Inserta, actualiza y borra datos con el lenguaje de manipulación de datos

En esta página, se describe cómo insertar, actualizar y borrar datos de Cloud Spanner mediante declaraciones de lenguaje de manipulación de datos (DML). Puedes ejecutar declaraciones DML con las bibliotecas cliente, Google Cloud Console y la herramienta de línea de comandos de gcloud. Puedes ejecutar declaraciones de DML particionadas mediante las bibliotecas cliente y la herramienta de línea de comandos de gcloud.

Para obtener la referencia de la sintaxis de DML completa, consulta Sintaxis del lenguaje de manipulación de datos.

Usa DML

El DML admite declaraciones INSERT, UPDATE y DELETE en Cloud Console, la herramienta de línea de comandos de gcloud y las bibliotecas cliente.

Bloqueo

Las declaraciones DML se pueden ejecutar dentro de transacciones de lectura y escritura. Cuando Cloud Spanner lee datos, adquiere bloqueos de lectura compartidos en partes limitadas de los rangos de fila que lees. En particular, adquiere estos bloqueos solo en las columnas a las que accedes. Los bloqueos pueden incluir datos que no coincidan con la condición del filtro de la cláusula WHERE.

Cuando Cloud Spanner modifica los datos mediante declaraciones DML, adquiere bloqueos exclusivos en los datos específicos que estás modificando. Además, adquiere bloqueos compartidos de la misma manera que cuando lees datos. Si tu solicitud incluye grandes rangos de filas o una tabla completa, es posible que los bloqueos compartidos impidan que otras transacciones se completen en paralelo.

Para modificar los datos de la manera más eficiente posible, usa una cláusula WHERE que permita a Cloud Spanner leer solo las filas necesarias. Puedes lograr este objetivo con un filtro en la clave primaria o en la clave de un índice secundario. La cláusula WHERE limita el alcance de los bloqueos compartidos y permite a Cloud Spanner procesar la actualización de manera más eficiente.

Por ejemplo, supongamos que uno de los músicos de la tabla Singers cambia su nombre y tienes que actualizarlo en tu base de datos. Puedes ejecutar la siguiente declaración DML, pero eso obliga a Cloud Spanner a analizar toda la tabla y a adquirir bloqueos compartidos que cubran la tabla completa. Como resultado, Cloud Spanner debe leer más datos de los necesarios, y las transacciones simultáneas no pueden modificar los datos en paralelo:

-- ANTI-PATTERN: SENDING AN UPDATE WITHOUT THE PRIMARY KEY COLUMN
-- IN THE WHERE CLAUSE

UPDATE Singers SET FirstName = "Marcel"
WHERE FirstName = "Marc" AND LastName = "Richards";

Para que la actualización sea más eficiente, incluye la columna SingerId en la cláusula WHERE. La columna SingerId es la única columna de clave primaria de la tabla Singers:

-- RECOMMENDED: INCLUDING THE PRIMARY KEY COLUMN IN THE WHERE CLAUSE

UPDATE Singers SET FirstName = "Marcel"
WHERE FirstName = "Marc" AND LastName = "Richards" AND SingerId = 1;

Simultaneidad

Cloud Spanner ejecuta en secuencias todas las instrucciones de SQL (SELECT, INSERT, UPDATE y DELETE) dentro de una transacción. No se ejecutan al mismo tiempo. La única excepción es que Cloud Spanner podría ejecutar varias declaraciones SELECT de forma simultánea, porque son operaciones de solo lectura.

Límites de transacciones

Una transacción que incluye declaraciones DML tiene los mismos límites que cualquier otra transacción. Si tienes que realizar cambios a gran escala, considera usar DML particionado.

  • Si las declaraciones DML de una transacción generan más de 20,000 mutaciones, la declaración DML que envía la transacción por encima del límite muestra un error BadUsage con un mensaje de que son demasiadas mutaciones.

  • Si las declaraciones DML de una transacción generan una transacción superior a 100 MB, la declaración DML que envía la transacción por encima del límite muestra un error BadUsage con un mensaje de que la transacción supera el límite de tamaño.

Las mutaciones que se realizan con DML no se muestran al cliente. Se combinan en la solicitud de confirmación cuando se confirma y cuentan para los límites de tamaño máximo. Incluso si el tamaño de la solicitud de confirmación que envías es pequeño, la transacción podría superar el límite de tamaño permitido.

Ejecuta declaraciones en Cloud Console

Usa los pasos siguientes para ejecutar una declaración DML en Cloud Console.

  1. Ve a la página Instancias de Cloud Spanner.

    Ir a la página Instancias

  2. Selecciona tu proyecto en la lista desplegable de la barra de herramientas.

  3. Haz clic en el nombre de la instancia que contiene tu base de datos para ir a la página Detalles de la instancia.

  4. En la pestaña Descripción general, haz clic en el nombre de tu base de datos. Aparecerá la página Detalles de la base de datos.

  5. Haz clic en Consulta.

  6. Ingresa una declaración DML. Por ejemplo, con la declaración siguiente, se agrega una fila nueva a la tabla Singers.

    INSERT Singers (SingerId, FirstName, LastName)
    VALUES (1, 'Marc', 'Richards')
    
  7. Haz clic en Ejecutar consulta. Cloud Console muestra el resultado.

Ejecuta declaraciones con la herramienta de línea de comandos de gcloud

Para ejecutar declaraciones DML, usa el comando gcloud spanner databases execute-sql. En el siguiente ejemplo, se agrega una fila nueva a la tabla Singers.

gcloud spanner databases execute-sql example-db --instance=test-instance \
    --sql="INSERT Singers (SingerId, FirstName, LastName) VALUES (1, 'Marc', 'Richards')"

Modifica datos con la biblioteca cliente

Para ejecutar declaraciones DML con la biblioteca cliente, sigue estos pasos:

  • Crea una transacción de lectura y escritura.
  • Llama al método de la biblioteca cliente para la ejecución de DML y pasa la declaración DML.
  • Usa el valor que se muestra del método de ejecución de DML para obtener la cantidad de filas insertadas, actualizadas o borradas.

Con el siguiente ejemplo de código, se inserta una fila nueva en la tabla Singers.

C++

Usa la función ExecuteDml() para ejecutar una declaración DML.

void DmlStandardInsert(google::cloud::spanner::Client client) {
  using ::google::cloud::StatusOr;
  namespace spanner = ::google::cloud::spanner;
  std::int64_t rows_inserted;
  auto commit_result = client.Commit(
      [&client, &rows_inserted](
          spanner::Transaction txn) -> StatusOr<spanner::Mutations> {
        auto insert = client.ExecuteDml(
            std::move(txn),
            spanner::SqlStatement(
                "INSERT INTO Singers (SingerId, FirstName, LastName)"
                "  VALUES (10, 'Virginia', 'Watson')"));
        if (!insert) return insert.status();
        rows_inserted = insert->RowsModified();
        return spanner::Mutations{};
      });
  if (!commit_result) {
    throw std::runtime_error(commit_result.status().message());
  }
  std::cout << "Rows inserted: " << rows_inserted;
  std::cout << "Insert was successful [spanner_dml_standard_insert]\n";
}

C#

Usa el método ExecuteNonQueryAsync() para ejecutar una declaración DML.

public static async Task InsertUsingDmlCoreAsync(
    string projectId,
    string instanceId,
    string databaseId)
{
    string connectionString =
        $"Data Source=projects/{projectId}/instances/{instanceId}"
        + $"/databases/{databaseId}";

    // Create connection to Cloud Spanner.
    using (var connection =
        new SpannerConnection(connectionString))
    {
        await connection.OpenAsync();

        SpannerCommand cmd = connection.CreateDmlCommand(
           "INSERT Singers (SingerId, FirstName, LastName) "
           + "VALUES (10, 'Virginia', 'Watson')");
        int rowCount = await cmd.ExecuteNonQueryAsync();
        Console.WriteLine($"{rowCount} row(s) inserted...");
    }
}

Go

Usa el método Update() para ejecutar una declaración DML.


import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/spanner"
)

func insertUsingDML(w io.Writer, db string) error {
	ctx := context.Background()
	client, err := spanner.NewClient(ctx, db)
	if err != nil {
		return err
	}
	defer client.Close()

	_, err = client.ReadWriteTransaction(ctx, func(ctx context.Context, txn *spanner.ReadWriteTransaction) error {
		stmt := spanner.Statement{
			SQL: `INSERT Singers (SingerId, FirstName, LastName)
					VALUES (10, 'Virginia', 'Watson')`,
		}
		rowCount, err := txn.Update(ctx, stmt)
		if err != nil {
			return err
		}
		fmt.Fprintf(w, "%d record(s) inserted.\n", rowCount)
		return nil
	})
	return err
}

Java

Usa el método executeUpdate() para ejecutar una declaración DML.

static void insertUsingDml(DatabaseClient dbClient) {
  dbClient
      .readWriteTransaction()
      .run(
          new TransactionCallable<Void>() {
            @Override
            public Void run(TransactionContext transaction) throws Exception {
              String sql =
                  "INSERT INTO Singers (SingerId, FirstName, LastName) "
                      + " VALUES (10, 'Virginia', 'Watson')";
              long rowCount = transaction.executeUpdate(Statement.of(sql));
              System.out.printf("%d record inserted.\n", rowCount);
              return null;
            }
          });
}

Node.js

Usa el método runUpdate() para ejecutar una declaración DML.

