This the whole idea. Spark uses DAG + IM, MR is classic
This is for Hive on Spark hive> explain select max(id) from dummy_parquet; OK STAGE DEPENDENCIES: Stage-1 is a root stage Stage-0 depends on stages: Stage-1 STAGE PLANS: Stage: Stage-1 Spark Edges: Reducer 2 <- Map 1 (GROUP, 1) * DagName: hduser_20160712083219_632c2749-7387-478f-972d-9eaadd9932c6:1* Vertices: Map 1 Map Operator Tree: TableScan alias: dummy_parquet Statistics: Num rows: 100000000 Data size: 700000000 Basic stats: COMPLETE Column stats: NONE Select Operator expressions: id (type: int) outputColumnNames: id Statistics: Num rows: 100000000 Data size: 700000000 Basic stats: COMPLETE Column stats: NONE Group By Operator aggregations: max(id) mode: hash outputColumnNames: _col0 Statistics: Num rows: 1 Data size: 4 Basic stats: COMPLETE Column stats: NONE Reduce Output Operator sort order: Statistics: Num rows: 1 Data size: 4 Basic stats: COMPLETE Column stats: NONE value expressions: _col0 (type: int) Reducer 2 Reduce Operator Tree: Group By Operator aggregations: max(VALUE._col0) mode: mergepartial outputColumnNames: _col0 Statistics: Num rows: 1 Data size: 4 Basic stats: COMPLETE Column stats: NONE File Output Operator compressed: false Statistics: Num rows: 1 Data size: 4 Basic stats: COMPLETE Column stats: NONE table: input format: org.apache.hadoop.mapred.TextInputFormat output format: org.apache.hadoop.hive.ql.io.HiveIgnoreKeyTextOutputFormat serde: org.apache.hadoop.hive.serde2.lazy.LazySimpleSerDe Stage: Stage-0 Fetch Operator limit: -1 Processor Tree: ListSink Time taken: 2.801 seconds, Fetched: 50 row(s) And this is with setting the execution engine to MR hive> set hive.execution.engine=mr; Hive-on-MR is deprecated in Hive 2 and may not be available in the future versions. Consider using a different execution engine (i.e. spark, tez) or using Hive 1.X releases. hive> explain select max(id) from dummy_parquet; OK STAGE DEPENDENCIES: Stage-1 is a root stage Stage-0 depends on stages: Stage-1 STAGE PLANS: Stage: Stage-1 Map Reduce Map Operator Tree: TableScan alias: dummy_parquet Statistics: Num rows: 100000000 Data size: 700000000 Basic stats: COMPLETE Column stats: NONE Select Operator expressions: id (type: int) outputColumnNames: id Statistics: Num rows: 100000000 Data size: 700000000 Basic stats: COMPLETE Column stats: NONE Group By Operator aggregations: max(id) mode: hash outputColumnNames: _col0 Statistics: Num rows: 1 Data size: 4 Basic stats: COMPLETE Column stats: NONE Reduce Output Operator sort order: Statistics: Num rows: 1 Data size: 4 Basic stats: COMPLETE Column stats: NONE value expressions: _col0 (type: int) Reduce Operator Tree: Group By Operator aggregations: max(VALUE._col0) mode: mergepartial outputColumnNames: _col0 Statistics: Num rows: 1 Data size: 4 Basic stats: COMPLETE Column stats: NONE File Output Operator compressed: false Statistics: Num rows: 1 Data size: 4 Basic stats: COMPLETE Column stats: NONE table: input format: org.apache.hadoop.mapred.TextInputFormat output format: org.apache.hadoop.hive.ql.io.HiveIgnoreKeyTextOutputFormat serde: org.apache.hadoop.hive.serde2.lazy.LazySimpleSerDe Stage: Stage-0 Fetch Operator limit: -1 Processor Tree: ListSink Time taken: 0.1 seconds, Fetched: 44 row(s) HTH Dr Mich Talebzadeh LinkedIn * https://www.linkedin.com/profile/view?id=AAEAAAAWh2gBxianrbJd6zP6AcPCCdOABUrV8Pw <https://www.linkedin.com/profile/view?id=AAEAAAAWh2gBxianrbJd6zP6AcPCCdOABUrV8Pw>* http://talebzadehmich.wordpress.com *Disclaimer:* Use it at your own risk. Any and all responsibility for any loss, damage or destruction of data or any other property which may arise from relying on this email's technical content is explicitly disclaimed. The author will in no case be liable for any monetary damages arising from such loss, damage or destruction. On 12 July 2016 at 08:16, Markovitz, Dudu <dmarkov...