I'm developing a PyQt program that will soon switch from an xml type backend to one hosted on a local MySQL server. I've been trying to read around about each of the three options, but thought it might be best to ask ye SO gods.

My current experience in MySQL execution with MySQLdb at the moment and have been using that mostly due to ignorance about the existance of the other two methodologies. Question in short is what are some of the pros/cons of each and which would you choose? Cheers!

2 Answers 2


I'm not a SO god, but I do have some input. My main experience with SQL in Python is with Django.

The solution matters on what you're willing to commit to. If you want to stick with using the Qt libraries and just the PyQt libraries, then go with QtSql. If you want to just build your application quickly but pull in a few more dependencies, then I'd go with SQLAlchemy. You might run into some issues like the asker of this question, and then you would need to pull in more libraries or pull out your hair.

So, in a nice list style:


  • pro: Pure SQL
  • con: Ugly
  • con: requies you to write SQL
  • con: requires you to manage the cursor, doesn't do any caching, parameterization, etc...
  • con: can't switch to a different database backend without rewriting all of your database code

VERDICT: don't use this for anything that you would put into production


  • pro: Only uses Qt libraries
  • pro: will return Qt objects, so it will integrate with Qt's standard widgets
  • pro: can use any database backend that Qt supports
  • con: still requires you to write SQL

VERDICT: choose this if you want to write less UI code and more database code


  • pro: all database logic can be written out in Python code (since it's an ORM)
  • pro: supports many database backends
  • con: might require some extra configuration to get things working nicely with Qt

VERDICT: choose this if you want to write less database code and would be fine with solving some API issues.

Also, don't bother worrying about performance with any choice -- they should all be roughly equivalent, and the majority of the time will be spent on I/O.

  • 2
    And I wouldn't even let it influence you too much that SQLAlchemy isn't natively Qt. You can always subclass a model to handle your custom backend, or just manually feed a Standard model the data from sqlalchemy.
    – jdi
    Mar 19, 2012 at 22:56
  • I had no idea I hated myself so much! Thanks for this list; tremendously helpful. Would you also argue taht SQLAlchemy is also more pythonic? I've been using PyQt for awhile now, but learning new classes in that always seems more painful than a python library. Perhaps that's not even a valid question to ask though.. The good news is I'll have to filter my SQL data anyway, so I won't be feeding models directly without some sort of intervention; unless I'm doing that wrong too.
    – Cryptite
    Mar 20, 2012 at 2:45
  • While it's fine to use the pure mysql library for testing queries and such, if you're embedding it into an application that uses a library that already provides an abstraction layer, then it's kind of pointless. As far as filtering your results (unless you mean non-SQL filtering), QSqlTableModel has the setFilter method, etc... So you can feed your models the data directly, and just tack on the filter, and it'll do it automagically!
    – forivall
    Mar 20, 2012 at 21:31
  • 2
    Just got SQLAlchemy working. Cannot believe I ever used MySQLdb, ho-ly crap. It's like 5 lines of code!
    – Cryptite
    Mar 23, 2012 at 16:40
  • another con for MySQLDb is that it doesn't have real parameterization
    – vikki
    Dec 17, 2012 at 7:12

A bit late I know, but I suggest you look at Camelot (http://www.python-camelot.com/). It integrates PyQt and SQLAlchemy together so you can write both less UI code and database code.

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