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Trying to join 6 tables which are having 5 million rows approximately in each table. Trying to join on account number which is sorted in ascending order on all tables. Map tasks are successfully finished and reducers stopped working at 66.68%. Tried options like increasing number of reducers and also tried other options set = true; and set hive.hashtable.max.memory.usage = 0.9; and set hive.smalltable.filesize = 25000000L; but the result is same. Tried with small number of records (like 5000 rows) and the query works really well.

Please suggest what can be done here to make it work.

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Do you have any account numbers which have a dis-proportionality large number of records across the tables. Are the tables sorted prior to the join - so you can possible exploit map-side joins?). Is one of the tables considerably larger than the other tables (is that large table listed last in the join?) – Chris White Jan 5 '13 at 14:27

For debugging this now, and in the future, you could use the JobTracker to find and examine the logs for the Reducer(s) in question. You can then instrument the reduce operation to get a better handle as to what's going on. be careful you don't blow it up with logging of course! Try looking at the number of records input to the reduce operation for example.

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Thanks all for the quick response. Is there anyway to know joins are happening map side only? From Logs or any other means? – Venkat Ankam Jan 8 '13 at 1:20
We broke the join into 2 separate joins (joining 1st 3 and last 3 tables) and outputs are joined in 3rd join. It perfectly worked!!! – Venkat Ankam Jan 16 '13 at 2:11
for map-side joins: the job log usually shows you if it does this automatically. I think it needs smallish datasets - a few thousand records - as its going to distribute the data to the Tasks via Distributed Cache. – rgordon0 Mar 29 '13 at 16:41

Reducers at 66% start doing the actual reduce (0-33% is shuffle, 33-66% is sort). In a join with hive, the reducer is performing a Cartesian product between the two data sets.

I'm going to guess that there is at least one foreign key that is appearing frequently in all of the data sets. Watch for NULL and default values.

For example, in a join, imagine the key "abc" appears ten times in each of the six tables (10^6). That's a million output records for that one key. If "abc" appears 1000 times in one table, 1000 in another, 1000 in another, then twice in the other three tables, you get 8 billion records (1000^3 * 2^3). You can see how this gets out of hand. I'm guessing there is at least one key that is resulting in a massive number of output records.

This is general good practice to avoid in RDBMS outside of Hive as well. Doing multiple inner joins between many-to-many relationships can get you in a lot of trouble.

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