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I'm messing around with file lookups in python on a large hard disk. I've been looking at os.walk and glob. I usually use os.walk as I find it much neater and seems to be quicker (for usual size directories).

Has anyone got any experience with them both and could say which is more efficient? As I say, glob seems to be slower, but you can use wildcards etc, were as with walk, you have to filter results. Here is an example of looking up core dumps.

core = re.compile(r"core\.\d*")
for root, dirs, files in os.walk("/path/to/dir/")
    for file in files:
            path = os.path.join(root,file)
            print "Deleting: " + path


for file in iglob("/path/to/dir/core.*")
    print "Deleting: " + file
share|improve this question
Sounds like premature optimization to me. I glanced at the source ( and and see that both functions rely on os.listdir and os.isdir, so my gut tells me you won't gain much one way or the other. (However, as pointed out in two of the answers below, the os.walk recurses over subdirectories and glob.iglob doesn't, so it doesn't make sense to compare). If you do end up with a performance issue, profile a couple of approaches. Otherwise, just write clear code. – Steven Rumbalski Jan 19 '12 at 18:44
up vote 4 down vote accepted

I made a research on a small cache of web pages in 1000 dirs. The task was to count a total number of files in dirs. The output is:

os.listdir: 0.7268s, 1326786 files found
os.walk: 3.6592s, 1326787 files found
glob.glob: 2.0133s, 1326786 files found

As you see, os.listdir is quickest of three. And glog.glob is still quicker than os.walk for this task.

The source:

import os, time, glob

n, t = 0, time.time()
for i in range(1000):
    n += len(os.listdir("./%d" % i))
t = time.time() - t
print "os.listdir: %.4fs, %d files found" % (t, n)

n, t = 0, time.time()
for root, dirs, files in os.walk("./"):
    for file in files:
        n += 1
t = time.time() - t
print "os.walk: %.4fs, %d files found" % (t, n)

n, t = 0, time.time()
for i in range(1000):
    n += len(glob.glob("./%d/*" % i))
t = time.time() - t
print "glob.glob: %.4fs, %d files found" % (t, n)
share|improve this answer

If you need to recurse through subdirectories, use os.walk. Otherwise, I think it would be easier to use glob.iglob or os.listdir.

share|improve this answer
+1. Especially for pointing out one function recurses through subdirectories while the other doesn't. – Steven Rumbalski Jan 19 '12 at 18:36
@aculich. Thanks for the correction. – Steven Rumbalski Jan 20 '12 at 19:52
@Steven, the glob pattern /path/to/*/core uses * as a wildcard. glob will only replace * with one directory. It still doesn't recurse through all subdirectories. – unutbu Jan 20 '12 at 20:01
@unutbu Oops, you're right... it doesn't recurse through all subdirectories since it seems Python globbing does not support zsh-style ** for recursive globbing and * indeed only goes one directory deep. – aculich Jan 20 '12 at 22:22

Don't waste your time for optimization before measuring/profiling. Focus on making your code simple and easy to maintain.

For example, in your code you precompile RE, which does not give you any speed boost, because re module has internal re._cache of precompiled REs.

  1. Keep it simple
  2. if it's slow, then profile
  3. once you know exactly what needs to be optimized do some tweaks and always document it

Note, that some optimization done several years prior can make code run slower compared to "non-optimized" code. This applies especially for modern JIT based languages.

share|improve this answer
+1 for good advice about when to optimize. – Steven Rumbalski Jan 19 '12 at 18:46
-1. OP mentioned a "large disk". Also, the code is obviously simple already. Moreover, OP seems to be at the stage of optimizing. It's a plague on SO to discard questions related to performance with something like "premature optimizations are root of blabla" (which are actually misquotations of Knuth). – kgadek Jul 10 '14 at 14:37
-1 optimization is important in the real (professional) world, where things are often at a very large scale. don't just blindly diss optimization without any rational reason – Julius Sep 7 '15 at 22:32
Premature optimization IS stupid. It makes code almost always harder to maintain and sometimes even makes it to perform worse. I don't say this is the case, but it may be. – Michał Šrajer Sep 11 '15 at 20:17

You can use os.walk and still use glob-style matching.

for root, dirs, files in os.walk(DIRECTORY):
    for file in files:
        if glob.fnmatch.fnmatch(file, PATTERN):
            print file

Not sure about speed, but obviously since os.walk is recursive, they do different things.

share|improve this answer

*, ?, and character ranges expressed with [] will be correctly matched. This is done by using the os.listdir() and fnmatch.fnmatch() functions

I think even with glob you would still have to os.walk, unless you know directly how deep your subdirectory tree is.

Btw. in the glob documentation it says:

"*, ?, and character ranges expressed with [] will be correctly matched. This is done by using the os.listdir() and fnmatch.fnmatch() functions "

I would simply go with a

for path, subdirs, files in os.walk(path):
        for name in fnmatch.filter(files, search_str):
            shutil.copy(os.path.join(path,name), dest)
share|improve this answer

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