Take the following example dataframe:
val df = Seq(Seq("xxx")).toDF("a")
Schema:
root
|-- a: array (nullable = true)
| |-- element: string (containsNull = true)
How can I modify df
in-place so that the resulting dataframe is not nullable anywhere, i.e. has the following schema:
root
|-- a: array (nullable = false)
| |-- element: string (containsNull = false)
I understand that I can re-create another dataframe enforcing a non-nullable schema, such as following Change nullable property of column in spark dataframe
spark.createDataFrame(df.rdd, StructType(StructField("a", ArrayType(StringType, false), false) :: Nil))
But this is not an option under structured streaming, so I want it to be some kind of in-place modification.
createDataFrame
is not possible in structured streaming. Are you suggesting re-creating dataframe in aforeachBatch
sink for each micro-batch dataframe?