@paypal.com> wrote: > This is a simple task – > > Read the files, find the local max value and combine the results (find the > global max value). > > How do you explain the differences in the results? Spark reads the files > and finds a local max 10X (+) faster than MR? > > Can you please attach the execution plan? > > > > Thanks > > > > Dudu > > > > > > > > *From:* Mich Talebzadeh [mailto:mich.talebza...@gmail.com] > *Sent:* Monday, July 11, 2016 11:55 PM > *To:* user <u...@hive.apache.org>; user @spark <user@spark.apache.org> > *Subject:* Re: Using Spark on Hive with Hive also using Spark as its > execution engine > > > > In my test I did like for like keeping the systematic the same namely: > > > > 1. Table was a parquet table of 100 Million rows > 2. The same set up was used for both Hive on Spark and Hive on MR > 3. Spark was very impressive compared to MR on this particular test. > > > > Just to see any issues I created an ORC table in in the image of Parquet > (insert/select from Parquet to ORC) with stats updated for columns etc > > > > These were the results of the same run using ORC table this time: > > > > hive> select max(id) from oraclehadoop.dummy; > > Starting Spark Job = b886b869-5500-4ef7-aab9-ae6fb4dad22b > > Query Hive on Spark job[1] stages: > 2 > 3 > > Status: Running (Hive on Spark job[1]) > Job Progress Format > CurrentTime StageId_StageAttemptId: > SucceededTasksCount(+RunningTasksCount-FailedTasksCount)/TotalTasksCount > [StageCost] > 2016-07-11 21:35:45,020 Stage-2_0: 0(+8)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:48,033 Stage-2_0: 0(+8)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:51,046 Stage-2_0: 1(+8)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:52,050 Stage-2_0: 3(+8)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:53,055 Stage-2_0: 8(+4)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:54,060 Stage-2_0: 11(+1)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:55,065 Stage-2_0: 12(+0)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:56,071 Stage-2_0: 12(+8)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:57,076 Stage-2_0: 13(+8)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:58,081 Stage-2_0: 20(+3)/23 Stage-3_0: 0/1 > 2016-07-11 21:35:59,085 Stage-2_0: 23/23 Finished Stage-3_0: 0(+1)/1 > 2016-07-11 21:36:00,089 Stage-2_0: 23/23 Finished Stage-3_0: 1/1 > Finished > Status: Finished successfully in 16.08 seconds > OK > 100000000 > Time taken: 17.775 seconds, Fetched: 1 row(s) > > > > Repeat with MR engine > > > > hive> set hive.execution.engine=mr; > Hive-on-MR is deprecated in Hive 2 and may not be available in the future > versions. Consider using a different execution engine (i.e. spark, tez) or > using Hive 1.X releases. > > > > hive> select max(id) from oraclehadoop.dummy; > WARNING: Hive-on-MR is deprecated in Hive 2 and may not be available in > the future versions. Consider using a different execution engine (i.e. > spark, tez) or using Hive 1.X releases. > Query ID = hduser_20160711213100_8dc2afae-8644-4097-ba33-c7bd3c304bf8 > Total jobs = 1 > Launching Job 1 out of 1 > Number of reduce tasks determined at compile time: 1 > In order to change the average load for a reducer (in bytes): > set hive.exec.reducers.bytes.per.reducer=<number> > In order to limit the maximum number of reducers: > set hive.exec.reducers.max=<number> > In order to set a constant number of reducers: > set mapreduce.job.reduces=<number> > Starting Job = job_1468226887011_0008, Tracking URL = > http://rhes564:8088/proxy/application_1468226887011_0008/ > Kill Command = /home/hduser/hadoop-2.6.0/bin/hadoop job -kill > job_1468226887011_0008 > Hadoop job information for Stage-1: number of mappers: 23; number of > reducers: 1 > 2016-07-11 21:37:00,061 Stage-1 map = 0%, reduce = 0% > 2016-07-11 21:37:06,440 Stage-1 map = 4%, reduce = 0%, Cumulative CPU > 16.48 sec > 2016-07-11 21:37:14,751 Stage-1 map = 9%, reduce = 0%, Cumulative CPU > 40.63 sec > 2016-07-11 21:37:22,048 Stage-1 map = 13%, reduce = 0%, Cumulative CPU > 58.88 sec > 2016-07-11 21:37:30,412 Stage-1 map = 17%, reduce = 0%, Cumulative CPU > 80.72 sec > 2016-07-11 21:37:37,707 Stage-1 map = 22%, reduce = 0%, Cumulative CPU > 103.43 sec > 2016-07-11 21:37:45,999 Stage-1 map = 26%, reduce = 0%, Cumulative CPU > 125.93 sec > 2016-07-11 21:37:54,300 Stage-1 map = 30%, reduce = 0%, Cumulative CPU > 147.17 sec > 2016-07-11 21:38:01,538 Stage-1 map = 35%, reduce = 0%, Cumulative CPU > 166.56 sec > 2016-07-11 21:38:08,807 Stage-1 map = 39%, reduce = 0%, Cumulative CPU > 189.29 sec > 2016-07-11 21:38:17,115 Stage-1 map = 43%, reduce = 0%, Cumulative CPU > 211.03 sec > 2016-07-11 21:38:24,363 Stage-1 map = 48%, reduce = 0%, Cumulative CPU > 235.68 sec > 2016-07-11 21:38:32,638 Stage-1 map = 52%, reduce = 0%, Cumulative CPU > 258.27 sec > 2016-07-11 21:38:40,916 Stage-1 map = 57%, reduce = 0%, Cumulative CPU > 278.44 sec > 2016-07-11 21:38:49,206 Stage-1 map = 61%, reduce = 0%, Cumulative CPU > 300.35 sec > 2016-07-11 21:38:58,524 Stage-1 map = 65%, reduce = 0%, Cumulative CPU > 322.89 sec > 2016-07-11 21:39:07,889 Stage-1 map = 70%, reduce = 0%, Cumulative CPU > 344.8 sec > 2016-07-11 21:39:16,151 Stage-1 map = 74%, reduce = 0%, Cumulative CPU > 367.77 sec > 2016-07-11 21:39:25,456 Stage-1 map = 78%, reduce = 0%, Cumulative CPU > 391.82 sec > 2016-07-11 21:39:33,725 Stage-1 map = 83%, reduce = 0%, Cumulative CPU > 415.48 sec > 2016-07-11 21:39:43,037 Stage-1 map = 87%, reduce = 0%, Cumulative CPU > 436.09 sec > 2016-07-11 21:39:51,292 Stage-1 map = 91%, reduce = 0%, Cumulative CPU > 459.4 sec > 2016-07-11 21:39:59,563 Stage-1 map = 96%, reduce = 0%, Cumulative CPU > 477.92 sec > 2016-07-11 21:40:05,760 Stage-1 map = 100%, reduce = 0%, Cumulative CPU > 491.72 sec > 2016-07-11 21:40:10,921 Stage-1 map = 100%, reduce = 100%, Cumulative CPU > 499.37 sec > MapReduce Total cumulative CPU time: 8 minutes 19 seconds 370 msec > Ended Job = job_1468226887011_0008 > MapReduce Jobs Launched: > Stage-Stage-1: Map: 23 Reduce: 1 Cumulative CPU: 499.37 sec HDFS > Read: 403754774 HDFS Write: 10 SUCCESS > Total MapReduce CPU Time Spent: 8 minutes 19 seconds 370 msec > OK > 100000000 > Time taken: 202.333 seconds, Fetched: 1 row(s) > > > > So in summary > > > > Table MR/sec Spark/sec > > Parquet 239.532 14.38 > > ORC 202.333 17.77 > > > > Still I would use Spark if I had a choice and I agree that on VLT (very > large tables), the limitation in available memory may be the overriding > factor in using Spark. > > > > HTH > > > > > Dr Mich Talebzadeh > > > > LinkedIn > *https://www.linkedin.com/profile/view?id=AAEAAAAWh2gBxianrbJd6zP6AcPCCdOABUrV8Pw > <https://www.linkedin.com/profile/view?id=AAEAAAAWh2gBxianrbJd6zP6AcPCCdOABUrV8Pw>* > > > > http://talebzadehmich.wordpress.com > > > > *Disclaimer:* Use it at your own risk. Any and all responsibility for any > loss, damage or destruction of data or any other property which may arise > from relying on this email's technical content is explicitly disclaimed. > The author will in no case be liable for any monetary damages arising from > such loss, damage or destruction. > > > > > > On 11 July 2016 at 19:25, Gopal Vijayaraghavan <gop...