know it goes faster, just went for readability. Ok, let's do it – RomanPerekhrest Jun 12 at 6:37