My Cassandra database has timeseries data stored stored for different tags(there are 100 tags) for every machine (and 1000 machines in total) for every ten minute timestamp. I want to perform analytics on particular days data using Spark. Database contains data from past two years that's a huge amount of data.


this is my code todays() fuction filters data based on todays date. Above code is taking lot of time (it has never produced a result actually) where am i doing wrong. Is there any better way to get this data.

This is my table schema,

machine_id text,
tag text,
timestamp timestamp,
value double,
PRIMARY KEY (( machine_id, tag ), timestamp)
  • 3
    Without the table schema it's hard to know if you can do better – RussS Mar 10 '17 at 7:55
  • thanks for the early reply. I added the schema, can you help me with that now?? – manoj jangam Mar 10 '17 at 8:52
  • Do you have any exception when doing your request? Can you take a look at your logs to see if everything is working fine? – Maximilien Belinga Mar 10 '17 at 12:02
  • With this layout I think every request is necessarily a Full Table Scan. You need to read every partition key to determine whether or not it contains the necessary tag. The composite key means you can't push anything to Cassandra so you'll end up reading entire partitions that are not relevant. – RussS Mar 10 '17 at 17:36
  • @M.Situation there are no errors every thing is working fine. only issue is it is taking time – manoj jangam Mar 13 '17 at 6:41

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.