Why or why not?
问题:
回答1:
For performance, especially when you\'re iterating over a large range, xrange()
is usually better. However, there are still a few cases why you might prefer range()
:
In python 3,
range()
does whatxrange()
used to do andxrange()
does not exist. If you want to write code that will run on both Python 2 and Python 3, you can\'t usexrange()
.range()
can actually be faster in some cases - eg. if iterating over the same sequence multiple times.xrange()
has to reconstruct the integer object every time, butrange()
will have real integer objects. (It will always perform worse in terms of memory however)xrange()
isn\'t usable in all cases where a real list is needed. For instance, it doesn\'t support slices, or any list methods.
[Edit] There are a couple of posts mentioning how range()
will be upgraded by the 2to3 tool. For the record, here\'s the output of running the tool on some sample usages of range()
and xrange()
RefactoringTool: Skipping implicit fixer: buffer
RefactoringTool: Skipping implicit fixer: idioms
RefactoringTool: Skipping implicit fixer: ws_comma
--- range_test.py (original)
+++ range_test.py (refactored)
@@ -1,7 +1,7 @@
for x in range(20):
- a=range(20)
+ a=list(range(20))
b=list(range(20))
c=[x for x in range(20)]
d=(x for x in range(20))
- e=xrange(20)
+ e=range(20)
As you can see, when used in a for loop or comprehension, or where already wrapped with list(), range is left unchanged.
回答2:
No, they both have their uses:
Use xrange()
when iterating, as it saves memory. Say:
for x in xrange(1, one_zillion):
rather than:
for x in range(1, one_zillion):
On the other hand, use range()
if you actually want a list of numbers.
multiples_of_seven = range(7,100,7)
print \"Multiples of seven < 100: \", multiples_of_seven
回答3:
You should favour range()
over xrange()
only when you need an actual list. For instance, when you want to modify the list returned by range()
, or when you wish to slice it. For iteration or even just normal indexing, xrange()
will work fine (and usually much more efficiently). There is a point where range()
is a bit faster than xrange()
for very small lists, but depending on your hardware and various other details, the break-even can be at a result of length 1 or 2; not something to worry about. Prefer xrange()
.
回答4:
One other difference is that xrange() can\'t support numbers bigger than C ints, so if you want to have a range using python\'s built in large number support, you have to use range().
Python 2.7.3 (default, Jul 13 2012, 22:29:01)
[GCC 4.7.1] on linux2
Type \"help\", \"copyright\", \"credits\" or \"license\" for more information.
>>> range(123456787676676767676676,123456787676676767676679)
[123456787676676767676676L, 123456787676676767676677L, 123456787676676767676678L]
>>> xrange(123456787676676767676676,123456787676676767676679)
Traceback (most recent call last):
File \"<stdin>\", line 1, in <module>
OverflowError: Python int too large to convert to C long
Python 3 does not have this problem:
Python 3.2.3 (default, Jul 14 2012, 01:01:48)
[GCC 4.7.1] on linux2
Type \"help\", \"copyright\", \"credits\" or \"license\" for more information.
>>> range(123456787676676767676676,123456787676676767676679)
range(123456787676676767676676, 123456787676676767676679)
回答5:
xrange()
is more efficient because instead of generating a list of objects, it just generates one object at a time. Instead of 100 integers, and all of their overhead, and the list to put them in, you just have one integer at a time. Faster generation, better memory use, more efficient code.
Unless I specifically need a list for something, I always favor xrange()
回答6:
range() returns a list, xrange() returns an xrange object.
xrange() is a bit faster, and a bit more memory efficient. But the gain is not very large.
The extra memory used by a list is of course not just wasted, lists have more functionality (slice, repeat, insert, ...). Exact differences can be found in the documentation. There is no bonehard rule, use what is needed.
Python 3.0 is still in development, but IIRC range() will very similar to xrange() of 2.X and list(range()) can be used to generate lists.
回答7:
I would just like to say that it REALLY isn\'t that difficult to get an xrange object with slice and indexing functionality. I have written some code that works pretty dang well and is just as fast as xrange for when it counts (iterations).
from __future__ import division
def read_xrange(xrange_object):
# returns the xrange object\'s start, stop, and step
start = xrange_object[0]
if len(xrange_object) > 1:
step = xrange_object[1] - xrange_object[0]
else:
step = 1
stop = xrange_object[-1] + step
return start, stop, step
class Xrange(object):
\'\'\' creates an xrange-like object that supports slicing and indexing.
