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3

You can batch these elements up within your DoFn. For example: final int BATCH_SIZE = 100; pipeline // 1. Read input from datastore .apply(DatastoreIO.readFrom(datasetId, query)) // 2. Programatically batch users .apply(ParDo.of(new DoFn<DatastoreV1.Entity, Iterable<EntryPOJO>>() { private final List<EntryPOJO> accumulator ...


3

The DatastoreIO sink is not currently supported in the streaming runner. To write to Datastore from a streaming pipeline, you can make direct calls to the Datastore API from a DoFn.


2

Yes. There's also the Cloud Datastore API which can be accessed quite easily with gcloud-python, Python idiomatic client for Google Cloud Platform services. Specifically its datastore client a convenience wrapper for invoking APIs/factories w/ a dataset ID same as cloud project id.


2

Create a new entity called something like "AvailablePeriod". You can make it a child entity of a User entity. Make end date indexed. You can create as many such entities for one user entity as necessary. Now you can easily query all periods for a specific user that have not ended yet.


2

This is a code issue in the Dataflow SDK for Java, version 1.4.0 and older. We'll track it as Issue #101 in the GitHub's repository issue tracker. We'll try to address this quickly -- please follow there for updates. I cannot think of any trivial workaround right now. Sorry about that! The solution will be to update to a newer version of the Dataflow SDK.


2

You can also use the gcloud preview app tool with an index.yaml file to specify an indexing policy. For example, if you need an index on user and timestamp on LoginTimes: indexes: - kind: LoginTimes properties: - name: user - name: timestamp direction: desc


1

To retrieve only key(s) add KeysOnly() to the end of your query, ie q := datastore.NewQuery(entityKind).Filter(...).KeysOnly() And yes, keys only query should be faster, quote from the doc: A keys-only query returns just the keys of the result entities instead of the entities themselves, at lower latency and cost than retrieving entire entities BTW, ...


1

A approach with a separate entity gives you two advantages. As you have already mentioned, you don't need to index/query all Person entities. Every time a Person gets a new reporting person, you will create a new entity, which may be significantly cheaper than updating a Person entity which has many other properties, some of which, presumably, are ...


1

Unless AppEngine's datastore in Go is very different to how it works in Java or Python you cannot index an array natively - So option 1 is out of the question, and so is option 2. I suggest option three, which is to define a type PersonWithReporters { Id string // concatenate(managing_Person_id, separator, reporter_Person_id) to avoid id collisions ...


1

You need to create a multi-property index in order to use multi-property queries. Because you are not using App Engine, these indexes need to be manually created. I have a tutorial here that covers this. Here are the steps: Install Java 7 Runtime (or later version) http://java.com/ I recommend using Cloud Shell which has Java already installed and ...


1

Google Datastore doesn't have such mechanism. The only way is to send notification from your app, when your code updates datastore.


1

It seems to me that you are not fetching the user inside the transaction. Any data you use for transaction modifications needs to be also read inside the transaction or it's not actually a transaction.


1

Use the NDB-generated key: it is designed for multiple concurrency and does it well. Then convert the generated key to something more friendly: base36 should do the trick. eg: 9999999999999999 (16 length) becomes 2QGPCKVNG1R (11 length) Specifically: friendlyValue = base36encode(entity.key.id())


1

Ok, got it. This is how I enabled it: static class EmbeddedStringExtractor extends DoFn<Entity, String> { @Override public void processElement(ProcessContext c) { Map<String, Value> main_entity_map = DatastoreHelper.getPropertyMap(c.element()); List<Value> embedded_entity_values = ...


1

This was a bug in the Dataflow SDK. The fix has been pushed to Github. Note the following: "when this limit is set the read from Cloud Datastore is performed by a single worker rather than executing in parallel across a cluster." Thank you for your patience! Update: the fix has since been released in 1.4.0.



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