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I am trying to convert SQL to scala just for my own knowledge I am able to solve several sql functions (Sql lead ,lag, first value, last value ,rows between unbounded proceeding and window clauses in plain Scala (WITH NO SPARK)), I am stuck at sliding SQL window functions like rows between unbounded preceding and unbounded following, rows between unbounded preceding and current row to calculate the sum of salary. Need help in scala sliding functions on how to use them to get similar output as spark SQL or spark data frame window functions. I went through the source code of Apache spark to see how these window functions are implemented in scala but unable to figure out sorry.

Desired output 1:- Lead, Lag and rank in Scala partition by Department

Name   Department  salary Lead(salary) Lag(Salary) rank(salary) 
Vivek  Management  8000   8000         null        1
Vivek  Management  8000   54000        8000        1
Arjun  Management  54000  60000        54000       3
Rahul  Management  60000  Null         60000       4 

Desired output 2:- dense rank in Scala partition by Department

Name   Department  salary dense_rank(salary) 
Vivek  Management  8000   1
Vivek  Management  8000   1
Arjun  Management  54000  2
Rahul  Management  60000  3 

Question 3:- Ntile in Scala partition by Department and salary

Name   Department  salary Ntile(salary) 
Vivek  Management  8000   1
Vivek  Management  8000   1
Arjun  Management  54000  2
Rahul  Management  60000  3 

Question 4:- sum(salary) ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW partition by department

Name   Department  salary sum(salary) 
Vivek  Management  8000   8000         
Vivek  Management  8000   16000      --> 8000+8000
Arjun  Management  54000  70000      --> 8000+8000+54000
Rahul  Management  60000  130000     --> 8000+8000+54000+60000

Question 5:- sum(salary) ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW partition by department (Similar to running sum)

Name   Department  salary sum(salary) 
Vivek  Management  8000   8000      
Vivek  Management  8000   16000      --> 8000+8000
Arjun  Management  54000  70000      --> 8000+54000+8000
Rahul  Management  60000  130000     --> 8000+54000+60000

Question 6:- sum(salary) ROWS BETWEEN 1 PRECEDING AND 1 FOLLOWING partition by department

Name   Department  salary sum(salary) 
Vivek  Management  8000   8000
Vivek  Management  8000   70000        --> 8000+8000+54000
Arjun  Management  54000  122000       --> 8000+54000+60000
Rahul  Management  60000  1140000      --> 54000+60000
package SqlConversion_to_Java_Scala

import java.util

import scala.collection.JavaConversions._


object Example10SqlToScalaEverySqlFunctionStackOverFlow {
  case class Employee(  var empid: Int,
                        var name: String,
                        var age: Int,
                        var dept: String,var salary:Int)

  def main(args: Array[String]): Unit = {

    // create the employee list
    val empData = List(
      Employee(1, "Ajay", 25, "Technical", 35000),
      Employee(3, "Chandan", 22, "Technical", 30000),
      Employee(4, "Arjun", 30, "Management", 54000),
      Employee(2, "Arun", 28, "Sales", 9000),
      Employee(8, "Anmol", 28, "Sales", 15000),
      Employee(9, "Vivek", 20, "Management", 8000),
      Employee(10, "Nikhil", 20, "Sales", 7000),
      Employee(5, "Rahul", 30, "Management", 60000),
      Employee(6, "Ganesh", 32, "Sales", 35000),
      Employee(7, "Vishal", 32, "Technical", 40000),
      Employee(11, "Anmol", 25, "Sales", 15000),
      Employee(12, "Vivek", 25, "Management", 8000),
      Employee(13, "Nikhil", 30, "Technical", 7000)
    )

    println("\n group data by department ")

    val byDept: Map[String, List[Employee]] =
      empData.sortBy(data => (data.dept,data.age)).groupBy(row => row.dept)

    println("\n group data by department and age ")

    val byDeptAge: Map[(String, Int), List[Employee]] =
      empData.sortBy(data => (data.dept,data.age)).groupBy(row => (row.dept, row.age))



  }

}

Thanks Sri

  • 1
    What output do you want? It is really not clear from this code, which seems to have a lot of stuff in it that is not relevant. – Tim Mar 21 at 11:27
  • I made changes now please check .... – sri hari kali charan Tummala Mar 22 at 18:46

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