class PairDStreamFunctions[K, V] extends Serializable
Extra functions available on DStream of (key, value) pairs through an implicit conversion.
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-    def cogroup[W](other: DStream[(K, W)], partitioner: Partitioner)(implicit arg0: ClassTag[W]): DStream[(K, (Iterable[V], Iterable[W]))]Return a new DStream by applying 'cogroup' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'cogroup' between RDDs of thisDStream andotherDStream. The supplied org.apache.spark.Partitioner is used to partition the generated RDDs.
-    def cogroup[W](other: DStream[(K, W)], numPartitions: Int)(implicit arg0: ClassTag[W]): DStream[(K, (Iterable[V], Iterable[W]))]Return a new DStream by applying 'cogroup' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'cogroup' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs withnumPartitionspartitions.
-    def cogroup[W](other: DStream[(K, W)])(implicit arg0: ClassTag[W]): DStream[(K, (Iterable[V], Iterable[W]))]Return a new DStream by applying 'cogroup' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'cogroup' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.
-    def combineByKey[C](createCombiner: (V) => C, mergeValue: (C, V) => C, mergeCombiner: (C, C) => C, partitioner: Partitioner, mapSideCombine: Boolean = true)(implicit arg0: ClassTag[C]): DStream[(K, C)]Combine elements of each key in DStream's RDDs using custom functions. Combine elements of each key in DStream's RDDs using custom functions. This is similar to the combineByKey for RDDs. Please refer to combineByKey in org.apache.spark.rdd.PairRDDFunctions in the Spark core documentation for more information. 
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-    def flatMapValues[U](flatMapValuesFunc: (V) => IterableOnce[U])(implicit arg0: ClassTag[U]): DStream[(K, U)]Return a new DStream by applying a flatmap function to the value of each key-value pairs in 'this' DStream without changing the key. 
-    def fullOuterJoin[W](other: DStream[(K, W)], partitioner: Partitioner)(implicit arg0: ClassTag[W]): DStream[(K, (Option[V], Option[W]))]Return a new DStream by applying 'full outer join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'full outer join' between RDDs of thisDStream andotherDStream. The supplied org.apache.spark.Partitioner is used to control the partitioning of each RDD.
-    def fullOuterJoin[W](other: DStream[(K, W)], numPartitions: Int)(implicit arg0: ClassTag[W]): DStream[(K, (Option[V], Option[W]))]Return a new DStream by applying 'full outer join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'full outer join' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs withnumPartitionspartitions.
-    def fullOuterJoin[W](other: DStream[(K, W)])(implicit arg0: ClassTag[W]): DStream[(K, (Option[V], Option[W]))]Return a new DStream by applying 'full outer join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'full outer join' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.
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-    def groupByKey(partitioner: Partitioner): DStream[(K, Iterable[V])]Return a new DStream by applying groupByKeyon each RDD.Return a new DStream by applying groupByKeyon each RDD. The supplied org.apache.spark.Partitioner is used to control the partitioning of each RDD.
-    def groupByKey(numPartitions: Int): DStream[(K, Iterable[V])]Return a new DStream by applying groupByKeyto each RDD.Return a new DStream by applying groupByKeyto each RDD. Hash partitioning is used to generate the RDDs withnumPartitionspartitions.
-    def groupByKey(): DStream[(K, Iterable[V])]Return a new DStream by applying groupByKeyto each RDD.Return a new DStream by applying groupByKeyto each RDD. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.
-    def groupByKeyAndWindow(windowDuration: Duration, slideDuration: Duration, partitioner: Partitioner): DStream[(K, Iterable[V])]Create a new DStream by applying groupByKeyover a sliding window onthisDStream.Create a new DStream by applying groupByKeyover a sliding window onthisDStream. Similar toDStream.groupByKey(), but applies it over a sliding window.- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
- slideDuration
- sliding interval of the window (i.e., the interval after which the new DStream will generate RDDs); must be a multiple of this DStream's batching interval 
- partitioner
- partitioner for controlling the partitioning of each RDD in the new DStream. 
 
