I have a hive query which runs in map-reduce mode per day. The total processing time takes 20 mins which is fine as per our daily process. I am looking to execute in spark-framework.
To begin with, I have set the execution engine=spark in the hive shell and executed the same query.
The process had transformations and actions and the whole query completed around 8 mins. This query has multpile subqueries, IN Clauses and where conditions. The question is, how does the spark-environment creates RDDs complex queries(Assume that I have just run the same query as in hive).Does it create RDD for each subqueries?
Now I would want to leverage spark-sql in place of the hive query. How should we approach these kind of complex where in we have lot of subqueries and aggregations involved. I understand that for relational data computations, we need to leverage data frames.
Would this be a right approach in re-writing them in spark-sql or hold on to the thing which is setting the execution engine = spark and running the hive query. In case if there are advantages in writing the queries in spark-sql and running on the spark, what would be the advantages.
For all the subqueries and various filter and aggregation logics,what would be performance for data frame APIs.