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Hi
I need filter out all rows that don't contain symbols from huge "necessary" list, example code:

def any_it(iterable):
      for element in iterable:
          if element: return True
      return False

regexp = re.compile(r'fruit=([A-Z]+)')
necessary = ['YELLOW', 'GREEN', 'RED', ...] # huge list of 10 000 members
f = open("huge_file", "r") ## file with > 100 000 lines
lines = f.readlines()
f.close()

## File rows like, let's say:
# 1 djhds fruit=REDSOMETHING sdkjld
# 2 sdhfkjk fruit=GREENORANGE lkjfldk
# 3 dskjldsj fruit=YELLOWDOG sldkfjsdl
# 4 gfhfg fruit=REDSOMETHINGELSE fgdgdfg

filtered = (line for line in lines if any_it(regexp.findall(line)[0].startswith(x) for x in necessary))

I have python 2.4, so I can't use built-in any().
I wait a long time for this filtering, but is there some way to optimize it? For example row 1 and 4 contains "RED.." pattern, if we found that "RED.." pattern is ok, can we skip search in 10000-members list for row 4 the same pattern??
Is there some another way to optimize filtering?
Thank you.
...edited...
UPD: See real example data in comments to this post. I'm also interested in sorting by "fruits" the result. Thanks!
...end edited...

share|improve this question
    
You don't like grep? – MattH Dec 9 '10 at 12:04
1  
@DominiCane: Can you provide appropriately-sized representative data sets? There may be optimization paths that we can't anticipate because we're not familiar with your data. – MattH Dec 9 '10 at 13:40
    
What exactly can I provide? This example is close enough to real situation. This filtering is part of generators chain, that modifies rows in the file. I can't think about the closer example... Guide me what it lacks here.. – DominiCane Dec 9 '10 at 15:52
    
Quantity. Real filter items. There are less than 200 different words for colour I could find in the English language. – MattH Dec 9 '10 at 15:56
    
Files about one-five millions of rows. Of course not with colors, but with exchange market symbols like "QZF10", "ZT F1:H2" and other lovely strings. The real example row is: msgType=QuoteMsg conType=call exch=206 sym=OZFH1 Strike=003 12000 fast=normal Quote=026 480 TckSiz=25 SalesCond=Ask BateModifier=Explicit – DominiCane Dec 9 '10 at 17:08
up vote 1 down vote accepted

I'm convinced Zach's answer is on the right track. Out of curiosity, I've implemented another version (incorporating Zach's comments about using a dict instead of bisect) and folded it into a solution that matches your example.

#!/usr/bin/env python
import re
from trieMatch import PrefixMatch # https://gist.github.com/736416

pm = PrefixMatch(['YELLOW', 'GREEN', 'RED', ]) # huge list of 10 000 members
# if list is static, it might be worth picking "pm" to avoid rebuilding each time

f = open("huge_file.txt", "r") ## file with > 100 000 lines
lines = f.readlines()
f.close()

regexp = re.compile(r'^.*?fruit=([A-Z]+)')
filtered = (line for line in lines if pm.match(regexp.match(line).group(1)))

For brevity, implementation of PrefixMatch is published here.

If your list of necessary prefixes is static or changes infrequently, you can speed up subsequent runs by pickling and reusing the PickleMatch object instead of rebuilding it each time.

update (on sorted results)

According to the changelog for Python 2.4:

key should be a single-parameter function that takes a list element and returns a comparison key for the element. The list is then sorted using the comparison keys.

also, in the source code, line 1792:

/* Special wrapper to support stable sorting using the decorate-sort-undecorate
   pattern.  Holds a key which is used for comparisons and the original record
   which is returned during the undecorate phase.  By exposing only the key
   .... */

This means that your regex pattern is only evaluated once for each entry (not once for each compare), hence it should not be too expensive to do:

sorted_generator = sorted(filtered, key=regexp.match(line).group(1))
share|improve this answer
    
thanks! Filtering works perfectly! But sorting, surprisingly, is slower that my old "sorted(generator, key=lambda x: regexp.findall(x)[0])". Currently investigating why.. – DominiCane Dec 13 '10 at 14:03
    
Does it help if you use sort(lambda x,y:cmp(x[0],y[0])) on the mapped list instead of a straight up sort()? – Shawn Chin Dec 13 '10 at 14:11
    