-    def groupByKeyAndWindow(windowDuration: Duration, slideDuration: Duration, numPartitions: Int): DStream[(K, Iterable[V])]Return a new DStream by applying groupByKeyover a sliding window onthisDStream.Return a new DStream by applying groupByKeyover a sliding window onthisDStream. Similar toDStream.groupByKey(), but applies it over a sliding window. Hash partitioning is used to generate the RDDs withnumPartitionspartitions.- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
- slideDuration
- sliding interval of the window (i.e., the interval after which the new DStream will generate RDDs); must be a multiple of this DStream's batching interval 
- numPartitions
- number of partitions of each RDD in the new DStream; if not specified then Spark's default number of partitions will be used 
 
-    def groupByKeyAndWindow(windowDuration: Duration, slideDuration: Duration): DStream[(K, Iterable[V])]Return a new DStream by applying groupByKeyover a sliding window.Return a new DStream by applying groupByKeyover a sliding window. Similar toDStream.groupByKey(), but applies it over a sliding window. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
- slideDuration
- sliding interval of the window (i.e., the interval after which the new DStream will generate RDDs); must be a multiple of this DStream's batching interval 
 
-    def groupByKeyAndWindow(windowDuration: Duration): DStream[(K, Iterable[V])]Return a new DStream by applying groupByKeyover a sliding window.Return a new DStream by applying groupByKeyover a sliding window. This is similar toDStream.groupByKey()but applies it over a sliding window. The new DStream generates RDDs with the same interval as this DStream. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
 
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-    def join[W](other: DStream[(K, W)], partitioner: Partitioner)(implicit arg0: ClassTag[W]): DStream[(K, (V, W))]Return a new DStream by applying 'join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'join' between RDDs of thisDStream andotherDStream. The supplied org.apache.spark.Partitioner is used to control the partitioning of each RDD.
-    def join[W](other: DStream[(K, W)], numPartitions: Int)(implicit arg0: ClassTag[W]): DStream[(K, (V, W))]Return a new DStream by applying 'join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'join' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs withnumPartitionspartitions.
-    def join[W](other: DStream[(K, W)])(implicit arg0: ClassTag[W]): DStream[(K, (V, W))]Return a new DStream by applying 'join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'join' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.
-    def leftOuterJoin[W](other: DStream[(K, W)], partitioner: Partitioner)(implicit arg0: ClassTag[W]): DStream[(K, (V, Option[W]))]Return a new DStream by applying 'left outer join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'left outer join' between RDDs of thisDStream andotherDStream. The supplied org.apache.spark.Partitioner is used to control the partitioning of each RDD.
-    def leftOuterJoin[W](other: DStream[(K, W)], numPartitions: Int)(implicit arg0: ClassTag[W]): DStream[(K, (V, Option[W]))]Return a new DStream by applying 'left outer join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'left outer join' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs withnumPartitionspartitions.
-    def leftOuterJoin[W](other: DStream[(K, W)])(implicit arg0: ClassTag[W]): DStream[(K, (V, Option[W]))]Return a new DStream by applying 'left outer join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'left outer join' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.
-    def mapValues[U](mapValuesFunc: (V) => U)(implicit arg0: ClassTag[U]): DStream[(K, U)]Return a new DStream by applying a map function to the value of each key-value pairs in 'this' DStream without changing the key. 
-    def mapWithState[StateType, MappedType](spec: StateSpec[K, V, StateType, MappedType])(implicit arg0: ClassTag[StateType], arg1: ClassTag[MappedType]): MapWithStateDStream[K, V, StateType, MappedType]Return a MapWithStateDStream by applying a function to every key-value element of thisstream, while maintaining some state data for each unique key.Return a MapWithStateDStream by applying a function to every key-value element of thisstream, while maintaining some state data for each unique key. The mapping function and other specification (e.g. partitioners, timeouts, initial state data, etc.) of this transformation can be specified usingStateSpecclass. The state data is accessible in as a parameter of typeStatein the mapping function.Example of using mapWithState:// A mapping function that maintains an integer state and return a String def mappingFunction(key: String, value: Option[Int], state: State[Int]): Option[String] = { // Use state.exists(), state.get(), state.update() and state.remove() // to manage state, and return the necessary string } val spec = StateSpec.function(mappingFunction).numPartitions(10) val mapWithStateDStream = keyValueDStream.mapWithState[StateType, MappedType](spec) - StateType
- Class type of the state data 
- MappedType
- Class type of the mapped data 
- spec
- Specification of this transformation 
 
