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I have a large several hudred thousand lines text file. I have to extract 30,000 specific lines that are all in the text file in random spots. This is the program I have to extract one line at a time:

big_file = open('C:\\gbigfile.txt', 'r')
small_file3 = open('C:\\small_file3.txt', 'w')
for line in big_file:
   if 'S0414' in line:
      small_file3.write(line)
gbigfile.close()
small_file3.close()

How can I speed this up for 30,000 lines that I need to look up>?

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1  
I think all of the answers so far misunderstand your question. If I understand, you're not looking to speed up your loop. Instead, you have 30,000 strings similar to 'S0414', and want to find a way to find each occurrence of each. Is this what you're looking for? –  Wilduck Jul 14 '10 at 17:19
    
I need to find S0414 and GT213 and AT3423 and PR342 and there are 30,000 different things i need to find. Can I find all 30,000 at once without making this program have a line for each of the names i need to find. THen my program will be 30,000 lines long which is problematic. –  novak Jul 14 '10 at 18:41
    
Does S0414 and GT213, etc appear in the same spot in the bigfile like Nick asks? stackoverflow.com/questions/3248395/extract-specific-text-lines/… –  Wayne Werner Jul 14 '10 at 19:32
    
What happened to the 1.5 Gb Excel 2003 file that was concerning you only about a day ago (stackoverflow.com/questions/3241039)? You have not responded to questions from people trying to help you ... –  John Machin Jul 14 '10 at 21:29

10 Answers 10

up vote 4 down vote accepted

Aha! So your real problem is how to test many conditions per line and if one of them is satisfied, to output that line. Easiest will be using regular expression, me thinks:

import re
keywords = ['S0414', 'GT213', 'AT3423', 'PR342'] # etc - you probably get those from some source
pattern = re.compile('|'.join(keywords))

for line in inf:
    if pattern.search(ln):
        outf.write(line)
share|improve this answer
    
This is the correct way to do this. Thanks for pointing out how wrong my answer was. You might want to have a look at @novak's past questions though to see why I tried to go with the simplest syntax possible. Specifically my answer to this one stackoverflow.com/questions/3207719/… . Best, Wilduck. –  Wilduck Jul 14 '10 at 19:35
    
This has worked well thanks. –  novak Jul 14 '10 at 22:10

Testing many conditions per line is generally slow when using a naive algorithm. There are various superior algorithms (e.g. using Tries) which can do much better. I suggest you give the Aho–Corasick string matching algorithm a shot. See here for a python implementation. It should be considerably faster than the naive approach of using a nested loop and testing every string individually.

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I find your answer interesting but please note it is probably counter-productive for a novice, which OP seems to be. Btw, don't regex functions - be it Python or C lib - already contain optimized algorithms (say Boyer-Moore)? –  Nas Banov Jul 14 '10 at 20:34
1  
@Nas: While I admit implementing this algorithm oneself is an advanced topic, I linked to a relatively friendly library which should be useable by a novice. As an aside, I would not assume a regex has such optimizations, since this kind of data type (i.e. Tries) is optimized specifically for searches which have many simultaneous search queries. I would expect a regex to be implemented in terms of a state machine, which will probably not do that great with a strategy like '|'.join(keywords)...but obviously the better strategy is to test both solutions and see which is faster. –  Brian Jul 14 '10 at 21:30

According to Python's documentation of file objects, iteration you're doing should not be especially slow, and search for substrings should also be fine speed-wise.

I don't see any reason why your code should be slow, so if you need it to go faster you might have to rewrite it in C and use mmap() for fast access to the source file.

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1  
I want to know how I can search for the lines that I want not one at a time. Lke search for all 30,000 at once. –  novak Jul 14 '10 at 16:51

You could try reading in big blocks, and avoiding the overhead of line-splitting except for the specific lines of interest. E.g., assuming none of your lines is longer than a megabyte:

BLOCKSIZE = 1024 * 1024

def byblock_fullines(f):
    tail = ''
    while True:
        block = f.read(BLOCKSIZE)
        if not block: break
        linend = block.rindex('\n')
        newtail = block[linend + 1:]
        block = tail + block[:linend + 1]
        tail = newtail
        yield block
    if tail: yield tail + '\n'

this takes an open file argument and yields blocks of about 1MB guaranteed to end with a newline. To identify (iterator-wise) all occurrences of a needle string within a haystack string:

def haystack_in_needle(haystack, needle):
    start = 0
    while True:
        where = haystack.find(needle, start)
        if where == -1: return
        yield where
        start = where + 1

