-2

I have a data set test1.txt. It contain data like below

2::1::3
1::1::2
1::2::2
2::1::5
2::1::4
3::1::2
3::1::1
3::2::2

I have created data-frame using the below code.

case class Test(userId: Int, movieId: Int, rating: Float)
def pRating(str: String): Rating = {
val fields = str.split("::")
assert(fields.size == 3)
Test(fields(0).toInt, fields(1).toInt, fields(2).toFloat)
}

val ratings = spark.read.textFile("C:/Users/test/Desktop/test1.txt").map(pRating).toDF()
2,1,3
1,1,2
1,2,2
2,1,5
2,1,4
3,1,2
3,1,1
3,2,2

But I want to print output like below I.e. removing duplicate combinations and instead of field(2) value sum of values1,1, 2.0.

1,1,2.0
1,2,2.0
2,1,12.0
3,1,3.0
3,2,2.0   

Please help me on this, how can achieve this.

  • 1
    dataframe.groupBy("column1","column2").sum("column3") should works – Fabich Nov 13 '17 at 9:38
  • Thanks Its working – Sai Nov 13 '17 at 9:50
3

To drop duplicates, use df.distinct. To aggregate you first groupBy and then agg. Putting this all together:

case class Rating(userId: Int, movieId: Int, rating: Float)

def pRating(str: String): Rating = {
  val fields = str.split("::")
  assert(fields.size == 3)
  Rating(fields(0).toInt, fields(1).toInt, fields(2).toFloat)
}

val ratings = spark.read.textFile("C:/Users/test/Desktop/test1.txt").map(pRating)
val totals = ratings.distinct
  .groupBy('userId, 'movieId)
  .agg(sum('rating).as("rating"))
  .as[Rating]

I am not sure you'd want the final result as Dataset[Rating] and whether the distinct and sum logic is exactly as you'd want it as the example in the question is not very clear but, hopefully, this will give you what you need.

0
ratings.groupBy("userId","movieId").sum(rating) 
  • This code does not satisfy the requirement to remove duplicate rows. You need distinct before groupBy. – Sim Jan 10 '18 at 7:05

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