package spark
Core Spark functionality. org.apache.spark.SparkContext serves as the main entry point to Spark, while org.apache.spark.rdd.RDD is the data type representing a distributed collection, and provides most parallel operations.
In addition, org.apache.spark.rdd.PairRDDFunctions contains operations available only on RDDs
of key-value pairs, such as groupByKey
and join
; org.apache.spark.rdd.DoubleRDDFunctions
contains operations available only on RDDs of Doubles; and
org.apache.spark.rdd.SequenceFileRDDFunctions contains operations available on RDDs that can
be saved as SequenceFiles. These operations are automatically available on any RDD of the right
type (e.g. RDD[(Int, Int)] through implicit conversions.
Java programmers should reference the org.apache.spark.api.java package for Spark programming APIs in Java.
Classes and methods marked with Experimental are user-facing features which have not been officially adopted by the Spark project. These are subject to change or removal in minor releases.
Classes and methods marked with Developer API are intended for advanced users want to extend Spark through lower level interfaces. These are subject to changes or removal in minor releases.
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case class
Aggregator[K, V, C](createCombiner: (V) ⇒ C, mergeValue: (C, V) ⇒ C, mergeCombiners: (C, C) ⇒ C) extends Product with Serializable
:: DeveloperApi :: A set of functions used to aggregate data.
:: DeveloperApi :: A set of functions used to aggregate data.
- createCombiner
function to create the initial value of the aggregation.
- mergeValue
function to merge a new value into the aggregation result.
- mergeCombiners
function to merge outputs from multiple mergeValue function.
- Annotations
- @DeveloperApi()
-
class
BarrierTaskContext extends TaskContext with Logging
:: Experimental :: A TaskContext with extra contextual info and tooling for tasks in a barrier stage.
:: Experimental :: A TaskContext with extra contextual info and tooling for tasks in a barrier stage. Use BarrierTaskContext#get to obtain the barrier context for a running barrier task.
- Annotations
- @Experimental() @Since( "2.4.0" )
-
class
BarrierTaskInfo extends AnyRef
:: Experimental :: Carries all task infos of a barrier task.
:: Experimental :: Carries all task infos of a barrier task.
- Annotations
- @Experimental() @Since( "2.4.0" )
-
class
ComplexFutureAction[T] extends FutureAction[T]
A FutureAction for actions that could trigger multiple Spark jobs.
A FutureAction for actions that could trigger multiple Spark jobs. Examples include take, takeSample. Cancellation works by setting the cancelled flag to true and cancelling any pending jobs.
- Annotations
- @DeveloperApi()
-
abstract
class
Dependency[T] extends Serializable
:: DeveloperApi :: Base class for dependencies.
:: DeveloperApi :: Base class for dependencies.
- Annotations
- @DeveloperApi()
-
case class
ExceptionFailure(className: String, description: String, stackTrace: Array[StackTraceElement], fullStackTrace: String, exceptionWrapper: Option[ThrowableSerializationWrapper], accumUpdates: Seq[AccumulableInfo] = Seq.empty, accums: Seq[AccumulatorV2[_, _]] = Nil) extends TaskFailedReason with Product with Serializable
:: DeveloperApi :: Task failed due to a runtime exception.
:: DeveloperApi :: Task failed due to a runtime exception. This is the most common failure case and also captures user program exceptions.
stackTrace
contains the stack trace of the exception itself. It still exists for backward compatibility. It's better to usethis(e: Throwable, metrics: Option[TaskMetrics])
to createExceptionFailure
as it will handle the backward compatibility properly.fullStackTrace
is a better representation of the stack trace because it contains the whole stack trace including the exception and its causesexception
is the actual exception that caused the task to fail. It may beNone
in the case that the exception is not in fact serializable. If a task fails more than once (due to retries),exception
is that one that caused the last failure.- Annotations
- @DeveloperApi()
-
case class
ExecutorLostFailure(execId: String, exitCausedByApp: Boolean = true, reason: Option[String]) extends TaskFailedReason with Product with Serializable
:: DeveloperApi :: The task failed because the executor that it was running on was lost.
