class SparkSession extends Serializable with Closeable with Logging
The entry point to programming Spark with the Dataset and DataFrame API.
In environments that this has been created upfront (e.g. REPL, notebooks), use the builder to get an existing session:
SparkSession.builder().getOrCreate()
The builder can also be used to create a new session:
SparkSession.builder .master("local") .appName("Word Count") .config("spark.some.config.option", "some-value") .getOrCreate()
- Self Type
- SparkSession
- Annotations
- @Stable()
- Source
- SparkSession.scala
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final
def
!=(arg0: Any): Boolean
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final
def
##(): Int
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final
def
==(arg0: Any): Boolean
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final
def
asInstanceOf[T0]: T0
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def
baseRelationToDataFrame(baseRelation: BaseRelation): DataFrame
Convert a
BaseRelation
created for external data sources into aDataFrame
.Convert a
BaseRelation
created for external data sources into aDataFrame
.- Since
2.0.0
-
lazy val
catalog: Catalog
Interface through which the user may create, drop, alter or query underlying databases, tables, functions etc.
Interface through which the user may create, drop, alter or query underlying databases, tables, functions etc.
- Annotations
- @transient()
- Since
2.0.0
-
def
clone(): AnyRef
- Attributes
- protected[lang]
- Definition Classes
- AnyRef
- Annotations
- @throws( ... ) @native()
-
def
close(): Unit
Synonym for
stop()
.Synonym for
stop()
.- Definition Classes
- SparkSession → Closeable → AutoCloseable
- Since
2.1.0
-
lazy val
conf: RuntimeConfig
Runtime configuration interface for Spark.
Runtime configuration interface for Spark.
This is the interface through which the user can get and set all Spark and Hadoop configurations that are relevant to Spark SQL. When getting the value of a config, this defaults to the value set in the underlying
SparkContext
, if any.- Annotations
- @transient()
- Since
2.0.0
-
def
createDataFrame(data: List[_], beanClass: Class[_]): DataFrame
Applies a schema to a List of Java Beans.
Applies a schema to a List of Java Beans.
WARNING: Since there is no guaranteed ordering for fields in a Java Bean, SELECT * queries will return the columns in an undefined order.
- Since
1.6.0
-
def
createDataFrame(rdd: JavaRDD[_], beanClass: Class[_]): DataFrame
Applies a schema to an RDD of Java Beans.
Applies a schema to an RDD of Java Beans.
WARNING: Since there is no guaranteed ordering for fields in a Java Bean, SELECT * queries will return the columns in an undefined order.
- Since
2.0.0
-
def
createDataFrame(rdd: RDD[_], beanClass: Class[_]): DataFrame
Applies a schema to an RDD of Java Beans.
Applies a schema to an RDD of Java Beans.
WARNING: Since there is no guaranteed ordering for fields in a Java Bean, SELECT * queries will return the columns in an undefined order.
- Since
2.0.0
-
def
createDataFrame(rows: List[Row], schema: StructType): DataFrame
:: DeveloperApi :: Creates a
DataFrame
from ajava.util.List
containing Rows using the given schema. -
def
createDataFrame(rowRDD: JavaRDD[Row], schema: StructType): DataFrame
:: DeveloperApi :: Creates a
DataFrame
from aJavaRDD
containing Rows using the given schema. -
def
createDataFrame(rowRDD: RDD[Row], schema: StructType): DataFrame
:: DeveloperApi :: Creates a
DataFrame
from anRDD
containing Rows using the given schema.:: DeveloperApi :: Creates a
DataFrame
from anRDD
containing Rows using the given schema. It is important to make sure that the structure of every Row of the provided RDD matches the provided schema. Otherwise, there will be runtime exception. Example:import org.apache.spark.sql._ import org.apache.spark.sql.types._ val sparkSession = new org.apache.spark.sql.SparkSession(sc) val schema = StructType( StructField("name", StringType, false) :: StructField("age", IntegerType, true) :: Nil) val people = sc.textFile("examples/src/main/resources/people.txt").map( _.split(",")).map(p => Row(p(0), p(1).trim.toInt)) val dataFrame = sparkSession.createDataFrame(people, schema) dataFrame.printSchema // root // |-- name: string (nullable = false) // |-- age: integer (nullable = true) dataFrame.createOrReplaceTempView("people") sparkSession.sql("select name from people").collect.foreach(println)
- Annotations
- @DeveloperApi()
- Since
2.0.0
-
def
createDataFrame[A <: Product](data: Seq[A])(implicit arg0: scala.reflect.api.JavaUniverse.TypeTag[A]): DataFrame
Creates a
DataFrame
from a local Seq of Product.Creates a
DataFrame
from a local Seq of Product.- Since
2.0.0
-
def
