I have an array of data to handle and handler that executing long (1-2 minutes) and takes a lot of memory for its calculations.
raw = ['a', 'b', 'c']
def handler():
# do something long
Since handler requires a lot of memory, I want to execute it in separate subprocess and kill it after execution to release memory. Something like the following snippet:
from multiprocessing import Process
for r in raw:
process = Process(target=handler, args=(r))
process.start()
The problem is that such approach leads to immediate running len(raw)
processes. And it's not good.
Also, it's not needed to interchange any kind of data between subprocesses. Just run them consequently.
Therefore it would be great to run a few processes at the same time and add a new one once existing finishes.
How could it be implemented (if it's even possible)?
process.join()
in the loop? with that you'll wait after each process.