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custom_content: |
See the [Google Cloud Datastore docs][cloud-datastore-activation] for more details on how to activate
Cloud Datastore for your project.
See the [Datastore client library docs][datastore-client-lib-docs] to learn how to interact
with the Cloud Datastore using this Client Library.
#### Creating an authorized service object
To make authenticated requests to Google Cloud Datastore, you must create a service object with credentials. You can then make API calls by calling methods on the Datastore service object. The simplest way to authenticate is to use [Application Default Credentials](https://developers.google.com/identity/protocols/application-default-credentials). These credentials are automatically inferred from your environment, so you only need the following code to create your service object:
```java
import com.google.cloud.datastore.Datastore;
import com.google.cloud.datastore.DatastoreOptions;
Datastore datastore = DatastoreOptions.getDefaultInstance().getService();
```
For other authentication options, see the [Authentication](https://github.com/googleapis/google-cloud-java#authentication) page.
#### Storing data
Objects in Datastore are known as entities. Entities are grouped by "kind" and have keys for easy access. In this code snippet, we will create a new entity representing a person and store that data by the person's email. First, add the following imports at the top of your file:
```java
import com.google.cloud.datastore.Entity;
import com.google.cloud.datastore.Key;
import com.google.cloud.datastore.KeyFactory;
```
Then add the following code to put an entity in Datastore.
```java
KeyFactory keyFactory = datastore.newKeyFactory().setKind("Person");
Key key = keyFactory.newKey("john.doe@gmail.com");
Entity entity = Entity.newBuilder(key)
.set("name", "John Doe")
.set("age", 51)
.set("favorite_food", "pizza")
.build();
datastore.put(entity);
```
Later, if you want to get this entity back, add the following to your code:
```java
Entity johnEntity = datastore.get(key);
```
#### Running a query
In addition to retrieving entities by their keys, you can perform queries to retrieve entities by
the values of their properties. A typical query includes an entity kind, filters to select entities
with matching values, and sort orders to sequence the results. `google-cloud-datastore` supports two
types of queries: `StructuredQuery` (that allows you to construct query elements) and `GqlQuery`
(which operates using [GQL syntax](https://cloud.google.com/datastore/docs/apis/gql/gql_reference))
in string format. In this tutorial, we will use a simple `StructuredQuery`.
Suppose that you've added more people to Datastore, and now you want to find all people whose favorite food is pizza. Import the following:
```java
import com.google.cloud.datastore.Query;
import com.google.cloud.datastore.QueryResults;
import com.google.cloud.datastore.StructuredQuery;
import com.google.cloud.datastore.StructuredQuery.PropertyFilter;
```
Then add the following code to your program:
```java
Query<Entity> query = Query.newEntityQueryBuilder()
.setKind("Person")
.setFilter(PropertyFilter.eq("favorite_food", "pizza"))
.build();
QueryResults<Entity> results = datastore.run(query);
while (results.hasNext()) {
Entity currentEntity = results.next();
System.out.println(currentEntity.getString("name") + ", you're invited to a pizza party!");
}
```
Cloud Datastore relies on indexing to run queries. Indexing is turned on by default for most types of properties. To read more about indexing, see the [Cloud Datastore Index Configuration documentation](https://cloud.google.com/datastore/docs/tools/indexconfig).
#### Updating data
Another thing you'll probably want to do is update your data. The following snippet shows how to update a Datastore entity if it exists.
```java
KeyFactory keyFactory = datastore.newKeyFactory().setKind("keyKind");
Key key = keyFactory.newKey("keyName");
Entity entity = datastore.get(key);
if (entity != null) {
System.out.println("Updating access_time for " + entity.getString("name"));
entity = Entity.newBuilder(entity)
.set("access_time", DateTime.now())
.build();
datastore.update(entity);
}
```
The complete source code can be found at
[UpdateEntity.java](https://github.com/googleapis/google-cloud-java/blob/2c1850d4f82f3fbd7b4a50582384c008085aa1a8/google-cloud-examples/src/main/java/com/google/cloud/examples/datastore/snippets/UpdateEntity.java).