// Imports the Google Cloud client library
const {Spanner} = require('@google-cloud/spanner');

/**
 * TODO(developer): Uncomment the following lines before running the sample.
 */
// const projectId = 'my-project-id';
// const instanceId = 'my-instance';
// const databaseId = 'my-database';

// Creates a client
const spanner = new Spanner({
  projectId: projectId,
});

// Gets a reference to a Cloud Spanner instance and database
const instance = spanner.instance(instanceId);
const database = instance.database(databaseId);

database.runTransaction(async (err, transaction) => {
  if (err) {
    console.error(err);
    return;
  }
  try {
    const [rowCount] = await transaction.runUpdate({
      sql:
        'INSERT Singers (SingerId, FirstName, LastName) VALUES (10, @firstName, @lastName)',
      params: {
        firstName: 'Virginia',
        lastName: 'Watson',
      },
    });

    console.log(
      `Successfully inserted ${rowCount} record into the Singers table.`
    );

    await transaction.commit();
  } catch (err) {
    console.error('ERROR:', err);
  } finally {
    // Close the database when finished.
    database.close();
  }
});

PHP

Usa el método executeUpdate() para ejecutar una declaración DML.

use Google\Cloud\Spanner\SpannerClient;
use Google\Cloud\Spanner\Transaction;

/**
 * Inserts sample data into the given database with a DML statement.
 *
 * The database and table must already exist and can be created using
 * `create_database`.
 * Example:
 * ```
 * insert_data($instanceId, $databaseId);
 * ```
 *
 * @param string $instanceId The Spanner instance ID.
 * @param string $databaseId The Spanner database ID.
 */
function insert_data_with_dml($instanceId, $databaseId)
{
    $spanner = new SpannerClient();
    $instance = $spanner->instance($instanceId);
    $database = $instance->database($databaseId);

    $database->runTransaction(function (Transaction $t) use ($spanner) {
        $rowCount = $t->executeUpdate(
            "INSERT Singers (SingerId, FirstName, LastName) "
            . " VALUES (10, 'Virginia', 'Watson')");
        $t->commit();
        printf('Inserted %d row(s).' . PHP_EOL, $rowCount);
    });
}

Python

Usa el método execute_update() para ejecutar una declaración DML.

# instance_id = "your-spanner-instance"
# database_id = "your-spanner-db-id"

spanner_client = spanner.Client()
instance = spanner_client.instance(instance_id)
database = instance.database(database_id)

def insert_singers(transaction):
    row_ct = transaction.execute_update(
        "INSERT Singers (SingerId, FirstName, LastName) "
        " VALUES (10, 'Virginia', 'Watson')"
    )

    print("{} record(s) inserted.".format(row_ct))

database.run_in_transaction(insert_singers)

Ruby

Usa el método execute_update() para ejecutar una declaración DML.

# project_id  = "Your Google Cloud project ID"
# instance_id = "Your Spanner instance ID"
# database_id = "Your Spanner database ID"

require "google/cloud/spanner"

spanner   = Google::Cloud::Spanner.new project: project_id
client    = spanner.client instance_id, database_id
row_count = 0

client.transaction do |transaction|
  row_count = transaction.execute_update(
    "INSERT INTO Singers (SingerId, FirstName, LastName) VALUES (10, 'Virginia', 'Watson')"
  )
end

puts "#{row_count} record inserted."

En el siguiente ejemplo de código, se actualiza la columna MarketingBudget de la tabla Albums según una cláusula WHERE.

C++

void DmlStandardUpdate(google::cloud::spanner::Client client) {
  using ::google::cloud::StatusOr;
  namespace spanner = ::google::cloud::spanner;
  auto commit_result = client.Commit(
      [&client](spanner::Transaction txn) -> StatusOr<spanner::Mutations> {
        auto update = client.ExecuteDml(
            std::move(txn),
            spanner::SqlStatement(
                "UPDATE Albums SET MarketingBudget = MarketingBudget * 2"
                " WHERE SingerId = 1 AND AlbumId = 1"));
        if (!update) return update.status();
        return spanner::Mutations{};
      });
  if (!commit_result) {
    throw std::runtime_error(commit_result.status().message());
  }
  std::cout << "Update was successful [spanner_dml_standard_update]\n";
}

C#

public static async Task UpdateUsingDmlCoreAsync(
    string projectId,
    string instanceId,
    string databaseId)
{
    string connectionString =
        $"Data Source=projects/{projectId}/instances/{instanceId}"
        + $"/databases/{databaseId}";

    // Create connection to Cloud Spanner.
    using (var connection =
        new SpannerConnection(connectionString))
    {
        await connection.OpenAsync();

        SpannerCommand cmd = connection.CreateDmlCommand(
           "UPDATE Albums SET MarketingBudget = MarketingBudget * 2 "
           + "WHERE SingerId = 1 and AlbumId = 1");
        int rowCount = await cmd.ExecuteNonQueryAsync();
        Console.WriteLine($"{rowCount} row(s) updated...");
    }
}

Go


import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/spanner"
)

func updateUsingDML(w io.Writer, db string) error {
	ctx := context.Background()
	client, err := spanner.NewClient(ctx, db)
	if err != nil {
		return err
	}
	defer client.Close()

	_, err = client.ReadWriteTransaction(ctx, func(ctx context.Context, txn *spanner.ReadWriteTransaction) error {
		stmt := spanner.Statement{
			SQL: `UPDATE Albums
				SET MarketingBudget = MarketingBudget * 2
				WHERE SingerId = 1 and AlbumId = 1`,
		}
		rowCount, err := txn.Update(ctx, stmt)
		if err != nil {
			return err
		}
		fmt.Fprintf(w, "%d record(s) updated.\n", rowCount)
		return nil
	})
	return err
}

Java

static void updateUsingDml(DatabaseClient dbClient) {
  dbClient
      .readWriteTransaction()
      .run(
          new TransactionCallable<Void>() {
            @Override
            public Void run(TransactionContext transaction) throws Exception {
              String sql =
                  "UPDATE Albums "
                      + "SET MarketingBudget = MarketingBudget * 2 "
                      + "WHERE SingerId = 1 and AlbumId = 1";
              long rowCount = transaction.executeUpdate(Statement.of(sql));
              System.out.printf("%d record updated.\n", rowCount);
              return null;
            }
          });
}

Node.js

// Imports the Google Cloud client library
const {Spanner} = require('@google-cloud/spanner');

/**
 * TODO(developer): Uncomment the following lines before running the sample.
 */
// const projectId = 'my-project-id';
// const instanceId = 'my-instance';
// const databaseId = 'my-database';

// Creates a client
const spanner = new Spanner({
  projectId: projectId,
});

// Gets a reference to a Cloud Spanner instance and database
const instance = spanner.instance(instanceId);
const database = instance.database(databaseId);

database.runTransaction(async (err, transaction) => {
  if (err) {
    console.error(err);
    return;
  }
  try {
    const [rowCount] = await transaction.runUpdate({
      sql: `UPDATE Albums SET MarketingBudget = MarketingBudget * 2
        WHERE SingerId = 1 and AlbumId = 1`,
    });

    console.log(`Successfully updated ${rowCount} record.`);
    await transaction.commit();
  } catch (err) {
    console.error('ERROR:', err);
  } finally {
    // Close the database when finished.
    database.close();
  }
});

PHP

use Google\Cloud\Spanner\SpannerClient;
use Google\Cloud\Spanner\Transaction;

/**
 * Updates sample data in the database with a DML statement.
 *
 * This requires the `MarketingBudget` column which must be created before
 * running this sample. You can add the column by running the `add_column`
 * sample or by running this DDL statement against your database:
 *
 *     ALTER TABLE Albums ADD COLUMN MarketingBudget INT64
 *
 * Example:
 * ```
 * update_data($instanceId, $databaseId);
 * ```
 *
 * @param string $instanceId The Spanner instance ID.
 * @param string $databaseId The Spanner database ID.
 */
function update_data_with_dml($instanceId, $databaseId)
{
    $spanner = new SpannerClient();
    $instance = $spanner->instance($instanceId);
    $database = $instance->database($databaseId);

