I am trying to classify the data to find which column contains which type of data. After processing the rows I get the following Spark SQL dataset with Schema:

root
 |-- value: map (nullable = true)
 |    |-- key: string
 |    |-- value: array (valueContainsNull = true)
 |    |    |-- element: struct (containsNull = true)
 |    |    |    |-- _1: string (nullable = true)
 |    |    |    |-- _2: integer (nullable = false)

When I select 2 rows it shows me like below:

+----------------------------------------------------------------------------+
| value                                                                      |
+----------------------------------------------------------------------------+
| [col2 -> [[CCNO, 1],[Name,1]], col3 -> [[Email, 1]], col4 -> [[Phone, 2]]] |
| [col2-> [[CCNO, 2]], col3 -> [[Email, 2]], col4 -> [[Phone, 2]]]           |
+----------------------------------------------------------------------------+

I want the following output as Map (summing up elements per column name):

[col2 -> [[CCNO,3],[Name,1]] , col3 -> [[Email,3]] , col4 -> [[Phone, 4]] ]

Basically I want to find in which column I have which type (CCNO,Email etc) and their count.

I am new to Scala and Spark SQL, please help.

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