spark-user mailing list archives

Site index · List index
Message view « Date » · « Thread »
Top « Date » · « Thread »
From Adrian Tanase <>
Subject Re: repartition vs partitionby
Date Sat, 17 Oct 2015 20:25:33 GMT
If the dataset allows it you can try to write a custom partitioner to help spark distribute
the data more uniformly.

Sent from my iPhone

On 17 Oct 2015, at 16:14, shahid ashraf <<>>

yes i know about that,its in case to reduce partitions. the point here is the data is skewed
to few partitions..

On Sat, Oct 17, 2015 at 6:27 PM, Raghavendra Pandey <<>>
You can use coalesce function, if you want to reduce the number of partitions. This one minimizes
the data shuffle.


On Sat, Oct 17, 2015 at 1:02 PM, shahid qadri <<>>
Hi folks

I need to reparation large set of data around(300G) as i see some portions have large data(data

i have pairRDDs [({},{}),({},{}),({},{})]

what is the best way to solve the the problem
To unsubscribe, e-mail:<>
For additional commands, e-mail:<>

with Regards
Shahid Ashraf
View raw message