    $database->runTransaction(function (Transaction $t) use ($spanner) {
        $rowCount = $t->executeUpdate(
            "UPDATE Albums "
            . "SET MarketingBudget = MarketingBudget * 2 "
            . "WHERE SingerId = 1 and AlbumId = 1");
        $t->commit();
        printf('Updated %d row(s).' . PHP_EOL, $rowCount);
    });
}

Python

# instance_id = "your-spanner-instance"
# database_id = "your-spanner-db-id"

spanner_client = spanner.Client()
instance = spanner_client.instance(instance_id)
database = instance.database(database_id)

def update_albums(transaction):
    row_ct = transaction.execute_update(
        "UPDATE Albums "
        "SET MarketingBudget = MarketingBudget * 2 "
        "WHERE SingerId = 1 and AlbumId = 1"
    )

    print("{} record(s) updated.".format(row_ct))

database.run_in_transaction(update_albums)

Ruby

# project_id  = "Your Google Cloud project ID"
# instance_id = "Your Spanner instance ID"
# database_id = "Your Spanner database ID"

require "google/cloud/spanner"

spanner = Google::Cloud::Spanner.new project: project_id
client  = spanner.client instance_id, database_id
row_count = 0

client.transaction do |transaction|
  row_count = transaction.execute_update(
    "UPDATE Albums
     SET MarketingBudget = MarketingBudget * 2
     WHERE SingerId = 1 and AlbumId = 1"
  )
end

puts "#{row_count} record updated."

En el siguiente ejemplo de código, se borran todas las filas de la tabla Singers en las que la columna FirstName es Alice.

C++

void DmlStandardDelete(google::cloud::spanner::Client client) {
  using ::google::cloud::StatusOr;
  namespace spanner = ::google::cloud::spanner;
  auto commit_result = client.Commit([&client](spanner::Transaction txn)
                                         -> StatusOr<spanner::Mutations> {
    auto dele = client.ExecuteDml(
        std::move(txn),
        spanner::SqlStatement("DELETE FROM Singers WHERE FirstName = 'Alice'"));
    if (!dele) return dele.status();
    return spanner::Mutations{};
  });
  if (!commit_result) {
    throw std::runtime_error(commit_result.status().message());
  }
  std::cout << "Delete was successful [spanner_dml_standard_delete]\n";
}

C#

public static async Task DeleteUsingDmlCoreAsync(
    string projectId,
    string instanceId,
    string databaseId)
{
    string connectionString =
        $"Data Source=projects/{projectId}/instances/{instanceId}"
        + $"/databases/{databaseId}";

    // Create connection to Cloud Spanner.
    using (var connection =
        new SpannerConnection(connectionString))
    {
        await connection.OpenAsync();

        SpannerCommand cmd = connection.CreateDmlCommand(
           "DELETE FROM Singers WHERE FirstName = 'Alice'");
        int rowCount = await cmd.ExecuteNonQueryAsync();
        Console.WriteLine($"{rowCount} row(s) deleted...");
    }
}

Go


import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/spanner"
)

func deleteUsingDML(w io.Writer, db string) error {
	ctx := context.Background()
	client, err := spanner.NewClient(ctx, db)
	if err != nil {
		return err
	}
	defer client.Close()

	_, err = client.ReadWriteTransaction(ctx, func(ctx context.Context, txn *spanner.ReadWriteTransaction) error {
		stmt := spanner.Statement{SQL: `DELETE FROM Singers WHERE FirstName = 'Alice'`}
		rowCount, err := txn.Update(ctx, stmt)
		if err != nil {
			return err
		}
		fmt.Fprintf(w, "%d record(s) deleted.\n", rowCount)
		return nil
	})
	return err
}

Java

static void deleteUsingDml(DatabaseClient dbClient) {
  dbClient
      .readWriteTransaction()
      .run(
          new TransactionCallable<Void>() {
            @Override
            public Void run(TransactionContext transaction) throws Exception {
              String sql = "DELETE FROM Singers WHERE FirstName = 'Alice'";
              long rowCount = transaction.executeUpdate(Statement.of(sql));
              System.out.printf("%d record deleted.\n", rowCount);
              return null;
            }
          });
}

Node.js

// Imports the Google Cloud client library
const {Spanner} = require('@google-cloud/spanner');

/**
 * TODO(developer): Uncomment the following lines before running the sample.
 */
// const projectId = 'my-project-id';
// const instanceId = 'my-instance';
// const databaseId = 'my-database';

// Creates a client
const spanner = new Spanner({
  projectId: projectId,
});

// Gets a reference to a Cloud Spanner instance and database
const instance = spanner.instance(instanceId);
const database = instance.database(databaseId);

database.runTransaction(async (err, transaction) => {
  if (err) {
    console.error(err);
    return;
  }
  try {
    const [rowCount] = await transaction.runUpdate({
      sql: "DELETE FROM Singers WHERE FirstName = 'Alice'",
    });

    console.log(`Successfully deleted ${rowCount} record.`);
    await transaction.commit();
  } catch (err) {
    console.error('ERROR:', err);
  } finally {
    // Close the database when finished.
    database.close();
  }
});

PHP

use Google\Cloud\Spanner\SpannerClient;
use Google\Cloud\Spanner\Transaction;

/**
 * Deletes sample data in the database with a DML statement.
 *
 * @param string $instanceId The Spanner instance ID.
 * @param string $databaseId The Spanner database ID.
 */
function delete_data_with_dml($instanceId, $databaseId)
{
    $spanner = new SpannerClient();
    $instance = $spanner->instance($instanceId);
    $database = $instance->database($databaseId);

    $database->runTransaction(function (Transaction $t) use ($spanner) {
        $rowCount = $t->executeUpdate(
            "DELETE FROM Singers WHERE FirstName = 'Alice'");
        $t->commit();
        printf('Deleted %d row(s).' . PHP_EOL, $rowCount);
    });
}

Python

# instance_id = "your-spanner-instance"
# database_id = "your-spanner-db-id"

spanner_client = spanner.Client()
instance = spanner_client.instance(instance_id)
database = instance.database(database_id)

def delete_singers(transaction):
    row_ct = transaction.execute_update(
        "DELETE FROM Singers WHERE FirstName = 'Alice'"
    )

    print("{} record(s) deleted.".format(row_ct))

database.run_in_transaction(delete_singers)

Ruby

# project_id  = "Your Google Cloud project ID"
# instance_id = "Your Spanner instance ID"
# database_id = "Your Spanner database ID"

require "google/cloud/spanner"

spanner = Google::Cloud::Spanner.new project: project_id
client  = spanner.client instance_id, database_id
row_count = 0

client.transaction do |transaction|
  row_count = transaction.execute_update(
    "DELETE FROM Singers WHERE FirstName = 'Alice'"
  )
end

puts "#{row_count} record deleted."

En el siguiente ejemplo, se usa un STRUCT con parámetros vinculados para actualizar el LastName en las filas filtradas por FirstName y LastName.

C++

void DmlStructs(google::cloud::spanner::Client client) {
  namespace spanner = ::google::cloud::spanner;
  std::int64_t rows_modified = 0;
  auto commit_result =
      client.Commit([&client, &rows_modified](spanner::Transaction const& txn)
                        -> google::cloud::StatusOr<spanner::Mutations> {
        auto singer_info = std::make_tuple("Marc", "Richards");
        auto sql = spanner::SqlStatement(
            "UPDATE Singers SET FirstName = 'Keith' WHERE "
            "STRUCT<FirstName String, LastName String>(FirstName, LastName) "
            "= @name",
            {{"name", spanner::Value(std::move(singer_info))}});
        auto dml_result = client.ExecuteDml(txn, std::move(sql));
        if (!dml_result) return dml_result.status();
        rows_modified = dml_result->RowsModified();
        return spanner::Mutations{};
      });
  if (!commit_result) {
    throw std::runtime_error(commit_result.status().message());
  }
  std::cout << rows_modified
            << " update was successful [spanner_dml_structs]\n";
}

C#

public static async Task UpdateUsingDmlWithStructCoreAsync(
    string projectId,
    string instanceId,
    string databaseId)
{
    var nameStruct = new SpannerStruct
    {
        { "FirstName", SpannerDbType.String, "Timothy" },
        { "LastName", SpannerDbType.String, "Campbell" },
    };
    string connectionString =
        $"Data Source=projects/{projectId}/instances/{instanceId}"
        + $"/databases/{databaseId}";

    // Create connection to Cloud Spanner.
    using (var connection =
        new SpannerConnection(connectionString))
    {
        await connection.OpenAsync();

