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Diffstat (limited to 'core/src/main/scala/spark/rdd/SubtractedRDD.scala')
-rw-r--r-- | core/src/main/scala/spark/rdd/SubtractedRDD.scala | 108 |
1 files changed, 108 insertions, 0 deletions
diff --git a/core/src/main/scala/spark/rdd/SubtractedRDD.scala b/core/src/main/scala/spark/rdd/SubtractedRDD.scala new file mode 100644 index 0000000000..daf9cc993c --- /dev/null +++ b/core/src/main/scala/spark/rdd/SubtractedRDD.scala @@ -0,0 +1,108 @@ +package spark.rdd + +import java.util.{HashSet => JHashSet} +import scala.collection.JavaConversions._ +import spark.RDD +import spark.Partitioner +import spark.Dependency +import spark.TaskContext +import spark.Partition +import spark.SparkEnv +import spark.ShuffleDependency +import spark.OneToOneDependency + +/** + * An optimized version of cogroup for set difference/subtraction. + * + * It is possible to implement this operation with just `cogroup`, but + * that is less efficient because all of the entries from `rdd2`, for + * both matching and non-matching values in `rdd1`, are kept in the + * JHashMap until the end. + * + * With this implementation, only the entries from `rdd1` are kept in-memory, + * and the entries from `rdd2` are essentially streamed, as we only need to + * touch each once to decide if the value needs to be removed. + * + * This is particularly helpful when `rdd1` is much smaller than `rdd2`, as + * you can use `rdd1`'s partitioner/partition size and not worry about running + * out of memory because of the size of `rdd2`. + */ +private[spark] class SubtractedRDD[T: ClassManifest]( + @transient var rdd1: RDD[T], + @transient var rdd2: RDD[T], + part: Partitioner) extends RDD[T](rdd1.context, Nil) { + + override def getDependencies: Seq[Dependency[_]] = { + Seq(rdd1, rdd2).map { rdd => + if (rdd.partitioner == Some(part)) { + logInfo("Adding one-to-one dependency with " + rdd) + new OneToOneDependency(rdd) + } else { + logInfo("Adding shuffle dependency with " + rdd) + val mapSideCombinedRDD = rdd.mapPartitions(i => { + val set = new JHashSet[T]() + while (i.hasNext) { + set.add(i.next) + } + set.iterator + }, true) + // ShuffleDependency requires a tuple (k, v), which it will partition by k. + // We need this to partition to map to the same place as the k for + // OneToOneDependency, which means: + // - for already-tupled RDD[(A, B)], into getPartition(a) + // - for non-tupled RDD[C], into getPartition(c) + val part2 = new Partitioner() { + def numPartitions = part.numPartitions + def getPartition(key: Any) = key match { + case (k, v) => part.getPartition(k) + case k => part.getPartition(k) + } + } + new ShuffleDependency(mapSideCombinedRDD.map((_, null)), part2) + } + } + } + + override def getPartitions: Array[Partition] = { + val array = new Array[Partition](part.numPartitions) + for (i <- 0 until array.size) { + // Each CoGroupPartition will depend on rdd1 and rdd2 + array(i) = new CoGroupPartition(i, Seq(rdd1, rdd2).zipWithIndex.map { case (rdd, j) => + dependencies(j) match { + case s: ShuffleDependency[_, _] => + new ShuffleCoGroupSplitDep(s.shuffleId) + case _ => + new NarrowCoGroupSplitDep(rdd, i, rdd.partitions(i)) + } + }.toList) + } + array + } + + override val partitioner = Some(part) + + override def compute(p: Partition, context: TaskContext): Iterator[T] = { + val partition = p.asInstanceOf[CoGroupPartition] + val set = new JHashSet[T] + def integrate(dep: CoGroupSplitDep, op: T => Unit) = dep match { + case NarrowCoGroupSplitDep(rdd, _, itsSplit) => + for (k <- rdd.iterator(itsSplit, context)) + op(k.asInstanceOf[T]) + case ShuffleCoGroupSplitDep(shuffleId) => + for ((k, _) <- SparkEnv.get.shuffleFetcher.fetch(shuffleId, partition.index)) + op(k.asInstanceOf[T]) + } + // the first dep is rdd1; add all keys to the set + integrate(partition.deps(0), set.add) + // the second dep is rdd2; remove all of its keys from the set + integrate(partition.deps(1), set.remove) + set.iterator + } + + override def clearDependencies() { + super.clearDependencies() + rdd1 = null + rdd2 = null + } + +}
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