createDataFrame[A <: Product](rdd: RDD[A])(implicit arg0: scala.reflect.api.JavaUniverse.TypeTag[A]): DataFrame
Creates a
DataFrame
from an RDD of Product (e.g.Creates a
DataFrame
from an RDD of Product (e.g. case classes, tuples).- Since
2.0.0
-
def
createDataset[T](data: List[T])(implicit arg0: Encoder[T]): Dataset[T]
Creates a Dataset from a
java.util.List
of a given type.Creates a Dataset from a
java.util.List
of a given type. This method requires an encoder (to convert a JVM object of typeT
to and from the internal Spark SQL representation) that is generally created automatically through implicits from aSparkSession
, or can be created explicitly by calling static methods on Encoders.Java Example
List<String> data = Arrays.asList("hello", "world"); Dataset<String> ds = spark.createDataset(data, Encoders.STRING());
- Since
2.0.0
-
def
createDataset[T](data: RDD[T])(implicit arg0: Encoder[T]): Dataset[T]
Creates a Dataset from an RDD of a given type.
Creates a Dataset from an RDD of a given type. This method requires an encoder (to convert a JVM object of type
T
to and from the internal Spark SQL representation) that is generally created automatically through implicits from aSparkSession
, or can be created explicitly by calling static methods on Encoders.- Since
2.0.0
-
def
createDataset[T](data: Seq[T])(implicit arg0: Encoder[T]): Dataset[T]
Creates a Dataset from a local Seq of data of a given type.
Creates a Dataset from a local Seq of data of a given type. This method requires an encoder (to convert a JVM object of type
T
to and from the internal Spark SQL representation) that is generally created automatically through implicits from aSparkSession
, or can be created explicitly by calling static methods on Encoders.Example
import spark.implicits._ case class Person(name: String, age: Long) val data = Seq(Person("Michael", 29), Person("Andy", 30), Person("Justin", 19)) val ds = spark.createDataset(data) ds.show() // +-------+---+ // | name|age| // +-------+---+ // |Michael| 29| // | Andy| 30| // | Justin| 19| // +-------+---+
- Since
2.0.0
-
lazy val
emptyDataFrame: DataFrame
Returns a
DataFrame
with no rows or columns.Returns a
DataFrame
with no rows or columns.- Annotations
- @transient()
- Since
2.0.0
-
def
emptyDataset[T](implicit arg0: Encoder[T]): Dataset[T]
Creates a new Dataset of type T containing zero elements.
Creates a new Dataset of type T containing zero elements.
- returns
2.0.0
-
final
def
eq(arg0: AnyRef): Boolean
- Definition Classes
- AnyRef
-
def
equals(arg0: Any): Boolean
- Definition Classes
- AnyRef → Any
-
def
executeCommand(runner: String, command: String, options: Map[String, String]): DataFrame
Execute an arbitrary string command inside an external execution engine rather than Spark.
Execute an arbitrary string command inside an external execution engine rather than Spark. This could be useful when user wants to execute some commands out of Spark. For example, executing custom DDL/DML command for JDBC, creating index for ElasticSearch, creating cores for Solr and so on.
The command will be eagerly executed after this method is called and the returned DataFrame will contain the output of the command(if any).
- runner
The class name of the runner that implements
ExternalCommandRunner
.- command
The target command to be executed
- options
The options for the runner.
- Annotations
- @Unstable()
- Since
3.0.0
-
def
experimental: ExperimentalMethods
:: Experimental :: A collection of methods that are considered experimental, but can be used to hook into the query planner for advanced functionality.
:: Experimental :: A collection of methods that are considered experimental, but can be used to hook into the query planner for advanced functionality.
- Annotations
- @Experimental() @Unstable()
- Since
2.0.0
-
def
finalize(): Unit
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- protected[lang]
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final
def
getClass(): Class[_]
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def
hashCode(): Int
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- @native()
-
def
initializeLogIfNecessary(isInterpreter: Boolean, silent: Boolean): Boolean
- Attributes
- protected
- Definition Classes
- Logging
-
def
initializeLogIfNecessary(isInterpreter: Boolean): Unit
- Attributes
- protected
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final
def
isInstanceOf[T0]: Boolean
- Definition Classes
- Any
-
def
isTraceEnabled(): Boolean
- Attributes
- protected
- Definition Classes
- Logging
-
def
listenerManager: ExecutionListenerManager
An interface to register custom org.apache.spark.sql.util.QueryExecutionListeners that listen for execution metrics.
