There are lots of distributed job queuing libraries for Python (see http://wiki.python.org/moin/ParallelProcessing). All of the ones I've looked at so far seem to share a design model where a controller node reaches out to start processes on a configured set of worker nodes, either via ssh, or via a custom daemon listening on a designated TCP port.
Unfortunately, the compute cluster I'm using for all my worker nodes does not permit inbound connections, and for task-specific reasons the controller node has to be outside the cluster. Therefore, I need the inverse model: the workers must connect to the controller. The controller being on the public Internet, the control protocol must be cryptographically secured somehow; ssh would be operationally simplest, but I could work with some other sort of secure channel protocol if that's what's available, as long as it can authenticate both endpoints (e.g. TLS with preshared client and server certificates). Can anyone recommend an existing queueing library that supports this model?
(There is a web-based management interface which allows me to spawn tasks on a set of cluster nodes. It cannot easily be scripted, nor can it be tricked into proxying control channels.)