I have a load of data in CSV format. I need to be able to index this data based on a single text field (the primary key), so I'm thinking of entering it into a database. I'm familiar with sqlite from previous projects, so I've decided to use that engine.
After some experimentation, I realized that that storing a hundred million records in one table won't work well: the indexing step slows to a crawl pretty quickly. I could come up with two solutions to this problem:
- partition the data into several tables
- partition the data into several databases
I went with the second solution (it yields several large files instead of one huge file). My partition method is to look at the first two characters of the primary key: each partition has approximately 2 million records, and there are approximately 50 partitions.
I'm doing this in Python with the sqlite3 module. I keep 50 open database connections and open cursors for the entire duration of the process. For each row, I look at the first two characters of the primary key, fetch the right cursor via dictionary lookup, and perform a single insert statement (via calling execute on the cursor).
Unfortunately, the insert speed still decreases to an unbearable level after a while (approx. 10 million total processed records). What can I do to get around this? Is there a better way to do what I'm doing?