        SpannerCommand cmd = connection.CreateDmlCommand(
            "UPDATE Singers SET LastName = 'Grant' "
           + "WHERE STRUCT<FirstName STRING, LastName STRING>"
           + "(FirstName, LastName) = @name");
        cmd.Parameters.Add("name", nameStruct.GetSpannerDbType(), nameStruct);
        int rowCount = await cmd.ExecuteNonQueryAsync();
        Console.WriteLine($"{rowCount} row(s) updated...");
    }
}

Go


import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/spanner"
)

func updateUsingDMLStruct(w io.Writer, db string) error {
	ctx := context.Background()
	client, err := spanner.NewClient(ctx, db)
	if err != nil {
		return err
	}
	defer client.Close()

	_, err = client.ReadWriteTransaction(ctx, func(ctx context.Context, txn *spanner.ReadWriteTransaction) error {
		type name struct {
			FirstName string
			LastName  string
		}
		var singerInfo = name{"Timothy", "Campbell"}

		stmt := spanner.Statement{
			SQL: `Update Singers Set LastName = 'Grant'
				WHERE STRUCT<FirstName String, LastName String>(Firstname, LastName) = @name`,
			Params: map[string]interface{}{"name": singerInfo},
		}
		rowCount, err := txn.Update(ctx, stmt)
		if err != nil {
			return err
		}
		fmt.Fprintf(w, "%d record(s) inserted.\n", rowCount)
		return nil
	})
	return err
}

Java

static void updateUsingDmlWithStruct(DatabaseClient dbClient) {
  Struct name =
      Struct.newBuilder().set("FirstName").to("Timothy").set("LastName").to("Campbell").build();
  Statement s =
      Statement.newBuilder(
              "UPDATE Singers SET LastName = 'Grant' "
                  + "WHERE STRUCT<FirstName STRING, LastName STRING>(FirstName, LastName) "
                  + "= @name")
          .bind("name")
          .to(name)
          .build();
  dbClient
      .readWriteTransaction()
      .run(
          new TransactionCallable<Void>() {
            @Override
            public Void run(TransactionContext transaction) throws Exception {
              long rowCount = transaction.executeUpdate(s);
              System.out.printf("%d record updated.\n", rowCount);
              return null;
            }
          });
}

Node.js

// Imports the Google Cloud client library
const {Spanner} = require('@google-cloud/spanner');

const nameStruct = Spanner.struct({
  FirstName: 'Timothy',
  LastName: 'Campbell',
});

/**
 * TODO(developer): Uncomment the following lines before running the sample.
 */
// const projectId = 'my-project-id';
// const instanceId = 'my-instance';
// const databaseId = 'my-database';

// Creates a client
const spanner = new Spanner({
  projectId: projectId,
});

// Gets a reference to a Cloud Spanner instance and database
const instance = spanner.instance(instanceId);
const database = instance.database(databaseId);

database.runTransaction(async (err, transaction) => {
  if (err) {
    console.error(err);
    return;
  }
  try {
    const [rowCount] = await transaction.runUpdate({
      sql: `UPDATE Singers SET LastName = 'Grant'
      WHERE STRUCT<FirstName STRING, LastName STRING>(FirstName, LastName) = @name`,
      params: {
        name: nameStruct,
      },
    });

    console.log(`Successfully updated ${rowCount} record.`);
    await transaction.commit();
  } catch (err) {
    console.error('ERROR:', err);
  } finally {
    // Close the database when finished.
    database.close();
  }
});

PHP

use Google\Cloud\Spanner\SpannerClient;
use Google\Cloud\Spanner\Database;
use Google\Cloud\Spanner\Transaction;
use Google\Cloud\Spanner\StructType;
use Google\Cloud\Spanner\StructValue;

/**
 * Update data with a DML statement using Structs.
 *
 * The database and table must already exist and can be created using
 * `create_database`.
 * Example:
 * ```
 * insert_data($instanceId, $databaseId);
 * ```
 *
 * @param string $instanceId The Spanner instance ID.
 * @param string $databaseId The Spanner database ID.
 */
function update_data_with_dml_structs($instanceId, $databaseId)
{
    $spanner = new SpannerClient();
    $instance = $spanner->instance($instanceId);
    $database = $instance->database($databaseId);

    $database->runTransaction(function (Transaction $t) use ($spanner) {
        $nameValue = (new StructValue)
            ->add('FirstName', 'Timothy')
            ->add('LastName', 'Campbell');
        $nameType = (new StructType)
            ->add('FirstName', Database::TYPE_STRING)
            ->add('LastName', Database::TYPE_STRING);

        $rowCount = $t->executeUpdate(
            "UPDATE Singers SET LastName = 'Grant' "
             . "WHERE STRUCT<FirstName STRING, LastName STRING>(FirstName, LastName) "
             . "= @name",
            [
                'parameters' => [
                    'name' => $nameValue
                ],
                'types' => [
                    'name' => $nameType
                ]
            ]);
        $t->commit();
        printf('Updated %d row(s).' . PHP_EOL, $rowCount);
    });
}

Python

# instance_id = "your-spanner-instance"
# database_id = "your-spanner-db-id"

spanner_client = spanner.Client()
instance = spanner_client.instance(instance_id)
database = instance.database(database_id)

record_type = param_types.Struct(
    [
        param_types.StructField("FirstName", param_types.STRING),
        param_types.StructField("LastName", param_types.STRING),
    ]
)
record_value = ("Timothy", "Campbell")

def write_with_struct(transaction):
    row_ct = transaction.execute_update(
        "UPDATE Singers SET LastName = 'Grant' "
        "WHERE STRUCT<FirstName STRING, LastName STRING>"
        "(FirstName, LastName) = @name",
        params={"name": record_value},
        param_types={"name": record_type},
    )
    print("{} record(s) updated.".format(row_ct))

database.run_in_transaction(write_with_struct)

Ruby

# project_id  = "Your Google Cloud project ID"
# instance_id = "Your Spanner instance ID"
# database_id = "Your Spanner database ID"

require "google/cloud/spanner"

spanner = Google::Cloud::Spanner.new project: project_id
client  = spanner.client instance_id, database_id
row_count = 0
name_struct = { FirstName: "Timothy", LastName: "Campbell" }

client.transaction do |transaction|
  row_count = transaction.execute_update(
    "UPDATE Singers SET LastName = 'Grant'
     WHERE STRUCT<FirstName STRING, LastName STRING>(FirstName, LastName) = @name",
    params: { name: name_struct }
  )
end

puts "#{row_count} record updated."

Lee datos escritos en la misma transacción

Los cambios que realices mediante las declaraciones DML serán visibles para las declaraciones posteriores de la misma transacción. No es lo mismo que usar mutaciones, cuyos cambios no son visibles hasta que la transacción se confirma.

Cloud Spanner verifica las restricciones después de que se realice cada declaración DML. No es lo mismo que usar mutaciones, para las que Cloud Spanner almacena las mutaciones en el cliente hasta la confirmación y verifica las restricciones en el momento de la confirmación. La evaluación de las restricciones después de realizar cada declaración permite que Cloud Spanner garantice que los datos que muestra una declaración DML sean coherentes con el esquema.

En el ejemplo siguiente, se actualiza una fila en la tabla Singers, después, se ejecuta una declaración SELECT para mostrar los valores nuevos.

C++

void DmlWriteThenRead(google::cloud::spanner::Client client) {
  namespace spanner = ::google::cloud::spanner;
  using ::google::cloud::StatusOr;

  auto commit_result = client.Commit(
      [&client](spanner::Transaction txn) -> StatusOr<spanner::Mutations> {
        auto insert = client.ExecuteDml(
            txn, spanner::SqlStatement(
                     "INSERT INTO Singers (SingerId, FirstName, LastName)"
                     "  VALUES (11, 'Timothy', 'Campbell')"));
        if (!insert) return insert.status();
        // Read newly inserted record.
        spanner::SqlStatement select(
            "SELECT FirstName, LastName FROM Singers where SingerId = 11");
        using RowType = std::tuple<std::string, std::string>;
        auto rows = client.ExecuteQuery(std::move(txn), std::move(select));
        for (auto const& row : spanner::StreamOf<RowType>(rows)) {
          if (!row) return row.status();
          std::cout << "FirstName: " << std::get<0>(*row) << "\t";
          std::cout << "LastName: " << std::get<1>(*row) << "\n";
        }
        return spanner::Mutations{};
      });
  if (!commit_result) {
    throw std::runtime_error(commit_result.status().message());
  }
  std::cout << "Write then read suceeded [spanner_dml_write_then_read]\n";
}

C#

public static async Task WriteAndReadUsingDmlCoreAsync(
    string projectId,
    string instanceId,
    string databaseId)
{
    string connectionString =
        $"Data Source=projects/{projectId}/instances/{instanceId}"
        + $"/databases/{databaseId}";

    // Create connection to Cloud Spanner.
    using (var connection =
        new SpannerConnection(connectionString))
    {
        await connection.OpenAsync();

