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So I have some fairly gigantic .gz files - we're talking 10 to 20 gb each when decompressed.

I need to loop through each line of them, so I'm using the standard:

import gzip
f =, 'r')
for line in f.readlines():
    #(yadda yadda)

However, both the open() and close() commands take AGES, using up 98% of the memory+CPU. So much so that the program exits and prints Killed to the terminal. Maybe it is loading the entire extracted file into memory?

I'm now using something like:

from subprocess import call
f = open(path+'myfile.txt', 'w')
call(['gunzip', '-c', path+myfile], stdout=f)
#do some looping through the file
#then delete extracted file

This works. But is there a cleaner way?

share|improve this question
Are you sure it's open and not readlines that's taking forever? – abarnert Feb 1 '13 at 22:24
up vote 30 down vote accepted

I'm 99% sure that your problem is not in the, but in the readlines().

As the documentation explains:

f.readlines() returns a list containing all the lines of data in the file.

Obviously, that requires reading reading and decompressing the entire file, and building up an absolutely gigantic list.

Most likely, it's actually the malloc calls to allocate all that memory that are taking forever. And then, at the end of this scope (assuming you're using CPython), it has to GC that whole gigantic list, which will also take forever.

You almost never want to use readlines. Unless you're using a very old Python, just do this:

for line in f:

A file is an iterable full of lines, just like the list returned by readlines—except that it's not actually a list, it generates more lines on the fly by reading out of a buffer. So, at any given time, you'll only have one line and a couple of buffers on the order of 10MB each, instead of a 25GB list. And the reading and decompressing will be spread out over the lifetime of the loop, instead of done all at once.

From a quick test, with a 3.5GB gzip file, is effectively instant, for line in f: pass takes a few seconds, gzip.close() is effectively instant. But if I do for line in f.readlines(): pass, it takes… well, I'm not sure how long, because after about a minute my system went into swap thrashing hell and I had to force-kill the interpreter to get it to respond to anything…

Since this has come up a dozen more times since this answer, I wrote this blog post which explains a bit more.

share|improve this answer
Much faster, thanks!! :) – LittleBobbyTables Feb 4 '13 at 16:59
Exactly what I was looking for! – feradz Oct 29 '14 at 16:13
Actually for line in f_in is not a 'so correct' answer. I also met the same problem recently, please refer to my answer below:) – shihpeng Nov 21 '14 at 6:36

give a loop at pandas, in particular IO tools. They support gzip compression when reading files and you can read files in chunks. Besides, pandas is very fast and memory efficient.

As I never tried, I don't know how well the compression and reading in chunks live together, but migh be worth giving a try

share|improve this answer has perfectly fine buffering, so you don't need to explicitly read in chunks; just use the normal file-like APIs to read it in the way that's most appropriate (for line in f:, or for row in csv.reader(f), or even readlines with a size hint instead of no args). And it's also quite fast and memory efficient. As near as I can tell, the OP's code is only a memory hog because of readlines, and it's only slow because of that memory hogging. – abarnert Feb 1 '13 at 22:44

In fact, even if you use write(f_in) or for l in f_in: writelines(l), you will still get MemoryError for environments where the resource is very limited, for example, an EC2 m3.large class instance or below.

The best way to gzip a very large file (say, 10GB) is to read and to operate on its blocks, not by its lines. For a comprehensive discussion, please refer to the question and answer here: Python - How to gzip a large text file without MemoryError?

share|improve this answer
No, Python does not maintain some kind of data structure which records the line number. You can see the source code to gzip and io (or the pure Python equivalent of the latter). Where do you see line numbers, or any other data structure that grows as you use it? – abarnert Nov 21 '14 at 19:55
Also, the whole point of the OP's problem is to actually deal with the lines. The only way he could do that without for line in f: is to read into a buffer, split into lines, put back any partial line at the end, use each of the lines one by one, repeat until read fails, process any final partial line. Which is exactly the same thing the file's __next__ function is already doing, except less efficient. – abarnert Nov 21 '14 at 20:23
@abarnet Thanks for your comments and links. I replied this old question because I do have the same problem recently and which cannot simply be resolved by using for l in f_in: f_out.write(l), MemoryError just raised over and over again. You can do simple test in some resource-restricted environment, you will see the memory usage keep increasing until the error raises. Is there any reasonable explanation about this problem? – shihpeng Nov 24 '14 at 8:44
In your case, it's because you have a 10GB file with no line breaks anywhere. Any solution that goes line by line, whether you do it by trusting GzipFile or by manually buffering up and splitting into lines, is going to run out of memory. But in the OP's case, he's got normal-sized lines, so going line by line works fine, whether he does it by trusting GzipFile or by doing it manually, so he might as well trust GzipFile. – abarnert Nov 24 '14 at 19:50
Thanks for your explanation, I learned a lot:) – shihpeng Nov 27 '14 at 4:08

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