Skip to main content

Tune Cluster Performance

This section contains information on how you can tune your Hadoop cluster and Spark specifically for optimal performance in job execution.

YARN Tuning Overview

This section provides an overview of configuration recommendations to be applied to the Hadoop cluster from the Designer Cloud Powered by Trifacta platform.

Note

The recommendations in this section are optimized for use with the Designer Cloud Powered by Trifacta platform. These may or may not conform to requirements for other applications using the Hadoop cluster. Alteryx assumes no responsibility for the configuration of the cluster.

YARN manages cluster resources (CPU and memory) by running all processes within allocated containers. Containers restrict the resources available to its process(es). Processes are monitored and killed if they overrun the container allocation.

  • Multiple containers can run on a cluster node (if available resources permit).

  • A job can request and use multiple containers across the cluster.

  • Container requests specify virtual CPU (cores) and memory (in MB).

YARN configuration specifies:

  • Per Cluster Node: Available virtual CPUs and memory per cluster node

  • Per Container: virtual CPUs and memory for each container

The following parameters are available in yarn-site.xml:

Parameter

Type

Description

yarn.nodemanager.resource.memory-mb

Per Cluster Node

Amount of physical memory, in MB, that can be allocated for containers

yarn.nodemanager.resource.cpu-vcores

Per Cluster Node

Number of CPU cores that can be allocated for containers

yarn.scheduler.minimum-allocation-mb

Per Container

Minimum container memory, in MBs; requests lower than this will be increased to this value

yarn.scheduler.maximum-allocation-mb

Per Container

Maximum container memory, in MBs; requests higher than this will be capped to this value

yarn.scheduler.increment-allocation-mb

Per Container

Granularity of container memory requests

yarn.scheduler.minimum-allocation-vcores

Per Container

Minimum allocation virtual CPU cores per container; requests lower than will increased to this value.

yarn.scheduler.maximum-allocation-vcores

Per Container

Maximum allocation virtual CPU cores per container; requests higher than this will be capped to this value

yarn.scheduler.increment-allocation-vcores

Per Container

Granularity of container virtual CPU requests

Spark Tuning Overview

Spark processes run multiple executors per job. Each executor must run within a YARN container. Therefore, resource requests must fit within YARN’s container limits.

Like YARN containers, multiple executors can run on a single node. More executors provide additional computational power and decreased runtime.

Dynamic allocation

Spark’s dynamic allocation adjusts the number of executors to launch based on the following:

  • job size

  • job complexity

  • available resources

You can apply this change through the Admin Settings Page (recommended) or trifacta-conf.json. For more information, see Platform Configuration Methods.

Parameter

Description

spark.dynamicAllocation.enabled

Set to true to enable Spark's dynamic allocation

spark.dynamicAllocation.minExecutors

Minimum number of executors

spark.dynamicAllocation.maxExecutors

Maximum number of executors

For more information, see https://spark.apache.org/docs/latest/configuration.html#dynamic-allocation.

Per-executor allocations

The per-executor resource request sizes can be specified by setting the following properties in the spark.props section :

Note

In trifacta-conf.json, all values in the spark.props section must be quoted values.

Parameter

Description

spark.executor.memory

Amount of memory to use per executor process (in a specified unit)

spark.executor.cores

Number of cores to use on each executor - limit to 5 cores per executor for best performance

A single special process, the application driver, also runs in a container. Its resources are specified in the spark.props section:

Parameter

Description

spark.driver.memory

Amount of memory to use for the driver process (in a specified unit)

spark.driver.cores

Number of cores to use for the driver process

Spark Performance Considerations

Optimizing "Small" Joins

Broadcast, or map-side, joins materialize one side of the join and send it to all executors to be stored in memory. This technique can significantly accelerate joins by skipping the sort and shuffle phases during a "reduce" operation. However, there is also a cost in communicating the table to all executors. Therefore, only "small" tables should be considered for broadcast join. The definition of "small" is set by the spark.sql.autoBroadcastJoinThreshold parameter which can be added to the spark.props section of trifacta-conf.json. By default, Spark sets this to 10485760 (10MB).

Note

We recommend setting this parameter between 20 and 100MB. It should not exceed 200MB.

Checkpointing

In Spark's driver process, the transformation pipeline is compiled down to Spark code and optimized. This process can sometimes fail or take and an inordinately long time. By checkpointing the execution, Spark is forced to materialize the current table (in memory or on disk), thereby simplifying the segments that are optimized. While checkpointing can incur extra cost due to this materialization, it can also reduce end-to-end execution time by speeding up the compilation and optimization phases and by reusing materialized columns downstream.

Note

To increase the checkpointing frequency, set transformer.dataframe.checkpoint.threshold in the spark.props section of trifacta-conf.json.

Limiting Resource Utilization of Spark Jobs

With Spark's dynamic allocation, each job's resource utilization can be limited by setting the maximum number of executors per job. Set spark.dynamicAllocation.maxExecutors in the spark.props section of trifacta-conf.json. When applied, the maximum job memory is then given (approximately due to small overhead added by YARN) by:

spark.dynamicAllocation.maxExecutors * (spark.driver.memory + spark.executor.memory)

The maximum number of cores used per job is given (exactly) by:

spark.dynamicAllocation.maxExecutors * (spark.driver.cores + spark.executor.cores)

To limit the overall cluster utilization of Alteryx jobs, YARN queues should be configured and used by the application.

Tuning Recommendations

The following configuration settings can be applied through Designer Cloud Powered by Trifacta platform configuration based on the number of nodes in the Hadoop cluster.

Note

These recommendations should be modified based on the technical capabilities of your network, the nodes in the cluster, and other applications using the cluster.

1

2

4

10

16

Available memory (GB)

16

32

64

160

256

Available vCPUs

4

8

16

40

64

yarn.nodemanager.resource.memory-mb

12288

24576

57344

147456

245760

yarn.nodemanager.resource.cpu-vcores

3

6

13

32

52

yarn.scheduler.minimum-allocation-mb

1024

1024

1024

1024

1024

yarn.scheduler.maximum-allocation-mb

12288

24576

57344

147456

245760

yarn.scheduler.increment-allocation-mb

512

512

512

512

512

yarn.scheduler.minimum-allocation-vcores

1

1

1

1

1

yarn.scheduler.maximum-allocation-vcores

3

6

13

32

52

yarn.scheduler.increment-allocation-vcores

1

1

1

1

1

spark.executor.memory

6GB

6GB

16GB

20GB

20GB

spark.executor.cores

2

2

4

5

5

spark.driver.memory

4GB

4GB

4GB

4GB

4GB

spark.driver.cores

1

1

1

1

1

The specified configuration allows, maximally, the following Spark configuration per node:

CoresxNode

Configuration Options

1x1

(1 driver + 1 executor) or 1 executor

2x1

(1 driver + 2 executor) or 3 executors

4x1

(1 driver + 3 executors) or 3 executors

10x1

(1 driver + 6 executors) or 6 executors

16x1

(1 driver + 10 executors) or 10 executors

Spark Job Property Overrides

You can enable a set of Spark properties that users are permitted to override on individual jobs. For more information, see Enable Spark Job Overrides.