Spark2 Dataset分析函数--排名函数row_number,rank,dense_rank,percent_rank

时间:2022-11-07 18:05:14

select gender,
       age,
       row_number() over(partition by gender order by age) as rowNumber,
       rank() over(partition by gender order by age) as ranks,
       dense_rank() over(partition by gender order by age) as denseRank,
       percent_rank() over(partition by gender order by age) as percentRank
  from Affairs

val spark = SparkSession.builder().appName("Spark SQL basic example").config("spark.some.config.option", "some-value").getOrCreate()

// For implicit conversions like converting RDDs to DataFrames
import spark.implicits._ val dataList: List[(Double, String, Double, Double, String, Double, Double, Double, Double)] = List(
(0, "male", 37, 10, "no", 3, 18, 7, 4),
(0, "female", 27, 4, "no", 4, 14, 6, 4),
(0, "female", 32, 15, "yes", 1, 12, 1, 4),
(0, "male", 57, 15, "yes", 5, 18, 6, 5),
(0, "male", 22, 0.75, "no", 2, 17, 6, 3),
(0, "female", 32, 1.5, "no", 2, 17, 5, 5),
(0, "female", 22, 0.75, "no", 2, 12, 1, 3),
(0, "male", 57, 15, "yes", 2, 14, 4, 4),
(0, "female", 32, 15, "yes", 4, 16, 1, 2),
(0, "male", 22, 1.5, "no", 4, 14, 4, 5),
(0, "male", 37, 15, "yes", 2, 20, 7, 2),
(0, "male", 27, 4, "yes", 4, 18, 6, 4),
(0, "male", 47, 15, "yes", 5, 17, 6, 4),
(0, "female", 22, 1.5, "no", 2, 17, 5, 4),
(0, "female", 27, 4, "no", 4, 14, 5, 4),
(0, "female", 37, 15, "yes", 1, 17, 5, 5),
(0, "female", 37, 15, "yes", 2, 18, 4, 3),
(0, "female", 22, 0.75, "no", 3, 16, 5, 4),
(0, "female", 22, 1.5, "no", 2, 16, 5, 5),
(0, "female", 27, 10, "yes", 2, 14, 1, 5),
(0, "female", 22, 1.5, "no", 2, 16, 5, 5),
(0, "female", 22, 1.5, "no", 2, 16, 5, 5),
(0, "female", 27, 10, "yes", 4, 16, 5, 4),
(0, "female", 32, 10, "yes", 3, 14, 1, 5),
(0, "male", 37, 4, "yes", 2, 20, 6, 4)) val data = dataList.toDF("affairs", "gender", "age", "yearsmarried", "children", "religiousness", "education", "occupation", "rating") data.printSchema() // 创建视图
data.createOrReplaceTempView("Affairs") val s1="row_number() over(partition by gender order by age) as rowNumber,"
val s2="rank() over(partition by gender order by age) as ranks,"
val s3="dense_rank() over(partition by gender order by age) as denseRank,"
val s4="percent_rank() over(partition by gender order by age) as percentRank"
val df8=spark.sql("select gender,age,"+s1+s2+s3+s4+" from Affairs") df8.show(50)
+------+----+---------+-----+---------+------------------+
|gender| age|rowNumber|ranks|denseRank| percentRank|
+------+----+---------+-----+---------+------------------+
|female|22.0| 1| 1| 1| 0.0|
|female|22.0| 2| 1| 1| 0.0|
|female|22.0| 3| 1| 1| 0.0|
|female|22.0| 4| 1| 1| 0.0|
|female|22.0| 5| 1| 1| 0.0|
|female|22.0| 6| 1| 1| 0.0|
|female|27.0| 7| 7| 2| 0.4|
|female|27.0| 8| 7| 2| 0.4|
|female|27.0| 9| 7| 2| 0.4|
|female|27.0| 10| 7| 2| 0.4|
|female|32.0| 11| 11| 3|0.6666666666666666|
|female|32.0| 12| 11| 3|0.6666666666666666|
|female|32.0| 13| 11| 3|0.6666666666666666|
|female|32.0| 14| 11| 3|0.6666666666666666|
|female|37.0| 15| 15| 4|0.9333333333333333|
|female|37.0| 16| 15| 4|0.9333333333333333|
| male|22.0| 1| 1| 1| 0.0|
| male|22.0| 2| 1| 1| 0.0|
| male|27.0| 3| 3| 2| 0.25|
| male|37.0| 4| 4| 3| 0.375|
| male|37.0| 5| 4| 3| 0.375|
| male|37.0| 6| 4| 3| 0.375|
| male|47.0| 7| 7| 4| 0.75|
| male|57.0| 8| 8| 5| 0.875|
| male|57.0| 9| 8| 5| 0.875|
+------+----+---------+-----+---------+------------------+