To identify all relevant lines from within such a block:

def wantlines_inblock(s, block):
    last_yielded = None
    for where in haystack_in_needle(block, s):
        prevend = block.rfind('\n', where)  # could be -1, that's OK
        if prevend == last_yielded: continue  # no double-yields
        linend = block.find('\n', where)
        if linend == -1: linend = len(block)
        yield block[prevend + 1: linend]
        last_yielded = prevend

How this all fits together:

def main():
    with open('bigfile.txt') as f:
        with open('smallfile.txt', 'w') as g:
            for block in byblock_fulllines(f):
                for line in wantlines_inblock('S0414', block)
                    f.write(line)

In 2.7 you could fold both with statements into one, just to reduce nesting a bit.

Note: this code is untested so there might be (hopefully small;-) errors such as off-by-one's. Performance needs tuning of the block size and must be calibrated by measurement on your specific machine and data. Your mileage may vary. Void where prohibited by law.

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Won't Python I/O implementation and/or the underlying C library read big blocks under the hood? I would think that doing it explicitly in Python would actually be slower, though I confess I haven't benchmarked it. –  Daniel Stutzbach Jul 14 '10 at 17:51
    
Please note the problem described is different - he needs to filter the file based on ~30000 different criteria, not on single 'S0414'. That changes the game –  Nas Banov Jul 14 '10 at 18:42
    
@Daniel, you can specify buffering, but then each buffer will still be broken up into all the lines that are in it, most of which will be irrelevant; I'm trying to save that part of the cost -- only isolate the relevant lines. That will only save time if a very small portion of the lines is relevant, of course. –  Alex Martelli Jul 14 '10 at 23:04
    
@Nas, yep, I saw the clarification now -- ah well, that wasn't the way the question's meaning appeared to me originally!-) –  Alex Martelli Jul 14 '10 at 23:06

1. Try to read whole file

One speed up you can do is read whole file in memory if that is possible, else read in chunks. You said 'several hudred thousand lines' lets say 1 million lines with each line 100 char i.e. around 100 MB, if you have that much free memory (I assume you have) just do this

big_file = open('C:\\gbigfile.txt', 'r')
big_file_lines = big_file.read_lines()
big_file.close()
small_file3 = open('C:\\small_file3.txt', 'w')
for line in big_file_lines:
   if 'S0414' in line:
      small_file3.write(line)
small_file3.close()

Time this with orginal version and see if it makes difference, I think it will.

But if your file is really big in GBs, then you can read it in chunks e.g. 100 MB chunks, split it into lines and search but don't forget to join lines at each 100MB interval (I can elaborate more if this is the case)

file.readlines returns a list containing all the lines of data in the file. If given an optional parameter sizehint, it reads that many bytes from the file and enough more to complete a line, and returns the lines from that. This is often used to allow efficient reading of a large file by lines, but without having to load the entire file in memory. Only complete lines will be returned.

Also see following link for speed difference between line by line vs entire file reading. http://handyfloss.wordpress.com/2008/02/15/python-speed-vs-memory-tradeoff-reading-files/

2. Try to write whole file

You can also store line and write them at once at end, though I am not sure if it will help much

big_file = open('C:\\gbigfile.txt', 'r')
big_file_lines = big_file.read_lines()
small_file_lines = []
for line in big_file_lines:
   if 'S0414' in line:
      small_file_lines.append(line)
small_file3 = open('C:\\small_file3.txt', 'w')
small_file3.write("".join(small_file_lines))
small_file3.close()

3. Try filter

You can also try to use filter, instead of loop see if it makes difference

small_file_lines= filter(lambda line:line.find('S0414') >= 0, big_file_lines)
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None of this will help, sorry. There is no point of #1 and #2, since there is no benefit of storing either the input or output lines - this is a stream, you either keep or reject a line and you don't need previous or following to make a decision, nor do you have to sort it. #3 will slow processing because of artificially adding lambda fn invocations per each line and constructing list of results –  Nas Banov Jul 14 '10 at 20:23
    
