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Apparently xrange is faster but I have no idea why it's faster (and no proof besides the anecdotal so far that it is faster) or what besides that is different about

for i in range(0, 20):
for i in xrange(0, 20):
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For proof, see the tests below :-) – Dave Everitt Aug 3 '11 at 12:24

20 Answers 20

up vote 354 down vote accepted

range creates a list, so if you do range(1, 10000000) it creates a list in memory with 9999999 elements.

xrange is a sequence object that evaluates lazily.

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xrange is nto exactly a generator but it evaluates lazily and acts like a generator. – Vaibhav Mishra Aug 5 '12 at 11:01
xrange(x).__iter__() is a generator. – Augusto Men Aug 13 '13 at 14:28
Why did they make xrange, rather than making range lazy? – Robert Grant Aug 27 '14 at 8:10
@RobertGrant If you iterate over that list 1000 times, it'll be slower to generate the values each time – Alvaro Feb 27 at 13:33
@RobertGrant, they did. In Python 3. (They couldn't do that in the Python 2.x line, since all changes must be backwards compatible.) – Paul Draper May 7 at 3:50

range creates a list, so if you do range(1, 10000000) it creates a list in memory with 10000000 elements.

xrange is a generator, so it is a sequence object is a that evaluates lazily.

This is true, but in Python 3, range will be implemented by the Python 2 xrange(). If you need to actually generate the list, you will need to do:

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I don't see that being a huge problem (regarding breaking existing applications) as range was mostly for generating indexes to be used in for loops as "for i in range(1, 10):" – Benjamin Autin Sep 19 '08 at 3:52
+1 Thanks for this answer, the information about Python 3 replacing range with xrange is very useful. I actually told someone to use xrange instead or range and they said that it did not matter in python 3, so I google searched for more information and this answer came up :) – Cervo Apr 18 '12 at 14:42
This formulation ("range will be replaced with xrange") is somehow misleading, as it may be interpreted as if one should replace calls to range by calls to xrange in Python 3, while this is actually the opposite : in Python 3, there won't be an xrange function anymore. I guess you meant range will be implemented as xrange is in Python 2. – Skippy le Grand Gourou Jul 22 '13 at 16:24

Remember, use the timeit module to test which of small snipps of code is faster!

$ python -m timeit 'for i in range(1000000):' ' pass'
10 loops, best of 3: 90.5 msec per loop
$ python -m timeit 'for i in xrange(1000000):' ' pass'
10 loops, best of 3: 51.1 msec per loop

Personally, I always use range(), unless I were dealing with really huge lists -- as you can see, time-wise, for a list of a million entries, the extra overhead is only 0.04 seconds. And as Corey points out, in Python 3.0 xrange will go away and range will give you nice iterator behaviour anyway.

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+1 for timeit example. Note: to run in windows cmd it is needed to use double quote, i.e. ". So code will be python -m timeit "for i in xrange(1000000):" " pass" – stalk Jun 20 '12 at 11:48
The main benefit of xrange is memory, not time. – endolith Jun 6 '14 at 18:18
+1 for the practical answer: use range unless huge. BTW they are conceptually identical, correct? Oddly no answer spells that out. – BobStein-VisiBone Aug 18 '14 at 14:54
If xrange is faster and doesn't hog memory, why ever use range? – Austin Mohr Aug 28 '14 at 1:21
I agree with your statement generally, but your evaluation is wrong: the extra overhead is only 0.04 seconds isnt the correct way to look at it, (90.5-51.1)/51.1 = 1.771 times slower is correct because it conveys that if this is the core loop of your program it can potentially bottleneck it. However, if this is a small part then 1.77x isnt much. – chacham15 Dec 11 '14 at 18:22

xrange only stores the range params and generates the numbers on demand. However the C implementation of Python currently restricts its args to C longs:

xrange(2**32-1, 2**32+1)  # When long is 32 bits, OverflowError: Python int too large to convert to C long
range(2**32-1, 2**32+1)   # OK --> [4294967295L, 4294967296L]

Note that in Python 3.0 there is only range and it behaves like the 2.x xrange but without the limitations on minimum and maximum end points.

