-2

Is there any method, where i can add a json object to already existing json object array:

I have a dataframe:

+-------------------------+---------------------------------------------------------+------------+
|   name                  |       hit_songs                                         |  column1   |
+-------------------------+---------------------------------------------------------+------------+
|{"HomePhone":"34567002"} | [{"Phonetypecode":"PTC001"},{"Phonetypecode":"PTC002"}] | value1     |
|{"HomePhone":"34567011"} | [{"Phonetypecode":"PTC021"},{"Phonetypecode":"PTC022"}] |  value2    |
+-------------------------+---------------------------------------------------------+------------+ 

I want a resulting dataframe as:

+---------------------------------------------------------------------------------+------------+
|   name                                                                                column1  
+------------------------------------------------------------------------------------+------------+
|[ {"HomePhone":"34567002"},{"Phonetypecode":"PTC001"},{"Phonetypecode":"PTC002"} ] |  value1     |
|[ {"HomePhone":"34567011"},{"Phonetypecode":"PTC021"},{"Phonetypecode":"PTC022"} ] |   value2    |
+-------------------------+---------------------------------------------------------++------------+
1
  • 1
    What are you trying to achieve? Can you show what you need in dataframes because I assume ultimately you want data in table format and not json. May 16 '20 at 14:52
1

Use array_union function.

name is of type string, to convert this column to array type use array

Check below code.

scala> df.show(false)
+------------------------+-------------------------------------------------------+
|name                    |hit_songs                                              |
+------------------------+-------------------------------------------------------+
|{"HomePhone":"34567002"}|[{"Phonetypecode":"PTC001"},{"Phonetypecode":"PTC002"}]|
|{"HomePhone":"34567011"}|[{"Phonetypecode":"PTC021"},{"Phonetypecode":"PTC022"}]|
+------------------------+-------------------------------------------------------+


scala> df.withColumn("name",array_union(array($"name"),$"hit_songs")).show(false) // Use array_union function, to join name string column with hit_songs array column, first convert name to array(name).
+---------------------------------------------------------------------------------+-------------------------------------------------------+
|name                                                                             |hit_songs                                              |
+---------------------------------------------------------------------------------+-------------------------------------------------------+
|[{"HomePhone":"34567002"}, {"Phonetypecode":"PTC001"},{"Phonetypecode":"PTC002"}]|[{"Phonetypecode":"PTC001"},{"Phonetypecode":"PTC002"}]|
|[{"HomePhone":"34567011"}, {"Phonetypecode":"PTC021"},{"Phonetypecode":"PTC022"}]|[{"Phonetypecode":"PTC021"},{"Phonetypecode":"PTC022"}]|
+---------------------------------------------------------------------------------+-------------------------------------------------------+
scala> df.show(false)
+------------------------+-------------+-------------------------------------------------------+
|name                    |dammy        |hit_songs                                              |
+------------------------+-------------+-------------------------------------------------------+
|{"HomePhone":"34567002"}|{"aaa":"aaa"}|[{"Phonetypecode":"PTC001"},{"Phonetypecode":"PTC002"}]|
|{"HomePhone":"34567011"}|{"bbb":"bbb"}|[{"Phonetypecode":"PTC021"},{"Phonetypecode":"PTC022"}]|
+------------------------+-------------+-------------------------------------------------------+


scala> df.printSchema
root
 |-- name: string (nullable = true)
 |-- dammy: string (nullable = true)
 |-- hit_songs: array (nullable = true)
 |    |-- element: string (containsNull = true)


scala> df.withColumn("name",array_union(array_union(array($"name"),$"hit_songs"),array($"dammy"))).show(false)

+---------------------------------------------------------------------------------+-------------+-------------------------------------------------------+
|name                                                                             |dammy        |hit_songs                                              |
+---------------------------------------------------------------------------------+-------------+-------------------------------------------------------+
|[{"HomePhone":"34567002"}, {"Phonetypecode":"PTC001"},{"Phonetypecode":"PTC002"}]|{"aaa":"aaa"}|[{"Phonetypecode":"PTC001"},{"Phonetypecode":"PTC002"}]|
|[{"HomePhone":"34567011"}, {"Phonetypecode":"PTC021"},{"Phonetypecode":"PTC022"}]|{"bbb":"bbb"}|[{"Phonetypecode":"PTC021"},{"Phonetypecode":"PTC022"}]|
+---------------------------------------------------------------------------------+-------------+-------------------------------------------------------+

21
  • what if we want to add as a third column? May 16 '20 at 15:23
  • Sir, actually i have more columns other than name and hit_songs.i want them to remain intact and this joined array column should be there.I have updated the question dataframe. please cheeck May 16 '20 at 15:48
  • ok, I have updated answer, use withColumn & use drop() function to drop not required columns.
    – Srinivas
    May 16 '20 at 15:55
  • let me check it May 16 '20 at 16:02
  • Throwing error: org.apache.spark.sql.AnalysisException cannot resolve 'array_union(array(entitymappingJoinA.phonestruct11), entitymappingJoinA.phonestruct11)' due to data type mismatch: input to function array_union should have been two arrays with same element type, but it's [array<struct<id:string,homephone:string,homephoneextension:string,workphone:string,workphoneextension:string,cellphone:string,cellphoneextension:string>>, struct<id:string,homephone:string,homephoneextension:string,workphone:string,workphoneextension:string,cellphone:string,cellphoneextension:string>];; May 16 '20 at 16:52

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.