        SpannerCommand cmd = connection.CreateDmlCommand(
           @"INSERT Singers (SingerId, FirstName, LastName)
              VALUES (11, 'Timothy', 'Campbell')");
        int rowCount = await cmd.ExecuteNonQueryAsync();
        Console.WriteLine($"{rowCount} row(s) inserted...");
        // Read newly inserted record.
        cmd = connection.CreateSelectCommand(
            @"SELECT FirstName, LastName FROM Singers
              WHERE SingerId = 11");
        using (var reader = await cmd.ExecuteReaderAsync())
        {
            while (await reader.ReadAsync())
            {
                Console.WriteLine(
                    reader.GetFieldValue<string>("FirstName") + " "
                    + reader.GetFieldValue<string>("LastName"));
            }
        }
    }
}

Go


import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/spanner"
	"google.golang.org/api/iterator"
)

func writeAndReadUsingDML(w io.Writer, db string) error {
	ctx := context.Background()
	client, err := spanner.NewClient(ctx, db)
	if err != nil {
		return err
	}
	defer client.Close()

	_, err = client.ReadWriteTransaction(ctx, func(ctx context.Context, txn *spanner.ReadWriteTransaction) error {
		// Insert Record
		stmt := spanner.Statement{
			SQL: `INSERT Singers (SingerId, FirstName, LastName)
				VALUES (11, 'Timothy', 'Campbell')`,
		}
		rowCount, err := txn.Update(ctx, stmt)
		if err != nil {
			return err
		}
		fmt.Fprintf(w, "%d record(s) inserted.\n", rowCount)

		// Read newly inserted record
		stmt = spanner.Statement{SQL: `SELECT FirstName, LastName FROM Singers WHERE SingerId = 11`}
		iter := txn.Query(ctx, stmt)
		defer iter.Stop()

		for {
			row, err := iter.Next()
			if err == iterator.Done || err != nil {
				break
			}
			var firstName, lastName string
			if err := row.ColumnByName("FirstName", &firstName); err != nil {
				return err
			}
			if err := row.ColumnByName("LastName", &lastName); err != nil {
				return err
			}
			fmt.Fprintf(w, "Found record name with %s, %s", firstName, lastName)
		}
		return err
	})
	return err
}

Java

static void writeAndReadUsingDml(DatabaseClient dbClient) {
  dbClient
      .readWriteTransaction()
      .run(
          new TransactionCallable<Void>() {
            @Override
            public Void run(TransactionContext transaction) throws Exception {
              // Insert record.
              String sql =
                  "INSERT INTO Singers (SingerId, FirstName, LastName) "
                      + " VALUES (11, 'Timothy', 'Campbell')";
              long rowCount = transaction.executeUpdate(Statement.of(sql));
              System.out.printf("%d record inserted.\n", rowCount);
              // Read newly inserted record.
              sql = "SELECT FirstName, LastName FROM Singers WHERE SingerId = 11";
              // We use a try-with-resource block to automatically release resources held by
              // ResultSet.
              try (ResultSet resultSet = transaction.executeQuery(Statement.of(sql))) {
                while (resultSet.next()) {
                  System.out.printf(
                      "%s %s\n",
                      resultSet.getString("FirstName"), resultSet.getString("LastName"));
                }
              }
              return null;
            }
          });
}

Node.js

// Imports the Google Cloud client library
const {Spanner} = require('@google-cloud/spanner');

/**
 * TODO(developer): Uncomment the following lines before running the sample.
 */
// const projectId = 'my-project-id';
// const instanceId = 'my-instance';
// const databaseId = 'my-database';

// Creates a client
const spanner = new Spanner({
  projectId: projectId,
});

// Gets a reference to a Cloud Spanner instance and database
const instance = spanner.instance(instanceId);
const database = instance.database(databaseId);

database.runTransaction(async (err, transaction) => {
  if (err) {
    console.error(err);
    return;
  }
  try {
    await transaction.runUpdate({
      sql: `INSERT Singers (SingerId, FirstName, LastName)
        VALUES (11, 'Timothy', 'Campbell')`,
    });

    const [rows] = await transaction.run({
      sql: 'SELECT FirstName, LastName FROM Singers',
    });
    rows.forEach(row => {
      const json = row.toJSON();
      console.log(`${json.FirstName} ${json.LastName}`);
    });

    await transaction.commit();
  } catch (err) {
    console.error('ERROR:', err);
  } finally {
    // Close the database when finished.
    database.close();
  }
});

PHP

use Google\Cloud\Spanner\SpannerClient;
use Google\Cloud\Spanner\Transaction;

/**
 * Writes then reads data inside a Transaction with a DML statement.
 *
 * The database and table must already exist and can be created using
 * `create_database`.
 * Example:
 * ```
 * insert_data($instanceId, $databaseId);
 * ```
 *
 * @param string $instanceId The Spanner instance ID.
 * @param string $databaseId The Spanner database ID.
 */
function write_read_with_dml($instanceId, $databaseId)
{
    $spanner = new SpannerClient();
    $instance = $spanner->instance($instanceId);
    $database = $instance->database($databaseId);

    $database->runTransaction(function (Transaction $t) use ($spanner) {
        $rowCount = $t->executeUpdate(
            "INSERT Singers (SingerId, FirstName, LastName) "
            . " VALUES (11, 'Timothy', 'Campbell')");

        printf('Inserted %d row(s).' . PHP_EOL, $rowCount);

        $results = $t->execute("SELECT FirstName, LastName FROM Singers WHERE SingerId = 11");

        foreach ($results as $row) {
            printf('%s %s' . PHP_EOL, $row['FirstName'], $row['LastName']);
        }

        $t->commit();
    });
}

Python

# instance_id = "your-spanner-instance"
# database_id = "your-spanner-db-id"

spanner_client = spanner.Client()
instance = spanner_client.instance(instance_id)
database = instance.database(database_id)

def write_then_read(transaction):
    # Insert record.
    row_ct = transaction.execute_update(
        "INSERT Singers (SingerId, FirstName, LastName) "
        " VALUES (11, 'Timothy', 'Campbell')"
    )
    print("{} record(s) inserted.".format(row_ct))

    # Read newly inserted record.
    results = transaction.execute_sql(
        "SELECT FirstName, LastName FROM Singers WHERE SingerId = 11"
    )
    for result in results:
        print("FirstName: {}, LastName: {}".format(*result))

database.run_in_transaction(write_then_read)

Ruby

# project_id  = "Your Google Cloud project ID"
# instance_id = "Your Spanner instance ID"
# database_id = "Your Spanner database ID"

require "google/cloud/spanner"

spanner = Google::Cloud::Spanner.new project: project_id
client  = spanner.client instance_id, database_id
row_count = 0

client.transaction do |transaction|
  row_count = transaction.execute_update(
    "INSERT INTO Singers (SingerId, FirstName, LastName) VALUES (11, 'Timothy', 'Campbell')"
  )
  puts "#{row_count} record updated."
  transaction.execute("SELECT FirstName, LastName FROM Singers WHERE SingerId = 11").rows.each do |row|
    puts "#{row[:FirstName]} #{row[:LastName]}"
  end
end

Escribe marcas de tiempo de confirmación

Usa la función PENDING_COMMIT_TIMESTAMP para escribir la marca de tiempo de confirmación en una declaración DML. Cloud Spanner selecciona la marca de tiempo de confirmación cuando se confirma la transacción.

En el siguiente ejemplo de código, se usa la función PENDING_COMMIT_TIMESTAMP para escribir la marca de tiempo de confirmación en la columna LastUpdateTime.

