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I recently started learning Python, and the concept of for loops is still a little confusing for me. I understand that it generally follows the format for x in y, where y is just some list.

The for-each loop for (int n: someArray) becomes for n in someArray,

And the for loop for (i = 0; i < 9; i-=2) can be represented by for i in range(0, 9, -2)

Suppose instead of a constant increment, I wanted i*=2, or even i*=i. Is this possible, or would I have to use a while loop instead?

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your for i in range(0,9,-2) won't iterate backward if the first number if lesser than the second. –  hexparrot May 3 '12 at 23:05
More accurately, range() cant provide an array with a negative step for a positive value. It's an infinite loop. –  dwerner May 3 '12 at 23:17
@user1320925 do you want these as the values of i: 1 2, 4, 8, 16, 32.... –  Ashwini Chaudhary May 3 '12 at 23:32

5 Answers 5

You will want to use list comprehensions for this

print [x**2 for x in xrange(10)] # X to the 2nd power.


print [x**x for x in xrange(10)] # X to the Xth power.

The list comprehension syntax is a follows:


Under the hood, it acts similar to the map and filter function:


filter(c, map(f, ITERABLE))

Example given:

def square(x): return x**2

print map(square, xrange(10))


def hypercube(x): return x**x

print map(hypercube, xrange(10))

Which can be used as alternative approach if you don't like list comprehensions. You could as well use a for loop, but that would step away from being Python idiomatic...

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Creating a list and then looping over it isn't optimal, and that's not the syntax for a list comp (it's an expression, not a function, it's an iterable, not a list, and there could be an if statement at the end). –  Latty May 3 '12 at 23:13
@Lattyware: It is optimal, it's what a generator expression does. Note how your answer links to list comprehensions... ;) –  Tom Wijsman May 3 '12 at 23:18
Not true. My answer links to a video I made that explains list comprehensions alongside generator expressions and dict and set comprehensions. Generator expressions are lazy, and therefore very different to a list comprehension. If we do a loop to five million, your solution will create a list from 0*2 through 4999999*2, then loop over it. A generator expression will calculate them as needed. –  Latty May 3 '12 at 23:21
That is entirely true, and yet in this case, we are talking about a different set of brackets around an expression. It's not like this optimisation will cost us time, readability or anything else, so why not do it? The quote falls down when we are talking about something that costs us no time or effort, and being in good practice often means that you don't need to worry about it when it does matter. –  Latty May 3 '12 at 23:28
I have not downvoted any other answers - in fact, I upvoted two of the others. The reality is that debugging in Python with generator expressions is fine - debugging in Python is almost always done with print() statements and so it really doesn't matter. If worst comes to worst you can just wrap your generator in list() to see it's output. I have debugged plenty of problems in Python while using generators. As to keeping it simple - a generator expression is no more complex than a list comprehension. –  Latty May 3 '12 at 23:53

As you say, a for loop iterates through the elements of a list. The list can contain anything you like, so you can construct a list beforehand that contains each step.

A for loop can also iterate over a "generator", which is a small piece of code instead of an actual list. In Python, range() is actually a generator (in Python 2.x though, range() returned a list while xrange() was the generator).

For example:

def doubler(x):
    while True:
        yield x
        x *= 2

for i in doubler(1):
    print i

The above for loop will print


and so on, until you press Ctrl+C.

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I would say a standalone generator is overkill for this - a generator expression would probably do it just as well. E.g: for i in (x*2 for x in range(10)): –  Latty May 3 '12 at 23:08
Yes, you can write the code more compactly. However, I think it is instructive to show a taste of what a generalised generator can do. –  Greg Hewgill May 3 '12 at 23:09
While it's nice to know you can do more with it, it's not good to advise people to overcomplicate things. Explaining the generator expression syntax as well would probably be good, to avoid sending the asker off making very simple generators as full functions. –  Latty May 3 '12 at 23:10
I encourage you to add an answer demonstrating the generator expression syntax. –  Greg Hewgill May 3 '12 at 23:11
Done, and +1 for yours - it's a good answer, one can do magic with generators. –  Latty May 3 '12 at 23:23

You can use a generator expression to do this efficiently and with little excess code:

for i in (2**x for x in range(10)): #In Python 2.x, use `xrange()`.

