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I have a list of objects which I need to store in a dictionary. A property of these objects is title, and this is what I am using as the key when I store the object in the dictionary. I process the title first so that I can use it as the key by removing spaces and truncating it to 50 characters.

However some of the titles are quite long, and the first 50 characters are exactly the same as another title. Because of this the keys are being screwed up. Can anyone advise a better method for doing this. I was thinking about encoding the title in some way and then using that?

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"Because of this the keys are being screwed up" Why are you truncating, then? Just leave them as a whole.. –  Niklas B. May 14 '12 at 16:02
    
@NiklasB. is right. Also, why are you removing spaces? You can use any string, including one with spaces, as a dictionary key. –  David Robinson May 14 '12 at 16:03
    
@David: Maybe for normalization, that would make some sense. However, I don't see how the truncation fits in. –  Niklas B. May 14 '12 at 16:08

2 Answers 2

up vote 6 down vote accepted

You don't need to remove spaces or truncate the title to use it as a dictionary key. Python dictionary keys can be any immutable Python type, str among them (even long ones with spaces and special characters).

Just use the entire title, or encode the title using a hash:

>>> import hashlib
>>> hashlib.md5('some random title').hexdigest()
'bc847ea8db214557c611c9b3c2f043b1'
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I don't see how this would save space, seeing that only references to the string would be stored. However, it would dramatically increase the time needed to lookup a key, because the hash value would have to be computed every time –  Niklas B. May 14 '12 at 16:06
    
First, CPython will store references only to small strings internally. I don't know what the length limit is, and it smells implementation-dependent, so I'm not sure I'd rely on "only references" being stored. This could save space if there are many large titles (as the original poster suggests) and this dict is ever serialized. Naively, python would store the entire title as key (and presumably again in the value. If the average title is greater than 32 bytes, then the md5 hash above saves space in some cases. As far as this approach being dramatically slower, I'd love for you to prove that. –  Triptych May 14 '12 at 16:12
    
Triptchy: Strings are immutable. They will only exist once in memory, unless you copy them. Every implementation I know of works like that (and why would anyone choose the alternative, namely copying big stuff around without a reason?) Can you provide a reference for "CPython will store references only to small strings internally"? EDIT: Okay, serialization or storage in a backend DB is the only reason I can think of where this would actually make a difference. –  Niklas B. May 14 '12 at 16:13
    
>>> 'ab'*256 is 'ab'*256 False >>> 'ab'*10 is 'ab'*10 True –  Triptych May 14 '12 at 16:15
    
That's not my point. We are not talking about interning, we are talking about looking up string keys in a hash table, in which case the strings will have the same original location. In any case, if they don't, you'd have to compute a hash anyway for the hash table, which is O(n) in either case. –  Niklas B. May 14 '12 at 16:16

Just hash the entire title.

from hashlib import sha1
sha1('title1').hexdigest()
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And then what? A hash table already does something similar, you know? –  Niklas B. May 14 '12 at 16:12
    
Yes, indeed. I'd probably use the PK. But how else do you obtain a cheap, constant length unique text. –  Lakshman Prasad May 14 '12 at 16:15
    
We can just use the string as the key, it's already in memory? –  Niklas B. May 14 '12 at 16:19

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