1

I have a "capacity" dataframe:

scala> sql("create table capacity (id String, capacity Int)");
scala> sql("insert into capacity values ('A', 50), ('B', 100)");
scala> sql("select * from capacity").show(false)

+---+--------+
|id |capacity|
+---+--------+
|A  |50      |
|B  |100     |
+---+--------+

I have another "used" dataframe with following information:

scala> sql ("create table used (id String, capacityId String, used Int)");
scala> sql ("insert into used values ('item1', 'A', 10), ('item2', 'A', 20), ('item3', 'A', 10), ('item4', 'B', 30), ('item5', 'B', 40), ('item6', 'B', 40)")
scala> sql("select * from used order by capacityId").show(false)

+-----+----------+----+
|id   |capacityId|used|
+-----+----------+----+
|item1|A         |10  |
|item3|A         |10  |
|item2|A         |20  |
|item6|B         |40  |
|item4|B         |30  |
|item5|B         |40  |
+-----+----------+----+

Column "capacityId" of the "used" dataframe is foreign key to column "id" of the "capacity" dataframe. I want to calculate the "capacityLeft" column which is residual amount at that point of time.

+-----+----------+----+--------------+
|id   |capacityId|used| capacityLeft |
+-----+----------+----+--------------+
|item1|A         |10  |40            |  <- 50(capacity of 'A')-10
|item3|A         |10  |30            |  <- 40-10
|item2|A         |20  |10            |  <- 30-20
|item6|B         |40  |60            |  <- 100(capacity of 'B')-40
|item4|B         |30  |30            |  <- 60-30
|item5|B         |40  |-10           |  <- 30-40
+-----+----------+----+--------------+

In real senario, the "createdDate" column is used for ordering of "used" dataframe column.

Spark version: 2.2

0

1 Answer 1

1

This can be solved by using window functions in Spark. Note that for this to work there need to exist a column that keep track of the row order for each capacityId.

Start by joining the two dataframes together:

val df = used.join(capacity.withColumnRenamed("id", "capacityId"), Seq("capacityId"), "inner")

Here the id in the capacity dataframe is renamed to match the id name in the used dataframe as to not keep a duplicate columns.

Now create a window and calculate the cumsum of the used column. Take the value of the capacity and subtract the cumsum to get the remaining amount:

val w = Window.partitionBy("capacityId").orderBy("createdDate")
val df2 = df.withColumn("capacityLeft", $"capacity" - sum($"used").over(w))

Resulting dataframe with example createdDate column:

+----------+-----+----+-----------+--------+------------+
|capacityId|   id|used|createdDate|capacity|capacityLeft|
+----------+-----+----+-----------+--------+------------+
|         B|item6|  40|          1|     100|          60|
|         B|item4|  30|          2|     100|          30|
|         B|item5|  40|          3|     100|         -10|
|         A|item1|  10|          1|      50|          40|
|         A|item3|  10|          2|      50|          30|
|         A|item2|  20|          3|      50|          10|
+----------+-----+----+-----------+--------+------------+

Any unwanted columns can now be removed with drop.

1
  • 1
    Thanks. It is giving me desired output.
    – user811602
    Nov 20, 2018 at 9:48

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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