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
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:
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
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?