I need simple cache structure (in python, but it doesn't really matter), with some specific requirements:
- Up to several millions of small objects (100 bytes on average)
- Speed is the key (both put and get), I'd expect operation times at about few microseconds
- Only one thread accessing this - so it can be all just in memory (do not need persistence)
- Keys are MD5 hashes (if it matters)
- There's an expiration time, global for the cache - every key should be removed from the cache after expiration time, counting from the time of first put
Now, the point is how to implement expiration - as everything other can be done using simple dictionary. The simplest solution - to iterate all data regularly and remove expired keys - could lock whole cache for too long. It could be improved by iterating parts of the data with every cleanup process - but still it will take some time (or won't clean it fast enough). Also removing keys one by one looks like the waste of CPU - as they could be removed in batches (don't have to be removed just after expiration - we can afford some extra RAM for keeping expired keys a little bit longer).
Checking keys during the retrieve is not enough (although it should be done nevertheless, to not return expired keys) - as many keys can be never retrieved and then they will stay forever (or just too long).
Most answers for that problem suggest using memcached, but I think this will be waste of CPU, especially as I keep objects which can be put to the dictionary by the reference, but using memcached they would have to be (de)serialized.
I have some idea how to implement this: split data into time slices, having actually several dictionaries - for example, if expire time is 60 seconds, then we have (at most) 4 dictonaries and every 20 seconds we add new one - where new keys are put, and remove the 4th one - where we'll have keys added over 60 seconds ago. This makes cleaning very fast at the cost of retrieve time, where you need to lookup in 4 dictionaries instead of one (and RAM usage increased by 33%).
So finally the question - which is: is there any better solution? Or maybe I'm wrong and some of mentioned solutions (removing keys one by one) would be better and faster? I don't want to reinvent the wheel, but didn't find any good solution in the net.