Win7 下使用Spark 对文件进行处理

业务描述:

项目中需要对用户的holding文件进行处理,转成内部格式,并对关键业务项(如security)生成内部ID,为简化起见,此处将ID设置为UUID,文件样例如下,以“|”分割

20170630|c003a949bce2ed94346c8579a33891b2|123456790|A000AD7|         5620.88000|00000001.00000000|||
20170630|c003a949bce2ed94346c8579a33891b2|23355L106|D043158|           10.00000|00000076.72000000|||
20170630|c003a949bce2ed94346c8579a33891b2|03524A108|A027192|          126.00000|00000017.48000000|||
20170630|478abaeebf564df0cb0b4232053e5129|29278N103|E019306|          474.47000|00000001.00000000|||
20170630|478abaeebf564df0cb0b4232053e5129|219350105|C695958|           50.00000|00000030.05000000|||
20170630|db34e5a988b322a32e9a54607126e10b|123456790|A000AD7|       105773.99000|00000001.00000000|||
20170630|db34e5a988b322a32e9a54607126e10b|29278N103|E019306|          750.00000|00000020.39000000|||
20170630|db34e5a988b322a32e9a54607126e10b|35472P406|F001419|         3813.46300|00000015.36000000|||
20170630|db34e5a988b322a32e9a54607126e10b|345370860|F004464|         1500.00000|00000011.19000000|||
20170630|db34e5a988b322a32e9a54607126e10b|33616C860|F018217|         1000.00000|00000026.85000000|||
20170630|d4efe3d884712369e3fa0d0ebeec1264|33616C860|F018217|         1267.48000|00000001.00000000|||
20170630|d4efe3d884712369e3fa0d0ebeec1264|254709108|D010597|          116.00000|00000062.19000000|||
20170630|d4efe3d884712369e3fa0d0ebeec1264|617446448|M004728|          233.00000|00000044.56000000|||
20170630|93404e788eb4dc9ae8367a96149b86cd|608919726|A000CV9|        17145.68000|00000001.00000000|||
20170630|93404e788eb4dc9ae8367a96149b86cd|045519402|A007023|          280.00000|00000038.13700000|||
20170630|93404e788eb4dc9ae8367a96149b86cd|35472P406|F001419|         1668.00000|00000010.97300000|||
20170630|93404e788eb4dc9ae8367a96149b86cd|G1151C101|A024853|          155.00000|00000123.68000000|||
20170630|93404e788eb4dc9ae8367a96149b86cd|03524A108|A027192|          154.00000|00000110.36000000|||

对此文件,我们暂且只关注第3,第4列,分别表示security的cusip及symbol

1:Redis准备

因在spark中需要使用redis,故先在本机安装好redis server,可参看文章:Redis安装

启动redis服务:

redis-server redis.windows.conf

如果在window 10系统中,可以参考另外一篇文章搭建环境:window10 系统上设置redis开发环境

另外开启一个redis client命令行窗口:

redis-cli -h 127.0.0.1 -p 6379

2:启动spark shell:

对于Redis的客户端,官方建议的是Jedis,可以从 https://github.com/xetorthio/jedis 下载源代码并打包,或者使用maven dependency下载

<dependency>
    <groupId>redis.clients</groupId>
    <artifactId>jedis</artifactId>
    <version>2.9.0</version>
    <type>jar</type>
    <scope>compile</scope>
</dependency>

找到maven仓库的Jedis目录(.m2 epository edisclientsjedis2.9.0),将jedis-2.9.0.jar拷贝到spark的jars目录中,

spark-shell --jars ..jarsjedis-2.9.0.jar

3:程序代码

在spark shell中执行以下代码:

import java.util.UUID
import redis.clients.jedis.Jedis

val txtFile = sc.textFile("D:\temp\holdings.txt",2)

val rdd1 = txtFile.map(line => line.split("\|"))
val rdd2 = rdd1.map(x => ((x(2)+"_"+x(3)).hashCode, x(2),x(3)))
val rdd3 = rdd2.distinct

上述的每一个rdd运算,都将产生一个新的rdd,此处为了简化,方便理解,假设文件被读入到2个分区,通常每个分区大小为128M,

在rdd3中,保存的是security的元组列表,分别在2个分区中,因为rdd2.distinct 时已经对数据进行shuffle,所以不存在相互重叠,现在我们要做的是对每个security tuple,在redis中查找是否已经存在记录,如果不存在,就在redis中创建一天k-v记录,并生成一个UUID

val jd = new Jedis("127.0.0.1",6379)
rdd3.foreach(x => if(jd.get(x._2) ==null) jd.set(x._2,UUID.randomUUID().toString()))

执行上述代码,期望在redis中生成k-v,以tuple的第2个元素为key,生成的UUID为value,但执行时报错Task not serializable:

在spark shell中,启动的是一个默认的SparkContext sc,上面代码的jd是在Driver中创建的,但由于rdd的操作是分布式运行在Executor中,而不是在Driver中,在做foreach时,需要将命令文本做序列化,并分发到相应的Worker Node机器,但redis 的TCP链接已经绑定在Driver进程,是无法分发到各个节点去执行的,所以提示序列化错误,请见Spark架构图:

修改代码,在reduce partition中进行数据库链接,使用foreachPartition函数取代foreach

rdd3.foreachPartition(it => {
  val jd = new Jedis("127.0.0.1",6379)
  it.foreach(x => if(jd.get(x._2) ==null) jd.set(x._2,UUID.randomUUID().toString()))
})

