I have data in a parquet file which has 2 fields:
object_id: String and
It is read into a data frame in sparkSQL and the schema looks like this:
scala> alphaDF.printSchema() root |-- object_id: string (nullable = true) |-- ALPHA: map (nullable = true) | |-- key: string | |-- value: struct (valueContainsNull = true)
I am using Spark 2.0 and I am trying to create a new data frame in which columns need to be
object_id plus keys of the
ALPHA map as in
object_id, key1, key2, key2, ...
I was first trying to see if I could at least access the map like this:
scala> alphaDF.map(a => a(0)).collect() <console>:32: error: Unable to find encoder for type stored in a Dataset. Primitive types (Int, String, etc) and Product types (case classes) are supported by importing spark.implicits._ Support for serializing other types will be added in future releases. alphaDF.map(a => a(0)).collect()
but unfortunately I can't seem to be able to figure out how to access the keys of the map.
Can someone please show me a way to get the
object_id plus map keys as column names and map values as respective values in a new dataframe?