I have a wide phoenix table with > 159 cols and around 60mil recs which I am accessing through spark and reading into spark dataframe and then performing many analytical functions. In the end however when i try to write this processed dataframe with only 7 mils recs to another table in Phoenix using "df.write" but its very slow. It takes 58 mins to write this data. My question is, is there a better way to write data from spark dataframe to phoenix table? Please suggest.

  • can you run pure SQL? you could to a UPSERT SELECT. I was able to upload 2 million records to a temporary table and UPSERT SELECT to another table in about 8 minutes (3 data nodes). Maybe that's the trick to use UPSERT SELECT – Paul Bastide Jun 1 '17 at 3:27
  • Thanks Paul; I am however doing many analytical operations that are best done in Spark dataframe like "windowing"; and then load this df to a table n phoenix; I agree on the upsert part; its pretty fast. But do we have a fast way to save df in phonix – birjoossh Jun 1 '17 at 4:09

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.