C++

void DmlStandardUpdateWithTimestamp(google::cloud::spanner::Client client) {
  using ::google::cloud::StatusOr;
  namespace spanner = ::google::cloud::spanner;
  auto commit_result = client.Commit(
      [&client](spanner::Transaction txn) -> StatusOr<spanner::Mutations> {
        auto update = client.ExecuteDml(
            std::move(txn),
            spanner::SqlStatement(
                "UPDATE Albums SET LastUpdateTime = PENDING_COMMIT_TIMESTAMP() "
                "WHERE SingerId = 1"));
        if (!update) return update.status();
        return spanner::Mutations{};
      });
  if (!commit_result) {
    throw std::runtime_error(commit_result.status().message());
  }
  std::cout << "Update was successful "
            << "[spanner_dml_standard_update_with_timestamp]\n";
}

C#

public static async Task UpdateUsingDmlWithTimestampCoreAsync(
    string projectId,
    string instanceId,
    string databaseId)
{
    string connectionString =
        $"Data Source=projects/{projectId}/instances/{instanceId}"
        + $"/databases/{databaseId}";

    // Create connection to Cloud Spanner.
    using (var connection =
        new SpannerConnection(connectionString))
    {
        await connection.OpenAsync();

        SpannerCommand cmd = connection.CreateDmlCommand(
           "UPDATE Albums "
           + "SET LastUpdateTime = PENDING_COMMIT_TIMESTAMP() "
           + "WHERE SingerId = 1");
        int rowCount = await cmd.ExecuteNonQueryAsync();
        Console.WriteLine($"{rowCount} row(s) updated...");
    }
}

Go


import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/spanner"
)

func updateUsingDMLWithTimestamp(w io.Writer, db string) error {
	ctx := context.Background()
	client, err := spanner.NewClient(ctx, db)
	if err != nil {
		return err
	}
	defer client.Close()

	_, err = client.ReadWriteTransaction(ctx, func(ctx context.Context, txn *spanner.ReadWriteTransaction) error {
		stmt := spanner.Statement{
			SQL: `UPDATE Albums
				SET LastUpdateTime = PENDING_COMMIT_TIMESTAMP()
				WHERE SingerId = 1`,
		}
		rowCount, err := txn.Update(ctx, stmt)
		if err != nil {
			return err
		}
		fmt.Fprintf(w, "%d record(s) updated.\n", rowCount)
		return nil
	})
	return err
}

Java

static void updateUsingDmlWithTimestamp(DatabaseClient dbClient) {
  dbClient
      .readWriteTransaction()
      .run(
          new TransactionCallable<Void>() {
            @Override
            public Void run(TransactionContext transaction) throws Exception {
              String sql =
                  "UPDATE Albums "
                      + "SET LastUpdateTime = PENDING_COMMIT_TIMESTAMP() WHERE SingerId = 1";
              long rowCount = transaction.executeUpdate(Statement.of(sql));
              System.out.printf("%d records updated.\n", rowCount);
              return null;
            }
          });
}

Node.js

// Imports the Google Cloud client library
const {Spanner} = require('@google-cloud/spanner');

/**
 * TODO(developer): Uncomment the following lines before running the sample.
 */
// const projectId = 'my-project-id';
// const instanceId = 'my-instance';
// const databaseId = 'my-database';

// Creates a client
const spanner = new Spanner({
  projectId: projectId,
});

// Gets a reference to a Cloud Spanner instance and database
const instance = spanner.instance(instanceId);
const database = instance.database(databaseId);

database.runTransaction(async (err, transaction) => {
  if (err) {
    console.error(err);
    return;
  }
  try {
    const [rowCount] = await transaction.runUpdate({
      sql: `UPDATE Albums
        SET LastUpdateTime = PENDING_COMMIT_TIMESTAMP()
        WHERE SingerId = 1`,
    });

    console.log(`Successfully updated ${rowCount} records.`);
    await transaction.commit();
  } catch (err) {
    console.error('ERROR:', err);
  } finally {
    // Close the database when finished.
    database.close();
  }
});

PHP

use Google\Cloud\Spanner\SpannerClient;
use Google\Cloud\Spanner\Transaction;

/**
 * Update data with a DML statement using timestamps.
 *
 * The database and table must already exist and can be created using
 * `create_database`.
 * Example:
 * ```
 * insert_data($instanceId, $databaseId);
 * ```
 *
 * @param string $instanceId The Spanner instance ID.
 * @param string $databaseId The Spanner database ID.
 */
function update_data_with_dml_timestamp($instanceId, $databaseId)
{
    $spanner = new SpannerClient();
    $instance = $spanner->instance($instanceId);
    $database = $instance->database($databaseId);

    $database->runTransaction(function (Transaction $t) use ($spanner) {
        $rowCount = $t->executeUpdate(
            "UPDATE Albums "
            . "SET LastUpdateTime = PENDING_COMMIT_TIMESTAMP() WHERE SingerId = 1");
        $t->commit();
        printf('Updated %d row(s).' . PHP_EOL, $rowCount);
    });
}

Python

# instance_id = "your-spanner-instance"
# database_id = "your-spanner-db-id"

spanner_client = spanner.Client()
instance = spanner_client.instance(instance_id)
database = instance.database(database_id)

def update_albums(transaction):
    row_ct = transaction.execute_update(
        "UPDATE Albums "
        "SET LastUpdateTime = PENDING_COMMIT_TIMESTAMP() "
        "WHERE SingerId = 1"
    )

    print("{} record(s) updated.".format(row_ct))

database.run_in_transaction(update_albums)

Ruby

# project_id  = "Your Google Cloud project ID"
# instance_id = "Your Spanner instance ID"
# database_id = "Your Spanner database ID"

require "google/cloud/spanner"

spanner = Google::Cloud::Spanner.new project: project_id
client  = spanner.client instance_id, database_id
row_count = 0

client.transaction do |transaction|
  row_count = transaction.execute_update(
    "UPDATE Albums SET LastUpdateTime = PENDING_COMMIT_TIMESTAMP() WHERE SingerId = 1"
  )
end

puts "#{row_count} records updated."

Obtén el plan de consultas

Puedes recuperar un plan de consultas con Cloud Console, las bibliotecas cliente y la herramienta de línea de comandos de gcloud.

Usa DML particionado

El DML particionado está diseñado con el fin de borrar y actualizar de forma masiva, en especial para la limpieza y el reabastecimiento periódico.

Ejecuta declaraciones con la herramienta de línea de comandos de gcloud

Si deseas ejecutar una declaración DML particionada, usa el comando gcloud spanner databases execute-sql con la opción --enable-partitioned-dml. En el ejemplo siguiente, se actualizan las filas de la tabla Albums.

gcloud spanner databases execute-sql example-db \
    --instance=test-instance --enable-partitioned-dml \
    --sql='UPDATE Albums SET MarketingBudget = 0 WHERE MarketingBudget IS NULL'

Modifica datos con la biblioteca cliente

En el siguiente ejemplo de código, se actualiza la columna MarketingBudget de la tabla Albums.

C++

Usa la función ExecutePartitionedDml() para ejecutar una declaración DML particionada.

void DmlPartitionedUpdate(google::cloud::spanner::Client client) {
  namespace spanner = ::google::cloud::spanner;
  auto result = client.ExecutePartitionedDml(
      spanner::SqlStatement("UPDATE Albums SET MarketingBudget = 100000"
                            " WHERE SingerId > 1"));
  if (!result) throw std::runtime_error(result.status().message());
  std::cout << "Update was successful [spanner_dml_partitioned_update]\n";
}

C#

Usa el método ExecutePartitionedUpdateAsync() para ejecutar una declaración DML particionada.

public static async Task UpdateUsingPartitionedDmlCoreAsync(
    string projectId,
    string instanceId,
    string databaseId)
{
    string connectionString =
        $"Data Source=projects/{projectId}/instances/{instanceId}"
        + $"/databases/{databaseId}";

    // Create connection to Cloud Spanner.
    using (var connection =
        new SpannerConnection(connectionString))
    {
        await connection.OpenAsync();

        SpannerCommand cmd = connection.CreateDmlCommand(
            "UPDATE Albums SET MarketingBudget = 100000 WHERE SingerId > 1"
        );
        long rowCount = await cmd.ExecutePartitionedUpdateAsync();
        Console.WriteLine($"{rowCount} row(s) updated...");
    }
}

Go

Usa el método PartitionedUpdate() para ejecutar una declaración DML particionada.


import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/spanner"
)

func updateUsingPartitionedDML(w io.Writer, db string) error {
	ctx := context.Background()
	client, err := spanner.NewClient(ctx, db)
	if err != nil {
		return err
	}
	defer client.Close()

	stmt := spanner.Statement{SQL: "UPDATE Albums SET MarketingBudget = 100000 WHERE SingerId > 1"}
	rowCount, err := client.PartitionedUpdate(ctx, stmt)
	if err != nil {
		return err
	}
	fmt.Fprintf(w, "%d record(s) updated.\n", rowCount)
	return nil
}

Java

Usa el método executePartitionedUpdate() para ejecutar una declaración DML particionada.

static void updateUsingPartitionedDml(DatabaseClient dbClient) {
  String sql = "UPDATE Albums SET MarketingBudget = 100000 WHERE SingerId > 1";
  long rowCount = dbClient.executePartitionedUpdate(Statement.of(sql));
  System.out.printf("%d records updated.\n", rowCount);
}

Node.js

Usa el método runPartitionedUpdate() para ejecutar una declaración DML particionada.