执行成功,

在redis client窗口中可以scan Redis数据库,并使用get命令获取相应的k-v

4:在IDEA中本地调试sprak程序

在IDEA中,修改如下图红框所示的参数,然后启动调试就可以了

5:程序打包执行

在spark-shell通过交互式命令验证后,就可以将程序打包成可执行jar包,先创建一个maven工程,修改pom文件如下,此处使用了sprint boot插件sprint-boot-maven-plugin并指定mainClass:

package mytest

import org.apache.spark._
import java.util.UUID
import redis.clients.jedis.Jedis

object Import {
  def main(args: Array[String]): Unit = {
    val file = args(0)
    val sparkConf = new SparkConf().setAppName("MyImport")
    if(args.length ==2)
    {
      sparkConf.setMaster(args(1))
    }

    val sc = new SparkContext(sparkConf)

    val txtFile = sc.textFile(file,4)

    val rdd1 = txtFile.map(line => line.split("\|"))
    val rdd2 = rdd1.map(x => ((x(2)+"_"+x(3)).hashCode, x(2),x(3)))
    val rdd3 = rdd2.distinct

    rdd3.foreachPartition(it => {
      val jd = new Jedis("127.0.0.1",6379)
      it.foreach(x => if(jd.get(x._2) ==null) jd.set(x._2,UUID.randomUUID().toString()))
    })
  }
}
<project xmlns="http://maven.apache.org/POM/4.0.0" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://maven.apache.org/POM/4.0.0 http://maven.apache.org/maven-v4_0_0.xsd">
  <modelVersion>4.0.0</modelVersion>
  <groupId>mytest</groupId>
  <artifactId>myproject</artifactId>
  <version>1.0-SNAPSHOT</version>
  <inceptionYear>2008</inceptionYear>
  <properties>
    <scala.version>2.11.8</scala.version>
    <spark.version>2.2.1</spark.version>
  </properties>

  <repositories>
      <repository>
          <id>scala-tools.org</id>
          <name>Scala-Tools Maven2 Repository</name>
          <url>http://scala-tools.org/repo-releases</url>
      </repository>
  </repositories>

  <pluginRepositories>
    <pluginRepository>
      <id>scala-tools.org</id>
      <name>Scala-Tools Maven2 Repository</name>
      <url>http://scala-tools.org/repo-releases</url>
    </pluginRepository>
  </pluginRepositories>

  <dependencies>
    <dependency>
      <groupId>org.apache.spark</groupId>
      <artifactId>spark-core_2.11</artifactId>
      <version>${spark.version}</version>
    </dependency>
    <dependency>
      <groupId>org.scala-lang</groupId>
      <artifactId>scala-library</artifactId>
      <version>${scala.version}</version>
    </dependency>
    <dependency>
      <groupId>junit</groupId>
      <artifactId>junit</artifactId>
      <version>4.4</version>
      <scope>test</scope>
    </dependency>
    <dependency>
      <groupId>org.specs</groupId>
      <artifactId>specs</artifactId>
      <version>1.2.5</version>
      <scope>test</scope>
    </dependency>
    <dependency>
      <groupId>redis.clients</groupId>
      <artifactId>jedis</artifactId>
      <version>2.9.0</version>
    </dependency>
  </dependencies>

  <build>
    <sourceDirectory>src/main/scala</sourceDirectory>
    <plugins>
      <plugin>
        <groupId>org.scala-tools</groupId>
        <artifactId>maven-scala-plugin</artifactId>
        <executions>
          <execution>
            <goals>
              <goal>compile</goal>
              <goal>testCompile</goal>
            </goals>
          </execution>
        </executions>
        <configuration>
          <scalaVersion>${scala.version}</scalaVersion>
          <args>
            <arg>-target:jvm-1.5</arg>
          </args>
        </configuration>
      </plugin>
      <plugin>
        <groupId>org.springframework.boot</groupId>
        <artifactId>spring-boot-maven-plugin</artifactId>
        <executions>
          <execution>
            <goals>
              <goal>repackage</goal>
            </goals>
            <configuration>
              <!--<classifier>spring-boot</classifier>-->
              <mainClass>mytest.Import</mainClass>
            </configuration>
          </execution>
        </executions>
      </plugin>
    </plugins>
  </build>
  <reporting>
    <plugins>
      <plugin>
        <groupId>org.scala-tools</groupId>
        <artifactId>maven-scala-plugin</artifactId>
        <configuration>
          <scalaVersion>${scala.version}</scalaVersion>
        </configuration>
      </plugin>
    </plugins>
  </reporting>
</project>

在上面的pom文件中,使用的是spring-boot-maven-plugin插件,将所有的依赖包打包到一个fat-jar包中,执行mvn package后,生成可执行jar包:myproject-1.0-SNAPSHOT.jar,包的大小将近100M

开启一个新的命令窗口,运行下面命令,此命令将在本地以单机多线程模式的方式运行

java -jar myproject-1.0-SNAPSHOT.jar d:	empholdings.txt local[4]

spark-submit --master local[4] d: empmyproject-1.0.SNAPSHOT.jar d: empholdings.txt

可以看到spark正常运行,并在redis中可以查到新创建的记录。

原文地址:https://www.cnblogs.com/benfly/p/8920120.html