#### Complete source code
In
[AddEntitiesAndRunQuery.java](https://github.com/googleapis/google-cloud-java/blob/2c1850d4f82f3fbd7b4a50582384c008085aa1a8/google-cloud-examples/src/main/java/com/google/cloud/examples/datastore/snippets/AddEntitiesAndRunQuery.java)
we put together all the code to store data and run queries into one program. The program assumes that you are
running on Compute Engine or from your own desktop. To run the example on App Engine, simply move
the code from the main method to your application's servlet class and change the print statements to
display on your webpage.
gRPC Java Datastore Client User Guide
-------
In this feature launch, the [Java Datastore client](https://github.com/googleapis/java-datastore) now offers gRPC as a transport layer option with experimental support. Using [gRPC connection pooling](https://grpc.io/docs/guides/performance/) enables distributing RPCs over multiple connections which may improve performance.
#### Installation Instructions
The client can be built from the `grpc-experimental` branch on GitHub. For private preview, you can also download the artifact with the instructions provided below.
1. Download the datastore private preview package with dependencies:
```
curl -o <path-to-downloaded-jar> https://datastore-sdk-feature-release.web.app/google-cloud-datastore-2.20.0-grpc-experimental-1-SNAPSHOT-jar-with-dependencies.jar
```
2. Run the following commands to install JDK locally:
```
mvn install:install-file -Dfile=<path-to-downloaded-jar> -DgroupId=com.google.cloud -DartifactId=google-cloud-datastore -Dversion=2.20.0-grpc
```
3. Edit your pom.xml to add above package to `<dependencies/>` section:
```xml
<dependency>
<groupId>com.google.cloud</groupId>
<artifactId>google-cloud-datastore</artifactId>
<version>2.20.0-grpc-experimental-1-SNAPSHOT</version>
</dependency>
```
And if you have not yet, add below to `<repositories/>` section:
```xml
<repository>
<id>local-repo</id>
<url>file://${user.home}/.m2/repository</url>
</repository>
```
#### How to Use
To opt-in to the gRPC transport behavior, simply add the below line of code (`setTransportOptions`) to your Datastore client instantiation.
Example:
```java
DatastoreOptions datastoreOptions =
DatastoreOptions.newBuilder()
.setProjectId("my-project")
.setDatabaseId("my-database")
.setTransportOptions(GrpcTransportOptions.newBuilder().build())
.build();
```
Setting the transport options explicitly to `GrpcTransportOptions` will signal the client to use gRPC instead of HTTP when making calls to the server.
To revert back to the existing stable behavior and transport, simply remove the transport options line or replace it with `HttpTransportOptions`. Please note this will require an application rebuild and restart.
Example:
```java
// will default to existing HTTP transport behavior
DatastoreOptions datastoreOptions = DatastoreOptions.newBuilder()
.setProjectId("my-project")
.setDatabaseId("my-database")
.build();
// will also default to existing HTTP transport behavior
DatastoreOptions datastoreOptions =
DatastoreOptions.newBuilder()
.setProjectId("my-project")
.setDatabaseId("my-database")
.setTransportOptions(HttpTransportOptions.newBuilder()
.setConnectTimeout(1000)
.build()).build();
```
Note: client instantiations that already use `setTransportOptions` with `HttpTransportOptions` will continue to have the same behavior. Only transports that are explicitly set to gRPC will change.
#### Verify Datastore Transport Options Type
To verify which type of TransportOptions you have successfully configured, you can use the below lines of code to compare transport options type:
```java
// checks if using gRPC transport options
boolean isGRPC = datastore.getOptions().getTransportOptions() instanceof GrpcTransportOptions;
// checks if using HTTP transport options
boolean isHTTP = datastore.getOptions().getTransportOptions() instanceof HTTPTransportOptions;
```
#### New Features
There are new gRPC specific features available to use in this update.
##### Connection Pool
A connection pool, also known as a channel pool, is a cache of database connections that are shared and reused to improve connection latency and performance. With this update, now you will be able to configure the channel pool to improve application performance. This section guides you in determining the optimal connection pool size and configuring it within the Java datastore client.
To customize the number of channels your client uses, you can update the channel provider in the DatastoreOptions.
###### Determine the best connection pool size
The default connection pool size is right for most applications, and in most cases there's no need to change it.
However sometimes you may want to change your connection pool size due to high throughput or buffered requests. Ideally, to leave room for traffic fluctuations, a connection pool has about twice the number of connections it takes for maximum saturation. Because a connection can handle a maximum of 100 concurrent requests, between 10 and 50 outstanding requests per connection is optimal. The limit of 100 concurrent streams per gRPC connection is enforced in Google's middleware layer, and you are not able to reconfigure this number.
