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I need to save to disk a little dict object which keys are strings and values are ints and then recover it. Something like this:

{'juanjo': 2, 'pedro':99, 'other': 333}

Which and why is the best option? Serialize it with pickle or with simplejson?

I'm using Python 2.6

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convert it to what? Also, in what sense better? –  SilentGhost Feb 13 '10 at 22:24
In 2.6 you wouldn't use simplejson, you'd use the builtin json module (which has the same exact interface). –  Mike Graham Feb 13 '10 at 22:33
"best"? Best for what? Speed? Complexity? Flexibility? Cost? –  S.Lott Feb 13 '10 at 22:39
see also stackoverflow.com/questions/8968884/… –  Trilarion Nov 16 at 21:31
What about yaml? –  Trilarion Nov 17 at 9:43

5 Answers 5

up vote 26 down vote accepted

If you do not have any interoperability requirements (i.e. you're just going to use the data with Python), and a binary format is fine, go with cPickle, which gives you really fast Python object serialization.

If you want interoperability, or you want a text format to store your data, go with JSON (or some other appropriate format depending on your constraints).

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JSON seems to be faster than cPickle. –  mac Oct 2 '12 at 14:51
My answer highlights the concerns I think are most important to consider when choosing either solution. I make no claim about either being faster than the other. If JSON is faster AND otherwise suitable, go with JSON! (I.e., there's no reason for your down-vote.) –  Håvard S Oct 4 '12 at 12:12
My point is: there is no real reason for using cPickle (or pickle) based on your premises over JSON. When I first read your answer I thought the reason might have been speed, but since this is not the case... :) –  mac Oct 4 '12 at 17:54
The benchmark cited by @mac only tests strings. I tested str, int and float seperately and found out that json is slower than cPickle with float serialization, but faster with float unserialization. For int (and str), json is faster both ways. Data and code: gist.github.com/marians/f1314446b8bf4d34e782 –  Marian Jul 3 at 9:20
Given that json is more interoperable, more secure and in many cases faster than cPickle, for simple data structures I would prefer json over cPickle. –  Marian Jul 3 at 9:22

I prefer JSON over pickle for my serialization. Unpickling can run arbitrary code, and using pickle to transfer data between programs or store data between sessions is a security hole. JSON does not introduce a security hole and is standardized, so the data can be accessed by programs in different languages if you ever need to.

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Thanks. Anyway I'll be dumping and loading in the same program. –  Juanjo Conti Feb 13 '10 at 22:39
Though the security risks may be low in your current application, JSON allows you to close the whole altogether. –  Mike Graham Feb 13 '10 at 23:54
One can create a pickle-virus that pickles itself into everything that is pickled after loaded. With json this is not possible. –  User Nov 20 '13 at 11:32

You might also find this interesting, with some charts to compare: http://kovshenin.com/archives/pickle-vs-json-which-is-faster/

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Precisely the kind of comparison I was looking for, thanks! –  mac Oct 2 '12 at 14:48
The article compares performance only related to strings. Here is a script you can run in order to test strings, floats and ints seperately: gist.github.com/marians/f1314446b8bf4d34e782 –  Marian Jul 3 at 9:25

Json or pickle? How about json and pickle! You can use jsonpickle. It easy to use and the file on disk is readable because it's json.


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Personally, I generally prefer JSON because the data is human-readable. Definitely, if you need to serialize something that JSON won't take, than use Pickle.

But for most data storage, you won't need to serialize anything weird and JSON is much easier and always allows you to pop it open in a text editor and check out the data yourself.

The speed is nice, but for most datasets the difference is negligible - Python generally isn't too fast anyways.

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True. But for 100 elements in a list, the difference is completely negligible to the human eye. Definitely different when working with larger datasets. –  br1ckb0t Nov 11 at 18:27

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