@apache.org> wrote: > > > > Status: Finished successfully in 14.12 seconds > > OK > > 100000000 > > Time taken: 14.38 seconds, Fetched: 1 row(s) > > That might be an improvement over MR, but that still feels far too slow. > > > Parquet numbers are in general bad in Hive, but that's because the Parquet > reader gets no actual love from the devs. The community, if it wants to > keep using Parquet heavily needs a Hive dev to go over to Parquet-mr and > cut a significant number of memory copies out of the reader. > > The Spark 2.0 build for instance, has a custom Parquet reader for SparkSQL > which does this. SPARK-12854 does for Spark+Parquet what Hive 2.0 does for > ORC (actually, it looks more like hive's VectorizedRowBatch than > Tungsten's flat layouts). > > But that reader cannot be used in Hive-on-Spark, because it is not a > public reader impl. > > > Not to pick an arbitrary dataset, my workhorse example is a TPC-H lineitem > at 10Gb scale with a single 16 box. > > hive(tpch_flat_orc_10)> select max(l_discount) from lineitem; > Query ID = gopal_20160711175917_f96371aa-2721-49c8-99a0-f7c4a1eacfda > Total jobs = 1 > Launching Job 1 out of 1 > > > Status: Running (Executing on YARN cluster with App id > application_1466700718395_0256) > > --------------------------------------------------------------------------- > ------------------- > VERTICES MODE STATUS TOTAL COMPLETED RUNNING > PENDING FAILED KILLED > --------------------------------------------------------------------------- > ------------------- > Map 1 .......... llap SUCCEEDED 13 13 0 > 0 0 0 > Reducer 2 ...... llap SUCCEEDED 1 1 0 > 0 0 0 > --------------------------------------------------------------------------- > ------------------- > VERTICES: 02/02 [==========================>>] 100% ELAPSED TIME: 0.71 s > > --------------------------------------------------------------------------- > ------------------- > Status: DAG finished successfully in 0.71 seconds > > Query Execution Summary > --------------------------------------------------------------------------- > ------------------- > OPERATION DURATION > --------------------------------------------------------------------------- > ------------------- > Compile Query 0.21s > Prepare Plan 0.13s > Submit Plan 0.34s > Start DAG 0.23s > Run DAG 0.71s > --------------------------------------------------------------------------- > ------------------- > > Task Execution Summary > --------------------------------------------------------------------------- > ------------------- > VERTICES DURATION(ms) CPU_TIME(ms) GC_TIME(ms) INPUT_RECORDS > OUTPUT_RECORDS > --------------------------------------------------------------------------- > ------------------- > Map 1 604.00 0 0 59,957,438 > 13 > Reducer 2 105.00 0 0 13 > 0 > --------------------------------------------------------------------------- > ------------------- > > LLAP IO Summary > --------------------------------------------------------------------------- > ------------------- > VERTICES ROWGROUPS META_HIT META_MISS DATA_HIT DATA_MISS ALLOCATION > USED TOTAL_IO > --------------------------------------------------------------------------- > ------------------- > Map 1 6036 0 146 0B 68.86MB 491.00MB > 479.89MB 7.94s > --------------------------------------------------------------------------- > ------------------- > > OK > 0.1 > Time taken: 1.669 seconds, Fetched: 1 row(s) > hive(tpch_flat_orc_10)> > > > This is running against a single 16 core box & I would assume it would > take <1.4s to read twice as much (13 tasks is barely touching the load > factors). > > It would probably be a bit faster if the cache had hits, but in general > 14s to read a 100M rows is nearly a magnitude off where Hive 2.2.0 is. > > Cheers, > Gopal > > > > > > > > > > > >