shelve, as @gnibbler recommends, is what I would no doubt be using, but watch out for two traps: a simple one (all keys must be strings) and a subtle one (as the values don't normally exist in memory, calling mutators on them may not work as you expect).
For the simple problem, it's normally easy to find a workaround (and you do get a clear exception if you forget and try e.g. using an
int or whatever as the key, so it's not hard t remember that you do need a workaround either).
For the subtle problem, consider for example:
x = d['foo']
y = d['foo']
# is y "mutated" or not now?
the answer to the question in the last comment depends on whether
d is a real dict (in which case
y will be mutated, and in fact exactly the same object as
x) or a
shelf (in which case
y will be a distinct object from
x, and in exactly the state you last saved to
To get your mutations to persist, you need to "save them to disk" by doing
d['foo'] = x
after calling any mutators you want on
x (so in particular you cannot just do
and expect the mutation to "stick", as you would if
d were a dict).
shelve does have an option to cache all fetched items in memory, but of course that can fill up the memory again, and result in long delays when you finally close the
shelf object (since all the cached items must be saved back to disk then, just in case they had been mutated). That option was something I originally pushed for (as a Python core committer), but I've since changed my mind and I now apologize for getting it in (ah well, at least it's not the default!-), since the cases it should be used in are rare, and it can often trap the unwary user... sorry.
BTW, in case you don't know what a mutator, or "mutating method", is, it's any method that alters the state of the object you call it on -- e.g.
.append if the object is a list,
.pop if the object is any kind of container, and so on. No need to worry if the object is immutable, of course (numbers, strings, tuples, frozensets, ...), since it doesn't have mutating methods in that case;-).