@Nas Banov, have you timed it? I will say try loading a file whole in memory and read it line by line, and you will see a lot of difference. –  Anurag Uniyal Jul 15 '10 at 7:10
    
you are welcome to show data backing your claims –  Nas Banov Jul 15 '10 at 8:24
    
@Nas Banov, see handyfloss.wordpress.com/2008/02/15/… –  Anurag Uniyal Jul 15 '10 at 9:50
    
That link has good chart illustrating why you should not use f.readlines() with big files because of RAM hogging. Regarding speed, i have doubts how exactly that was done, so I did my measurements, Python 2.5 on Windows: 60MB file, 114k lines = 13.4sec for f.readlines() and 1.3sec for ln in f (deprecated f.xreadlines()); 300MB file, 3M lines = 40sec for readlines() and 9sec for iterator. So iterator over file is 4-10 times faster than readlines() - in line with what i stated. Why? Creating unnecessary list with million elements is expensive. –  Nas Banov Jul 16 '10 at 0:13

If the line begins with S0414, then you could use the .startswith method:

if line.startswith('S0414'): small_file3.write(line)

You could also strip left whitespace, if there is any:

line.lstrip().startswith('S0414')

If 'S0414' always appears after a certain point, for example, it is always at least 10 characters in and never in the last 5 characters, you could do:

'S0414' in line[10:-5]

Otherwise, you will have to search through each line, like you are.

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they all start with diffferent names –  novak Jul 14 '10 at 16:41

What are the criteria that define the 30000 lines you want to extract? The more information you give, the more likely you are to get a useful answer.

If you want all the lines containing a certain string, or more generally containing any of a given set of strings, or an occurrence of a regular expression, use grep. It's likely to be significantly faster for large data sets.

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This reminds me of a problem described by Tim Bray, who attempted to extract data from web server log files using multi-core machines. The results are described in The Wide Finder Project and Wide Finder 2. So, if serial optimizations don't go fast enough for you, this may be a place to start. There are examples of this sort of problem contributed in many languages, including python. Key quote from that last link:

Summary

In this article, we took a relatively fast Python implementation and optimized it, using a number of tricks:

  • Pre-compiled RE patterns
  • Fast filtering of candidate lines
  • Chunked reading
  • Multiple processes
  • Memory mapping, combined with support for RE operations on mapped buffers

This reduced the time needed to parse 200 megabytes of log data from 6.7 seconds to 0.8 seconds on the test machine. Or in other words, the final version is over 8 times faster than the original Python version, and (potentially) 600 times faster than Tim’s original Erlang version.

Having said this, 30,000 lines isn't that many so you may want to at least start by investigating your disk read/write performance. Does it help if you write the output to something other than the disk that you are reading the input from or read the whole file in one go before processing?

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The best bet to speed it up would be if the specific string S0414 always appears at the same character position, so instead of having to make several failed comparisons per line (you said they start with different names) it could just do one and done.

e.g. if you're file has lines like

GLY S0414 GCT
ASP S0435 AGG
LEU S0432 CCT

do an if line[4:9] == 'S0414': small.write(line).

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This method assumes the special values appear in the same position on the line in gbigfile

def mydict(iterable):
    d = {}
    for k, v in iterable:
        if k in d:
            d[k].append(v)
        else:
            d[k] = [v]
    return d

with open("C:\\to_find.txt", "r") as t:
    tofind = mydict([(x[0], x) for x in t.readlines()])

with open("C:\\gbigfile.txt", "r") as bigfile:
    with open("C:\\outfile.txt", "w") as outfile:
        for line in bigfile:
            seq = line[4:9]
            if seq in tofind[seq[0]]:
                outfile.write(line)

Depending on what the distribution of the starting letter in those targets you can cut your comparisons down by a significant amount. If you don't know where the values will appear you're talking about a LONG operation because you'll have to compare hundreds of thousands - let's say 300,000 -- 30,000 times. That's 9 million comparisons which is going to take a long time.

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Hmm, I suspect that using simple set() instead of this home-brew first-leter dictionary of lists will be faster. –  Nas Banov Jul 14 '10 at 20:29

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