[大数据之Spark]——Actions算子操作入门实例

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[大数据之Spark]——Actions算子操作入门实例

Actions

reduce(func)

Aggregate the elements of the dataset using a function func (which takes two arguments and returns one). The function should be commutative and associative so that it can be computed correctly in parallel.

//创建数据集scala> var data = sc.parallelize(1 to 3,1)scala> data.collectres6: Array[Int] = Array(1, 2, 3)//collect计算scala> data.reduce((x,y)=>x+y)res5: Int = 6

collect()

Return all the elements of the dataset as an array at the driver program. This is usually useful after a filter or other operation that returns a sufficiently small subset of the data.

//创建数据集scala> var data = sc.parallelize(1 to 3,1)scala> data.collectres6: Array[Int] = Array(1, 2, 3)

count()

Return the number of elements in the dataset.

//创建数据集scala> var data = sc.parallelize(1 to 3,1)//统计个数scala> data.countres7: Long = 3scala> var data = sc.parallelize(List(("A",1),("B",1)))scala> data.countres8: Long = 2

first()

Return the first element of the dataset (similar to take(1)).

//创建数据集scala> var data = sc.parallelize(List(("A",1),("B",1)))//获取第一条元素scala> data.firstres9: (String, Int) = (A,1)

take(n)

Return an array with the first n elements of the dataset.

//创建数据集scala> var data = sc.parallelize(List(("A",1),("B",1)))scala> data.take(1)res10: Array[(String, Int)] = Array((A,1))//如果n大于总数，则会返回所有的数据scala> data.take(8)res12: Array[(String, Int)] = Array((A,1), (B,1))//如果n小于等于0，会返回空数组scala> data.take(-1)res13: Array[(String, Int)] = Array()scala> data.take(0)res14: Array[(String, Int)] = Array()

takeSample(withReplacement, num, [seed])

Return an array with a random sample of num elements of the dataset, with or without replacement, optionally pre-specifying a random number generator seed.

//创建数据集scala> var data = sc.parallelize(List(1,3,5,7))data: org.apache.spark.rdd.RDD[Int] = ParallelCollectionRDD[0] at parallelize at :21//随机2个数据scala> data.takeSample(true,2,1)res0: Array[Int] = Array(7, 1)//随机4个数据，注意随机的数据可能是重复的scala> data.takeSample(true,4,1)res1: Array[Int] = Array(7, 7, 3, 7)//第一个参数是是否重复scala> data.takeSample(false,4,1)res2: Array[Int] = Array(3, 5, 7, 1)scala> data.takeSample(false,5,1)res3: Array[Int] = Array(3, 5, 7, 1)

takeOrdered(n, [ordering])

Return the first n elements of the RDD using either their natural order or a custom comparator.

//创建数据集scala> var data = sc.parallelize(List("b","a","e","f","c"))data: org.apache.spark.rdd.RDD[String] = ParallelCollectionRDD[3] at parallelize at :21//返回排序数据scala> data.takeOrdered(3)res4: Array[String] = Array(a, b, c)

saveAsTextFile(path)

Write the elements of the dataset as a text file (or set of text files) in a given directory in the local filesystem, HDFS or any other Hadoop-supported file system. Spark will call toString on each element to convert it to a line of text in the file.

//创建数据集scala> var data = sc.parallelize(List("b","a","e","f","c"))data: org.apache.spark.rdd.RDD[String] = ParallelCollectionRDD[3] at parallelize at :21//保存为test_data_save文件scala> data.saveAsTextFile("test_data_save")scala> data.saveAsTextFile("test_data_save2",classOf[GzipCodec]):24: error: not found: type GzipCodec data.saveAsTextFile("test_data_save2",classOf[GzipCodec]) ^//引入必要的classscala> import org.apache.hadoop.io.compress.GzipCodecimport org.apache.hadoop.io.compress.GzipCodec//保存为压缩文件scala> data.saveAsTextFile("test_data_save2",classOf[GzipCodec])

[xingoo@localhost bin]$lldrwxrwxr-x. 2 xingoo xingoo 4096 Oct 10 23:07 test_data_savedrwxrwxr-x. 2 xingoo xingoo 4096 Oct 10 23:07 test_data_save2[xingoo@localhost bin]$ cd test_data_save2[xingoo@localhost test_data_save2]$lltotal 4-rw-r--r--. 1 xingoo xingoo 30 Oct 10 23:07 part-00000.gz-rw-r--r--. 1 xingoo xingoo 0 Oct 10 23:07 _SUCCESS[xingoo@localhost test_data_save2]$ cd ..[xingoo@localhost bin]$cd test_data_save[xingoo@localhost test_data_save]$ lltotal 4-rw-r--r--. 1 xingoo xingoo 10 Oct 10 23:07 part-00000-rw-r--r--. 1 xingoo xingoo 0 Oct 10 23:07 _SUCCESS[xingoo@localhost test_data_save]$cat part-00000 baefc saveAsSequenceFile(path) Write the elements of the dataset as a Hadoop SequenceFile in a given path in the local filesystem, HDFS or any other Hadoop-supported file system. This is available on RDDs of key-value pairs that implement Hadoop's Writable interface. In Scala, it is also available on types that are implicitly convertible to Writable (Spark includes conversions for basic types like Int, Double, String, etc). 保存为sequence文件 scala> var data = sc.parallelize(List(("A",1),("A",2),("B",1)),3)data: org.apache.spark.rdd.RDD[(String, Int)] = ParallelCollectionRDD[21] at parallelize at :22scala> data.saveAsSequenceFile("kv_test")[xingoo@localhost bin]$ cd kv_test/[xingoo@localhost kv_test]\$ lltotal 12-rw-r--r--. 1 xingoo xingoo 99 Oct 10 23:25 part-00000-rw-r--r--. 1 xingoo xingoo 99 Oct 10 23:25 part-00001-rw-r--r--. 1 xingoo xingoo 99 Oct 10 23:25 part-00002-rw-r--r--. 1 xingoo xingoo 0 Oct 10 23:25 _SUCCESS

saveAsObjectFile(path)

Write the elements of the dataset in a simple format using Java serialization, which can then be loaded using SparkContext.objectFile().

scala> var data = sc.parallelize(List("a","b","c"))data: org.apache.spark.rdd.RDD[String] = ParallelCollectionRDD[16] at parallelize at :22scala> data.saveAsObjectFile("str_test")scala> var data2 = sc.objectFile[Array[String]]("str_test")data2: org.apache.spark.rdd.RDD[Array[String]] = MapPartitionsRDD[20] at objectFile at :22scala> data2.collect

countByKey()

Only available on RDDs of type (K, V). Returns a hashmap of (K, Int) pairs with the count of each key.

//创建数据集scala> var data = sc.parallelize(List(("A",1),("A",2),("B",1)))data: org.apache.spark.rdd.RDD[(String, Int)] = ParallelCollectionRDD[7] at parallelize at :22//统计个数scala> data.countByKeyres9: scala.collection.Map[String,Long] = Map(B -> 1, A -> 2)

foreach(func)

Run a function func on each element of the dataset. This is usually done for side effects such as updating an Accumulator or interacting with external storage systems.

Note: modifying variables other than Accumulators outside of the foreach() may result in undefined behavior. See Understanding closures for more details.

// 创建数据集scala> var data = sc.parallelize(List("b","a","e","f","c"))data: org.apache.spark.rdd.RDD[String] = ParallelCollectionRDD[10] at parallelize at :22// 遍历scala> data.foreach(x=>println(x+" hello"))b helloa helloe hellof helloc hello

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