:: DeveloperApi :: The task failed because the executor that it was running on was lost. This may happen because the task crashed the JVM.
- Annotations
- @DeveloperApi()
- trait ExecutorPlugin extends AnyRef
-
case class
FetchFailed(bmAddress: BlockManagerId, shuffleId: Int, mapId: Int, reduceId: Int, message: String) extends TaskFailedReason with Product with Serializable
:: DeveloperApi :: Task failed to fetch shuffle data from a remote node.
:: DeveloperApi :: Task failed to fetch shuffle data from a remote node. Probably means we have lost the remote executors the task is trying to fetch from, and thus need to rerun the previous stage.
- Annotations
- @DeveloperApi()
-
trait
FutureAction[T] extends Future[T]
A future for the result of an action to support cancellation.
A future for the result of an action to support cancellation. This is an extension of the Scala Future interface to support cancellation.
-
class
HashPartitioner extends Partitioner
A org.apache.spark.Partitioner that implements hash-based partitioning using Java's
Object.hashCode
.A org.apache.spark.Partitioner that implements hash-based partitioning using Java's
Object.hashCode
.Java arrays have hashCodes that are based on the arrays' identities rather than their contents, so attempting to partition an RDD[Array[_]] or RDD[(Array[_], _)] using a HashPartitioner will produce an unexpected or incorrect result.
-
class
InterruptibleIterator[+T] extends Iterator[T]
:: DeveloperApi :: An iterator that wraps around an existing iterator to provide task killing functionality.
:: DeveloperApi :: An iterator that wraps around an existing iterator to provide task killing functionality. It works by checking the interrupted flag in TaskContext.
- Annotations
- @DeveloperApi()
- sealed abstract final class JobExecutionStatus extends Enum[JobExecutionStatus]
-
trait
JobSubmitter extends AnyRef
Handle via which a "run" function passed to a ComplexFutureAction can submit jobs for execution.
Handle via which a "run" function passed to a ComplexFutureAction can submit jobs for execution.
- Annotations
- @DeveloperApi()
-
abstract
class
NarrowDependency[T] extends Dependency[T]
:: DeveloperApi :: Base class for dependencies where each partition of the child RDD depends on a small number of partitions of the parent RDD.
:: DeveloperApi :: Base class for dependencies where each partition of the child RDD depends on a small number of partitions of the parent RDD. Narrow dependencies allow for pipelined execution.
- Annotations
- @DeveloperApi()
-
class
OneToOneDependency[T] extends NarrowDependency[T]
:: DeveloperApi :: Represents a one-to-one dependency between partitions of the parent and child RDDs.
:: DeveloperApi :: Represents a one-to-one dependency between partitions of the parent and child RDDs.
- Annotations
- @DeveloperApi()
-
trait
Partition extends Serializable
An identifier for a partition in an RDD.
-
abstract
class
Partitioner extends Serializable
An object that defines how the elements in a key-value pair RDD are partitioned by key.
An object that defines how the elements in a key-value pair RDD are partitioned by key. Maps each key to a partition ID, from 0 to
numPartitions - 1
.Note that, partitioner must be deterministic, i.e. it must return the same partition id given the same partition key.
-
class
RangeDependency[T] extends NarrowDependency[T]
:: DeveloperApi :: Represents a one-to-one dependency between ranges of partitions in the parent and child RDDs.
:: DeveloperApi :: Represents a one-to-one dependency between ranges of partitions in the parent and child RDDs.
- Annotations
- @DeveloperApi()
-
class
RangePartitioner[K, V] extends Partitioner
A org.apache.spark.Partitioner that partitions sortable records by range into roughly equal ranges.
