I have a very large dataset - millions of records - that I want to store in Python. I might be running on 32-bit machines so I want to keep the dataset down in the hundreds-of-MB range and not ballooning much larger than that.
These records - represent a M:M relationship - two IDs (foo and bar) and some simple metadata like timestamps (baz).
Some foo have too nearly all bar in them, and some bar have nearly all foo. But there are many bar that have almost no foos and many foos that have almost no bar.
If this were a relational database, a M:M relationship would be modelled as a table with a compound key. You can of course search on either component key individually comfortably.
If you store the rows in a hashtable, however, you need to maintain three hashtables as the compound key is hashed and you can't search on the component keys with it.
If you have some kind of sorted index, you can abuse lexical sorting to iterate the first key in the compound key, and need a second index for the other key; but its less obvious to me what actual data-structure in the standard Python collections this equates to.
I am considering a dict of foo where each value is automatically moved from tuple (a single row) to list (of row tuples) to dict depending on some thresholds, and another dict of bar where each is a single foo, or a list of foo.
Are there more efficient - speedwise and spacewise - ways of doing this? Any kind of numpy for indices or something?
(I want to store them in Python because I am having performance problems with databases - both SQL and NoSQL varieties. You end up being IPC memcpy and serialisation-bound. That is another story; however the key point is that I want to move the data into the application rather than get recommendations to move it out of the application ;) )