show/hide this revision's text 3 added 257 characters in body

I added the filter solutions to Brian's code:

import string, re, timeit

# Precomputed values (for str_join_set and translate)

letter_set = frozenset(string.ascii_lowercase + string.ascii_uppercase)
tab = string.maketrans(string.ascii_lowercase + string.ascii_uppercase,
                       string.ascii_lowercase * 2)
deletions = ''.join(ch for ch in map(chr,range(256)) if ch not in letter_set)

s="A235th@#$&( er Ra{}|?>ndom"

def test_original(s):
    tmpStr = s.lower().strip()
    retStrList = []
    for x in tmpStr:
        if x in string.ascii_lowercase:
            retStrList.append(x)

    return ''.join(retStrList)


def test_regex(s):
    return re.sub('[^a-z]', '', s.lower())

def test_regex_closure(s):
  nonascii = re.compile('[^a-z]')
  def replacer(s):
    return nonascii.sub('', s.lower().strip())
  return replacer(s)


def test_str_join(s):
    return ''.join(c for c in s.lower() if c in string.ascii_lowercase)

def test_str_join_set(s):
    return ''.join(c for c in s.lower() if c in letter_set)

def test_str_filter(s)test_filter_set(s):
    return filter(letter_set.__contains__, s.lower())

def test_filter_isalpha(s):
    return filter(str.isalpha, s).lower()

def test_str_filter_2(s)test_filter_lambda(s):
    return filter(lambda x: x in string.ascii_lowercase, s.lower())

def test_translate(s):
    return string.translate(s, tab, deletions)

for test in sorted(globals()):
    if test.startswith("test_"):
        print "%30s : %s" % (test, timeit.Timer("f(s)", 
              "from __main__ import %s as f, s" % test).timeit(200000))

This gives me:

       test_filter_isalpha : 1.31981746283
        test_filter_lambda : 2.23935583992
           test_filter_set : 0.76511679557
             test_original : 2.11812814198
                2.13079176264
                test_regex : 2.46296498577
        2.44295629752
        test_regex_closure : 2.64243025301
           test_str_filter : 1.24944343485
         test_str_filter_2 : 2.25706647074
             2.65205913042
             test_str_join : 2.2496496063
         2.25571266739
         test_str_join_set : 1.75109182871
            1.75565888961
            test_translate : 0.277178803451
0.269259640541

It appears that isalpha is using a similar algorithm, at least in terms of O(), to the set algorithm.


Edit: Added the filter set, and renamed the filter functions to be a little more clear.

show/hide this revision's text 2 Added the regex closure and the original solution posted in the question.

I added the filter solutions to Brian's code:

import string, re, timeit

# Precomputed values (for str_join_set and translate)

letter_set = frozenset(string.ascii_lowercase + string.ascii_uppercase)
tab = string.maketrans(string.ascii_lowercase + string.ascii_uppercase,
                       string.ascii_lowercase * 2)
deletions = ''.join(ch for ch in map(chr,range(256)) if ch not in letter_set)

s="A235th@#$&( er Ra{}|?>ndom"

def test_original(s):
    tmpStr = s.lower().strip()
    retStrList = []
    for x in tmpStr:
        if x in string.ascii_lowercase:
            retStrList.append(x)

    return ''.join(retStrList)


def test_regex(s):
    return re.sub('[^a-z]', '', s.lower())

def test_regex_closure(s):
  nonascii = re.compile('[^a-z]')
  def replacer(s):
    return nonascii.sub('', s.lower().strip())
  return replacer(s)


def test_str_join(s):
    return ''.join(c for c in s.lower() if c in string.ascii_lowercase)

def test_str_join_set(s):
    return ''.join(c for c in s.lower() if c in letter_set)

def test_str_filter(s):
    return filter(str.isalpha, s).lower()

def test_str_filter_2(s):
    return filter(lambda x: x in string.ascii_lowercase, s.lower())

def test_translate(s):
    return string.translate(s, tab, deletions)

for test in sorted(globals()):
    if test.startswith("test_"):
        print "%30s : %s" % (test, timeit.Timer("f(s)", 
              "from __main__ import %s as f, s" % test).timeit(200000))

This gives me:

             test_original : 2.11812814198
                test_regex : 2.42381392048
           2.46296498577
        test_regex_closure : 2.64243025301
           test_str_filter : 1.25699886438
         1.24944343485
         test_str_filter_2 : 2.23962291297
             2.25706647074
             test_str_join : 2.24505069778
         2.2496496063
         test_str_join_set : 1.76730645934
            1.75109182871
            test_translate : 0.278384263922
0.277178803451

It appears that isalpha is using a similar algorithm, at least in terms of O(), to the set algorithm.

show/hide this revision's text 1

I added the filter solutions to Brian's code:

import string, re, timeit

# Precomputed values (for str_join_set and translate)

letter_set = frozenset(string.ascii_lowercase + string.ascii_uppercase)
tab = string.maketrans(string.ascii_lowercase + string.ascii_uppercase,
                       string.ascii_lowercase * 2)
deletions = ''.join(ch for ch in map(chr,range(256)) if ch not in letter_set)

s="A235th@#$&( er Ra{}|?>ndom"

def test_regex(s):
    return re.sub('[^a-z]', '', s.lower())

def test_str_join(s):
    return ''.join(c for c in s.lower() if c in string.ascii_lowercase)

def test_str_join_set(s):
    return ''.join(c for c in s.lower() if c in letter_set)

def test_str_filter(s):
    return filter(str.isalpha, s).lower()

def test_str_filter_2(s):
    return filter(lambda x: x in string.ascii_lowercase, s.lower())

def test_translate(s):
    return string.translate(s, tab, deletions)

for test in sorted(globals()):
    if test.startswith("test_"):
        print "%30s : %s" % (test, timeit.Timer("f(s)", 
              "from __main__ import %s as f, s" % test).timeit(200000))

This gives me:

                test_regex : 2.42381392048
           test_str_filter : 1.25699886438
         test_str_filter_2 : 2.23962291297
             test_str_join : 2.24505069778
         test_str_join_set : 1.76730645934
            test_translate : 0.278384263922

It appears that isalpha is using a similar algorithm, at least in terms of O(), to the set algorithm.