Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I was running some dynamic programming code (trying to brute-force disprove the Collatz conjecture =P) and I was using a dict to store the lengths of the chains I had already computed. Obviously, it ran out of memory at some point. Is there any easy way to use some variant of a dict which will page parts of itself out to disk when it runs out of room? Obviously it will be slower than an in-memory dict, and it will probably end up eating my hard drive space, but this could apply to other problems that are not so futile.

I realized that a disk-based dictionary is pretty much a database, so I manually implemented one using sqlite3, but I didn't do it in any smart way and had it look up every element in the DB one at a time... it was about 300x slower.

Is the smartest way to just create my own set of dicts, keeping only one in memory at a time, and paging them out in some efficient manner?

share|improve this question
up vote 18 down vote accepted

Hash-on-disk is generally addressed with Berkeley DB or something similar - several options are listed in the Python Data Persistence documentation. You can front it with an in-memory cache, but I'd test against native performance first; with operating system caching in place it might come out about the same.

share|improve this answer

The 3rd party shove module is also worth taking a look at. It's very similar to shelve in that it is a simple dict-like object, however it can store to various backends (such as file, SVN, and S3), provides optional compression, and is even threadsafe. It's a very handy module

from shove import Shove

mem_store = Shove()
file_store = Shove('file://mystore')

file_store['key'] = value
share|improve this answer
This deserves more attention than it gets. It can also be used with SQLite if you don't want to use a separate server or Berkeley DB, if you don't want to use SQLite. – Alan Plum May 24 '11 at 10:06
Yes, I've long looking for this kind of module. Plan to add redis support since that what we're using for kv store. – k4ml Jul 14 '11 at 9:26

Last time I was facing a problem like this, I rewrote to use SQLite rather than a dict, and had a massive performance increase. That performance increase was at least partially on account of the database's indexing capabilities; depending on your algorithms, YMMV.

A thin wrapper that does SQLite queries in __getitem__ and __setitem__ isn't much code to write.

share|improve this answer
How exactly would you use sqlite's indexing? the way I did it here was to create a table like this: "cur.execute('create table vals (indx INTEGER, chainlen INTEGER)')", then I "cur.execute('SELECT * from vals where indx=%d' % i)" for a lookup. – Claudiu Oct 22 '08 at 17:50
create table vals (indx INTEGER PRIMARY KEY, chainlen INTEGER) – Vinko Vrsalovic Oct 22 '08 at 17:52
@Claudiu - my program was such that I could implement some logic in the database layer, so I could let the DB do filtering and such; it was more than just a dumb store. – Charles Duffy Oct 23 '08 at 1:58
You could also use a cache-size pragma to tell sqlite to use more memory for its cache: – John Fouhy Oct 24 '08 at 5:47
@Claudiu the way, the practice you're using there (using % to substitute values into your SQL statements via string formatting) is basically insecure; it's not a big deal for decimals, but if you do it for strings it leaves you open to SQL injection attacks. cur.execute('SELECT * from vals where indx=?', (i,)) is safer, and can also run faster when invoked multiple times due to the sqlite module caching prepared statements. – Charles Duffy Mar 21 '12 at 11:32

The shelve module may do it; at any rate, it should be simple to test. Instead of:

self.lengths = {}


import shelve
self.lengths ='lengths.shelf')

The only catch is that keys to shelves must be strings, so you'll have to replace




(I'm assuming your keys are just integers, as per your comment to Charles Duffy's post)

There's no built-in caching in memory, but your operating system may do that for you anyway.

[actually, that's not quite true: you can pass the argument 'writeback=True' on creation. The intent of this is to make sure storing lists and other mutable things in the shelf works correctly. But a side-effect is that the whole dictionary is cached in memory. Since this caused problems for you, it's probably not a good idea :-) ]

share|improve this answer
i have actually tried this, but it was way too slow.. i think i need some kind of manual paging solution to get any reasonable speed. – Claudiu Oct 23 '08 at 11:14

With a little bit of thought it seems like you could get the shelve module to do what you want.

share|improve this answer

I've read you think shelve is too slow and you tried to hack your own dict using sqlite.

Another did this too :

It seems pretty efficient (and sebsauvage is a pretty good coder). Maybe you could give it a try ?

share|improve this answer

You should bring more than one item at a time if there's some heuristic to know which are the most likely items to be retrieved next, and don't forget the indexes like Charles mentions.

share|improve this answer

I did not try it yet but Hamster DB is promising and has a Python interface.

share|improve this answer

read answer for this question from GvR ;) Sorting a million 32-bit integers in 2MB of RAM using Python

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.