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-    def reduceByKey(reduceFunc: (V, V) => V, partitioner: Partitioner): DStream[(K, V)]Return a new DStream by applying reduceByKeyto each RDD.Return a new DStream by applying reduceByKeyto each RDD. The values for each key are merged using the supplied reduce function. org.apache.spark.Partitioner is used to control the partitioning of each RDD.
-    def reduceByKey(reduceFunc: (V, V) => V, numPartitions: Int): DStream[(K, V)]Return a new DStream by applying reduceByKeyto each RDD.Return a new DStream by applying reduceByKeyto each RDD. The values for each key are merged using the supplied reduce function. Hash partitioning is used to generate the RDDs withnumPartitionspartitions.
-    def reduceByKey(reduceFunc: (V, V) => V): DStream[(K, V)]Return a new DStream by applying reduceByKeyto each RDD.Return a new DStream by applying reduceByKeyto each RDD. The values for each key are merged using the associative and commutative reduce function. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.
-    def reduceByKeyAndWindow(reduceFunc: (V, V) => V, invReduceFunc: (V, V) => V, windowDuration: Duration, slideDuration: Duration, partitioner: Partitioner, filterFunc: ((K, V)) => Boolean): DStream[(K, V)]Return a new DStream by applying incremental reduceByKeyover a sliding window.Return a new DStream by applying incremental reduceByKeyover a sliding window. The reduced value of over a new window is calculated using the old window's reduced value :- reduce the new values that entered the window (e.g., adding new counts) 2. "inverse reduce" the old values that left the window (e.g., subtracting old counts) This is more efficient than reduceByKeyAndWindow without "inverse reduce" function. However, it is applicable to only "invertible reduce functions".
 - reduceFunc
- associative and commutative reduce function 
- invReduceFunc
- inverse reduce function 
- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
- slideDuration
- sliding interval of the window (i.e., the interval after which the new DStream will generate RDDs); must be a multiple of this DStream's batching interval 
- partitioner
- partitioner for controlling the partitioning of each RDD in the new DStream. 
- filterFunc
- Optional function to filter expired key-value pairs; only pairs that satisfy the function are retained 
 
-    def reduceByKeyAndWindow(reduceFunc: (V, V) => V, invReduceFunc: (V, V) => V, windowDuration: Duration, slideDuration: Duration = self.slideDuration, numPartitions: Int = ssc.sc.defaultParallelism, filterFunc: ((K, V)) => Boolean = null): DStream[(K, V)]Return a new DStream by applying incremental reduceByKeyover a sliding window.Return a new DStream by applying incremental reduceByKeyover a sliding window. The reduced value of over a new window is calculated using the old window's reduced value :- reduce the new values that entered the window (e.g., adding new counts)
 2. "inverse reduce" the old values that left the window (e.g., subtracting old counts) This is more efficient than reduceByKeyAndWindow without "inverse reduce" function. However, it is applicable to only "invertible reduce functions". Hash partitioning is used to generate the RDDs with Spark's default number of partitions. - reduceFunc
- associative and commutative reduce function 
- invReduceFunc
- inverse reduce function; such that for all y, invertible x: - invReduceFunc(reduceFunc(x, y), x) = y
- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
- slideDuration
- sliding interval of the window (i.e., the interval after which the new DStream will generate RDDs); must be a multiple of this DStream's batching interval 
- filterFunc
- Optional function to filter expired key-value pairs; only pairs that satisfy the function are retained 
 
-    def reduceByKeyAndWindow(reduceFunc: (V, V) => V, windowDuration: Duration, slideDuration: Duration, partitioner: Partitioner): DStream[(K, V)]Return a new DStream by applying reduceByKeyover a sliding window.Return a new DStream by applying reduceByKeyover a sliding window. Similar toDStream.reduceByKey(), but applies it over a sliding window.- reduceFunc
- associative and commutative reduce function 
- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
- slideDuration
- sliding interval of the window (i.e., the interval after which the new DStream will generate RDDs); must be a multiple of this DStream's batching interval 
- partitioner
- partitioner for controlling the partitioning of each RDD in the new DStream. 
 
-    def reduceByKeyAndWindow(reduceFunc: (V, V) => V, windowDuration: Duration, slideDuration: Duration, numPartitions: Int): DStream[(K, V)]Return a new DStream by applying reduceByKeyover a sliding window.Return a new DStream by applying reduceByKeyover a sliding window. This is similar toDStream.reduceByKey()but applies it over a sliding window. Hash partitioning is used to generate the RDDs withnumPartitionspartitions.- reduceFunc
- associative and commutative reduce function 
- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
- slideDuration
- sliding interval of the window (i.e., the interval after which the new DStream will generate RDDs); must be a multiple of this DStream's batching interval 
- numPartitions
- number of partitions of each RDD in the new DStream. 
 
