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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:

  1. partition the data into several tables
  2. 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?

share|improve this question
Do you need to update the data or just search? Is the key variable size (with big variations)? Is the content variable sized (big variations)? – 6502 Jul 24 '13 at 6:12
I just need to search. The data will be read-only. The key and content is variable sized, but the variance isn't great. The content is variable sized, with significant variance. – misha Jul 24 '13 at 6:33
up vote 1 down vote accepted

I think the problem you have is that once the processing cannot just use in-memory buffers your hard disk head is just jumping randomly between 50 locations and this is dog slow.

Something you can try is just processing one subset at a time:

seen = {}   # Key prefixes already processed
while True:
    k0 = None  # Current prefix
    for L in all_the_data:
        k = L[0][:2]
        if k not in seen:
            if k0 is None:
                k0 = k
            if k0 == k:
    if k0 is None:

This will do n+1 passes over the data (where n is the number of prefixes) but will only access two disk locations (one for reading and one for writing). It should work even better if you've separate physical devices.

PS: Are you really really sure an SQL database is the best solution for this problem?

share|improve this answer
Thanks! The one-at-a-time thing is a good idea. I'll give it a try. Regarding your last question: no, I'm not sure that this is the best way. I can't think of any other alternatives though... can you? – misha Jul 24 '13 at 6:35
Quite a few years ago (the PC was a 286) I've built a database of unique chess positions starting with 2 millions games (with an average of 70 positions per game). After banging my head against a wall for a while with standard databases the solution I found was based on a custom built file format and starting with a sort of the input data (trying to build the indexed data structure directly from random input was just making the hard disk scream). – 6502 Jul 24 '13 at 8:28
I ended up doing it this way. It will take a couple of hours (less than 48), but this is a one-off, so I can wait. – misha Jul 24 '13 at 15:22
  • Wrap all insert commands into a single transaction.
  • Use prepared statements.
  • Create the index only after inserting all the data (i.e., don't declare a primary key).
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