1、分割槽邏輯
spark rdd是被分割槽的,在生成rdd時候,一般可以指定分割槽的數量,如果不指定分割槽數量,當rdd從集合建立時候,則預設為該程式所分配到的資源的cpu核數,如果是從hdfs檔案建立,預設為檔案的block數。
2、分割槽元素統計
示例1:
假如建立乙個rdd,預設分割槽15個,因為我的spark-shell指定了一共使用15個cpu資源。
(1)分割槽數
scala> var rdd1 = sc.makerdd(1 to 50)
rdd1: org.apache.spark.rdd.rdd[int] = parallelcollectionrdd[17] at makerdd at :21
scala> rdd1.partitions.size
res15: int = 15
(2)分割槽中元素數量統計
(partidx,iter) => else
iter.next()
}part_map.iterator
}}.collect
res16: array[(string, int)] = array((part_0,3), (part_1,3), (part_2,4), (part_3,3), (part_4,3), (part_5,4), (part_6,3),
(part_7,3), (part_8,4), (part_9,3), (part_10,3), (part_11,4), (part_12,3), (part_13,3), (part_14,4))
//從part_0到part_14,每個分割槽中的元素數量
(3)分割槽中元素展示
(partidx,iter) => else }}
part_map.iterator
}}.collect
res17: array[(string, list[int])] = array((part_0,list(3, 2, 1)), (part_1,list(6, 5, 4)), (part_2,list(10, 9, 8, 7)), (part_3,list(13, 12, 11)),
(part_4,list(16, 15, 14)), (part_5,list(20, 19, 18, 17)), (part_6,list(23, 22, 21)), (part_7,list(26, 25, 24)), (part_8,list(30, 29, 28, 27)),
(part_9,list(33, 32, 31)), (part_10,list(36, 35, 34)), (part_11,list(40, 39, 38, 37)), (part_12,list(43, 42, 41)), (part_13,list(46, 45, 44)),
(part_14,list(50, 49, 48, 47)))
//從part_0到part14,每個分割槽中包含的元素
示例2:
從hdfs檔案建立乙個rdd,包含65個分割槽,因為該檔案由65個block。
(1)分割槽數
scala> var rdd2 = sc.textfile("/logs/2015-07-05/lxw1234.com.log")
scala> rdd2.partitions.size
res18: int = 65
(2)分割槽中元素數量統計
| (partidx,iter) => else
| iter.next()
| }
| part_map.iterator
|
| }
| }.collect
res19: array[(string, int)] = array((part_0,202496), (part_1,225503), (part_2,214375), (part_3,215909),
(part_4,208941), (part_5,205379), (part_6,207894), (part_7,209496), (part_8,213806), (part_9,216962),
(part_10,216091), (part_11,215820), (part_12,217043), (part_13,216556), (part_14,218702), (part_15,218625),
(part_16,218519), (part_17,221056), (part_18,221250), (part_19,222092), (part_20,222339), (part_21,222779),
(part_22,223578), (part_23,222869), (part_24,221543), (part_25,219671), (part_26,222871), (part_27,223200),
(part_28,223282), (part_29,228212), (part_30,223978), (part_31,223024), (part_32,222889), (part_33,222106),
(part_34,221563), (part_35,219208), (part_36,216928), (part_37,216733), (part_38,217214), (part_39,219978),
(part_40,218155), (part_41,219880), (part_42,215833...
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