Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Relevant questions

This question is quite relevant, but is 2 years old: In memory OLAP engine in Java

Background

I would like to create a pivot-table like matrix from a given tabular dataset, in memory

e.g. an age by marital status count (rows are age, columns are marital status).

  • The input: List of People, with age and some Boolean property (e.g. married),

  • The desired output: count of People, by age (row) and isMarried (column)

What I've tried (Scala)

case class Person(val age:Int, val isMarried:Boolean)

...
val people:List[Person] = ... //

val peopleByAge = people.groupBy(_.age)  //only by age
val peopleByMaritalStatus = people.groupBy(_.isMarried) //only by marital status

I managed to do it the naive way, first grouping by age, then map which is doing a count by marital status, and outputs the result, then I foldRight to aggregate

TreeMap(peopleByAge.toSeq: _*).map(x => {
    val age = x._1
    val rows = x._2
    val numMarried = rows.count(_.isMarried())
    val numNotMarried = rows.length - numMarried
    (age, numMarried, numNotMarried)
}).foldRight(List[FinalResult]())(row,list) => {
     val cumMarried = row._2+ 
        (if (list.isEmpty) 0 else list.last.cumMarried) 
     val cumNotMarried = row._3 + 
        (if (list.isEmpty) 0 else l.last.cumNotMarried) 
     list :+ new FinalResult(row._1, row._2, row._3, cumMarried,cumNotMarried) 
}.reverse

I don't like the above code, it's not efficient, hard to read, and I'm sure there is a better way.

The question(s)

How do I groupBy "both"? and how do I do a count for each subgroup, e.g.

How many people are exactly 30 years old and married?

Another question, is how do I do a running total, to answer the question:

How many people above 30 are married?


Edit:

Thank you for all the great answers.

just to clarify, I would like the output to include a "table" with the following columns

  • Age (ascending)
  • Num Married
  • Num Not Married
  • Running Total Married
  • Running Total Not Married

Not only answering those specific queries, but to produce a report that will allow answering all such type of questions.

share|improve this question

5 Answers 5

up vote 4 down vote accepted

Here is an option that is a little more verbose, but does this in a generic fashion instead of using strict data types. You could of course use generics to make this nicer, but i think you get the idea.

/** Creates a new pivot structure by finding correlated values 
  * and performing an operation on these values
  *
  * @param accuOp the accumulator function (e.g. sum, max, etc)
  * @param xCol the "x" axis column
  * @param yCol the "y" axis column
  * @param accuCol the column to collect and perform accuOp on
  * @return a new Pivot instance that has been transformed with the accuOp function
  */
def doPivot(accuOp: List[String] => String)(xCol: String, yCol: String, accuCol: String) = {
  // create list of indexes that correlate to x, y, accuCol
  val colsIdx = List(xCol, yCol, accuCol).map(headers.getOrElse(_, 1))

  // group by x and y, sending the resulting collection of
  // accumulated values to the accuOp function for post-processing
  val data = body.groupBy(row => {
    (row(colsIdx(0)), row(colsIdx(1)))
  }).map(g => {
    (g._1, accuOp(g._2.map(_(colsIdx(2)))))
  }).toMap

  // get distinct axis values
  val xAxis = data.map(g => {g._1._1}).toList.distinct
  val yAxis = data.map(g => {g._1._2}).toList.distinct

  // create result matrix
  val newRows = yAxis.map(y => {
    xAxis.map(x => {
      data.getOrElse((x,y), "")
    })
  })

 // collect it with axis labels for results
 Pivot(List((yCol + "/" + xCol) +: xAxis) :::
   newRows.zip(yAxis).map(x=> {x._2 +: x._1}))
}

my Pivot type is pretty basic:

class Pivot(val rows: List[List[String]]) {

  val headers = rows.head.zipWithIndex.toMap
  val body    = rows.tail
  ...
}

And to test it, you could do something like this:

val marriedP = Pivot(
  List(
    List("Name", "Age", "Married"),
    List("Bill", "42", "TRUE"),
    List("Heloise", "47", "TRUE"),
    List("Thelma", "34", "FALSE"),
    List("Bridget", "47", "TRUE"),
    List("Robert", "42", "FALSE"),
    List("Eddie", "42", "TRUE")

  )
)

def accum(values: List[String]) = {
    values.map(x => {1}).sum.toString
}
println(marriedP + "\n")
println(marriedP.doPivot(accum)("Age", "Married", "Married"))

Which yields:

Name     Age      Married  
Bill     42       TRUE     
Heloise  47       TRUE     
Thelma   34       FALSE    
Bridget  47       TRUE     
Robert   42       FALSE    
Eddie    42       TRUE     

Married/Age  47           42           34           
TRUE         2            2                         
FALSE                     1            1 

The nice thing is that you can use currying to pass in any function for the values like you would in a traditional excel pivot table.

More can be found here: https://github.com/vinsonizer/pivotfun

share|improve this answer

I'm working on this recently and i've put my code onto git hub. here's the address, hope that help. https://github.com/salutonmondo/swingReport.git Of course it's not complete yet, i'll continue updating it. here's a screen shot enter image description here

enter image description here

enter image description here

if you have any question about the code. feel free to contact me at. 13071273170@163.com

share|improve this answer

You can group using a tuple:

val res1 = people.groupBy(p => (p.age, p.isMarried)) //or
val res2 = people.groupBy(p => (p.age, p.isMarried)).mapValues(_.size) //if you dont care about People instances

You can answer both question like that:

res2.getOrElse((30, true), 0)
res2.filter{case (k, _) => k._1 > 30 && k._2}.values.sum
res2.filterKeys(k => k._1 > 30 && k._2).values.sum // nicer with filterKeys from Rex Kerr's answer

You could answer both questions with a method count on List:

people.count(p => p.age == 30 && p.isMarried)
people.count(p => p.age > 30 && p.isMarried)

Or using filter and size:

people.filter(p => p.age == 30 && p.isMarried).size
people.filter(p => p.age > 30 && p.isMarried).size

edit: slightly cleaner version of your code:

TreeMap(peopleByAge.toSeq: _*).map {case (age, ps) =>
    val (married, notMarried) = ps.span(_.isMarried)
    (age, married.size, notMarried.size)
  }.foldLeft(List[FinalResult]()) { case (acc, (age, married, notMarried)) =>
    def prevValue(f: (FinalResult) => Int) = acc.headOption.map(f).getOrElse(0)
    new FinalResult(age, married, notMarried, prevValue(_.cumMarried) + married, prevValue(_.cumNotMarried) + notMarried) :: acc
  }.reverse 
share|improve this answer

You can

val groups = people.groupBy(p => (p.age, p.isMarried))

and then

val thirty_and_married = groups((30, true))._2
val over_thirty_and_married_count = 
  groups.filterKeys(k => k._1 > 30 && k._2).map(_._2.length).sum
share|improve this answer
    
shouldn't it be filterKeys(_._1 > 30 && _.2)? –  rjsvaljean Oct 19 '12 at 19:28
    
@rjsvaljean - Yes, thanks, typoed that. Fixed now. –  Rex Kerr Oct 19 '12 at 20:16

I think it would be better to use the count method on Lists directly

For question 1

people.count { p => p.age == 30 && p.isMarried }

For question 2

people.count { p => p.age > 30 && p.isMarried }

If you also want to actual groups of people who conform to those predicates use filter.

people.filter { p => p.age > 30 && p.isMarried }

You could probably optimise these by doing the traversal only once but is that a requirement?

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.