1

I'd like to chain my ETL workflow whereby the Load task can asynchronously stream partial results from the ExtractTransform task without having to wait on ExtractTransform completing. Is that possible with Celery?

Two approaches I was considering:

Approach 1

Create an ETLTask where LoadTask (somehow) keeps getting and dequeuing partial results from the ETLTask (essentially separating producer and consumer). I can't tell from the AsyncResult if that's possible. It sounds like I just want to go down the route of having separate producers and consumers which I'm not sure how to do in Celery.

class ExtractTransformTask(Task):

    def long_running_extract_transform(self):
        pass

    def run(self):
        return self.long_running_extract_transform()

class LoadTask(Task):

    def long_running_load(self):
        pass

    def run(self, results):
        self.long_running_load(results)

class ETLTask(Task):

    def run(self):
        et_result = ExtractTransformTask.delay()
        # while et_result PENDING or SUCCESS
        # dequeue current results and load with LoadTask instance

Approach 2

Extract the source data in chunks and create multiple load tasks.

1 Answer 1

2

Solution using Approach 2.

class ExtractTransformMixin(object):

    def long_running_extract_transform(self, chunkify=False):
        pass

class LoadTask(Task):

    def long_running_load(self):
        pass

    def run(self, results):
        self.long_running_load(results)

class ETLTask(ExtractTransformMixin, Task):

    def run(self):
        load_results = ResultSet([])
        for chunk in long_running_extract_transform(chunkify=True):
            load_results.add(LoadTask().delay(chunk))
        return load_results

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.