The following steps help you calculate the optimal number of connections in your channel pool using estimate per-client QPS and average latency numbers.
To calculate the optimal connections, gather the following information:
1. The maximum number of queries per second (QPS) per client when your application is running a typical workload.
2. The average latency (the response time for a single request) in ms.
3. Determine the number of requests that you can send serially per second by dividing 1,000 by the average latency value.
4. Divide the QPS in seconds by the number of serial requests per second.
5. Divide the result by 50 requests per channel to determine the minimum optimal channel pool size. (If your calculation is less than 2, use at least 2 channels anyway, to ensure redundancy.)
6. Divide the same result by 10 requests per channel to determine the maximum optimal channel pool size.
These steps are expressed in the following equations:
```java
(QPS ÷ (1,000 ÷ latency ms)) ÷ 50 streams = Minimum optimal number of connections
(QPS ÷ (1,000 ÷ latency ms)) ÷ 10 streams = Maximum optimal number of connections
```
###### Example
Your application typically sends 50,000 requests per second, and the average latency is 10 ms. Divide 1,000 by 10 ms to determine that you can send 100 requests serially per second.
Divide that number into 50,000 to get the parallelism needed to send 50,000 QPS: 500. Each channel can have at most 100 requests out concurrently, and your target channel utilization
is between 10 and 50 concurrent streams. Therefore, to calculate the minimum, divide 500 by 50 to get 10. To find the maximum, divide 500 by 10 to get 50. This means that your channel
pool size for this example should be between 10 and 50 connections.
It is also important to monitor your traffic after making changes and adjust the number of connections in your pool if necessary.
###### Set the pool size
The following code sample demonstrates how to configure the channel pool in the client libraries using `DatastoreOptions`.
See [ChannelPoolSettings](https://cloud.google.com/java/docs/reference/gax/latest/com.google.api.gax.grpc.ChannelPoolSettings) and [Performance Best Practices](https://grpc.io/docs/guides/performance/) for more information on channel pools and best practices for performance.
Code Example
```java
InstantiatingGrpcChannelProvider channelProvider =
DatastoreSettings.defaultGrpcTransportProviderBuilder()
.setChannelPoolSettings(
ChannelPoolSettings.builder()
.setInitialChannelCount(MIN_VAL)
.setMaxChannelCount(MAX_VAL)
.build())
.build();
DatastoreOptions options = DatastoreOptions.newBuilder()
.setProjectId("my-project")
.setChannelProvider(channelProvider)
.setTransportOptions(GrpcTransportOptions.newBuilder().build())
.build();
```
Testing
-------
This library has tools to help write tests for code that uses the Datastore.
#### On your machine
You can test against a temporary local Datastore by following these steps:
1. [Install Cloud SDK and start the emulator](https://cloud.google.com/datastore/docs/tools/datastore-emulator)
To determine which host/port the emulator is running on:
```
$ gcloud beta emulators datastore env-init
# Sample output:
# export DATASTORE_EMULATOR_HOST=localhost:8759
```
3. Point your client to the emulator
```java
DatastoreOptions options = DatastoreOptions.newBuilder()
.setProjectId(DatastoreOptions.getDefaultProjectId())
.setHost(System.getenv("DATASTORE_EMULATOR_HOST"))
.setCredentials(NoCredentials.getInstance())
.setRetrySettings(ServiceOptions.getNoRetrySettings())
.build();
Datastore datastore = options.getService();
```
4. Run your tests
Example Applications
--------------------
- [`Bookshelf`](https://github.com/GoogleCloudPlatform/getting-started-java/tree/main/bookshelf) - An App Engine app that manages a virtual bookshelf.
- This app uses `google-cloud` to interface with Cloud Datastore and Cloud Storage. It also uses Cloud SQL, another Google Cloud Platform service.
- [`Flexible Environment/Datastore example`](https://github.com/GoogleCloudPlatform/java-docs-samples/tree/main/flexible/datastore) - A simple app that uses Cloud Datastore to list the last 10 IP addresses that visited your site.
- [`SparkDemo`](https://github.com/GoogleCloudPlatform/java-docs-samples/blob/main/flexible/sparkjava) - An example of using `google-cloud-datastore` from within the SparkJava and App Engine Flexible Environment frameworks.
- Read about how it works on the example's [README page](https://github.com/GoogleCloudPlatform/java-docs-samples/tree/main/flexible/sparkjava#how-does-it-work).