Spark DataFrame / Dataset查找每种键有效方式的最常用值

问题描述 投票:1回答:1

问题:我在映射spark(使用scala)中最常见的键值时遇到问题。我已经用RDD做到了,但是不知道如何有效地使用DF / DS(sparksql)

数据集就像

key1 = value_a
key1 = value_b
key1 = value_b
key2 = value_a
key2 = value_c
key2 = value_c
key3 = value_a

在进行火花转换和访问输出之后,每个键应具有其公共值

输出

key1 = valueb
key2 = valuec
key3 = valuea

到目前为止尝试过:

RDD

我已经尝试在RDD中按(key,value),count组进行映射和归约,它具有逻辑性,但是我无法将其转换为sparksql(DataFrame / Dataset)(因为我希望在整个网络上实现最小的洗牌)

这是我的RDD代码

 val data = List(

"key1,value_a",
"key1,value_b",
"key1,value_b",
"key2,value_a",
"key2,value_c",
"key2,value_c",
"key3,value_a"

)

val sparkConf = new SparkConf().setMaster("local").setAppName("example")
val sc = new SparkContext(sparkConf)

val lineRDD = sc.parallelize(data)

val pairedRDD = lineRDD.map { line =>
val fields = line.split(",")
(fields(0), fields(2))
}

val flatPairsRDD = pairedRDD.flatMap {
  (key, val) => ((key, val), 1)
}

val SumRDD = flatPairsRDD.reduceByKey((a, b) => a + b)




val resultsRDD = SumRDD.map{
  case ((key, val), count) => (key, (val,count))
 }.groupByKey.map{
  case (key, valList) => (name, valList.toList.sortBy(_._2).reverse.head)
}

resultsRDD.collect().foreach(println)

DataFrame,Using Windowing:我正在尝试使用Window.partitionBy("key", "value")来聚合count over the window。和分别为sortingagg()

scala apache-spark apache-spark-sql apache-spark-dataset
1个回答
4
投票

根据我从您的问题中了解到的,这是您可以做的

首先,您必须读取数据并将其转换为dataframe

val df = sc.textFile("path to the data file")   //reading file line by line
  .map(line => line.split("="))                 // splitting each line by =
  .map(array => (array(0).trim, array(1).trim)) //tuple2(key, value) created
  .toDF("key", "value")                        //rdd converted to dataframe which required import sqlContext.implicits._

原为

+----+-------+
|key |value  |
+----+-------+
|key1|value_a|
|key1|value_b|
|key1|value_b|
|key2|value_a|
|key2|value_c|
|key2|value_c|
|key3|value_a|
+----+-------+

下一步将是计算每个键的相同值的重复次数,并选择每个键重复最多的值,这可以通过使用Window功能和aggregations如下进行

import org.apache.spark.sql.expressions._                   //import Window library
def windowSpec = Window.partitionBy("key", "value")         //defining a window frame for the aggregation
import org.apache.spark.sql.functions._                     //importing inbuilt functions
df.withColumn("count", count("value").over(windowSpec))     // counting repeatition of value for each group of key, value and assigning that value to new column called as count
  .orderBy($"count".desc)                                   // order dataframe with count in descending order
  .groupBy("key")                                           // group by key
  .agg(first("value").as("value"))                          //taking the first row of each key with count column as the highest

因此最终输出应等于

+----+-------+
|key |value  |
+----+-------+
|key3|value_a|
|key1|value_b|
|key2|value_c|
+----+-------+ 
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