In order for us to understand the performance and identify the bottlenecks,
could you do two things:
1) run the EXPLAIN command and share with us the output
2) share with us the hadoop job histories generated by the query. They can
be collected following
http://www.cs.duke.edu/starfish/tutorial/jo
Did you verify that all your available mappers are running (and reducers
too)? If you have a small number of partitions with huge files, you might
me underutilizing mappers (check that the files are being split). Also, it
might be optimal to have a single "wave" of reducers by setting the number
of
Thank you for your answer Nitin.
Does anyone have additional insight into this? will be greatly appreciated.
On Thu, Apr 4, 2013 at 3:39 PM, Nitin Pawar wrote:
> you dont really need subqueries to join the tables which have common
> columns. Its an additional overhead
> best way to filter your
you dont really need subqueries to join the tables which have common
columns. Its an additional overhead
best way to filter your data and speed up your data processing is how you
layout your data
When you have larger table I will use partitioning and bucketing to trim
down the data and improve the