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I'm doing some queries in Python on a large database to get some stats out of the database. I want these stats to be in-memory so other programs can use them without going to a database.

I was thinking of how to structure them, and after trying to set up some complicated nested dictionaries, I realized that a good representation would be an SQL table. I don't want to store the data back into the persistent database, though. Are there any in-memory implementations of an SQL database that supports querying the data with SQL syntax?

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SQLite3 might work. The Python interface does support the in-memory implementation that the SQLite3 C API offers.

From the spec:

You can also supply the special name :memory: to create a database in RAM.

It's also relatively cheap with transactions, depending on what you are doing. To get going, just:

import sqlite3
conn = sqlite3.connect(':memory:')

You can then proceed like you were using a regular database.

Depending on your data - if you can get by with key/value (strings, hashes, lists, sets, sorted sets, etc) - Redis might be another option to explore (as you mentioned that you wanted to share with other programs).

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I guess, SQLite3 will be the best option then.

If possible, take a look at memcached. (for key-value pair, lighting fast!)

UPDATE 1:

HSQLDB for SQL Like tables. (no python support)

  • Coming back to this a couple of years later, Redis is also a very viable option with a lot more flexibility than memcache for this sort of thing (unless SQL is a must have). – Tim Post Jul 2 '12 at 8:23
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You could possibly use a database like SQLite. It's not strictly speaking in memory, but it is fairly light and would be completely separate from your main database.

  • 3
    SQLite3 databases can be opened in memory only. Its one of the great perks of SQLite3. – Tim Post Jun 15 '10 at 17:23

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