Starting a WorkerPool

The mpire.WorkerPool class controls a pool of worker processes similarly to a multiprocessing.Pool. It contains all the map like functions (with the addition of mpire.WorkerPool.map_unordered()), but currently lacks the apply and apply_async functions.

An mpire.WorkerPool can be started in two different ways. The first and recommended way to do so is using a context manager:

from mpire import WorkerPool

# Start a pool of 4 workers
with WorkerPool(n_jobs=4) as pool:
    # Do some processing here
    pass

The with statement takes care of properly joining/terminating the spawned worker processes after the block has ended.

The other way is to do it manually:

# Start a pool of 4 workers
pool = WorkerPool(n_jobs=4)

# Do some processing here
pass

# Only needed when keep_alive=True:
# Clean up pool (this will block until all processing has completed)
pool.stop_and_join()

# In the case you want to kill the processes, even though they are still busy
pool.terminate()

When using n_jobs=None MPIRE will spawn as many processes as there are CPUs on your system. Specifying more jobs than you have CPUs is, of course, possible as well.

Warning

In the manual approach, the results queue should be drained before joining the workers, otherwise you can get a deadlock. If you want to join either way, use mpire.WorkerPool.terminate(). For more information, see the warnings in the Python docs here.

Nested WorkerPools

By default, the mpire.WorkerPool class spawns daemon child processes who are not able to create child processes themselves, so nested pools are not allowed. There’s an option to create non-daemon child processes to allow for nested structures:

def job(...)
    with WorkerPool(n_jobs=4) as p:
        # Do some work
        results = p.map(...)

with WorkerPool(n_jobs=4, daemon=True) as pool:
    # This will raise an AssertionError telling you daemon processes
    # can't start child processes
    pool.map(job, ...)

with WorkerPool(n_jobs=4, daemon=False) as pool:
    # This will work just fine
    pool.map(job, ...)

Note

Nested pools aren’t supported when using threading.

Note

Due to a strange bug in Python, using forkserver as start method in a nested pool is not allowed when the outer pool is using fork, as the forkserver will not have been started there. For it to work your outer pool will have to have either spawn or forkserver as start method.

Warning

Nested pools aren’t production ready. Error handling and keyboard interrupts when using nested pools can, on some rare occassions (~1% of the time), still cause deadlocks. Use at your own risk.

When a function is guaranteed to finish successfully, using nested pools is absolutely fine.