I've already answered the original question but I do feel like adding that Redis lists are quite reliable and the Python module's support for them are extremely easy to use for implementing a Queue like object. These have the advantage of allowing one to scale out over multiple nodes (across a network) as well as just over multiple processes.
Basically to use those you'd just pick a key (string) for your queue name have your producers push into it and have your workers (task consumers) loop on blocking pops from that key.
The Redis BLPOP, and BRPOP commands all take a list of keys (lists/queues) and an optional timeout value. They return a tuple (key,value) or None (on timeout). So you can easily write up an event driven system that's very similar to the familiar structure of select() (but at a much higher level). The only thing you have to watch for are missing keys and invalid key types (just wrap your queue operations with exception handlers, of course). (If some other application stops on your shared Redis server removing keys or replacing keys that you were using as queues with string/integer or other types of values ... well, you have a different problem at that point). :)
Another advantage of this model is that Redis does persist its data to the disk. So your work queue could survive system restarts if you chose to allow it.
(Of course you could implement a simple Queue as a table in SQLlite or any other SQL system if you really wanted to do so; just using some sort of auto-incrementing index for the sequencing and a column to mark each item has having been "done" (consumed); but that does involve somewhat more complexity than using what Redis gives you "out of the box").