Ganesha Shreedhara created HIVE-20220:
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             Summary: Incorrect result when hive.groupby.skewindata is enabled
                 Key: HIVE-20220
                 URL: https://issues.apache.org/jira/browse/HIVE-20220
             Project: Hive
          Issue Type: Bug
            Reporter: Ganesha Shreedhara


hive.groupby.skewindata makes use of rand UDF to randomly distribute grouped by 
keys to the reducers and hence avoids overloading a single reducer when there 
is a skew in data. 

This random distribution of keys is buggy when the reducer fails to fetch the 
mapper output due to a faulty datanode or any other reason. When reducer finds 
that it can't fetch mapper output, it sends a signal to Application Master to 
reattempt the corresponding map task. The reattempted map task will now get the 
different random value from rand function and hence the keys that gets 
distributed now to the reducer will not be same as the previous run. 

 

*Steps to reproduce:*

create table test(id int);

insert into test values 
(1),(2),(2),(3),(3),(3),(4),(4),(4),(4),(5),(5),(5),(5),(5),(6),(6),(6),(6),(6),(6),(7),(7),(7),(7),(7),(7),(7),(7),(8),(8),(8),(8),(8),(8),(8),(8),(9),(9),(9),(9),(9),(9),(9),(9),(9);

SET hive.groupby.skewindata=true;

SET mapreduce.reduce.reduces=2;

//Add a debug port for reducer

select count(1) from test group by id;

//Remove mapper's intermediate output file when map stage is completed and one 
out of 2 reduce tasks is completed and then continue the run. This causes 2nd 
reducer to send event to Application Master to rerun the map task. 

The following is the expected result. 

1
2
3
4
5
6
8
8
9 

 

But you may get different result due to a different value returned by the rand 
function in the second run causing different distribution of keys.

This needs to be fixed such that the mapper distributes the same keys even if 
it is reattempted multiple times. 



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