I'd like to understand what are the overheads involved when a large number of rows which are sequentially stored in disk are fetched in Cassandra (v1.2).
With the following schema:
- TimeStamp
- Device ID
- Device Name
- Device Owner
- Device Color
PKEY (TimeStamp, DeviceID).
Each record is 80 bytes.
I’m trying to fetch all the rows for a particular TimeStamp (partitionID).
Select * from schema where TimeStamp = ‘…’
There are 500K such rows per timestamp. I have figured out that doing pagination would give a much better throughput than trying to fetch all in one shot. So to fetch 500 K rows (40 MB), using page size of 1000 / 10000, it took around 25-30 seconds (I'm using Astyanax). I have following questions:
(A) Will all the data that I’m querying be stored sequentially in disk for a particular TimeStamp (and yes, I’ve run compact command)?
(B) If answer to first qn is yes, then why am I not able to get throughput equal to disk (40 MB/s)? Please note that I’m able to retrieve 40 MB worth of data in 25-30 seconds, which translates to hardly 1.5 MB/s.
(C) If answer to above first question is yes, then could I further speed up the response?
(D) Is serialization / deserialization the culprit for slow throughput? If so, can something be done to avoid it altogether?