In the link below there is an explanation of the map method on the Pool class.

It seems that it blocks until the result is ready. This implies that there is no need to do pool.close(); pool.join() after running pool.map, however it is demo'd in this way in this blog.

Am I missing something or is there a need to do pool.close after running pool.map (as opposed to pool.map_async? Note I am using [multiprocessing.dummy][2], which is provides a similar api to multiprocessing, but uses threading under the covers.



pool.close tells the pool not to accept any new job.

pool.join tells the pool to wait until all jobs finished then exit, effectively cleaning up the pool.

So blocking the parent process is just a side effect of what pool.join is doing.

It's true that when you call pool.map(), the parent process is blocked until map returns result. But it's a good practice to close and join the pool after using it, to better manage resource and control exceptions.

  • 1
    Note that if you use a Pool as a context manager, it will handle calling close and terminate for you.
    – hlongmore
    Jun 12 '20 at 7:12
  • @hlongmore How to use Pool as context manager?
    – Coddy
    Mar 1 at 17:56
  • If I don't have anything to join can I only use pool.close()?
    – Coddy
    Mar 1 at 17:58
  • 1
    @Coddy You can use context manager for the pool by with multiprocessing.Pool(n) as pool: .... The pool will be closed and joined automatically when the process leaves the with code block.
    – THN
    Mar 1 at 18:47
  • @Coddy What THN said.
    – hlongmore
    Mar 2 at 5:30

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