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On my local machine the script runs fine but in the cloud it 500 all the time. This is a cron task so I don't really mind if it takes 5min...

< class 'google.appengine.runtime.DeadlineExceededError' >:

Any idea whether it's possible to increase the timeout?

Thanks, rui

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up vote 8 down vote accepted

You cannot go beyond 30 secs, but you can indirectly increase timeout by employing task queues - and writing task that gradually iterate through your data set and processes it. Each such task run should of course fit into timeout limit.


To be more specific, you can use datastore query cursors to resume processing in the same place:

introduced first in SDK 1.3.1:

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The exact rules for DB query timeouts are complicated, but it seems that a query cannot live more than about 2 mins, and a batch cannot live more than about 30 seconds. Here is some code that breaks a job into multiple queries, using cursors to avoid those timeouts.

def make_query(start_cursor):
  query = Foo()

  if start_cursor:

  return query

batch_size = 1000
start_cursor = None

while True:
  query = make_query(start_cursor)
  results_fetched = 0

  for resource in = batch_size):
    results_fetched += 1

    # Do something

    if results_fetched == batch_size:
      start_cursor = query.cursor()
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It's not exactly accurate to say "a query cannot live more than 30 seconds" - see discussion here, especially comment #8 on-wards: – tom Oct 1 '15 at 18:46
@tom: So, a batch can run for 30 seconds, but a query can run for about 4 minutes? If so, how do you suggest I edit my answer? – phatmann Oct 6 '15 at 3:35
assuming @Patrick Costello is correct (he does work at Google :), I'd suggest you make 2 changes: 1) "The exact rules for DB query timeouts are complicated, but roughly: a query cannot live more than ~2.5 mins, and a batch cannot live more than 30 seconds". Here is some code that breaks the job into multiple queries, using cursors, to avoid those timeouts. change #2) for resource in = batch_size): – tom Oct 6 '15 at 18:00
@tom, can you explain why I need to add .run(limit = batch_size) on the query? – phatmann Oct 9 '15 at 14:04
Good question! @Patrick Costello included it in his suggested code, so I'm assuming it's correct, but you're right to check! As to why: my assumption is that limiting the query to the size of 'our batch' prevents AE from pre-fetching results/batches beyond our limit. My understanding is that GAE automatically fetches the next batch as it process the current one, but I dont know all the details. Our break is not anticipatable by GAE, so I think it stands to reason that GAE cant optimize its DB RPCs w/o the hint that limit provides. Maybe someone who isnt guessing can weigh in? – tom Oct 9 '15 at 18:02

Below is the code I use to solve this problem, by breaking up a single large query into multiple small ones. I use the google.appengine.ext.ndb library -- I don't know if that is required for the code below to work.

(If you are not using ndb, consider switching to it. It is an improved version of the db library and migrating to it is easy. For more information, see

from google.appengine.datastore.datastore_query import Cursor

def ProcessAll():
  curs = Cursor()
  while True:
    records, curs, more = MyEntity.query().fetch_page(5000, start_cursor=curs)
    for record in records:
      # Run your custom business logic on record.
    if more and curs:
      # There are more records; do nothing here so we enter the 
      # loop again above and run the query one more time.
      # No more records to fetch; break out of the loop and finish.
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