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This is more a programming exercise than a real-world problem: I am looking for a generator expression that resembles the behavior of append.


def combine(sequence, obj):
    for item in sequence:
        yield item
    yield obj

s = ''.join(combine(sequence, obj))

This generator basically resembles append. In the workflow of my program the above is as fast as

s = ''.join(sequence)

I am now wondering if there is a neat generator expression genexpr with

s = ''.join(genexpr)

that resembles the append behavior above without performance caveats.

s = ''.join(_ for a in [sequence, [obj]] for _ in a)

performs bad.

share|improve this question
up vote 4 down vote accepted

Try using chain from itertools module:

''.join(chain(sequence, [obj]))

If you don't want to create a new list for obj, then you may try this:

''.join(chain(sequence, repeat(obj,1)))

I would use [obj] as it's more readable and I doubt that repeat iterator has a less overhead than list creation.

share|improve this answer
Thanks. In the context of my code, both variants are on a par with with sequence.append(obj); s = ''.join(sequence). – Jan-Philip Gehrcke Oct 21 '12 at 14:53
@Jan-PhilipGehrcke append may result in list extension (it's extended behind the scenes sometimes when the free space left to append new elements is out). While chain only creates iterator which goes through existing elements, so there can't be any memory reallocations. – ovgolovin Oct 21 '12 at 14:56
@Jan-PhilipGehrcke This is what I mean: "The time needed to append an item to the list is “amortized constant”; whenever the list needs to allocate more memory, it allocates room for a few items more than it actually needs, to avoid having to reallocate on each call (this assumes that the memory allocator is fast; for huge lists, the allocation overhead may push the behaviour towards O(n*n))." (from here) – ovgolovin Oct 21 '12 at 15:01
@Jan-PhilipGehrcke Please, look at the related question. It explains some deep details, that you may be interested in. – ovgolovin Oct 22 '12 at 15:43

I'm not sure about your particular example, but I found that just using a+[b] was about as fast as anything else even with large lists. Here is my test code:

import timeit
from itertools import chain, repeat


def combine(sequence,obj):
  for item in sequence:
    yield item
  yield obj

def test1():
  return ','.join(a+[b])

def test2():
  return ','.join(combine(a,b))

def test3():
  return ','.join(chain(a,repeat(b,1)))

def test4():
  return ','.join(chain(a,[b]))

def test5():
  return ','.join(y for x in [a,[b]] for y in x)

print 'test1: %g'%timeit.timeit(test1,number=count)
print 'test2: %g'%timeit.timeit(test2,number=count)
print 'test3: %g'%timeit.timeit(test3,number=count)
print 'test4: %g'%timeit.timeit(test4,number=count)
print 'test5: %g'%timeit.timeit(test5,number=count)

And here are the results on my system:

test1: 0.475413
test2: 0.977652
test3: 0.550071
test4: 0.548962
test5: 0.968162
share|improve this answer
It's interesting that test 2 and 5 show equal performance here. And yes, in my code using a+[b] seems to be just fine. Thanks for pointing this out! Now, I am not sure, which one of you has earned the green check mark. Both of you provided valuable insights. Should we just leave it as it is? :) – Jan-Philip Gehrcke Oct 21 '12 at 17:21
I think ovgolovin answered your actual question. This was more FYI. – Vaughn Cato Oct 21 '12 at 18:21

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