# Is a generator function faster than the corresponding for loops ((or iterations broadly) in Python

I am an beginner Python user and though I use Generators frequently(they are neat and concise, I want to understand if they are better than corresponding for loops(or iterations broadly) Faster : In sense of processing time and/or call overhead, even memory for that matter. Example -: [Here, data is a dictionary object]

``````from math import sqrt

# **Generator**
sum = sqrt(sum([pow(data[pers1][item] - data[pers2][item], 2)
for item in data[pers1]
if item in data[pers2]]))

# **For loop Equivalent**
sum = 0
for item in data[pers1]:
if item in data[pers2]:
sum += sqrt(pow(data[pers1][item] - data[pers2][item], 2))
``````

is the looping structure exactly the same, and if it would differ(in some other case), when would that be ? I tried to scale-up the input data and measure time (proxy for lookups), but it wasn't conclusive . I want to understand this more intuitively, i.e. if there's a difference at all.

[I am on python 2.7]

Code adapted from "Programming collective intelligence" Related question : Python's [<generator expression>] at least 3x faster than list(<generator expression>)?

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Usually `for` loops are the slowest –  jamylak Apr 16 '13 at 6:19
I think you had it right the first time round: measure then develop intuition, not the other way around. –  NPE Apr 16 '13 at 6:20
your `sum` is actually using a `list` comp and not a genexp. You should remove the square brackets after `sum` –  jamylak Apr 16 '13 at 6:24
Every strategy has different trade-offs between CPU and memory usage, depending on the size of your dataset. Premature optimization is the root of all evil - if you have a performance problem then profile/optimize, if not, why sweat? –  Paulo Scardine Apr 16 '13 at 6:26