I have a large data set in Avro format which needs to be partitioned upon loading. What I currently do is to first load the files and then call repartition() to organize the data to my requirements as shown in the following block:
val df = spark.load.format("com.databricks.spark.avro").load("/mypath")
val partitionedDF = df.repartition(count, col(id))
I was wondering if it is at all possible to change the default partitioner such that by the time I load the avro files no repartition() is needed.
Thanks!