Is it possible for us to partition by a column and then cluster by another column in Spark?
In my example I have a month
column and a cust_id
column in a table with millions of rows. Can I say when I save the DataFrame to a hive table to partition the table based on month and cluster by cust_id
into 50 files?
Ignoring the clustering by cust_id
, there are three different options here
df.write.partitionBy("month").saveAsTable("tbl")
df.repartition(100).write.partitionBy("month").saveAsTable("tbl")
df.repartition("month").write.saveAsTable("tbl")
The first case and the last case are similar in what Spark does but I assume it just write the data differently in Hive(folders as opposed to files for each month).
In the second option, the repartition is undone by the partitionBy
isnt it?
How can I avoid this at least?
Is it even possible to say repartition by a high cardinality column by specifying a number of buckets in Spark?