// Imports the Google Cloud client library
const {Spanner} = require('@google-cloud/spanner');

/**
 * TODO(developer): Uncomment the following lines before running the sample.
 */
// const projectId = 'my-project-id';
// const instanceId = 'my-instance';
// const databaseId = 'my-database';

// Creates a client
const spanner = new Spanner({
  projectId: projectId,
});

// Gets a reference to a Cloud Spanner instance and database
const instance = spanner.instance(instanceId);
const database = instance.database(databaseId);

try {
  const [rowCount] = await database.runPartitionedUpdate({
    sql: 'UPDATE Albums SET MarketingBudget = 100000 WHERE SingerId > 1',
  });
  console.log(`Successfully updated ${rowCount} records.`);
} catch (err) {
  console.error('ERROR:', err);
} finally {
  // Close the database when finished.
  database.close();
}

PHP

Usa el método executePartitionedUpdate() para ejecutar una declaración DML particionada.

use Google\Cloud\Spanner\SpannerClient;

/**
 * Updates sample data in the database by partition with a DML statement.
 *
 * This updates the `MarketingBudget` column which must be created before
 * running this sample. You can add the column by running the `add_column`
 * sample or by running this DDL statement against your database:
 *
 *     ALTER TABLE Albums ADD COLUMN MarketingBudget INT64
 *
 * Example:
 * ```
 * update_data($instanceId, $databaseId);
 * ```
 *
 * @param string $instanceId The Spanner instance ID.
 * @param string $databaseId The Spanner database ID.
 */
function update_data_with_partitioned_dml($instanceId, $databaseId)
{
    $spanner = new SpannerClient();
    $instance = $spanner->instance($instanceId);
    $database = $instance->database($databaseId);

    $rowCount = $database->executePartitionedUpdate(
        "UPDATE Albums SET MarketingBudget = 100000 WHERE SingerId > 1"
    );

    printf('Updated %d row(s).' . PHP_EOL, $rowCount);
}

Python

Usa el método execute_partitioned_dml() para ejecutar una declaración DML particionada.

# instance_id = "your-spanner-instance"
# database_id = "your-spanner-db-id"

spanner_client = spanner.Client()
instance = spanner_client.instance(instance_id)
database = instance.database(database_id)

row_ct = database.execute_partitioned_dml(
    "UPDATE Albums SET MarketingBudget = 100000 WHERE SingerId > 1"
)

print("{} records updated.".format(row_ct))

Ruby

Usa el método execute_partitioned_update() para ejecutar una declaración DML particionada.

# project_id  = "Your Google Cloud project ID"
# instance_id = "Your Spanner instance ID"
# database_id = "Your Spanner database ID"

require "google/cloud/spanner"

spanner = Google::Cloud::Spanner.new project: project_id
client  = spanner.client instance_id, database_id

row_count = client.execute_partition_update(
  "UPDATE Albums SET MarketingBudget = 100000 WHERE SingerId > 1"
)

puts "#{row_count} records updated."

En el siguiente ejemplo de código, se borran las filas de la tabla Singers según la columna SingerId.

C++

void DmlPartitionedDelete(google::cloud::spanner::Client client) {
  namespace spanner = ::google::cloud::spanner;
  auto result = client.ExecutePartitionedDml(
      spanner::SqlStatement("DELETE FROM Singers WHERE SingerId > 10"));
  if (!result) throw std::runtime_error(result.status().message());
  std::cout << "Delete was successful [spanner_dml_partitioned_delete]\n";
}

C#

public static async Task DeleteUsingPartitionedDmlCoreAsync(
    string projectId,
    string instanceId,
    string databaseId)
{
    string connectionString =
        $"Data Source=projects/{projectId}/instances/{instanceId}"
        + $"/databases/{databaseId}";

    // Create connection to Cloud Spanner.
    using (var connection =
        new SpannerConnection(connectionString))
    {
        await connection.OpenAsync();

        SpannerCommand cmd = connection.CreateDmlCommand(
            "DELETE FROM Singers WHERE SingerId > 10"
        );
        long rowCount = await cmd.ExecutePartitionedUpdateAsync();
        Console.WriteLine($"{rowCount} row(s) deleted...");
    }
}

Go


import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/spanner"
)

func deleteUsingPartitionedDML(w io.Writer, db string) error {
	ctx := context.Background()
	client, err := spanner.NewClient(ctx, db)
	if err != nil {
		return err
	}
	defer client.Close()

	stmt := spanner.Statement{SQL: "DELETE FROM Singers WHERE SingerId > 10"}
	rowCount, err := client.PartitionedUpdate(ctx, stmt)
	if err != nil {
		return err

	}
	fmt.Fprintf(w, "%d record(s) deleted.", rowCount)
	return nil
}

Java

static void deleteUsingPartitionedDml(DatabaseClient dbClient) {
  String sql = "DELETE FROM Singers WHERE SingerId > 10";
  long rowCount = dbClient.executePartitionedUpdate(Statement.of(sql));
  System.out.printf("%d records deleted.\n", rowCount);
}

Node.js

// Imports the Google Cloud client library
const {Spanner} = require('@google-cloud/spanner');

/**
 * TODO(developer): Uncomment the following lines before running the sample.
 */
// const projectId = 'my-project-id';
// const instanceId = 'my-instance';
// const databaseId = 'my-database';

// Creates a client
const spanner = new Spanner({
  projectId: projectId,
});

// Gets a reference to a Cloud Spanner instance and database
const instance = spanner.instance(instanceId);
const database = instance.database(databaseId);

try {
  const [rowCount] = await database.runPartitionedUpdate({
    sql: 'DELETE FROM Singers WHERE SingerId > 10',
  });
  console.log(`Successfully deleted ${rowCount} records.`);
} catch (err) {
  console.error('ERROR:', err);
} finally {
  // Close the database when finished.
  database.close();
}

PHP

use Google\Cloud\Spanner\SpannerClient;

/**
 * Delete sample data in the database by partition with a DML statement.
 *
 * This updates the `MarketingBudget` column which must be created before
 * running this sample. You can add the column by running the `add_column`
 * sample or by running this DDL statement against your database:
 *
 *     ALTER TABLE Albums ADD COLUMN MarketingBudget INT64
 *
 * Example:
 * ```
 * update_data($instanceId, $databaseId);
 * ```
 *
 * @param string $instanceId The Spanner instance ID.
 * @param string $databaseId The Spanner database ID.
 */
function delete_data_with_partitioned_dml($instanceId, $databaseId)
{
    $spanner = new SpannerClient();
    $instance = $spanner->instance($instanceId);
    $database = $instance->database($databaseId);

    $rowCount = $database->executePartitionedUpdate(
        "DELETE FROM Singers WHERE SingerId > 10"
    );

    printf('Deleted %d row(s).' . PHP_EOL, $rowCount);
}

Python

# instance_id = "your-spanner-instance"
# database_id = "your-spanner-db-id"
spanner_client = spanner.Client()
instance = spanner_client.instance(instance_id)
database = instance.database(database_id)

row_ct = database.execute_partitioned_dml("DELETE FROM Singers WHERE SingerId > 10")

print("{} record(s) deleted.".format(row_ct))

Ruby

# project_id  = "Your Google Cloud project ID"
# instance_id = "Your Spanner instance ID"
# database_id = "Your Spanner database ID"

require "google/cloud/spanner"

spanner = Google::Cloud::Spanner.new project: project_id
client  = spanner.client instance_id, database_id

row_count = client.execute_partition_update(
  "DELETE FROM Singers WHERE SingerId > 10"
)

puts "#{row_count} records deleted."

Usa DML por lotes

Si necesitas evitar la latencia adicional que generan varias solicitudes en serie, usa DML por lotes para enviar varias declaraciones INSERT, UPDATE o DELETE en una sola transacción:

C++

Usa la función ExecuteBatchDml() para ejecutar una lista de declaraciones DML.

void DmlBatchUpdate(google::cloud::spanner::Client client) {
  namespace spanner = ::google::cloud::spanner;

  auto commit_result =
      client.Commit([&client](spanner::Transaction const& txn)
                        -> google::cloud::StatusOr<spanner::Mutations> {
        std::vector<spanner::SqlStatement> statements = {
            spanner::SqlStatement("INSERT INTO Albums"
                                  " (SingerId, AlbumId, AlbumTitle,"
                                  " MarketingBudget)"
                                  " VALUES (1, 3, 'Test Album Title', 10000)"),
            spanner::SqlStatement("UPDATE Albums"
                                  " SET MarketingBudget = MarketingBudget * 2"
                                  " WHERE SingerId = 1 and AlbumId = 3")};
        auto result = client.ExecuteBatchDml(txn, statements);
        if (!result) return result.status();
        for (std::size_t i = 0; i < result->stats.size(); ++i) {
          std::cout << result->stats[i].row_count << " rows affected"
                    << " for the statement " << (i + 1) << ".\n";
        }
        // Batch operations may have partial failures, in which case
        // ExecuteBatchDml returns with success, but the application should
        // verify that all statements completed successfully
        if (!result->status.ok()) return result->status;
        return spanner::Mutations{};
      });
  if (!commit_result) {
    throw std::runtime_error(commit_result.status().message());
  }
  std::cout << "Update was successful [spanner_dml_batch_update]\n";
}

