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run-sparkbench.md

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1. Setup

  • Python 2.x(>=2.6) is required.

  • bc is required to generate the HiBench report.

  • Supported Hadoop version: Apache Hadoop 2.x, 3.0.x, 3.1.x, 3.2.x

  • Supported Spark version: 2.4.x, 3.0.x

  • Build HiBench according to build HiBench.

  • Start HDFS, Yarn, Spark in the cluster.

Note: Starting from HiBench 8.0, the support of Spark before 2.3.x(inclusive) was deprecated, please either leverage former version HiBench or upgrade your Spark.

2. Configure hadoop.conf

Hadoop is used to generate the input data of the workloads. Create and edit conf/hadoop.conf

cp conf/hadoop.conf.template conf/hadoop.conf
Property Meaning
hibench.hadoop.home The Hadoop installation location
hibench.hadoop.executable The path of hadoop executable. For Apache Hadoop, it is /YOUR/HADOOP/HOME/bin/hadoop
hibench.hadoop.configure.dir Hadoop configuration directory. For Apache Hadoop, it is /YOUR/HADOOP/HOME/etc/hadoop
hibench.hdfs.master The root HDFS path to store HiBench data, i.e. hdfs://localhost:8020/user/username
hibench.hadoop.release Hadoop release provider. Supported value: apache

3. Configure spark.conf

Create and edit conf/spark.conf

cp conf/spark.conf.template conf/spark.conf

Set the below properties properly:

hibench.spark.home            The Spark installation location
hibench.spark.master          The Spark master, i.e. `spark://xxx:7077`, `yarn-client`

4. Run a workload

To run a single workload i.e. wordcount.

 bin/workloads/micro/wordcount/prepare/prepare.sh
 bin/workloads/micro/wordcount/spark/run.sh

The prepare.sh launches a Hadoop job to generate the input data on HDFS. The run.sh submits the Spark job to the cluster. bin/run_all.sh can be used to run all workloads listed in conf/benchmarks.lst.

5. View the report

The <HiBench_Root>/report/hibench.report is a summarized workload report, including workload name, execution duration, data size, throughput per cluster, throughput per node.

The report directory also includes further information for debugging and tuning.

  • <workload>/spark/bench.log: Raw logs on client side.
  • <workload>/spark/monitor.html: System utilization monitor results.
  • <workload>/spark/conf/<workload>.conf: Generated environment variable configurations for this workload.
  • <workload>/spark/conf/sparkbench/<workload>/sparkbench.conf: Generated configuration for this workloads, which is used for mapping to environment variable.
  • <workload>/spark/conf/sparkbench/<workload>/spark.conf: Generated configuration for spark.

6. Input data size

To change the input data size, you can set hibench.scale.profile in conf/hibench.conf. Available values are tiny, small, large, huge, gigantic and bigdata. The definition of these profiles can be found in the workload's conf file i.e. conf/workloads/micro/wordcount.conf

7. Tuning

Change the below properties in conf/hibench.conf to control the parallelism

Property Meaning
hibench.default.map.parallelism Partition number in Spark
hibench.default.shuffle.parallelism Shuffle partition number in Spark

Change the below properties to control Spark executor number, executor cores, executor memory and driver memory.

Property Meaning
hibench.yarn.executor.num Spark executor number in Yarn mode
hibench.yarn.executor.cores Spark executor cores in Yarn mode
spark.executor.memory Spark executor memory
spark.driver.memory Spark driver memory