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I am reading a large amount of data from an API provider. Once get the response, I need to scan through and repackage the data and put into App Engine datastore. A particular big account will contain ~50k entries.

Every time I get some entries from the API, I will store 500 entries as a batch in a temp table and send the processing task to a queue. In case too many tasks get jammed inside one queue, I use 6 queues in total:

count = 0 
worker_number = 6
for folder, property in entries:
                    data[count] = {
                        # repackaging data here

                    count = (count + 1) % 500

                    if count == 0:
                        cache = ClientCache(parent=user_key, data=json.dumps(data))
                        params = {
                            'access_token': access_token,
                            'client_key': client.key.urlsafe(),
                            'user_key': user_key.urlsafe(),
                            'cache_key': cache.key.urlsafe(),
                            queue_name='worker%d' % worker_number)
                        worker_number = (worker_number + 1) % 6

And the task_url will lead to the following:

logging.info('--------------------- Process File ---------------------')
        user_key = ndb.Key(urlsafe=self.request.get('user_key'))
        client_key = ndb.Key(urlsafe=self.request.get('client_key'))
        cache_key = ndb.Key(urlsafe=self.request.get('cache_key'))

        cache = cache_key.get()
        data = json.loads(cache.data)
        for property in data.values():
                key_name = '%s%s' % (property['key1'], property['key2'])
                metadata = Metadata.get_or_insert(
                    # ... other info
            except StandardError, e:

All the tasks are running in the backend.

With such structure, it's working fine. well... most of time. But sometimes I get this error:

2013-09-19 15:10:07.788
suspended generator transaction(context.py:938) raised TransactionFailedError(The transaction could not be committed. Please try again.)
W 2013-09-19 15:10:07.788
suspended generator internal_tasklet(model.py:3321) raised TransactionFailedError(The transaction could not be committed. Please try again.)
E 2013-09-19 15:10:07.789
The transaction could not be committed. Please try again.

It seems to be the problem of writing into datastore too frequently? I want to find out how I can balance the pace and let the worker run smoothly... Also is there any other way I can improve the performance further? My queue configuration is something like this:

- name: worker0
  rate: 120/s
  bucket_size: 100
    task_retry_limit: 3
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1 Answer 1

up vote 2 down vote accepted

You are writing single entities at a time.

How about modifing your code to write in batches using ndb.put_multi that will reduce the round trip time for each transaction.

And why are you using get_or_insert as you are overwriting the record each time. You might as well just write. Both of these will reduce the workload a lot

share|improve this answer
I just did a try of put_multi, looks like it helps! The reason I'm using get_or_insert is to avoid duplicate of data. I'm recognising each entry as unique by key_name.. unless you know a better way to keep the unique property. –  xialin Sep 19 '13 at 8:19
concerning about unique id. If there's a duplicate in the entity list, how will put_multi handle that? –  xialin Sep 19 '13 at 8:21
You could easily remove duplicates from the list. However you will never get duplicate records because you are using key name, in which case you will just over write the same entity. –  Tim Hoffman Sep 19 '13 at 9:11
In addition get_or_insert is also expensive as it is inside a transaction (involves a get and a put). In your case you can blindly write. –  Tim Hoffman Sep 19 '13 at 9:12
thank you so much! –  xialin Sep 19 '13 at 9:13

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