I'm looking for some help understanding the performance characteristics of large lists, dicts or arrays in Python. I have about 1M key value pairs that I need to store temporarily (this will grow to maybe 10M over the next year). They keys are database IDs ranging from 0 to about 1.1M (with some gaps) and the values are floats.
I'm calculating pagerank, so my process is to initialize each ID with a value of 1, then look it up in memory and update it about ten times before saving it back to the database.
I'm theorizing that lists or arrays will be fastest if I use the database ID as the index of the array/list. This will create a gappy data structure, but I don't understand how fast look ups or updates will be. I also don't yet understand if there's a big gain to get from using
arraysinstead of lists.
Using a dict for this is very natural, with key-value pairs, but I get the impression building the dict the first time would be very slow and memory intensive as it grows to accommodate all the entries.
I also read that SQLite might be a good solution for this using the
:memory:flag, but I haven't dug into that too much yet.
Anyway, just looking for some guidance here. Any thoughts would be much appreciated as I'm digging in.