3

I am using hive-1.1.0. Submitting queries to HiveServer2 via Beeline which are read-only and contain no predicates will cause HiveServer2 to try to read the data from HDFS itself without spawning a MapReduce job:

SELECT * FROM my_table LIMIT 100;

For very large datasets this can cause HiveServer2 to hold onto a lot of memory leading to long garbage collection pauses. Adding a "fake" predicate will cause HiveServer2 to run the MapReduce job as desired; e.g.

SELECT * FROM my_table WHERE (my_id > 0 OR my_id <= 0) LIMIT 100;

By "fake", I mean a predicate that does not matter; the above example predicate will always be true. Is there a setting to force HiveServer2 to always run the MapReduce job without having to add bogus predicates?

I am not talking about when HiveServer2 determines it can run a MapReduce job locally; I have this disabled entirely:

> SET hive.exec.mode.local.auto;
+----------------------------------+--+
|               set                |
+----------------------------------+--+
| hive.exec.mode.local.auto=false  |
+----------------------------------+--+

but queries without predicates are still read entirely by HiveServer2 causing issues.

Any guidance much appreciated. Thanks!

1 Answer 1

1

Some select queries can be converted to a single FETCH task, without map-reduce at all.

This behavior is controlled by hive.fetch.task.conversion configuration parameter. Possible values are: none, minimal and more.

If you want to disable fetch task conversion, set it to none:

set hive.fetch.task.conversion=none;

minimal will trigger FETCH-only task for

SELECT *, FILTER on partition columns (WHERE and HAVING clauses), LIMIT only.

more will trigger FETCH-only task for

SELECT any kind of expressions including UDFs, FILTER, LIMIT only (including TABLESAMPLE, virtual columns)

Read also about hive.fetch.task.conversion.threshold parameter and more details here: Hive Configuration Properties

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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