Spark函数讲解:collectAsMap

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 * User: 过往记忆
 * Date: 15-03-16
 * Time: 上午09:24
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scala> val data = sc.parallelize(List((1, "www"), (1, "iteblog"), (1, "com"), 
    (2, "bbs"), (2, "iteblog"), (2, "com"), (3, "good")))
data: org.apache.spark.rdd.RDD[(Int, String)] =
    ParallelCollectionRDD[26] at parallelize at <console>:12
 
scala> data.collectAsMap
res28: scala.collection.Map[Int,String] = Map(2 -> com, 1 -> com, 3 -> good)


从结果我们可以看出,如果RDD中同一个Key中存在多个Value,那么后面的Value将会把前面的Value覆盖,最终得到的结果就是Key唯一,而且对应一个Value。


本文转载自:http://www.iteblog.com/archives/1289

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