C#

Usa el método connection.CreateBatchDmlCommand() si deseas crear tu comando por lotes, usa el método Add para agregar declaraciones DML y ejecuta las instrucciones con el método ExecuteNonQueryAsync().

public static async Task UpdateUsingBatchDmlCoreAsync(
    string projectId,
    string instanceId,
    string databaseId)
{
    string connectionString =
        $"Data Source=projects/{projectId}/instances/{instanceId}"
        + $"/databases/{databaseId}";

    // Create connection to Cloud Spanner.
    using (var connection =
        new SpannerConnection(connectionString))
    {
        await connection.OpenAsync();

        SpannerBatchCommand cmd = connection.CreateBatchDmlCommand();
        //var cmd = new SpannerBatchCommand(connection);

        cmd.Add("INSERT INTO Albums "
            + "(SingerId, AlbumId, AlbumTitle, MarketingBudget) "
            + "VALUES (1, 3, 'Test Album Title', 10000)");

        cmd.Add("UPDATE Albums "
            + "SET MarketingBudget = MarketingBudget * 2 "
            + "WHERE SingerId = 1 and AlbumId = 3");

        IEnumerable<long> affectedRows = await cmd.ExecuteNonQueryAsync();
        Console.WriteLine(
            $"Executed {affectedRows.Count()} "
            + "SQL statements using Batch DML.");
    }
}

Go

Usa el método BatchUpdate() para ejecutar un arreglo de objetos Statement de DML.


import (
	"context"
	"fmt"
	"io"

	"cloud.google.com/go/spanner"
)

func updateUsingBatchDML(w io.Writer, db string) error {
	ctx := context.Background()
	client, err := spanner.NewClient(ctx, db)
	if err != nil {
		return err
	}
	defer client.Close()

	_, err = client.ReadWriteTransaction(ctx, func(ctx context.Context, txn *spanner.ReadWriteTransaction) error {
		stmts := []spanner.Statement{
			{SQL: `INSERT INTO Albums
				(SingerId, AlbumId, AlbumTitle, MarketingBudget)
				VALUES (1, 3, 'Test Album Title', 10000)`},
			{SQL: `UPDATE Albums
				SET MarketingBudget = MarketingBudget * 2
				WHERE SingerId = 1 and AlbumId = 3`},
		}
		rowCounts, err := txn.BatchUpdate(ctx, stmts)
		if err != nil {
			return err
		}
		fmt.Fprintf(w, "Executed %d SQL statements using Batch DML.\n", len(rowCounts))
		return nil
	})
	return err
}

Java

Usa el método transaction.batchUpdate() para ejecutar una ArrayList de varios objetos Statement de DML.

static void updateUsingBatchDml(DatabaseClient dbClient) {
  dbClient
      .readWriteTransaction()
      .run(
          new TransactionCallable<Void>() {
            @Override
            public Void run(TransactionContext transaction) throws Exception {
              List<Statement> stmts = new ArrayList<Statement>();
              String sql =
                  "INSERT INTO Albums "
                      + "(SingerId, AlbumId, AlbumTitle, MarketingBudget) "
                      + "VALUES (1, 3, 'Test Album Title', 10000) ";
              stmts.add(Statement.of(sql));
              sql =
                  "UPDATE Albums "
                      + "SET MarketingBudget = MarketingBudget * 2 "
                      + "WHERE SingerId = 1 and AlbumId = 3";
              stmts.add(Statement.of(sql));
              long[] rowCounts;
              try {
                rowCounts = transaction.batchUpdate(stmts);
              } catch (SpannerBatchUpdateException e) {
                rowCounts = e.getUpdateCounts();
              }
              for (int i = 0; i < rowCounts.length; i++) {
                System.out.printf("%d record updated by stmt %d.\n", rowCounts[i], i);
              }
              return null;
            }
          });
}

Node.js

Usa transaction.batchUpdate() para ejecutar una lista de declaraciones DML.

// Imports the Google Cloud client library
const {Spanner} = require('@google-cloud/spanner');

/**
 * TODO(developer): Uncomment the following lines before running the sample.
 */
// const projectId = 'my-project-id';
// const instanceId = 'my-instance';
// const databaseId = 'my-database';

// Creates a client
const spanner = new Spanner({
  projectId: projectId,
});

// Gets a reference to a Cloud Spanner instance and database
const instance = spanner.instance(instanceId);
const database = instance.database(databaseId);

const insert = {
  sql: `INSERT INTO Albums (SingerId, AlbumId, AlbumTitle, MarketingBudget)
    VALUES (1, 3, "Test Album Title", 10000)`,
};

const update = {
  sql: `UPDATE Albums SET MarketingBudget = MarketingBudget * 2
    WHERE SingerId = 1 and AlbumId = 3`,
};

const dmlStatements = [insert, update];

try {
  await database.runTransactionAsync(async transaction => {
    const [rowCounts] = await transaction.batchUpdate(dmlStatements);
    await transaction.commit();
    console.log(
      `Successfully executed ${rowCounts.length} SQL statements using Batch DML.`
    );
  });
} catch (err) {
  console.error('ERROR:', err);
  throw err;
} finally {
  // Close the database when finished.
  database.close();
}

PHP

Usa executeUpdateBatch() para crear una lista de declaraciones DML y, luego, usa commit() a fin de ejecutar las declaraciones.

use Google\Cloud\Spanner\SpannerClient;
use Google\Cloud\Spanner\Transaction;

/**
 * Updates sample data in the database with Batch DML.
 *
 * This requires the `MarketingBudget` column which must be created before
 * running this sample. You can add the column by running the `add_column`
 * sample or by running this DDL statement against your database:
 *
 *     ALTER TABLE Albums ADD COLUMN MarketingBudget INT64
 *
 * Example:
 * ```
 * update_data_with_batch_dml($instanceId, $databaseId);
 * ```
 *
 * @param string $instanceId The Spanner instance ID.
 * @param string $databaseId The Spanner database ID.
 */
function update_data_with_batch_dml($instanceId, $databaseId)
{
    $spanner = new SpannerClient();
    $instance = $spanner->instance($instanceId);
    $database = $instance->database($databaseId);

    $batchDmlResult = $database->runTransaction(function (Transaction $t) {
        $result = $t->executeUpdateBatch([
            [
                'sql' => "INSERT INTO Albums "
                . "(SingerId, AlbumId, AlbumTitle, MarketingBudget) "
                . "VALUES (1, 3, 'Test Album Title', 10000)"
            ],
            [
                'sql' => "UPDATE Albums "
                . "SET MarketingBudget = MarketingBudget * 2 "
                . "WHERE SingerId = 1 and AlbumId = 3"
            ],
        ]);
        $t->commit();
        $rowCounts = count($result->rowCounts());
        printf('Executed %s SQL statements using Batch DML.' . PHP_EOL,
            $rowCounts);
    });
}

Python

Usa transaction.batch_update() para ejecutar varias strings de declaraciones DML.

# instance_id = "your-spanner-instance"
# database_id = "your-spanner-db-id"

spanner_client = spanner.Client()
instance = spanner_client.instance(instance_id)
database = instance.database(database_id)

insert_statement = (
    "INSERT INTO Albums "
    "(SingerId, AlbumId, AlbumTitle, MarketingBudget) "
    "VALUES (1, 3, 'Test Album Title', 10000)"
)

update_statement = (
    "UPDATE Albums "
    "SET MarketingBudget = MarketingBudget * 2 "
    "WHERE SingerId = 1 and AlbumId = 3"
)

def update_albums(transaction):
    row_cts = transaction.batch_update([insert_statement, update_statement])

    print("Executed {} SQL statements using Batch DML.".format(len(row_cts)))

database.run_in_transaction(update_albums)

Ruby

Usa transaction.batch_update para ejecutar varias strings de declaraciones DML.

# project_id  = "Your Google Cloud project ID"
# instance_id = "Your Spanner instance ID"
# database_id = "Your Spanner database ID"

require "google/cloud/spanner"

spanner = Google::Cloud::Spanner.new project: project_id
client  = spanner.client instance_id, database_id

row_counts = nil
client.transaction do |transaction|
  row_counts = transaction.batch_update do |b|
    b.batch_update "INSERT INTO Albums "\
      "(SingerId, AlbumId, AlbumTitle, MarketingBudget) "\
      "VALUES (1, 3, 'Test Album Title', 10000)"
    b.batch_update "UPDATE Albums "\
      "SET MarketingBudget = MarketingBudget * 2 "\
      "WHERE SingerId = 1 and AlbumId = 3"
  end
end

statement_count = row_counts.count

puts "Executed #{statement_count} SQL statements using Batch DML."