-    def reduceByKeyAndWindow(reduceFunc: (V, V) => V, windowDuration: Duration, slideDuration: Duration): DStream[(K, V)]Return a new DStream by applying reduceByKeyover a sliding window.Return a new DStream by applying reduceByKeyover a sliding window. This is similar toDStream.reduceByKey()but applies it over a sliding window. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.- reduceFunc
- associative and commutative reduce function 
- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
- slideDuration
- sliding interval of the window (i.e., the interval after which the new DStream will generate RDDs); must be a multiple of this DStream's batching interval 
 
-    def reduceByKeyAndWindow(reduceFunc: (V, V) => V, windowDuration: Duration): DStream[(K, V)]Return a new DStream by applying reduceByKeyover a sliding window onthisDStream.Return a new DStream by applying reduceByKeyover a sliding window onthisDStream. Similar toDStream.reduceByKey(), but applies it over a sliding window. The new DStream generates RDDs with the same interval as this DStream. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.- reduceFunc
- associative and commutative reduce function 
- windowDuration
- width of the window; must be a multiple of this DStream's batching interval 
 
-    def rightOuterJoin[W](other: DStream[(K, W)], partitioner: Partitioner)(implicit arg0: ClassTag[W]): DStream[(K, (Option[V], W))]Return a new DStream by applying 'right outer join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'right outer join' between RDDs of thisDStream andotherDStream. The supplied org.apache.spark.Partitioner is used to control the partitioning of each RDD.
-    def rightOuterJoin[W](other: DStream[(K, W)], numPartitions: Int)(implicit arg0: ClassTag[W]): DStream[(K, (Option[V], W))]Return a new DStream by applying 'right outer join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'right outer join' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs withnumPartitionspartitions.
-    def rightOuterJoin[W](other: DStream[(K, W)])(implicit arg0: ClassTag[W]): DStream[(K, (Option[V], W))]Return a new DStream by applying 'right outer join' between RDDs of thisDStream andotherDStream.Return a new DStream by applying 'right outer join' between RDDs of thisDStream andotherDStream. Hash partitioning is used to generate the RDDs with Spark's default number of partitions.
-    def saveAsHadoopFiles(prefix: String, suffix: String, keyClass: Class[_], valueClass: Class[_], outputFormatClass: Class[_ <: OutputFormat[_, _]], conf: JobConf = new JobConf(ssc.sparkContext.hadoopConfiguration)): UnitSave each RDD in thisDStream as a Hadoop file.Save each RDD in thisDStream as a Hadoop file. The file name at each batch interval is generated based onprefixandsuffix: "prefix-TIME_IN_MS.suffix"
-    def saveAsHadoopFiles[F <: OutputFormat[K, V]](prefix: String, suffix: String)(implicit fm: ClassTag[F]): UnitSave each RDD in thisDStream as a Hadoop file.Save each RDD in thisDStream as a Hadoop file. The file name at each batch interval is generated based onprefixandsuffix: "prefix-TIME_IN_MS.suffix"
-    def saveAsNewAPIHadoopFiles(prefix: String, suffix: String, keyClass: Class[_], valueClass: Class[_], outputFormatClass: Class[_ <: OutputFormat[_, _]], conf: Configuration = ssc.sparkContext.hadoopConfiguration): UnitSave each RDD in thisDStream as a Hadoop file.Save each RDD in thisDStream as a Hadoop file. The file name at each batch interval is generated based onprefixandsuffix: "prefix-TIME_IN_MS.suffix".
-    def saveAsNewAPIHadoopFiles[F <: OutputFormat[K, V]](prefix: String, suffix: String)(implicit fm: ClassTag[F]): UnitSave each RDD in thisDStream as a Hadoop file.Save each RDD in thisDStream as a Hadoop file. The file name at each batch interval is generated based onprefixandsuffix: "prefix-TIME_IN_MS.suffix".
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-    def updateStateByKey[S](updateFunc: (Time, K, Seq[V], Option[S]) => Option[S], partitioner: Partitioner, rememberPartitioner: Boolean, initialRDD: Option[RDD[(K, S)]] = None)(implicit arg0: ClassTag[S]): DStream[(K, S)]Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of the key. Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of the key. In every batch the updateFunc will be called for each state even if there are no new values. org.apache.spark.Partitioner is used to control the partitioning of each RDD. - S
- State type 
- updateFunc
- State update function. If - thisfunction returns None, then corresponding state key-value pair will be eliminated.
- partitioner
- Partitioner for controlling the partitioning of each RDD in the new DStream. 
 
