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I have about 30 files, the size of each is around 300MB. There are some information I'm interested in in each file, such as usernames. Now I want to find the usernames using regex, then find the most common usernames. Here's my code:

rList=[]
for files in os.listdir("."):
    with open(files,'r') as f:
        for line in f:
            m=re.search('PATTERN TO FIND USERNAME',line)
            if m:
                rList.append(m.group())             
c=Counter(rList)
print c.most_common(10)

Now as you can see, I add every username I find to a list and then call Counter(). This way it takes about several minutes to finish. I've tried removing the c=Counter(rList) and calling c.update() every time I finish reading a file, but it won't make any differnce, will it?

SO, is this the best practice? Are there any ways to improve the performance? Thanks!

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It's possible that the bottleneck is reading 9 GB from disk. You should definitely precompile the regex, though. –  Sneftel Sep 8 '13 at 15:05
    
Try to run it through a profiler, it will give you some idea about which part you need to optimize. –  Bogdan Sep 8 '13 at 15:12
1  
You seem to have a mistake in the code, the with open... line and the next 4 lines should be indented I think. You can use the timeit module to figure out where the bottleneck in your code is. @Ben Actually, python will cache the most recent values of regex, so precompiling won't be necessary for this snippet, see the docs. However, if there are other regexes in the whole program, compiling might help. –  darthbith Sep 8 '13 at 15:15
    
Huh, you learn something new every day. Good tip! –  Sneftel Sep 8 '13 at 15:17
    
Use mmap to read lines from files. Example on SO. –  P̲̳x͓L̳ Sep 8 '13 at 15:19

2 Answers 2

Profiling will show you that there is significant overhead involved with looping over each line of the file one by one. If the files are always around the size you specified and you can spend the memory, get them into memory with a single call to .read() and then use a more complex, pre-compiled regexp (that takes line-breaks into account) to extract all usernames at once. Then .update() your counter-object with the groups from the matched regexp. This will be about as efficient as it can get.

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If you have the memory then:

  1. Use mmap
  2. Use implicit loops as much as possible

The following fragment should be fast but needs memory:

# imports elided

patternString = rb'\b[a-zA-Z]+\b' # byte string creating a byte pattern
pattern = re.compile(patternString)
c = Counter()

for fname in os.listdir("."):
    with open(fname, "r+b") as f:
        mm = mmap.mmap(f.fileno(), 0, prot=mmap.PROT_READ)
        c.update(pattern.findall(mm))
print(c.most_common(10))

patternString should be your pattern.

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