如何调整火花执行器的数量,核心和执行器的记忆?

从哪里开始调优上面提到的参数。我们是从遗嘱执行者的内存开始得到遗嘱执行者的数量,还是从核心开始得到遗嘱执行者的数量。我跟踪了 链接。然而得到了一个高层次的想法,但仍然不确定如何或从哪里开始并得出最终的结论。

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The following answer covers the 3 main aspects mentioned in title - number of executors, executor memory and number of cores. There may be other parameters like driver memory and others which I did not address as of this answer, but would like to add in near future.

Case 1 Hardware - 6 Nodes, and Each node 16 cores, 64 GB RAM

Each executor is a JVM instance. So we can have multiple executors in a single Node

First 1 core and 1 GB is needed for OS and Hadoop Daemons, so available are 15 cores, 63 GB RAM for each node

Start with how to choose number of cores:

Number of cores = Concurrent tasks as executor can run


So we might think, more concurrent tasks for each executor will give better performance. But research shows that
any application with more than 5 concurrent tasks, would lead to bad show. So stick this to 5.


This number came from the ability of executor and not from how many cores a system has. So the number 5 stays same
even if you have double(32) cores in the CPU.

Number of executors:

Coming back to next step, with 5 as cores per executor, and 15 as total available cores in one Node(CPU) - we come to
3 executors per node.


So with 6 nodes, and 3 executors per node - we get 18 executors. Out of 18 we need 1 executor (java process) for AM in YARN we get 17 executors


This 17 is the number we give to spark using --num-executors while running from spark-submit shell command

Memory for each executor:

From above step, we have 3 executors  per node. And available RAM is 63 GB


So memory for each executor is 63/3 = 21GB.


However small overhead memory is also needed to determine the full memory request to YARN for each executor.
Formula for that over head is max(384, .07 * spark.executor.memory)


Calculating that overhead - .07 * 21 (Here 21 is calculated as above 63/3)
= 1.47


Since 1.47 GB > 384 MB, the over head is 1.47.
Take the above from each 21 above => 21 - 1.47 ~ 19 GB


So executor memory - 19 GB

Final numbers - Executors - 17, Cores 5, Executor Memory - 19 GB


Case 2 Hardware : Same 6 Node, 32 Cores, 64 GB

5 is same for good concurrency

Number of executors for each node = 32/5 ~ 6

So total executors = 6 * 6 Nodes = 36. Then final number is 36 - 1 for AM = 35

Executor memory is : 6 executors for each node. 63/6 ~ 10 . Over head is .07 * 10 = 700 MB. So rounding to 1GB as over head, we get 10-1 = 9 GB

Final numbers - Executors - 35, Cores 5, Executor Memory - 9 GB


Case 3

The above scenarios start with accepting number of cores as fixed and moving to # of executors and memory.

Now for first case, if we think we dont need 19 GB, and just 10 GB is sufficient, then following are the numbers:

cores 5 # of executors for each node = 3

At this stage, this would lead to 21, and then 19 as per our first calculation. But since we thought 10 is ok (assume little overhead), then we cant switch # of executors per node to 6 (like 63/10). Becase with 6 executors per node and 5 cores it comes down to 30 cores per node, when we only have 16 cores. So we also need to change number of cores for each executor.

So calculating again,

The magic number 5 comes to 3 (any number less than or equal to 5). So with 3 cores, and 15 available cores - we get 5 executors per node. So (5*6 -1) = 29 executors

So memory is 63/5 ~ 12. Over head is 12*.07=.84 So executor memory is 12 - 1 GB = 11 GB

Final Numbers are 29 executors, 3 cores, executor memory is 11 GB


Dynamic Allocation:

Note : Upper bound for the number of executors if dynamic allocation is enabled. So this says that spark application can eat away all the resources if needed. So in a cluster where you have other applications are running and they also need cores to run the tasks, please make sure you do it at cluster level. I mean you can allocate specific number of cores for YARN based on user access. So you can create spark_user may be and then give cores (min/max) for that user. These limits are for sharing between spark and other applications which run on YARN.

spark.dynamicAllocation.enabled - When this is set to true - We need not mention executors. The reason is below:

The static params number we give at spark-submit is for the entire job duration. However if dynamic allocation comes into picture, there would be different stages like

What to start with :

Initial number of executors (spark.dynamicAllocation.initialExecutors) to start with

How many :

Then based on load (tasks pending) how many to request. This would eventually be the numbers what we give at spark-submit in static way. So once the initial executor numbers are set, we go to min (spark.dynamicAllocation.minExecutors) and max (spark.dynamicAllocation.maxExecutors) numbers.

When to ask or give:

When do we request new executors (spark.dynamicAllocation.schedulerBacklogTimeout) - There have been pending tasks for this much duration. so request. number of executors requested in each round increases exponentially from the previous round. For instance, an application will add 1 executor in the first round, and then 2, 4, 8 and so on executors in the subsequent rounds. At a specific point, the above max comes into picture

when do we give away an executor (spark.dynamicAllocation.executorIdleTimeout) -

Please correct me if I missed anything. The above is my understanding based on the blog i shared in question and some online resources. Thank you.

References:

Also, it depends on your use case, an important config parameter is:

spark.memory.fraction(Fraction of (heap space - 300MB) used for execution and storage) from http://spark.apache.org/docs/latest/configuration.html#memory-management.

If you dont use cache/persist, set it to 0.1 so you have all the memory for your program.

If you use cache/persist, you can check the memory taken by:

sc.getExecutorMemoryStatus.map(a => (a._2._1 - a._2._2)/(1024.0*1024*1024)).sum

Do you read data from HDFS or from HTTP?

Again, a tuning depend on your use case.