class StreamingContext extends Logging
Main entry point for Spark Streaming functionality. It provides methods used to create
org.apache.spark.streaming.dstream.DStreams from various input sources. It can be either
created by providing a Spark master URL and an appName, or from a org.apache.spark.SparkConf
configuration (see core Spark documentation), or from an existing org.apache.spark.SparkContext.
The associated SparkContext can be accessed using context.sparkContext
. After
creating and transforming DStreams, the streaming computation can be started and stopped
using context.start()
and context.stop()
, respectively.
context.awaitTermination()
allows the current thread to wait for the termination
of the context by stop()
or by an exception.
- Annotations
- @deprecated
- Deprecated
(Since version Spark 3.4.0) DStream is deprecated. Migrate to Structured Streaming.
- Source
- StreamingContext.scala
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Instance Constructors
-
new
StreamingContext(path: String, sparkContext: SparkContext)
Recreate a StreamingContext from a checkpoint file using an existing SparkContext.
Recreate a StreamingContext from a checkpoint file using an existing SparkContext.
- path
Path to the directory that was specified as the checkpoint directory
- sparkContext
Existing SparkContext
-
new
StreamingContext(path: String)
Recreate a StreamingContext from a checkpoint file.
Recreate a StreamingContext from a checkpoint file.
- path
Path to the directory that was specified as the checkpoint directory
-
new
StreamingContext(path: String, hadoopConf: Configuration)
Recreate a StreamingContext from a checkpoint file.
Recreate a StreamingContext from a checkpoint file.
- path
Path to the directory that was specified as the checkpoint directory
- hadoopConf
Optional, configuration object if necessary for reading from HDFS compatible filesystems
-
new
StreamingContext(master: String, appName: String, batchDuration: Duration, sparkHome: String = null, jars: Seq[String] = Nil, environment: Map[String, String] = Map())
Create a StreamingContext by providing the details necessary for creating a new SparkContext.
Create a StreamingContext by providing the details necessary for creating a new SparkContext.
- master
cluster URL to connect to (e.g. mesos://host:port, spark://host:port, local[4]).
- appName
a name for your job, to display on the cluster web UI
- batchDuration
the time interval at which streaming data will be divided into batches
-
new
StreamingContext(conf: SparkConf, batchDuration: Duration)
Create a StreamingContext by providing the configuration necessary for a new SparkContext.
Create a StreamingContext by providing the configuration necessary for a new SparkContext.
- conf
a org.apache.spark.SparkConf object specifying Spark parameters
- batchDuration
the time interval at which streaming data will be divided into batches
-
new
StreamingContext(sparkContext: SparkContext, batchDuration: Duration)
Create a StreamingContext using an existing SparkContext.
Create a StreamingContext using an existing SparkContext.
- sparkContext
existing SparkContext
- batchDuration
the time interval at which streaming data will be divided into batches
Value Members
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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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def
addStreamingListener(streamingListener: StreamingListener): Unit
Add a org.apache.spark.streaming.scheduler.StreamingListener object for receiving system events related to streaming.
-
final
def
asInstanceOf[T0]: T0
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-
def
awaitTermination(): Unit
Wait for the execution to stop.
Wait for the execution to stop. Any exceptions that occurs during the execution will be thrown in this thread.
-
def
awaitTerminationOrTimeout(timeout: Long): Boolean
Wait for the execution to stop.
Wait for the execution to stop. Any exceptions that occurs during the execution will be thrown in this thread.
- timeout
time to wait in milliseconds
- returns
true
if it's stopped; or throw the reported error during the execution; orfalse
if the waiting time elapsed before returning from the method.
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def
binaryRecordsStream(directory: String, recordLength: Int): DStream[Array[Byte]]
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them as flat binary files, assuming a fixed length per record, generating one byte array per record.
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them as flat binary files, assuming a fixed length per record, generating one byte array per record. Files must be written to the monitored directory by "moving" them from another location within the same file system. File names starting with . are ignored.
- directory
HDFS directory to monitor for new file
- recordLength
length of each record in bytes
- Note
We ensure that the byte array for each record in the resulting RDDs of the DStream has the provided record length.
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def
checkpoint(directory: String): Unit
Set the context to periodically checkpoint the DStream operations for driver fault-tolerance.
Set the context to periodically checkpoint the DStream operations for driver fault-tolerance.
- directory
HDFS-compatible directory where the checkpoint data will be reliably stored. Note that this must be a fault-tolerant file system like HDFS.
-
def
clone(): AnyRef
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eq(arg0: AnyRef): Boolean
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def
fileStream[K, V, F <: InputFormat[K, V]](directory: String, filter: (Path) ⇒ Boolean, newFilesOnly: Boolean, conf: Configuration)(implicit arg0: ClassTag[K], arg1: ClassTag[V], arg2: ClassTag[F]): InputDStream[(K, V)]
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them using the given key-value types and input format.
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them using the given key-value types and input format. Files must be written to the monitored directory by "moving" them from another location within the same file system. File names starting with . are ignored.