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interesting observation. thanks for passing that along. – shreddd Jan 6 '13 at 17:28

xrange returns an iterator and only keeps one number in memory at a time. range keeps the entire list of numbers in memory.

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xrange does not return an iterator. – abarnert May 6 at 21:46

Do spend some time with the Library Reference. The more familiar you are with it, the faster you can find answers to questions like this. Especially important are the first few chapters about builtin objects and types.

The advantage of the xrange type is that an xrange object will always take the same amount of memory, no matter the size of the range it represents. There are no consistent performance advantages.

Another way to find quick information about a Python construct is the docstring and the help-function:

print xrange.__doc__ # def doc(x): print x.__doc__ is super useful
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The library is good but it's not always so easy to get the answer to the question you have. – Teifion Sep 18 '08 at 17:58
Go to the library reference, hit ctrl+f, search for range and you will get two results. It's not much effort to find the answer to this question. – David Locke Sep 18 '08 at 18:03

It is for optimization reasons.

range() will create a list of values from start to end (0 .. 20 in your example). This will become an expensive operation on very large ranges.

xrange() on the other hand is much more optimised. it will only compute the next value when needed (via an xrange sequence object) and does not create a list of all values like range() does.

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range creates a list, so if you do range(1, 10000000) it creates a list in memory with 10000000 elements. xrange is a generator, so it evaluates lazily.

This brings you two advantages:

  1. You can iterate longer lists without getting a MemoryError.
  2. As it resolves each number lazily, if you stop iteration early, you won't waste time creating the whole list.
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I am shocked nobody read doc

This function is very similar to range(), but returns an xrange object instead of a list. This is an opaque sequence type which yields the same values as the corresponding list, without actually storing them all simultaneously. The advantage of xrange() over range() is minimal (since xrange() still has to create the values when asked for them) except when a very large range is used on a memory-starved machine or when all of the range’s elements are never used (such as when the loop is usually terminated with break).

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range generates the entire list and returns it. xrange does not -- it generates the numbers in the list on demand.

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xrange uses an iterator (generates values on the fly), range returns a list.

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When testing range against xrange in a loop (I know I should use timeit, but this was swiftly hacked up from memory using a simple list comprehension example) I found the following:

import time

for x in range(1, 10):

    t = time.time()
    [v*10 for v in range(1, 10000)]
    print "range:  %.4f" % ((time.time()-t)*100)

    t = time.time()
    [v*10 for v in xrange(1, 10000)]
    print "xrange: %.4f" % ((time.time()-t)*100)

which gives:

range:  0.4273
xrange: 0.3733
range:  0.3881
xrange: 0.3507
range:  0.3712
xrange: 0.3565
range:  0.4031
xrange: 0.3558
range:  0.3714
xrange: 0.3520
range:  0.3834
xrange: 0.3546
range:  0.3717
xrange: 0.3511
range:  0.3745
xrange: 0.3523
range:  0.3858
xrange: 0.3997 <- garbage collection?

Or, using xrange in the for loop:

range:  0.4172
xrange: 0.3701
range:  0.3840
xrange: 0.3547
range:  0.3830
xrange: 0.3862 <- garbage collection?
range:  0.4019
xrange: 0.3532
range:  0.3738
xrange: 0.3726
range:  0.3762
xrange: 0.3533
range:  0.3710
xrange: 0.3509
range:  0.3738
xrange: 0.3512
range:  0.3703
xrange: 0.3509

Is my snippet testing properly? Any comments on the slower instance of xrange? Or a better example :-)

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Running a benchmark like this, one time, doesnt provide exact timing results. There is always a variance.. It could be either GC, or another process stealing the CPU... anything. That's why benchmarks are usually run 10-100-1000-... – Vajk Hermecz Nov 9 '12 at 10:25
this is just a hasty snippet printout - I ran it a few times, but only up to around 100, and xrange seemed slightly quicker, although with Python 3 the comparison is now redundant. – Dave Everitt Nov 10 '12 at 11:48
This is what timeit is for. It takes care of running many times, disabling GC, using the best clock instead of time, etc. – abarnert May 6 at 22:13

Some of the other answers mention that Python 3 eliminated 2.x's range and renamed 2.x's xrange to range. However, unless you're using 3.0 or 3.1 (which nobody should be), it's actually a somewhat different type.

