# Complex multi-dimensional list operations in Scala

Given a list such as the following:

``````val dane = List(
("2011-01-04", -137.76),
("2011-01-04", 2376.45),
("2011-01-04", -1.70),
("2011-01-04", -1.70),
("2011-01-04", -1.00),
// ... skip a few ...
("2011-12-22", -178.02),
("2011-12-29", 1800.82),
("2011-12-23", -83.97),
("2011-12-24", -200.00),
("2011-12-24", -30.55),
("2011-12-30", 728.00)
)
``````

I'd like to sum the values (i.e. the second item of the inner lists) of a specific month (e.g. January, or `01`), using the following operations in the specified order:

1. `groupBy`
2. `slice`
3. `collect`
4. `sum`
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Shouldn't this have the "homework" tag? The best solution is not to use the exact operations in the order you specified; the only reason to use those that way would be as a homework exercise. –  Rex Kerr Jan 21 '11 at 11:48
"use groupBy, slice , collect, sum in this order"... Seems a bit restrictive; So who's setting homework in Scala nowadays? –  Kevin Wright Jan 21 '11 at 11:48
@Rex beat me to the observation by about 1 second :) –  Kevin Wright Jan 21 '11 at 11:49
What is/are "all monthy in whay"? Are you trying to state that you need to list all values in January along with their sum? –  Kevin Wright Jan 21 '11 at 11:51
@Rex it's not a bad reason, maybe I'll just nibble at the lining a bit... –  Kevin Wright Jan 21 '11 at 12:25

I'm feeling contrary, so here's an answer that uses NONE of the prescribed methods: `groupBy`, `slice`, `collect` or `sum`

Avoiding `collect` was the hardest part, `condOpt`/`flatten` is just so much uglier...

``````val YMD = """(\d\d\d\d)-(\d\d)-(\d\d)""".r

import PartialFunction._

(dane map {
condOpt(_:(String,Double)){ case (YMD(_,"01",_), v) => v }
}).flatten reduceLeft {_+_}
``````
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Please check your submission again. It is wrong. :) –  Debilski Jan 21 '11 at 14:29
It worked in the REPL, unless I missed something in the copy/paste –  Kevin Wright Jan 21 '11 at 14:39
With `toMap` you lose all values for one day but the last one. –  Debilski Jan 21 '11 at 15:30
Hah! You're right... I should have spotted that, I've even used it on purpose in the past :) +1 to you sir, answer updated accordingly. –  Kevin Wright Jan 21 '11 at 15:35
@Daniel It is an elegant weapon, for a more civilized age... –  Kevin Wright Jan 22 '11 at 9:49
``````(for((YearMonthDay(_, 1, _), value)<-dane) yield value).sum

object YearMonthDay{
def unapply(dateString:String):Option((Int, Int, Int)) ={
//yes, there should really be some error checking in this extractor
//to return None for a bad date string
val components = dateString.split("-")
Some((components(0).toInt, components(1).toInt, components(2).toInt))
}

}
``````
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I think that's a handy unapply. –  ziggystar Jan 21 '11 at 18:32
Yeah, it's the sort of thing that ends up in most of my projects, but just differently enough that it wouldn't make a good library –  Dave Griffith Jan 21 '11 at 19:09
You spent too much time on that `YearMonthDay`. Try `val YearMonthDay = """(\d+)-(\d+)-(\d+)""".r` and use `"01"` instead of `1` in the map. –  Ken Bloom Jan 21 '11 at 20:09
Nice, but you should have mapped `_.toInt` instead of applying it thrice. –  Daniel C. Sobral Jan 21 '11 at 21:20
+1, just for saying "thrice"... Great word! –  Kevin Wright Jan 25 '11 at 15:00

Now that Kevin has started the trend of contrary answers, here's one you should never use, but gosh, it works! (And avoids every requested method, and will work on any month if you change the string, but it does require that the list be sorted by date.)

``````dane.scanLeft(("2011-01",0.0))((l,r) =>
( l._1,
if ((l._1 zip r._1).forall(x => x._1==x._2)) l._2+r._2 else 0.0
)
``````
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Now that truly is a thing of beauty... It certainly gets my upvote! –  Kevin Wright Jan 21 '11 at 13:12
Haha, well, I would vote that a "-1, silly" if it were on /. (and if they had a silly tag). –  Rex Kerr Jan 21 '11 at 13:51
Why `dropWhile`/`takeWhile` instead of simply `filter`? –  Daniel C. Sobral Jan 21 '11 at 21:22
@Daniel - Sure, filter would work also. I had decided that I wanted the first block if there was more than one, but there's no reason to choose that. I also wasn't trying very hard to write an optimal solution! –  Rex Kerr Jan 21 '11 at 22:03

Break the problem up into smaller steps. Start with trying to split the list into one list for every month. You could use `groupBy` for this. Your first problem will probably be how to parse the date string. A general solution would be to use a custom date class and a regular expression; however a simpler ad-hoc solution of using an indexed substring (or `slice`) could be appropriate in this context.

A general tip would be to load the data into the Scala REPL and play around with it. Good luck.

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+1 for being sensible, someone has to be... –  Kevin Wright Jan 21 '11 at 16:33
And another +1 for that. –  Paul Jan 22 '11 at 9:19
``````import scala.collection.mutable.HashMap
val totals = new HashMap[Int, Double]
for (e <- dane) {
val (date, value) = e
val month = date.drop(5).take(2).toInt
totals(month) = totals.getOrElse(month,0.0) + value
}
``````

Another implementation using none of the suggested functions, and mutable collections and some bastard mix of procedural and functional style avoiding some useful functions :)

`totals` ends up as a map from month number to total.

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You're getting dangerously close to a valid answer there :) –  Kevin Wright Jan 21 '11 at 13:43
I abjectly seek your forgiveness :-P –  Paul Jan 21 '11 at 13:48
Consider it granted :) –  Kevin Wright Jan 21 '11 at 14:43

So, here's an idea:

• `groupBy`, because you need to group data from each month together
• `slice`, because you need to see which is the month of the date
• `collect`, because you need to `filter` by month and `map` to value
• `sum`, mmmm... I'm not sure where this one comes in. Any ideas?
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I refuse to obfuscate `sum`.

``````import org.joda.time.DateMidnight
for (month <- 1 to 12) yield {
dane map { case (d,v) => new DateMidnight(d).getMonthOfYear -> v }
filter { case (m, v) => m == month }
map (_._2)
sum
}
``````
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+1 for use of jodatime, by far the nicest way to deal with dates. –  Kevin Wright Jan 21 '11 at 15:19
``````dane.groupBy (_._1.matches (".*-01-.*")).slice (0, 1).map (x => x._2).flatten .map (y => y._2).sum
``````

I really should look up 'collect', which somehow should replace my map/flatten/map.

My result is: Double = 2234.29

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