-    def updateStateByKey[S](updateFunc: (Iterator[(K, Seq[V], Option[S])]) => Iterator[(K, S)], partitioner: Partitioner, rememberPartitioner: Boolean, initialRDD: RDD[(K, S)])(implicit arg0: ClassTag[S]): DStream[(K, S)]Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of each key. Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of each key. In every batch the updateFunc will be called for each state even if there are no new values. org.apache.spark.Partitioner is used to control the partitioning of each RDD. - S
- State type 
- updateFunc
- State update function. Note, that this function may generate a different tuple with a different key than the input key. Therefore keys may be removed or added in this way. It is up to the developer to decide whether to remember the partitioner despite the key being changed. 
- partitioner
- Partitioner for controlling the partitioning of each RDD in the new DStream 
- rememberPartitioner
- Whether to remember the partitioner object in the generated RDDs. 
- initialRDD
- initial state value of each key. 
 
-    def updateStateByKey[S](updateFunc: (Seq[V], Option[S]) => Option[S], partitioner: Partitioner, initialRDD: RDD[(K, S)])(implicit arg0: ClassTag[S]): DStream[(K, S)]Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of the key. Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of the key. In every batch the updateFunc will be called for each state even if there are no new values. org.apache.spark.Partitioner is used to control the partitioning of each RDD. - S
- State type 
- updateFunc
- State update function. If - thisfunction returns None, then corresponding state key-value pair will be eliminated.
- partitioner
- Partitioner for controlling the partitioning of each RDD in the new DStream. 
- initialRDD
- initial state value of each key. 
 
-    def updateStateByKey[S](updateFunc: (Iterator[(K, Seq[V], Option[S])]) => Iterator[(K, S)], partitioner: Partitioner, rememberPartitioner: Boolean)(implicit arg0: ClassTag[S]): DStream[(K, S)]Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of each key. Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of each key. In every batch the updateFunc will be called for each state even if there are no new values. org.apache.spark.Partitioner is used to control the partitioning of each RDD. - S
- State type 
- updateFunc
- State update function. Note, that this function may generate a different tuple with a different key than the input key. Therefore keys may be removed or added in this way. It is up to the developer to decide whether to remember the partitioner despite the key being changed. 
- partitioner
- Partitioner for controlling the partitioning of each RDD in the new DStream 
- rememberPartitioner
- Whether to remember the partitioner object in the generated RDDs. 
 
-    def updateStateByKey[S](updateFunc: (Seq[V], Option[S]) => Option[S], partitioner: Partitioner)(implicit arg0: ClassTag[S]): DStream[(K, S)]Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of the key. Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of the key. In every batch the updateFunc will be called for each state even if there are no new values. org.apache.spark.Partitioner is used to control the partitioning of each RDD. - S
- State type 
- updateFunc
- State update function. If - thisfunction returns None, then corresponding state key-value pair will be eliminated.
- partitioner
- Partitioner for controlling the partitioning of each RDD in the new DStream. 
 
-    def updateStateByKey[S](updateFunc: (Seq[V], Option[S]) => Option[S], numPartitions: Int)(implicit arg0: ClassTag[S]): DStream[(K, S)]Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of each key. Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of each key. In every batch the updateFunc will be called for each state even if there are no new values. Hash partitioning is used to generate the RDDs with numPartitionspartitions.- S
- State type 
- updateFunc
- State update function. If - thisfunction returns None, then corresponding state key-value pair will be eliminated.
- numPartitions
- Number of partitions of each RDD in the new DStream. 
 
-    def updateStateByKey[S](updateFunc: (Seq[V], Option[S]) => Option[S])(implicit arg0: ClassTag[S]): DStream[(K, S)]Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of each key. Return a new "state" DStream where the state for each key is updated by applying the given function on the previous state of the key and the new values of each key. In every batch the updateFunc will be called for each state even if there are no new values. Hash partitioning is used to generate the RDDs with Spark's default number of partitions. - S
- State type 
- updateFunc
- State update function. If - thisfunction returns None, then corresponding state key-value pair will be eliminated.
 
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