5

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?

1
  • Is it on production or local?
    – Lipis
    Feb 21, 2013 at 15:44

2 Answers 2

6

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.)

7
  • 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 Feb 22, 2013 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, 2013 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? Feb 24, 2013 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, 2013 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. Feb 25, 2013 at 16:01
-2

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()
1
  • Thanks, but it doesn't do anything. Future.done() only does return self._done without any processing, and I had already tried Context.flush(). Feb 21, 2013 at 18:07

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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