I have a really large DB model migration going on for a new build, and I'm working on boilerplating how we will go about migration current live data from a webapp into the local test databases.
I'd like to setup in python a script that will concurrently process the migration of my models. I have
to_legacy methods for my model instances. What I have so far loads all my instances and creates
threads for each, with each thread subclassed from the core
threading modules with a
run method that just does the conversion and saves the result.
I'd like to make the main loop in the program build a big stack of instances of these threads, and start to process them one by one, running only at most 10 concurrently as it does its work, and feeding the next in to be processed as others finish migrating.
What I can't figure out is how to utilize the queue correctly to do this? If each thread represents the full task of migration, should I load all the instances first and then create a
maxsize set to 10, and have that only track currently running queues? Something like this perhaps?
currently_running = Queue() for model in models: task = Migrate(models) #this is subclassed thread currently_running.put(task) task.start()
In this case relying on the
put call to block while it is at capacity? If I were to go this route, how would I call
Or rather, should the Queue include all the tasks (not just the started ones) and use
join to block to completion? Does calling
join on a queue of threads start the included threads?
What is the best methodology to approach the "at most have N running threads" problem and what role should the Queue play?