ex: a = Xrange(20)
a.index(10)
will work
Also a[:5]
will return another Xrange object with the specified attributes
Also allows for the conversion from an existing xrange object
\'\'\'
def __init__(self, *inputs):
# allow inputs of xrange objects
if len(inputs) == 1:
test, = inputs
if type(test) == xrange:
self.xrange = test
self.start, self.stop, self.step = read_xrange(test)
return
# or create one from start, stop, step
self.start, self.step = 0, None
if len(inputs) == 1:
self.stop, = inputs
elif len(inputs) == 2:
self.start, self.stop = inputs
elif len(inputs) == 3:
self.start, self.stop, self.step = inputs
else:
raise ValueError(inputs)
self.xrange = xrange(self.start, self.stop, self.step)
def __iter__(self):
return iter(self.xrange)
def __getitem__(self, item):
if type(item) is int:
if item < 0:
item += len(self)
return self.xrange[item]
if type(item) is slice:
# get the indexes, and then convert to the number
start, stop, step = item.start, item.stop, item.step
start = start if start != None else 0 # convert start = None to start = 0
if start < 0:
start += start
start = self[start]
if start < 0: raise IndexError(item)
step = (self.step if self.step != None else 1) * (step if step != None else 1)
stop = stop if stop is not None else self.xrange[-1]
if stop < 0:
stop += stop
stop = self[stop]
stop = stop
if stop > self.stop:
raise IndexError
if start < self.start:
raise IndexError
return Xrange(start, stop, step)
def index(self, value):
error = ValueError(\'object.index({0}): {0} not in object\'.format(value))
index = (value - self.start)/self.step
if index % 1 != 0:
raise error
index = int(index)
try:
self.xrange[index]
except (IndexError, TypeError):
raise error
return index
def __len__(self):
return len(self.xrange)
Honestly, I think the whole issue is kind of silly and xrange should do all of this anyway...
回答8:
A good example given in book: Practical Python By Magnus Lie Hetland
>>> zip(range(5), xrange(100000000))
[(0, 0), (1, 1), (2, 2), (3, 3), (4, 4)]
I wouldn’t recommend using range instead of xrange in the preceding example—although only the first five numbers are needed, range calculates all the numbers, and that may take a lot of time. With xrange, this isn’t a problem because it calculates only those numbers needed.
Yes I read @Brian\'s answer: In python 3, range() is a generator anyway and xrange() does not exist.
回答9:
Go with range for these reasons:
1) xrange will be going away in newer Python versions. This gives you easy future compatibility.
2) range will take on the efficiencies associated with xrange.
回答10:
Okay, everyone here as a different opinion as to the tradeoffs and advantages of xrange versus range. They\'re mostly correct, xrange is an iterator, and range fleshes out and creates an actual list. For the majority of cases, you won\'t really notice a difference between the two. (You can use map with range but not with xrange, but it uses up more memory.)
What I think you rally want to hear, however, is that the preferred choice is xrange. Since range in Python 3 is an iterator, the code conversion tool 2to3 will correctly convert all uses of xrange to range, and will throw out an error or warning for uses of range. If you want to be sure to easily convert your code in the future, you\'ll use xrange only, and list(xrange) when you\'re sure that you want a list. I learned this during the CPython sprint at PyCon this year (2008) in Chicago.
回答11:
range()
:range(1, 10)
returns a list from 1 to 10 numbers & hold whole list in memory.xrange()
: Likerange()
, but instead of returning a list, returns an object that generates the numbers in the range on demand. For looping, this is lightly faster thanrange()
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__
Out[3]: xrange([start,] stop[, step]) -> xrange object
range()
does the same thing as xrange()
used to do in Python 3 and there is not term xrange()
exist in Python 3.
range()
can actually be faster in some scenario if you iterating over the same sequence multiple times. xrange()
has to reconstruct the integer object every time, but range()
will have real integer objects.
回答12:
While xrange
is faster than range
in most circumstances, the difference in performance is pretty minimal. The little program below compares iterating over a range
and an xrange
:
import timeit
# Try various list sizes.
for list_len in [1, 10, 100, 1000, 10000, 100000, 1000000]:
# Time doing a range and an xrange.
rtime = timeit.timeit(\'a=0;\\nfor n in range(%d): a += n\'%list_len, number=1000)
xrtime = timeit.timeit(\'a=0;\\nfor n in xrange(%d): a += n\'%list_len, number=1000)
# Print the result
print \"Loop list of len %d: range=%.4f, xrange=%.4f\"%(list_len, rtime, xrtime)
The results below shows that xrange
is indeed faster, but not enough to sweat over.
Loop list of len 1: range=0.0003, xrange=0.0003
Loop list of len 10: range=0.0013, xrange=0.0011
Loop list of len 100: range=0.0068, xrange=0.0034
Loop list of len 1000: range=0.0609, xrange=0.0438
Loop list of len 10000: range=0.5527, xrange=0.5266
Loop list of len 100000: range=10.1666, xrange=7.8481
Loop list of len 1000000: range=168.3425, xrange=155.8719
So by all means use xrange
, but unless you\'re on a constrained hardware, don\'t worry too much about it.