Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

we're trying to heavily use MapReduce in our project. Now we have this problem, there is a lots of 'DeadlineExceededError' errors in the log...

One example of it ( traceback differs each time a bit ) :

Traceback (most recent call last):
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/runtime/wsgi.py", line 207, in Handle
    result = handler(dict(self._environ), self._StartResponse)
  File "/base/python27_runtime/python27_lib/versions/third_party/webapp2-2.3/webapp2.py", line 1505, in __call__
    rv = self.router.dispatch(request, response)
  File "/base/python27_runtime/python27_lib/versions/third_party/webapp2-2.3/webapp2.py", line 1253, in default_dispatcher
    return route.handler_adapter(request, response)
  File "/base/python27_runtime/python27_lib/versions/third_party/webapp2-2.3/webapp2.py", line 1077, in __call__
    return handler.dispatch()
  File "/base/python27_runtime/python27_lib/versions/third_party/webapp2-2.3/webapp2.py", line 545, in dispatch
    return method(*args, **kwargs)
  File "/base/data/home/apps/s~sba/1.362471299468574812/mapreduce/base_handler.py", line 65, in post
  File "/base/data/home/apps/s~sba/1.362471299468574812/mapreduce/handlers.py", line 208, in handle
  File "/base/data/home/apps/s~sba/1.362471299468574812/mapreduce/context.py", line 333, in flush
  File "/base/data/home/apps/s~sba/1.362471299468574812/mapreduce/context.py", line 221, in flush
  File "/base/data/home/apps/s~sba/1.362471299468574812/mapreduce/context.py", line 239, in __flush_ndb_puts
    ndb.put_multi(self.ndb_puts.items, config=self.__create_config())
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/ext/ndb/model.py", line 3625, in put_multi
    for future in put_multi_async(entities, **ctx_options)]
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/ext/ndb/tasklets.py", line 323, in get_result
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/ext/ndb/tasklets.py", line 318, in check_success
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/ext/ndb/tasklets.py", line 302, in wait
    if not ev.run1():
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/ext/ndb/eventloop.py", line 219, in run1
    delay = self.run0()
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/ext/ndb/eventloop.py", line 181, in run0
    callback(*args, **kwds)
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/ext/ndb/tasklets.py", line 365, in _help_tasklet_along
    value = gen.send(val)
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/ext/ndb/context.py", line 274, in _put_tasklet
    keys = yield self._conn.async_put(options, datastore_entities)
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/datastore/datastore_rpc.py", line 1560, in async_put
    for pbs, indexes in pbsgen:
  File "/base/python27_runtime/python27_lib/versions/1/google/appengine/datastore/datastore_rpc.py", line 1350, in __generate_pb_lists
    incr_size = pb.lengthString(pb.ByteSize()) + 1

My questions are:

  • How can we avoid this Error?
  • What happens with the job, does it get retried (if so how can we control it?) or not ?
  • Does it causes data inconsistency in the end ?
share|improve this question
Are you doing too much work in one step? –  Guido van Rossum Oct 17 '12 at 17:56
seems so ;) now we're testing that batch_size, and it seems to be helping. A bit more testing needed and I might accept dragonx answer. –  Lukas Šalkauskas Oct 18 '12 at 9:51

2 Answers 2

Apparently you are doing too many puts than it is possible to insert in one datastore call. You have multiple options here:

  1. If this is a relatively rare event - ignore it. Mapreduce will retry the slice and will lower put pool size. Make sure that your map is idempotent.
  2. Take a look at http://code.google.com/p/appengine-mapreduce/source/browse/trunk/python/src/mapreduce/context.py - in your main.py you can lower DATASTORE_DEADLINE, MAX_ENTITY_COUNT or MAX_POOL_SIZE to lower the size of the pool for the whole mapreduce.
share|improve this answer

If you're using an InputReader, you might be able to adjust the default batch_size to reduce the number of entities processed by each task.

I believe the task queue will retry tasks, but you probably don't want it to, since it'll likley hit the same DeadlineExceededError.

Data inconsistencies are possible.

See this question as well. App Engine - Task Queue Retry Count with Mapper API

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.