- K
Key type for reading HDFS file
- V
Value type for reading HDFS file
- F
Input format for reading HDFS file
- directory
HDFS directory to monitor for new file
- filter
Function to filter paths to process
- newFilesOnly
Should process only new files and ignore existing files in the directory
- conf
Hadoop configuration
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def
fileStream[K, V, F <: InputFormat[K, V]](directory: String, filter: (Path) ⇒ Boolean, newFilesOnly: Boolean)(implicit arg0: ClassTag[K], arg1: ClassTag[V], arg2: ClassTag[F]): InputDStream[(K, V)]
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them using the given key-value types and input format.
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them using the given key-value types and input format. Files must be written to the monitored directory by "moving" them from another location within the same file system.
- K
Key type for reading HDFS file
- V
Value type for reading HDFS file
- F
Input format for reading HDFS file
- directory
HDFS directory to monitor for new file
- filter
Function to filter paths to process
- newFilesOnly
Should process only new files and ignore existing files in the directory
-
def
fileStream[K, V, F <: InputFormat[K, V]](directory: String)(implicit arg0: ClassTag[K], arg1: ClassTag[V], arg2: ClassTag[F]): InputDStream[(K, V)]
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them using the given key-value types and input format.
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them using the given key-value types and input format. Files must be written to the monitored directory by "moving" them from another location within the same file system. File names starting with . are ignored.
- K
Key type for reading HDFS file
- V
Value type for reading HDFS file
- F
Input format for reading HDFS file
- directory
HDFS directory to monitor for new file
-
def
finalize(): Unit
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final
def
getClass(): Class[_]
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def
getState(): StreamingContextState
:: DeveloperApi ::
:: DeveloperApi ::
Return the current state of the context. The context can be in three possible states -
- StreamingContextState.INITIALIZED - The context has been created, but not started yet. Input DStreams, transformations and output operations can be created on the context.
- StreamingContextState.ACTIVE - The context has been started, and not stopped. Input DStreams, transformations and output operations cannot be created on the context.
- StreamingContextState.STOPPED - The context has been stopped and cannot be used any more.
- Annotations
- @DeveloperApi()
-
def
hashCode(): Int
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def
initializeLogIfNecessary(isInterpreter: Boolean, silent: Boolean): Boolean
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def
initializeLogIfNecessary(isInterpreter: Boolean): Unit
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isInstanceOf[T0]: Boolean
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isTraceEnabled(): Boolean
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log: Logger
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logDebug(msg: ⇒ String, throwable: Throwable): Unit
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logDebug(msg: ⇒ String): Unit
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logError(msg: ⇒ String, throwable: Throwable): Unit
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logError(msg: ⇒ String): Unit
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logInfo(msg: ⇒ String, throwable: Throwable): Unit
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def
logInfo(msg: ⇒ String): Unit
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def
logName: String
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def
logTrace(msg: ⇒ String, throwable: Throwable): Unit
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logTrace(msg: ⇒ String): Unit
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def
logWarning(msg: ⇒ String, throwable: Throwable): Unit
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logWarning(msg: ⇒ String): Unit
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ne(arg0: AnyRef): Boolean
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notify(): Unit
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notifyAll(): Unit
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def
queueStream[T](queue: Queue[RDD[T]], oneAtATime: Boolean, defaultRDD: RDD[T])(implicit arg0: ClassTag[T]): InputDStream[T]
Create an input stream from a queue of RDDs.
Create an input stream from a queue of RDDs. In each batch, it will process either one or all of the RDDs returned by the queue.
- T
Type of objects in the RDD
- queue
Queue of RDDs. Modifications to this data structure must be synchronized.
- oneAtATime
Whether only one RDD should be consumed from the queue in every interval
- defaultRDD
Default RDD is returned by the DStream when the queue is empty. Set as null if no RDD should be returned when empty
- Note
Arbitrary RDDs can be added to
queueStream
, there is no way to recover data of those RDDs, soqueueStream
doesn't support checkpointing.
-
def
queueStream[T](queue: Queue[RDD[T]], oneAtATime: Boolean = true)(implicit arg0: ClassTag[T]): InputDStream[T]
Create an input stream from a queue of RDDs.
Create an input stream from a queue of RDDs. In each batch, it will process either one or all of the RDDs returned by the queue.
- T
Type of objects in the RDD
- queue
Queue of RDDs. Modifications to this data structure must be synchronized.
- oneAtATime
Whether only one RDD should be consumed from the queue in every interval
- Note
Arbitrary RDDs can be added to
queueStream
, there is no way to recover data of those RDDs, soqueueStream
doesn't support checkpointing.
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def
rawSocketStream[T](hostname: String, port: Int, storageLevel: StorageLevel = StorageLevel.MEMORY_AND_DISK_SER_2)(implicit arg0: ClassTag[T]): ReceiverInputDStream[T]
Create an input stream from network source hostname:port, where data is received as serialized blocks (serialized using the Spark's serializer) that can be directly pushed into the block manager without deserializing them.
