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I need to use a complicated kind of dict and change the values of some keys dynamically. So I tried it the following way but encountered with MemoryError with about 32GB RAM. The sys.getsizeof(d) returns 393356 and the sys.getsizeof(d.items()) is 50336. Did I use the python dict in a wrong way ? can anyone help me !?

for myarticlewords in mywords:
    for i in myarticlewords:
        for j in myarticlewords:

Traceback stoped at "d[i][j]+=1.0 "

When I tried :

dd=dict( (i,d[i].items() ) for i in d.keys() )

Traceback (most recent call last):
    File "<pyshell#34>", line 1, in <module>
    dd=dict( (i,d[i].items() ) for i in d.keys() )
   File "<pyshell#34>", line 1, in <genexpr>
   dd=dict( (i,d[i].items() ) for i in d.keys() )


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You probably want to investigate using a shelve. Are you using 32 or 64bit version? –  cdarke Aug 9 '12 at 12:41
Thanks!I've never heard of shelve before,sounds more useful than pickle! I'm using 32bit version . –  user1587485 Aug 11 '12 at 12:00

1 Answer 1

You seem to be using a 32-bit version of python. If you're running windows, you've probably hit the windows memory limit for 32-bit programs, which is 2GB.

That lines up with the numbers I've calculated based on some educated guesses. First, a few important facts: getsizeof only returns the size of the dict itself, not of the things stored in it. This is true of all "container" types. Also, dictionaries increase their size in a staggered way, after every so many items are added.

Now, when I store a dictionary with between about 5500 and 21000 items, getsizeof returns 786712 -- i.e. 393356 * 2. My version of Python is 64-bit, so this strongly suggests to me that you're storing between 5500 and 21000 items using a 32-bit version of Python. You're using nltk, which suggests that you're storing word digrams here. So that means you have a minimum of about 5500 words. You're storing a second dictionary for each of those words, which is also a 5500-item dictionary. So what you really have here is 393356 + 393356 * 5500 bytes, plus a minimum of 5500 * 20 bytes for word storage. Summing it all up:

>>> (393356 + 393356 * 5500 + 5500 * 20) / 1000000000.0

You're trying to store at least 2GB of data. So in short, if you want to make use of those 32 gigabytes of memory, you should upgrade to a 64-bit version of Python.

I'll add that if you're concerned about performance, you may just want to use pickle (or cPickle) rather than shelve to store the dictionary. shelve will probably be slower, even if you set writeback=True.

>>> shelve_d = shelve.open('data', writeback=True)
>>> normal_d = {}
>>> def fill(d):
...    for i in xrange(100000):
...        d[str(i)] = i
>>> %timeit fill(shelve_d)
1 loops, best of 3: 2.6 s per loop
>>> %timeit fill(normal_d)
10 loops, best of 3: 35.4 ms per loop

Saving the dictionary with pickle will take some time too, naturally, but at least it won't slow down the computation itself.

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Amazing! Thanks a lot!I am now using the 64-bit version of Python.But when dealing with big dictionries , it is still rather slow…… btw I use the shelve to store the dict ,sigh…… –  user1587485 Aug 12 '12 at 14:32
@user1587485, are you using shelve to store the dict, or are you using a shelve-based dictionary to do your calculations? The second will probably be very slow because it will involve a bunch of disk I/O. Assuming your MemoryError issue is cleared up, try just using a plain dictionary. –  senderle Aug 12 '12 at 15:52
……what's the difference? I just use d=shelve.open('wiki.dat',writeback=True) then I do the for loops to change the values of the keys in d . Is there another way? –  user1587485 Aug 14 '12 at 2:56
@user1587485, the difference is that shelve is two orders of magnitude slower, even with writeback=True, at least according to my simple test above. –  senderle Aug 14 '12 at 3:10

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