Your answer is correct that - It really depends on the data and what exactly you want to do with the data.
Partitioning is used for distributing load horizontally in a logical fashion. It optimizes the performance, but sometime it could lead to partition having very less amount of the within them. This results into bad performance, as the
mapreduce works on bigger files than many small files.
bucketing can help, because
bucketing guarantee that all the data for the bucketing column remains together. E.g. if we bucket the
employee table and use
emp_id as the bucketing column, the value of this column will be hashed by a user-defined number of buckets (which must be optimized considering number of records). Records with the same
emp_id will always be stored in the bucket. At the same time, one bucket may have many
emp_id together having a more optimized chunk of data for
bucketing is specially helpful, if you want to perform