A org.apache.spark.Partitioner that partitions sortable records by range into roughly equal ranges. The ranges are determined by sampling the content of the RDD passed in.
- Note
The actual number of partitions created by the RangePartitioner might not be the same as the
partitions
parameter, in the case where the number of sampled records is less than the value ofpartitions
.
-
class
SerializableWritable[T <: Writable] extends Serializable
- Annotations
- @DeveloperApi()
-
class
ShuffleDependency[K, V, C] extends Dependency[Product2[K, V]]
:: DeveloperApi :: Represents a dependency on the output of a shuffle stage.
:: DeveloperApi :: Represents a dependency on the output of a shuffle stage. Note that in the case of shuffle, the RDD is transient since we don't need it on the executor side.
- Annotations
- @DeveloperApi()
-
class
SimpleFutureAction[T] extends FutureAction[T]
A FutureAction holding the result of an action that triggers a single job.
A FutureAction holding the result of an action that triggers a single job. Examples include count, collect, reduce.
- Annotations
- @DeveloperApi()
-
class
SparkConf extends Cloneable with Logging with Serializable
Configuration for a Spark application.
Configuration for a Spark application. Used to set various Spark parameters as key-value pairs.
Most of the time, you would create a SparkConf object with
new SparkConf()
, which will load values from anyspark.*
Java system properties set in your application as well. In this case, parameters you set directly on theSparkConf
object take priority over system properties.For unit tests, you can also call
new SparkConf(false)
to skip loading external settings and get the same configuration no matter what the system properties are.All setter methods in this class support chaining. For example, you can write
new SparkConf().setMaster("local").setAppName("My app")
.- Note
Once a SparkConf object is passed to Spark, it is cloned and can no longer be modified by the user. Spark does not support modifying the configuration at runtime.
-
class
SparkContext extends Logging
Main entry point for Spark functionality.
Main entry point for Spark functionality. A SparkContext represents the connection to a Spark cluster, and can be used to create RDDs, accumulators and broadcast variables on that cluster.
Only one SparkContext may be active per JVM. You must
stop()
the active SparkContext before creating a new one. This limitation may eventually be removed; see SPARK-2243 for more details. -
class
SparkEnv extends Logging
:: DeveloperApi :: Holds all the runtime environment objects for a running Spark instance (either master or worker), including the serializer, RpcEnv, block manager, map output tracker, etc.
:: DeveloperApi :: Holds all the runtime environment objects for a running Spark instance (either master or worker), including the serializer, RpcEnv, block manager, map output tracker, etc. Currently Spark code finds the SparkEnv through a global variable, so all the threads can access the same SparkEnv. It can be accessed by SparkEnv.get (e.g. after creating a SparkContext).
NOTE: This is not intended for external use. This is exposed for Shark and may be made private in a future release.
- Annotations
- @DeveloperApi()
- class SparkException extends Exception
- trait SparkExecutorInfo extends Serializable
- class SparkFirehoseListener extends SparkListenerInterface
- trait SparkJobInfo extends Serializable
- trait SparkStageInfo extends Serializable
-
class
SparkStatusTracker extends AnyRef
Low-level status reporting APIs for monitoring job and stage progress.
Low-level status reporting APIs for monitoring job and stage progress.
These APIs intentionally provide very weak consistency semantics; consumers of these APIs should be prepared to handle empty / missing information. For example, a job's stage ids may be known but the status API may not have any information about the details of those stages, so
getStageInfo
could potentially returnNone
for a valid stage id.To limit memory usage, these APIs only provide information on recent jobs / stages. These APIs will provide information for the last
spark.ui.retainedStages
stages andspark.ui.retainedJobs
jobs.NOTE: this class's constructor should be considered private and may be subject to change.
-
case class
TaskCommitDenied(jobID: Int, partitionID: Int, attemptNumber: Int) extends TaskFailedReason with Product with Serializable
:: DeveloperApi :: Task requested the driver to commit, but was denied.
