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in my app i for one of the handler i need to get a bunch of entities and execute a function for each one of them.

i have the keys of all the enities i need. after fetching them i need to execute 1 or 2 instance methods for each one of them and this slows my app down quite a bit. doing this for 100 entities takes around 10 seconds which is way to slow.

im trying to find a way to get the entities and execute those functions in parallel to save time but im not really sure which way is the best.

i tried the _post_get_hook but the i have a future object and need to call get_result() and execute the function in the hook which works kind of ok in the sdk but gets a lot of 'maximum recursion depth exceeded while calling a Python objec' but i can't really undestand why and the error message is not really elaborate.

is the Pipeline api or ndb.Tasklets what im searching for?

atm im going by trial and error but i would be happy if someone could lead me to the right direction.


my code is something similar to a filesystem, every folder contains other folders and files. The path of the Collections set on another entity so to serialize a collection entity i need to get the referenced entity and get the path. On a Collection the serialized_assets() function is slower the more entities it contains. If i could execute a serialize function for each contained asset side by side it would speed things up quite a bit.

class Index(ndb.Model):
    path = ndb.StringProperty()

class Folder(ndb.Model):
    label = ndb.StringProperty()
    index = ndb.KeyProperty()

    # contents is a list of keys of contaied Folders and Files
    contents = ndb.StringProperty(repeated=True)    

    def serialized_assets(self):
        assets = ndb.get_multi(self.contents)

        serialized_assets = []
        for a in assets:
            kind = a._get_kind()
            assetdict = a.to_dict()
            if kind == 'Collection':
                assetdict['path'] = asset.path
                # other operations ...
            elif kind == 'File':
                assetdict['another_prop'] = asset.another_property
                # ...

        return serialized_assets

    def path(self):
        return self.index.get().path

class File(ndb.Model):
    filename = ndb.StringProperty()
    # other properties....

    def another_property(self):
        # compute something here
        return computed_property


    def serialized_assets(self, keys=None):
        assets = yield ndb.get_multi_async(keys)
        raise ndb.Return([asset.serialized for asset in assets])

is this tasklet code ok?

share|improve this question
Are the functions slow because they do a lot of computation, or because they wait on RPCs? If the former, threads or the taskqueue are your best bet; if the latter, NDB tasklets are what you want. Elaborate and I can post an answer demonstrating either one. –  Nick Johnson Mar 29 '12 at 9:25
@NickJohnson mostly its waiting for RPCs. i edited the question with more details. –  aschmid00 Mar 29 '12 at 13:56

2 Answers 2

up vote 2 down vote accepted

Since most of the execution time of your functions are spent waiting for RPCs, NDB's async and tasklet support is your best bet. That's described in some detail here. The simplest usage for your requirements is probably to use the ndb.map function, like this (from the docs):

def callback(msg):
  acct = yield ndb.get_async(msg.author)
  raise tasklet.Return('On %s, %s wrote:\n%s' % (msg.when, acct.nick(), msg.body))

qry = Messages.query().order(-Message.when)
outputs = qry.map(callback, limit=20)
for output in outputs:
  print output

The callback function is called for each entity returned by the query, and it can do whatever operations it needs (using _async methods and yield to do them asynchronously), returning the result when it's done. Because the callback is a tasklet, and uses yield to make the asynchronous calls, NDB can run multiple instances of it in parallel, and even batch up some operations.

share|improve this answer
i don't think i can use map because i use ndb.get_multi() on a list of keys i already know (or at least i didn't see any doc about using map with ndb.get_multi()). –  aschmid00 Mar 29 '12 at 14:52
i think there are a few typos or maybe old docs: ndb.get_async(msg.author) should be msg.author.get_async() and tasket.Return is ndb.Return ... ?! –  aschmid00 Mar 29 '12 at 15:06
acct is a Future object so trying the string formatting in Return raises AttributeError: 'Future' object has no attribute 'nick' –  aschmid00 Mar 29 '12 at 15:14
If you're using ndb.get_multi to fetch a set of references, you can do individual async gets inside the tasklet. NDB will batch them up as necessary. You're right about the second issue; for the third, acct is not a future object - yielding a future in a tasklet returns the object itself. –  Nick Johnson Mar 29 '12 at 15:40
i added an edit2 to my question. i have a tasklet now that is faster but it still takes around 6s for around 400 assets. is the code ok? –  aschmid00 Mar 29 '12 at 15:58

The pipeline API is overkill for what you want to do. Is there any reason why you couldn't just use a taskqueue?

Use the initial request to get all of the entity keys, and then enqueue a task for each key having the task execute the 2 functions per-entity. The concurrency will be based then on the number of concurrent requests as configured for that taskqueue.

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