No, same thing. The sorted() is still faster.. – DominiCane Dec 13 '10 at 16:16
    
According to this answer (stackoverflow.com/questions/463032//464815#464815) key=.. for sort/sorted would already perform map-sort-unmap, so no need to do it yourself. Some of the benchmarks I've run seem to suggest the same. Will remove sorting bit from my answer. – Shawn Chin Dec 13 '10 at 16:54
    
Found proof that as of Python 2.4, sorted(key=...) already does decorate-sort-undecorate. Answer updated. – Shawn Chin Dec 13 '10 at 17:22

If you organized the necessary list as a trie, then you could look in that trie to check if the fruit starts with a valid prefix. That should be faster than comparing the fruit against every prefix.

For example (only mildly tested):

import bisect
import re

class Node(object):
    def __init__(self):
        self.children = []
        self.children_values = []
        self.exists = False

    # Based on code at http://docs.python.org/library/bisect.html                
    def _index_of(self, ch):
        i = bisect.bisect_left(self.children_values, ch)
        if i != len(self.children_values) and self.children_values[i] == ch:
            return (i, self.children[i])
        return (i, None)

    def add(self, value):
        if len(value) == 0:
            self.exists = True
            return
        i, child = self._index_of(value[0])
        if not child:
            child = Node()
            self.children.insert(i, child)
            self.children_values.insert(i, value[0])
        child.add(value[1:])

    def contains_prefix_of(self, value):
        if self.exists:
            return True
        i, child = self._index_of(value[0])
        if not child:
            return False
        return child.contains_prefix_of(value[1:])

necessary = ['RED', 'GREEN', 'BLUE', 'ORANGE', 'BLACK',
             'LIGHTRED', 'LIGHTGREEN', 'GRAY']

trie = Node()
for value in necessary:
    trie.add(value)

# Find lines that match values in the trie
filtered = []
regexp = re.compile(r'fruit=([A-Z]+)')
for line in open('whatever-file'):
    fruit = regexp.findall(line)[0]
    if trie.contains_prefix_of(fruit):
        filtered.append(line)

This changes your algorithm from O(N * k), where N is the number of elements of necessary and k is the length of fruit, to just O(k) (more or less). It does take more memory though, but that might be a worthwhile trade-off for your case.

share|improve this answer
    
+1 I'm sure this will give by far the biggest speedup. In the original code, if a line would not match the script had to go trough every word in nessesary. You can find some tested implementations for this too, it's called a patricia or radix tree – Jochen Ritzel Dec 9 '10 at 13:54
    
+1 import bisect is new to me! Definitely the fastest approach suggested so far. – Shawn Chin Dec 9 '10 at 14:05
    
@Shawn Yep, and as soon as I submitted this I realized that I could've just used a dict instead of a sorted list, which might be faster due to O(1) lookup instead of O(log(m)) at each Node. But since you commented I'll leave it as an example of how to use bisect :-) – Zach Hirsch Dec 9 '10 at 14:23
    
@Zach Hirsch, trying your solution now.. What do you mean by using dict and not sorted list?? Can you explain, please? – DominiCane Dec 9 '10 at 17:09
    
@Zach Hirsch, another off-topic question: I need in future to sort this file lines by "fruit"s, could bisect help do it faster than sorted() with key=regexp()? – DominiCane Dec 9 '10 at 17:29

I personally like your code as is since you consider "fruit=COLOR" as a pattern which others does not. I think you want to find some solution like memoization which enables you to skip test for already solved problem but this is not the case I guess.

def any_it(iterable): for element in iterable: if element: return True return False

necessary = ['YELLOW', 'GREEN', 'RED', ...]

predicate = lambda line: any_it("fruit=" + color in line for color in necessary)

filtered = ifilter(predicate, open("testest"))

share|improve this answer
    
Yes, string operations is much faster – DominiCane Dec 9 '10 at 17:28

Tested (but unbenchmarked) code:

import re
import fileinput

regexp = re.compile(r'^.*?fruit=([A-Z]+)')
necessary = ['YELLOW', 'GREEN', 'RED', ]

filtered = []
for line in fileinput.input(["test.txt"]):
    try:
        key = regexp.match(line).group(1)
    except AttributeError:
        continue # no match
    for p in necessary:
        if key.startswith(p):
            filtered.append(line)
            break

# "filtered" now holds your results
print "".join(filtered)

Diff to code in question:

  1. We do not first load the whole file into memory (as is done when you use file.readlines()). Instead, we process each line as the file is read in. I use the fileinput module here for brevity, but one can also use line = file.readline() and a while line: loop.

