I need to save to disk a little dict object whose keys are of the type str and values are ints and then recover it. Something like this:

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

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

I am using Python 2.6.


If you do not have any interoperability requirements (e.g. you are 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).

  • 55
    JSON seems to be faster than cPickle. – mac Oct 2 '12 at 14:51
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    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
  • 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
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    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 '14 at 9:20
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    cPickle's latest protocol is now faster than JSON. The up-voted comment about JSON being faster is outdated by a few years. stackoverflow.com/a/39607169/1007353 – JDiMatteo Sep 22 '16 at 1:34

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.

  • Thanks. Anyway I'll be dumping and loading in the same program. – Juanjo Conti Feb 13 '10 at 22:39
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    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
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    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
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    Apart from security, JSON has the additional advantage that it makes migrations easy, so you can load data that was saved by an older version of your application. Meanwhile you could have added a field, or replaced a whole sub structure. Writing such a converter (migration) for dict/list is straight forward, but with Pickle you'll have a hard time loading it in the first place, before you can even think of converting. – vog Jan 16 '17 at 11:25
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    I hadn't thought about this aspect (security and the ability for pickled objects to run arbitrary code). Thanks for pointing that out! – CaffeinatedMike Jul 25 '18 at 12:47

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


If you are primarily concerned with speed and space, use cPickle because cPickle is faster than JSON.

If you are more concerned with interoperability, security, and/or human readability, then use JSON.

The tests results referenced in other answers were recorded in 2010, and the updated tests in 2016 with cPickle protocol 2 show:

  • cPickle 3.8x faster loading
  • cPickle 1.5x faster reading
  • cPickle slightly smaller encoding

Reproduce this yourself with this gist, which is based on the Konstantin's benchmark referenced in other answers, but using cPickle with protocol 2 instead of pickle, and using json instead of simplejson (since json is faster than simplejson), e.g.

wget https://gist.github.com/jdimatteo/af317ef24ccf1b3fa91f4399902bb534/raw/03e8dbab11b5605bc572bc117c8ac34cfa959a70/pickle_vs_json.py
python pickle_vs_json.py

Results with python 2.7 on a decent 2015 Xeon processor:

Dir Entries Method  Time    Length

dump    10  JSON    0.017   1484510
load    10  JSON    0.375   -
dump    10  Pickle  0.011   1428790
load    10  Pickle  0.098   -
dump    20  JSON    0.036   2969020
load    20  JSON    1.498   -
dump    20  Pickle  0.022   2857580
load    20  Pickle  0.394   -
dump    50  JSON    0.079   7422550
load    50  JSON    9.485   -
dump    50  Pickle  0.055   7143950
load    50  Pickle  2.518   -
dump    100 JSON    0.165   14845100
load    100 JSON    37.730  -
dump    100 Pickle  0.107   14287900
load    100 Pickle  9.907   -

Python 3.4 with pickle protocol 3 is even faster.


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.

See jsonpickle Documentation

  • 2
    Any one has benchmarked it's performance against of the options? Is it comparable in performance as raw json as seen here benfrederickson.com/dont-pickle-your-data ? – Josep Valls Feb 3 '16 at 20:50
  • This is not a wide ranging benchmark, but I had an existing game where it was saving the levels using pickle (python3). I wanted to try jsonpickle for the human readable aspect - however the level saves were sadly much slower. 1597ms for jsonpickle and 88ms or regular pickle on level save. For level load, 1604ms for jsonpickle and 388 for pickle. Pity as I like the human readable saves. – Neil McGill Jan 7 '17 at 16:10
  • I tested this in our trading system, the readability comes with about 2x serialization+deserialization speed penalty compared to pickle. Great for anything else, though. – nurettin Feb 4 '20 at 7:27

I have tried several methods and found out that using cPickle with setting the protocol argument of the dumps method as: cPickle.dumps(obj, protocol=cPickle.HIGHEST_PROTOCOL) is the fastest dump method.

import msgpack
import json
import pickle
import timeit
import cPickle
import numpy as np

num_tests = 10

obj = np.random.normal(0.5, 1, [240, 320, 3])

command = 'pickle.dumps(obj)'
setup = 'from __main__ import pickle, obj'
result = timeit.timeit(command, setup=setup, number=num_tests)
print("pickle:  %f seconds" % result)

command = 'cPickle.dumps(obj)'
setup = 'from __main__ import cPickle, obj'
result = timeit.timeit(command, setup=setup, number=num_tests)
print("cPickle:   %f seconds" % result)

command = 'cPickle.dumps(obj, protocol=cPickle.HIGHEST_PROTOCOL)'
setup = 'from __main__ import cPickle, obj'
result = timeit.timeit(command, setup=setup, number=num_tests)
print("cPickle highest:   %f seconds" % result)

command = 'json.dumps(obj.tolist())'
setup = 'from __main__ import json, obj'
result = timeit.timeit(command, setup=setup, number=num_tests)
print("json:   %f seconds" % result)

command = 'msgpack.packb(obj.tolist())'
setup = 'from __main__ import msgpack, obj'
result = timeit.timeit(command, setup=setup, number=num_tests)
print("msgpack:   %f seconds" % result)


pickle         :   0.847938 seconds
cPickle        :   0.810384 seconds
cPickle highest:   0.004283 seconds
json           :   1.769215 seconds
msgpack        :   0.270886 seconds
  • 1
    Interesting - how about deserializing though? – Mr_and_Mrs_D Jan 21 at 13:40

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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