:: DeveloperApi :: Task requested the driver to commit, but was denied.
- Annotations
- @DeveloperApi()
-
abstract
class
TaskContext extends Serializable
Contextual information about a task which can be read or mutated during execution.
Contextual information about a task which can be read or mutated during execution. To access the TaskContext for a running task, use:
org.apache.spark.TaskContext.get()
-
sealed
trait
TaskEndReason extends AnyRef
:: DeveloperApi :: Various possible reasons why a task ended.
:: DeveloperApi :: Various possible reasons why a task ended. The low-level TaskScheduler is supposed to retry tasks several times for "ephemeral" failures, and only report back failures that require some old stages to be resubmitted, such as shuffle map fetch failures.
- Annotations
- @DeveloperApi()
-
sealed
trait
TaskFailedReason extends TaskEndReason
:: DeveloperApi :: Various possible reasons why a task failed.
:: DeveloperApi :: Various possible reasons why a task failed.
- Annotations
- @DeveloperApi()
-
case class
TaskKilled(reason: String, accumUpdates: Seq[AccumulableInfo] = Seq.empty, accums: Seq[AccumulatorV2[_, _]] = Nil) extends TaskFailedReason with Product with Serializable
:: DeveloperApi :: Task was killed intentionally and needs to be rescheduled.
:: DeveloperApi :: Task was killed intentionally and needs to be rescheduled.
- Annotations
- @DeveloperApi()
-
class
TaskKilledException extends RuntimeException
:: DeveloperApi :: Exception thrown when a task is explicitly killed (i.e., task failure is expected).
:: DeveloperApi :: Exception thrown when a task is explicitly killed (i.e., task failure is expected).
- Annotations
- @DeveloperApi()
Value Members
- val SPARK_BRANCH: String
- val SPARK_BUILD_DATE: String
- val SPARK_BUILD_USER: String
- val SPARK_REPO_URL: String
- val SPARK_REVISION: String
- val SPARK_VERSION: String
- val SPARK_VERSION_SHORT: String
-
object
BarrierTaskContext extends Serializable
- Annotations
- @Experimental() @Since( "2.4.0" )
- object Partitioner extends Serializable
-
object
Resubmitted extends TaskFailedReason with Product with Serializable
:: DeveloperApi :: A
org.apache.spark.scheduler.ShuffleMapTask
that completed successfully earlier, but we lost the executor before the stage completed.:: DeveloperApi :: A
org.apache.spark.scheduler.ShuffleMapTask
that completed successfully earlier, but we lost the executor before the stage completed. This means Spark needs to reschedule the task to be re-executed on a different executor.- Annotations
- @DeveloperApi()
-
object
SparkContext extends Logging
The SparkContext object contains a number of implicit conversions and parameters for use with various Spark features.
- object SparkEnv extends Logging
-
object
SparkFiles
Resolves paths to files added through
SparkContext.addFile()
. -
object
Success extends TaskEndReason with Product with Serializable
:: DeveloperApi :: Task succeeded.
:: DeveloperApi :: Task succeeded.
- Annotations
- @DeveloperApi()
- object TaskContext extends Serializable
-
object
TaskResultLost extends TaskFailedReason with Product with Serializable
:: DeveloperApi :: The task finished successfully, but the result was lost from the executor's block manager before it was fetched.
:: DeveloperApi :: The task finished successfully, but the result was lost from the executor's block manager before it was fetched.
- Annotations
- @DeveloperApi()
-
object
UnknownReason extends TaskFailedReason with Product with Serializable
:: DeveloperApi :: We don't know why the task ended -- for example, because of a ClassNotFound exception when deserializing the task result.
:: DeveloperApi :: We don't know why the task ended -- for example, because of a ClassNotFound exception when deserializing the task result.
- Annotations
- @DeveloperApi()
- object WritableConverter extends Serializable
- object WritableFactory extends Serializable