An interface to register custom org.apache.spark.sql.util.QueryExecutionListeners that listen for execution metrics.
- Since
2.0.0
-
def
log: Logger
- Attributes
- protected
- Definition Classes
- Logging
-
def
logDebug(msg: ⇒ String, throwable: Throwable): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
def
logDebug(msg: ⇒ String): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
def
logError(msg: ⇒ String, throwable: Throwable): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
def
logError(msg: ⇒ String): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
def
logInfo(msg: ⇒ String, throwable: Throwable): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
def
logInfo(msg: ⇒ String): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
def
logName: String
- Attributes
- protected
- Definition Classes
- Logging
-
def
logTrace(msg: ⇒ String, throwable: Throwable): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
def
logTrace(msg: ⇒ String): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
def
logWarning(msg: ⇒ String, throwable: Throwable): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
def
logWarning(msg: ⇒ String): Unit
- Attributes
- protected
- Definition Classes
- Logging
-
final
def
ne(arg0: AnyRef): Boolean
- Definition Classes
- AnyRef
-
def
newSession(): SparkSession
Start a new session with isolated SQL configurations, temporary tables, registered functions are isolated, but sharing the underlying
SparkContext
and cached data.Start a new session with isolated SQL configurations, temporary tables, registered functions are isolated, but sharing the underlying
SparkContext
and cached data.- Since
2.0.0
- Note
Other than the
SparkContext
, all shared state is initialized lazily. This method will force the initialization of the shared state to ensure that parent and child sessions are set up with the same shared state. If the underlying catalog implementation is Hive, this will initialize the metastore, which may take some time.
-
final
def
notify(): Unit
- Definition Classes
- AnyRef
- Annotations
- @native()
-
final
def
notifyAll(): Unit
- Definition Classes
- AnyRef
- Annotations
- @native()
-
def
parseDataType(dataTypeString: String): DataType
Parses the data type in our internal string representation.
Parses the data type in our internal string representation. The data type string should have the same format as the one generated by
toString
in scala. It is only used by PySpark.- Attributes
- protected[spark.sql]
-
def
range(start: Long, end: Long, step: Long, numPartitions: Int): Dataset[Long]
Creates a Dataset with a single
LongType
column namedid
, containing elements in a range fromstart
toend
(exclusive) with a step value, with partition number specified.Creates a Dataset with a single
LongType
column namedid
, containing elements in a range fromstart
toend
(exclusive) with a step value, with partition number specified.- Since
2.0.0
-
def
range(start: Long, end: Long, step: Long): Dataset[Long]
Creates a Dataset with a single
LongType
column namedid
, containing elements in a range fromstart
toend
(exclusive) with a step value.Creates a Dataset with a single
LongType
column namedid
, containing elements in a range fromstart
toend
(exclusive) with a step value.- Since
2.0.0
-
def
range(start: Long, end: Long): Dataset[Long]
Creates a Dataset with a single
LongType
column namedid
, containing elements in a range fromstart
toend
(exclusive) with step value 1.Creates a Dataset with a single
LongType
column namedid
, containing elements in a range fromstart
toend
(exclusive) with step value 1.- Since
2.0.0
-
def
range(end: Long): Dataset[Long]
Creates a Dataset with a single
LongType
column namedid
, containing elements in a range from 0 toend
(exclusive) with step value 1.Creates a Dataset with a single
LongType
column namedid
, containing elements in a range from 0 toend
(exclusive) with step value 1.- Since
2.0.0
-
def
read: DataFrameReader
Returns a DataFrameReader that can be used to read non-streaming data in as a
DataFrame
.Returns a DataFrameReader that can be used to read non-streaming data in as a
DataFrame
.sparkSession.read.parquet("/path/to/file.parquet") sparkSession.read.schema(schema).json("/path/to/file.json")
- Since
2.0.0
-
def
readStream: DataStreamReader
Returns a
DataStreamReader
that can be used to read streaming data in as aDataFrame
.Returns a
DataStreamReader
that can be used to read streaming data in as aDataFrame
.sparkSession.readStream.parquet("/path/to/directory/of/parquet/files") sparkSession.readStream.schema(schema).json("/path/to/directory/of/json/files")
- Since
2.0.0
-
lazy val
sessionState: SessionState
State isolated across sessions, including SQL configurations, temporary tables, registered functions, and everything else that accepts a org.apache.spark.sql.internal.SQLConf.
