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I have an existing sqlite3 db file, on which I need to make some extensive calculations. Doing the calculations from the file is painfully slow, and as the file is not large (~10 MB), so there should be no problem to load it into memory.

Is there a Pythonic way to load the existing file into memory in order to speed up the calculations?

Thanks,

Adam

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5 Answers 5

up vote 6 down vote accepted

sqlite3.Connection.iterdump "[r]eturns an iterator to dump the database in an SQL text format. Useful when saving an in-memory database for later restoration. This function provides the same capabilities as the .dump command in the sqlite3 shell."

Get such an iterator and dump the disk-based database into a memory-based one, and you're ready to compute. When the computation is done, just dump the other way around back to disk.

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2  
That's great, but how do you restore that dump into a memory database? –  Adam Matan Oct 3 '10 at 15:28
    
Connect to the file-based database and dump the other way around. It's not pretty, but if your calculations are really expensive, it will pay off. –  larsmans Oct 3 '10 at 15:33
1  
Wohoo! Works like a charm. –  Adam Matan Oct 3 '10 at 16:54
    
so no one is going to give an example of code? –  DoTheEvo Jan 18 at 1:19

Here is the snippet that I wrote for my flask application:

import sqlite3
from StringIO import StringIO

def init_sqlite_db(app):
    # Read database to tempfile
    con = sqlite3.connect(app.config['SQLITE_DATABASE'])
    tempfile = StringIO()
    for line in con.iterdump():
        tempfile.write('%s\n' % line)
    con.close()
    tempfile.seek(0)

    # Create a database in memory and import from tempfile
    app.sqlite = sqlite3.connect(":memory:")
    app.sqlite.cursor().executescript(tempfile.read())
    app.sqlite.commit()
    app.sqlite.row_factory = sqlite3.Row
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6  
^This actually fully answers the question, unlike the accepted answer. –  leetNightshade Nov 7 '12 at 22:50

First you should try and find out what is causing the slowness you are observing. Are you writing to tables? Are your writes within large enough transactions so that you don't save needless temporary results to disk? Can you change writes to go to temporary tables (with pragma temp_store=memory)? Can you live with pragma synchronous=off?

I don't think this functionality is exposed in the Python module, but sqlite has a backup API that sounds like exactly what you are asking for: a way to copy from one database to another (either one of which may be an in-memory database) that works pretty much automatically without any user-visible enumeration of tables. (Maybe APSW exposes this?)

Another option is to create a ram disk (if you have sufficient control of the environment) and copy the file there.

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Thanks for the profound answer. I'm only reading from it, so a simple copy-to-memory trick will do. –  Adam Matan Oct 3 '10 at 17:07

sqlite supports in-memory databases.

In python, you would use a :memory: database name for that.

Perhaps you could open two databases (one from the file, an empty one in-memory), migrate everything from the file database into memory, then use the in-memory database further to do calculations.

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2  
Is there a fast way to transfer the database? Moving each table is not elegant. –  Adam Matan Oct 3 '10 at 14:45

This has already been answered before, including code examples at http://stackoverflow.com/questions/3826552

You do not mention operating system, but one gotcha of Windows XP is that it defaults to a 10MB file cache, no matter how much memory you have. (This made sense in the days when systems came with 64MB etc). This message has several links:

http://marc.info/?l=sqlite-users&m=116743785223905&w=2

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