Comments (2)
This could (almost) already be achieved by using
ready_ids, _ = ray.wait(object_ids, timeout=...)
ray.get(ready_ids)
The differences are that
- This involves a little more code.
- This involves an extra IPC round trip to the object store.
- Some of the objects corresponding to the object IDs in
ready_ids
could in principle be evicted from the object store between between theray.wait
andray.get
call, causing theray.get
call to block for a little while.
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Let's hold off on this for now. If there's a need for it, we can certainly add it in.
Right now, the main use case seems to be that you call ray.get
in your interpreter and it's taking too long, so you want to do Ctrl-C to exit the get (it would require a lot of foresight to have thought to pass in a timeout ahead of time).
from ray.
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