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Is there any simple way of generating (and checking) MD5 checksums of a list of files in Python? (I have a small program I'm working on, and I'd like to confirm the checksums of the files).

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Why not just use md5sum? –  KennyTM Aug 7 '10 at 19:55
Keeping it in Python makes it easier to manage the cross-platform compatibility. –  Alexander Aug 7 '10 at 20:00

4 Answers 4

up vote 37 down vote accepted

You can use hashlib.md5()

Note that sometimes you won't be able to fit the whole file in memory. In that case, you'll have to read chunks of 128 bytes sequentially and feed them to the Md5 function. See this question.

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Well if any of the files are larger than 1MB, then I've got some problems. Thanks though. I think that solves my problem. –  Alexander Aug 7 '10 at 19:59

There is a way that's pretty memory inefficient.

import hashlib
[(fname, hashlib.md5(open(fname, 'rb').read()).digest()) for fname in fnamelst]

But, MD5 is known broken and (IMHO) should come with scary deprecation warnings and removed from the library, so here's how you should actually do it:

import hashlib
[(fname, hashlib.sha256(open(fname, 'rb').read()).digest()) for fname in fnamelst]

If you only want 128 bits worth of digest you can do .digest()[:16].

This will give you a list of tuples, each tuple containing the name of its file and its hash.

Again I strongly question your use of MD5. You should be at least using SHA1. Some people think that as long as you're not using MD5 for 'cryptographic' purposes, you're fine. But stuff has a tendency to end up being broader in scope than you initially expect, and your casual vulnerability analysis may prove completely flawed. It's best to just get in the habit of using the right algorithm out of the gate. It's just typing a different bunch of letters is all. It's not that hard.

Here is a way that is more complex, but memory efficient:

import hashlib
def hashfile(afile, hasher, blocksize=65536):
    buf = afile.read(blocksize)
    while len(buf) > 0:
        buf = afile.read(blocksize)
    return hasher.digest()

[(fname, hashfile(open(fname, 'rb'), hashlib.md5()) for fname in fnamelst]

And, again, since MD5 is broken and should not really ever be used anymore:

import hashlib
def hashfile(afile, hasher, blocksize=65536):
    buf = afile.read(blocksize)
    while len(buf) > 0:
        buf = afile.read(blocksize)
    return hasher.digest()

[(fname, hashfile(open(fname, 'rb'), hashlib.sha256()) for fname in fnamelst]

Again, you can put [:16] after the call to hashfile(...) if you only want 128 bits worth of digest.

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I'm only using MD5 to confirm the file isn't corrupted. I'm not so concerned about it being broken. –  Alexander Aug 7 '10 at 20:03
@TheLifelessOne: And despite @Omnifarious scary warnings, that is perfectly good use of MD5. –  GregS Aug 7 '10 at 20:09
@GregS, @TheLifelessOne - Yeah, and next thing you know someone finds a way to use this fact about your application to cause a file to be accepted as uncorrupted when it isn't the file you're expecting at all. No, I stand by my scary warnings. I think MD5 should be removed or come with deprecation warnings. –  Omnifarious Aug 7 '10 at 20:21
I'd probably use .hexdigest() instead of .digest() - it's easier for humans to read - which is the purpose of OP. –  Zotov Sep 25 '12 at 9:33
I used this solution but it uncorrectly gave the same hash for two different pdf files. The solution was to open the files by specifing binary mode, that is: [(fname, hashlib.md5(open(fname, 'rb').read()).hexdigest()) for fname in fnamelst] This is more related to the open function than md5 but I thought it might be useful to report it given the requirement for cross-platform compatibility stated above (see also: docs.python.org/2/tutorial/…). –  BlueCoder Feb 26 '13 at 14:09

I'd rather comment on the answer from @Omnifarious, since I'm clearly not adding anything fundamentally new, but I suppose I'm not quite up to commenting status just yet. Anyway, to answer @Nemo's question from Omnifarious's answer:

I happened to be thinking about checksums a bit (came here looking for suggestions on block sizes, specifically), and have found that this method may be faster than you'd expect. Taking the fastest (but pretty typical) timeit.timeit or /usr/bin/time result from each of several methods of checksumming a file of approx. 11MB:

$ ./sum_methods.py
crc32_mmap(filename) 0.0241742134094
crc32_read(filename) 0.0219960212708
subprocess.check_output(['cksum', filename]) 0.0553209781647
md5sum_mmap(filename) 0.0286180973053
md5sum_read(filename) 0.0311000347137
subprocess.check_output(['md5sum', filename]) 0.0332629680634
$ time md5sum /tmp/test.data.300k
d3fe3d5d4c2460b5daacc30c6efbc77f  /tmp/test.data.300k

real    0m0.043s
user    0m0.032s
sys     0m0.010s
$ stat -c '%s' /tmp/test.data.300k

So, looks like both Python and /usr/bin/md5sum take about 30ms for an 11MB file. The relevant md5sum function (md5sum_read in the above listing) is pretty similar to Omnifarious's:

import hashlib
def md5sum(filename, blocksize=65536):
    hash = hashlib.md5()
    with open(filename, "r+b") as f:
        for block in iter(lambda: f.read(blocksize), ""):
    return hash.hexdigest()

Granted, these are from single runs (the mmap ones are always a smidge faster when at least a few dozen runs are made), and mine's usually got an extra f.read(blocksize) after the buffer is exhausted, but it's reasonably repeatable and shows that md5sum on the command line is not necessarily faster than a Python implementation...

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import os
import hashlib

if os.path.exists(file_path) == False:
    return None

md5 = hashlib.md5()

f = open(file_path)
for line in f:


return md5.hexdigest()
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That only works for text files... –  mavroprovato Aug 1 at 10:10

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