Generator expressions work just like defining a manual generator (as in Greg Hewgill's answer), with a syntax similar to a list comprehension. They are evaluated lazily - meaning that they don't generate a list at the start of the operation, which can cause much better performance on large iterables.

So this generator works by waiting until it is asked for a value, then asking range(10) for a value, doubling that value, and passing it back to the for loop. It does this repeatedly until the range() generator yields no more values.

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@TomWijsman I don't think it's any less readable. If you really wanted you could do doubles = (x*2 for x in range(10)) and then loop over doubles. If you are comparing it to your answer - a list comprehension - we are literally talking about different brackets outside the expression. How is that less readable or maintainable? –  Latty May 3 '12 at 23:26
@TomWijsman My answer is a one liner - and to suggest that a single line is always better than multiple lines is insane. Sometimes more lines are more readable. As to debugging being harder, that simply isn't true. As I said in my other comment - there is a reason why all of Python 3's builtins are now lazy where in 2.x they produced lists. –  Latty May 3 '12 at 23:35
@Lattyware I think the OP wants 2,4,8,16,32... and your solution gives 2,4,6,8,10.... –  Ashwini Chaudhary May 3 '12 at 23:40
@AshwiniChaudhary Whoops, fixed. –  Latty May 4 '12 at 0:00

Bear in mind that the 'list' part of the Python can be any iterable sequence.


A string:

for c in 'abcdefg':
   # deal with the string on a character by character basis...

A file:

with open('somefile','r') as f:
    for line in f:
         # deal with the file line by line

A dictionary:

for key, value in d.items():
   # deal with the key:value pairs from a dict

A slice of a list:

for e in l[10:20:2]:
    # ever other element between 10 and 20 in l 

etc etc etc etc

So it really is a lot deeper than 'just some list'

As others have stated, just set the iterable to be what you want it to be for your example questions:

 for e in (i*i for i in range(10)):
     # the squares of the sequence 0-9...

 for i in (i*2 for i in l):
     # the list l as a sequence * 2...
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+1 - This is a good point. For loops go over any iterable, not just lists. –  Latty May 3 '12 at 23:23
I don't see how this answers the question. –  Tom Wijsman May 3 '12 at 23:33
@Tom Wijsman: The OP states the concept of for loops is still a little confusing for me. I understand that it generally follows the format for x in y, where y is just some list. I was clarifying that y is a lot more than 'just some list' –  Colt 45 May 3 '12 at 23:35
That was not clear from your answer, thank you. –  Tom Wijsman May 3 '12 at 23:39

Just for an alternative, how about generalizing the iterate/increment operation to a lambda function so you can do something like this:

for i in seq(1, 9, lambda x: x*2):
    print i

Where seq is defined below:

from timeit import timeit

def seq(a, b, f):
    x = a;
    while x < b:
        yield x
        x = f(x)

def testSeq():
    l = tuple(seq(1, 100000000, lambda x: x*2))
    #print l

def testGen():
    l = tuple((2**x for x in range(27)))
    #print l


print "seq", timeit('testSeq()', 'from __main__ import testSeq', number = 1000000)
print "gen", timeit('testGen()', 'from __main__ import testGen', number = 1000000)

The difference in performance isn't that much:

seq 7.98655080795
gen 6.19856786728


To support reverse iteration and with a default argument...

def seq(a, b, f = None):
    x = a;
    if b > a:
        if f == None:
            f = lambda x: x+1
        while x < b:
            yield x
            x = f(x)
        if f == None:
            f = lambda x: x-1
        while x > b:
            yield x
            x = f(x)

for i in seq(8, 0, lambda x: x/2):
    print i

Note: This behaves differently to range/xrange in which the direction </> test is chosen by the iterator sign, rather than the difference between start and end values.

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