irpas技术客

Apache Livy 安装部署使用示例_Michealkz_apache livy

irpas 5042

Livy 安装部署使用示例 1. Apache Livy 简介2. 安装前置要求3.下载安装包配置相关配置文件4. 启动服务配置使用5.提交任务获取运行结果6.拓展参考


1. Apache Livy 简介

官网:https://livy.apache.org/

Livy是一个提供rest接口和spark集群交互的服务。它可以提交spark job或者spark一段代码,同步或者异步的返回结果;也提供sparkcontext的管理,通过restfull接口或RPC客户端库。Livy也简化了与spark与应用服务的交互,这允许通过web/mobile与spark的使用交互。其他特点还包含:

长时间运行的SparkContext,允许多个spark job和多个client使用。在多个spark job和客户端之间共享RDD和Dataframe多个sparkcontext可以简单的管理,并运行在集群中而不是Livy Server,以此获取更好的容错性和并行度。作业可以通过重新编译的jar、片段代码、或Java/Scala的客户端API提交。

Livy结合了spark job server和Zeppelin的优点,并解决了spark job server和Zeppelin的缺点。

支持jar和snippet code支持SparkContext和Job的管理支持不同SparkContext运行在不同进程,同一个进程只能运行一个SparkContext支持Yarn cluster模式提供restful接口,暴露SparkContext

2. 安装前置要求

Spark 版本要求 1.6版本以上,支持的scala 版本为2.10 或者scala 2.11

设置环境变量

# 选择自己版本的Spark 和Hadoop 的目录 export SPARK_HOME=/usr/lib/spark export HADOOP_CONF_DIR=/etc/hadoop/conf

注意:Spark3.0 版本及3.1 3.2 版本采用的是scala 2.12 与Livy 要求的不一致会导致报错,Livy 暂时不支持Scala 的2.12 版本

3.下载安装包配置相关配置文件

下载地址:https://livy.apache.org/download

Livy官网:https://livy.apache.org/get-started/

1.下载相关压缩包 livy-0.5.0-incubating-bin.zip 2.解压到指定目录 tar -zxvf livy-0.5.0-incubating-bin.zip -C ../app/ 3.软连接 ln -s livy-0.5.0-incubating-bin livy

修改相关配置文件

livy.conf

livy.spark.master = yarn livy.spark.deployMode = cluster livy.environment = production livy.impersonation.enabled = true livy.server.csrf_protection.enabled false livy.server.port = 8998 livy.server.session.timeout = 3600000 livy.server.recovery.mode = recovery livy.server.recovery.state-store=filesystem livy.server.recovery.state-store.url=/tmp/livy

livy-env.sh

export JAVA_HOME=/usr/java/jdk1.8.0_231 export HADOOP_HOME=/home/hadoop/app/hadoop export HADOOP_CONF_DIR=/home/hadoop/app/hadoop/bin/hadoop/etc/hadoop export SPARK_CONF_DIR=/home/hadoop/app/spark/conf export SPARK_HOME=/home/hadoop/app/spark/ export LIVY_LOG_DIR=/home/hadoop/app/livy/log export LIVY_PID_DIR=/home/hadoop/app/livy/pid-dir export LIVY_SERVER_JAVA_OPTS="-Xmx2g"

Spark-blacklist.sh

spark.master spark.submit.deployMode # Disallow overriding the location of Spark cached jars. spark.yarn.jar spark.yarn.jars spark.yarn.archive # Don't allow users to override the RSC timeout. livy.rsc.server.idle-timeout

修改Hadoop 配置文件 core-site.xml

<property> <name>hadoop.proxyuser.livy.groups</name> <value>*</value> </property> <property> <name>hadoop.proxyuser.livy.hosts</name> <value>*</value> </property>

HDFS 上面创建livy 的用户目录

hdfs dfs -mkdir -p /user/livy hdfs dfs -chown livy:supergroup /user/livy 4. 启动服务配置使用

启动Hadoop 和Livy

sh /home/hadoop/app/livy/bin/livy-server start

进入log 目录查看启动日志

22/03/28 19:56:29 INFO LineBufferedStream: stdout: Welcome to 22/03/28 19:56:29 INFO LineBufferedStream: stdout: ____ __ 22/03/28 19:56:29 INFO LineBufferedStream: stdout: / __/__ ___ _____/ /__ 22/03/28 19:56:29 INFO LineBufferedStream: stdout: _\ \/ _ \/ _ `/ __/ '_/ 22/03/28 19:56:29 INFO LineBufferedStream: stdout: /___/ .__/\_,_/_/ /_/\_\ version 2.4.5 22/03/28 19:56:29 INFO LineBufferedStream: stdout: /_/ 22/03/28 19:56:29 INFO LineBufferedStream: stdout: 22/03/28 19:56:29 INFO LineBufferedStream: stdout: Using Scala version 2.11.12, Java HotSpot(TM) 64-Bit Server VM, 1.8.0_231 22/03/28 19:56:29 INFO LineBufferedStream: stdout: Branch HEAD 22/03/28 19:56:29 INFO LineBufferedStream: stdout: Compiled by user centos on 2020-02-02T19:38:06Z 22/03/28 19:56:29 INFO LineBufferedStream: stdout: Revision cee4ecbb16917fa85f02c635925e2687400aa56b 22/03/28 19:56:29 INFO LineBufferedStream: stdout: Url https://gitbox.apache.org/repos/asf/spark.git 22/03/28 19:56:29 INFO LineBufferedStream: stdout: Type --help for more information. 22/03/28 19:56:29 WARN LivySparkUtils$: Current Spark (2,4) is not verified in Livy, please use it carefully 22/03/28 19:56:30 WARN NativeCodeLoader: Unable to load native-hadoop library for your platform... using builtin-java classes where applicable 22/03/28 19:56:30 INFO RMProxy: Connecting to ResourceManager at /0.0.0.0:8032 22/03/28 19:56:30 INFO StateStore$: Using FileSystemStateStore for recovery. 22/03/28 19:56:30 INFO BatchSessionManager: Recovered 0 batch sessions. Next session id: 0 22/03/28 19:56:30 INFO InteractiveSessionManager: Recovered 0 interactive sessions. Next session id: 0 22/03/28 19:56:30 INFO InteractiveSessionManager: Heartbeat watchdog thread started. 22/03/28 19:56:30 INFO WebServer: Starting server on http://hadoop01:12889

