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I am calculating some very large numbers using Python, and I'd like to store previously calculated results in Berkeley DB.

The problem is that Berkeley DB has to use strings, and I have to store an integer tuple for the calculation results.

For example, I get (m, n) as my result, one way is to store this as "%d,%d" % (m, n) and read it out using re. I can also store the tuple using pickle or marshal.

Which has the better performance?

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Why would you use re to parse that? Why are you concerned about performance? If you're concerned about performance, why are you expecting interpreting the saved data to be the bottleneck? What is the nature of your "previously calculated results"? Why wouldn't you store a tuple with, you know, multiple columns? Since when do databases limit you to strings only? None of this is making any sense. – Karl Knechtel Mar 12 '12 at 6:47
@KarlKnechtel: Berkeley DB does not have columns. It is a key-value database, one of many: Tokyo / Kyoto Cabinet, Memcached, Cassandra, Dynamo, Voldemort are other examples. – Dietrich Epp Mar 12 '12 at 6:52
@KarlKnechtel I'm using Berkeley DB so I don't have multiple columns, if I were using other database then I wouldn't worry about it. See… – Tianyang Li Mar 12 '12 at 6:54
up vote 4 down vote accepted

For pure speed, marshal will get you the fastest results.


>>> timeit.timeit("pickle.dumps([1,2,3])","import pickle",number=10000)
>>> timeit.timeit("json.dumps([1,2,3])","import json",number=10000)
>>> timeit.timeit("pickle.dumps([1,2,3])","import cPickle as pickle",number=10000)
>>> timeit.timeit("marshal.dumps([1,2,3])","import marshal", number=10000)
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It also turns out that if I don't want it do be human-readble, marshal's faster. – Tianyang Li Mar 12 '12 at 7:04
Added it to the timings. :) – Amber Mar 12 '12 at 7:05
I tested marshal against msgpack but marshal won in terms of speed. marshal avg time for 15000 operations on a small list = 0.0003171195348103841, time for msgpack for same test = 0.0008052133083343506. I did not check space usage though... – Urjit Mar 15 '12 at 5:07
Keep in mind this warning from marshal docs: Warning The marshal module is not intended to be secure against erroneous or maliciously constructed data. Never unmarshal data received from an untrusted or unauthenticated source. – Urjit Mar 15 '12 at 6:03

Time them and find out!

I'd expect cPickle to be the fastest but that's no guarantee.

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Note that the OP doesn't mention a Python version, and cPickle doesn't exist separately from pickle in Py3 - pickle will provide the optimised version of it exists, and fall back to the pure-python version otherwise. – lvc Mar 12 '12 at 6:58

Check out shelve, a simple persistent key-value store with a dictionary-like API that uses pickle to serialize objects.

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