Create an input stream from network source hostname:port, where data is received as serialized blocks (serialized using the Spark's serializer) that can be directly pushed into the block manager without deserializing them. This is the most efficient way to receive data.
- T
Type of the objects in the received blocks
- hostname
Hostname to connect to for receiving data
- port
Port to connect to for receiving data
- storageLevel
Storage level to use for storing the received objects (default: StorageLevel.MEMORY_AND_DISK_SER_2)
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def
receiverStream[T](receiver: Receiver[T])(implicit arg0: ClassTag[T]): ReceiverInputDStream[T]
Create an input stream with any arbitrary user implemented receiver.
Create an input stream with any arbitrary user implemented receiver. Find more details at https://spark.apache.org/docs/latest/streaming-custom-receivers.html
- receiver
Custom implementation of Receiver
-
def
remember(duration: Duration): Unit
Set each DStream in this context to remember RDDs it generated in the last given duration.
Set each DStream in this context to remember RDDs it generated in the last given duration. DStreams remember RDDs only for a limited duration of time and release them for garbage collection. This method allows the developer to specify how long to remember the RDDs ( if the developer wishes to query old data outside the DStream computation).
- duration
Minimum duration that each DStream should remember its RDDs
- def removeStreamingListener(streamingListener: StreamingListener): Unit
-
def
socketStream[T](hostname: String, port: Int, converter: (InputStream) ⇒ Iterator[T], storageLevel: StorageLevel)(implicit arg0: ClassTag[T]): ReceiverInputDStream[T]
Creates an input stream from TCP source hostname:port.
Creates an input stream from TCP source hostname:port. Data is received using a TCP socket and the receive bytes it interpreted as object using the given converter.
- T
Type of the objects received (after converting bytes to objects)
- hostname
Hostname to connect to for receiving data
- port
Port to connect to for receiving data
- converter
Function to convert the byte stream to objects
- storageLevel
Storage level to use for storing the received objects
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def
socketTextStream(hostname: String, port: Int, storageLevel: StorageLevel = StorageLevel.MEMORY_AND_DISK_SER_2): ReceiverInputDStream[String]
Creates an input stream from TCP source hostname:port.
Creates an input stream from TCP source hostname:port. Data is received using a TCP socket and the receive bytes is interpreted as UTF8 encoded
\n
delimited lines.- hostname
Hostname to connect to for receiving data
- port
Port to connect to for receiving data
- storageLevel
Storage level to use for storing the received objects (default: StorageLevel.MEMORY_AND_DISK_SER_2)
- See also
-
def
sparkContext: SparkContext
Return the associated Spark context
-
def
start(): Unit
Start the execution of the streams.
Start the execution of the streams.
- Exceptions thrown
IllegalStateException
if the StreamingContext is already stopped.
-
def
stop(stopSparkContext: Boolean, stopGracefully: Boolean): Unit
Stop the execution of the streams, with option of ensuring all received data has been processed.
Stop the execution of the streams, with option of ensuring all received data has been processed.
- stopSparkContext
if true, stops the associated SparkContext. The underlying SparkContext will be stopped regardless of whether this StreamingContext has been started.
- stopGracefully
if true, stops gracefully by waiting for the processing of all received data to be completed
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def
stop(stopSparkContext: Boolean = ...): Unit
Stop the execution of the streams immediately (does not wait for all received data to be processed).
Stop the execution of the streams immediately (does not wait for all received data to be processed). By default, if
stopSparkContext
is not specified, the underlying SparkContext will also be stopped. This implicit behavior can be configured using the SparkConf configuration spark.streaming.stopSparkContextByDefault.- stopSparkContext
If true, stops the associated SparkContext. The underlying SparkContext will be stopped regardless of whether this StreamingContext has been started.
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final
def
synchronized[T0](arg0: ⇒ T0): T0
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def
textFileStream(directory: String): DStream[String]
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them as text files (using key as LongWritable, value as Text and input format as TextInputFormat).
Create an input stream that monitors a Hadoop-compatible filesystem for new files and reads them as text files (using key as LongWritable, value as Text and input format as TextInputFormat). Files must be written to the monitored directory by "moving" them from another location within the same file system. File names starting with . are ignored. The text files must be encoded as UTF-8.
- directory
HDFS directory to monitor for new file
-
def
toString(): String
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def
transform[T](dstreams: Seq[DStream[_]], transformFunc: (Seq[RDD[_]], Time) ⇒ RDD[T])(implicit arg0: ClassTag[T]): DStream[T]
Create a new DStream in which each RDD is generated by applying a function on RDDs of the DStreams.
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def
union[T](streams: Seq[DStream[T]])(implicit arg0: ClassTag[T]): DStream[T]
Create a unified DStream from multiple DStreams of the same type and same slide duration.
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wait(): Unit
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def
wait(arg0: Long, arg1: Int): Unit
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wait(arg0: Long): Unit
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