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I have a type from a dictionary (example)

l =('1037_97',["a","b","c","d","e"])

I wish to save a file (las format) but Liblas can write only single point.

for l in Groups.iteritems():
    for p in xrange(len(l[1])):

I am trying to use if it's possible a List Comprehensions in order to save code and speed the loop

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2 Answers 2

up vote 2 down vote accepted

If you want a shorter solution, consider using map() for inner cycle, or even for both. But it is unlikely to get a significant performance boost. However, for p in l[1]: still may be faster than that construction with xrange. The following example should do what you wanted in a single line:

map(lambda g: map(file_out.write, g), groups.itervalues())

Now let's compare performance of different implementations. Here I tried to measure times on some test data:

import timeit

groups = dict(('1037_%d' % i, ["a","b","c","d","e"]) for i in xrange(100))

class FOut(object):
    def write(self, v):
        #print v

file_out = FOut()

def using_map():
    map(lambda g: map(file_out.write, g), groups.itervalues())

def initial_version():
    for l in groups.iteritems():
        for p in xrange(len(l[1])):

def seq_iteration():
    for l in groups.iteritems():
        for p in l[1]:

def seq_iteration_values():
    for l in groups.itervalues():
        for p in l:

def list_compr():
    [[file_out.write(v) for v in g] for g in groups.itervalues()]

tests = ('initial_version', 'using_map', 'seq_iteration', 'list_compr', 'seq_iteration_values')

for test in tests:
    print test, timeit.timeit('%s()'%test, 'from __main__ import %s'%test, number=10000)

And the result is:

initial_version 0.862531900406
using_map 0.703296899796
seq_iteration 0.541372060776
list_compr 0.632550954819
seq_iteration_values 0.493131160736

As you can see, your initial version is the slowest, fixing iteration helps a lot, map() version is short, but not as fast as the version with itervalues(). List comprehension that creates unneeded lists is not bad, but still slower than the plain cycle.

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Thanks Ellioh. Could i ask why xrange cold be slow? –  Gianni Spear Feb 11 '13 at 15:48
Because you make an extra operation: first get a number from sequence, then get a value by index (or even get value by index twice, as there are two indices). Iterating items one-by-one is highly optimized and should be slightly faster. –  Ellioh Feb 11 '13 at 15:50

Loop comprehensions do not necessarily speed up a loop. They only speed up a loop if the end result should be a list. List comprehensions are faster than creating an empty list and appending to it one by one.

In your case, you want to write items to a file, and not create a new list. The list creation cost is then wasted.

You don't need the xrange() call though, just loop over l[1]. You don't need .iteritems() either, as you ignore the keys. Use .itervalues() instead:

for lst in Groups.itervalues():
    for p in lst:

I used lst as a loop variable; l is easily confused for i in many fonts.

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Dear Martijn thanks. Your solution give me this error Traceback (most recent call last): File "<interactive input>", line 3, in <module> File "C:\Python27\lib\site-packages\liblas\", line 379, in write 'be of type liblas.point.Point' % pt) LASException: cannot write 2, it must be of type liblas.point.Point –  Gianni Spear Feb 11 '13 at 15:33
because p is "2" and not a liblas.point.Point –  Gianni Spear Feb 11 '13 at 15:33
and lst is only the key ('1037_97') without the element ( ["a","b","c","d","e"]) –  Gianni Spear Feb 11 '13 at 15:37
@Gianni: Sorry; I thought and meant .itervalues(), my mistake. –  Martijn Pieters Feb 11 '13 at 15:46
don't problem and thanks, your posts are always great. I was testing .itervalues() and it works well. –  Gianni Spear Feb 11 '13 at 15:47

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