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" )


|    pid1|       enc1|  bat|
|    pid1|       enc2|     |
|    pid1|       enc3|     |
|    pid3|       enc1|  cat|
|    pid3|       enc2|     |

expected result:

|    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

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"))
|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:

    .pivot("EncounterID", Seq("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

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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