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Documentation

Connecting to Cassandra

This section describes how Spark connects to Cassandra and how to execute CQL statements from Spark applications.

Preparing SparkContext to work with Cassandra

To connect your Spark application to Cassandra, set connection options in the SparkConf object. These are prefixed with spark. so that they can be recognized from the spark-shell and set within the $SPARK_HOME/conf/spark-default.conf.

Example:

val conf = new SparkConf(true)
        .set("spark.cassandra.connection.host", "192.168.123.10")
        .set("spark.cassandra.auth.username", "cassandra")            
        .set("spark.cassandra.auth.password", "cassandra")

val sc = new SparkContext("spark://192.168.123.10:7077", "test", conf)

Multiple hosts can be passed in using a comma separated list ("127.0.0.1,127.0.0.2"). These are the initial contact points only, all nodes in the local DC will be used upon connecting.

See the reference section for a full list of options Cassandra Connection Parameters

Connection management

Whenever you call a method requiring access to Cassandra, the options in the SparkConf object will be used to create a new connection or to borrow one already open from the global connection cache.

Initial Contact

The initial contact node given inspark.cassandra.connection.host can be any node of the cluster. The driver will fetch the cluster topology from the contact node and will always try to connect to the closest node in the same data center. If possible, connections are established to the same node the task is running on. Consequently, good locality of data can be achieved and the amount of data sent across the network is minimized.

Inter-DataCenter Communication is forbidden by default

Connections are never made to data centers other than the data center of spark.cassandra.connection.host. If some nodes in the local data center are down and a read or write operation fails, the operation won't be retried on nodes in a different data center. This technique guarantees proper workload isolation so that a huge analytics job won't disturb the realtime part of the system.

Connection Pooling

Connections are cached internally. If you call two methods needing access to the same Cassandra cluster quickly, one after another, or in parallel from different threads, they will share the same logical connection represented by the underlying Java Driver Cluster object.

This means code like

  val connector = CassandraConnector(sc.getConf)
  connector.withSessionDo(session => ...)
  connector.withSessionDo(session => ...)

or

val connector = CassandraConnector(sc.getConf)
sc.parallelize(1 to 100).mapPartitions( it => connector.withSessionDo( session => ...))

Will not use more than one Cluster object or Session object per JVM

Eventually, when all the tasks needing Cassandra connectivity terminate, the connection to the Cassandra cluster will be closed shortly thereafter. The period of time for keeping unused connections open is controlled by the global spark.cassandra.connection.keep_alive_ms system property, see Cassandra Connection Parameters

Connecting manually to Cassandra

If you ever need to manually connect to Cassandra in order to issue some CQL statements, this driver offers a handy CassandraConnector class which can be initialized from the SparkConf object and provides access to the Cluster and Session objects. CassandraConnector instances are serializable and therefore can be safely used in lambdas passed to Spark transformations as seen in the examples above.

Assuming an appropriately configured SparkConf object is stored in the conf variable, the following code creates a keyspace and a table:

import com.datastax.spark.connector.cql.CassandraConnector

CassandraConnector(conf).withSessionDo { session =>
  session.execute("CREATE KEYSPACE test2 WITH REPLICATION = {'class': 'SimpleStrategy', 'replication_factor': 1 }")
  session.execute("CREATE TABLE test2.words (word text PRIMARY KEY, count int)")
}

Connecting to multiple Cassandra Clusters

The Spark Cassandra Connector is able to connect to multiple Cassandra Clusters for all of it's normal operations. The default CassandraConnector object used by calls to sc.cassandraTable and saveToCassandra is specified by the SparkConfiguration. If you would like to use multiple clusters, an implicit CassandraConnector can be used in a code block to specify the target cluster for all operations in that block.

####Example of reading from one cluster and writing to another

import com.datastax.spark.connector._
import com.datastax.spark.connector.cql._

import org.apache.spark.SparkContext


def twoClusterExample ( sc: SparkContext) = {
  val connectorToClusterOne = CassandraConnector(sc.getConf.set("spark.cassandra.connection.host", "127.0.0.1"))
  val connectorToClusterTwo = CassandraConnector(sc.getConf.set("spark.cassandra.connection.host", "127.0.0.2"))

  val rddFromClusterOne = {
    // Sets connectorToClusterOne as default connection for everything in this code block
    implicit val c = connectorToClusterOne
    sc.cassandraTable("ks","tab")
  }

  {
    //Sets connectorToClusterTwo as the default connection for everything in this code block
    implicit val c = connectorToClusterTwo
    rddFromClusterOne.saveToCassandra("ks","tab")
  }

}

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