1

Is there any way to transpose dataframe rows into columns. I have following structure as a input:

val inputDF = Seq(("pid1","enc1", "bat"),
                  ("pid1","enc2", ""),
                  ("pid1","enc3", ""),
                  ("pid3","enc1", "cat"),
                  ("pid3","enc2", "")
              ).toDF("MemberID", "EncounterID", "entry" )

inputDF.show:

+--------+-----------+-----+
|MemberID|EncounterID|entry|
+--------+-----------+-----+
|    pid1|       enc1|  bat|
|    pid1|       enc2|     |
|    pid1|       enc3|     |
|    pid3|       enc1|  cat|
|    pid3|       enc2|     |
+--------+-----------+-----+

expected result:

+--------+----------+----------+----------+-----+
|MemberID|Encounter1|Encounter2|Encounter3|entry|
+--------+----------+----------+----------+-----+
|    pid1|      enc1|      enc2|      enc3|  bat|
|    pid3|      enc1|      enc2|      null|  cat|
+--------+----------+----------+----------+-----+

Please suggest if there is any optimized direct API available for transposing rows into columns. my input data size is quite huge, so actions like collect, I wont be able to perform as it would take all the data on driver. I am using Spark 2.x

  • What if entry had values for all 3 EncounterID? Can there only be 3 EncounterIDs ? – philantrovert Dec 27 '17 at 12:45
  • entry will have only one value. and yes EncounterID is fixed, there will be only 3 EncounterID. – Kalpesh Dec 27 '17 at 12:53
  • 1
    Are you sure that this is the result you expect? All three Encounter columns always have the same value... – Oli Dec 27 '17 at 12:57
  • Encounter value will change.. I have given this value just for sample. – Kalpesh Dec 27 '17 at 14:42
  • Still not sure what you are trying to do but I updated my answer – Oli Dec 27 '17 at 15:38
2

I am not sure that what you need is what you actually asked. Yet, just in case here is an idea:

val entries = inputDF.where('entry isNotNull)
    .where('entry !== "")
    .select("MemberID", "entry").distinct

val df = inputDF.groupBy("MemberID")
    .agg(collect_list("EncounterID") as "encounterList")
    .join(entries, Seq("MemberID"))
df.show
+--------+-------------------------+-----+
|MemberID|           encounterList |entry|
+--------+-------------------------+-----+
|    pid1|       [enc2, enc1, enc3]|  bat|
|    pid3|             [enc2, enc1]|  cat|
+--------+-------------------------+-----+

The order of the list is not deterministic but you may sort it and then extract new columns from it with .withColumn("Encounter1", sort_array($"encounterList")(0))...

Other idea

In case what you want is to put the value of entry in the corresponding "Encounter" column, you can use a pivot:

inputDF
    .groupBy("MemberID")
    .pivot("EncounterID", Seq("enc1", "enc2", "enc3"))
    .agg(first("entry")).show

+--------+----+----+----+
|MemberID|enc1|enc2|enc3|
+--------+----+----+----+
|    pid1| bat|    |    |
|    pid3| cat|    |    |
+--------+----+----+----+

Adding Seq("enc1", "enc2", "enc3") is optionnal but since you know the content of the column, it will speed up the computation.

  • Sorry, I wont be able to hard code the values, this will be depends what values are there in a column. and there is one more thing I missed to add.. if for particular memberID only 2 rows are availble then code should be able to mark 3rd column as null. .. I will update the question – Kalpesh Dec 27 '17 at 14:47
  • The list of values in the pivot is optionnal. If not provided, spark will simply trigger a small job to retrieve them. – Oli Mar 5 at 16:05

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