State isolated across sessions, including SQL configurations, temporary tables, registered functions, and everything else that accepts a org.apache.spark.sql.internal.SQLConf. If
parentSessionState
is not null, theSessionState
will be a copy of the parent.This is internal to Spark and there is no guarantee on interface stability.
- Annotations
- @Unstable() @transient()
- Since
2.2.0
-
lazy val
sharedState: SharedState
State shared across sessions, including the
SparkContext
, cached data, listener, and a catalog that interacts with external systems.State shared across sessions, including the
SparkContext
, cached data, listener, and a catalog that interacts with external systems.This is internal to Spark and there is no guarantee on interface stability.
- Annotations
- @Unstable() @transient()
- Since
2.2.0
- val sparkContext: SparkContext
-
def
sql(sqlText: String): DataFrame
Executes a SQL query using Spark, returning the result as a
DataFrame
.Executes a SQL query using Spark, returning the result as a
DataFrame
. The dialect that is used for SQL parsing can be configured with 'spark.sql.dialect'.- Since
2.0.0
-
val
sqlContext: SQLContext
A wrapped version of this session in the form of a SQLContext, for backward compatibility.
A wrapped version of this session in the form of a SQLContext, for backward compatibility.
- Since
2.0.0
-
def
stop(): Unit
Stop the underlying
SparkContext
.Stop the underlying
SparkContext
.- Since
2.0.0
-
def
streams: StreamingQueryManager
Returns a
StreamingQueryManager
that allows managing all theStreamingQuery
s active onthis
.Returns a
StreamingQueryManager
that allows managing all theStreamingQuery
s active onthis
.- Annotations
- @Unstable()
- Since
2.0.0
-
final
def
synchronized[T0](arg0: ⇒ T0): T0
- Definition Classes
- AnyRef
-
def
table(tableName: String): DataFrame
Returns the specified table/view as a
DataFrame
.Returns the specified table/view as a
DataFrame
.- tableName
is either a qualified or unqualified name that designates a table or view. If a database is specified, it identifies the table/view from the database. Otherwise, it first attempts to find a temporary view with the given name and then match the table/view from the current database. Note that, the global temporary view database is also valid here.
- Since
2.0.0
-
def
time[T](f: ⇒ T): T
Executes some code block and prints to stdout the time taken to execute the block.
Executes some code block and prints to stdout the time taken to execute the block. This is available in Scala only and is used primarily for interactive testing and debugging.
- Since
2.1.0
-
def
toString(): String
- Definition Classes
- AnyRef → Any
-
def
udf: UDFRegistration
A collection of methods for registering user-defined functions (UDF).
A collection of methods for registering user-defined functions (UDF).
The following example registers a Scala closure as UDF:
sparkSession.udf.register("myUDF", (arg1: Int, arg2: String) => arg2 + arg1)
The following example registers a UDF in Java:
sparkSession.udf().register("myUDF", (Integer arg1, String arg2) -> arg2 + arg1, DataTypes.StringType);
- Since
2.0.0
- Note
The user-defined functions must be deterministic. Due to optimization, duplicate invocations may be eliminated or the function may even be invoked more times than it is present in the query.
-
def
version: String
The version of Spark on which this application is running.
The version of Spark on which this application is running.
- Since
2.0.0
-
final
def
wait(): Unit
- Definition Classes
- AnyRef
- Annotations
- @throws( ... )
-
final
def
wait(arg0: Long, arg1: Int): Unit
- Definition Classes
- AnyRef
- Annotations
- @throws( ... )
-
final
def
wait(arg0: Long): Unit
- Definition Classes
- AnyRef
- Annotations
- @throws( ... ) @native()
-
object
implicits extends SQLImplicits with Serializable
(Scala-specific) Implicit methods available in Scala for converting common Scala objects into
DataFrame
s.(Scala-specific) Implicit methods available in Scala for converting common Scala objects into
DataFrame
s.val sparkSession = SparkSession.builder.getOrCreate() import sparkSession.implicits._
- Since
2.0.0