I am trying to grasp async operations introduced with NDB, I would like to use @ndb.tasklet
to async some of my work.
The simple example would be string_id generation in the overridden get_or_insert_async
Is this a correct way to to things? What can be improved here?
@classmethod
@ndb.tasklet
def get_or_insert_async(cls, *args):
id = cls.make_string_id(*args)
model = yield super(MyModel, cls).get_or_insert_async(id)
raise ndb.Return(model)
Another example would be doing stuff in a loop in fan-out kinda way. Is this correct?
@classmethod
@ndb.tasklet
def do_stuff(cls, some_collection):
@ndb.tasklet
def internal_tasklet(data):
do_some_long_taking_stuff(data)
id = make_stuff_needed_for_id(data)
model = yield cls.get_or_insert_async(id)
model.long_processing(data)
yield model.put_async()
raise ndb.Return(None)
for data in some_collection:
# will it parallelise internal_tasklet execution?
yield internal_tasklet(data)
raise ndb.Return(None)
EDIT:
As understood the whole concept, yields
are here to provide a Future
objects which are then collected in parallel (where possible) and executed asynchronously. Am I correct?
After Nick's hint (is it what you meant?):
@classmethod
@ndb.tasklet
def do_stuff(cls, some_collection):
@ndb.tasklet
def internal_tasklet(data):
do_some_long_taking_stuff(data)
id = make_stuff_needed_for_id(data)
model = yield cls.get_or_insert_async(id)
model.long_processing(data)
raise ndb.Return(model) # change here
models = []
for data in some_collection:
# will it parallelise internal_tasklet execution?
m = yield internal_tasklet(data) # change here
models.appedn(m) # change here
keys = yield ndb.put_multi_async(models) # change here
raise ndb.Return(keys) # change here
EDIT:
New revised version…
@classmethod
@ndb.tasklet
def do_stuff(cls, some_collection):
@ndb.tasklet
def internal_tasklet(data):
do_some_long_taking_stuff(data)
id = make_stuff_needed_for_id(data)
model = yield cls.get_or_insert_async(id)
model.long_processing(data)
raise ndb.Return(model)
futures = []
for data in some_collection:
# tasklets won't run in parallel but while
# one is waiting on a yield (and RPC underneath)
# the other will advance it's execution
# up to a next yield or return
fut = internal_tasklet(data)) # change here
futures.append(fut) # change here
Future.wait_all(futures) # change here
models = [fut.get_result() for fut in futures]
keys = yield ndb.put_multi_async(models) # change here
raise ndb.Return(keys) # change here