PyCUDA, for all its faults, usually has very good examples provided with it / downloadable from the wiki. But I couldn't find anything in the examples or in the documentation (or a cursory google search) demonstrating the PyCUDA way of dyanmically allocating workloads to multiple devices.
Can anyone either hint me toward what I should be doing or point me to examples?
One idea that popped into my head was using multiprocessing, generating a pool of N processes, each tied to one device, and then when the class is called (I have all my gpu functions in a separate class; probably not the best idea but it works) it round-robin's the multiprocesses. How good / retarded an idea is this?
PS My dev machine is 1 GPU and my test machine in 4 GPU, so I need whatever solution to be able to deal with a dynamic number of devices (it also doesn't help that they're different compute capabilities, but thats life)