You can see stdout in the meantime by accessing
AsyncResult.stdout, which will return a list of strings, which are the stdout from each engine.
The simplest case being:
You can wrap this in a simple function that prints stdout while you wait for the AsyncResult to complete:
from IPython.display import clear_output
def wait_watching_stdout(ar, dt=1, truncate=1000):
while not ar.ready():
stdouts = ar.stdout
if not any(stdouts):
# clear_output doesn't do much in terminal environments
print '-' * 30
print "%.3fs elapsed" % ar.elapsed
for eid, stdout in zip(ar._targets, ar.stdout):
print "[ stdout %2i ]\n%s" % (eid, stdout[-truncate:])
An example notebook illustrating this function.
Now, if you are using older IPython, you may see an artificial restriction on access of the stdout attribute ('Result not ready' errors).
The information is available in the metadata, so you can still get at it while the task is not done:
stdout = [ rc.metadata[msg_id]['stdout'] for msg_id in ar.msg_ids ]
Which is essentially the same thing that the
ar.stdout attribute access does.