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I have a request handler that updates an entity, saves it to the datastore, then needs to perform some additional work before returning (like queuing a background task and json-serializing some results). I want to parallelize this code, so that the additional work is done while the entity is being saved.

Here's what my handler code boils down to:

class FooHandler(webapp2.RequestHandler):
    @ndb.toplevel
    def post(self):
        foo = yield Foo.get_by_id_async(some_id)

        # Do some work with foo

        # Don't yield, as I want to perform the code that follows
        # while foo is being saved to the datastore.
        # I'm in a toplevel, so the handler will not exit as long as
        # this async request is not finished.
        foo.put_async()

        taskqueue.add(...)
        json_result = generate_result()
        self.response.headers["Content-Type"] = "application/json; charset=UTF-8"
        self.response.write(json_result)

However, Appstats shows that the datastore.Put RPC is being done serially, after taskqueue.Add:

Appstats screenshot

A little digging around in ndb.context.py shows that a put_async() call ends up being added to an AutoBatcher instead of the RPC being issued immediately.

So I presume that the _put_batcher ends up being flushed when the toplevel waits for all async calls to be complete.

I understand that batching puts has real benefits in certain scenarios, but in my case here I really want the put RPC to be sent immediately, so I can perform other work while the entity is being saved.

If I do yield foo.put_async(), then I get the same waterfall in Appstats, but with datastore.Put being done before the rest:

2nd Appstats screenshot

This is to be expected, as yield makes my handler wait for the put_async() call to complete before executing the rest of the code.

I also have tried adding a call to ndb.get_context().flush() right after foo.put_async(), but the datastore.Put and taskqueue.BulkAdd calls are still not being made in parallel according to Appstats.

So my question is: how can I force the call to put_async() to bypass the auto batcher and issue the RPC immediately?

share|improve this question
    
Is it on production or local? –  Lipis Feb 21 '13 at 15:44
    
It is on production. –  Pascal Bourque Feb 21 '13 at 15:49

2 Answers 2

up vote 6 down vote accepted

There's no supported way to do it. Maybe there should be. Can you try if this works?

loop - ndb.eventloop.get_event_loop()
while loop.run_idle():
    pass

You may have to look at the source code of ndb/eventloop.py to see what else you could try -- basically you want to try most of what run0() does except waiting for RPCs. In particular, it's possible that you would have to do this:

while loop.current:
    loop.run0()
while loop.run_idle():
    pass

(This still isn't supported, because there are other conditions you may have to handle too, but those don't seem to occur in your example.)

share|improve this answer
    
I got it to work by calling ndb.get_context().flush() followed by the 2 loops you suggested right after my call to foo.put_async(). I believe there should be an officially supported way to do this, as I don't think my usage scenario is uncommon (save an entity, then wrap-up remaining handler work while entity is being saved). I filed a feature request for it: code.google.com/p/googleappengine/issues/detail?id=8863 –  Pascal Bourque Feb 22 '13 at 16:24
    
I think what is really needed is taskqueue.add_async to get the task queue rpc into the idle/rpc loops in eventloop. code.google.com/p/appengine-ndb-experiment/issues/detail?id=180 –  tesdal Feb 22 '13 at 22:10
    
What exactly was the code that worked for you? flush() is a tasklet so you would have to yield it, possibly causing more delay than you'd like. Anyways, agreed this would be a useful feature. Perhaps it'll get more attention if you file it in the NDB tracker? –  Guido van Rossum Feb 24 '13 at 0:23
    
If put includes a memcache set as well, run_idle will set up the memcache rpc only, not the datastore rpc. Datastore rpc would execute after taskqueue add. –  tesdal Feb 25 '13 at 10:06
    
@GuidovanRossum, I had edited your answer with details about what had worked for me, but the edit didn't get approved for some reasons... Like I said in a previous comment: calling flush() then doing the 2 loops you suggested. –  Pascal Bourque Feb 25 '13 at 16:01

Try this, I'm not 100% certain it will help:

foo = yield Foo.get_by_id_async(some_id)
future = foo.put_async()
future.done()

ndb requests get put into the autobatcher, the batch gets sent to RPC when you need a result. Since you don't need the result of foo.put_async(), it doesn't get sent until you make another ndb call (you don't) or until the @ndb.toplevel ends.

Calling future.done() does not block, but I'm guessing it might trigger the request.

Another thing to try to force the operation is:

ndb.get_context().flush()
share|improve this answer
    
Thanks, but it doesn't do anything. Future.done() only does return self._done without any processing, and I had already tried Context.flush(). –  Pascal Bourque Feb 21 '13 at 18:07

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