Tez优化参数设置

  • Post author:
  • Post category:其他


Tez内存优化

1、AM、Container大小设置

tez.am.resource.memory.mb

参数说明:Set

tez.am.resource.memory.mb

tobe the same as

yarn.scheduler.minimum-allocation-mb

the YARNminimum container size.



hive.tez.container.size

参数说明:

Set


hive.tez.container.size

to be the same as or a small multiple(1 or 2 times that) of YARN container size

yarn.scheduler.minimum-allocation-mb

but NEVER more than

yarn.scheduler.maximum-allocation-mb

.

2、AM、Container JVM参数设置



tez.am.launch.cmd-opts




默认值:80%

*tez.am.resource.memory.mb

参数说明:一般不需要调整



hive.tez.java.ops







默认值:80%*hive.tez.container.size

参数说明:Hortonworks建议“–server –Djava.net.preferIPv4Stack=true–XX:NewRatio=8 –XX:+UseNUMA –XX:UseG1G”



tez.container.max.java.heap.fraction



默认值:0.8

参数说明:task\AM占用JVM Xmx的比例,该参数建议调整,需根据具体业务情况修改;

3、Hive内存Map Join参数设置



tez.runtime.io.sort.mb

默认值:100

参数说明:输出排序需要的内存大小。建议值:40%*hive.tez.container.size,一般不超过2G;



hive.auto.convert.join.noconditionaltask

默认值:true

参数说明:是否将多个mapjoin合并为一个,使用默认值



hive.auto.convert.join.noconditionaltask.size

默认值:

参数说明:多个mapjoin转换为1个时,所有小表的文件大小总和的最大值,这个值只是限制输入的表文件的大小,并不代表实际mapjoin时hashtable的大小。 建议值:1/3* hive.tez.container.size



tez.runtime.unordered.output.buffer.size-mb

默认值:100

参数说明:Size of the buffer to use if not writing directly to disk.。 建议值:10%* hive.tez.container.size

4、Container重用设置



tez.am.container.reuse.enabled




默认值:true




参数说明:


Container


重用开关

Mapper/Reducer优化

1、Mapper数设置




tez.grouping.min-size



默认值


:50*1024*1024


参数说明:


Lower bound on thesize (in bytes) of a grouped split, to avoid generating too many small splits.



tez.grouping.max-size


默认值:


1024*1024*1024


参数说明:


Upper bound on thesize (in bytes) of a grouped split, to avoid generating excessively largesplits.

;

2、Reducer数设置



hive.tez.auto.reducer.parallelism


默认值


:false


参数说明:


Turn on Tez’ autoreducer parallelism feature. When enabled, Hive will still estimate data sizesand set parallelism estimates. Tez will sample source vertices’ output sizesand adjust the estimates at runtime as necessary.


建议设置为true.



hive.tex.min.partition.factor


默认值


:0.25


参数说明:


When auto reducerparallelism is enabled this factor will be used to put a lower limit to thenumber of reducers that Tez specifies.



hive.tez.max.partition.factor


默认值


:2.0


参数说明:


When auto reducerparallelism is enabled this factor will be used to over-partition data inshuffle edges.



hive.exec.reducers.bytes.per.reducer


默认值


:256,000,000


参数说明


:Sizeper reducer. The default in Hive 0.14.0 and earlier is 1 GB, that is, if theinput size is 10 GB then 10 reducers will be used. In Hive 0.14.0 and later thedefault is 256 MB, that is, if the input size is 1 GB then 4 reducers willbe used.




以下公式确认Reducer

个数:


Max(1, Min(hive.exec.reducers.max [1009], ReducerStage estimate/hive.exec.reducers.bytes.per.reducer))x hive.tez.max.partition.factor [2]

3、Shuffle参数设置



tez.shuffle-vertex-manager.min-src-fraction


默认值


:0.25


参数说明


:thefraction of source tasks which should complete before tasks for the currentvertex are scheduled.



tez.shuffle-vertex-manager.max-src-fraction


默认值


:0.75


参数说明


:oncethis fraction of source tasks have completed, all tasks on the current vertexcan be scheduled. Number of tasks ready for scheduling on the current vertexscales linearly between min-fraction and max-fraction.






例子:


hive.exec.reducers.bytes.per.reducer=1073741824;// 1gb


tez.shuffle-vertex-manager.min-src-fraction=0.25




tez.shuffle-vertex-manager.max-src-fraction=0.75




This indicates thatthe decision will be made between 25% of mappers finishing and 75% of mappersfinishing, provided there’s at least 1Gb of data being output (i.e if 25% ofmappers don’t send 1Gb of data, we will wait till at least 1Gb is sent out).



版权声明:本文为hqwang4原创文章,遵循 CC 4.0 BY-SA 版权协议,转载请附上原文出处链接和本声明。