How to auto scale worker tasks?
I have an application which I want to automatically scale the number of worker tasks to accommodate for the throughput of items to process (with a maximum limit to the number of workers obviously).
All items to process are routed through a single point, from which they are distributed among the worker tasks (right now I find the worker with the shortest queue, and enqueue the item to it).
What would be a good pattern or technique to use to make some intelligent decisions as to how many workers I should spin up to handle the items? This logic would need to include shutting workers down if the items are able to be processed in a timely fashion by less workers.
I realize that adding more workers won't scale infinitely as ultimately other resources will be bottlenecked, and at some point adding more workers will hurt more than help. If I could account for this, and decide to scale DOWN the number of workers to find the 'sweet spot' automatically, that would be fantastic, however at this point I'd be happy if my system could just increase the number of workers as more items are added, and then decrease the number as less items are needed.
One idea I've toyed around with is measuring the average time an item sits in the queue. If this average time is greater than a couple seconds, I should spin up more workers (until the set max limit is reached). If the average time is less than 1 second, I should spin down more workers (until there's only one left of course).
Does anyone have any suggestions on the best way to approach this?