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  • 实验5 Spark SQL编程初级实践

    1.Spark SQL基本操作

    将下列 json 数据复制到你的 ubuntu 系统/usr/local/spark 下,并保存命名为 employee.json

    答案:

    scala> import org.apache.spark.sql.SparkSession scala> val spark=SparkSession.builder().getOrCreate() scala> import spark.implicits._ scala> val df = spark.read.json("file:///usr/local/spark/employee.json") 

    (1)查询 DataFrame 的所有数据 :scala> df.show() 

    (2)查询所有数据,并去除重复的数据 :scala> df.distinct().show() 

    (3)查询所有数据,打印时去除 id 字段 :scala> df.drop("id").show() 

    (4)筛选 age>20 的记录:scala> df.filter(df("age") > 30 ).show() 

    (5)将数据按 name 分组 :scala> df.groupBy("name").count().show() 

    (6)将数据按 name 升序排列 :scala> df.sort(df("name").asc).show() 

    (7)取出前 3 行数据 :scala> df.take(3) 或 scala> df.head(3) 

    (8)查询所有记录的 name 列,并为其取别名为 username :scala> df.select(df("name").as("username")).show() 

    (9)查询年龄 age 的平均值 :scala> df.agg("age"->"avg") 

    (10)查询年龄 age 的最小值 :scala> df.agg("age"->"min") 

    2.编程实现将RDD转换成DataFrame

    答案:假设当前目录为/usr/local/spark/mycode/rddtodf,在当前目录下新建一个目录 mkdir -p src/main/scala ,然后在目录/usr/local/spark/mycode/rddtodf/src/main/scala 下 新 建 一 个 rddtodf.scala,复制下面代码

    import org.apache.spark.sql.catalyst.encoders.ExpressionEncoder 
    import org.apache.spark.sql.Encoder 
    import spark.implicits._ object RDDtoDF {    
             def main(args: Array[String]) { 
                 case class Employee(id:Long,name: String, age: Long) 
    val employeeDF =
    spark.sparkContext.textFile("file:///usr/local/spark/employee.txt").map(_.split(",")).map(at tributes => Employee(attributes(0).trim.toInt,attributes(1), attributes(2).trim.toInt)).toDF()
    employeeDF.createOrReplaceTempView("employee")
    val employeeRDD = spark.sql("select id,name,age from employee") employeeRDD.map(t => "id:"+t(0)+","+"name:"+t(1)+","+"age:"+t(2)).show() } }

    在目录/usr/local/spark/mycode/rddtodf 目录下新建 simple.sbt,复制下面代码:

    name := "Simple Project" 
    version := "1.0"
    scalaVersion := "2.11.8" 
    libraryDependencies += "org.apache.spark" % "spark-core" % "2.1.0" 

    在目录/usr/local/spark/mycode/rddtodf 下执行下面命令打包程序 :/usr/local/sbt/sbt package

    最后在目录/usr/local/spark/mycode/rddtodf 下执行下面命令提交程序 :/usr/local/spark/bin/spark-submit --class " RDDtoDF "  /usr/local/spark/mycode/rddtodf/target/scala-2.11/simple-project_2.11-1.0.jar 

    3.编程实现利用DataFrame读写mysql数据库

    答案:

    (1)mysql> create database sparktest; 

    mysql> use sparktest;

    mysql> create table employee (id int(4), name char(20), gender char(4), age int(4));

    mysql> insert into employee values(1,'Alice','F',22);

    mysql> insert into employee values(2,'John','M',25); 

    (2)假设当前目录为/usr/local/spark/mycode/testmysql,在当前目录下新建一个目录 mkdir -p src/main/scala , 然 后 在 目 录 /usr/local/spark/mycode/testmysql/src/main/scala 下 新 建 一 个 testmysql.scala,复制下面代码;

    import java.util.Properties 
    import org.apache.spark.sql.types._ 
    import org.apache.spark.sql.Row 
    object TestMySQL {     
            def main(args: Array[String]) { 
                 val employeeRDD = spark.sparkContext.parallelize(Array("3 Mary F 26","4 Tom M 23")).map(_.split(" "))
            val schema = StructType(List(StructField("id", IntegerType, true),StructField("name", StringType, true),StructField("gender", StringType, true),StructField("age", IntegerType, true)))
            val rowRDD = employeeRDD.map(p => Row(p(0).toInt,p(1).trim, p(2).trim,p(3).toInt)) 
            val employeeDF = spark.createDataFrame(rowRDD, schema) val prop = new Properties() 
            prop.put("user", "root")  
            prop.put("password", "hadoop")                  prop.put("driver","com.mysql.jdbc.Driver")    
     employeeDF.write.mode("append").jdbc("jdbc:mysql://localhost:3306/sparktest", sparktest.employee", prop) 
           val jdbcDF = spark.read.format("jdbc").option("url", "jdbc:mysql://localhost:3306/sparktest").option("driver","com.mysql.jdbc.Driver").optio n("dbtable","employee").option("user","root").option("password", "hadoop").load() jdbcDF.agg("age" -> "max", "age" -> "sum")    
         } 
     } 

    在目录/usr/local/spark/mycode/testmysql 目录下新建 simple.sbt,复制下面代码: 

    name := "Simple Project" 
    version := "1.0" 
    scalaVersion := "2.11.8" 
    libraryDependencies += "org.apache.spark" % "spark-core" % "2.1.0" 

    在目录/usr/local/spark/mycode/testmysql 下执行下面命令打包程序 :/usr/local/sbt/sbt package 

    最后在目录/usr/local/spark/mycode/testmysql 下执行下面命令提交程序 :

    /usr/local/spark/bin/spark-submit --class " TestMySQL " /usr/local/spark/mycode/testmysql/target/scala-2.11/simple-project_2.11-1.0.jar 

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  • 原文地址:https://www.cnblogs.com/lijing925/p/10603016.html
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