This link may help: https://forums.databricks.com/questions/6747/how-do-i-get-a-cartesian-product-of-a-huge-dataset.html
Spark 1.6 had improved the CatesianProduct, you should turn of auto broadcast and go with CatesianProduct in 1.6 On Mon, Feb 22, 2016 at 1:45 AM, Mohannad Ali <man...@gmail.com> wrote: > Hello everyone, > > I'm working with Tamara and I wanted to give you guys an update on the > issue: > > 1. Here is the output of .explain(): >> >> Project >> [sk_customer#0L,customer_id#1L,country#2,email#3,birthdate#4,gender#5,fk_created_at_date#6,age_range#7,first_name#8,last_name#9,inserted_at#10L,updated_at#11L,customer_id#25L >> AS new_customer_id#38L,country#24 AS new_country#39,email#26 AS >> new_email#40,birthdate#29 AS new_birthdate#41,gender#31 AS >> new_gender#42,fk_created_at_date#32 AS >> new_fk_created_at_date#43,age_range#30 AS new_age_range#44,first_name#27 AS >> new_first_name#45,last_name#28 AS new_last_name#46] >> BroadcastNestedLoopJoin BuildLeft, LeftOuter, Some((((customer_id#1L = >> customer_id#25L) || (isnull(customer_id#1L) && isnull(customer_id#25L))) && >> ((country#2 = country#24) || (isnull(country#2) && isnull(country#24))))) >> Scan >> PhysicalRDD[country#24,customer_id#25L,email#26,first_name#27,last_name#28,birthdate#29,age_range#30,gender#31,fk_created_at_date#32] >> Scan >> ParquetRelation[hdfs:///databases/dimensions/customer_dimension][sk_customer#0L,customer_id#1L,country#2,email#3,birthdate#4,gender#5,fk_created_at_date#6,age_range#7,first_name#8,last_name#9,inserted_at#10L,updated_at#11L] > > > 2. Setting spark.sql.autoBroadcastJoinThreshold=-1 didn't make a difference. > It still hangs indefinitely. > 3. We are using Spark 1.5.2 > 4. We tried running this with 4 executors, 9 executors, and even in local > mode with master set to "local[4]". The issue still persists in all cases. > 5. Even without trying to cache any of the dataframes this issue still > happens,. > 6. We have about 200 partitions. > > Any help would be appreciated! > > Best Regards, > Mo > > On Sun, Feb 21, 2016 at 8:39 PM, Gourav Sengupta <gourav.sengu...@gmail.com> > wrote: >> >> Sorry, >> >> please include the following questions to the list above: >> >> the SPARK version? >> whether you are using RDD or DataFrames? >> is the code run locally or in SPARK Cluster mode or in AWS EMR? >> >> >> Regards, >> Gourav Sengupta >> >> On Sun, Feb 21, 2016 at 7:37 PM, Gourav Sengupta >> <gourav.sengu...@gmail.com> wrote: >>> >>> Hi Tamara, >>> >>> few basic questions first. >>> >>> How many executors are you using? >>> Is the data getting all cached into the same executor? >>> How many partitions do you have of the data? >>> How many fields are you trying to use in the join? >>> >>> If you need any help in finding answer to these questions please let me >>> know. From what I reckon joins like yours should not take more than a few >>> milliseconds. >>> >>> >>> Regards, >>> Gourav Sengupta >>> >>> On Fri, Feb 19, 2016 at 5:31 PM, Tamara Mendt <t...@hellofresh.com> wrote: >>>> >>>> Hi all, >>>> >>>> I am running a Spark job that gets stuck attempting to join two >>>> dataframes. The dataframes are not very large, one is about 2 M rows, and >>>> the other a couple of thousand rows and the resulting joined dataframe >>>> should be about the same size as the smaller dataframe. I have tried >>>> triggering execution of the join using the 'first' operator, which as far >>>> as >>>> I understand would not require processing the entire resulting dataframe >>>> (maybe I am mistaken though). The Spark UI is not telling me anything, just >>>> showing the task to be stuck. >>>> >>>> When I run the exact same job on a slightly smaller dataset it works >>>> without hanging. >>>> >>>> I have used the same environment to run joins on much larger dataframes, >>>> so I am confused as to why in this particular case my Spark job is just >>>> hanging. I have also tried running the same join operation using pyspark on >>>> two 2 Million row dataframes (exactly like the one I am trying to join in >>>> the job that gets stuck) and it runs succesfully. >>>> >>>> I have tried caching the joined dataframe to see how much memory it is >>>> requiring but the job gets stuck on this action too. I have also tried >>>> using >>>> persist to memory and disk on the join, and the job seems to be stuck all >>>> the same. >>>> >>>> Any help as to where to look for the source of the problem would be much >>>> appreciated. >>>> >>>> Cheers, >>>> >>>> Tamara >>>> >>> >> > --------------------------------------------------------------------- To unsubscribe, e-mail: user-unsubscr...@spark.apache.org For additional commands, e-mail: user-h...@spark.apache.org