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I have 400,000 entities of a certain type, and I'd like to perform a simple operation on each of them (adding a property). I can't process them serially because it would take forever. I don't want to use the MapReduce library because it is complicated and overwhelming.

Basically I'd like to create 100 tasks on the taskqueue, each task taking a segment of ~4,000 entities and performing this operation on each one. Hopefully this wouldn't take more than a few minutes to process all 400k entities, when all tasks are executing in parallel.

However, I'm not sure how to use GAE queries to do this. My entities have string ID's of the form "230498234-com.example" which were generated by my application. I want each task to basically ask the datastore something like, "Please give me entities #200,000-#204,000" and then operate on them one by one.

Is this possible? How can I divide up the datastore in this way?

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4 Answers 4

This is a perfect job for MapReduce (https://developers.google.com/appengine/docs/python/dataprocessing/). It may be difficult to learn at first but once mastered you'll fall in love with it.

You can also consider lazily adding the property when the entry is next saved, provided not having the property is the same as having the default value in your query.

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he says "I don't want to use the MapReduce library because it is complicated and overwhelming." which can be true if he just wants to do this. Also mapreduce still requires you to be able to efficiently egment your data in parallel. –  Zig Mandel Feb 9 '14 at 4:11
    
He could be wrong about mapreduce which I think is perfect for what he is looking for. You control the number of mappers and this how many users in each parallel task. –  Yosi Taguri Apr 5 '14 at 4:57

Reading is fast, writting is slow. Unless you can do efficient queries to segment the data (hint: dont do it with offset pagination as appengine will walk the index all the way to your page for each page, use query cursors instead), have a single backend do a single query and send the data to be processed to task queues. Each can process 100 for example. The advantage here is that you dont need to segment your data and dont need any complicated setup other than starting a single backend that creates the task queues as it reads from the single query. the new appengine modules might be easier (because they wont randomly stop) than the standard backend instances.

If you want to make it really robust, use a query cursor with pagesize = elements to process per task queue and remember the last cursor that you created a task queue. In case the backend stops before it finishes start it again and it will pick up where it was stopped.

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Better than a fixed cursor size is to use a start and end cursor. That way if something is added inside the range, the worker does not miss the last items that it was supposed to process. However, normal queries have only weak consistency on data, if this is insufficient, better to pass keys through the queue and have workers use multiget, as I said below. –  Isaac Feb 10 '14 at 18:35

A task master can do the query and post cursors (using 'end cursors') to a task queue, each corresponding to 1k results, rather than fetching the results. Note that there's no guarantee that the workers will see the exact same same query results when executing on the cursor, but this is probably good enough. An alternative with more guarantees would be to perform a keys-only search on the task master and actually fetch the results (the keys), and then post groups of 1000 to the task queue. Workers can use a multiget to retrieve items with stronger consistency guarantees.

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My first use of mapreduce was something almost exactly like this. I had to add a property to my image models and I did it like this:

In mapreduce.yaml

mapreduce:
- name: cleanimages
  mapper:
    input_reader: mapreduce.input_readers.DatastoreInputReader
    handler: main.process
    params:
    - name: entity_kind
      default: main.Image

Then what you want to happen, you put in the process code:

def process(entity):
    entity.small = None
    yield op.db.Put(entity)

In this case I just set one of the variables to None since it was no longer used, but you can put any code there you like, creating a new property and saving the entity like abose. You can find more info at the mapreduce site.

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