Extending upon use case given here: How to avoid duplicate columns after join?
I have two dataframes with the 100s of columns. Following are some samples with join columns:
df1.columns
// Array(ts, id, X1, X2, ...)
and
df2.columns
// Array(ts, id, X1, Y2, ...)
After I do:
val df_combined = df1.join(df2, df1.X1===df2.X1 and df1.X2==df2.Y2)
I end up with the following columns: Array(ts, id, X1, X2, ts, id, X1, Y2)
. X1
is duplicated.
I can't use join(right: Dataset[_], usingColumns: Seq[String])
api as to use this api all columns must be there in both dataframe which is not the case here (X2
and Y2
). Only option I see is to rename a column and drop column later or to alias dataframe and drop column later from 2nd dataframe.
Isn't there a simple api to achieve this? E.g. automatically drop one of the join column in case of equality join.