访问Livy 对应web 地址:http://localhost:8998

5.提交任务获取运行结果

新建Session

post http://localhost:8998/sessions { "kind":"spark"} 执行结果为: { "id": 0, -- session id "appId": null, "owner": null, "proxyUser": null, "state": "starting", -- session 状态 "kind": "spark", "appInfo": { -- app 信息 "driverLogUrl": null, "sparkUiUrl": null }, "log": [ "stdout: ", "\nstderr: ", "\nYARN Diagnostics: " ] }

提交代码片段测试:

1.提交代码片段 POST http://localhost:8998/sessions/0/statements 参数:{ "code":"sc.makeRDD(List(1,2,3,4)).count"} 2.查看执行结果: GET http://localhost:8998/sessions/0/statements/0 结果为: { "id": 0, "code": "sc.makeRDD(List(1,2,3,4)).count", "state": "available", "output": { "status": "ok", "execution_count": 0, "data": { "text/plain": "res0: Long = 4\n" } }, "progress": 1.0 }

提交Jar 包测试:

POST http://localhost:8998/batches 参数: { "file":"hdfs://hadoop01:9000/data/jars/spark-examples_2.11-2.4.5.jar", "className":"org.apache.spark.examples.SparkPi", "name":"SparkPi" } 获取执行结果: GET http://localhost:8998/batches { "from": 0, "total": 1, "sessions": [ { "id": 2, "state": "success", "appId": "application_1648535069074_0001", "appInfo": { "driverLogUrl": null, "sparkUiUrl": "http://hadoop01:8088/proxy/application_1648535069074_0001/" }, "log": [ "\t queue: root.hadoop", "\t start time: 1648535413833", "\t final status: UNDEFINED", "\t tracking URL: http://hadoop01:8088/proxy/application_1648535069074_0001/", "\t user: hadoop", "22/03/29 14:30:14 INFO ShutdownHookManager: Shutdown hook called", "22/03/29 14:30:14 INFO ShutdownHookManager: Deleting directory /tmp/spark-75f3b2db-7972-463c-894a-2f1190584242", "22/03/29 14:30:14 INFO ShutdownHookManager: Deleting directory /tmp/spark-f9de9d4c-d5ef-4c39-875a-30228cd8164c", "\nstderr: ", "\nYARN Diagnostics: " ] } ] }

配置提交参数进行测试:需要注意参数的类型

POST http://localhost:8998/batches { "file":"hdfs://hadoop01:9000/data/jars/spark-examples_2.11-2.4.5.jar", "className":"org.apache.spark.examples.SparkPi", "name":"SparkPi", "proxyUser":"hadoop", "driverMemory":"1g", "executorMemory":"2g", "numExecutors":2, "queue":"root.default" } 查询结果为:根据提交时返回的ID 匹配对应的结果 http://localhost:8998/batches { "id": 6, "state": "starting", "appId": "application_1648535069074_0003", "appInfo": { "driverLogUrl": null, "sparkUiUrl": null }, "log": [ "\t queue: root.default", "\t start time: 1648535958201", "\t final status: UNDEFINED", "\t tracking URL: http://hadoop01:8088/proxy/application_1648535069074_0003/", "\t user: hadoop", "22/03/29 14:39:18 INFO ShutdownHookManager: Shutdown hook called", "22/03/29 14:39:18 INFO ShutdownHookManager: Deleting directory /tmp/spark-3167a453-a1d8-436a-b20c-412c9fb33ac9", "22/03/29 14:39:18 INFO ShutdownHookManager: Deleting directory /tmp/spark-b048a123-8e7e-4d4a-8fde-9ff8c047f685", "\nstderr: ", "\nYARN Diagnostics: " ] }

Yarn 上的信息为:

Starting with version 0.5.0-incubating, each session can support all four Scala, Python and R interpreters with newly added SQL interpreter. The kind field in session creation is no longer required, instead users should specify code kind (spark, pyspark, sparkr or sql) during statement submission.

创建SQL 方式的Session 初始化的是SparkSession 并不能直接查存在Hive 表里面的数据,这个部分还需进一步实现

6.拓展参考

有兴趣的可以参考如下文章对Livy 进行个性化定制

1.https://·/article/92911087759/

2.livy在交互式查询中的深度定制


1.本站遵循行业规范,任何转载的稿件都会明确标注作者和来源;2.本站的原创文章,会注明原创字样,如未注明都非原创,如有侵权请联系删除!;3.作者投稿可能会经我们编辑修改或补充;4.本站不提供任何储存功能只提供收集或者投稿人的网盘链接。

标签: #apache #livy #安装部署使用探索