  2. We stop iterating through the necessary list once a match is found.

  3. We modified the regex pattern and use re.match instead of re.findall. That's assuming that each line would only contain one "fruit=..." entry.

update

If the format of the input file is consistent, you can squeeze out a little more performance by getting rid of regex altogether.

try:
    # with line = "2 asdasd fruit=SOMETHING asdasd...."
    key = line.split(" ", 3)[2].split("=")[1]
except:
    continue # no match
share|improve this answer
    
Thanks, I got it. I didn't mention that this generator is only one in the chain of generators, so reading the file is not the bottleneck here. About 2 - function any_it() does the same. And 3 is useful for me here, thanks! – DominiCane Dec 9 '10 at 13:39
filtered=[]
for line in open('huge_file'):
    found=regexp.findall(line)
    if found:
        fruit=found[0]
        for x in necessary:
            if fruit.startswith(x):
                filtered.append(line)
                break

or maybe :

necessary=['fruit=%s'%x for x in necessary]
filtered=[]
for line in open('huge_file'):
    for x in necessary:
        if x in line:
            filtered.append(line)
            break
share|improve this answer
    
I think any_it() function does same thing, no? – DominiCane Dec 9 '10 at 13:30
    
@DominiCane : any_it is fine, it's simplier without it tough. In your version regexp.findall(line)[0] is called len(necessary) times for each line. – dugres Dec 9 '10 at 14:20
    
I think regexp.findall(line)[0] is called until we get True from any_it(), not len(necessary). But your're right about extracting regexp every step, it's slow and unnecessary, thanks. – DominiCane Dec 9 '10 at 15:42

I'd make a simple list of ['fruit=RED','fruit=GREEN'... etc. with ['fruit='+n for n in necessary], then use in rather than a regex to test them. I don't think there's any way to do it really quickly, though.

filtered = (line for line in f if any(a in line for a in necessary_simple))

(The any() function is doing the same thing as your any_it() function)

Oh, and get rid of file.readlines(), just iterate over the file.

share|improve this answer
    
Thanks, nice and simple. Strings "in" operator is really faster. But we anyway should use any_it() function, so finally: filtered = (line for line in f if any_it(a in line for a in necessary_simple)). Other way we get "if [true, true, false, false, true,...]" and it's always True. And in your version "a" variable is referenced before assignment. have you solution without "any()"? – DominiCane Dec 9 '10 at 13:34
    
@DominiCane: Well spotted, I should have tested it. I think any() is the neatest way to do it: your any_it function shouldn't be much slower. – Thomas K Dec 9 '10 at 14:23

Untested code:

filtered = []
for line in lines:
    value = line.split('=', 1)[1].split(' ',1)[0]
    if value not in necessary:
        filtered.append(line)

That should be faster than pattern matching 10 000 patterns onto a line. Possibly there are even faster ways. :)

share|improve this answer
    
If the necessary list is big, wouldn't a set be a better choice for it? – Mattias Nilsson Dec 9 '10 at 12:13
1  
My understanding was the that value only has to start with any item in necessary, not be equal to it. – MattH Dec 9 '10 at 12:13
    
the problem is that value contains part of pattern. "REDSOMETHING" is not in ["RED", "GREEN"], and I can't extract "RED" from "REDSOMETHING", I don't know the length – DominiCane Dec 9 '10 at 15:34
    
Ah, I see. Yeah, using "startsiwth" is not necessarily faster than pattern matching, so re might be the best solution here. And yeah, that will be slow. – Lennart Regebro Dec 10 '10 at 14:45

It shouldn't take too long to iterate through 100,000 strings, but I see you have a 10,000 strings list, which means you iterate 10,000 * 100,000 = 1,000,000,000 times the strings, so I don't know what did you expect... As for your question, if you encounter a word from the list and you only need 1 or more (if you want exacly 1 you need to iterate through the whole list) you can skip the rest, it should optimize the search operation.

share|improve this answer

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