As the 3.1 docs say:

Range objects have very little behavior: they only support indexing, iteration, and the len function.

However, in 3.2+, range is a full sequence—it supports extended slices, and all of the methods of with the same semantics as a list.*

And, at least in CPython and PyPy (the only two 3.2+ implementations that currently exist), it also has constant-time implementations of the index and count methods and the in operator (as long as you only pass it integers). This means writing 123456 in r is reasonable in 3.2+, while in 2.7 or 3.1 it would be a horrible idea.

* The fact that issubclass(xrange, collections.Sequence) returns True in 2.6-2.7 and 3.0-3.1 is a bug that was fixed in 3.2 and not backported.

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Nice answer. Happy I scrolled all the way down here. – Scott Jun 1 at 6:52

On a requirement for scanning/printing of 0-N items , range and xrange works as follows.

range() - creates a new list in the memory and takes the whole 0 to N items(totally N+1) and prints them. xrange() - creates a iterator instance that scans through the items and keeps only the current encountered item into the memory , hence utilising same amount of memory all the time.

In case the required element is somewhat at the beginning of the list only then it saves a good amount of time and memory.

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xrange does not create an iterator instance. It creates an xrange object, which is iterable, but not an iterator—almost (but not quite) a sequence, like a list. – abarnert Jun 5 at 6:20

range returns a static list at runtime.
xrange returns an object (which acts like a generator, although it's certainly not one) from which values are generated as and when required.

When to use which?

  • Use xrange if you want to generate a list for a gigantic range, say 1 billion, especially when you have a "memory sensitive system" like a cell phone.
  • Use range if you want to iterate over the list several times.

PS: Python 3.x's range function == Python 2.x's xrange function.

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xrange does not return a generator object. – abarnert May 6 at 21:46
If I understand correctly, that is how it is explained here(for Python 2.x): – kmario23 May 6 at 22:41
Then the wiki is wrong. (I don't know who the "SH" is who added and signed that comment.) The official documentation is right; you can test it yourself and see whether it's a generator or a sequence. – abarnert May 6 at 22:43
ok. But it's still confusing after reading this:… – kmario23 May 6 at 22:51
The fun question is what to do when the interpreter disagrees with the official docs, or with a different interpreter… But fortunately, that doesn't come up too often… – abarnert May 6 at 23:03

The difference decreases for smaller arguments to range(..) / xrange(..):

$ python -m timeit "for i in xrange(10111):" " for k in range(100):" "  pass"
10 loops, best of 3: 59.4 msec per loop

$ python -m timeit "for i in xrange(10111):" " for k in xrange(100):" "  pass"
10 loops, best of 3: 46.9 msec per loop

In this case xrange(100) is only about 20% more efficient.

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range(): range(1, 10) returns a list from 1 to 10 numbers & hold whole list in memory.

xrange(): Like range(), but instead of returning a list, returns an object that generates the numbers in the range on demand. For looping, this is lightly faster than range() and more memory efficient. xrange() object like an iterator and generates the numbers on demand.(Lazy Evaluation)

In [1]: range(1,10)

Out[1]: [1, 2, 3, 4, 5, 6, 7, 8, 9]

In [2]: xrange(10)

Out[2]: xrange(10)

In [3]: print xrange.doc

xrange([start,] stop[, step]) -> xrange object

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Read the following post for the comparison between range and xrange with graphical analysis.

Python range Vs xrange

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See this post to find difference between range and xrange:

To quote:

range returns exactly what you think: a list of consecutive integers, of a defined length beginning with 0. xrange, however, returns an "xrange object", which acts a great deal like an iterator

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I realize this is 5 years old, but that post is wrong about nearly everything. xrange is not an iterator. The list returned by range does support iteration (a list is pretty much the prototypical example of an iterable). The overall benefit of xrange is not "minimal". And so on. – abarnert May 6 at 22:12

Range returns a list while xrange returns an xrange object which takes the same memory irrespective of the range size,as in this case,only one element is generated and available per iteration whereas in case of using range, all the elements are generated at once and are available in the memory.

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