I would like to debate if PlayORM's virtual partitioning is the best way to partition data always, as compared to Cassandra's partitioning.
- Device ID
- Device Name
- Device Owner
For a TimeStamp, there are 500 K rows, and for a particular Device ID, there are 10 K rows
If I want to partition on 2 columns, say TimeStamp and Device ID. I have following ways this could be done:
- Use PlayORM to 'virtual' partition on both columns, such that data for any virtual partition by any column is distributed on all nodes.
- Use Cassandra's built in partitioning support for one of the columns, and use PlayORM's approach to create 'virtual' partitioning on other columns.
If 'Device ID' was partitioned the 'Cassandra' way, then all the records for a particular 'Device ID' will be stored in disk at contiguous location, and one could carry on with virtual partitioning approach for 'TimeStamp' as playorm does. The reason I may prefer this over PlayORM's approach is that with Cassandra's partition approach, all records of a particular Device ID can be fetched fast if they are in physically contiguous locations on disk, since they are less in numbers (10K only). This may be better than PlayORM's all out approach to distribute records for all partition evenly on nodes, since then the data would be randomly distributed on disk, resulting in many disk seeks, and obviously that would slow things down. So even though in PlayORM's approach, we are doing divide and conquer kind of solution by dividing the rows among nodes in cluster, the speedup due to divide and conquer may be offset by high disk seeks because rows could be randomly scattered all over the node (as against Cassandra's partition, where it would be all together).
Does the above seem to be a valid point, or is there some fault in my understanding?