1

I am running Hive insert overwrite query on the Google dataproc cluster from a table having

 13783531 

records to the another partitioned table without any transformation. which fails with the error

Diagnostic Messages for this Task:
Error: Java heap space

FAILED: Execution Error, return code 2 from 
org.apache.hadoop.hive.ql.exec.mr.MapRedTask
MapReduce Jobs Launched: 
Stage-Stage-1: Map: 34   Cumulative CPU: 1416.18 sec   HDFS Read: 6633737937 
HDFS Write: 0 FAIL

cluster details

n1-standard-16 (16 vCPU, 60.0 GB memory)

with 5 worker nodes.

The error varies between Java heap space and GC overhead limit exceeded. I tried setting the param

set mapreduce.map.memory.mb=7698;
set mapreduce.reduce.memory.mb=7689;
set mapreduce.map.java.opts=-Xmx7186m;
set mapreduce.reduce.java.opts=-Xmx7186m;

Still Fails.

  • is your table table in parquet format? – hlagos Apr 19 '17 at 2:16
  • @lake The table is in text format – Vishal Apr 19 '17 at 8:09
  • both tables? if that is the case, could you make sure that the source table files are valid? for example, not a big line with all the data? – hlagos Apr 19 '17 at 15:57
  • In your example of setting params, you have java.opts correctly less than memory.mb for map but reversed for reduce; was that just a typo in the question, or did you actually have them reversed in hive? – Dennis Huo Apr 20 '17 at 17:15
1

There's a couple of things you need to address here:

Total JVM memory allocated vs. JVM heap memory

The total JVM memory allocated is set through these parameters:

mapreduce.map.memory.mb
mapreduce.reduce.memory.mb

The JVM heap memory is set through these parameters:

mapreduce.map.java.opts
mapreduce.reduce.java.opts

You must always ensure that Total memory > heap memory. (Notice that this rule is violated in the parameter values you provided)

Total-to-heap ratio

One of our vendors recommended that we should, for the most part, always use roughly 80% of the total memory for heap. Even with this recommendation you will often encounter various memory errors.

Error: heap memory

Probably need to increase both total and heap.

Error: Permgen space not enough

Need to increase the off-heap memory which means you might be able to decrease the heap memory without having to increase the total memory.

Error: GC overhead limit exceeded

This refers to the amount of time that the JVM is allowed to garbage collect. If too little space is received in a very long time, then it will proceed to error out. Try increasing both total and heap memory.

  • I did the required changes between the heap memory and JVM memory but looks like the changes doesn't reflect in the DataProc cluster , the config remain same as they were while setting up the cluster. Is there any way we can update the configs by setting that up in job level.? – Vishal Apr 20 '17 at 6:18
  • These configuration will change your Hive memory configurations. If you are you using Tez or something other similar query engine, then you'll have to refer to that query engine's documentation to determine what parameters you need set. – DrV Apr 20 '17 at 13:59
1

So the issue was insert overwrite was trying to create too many small files. seems we have a fix

 set hive.optimize.sort.dynamic.partition=true;

https://community.hortonworks.com/articles/89522/hive-insert-to-dynamic-partition-query-generating.html

There are two Solution available both of them worked

1. use    set hive.optimize.sort.dynamic.partition=true;

or

2. use DISTRIBUTE BY <PARTITION_COLUMN>

any of these will work. It is better not to use Solution #1.Seems the JIRA says it inserts records into the wrong partition when used with GROUP BY that is why it was disabled by default in the recent hive https://issues.apache.org/jira/browse/HIVE-8151

Your Answer

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

Not the answer you're looking for? Browse other questions tagged or ask your own question.