1.依赖环境:java
<dependencies> <dependency> <groupId>org.scala-lang</groupId> <artifactId>scala-library</artifactId> <version>2.10.4</version> </dependency> <dependency> <groupId>org.apache.spark</groupId> <artifactId>spark-core_2.10</artifactId> <version>2.2.0</version> </dependency> <dependency> <groupId>org.apache.spark</groupId> <artifactId>spark-sql_2.10</artifactId> <version>2.2.0</version> </dependency> <dependency> <groupId>mysql</groupId> <artifactId>mysql-connector-java</artifactId> <version>5.1.37</version> </dependency> </dependencies>
2.实现方式:mysql
val conf = new SparkConf().setMaster("local[*]").setAppName("msyql数据读取") val spark = SparkSession.builder().config(conf).getOrCreate() val url = "jdbc:mysql://localhost:3306/hisms_sn?user=root&password=root" val prop = new Properties() val properties=Map("url"->"jdbc:mysql://192.168.0.135:3306/disease-qy?useUnicode=true&characterEncoding=UTF-8", "driver"->"com.mysql.jdbc.Driver", "user"->"root", "password"->"root") //读取mysql的5中方式 //1.不指定查询条件---并行度为1 def method1(): Unit ={ val df = spark.read.jdbc(url,"t_kc21k1",prop) println(df.count()) println(df.rdd.partitions.size) df.show(5) } //2.指定数据库字段的范围--并行度为5 /** * 方式二:指定数据库字段的范围 * 经过lowerBound和upperBound 指定分区的范围 * 经过columnName 指定分区的列(只支持整形) * 经过numPartitions 指定分区数量 (不宜过大) * */ def method2(): Unit ={ val lowerBound = 1 val upperBound = 100000 val numPartitions = 5 val df = spark.read.jdbc(url,"t_kc21k1","id",lowerBound,upperBound,numPartitions,prop) println(df.count()) println(df.rdd.partitions.size) df.show(5) } //3.根据任意字段进行分区--并行度为2 def method3(): Unit ={ //经过predicates将数据根据akc194分为2个区 val predicates = Array[String]("akc194 <= '2016-06-30'", "akc194 <= '2017-01-01' and akc194>'2016-06-30'") val df = spark.read.jdbc(url,"t_kc21k1",predicates,prop) println(df.count()) println(df.rdd.partitions.size) df.show(5) } //4.经过load获取---与method1同样 并行度为1 def method4(): Unit ={ val df = spark.read.format("jdbc").options(Map("url"->url,"dbtable"->"t_kc21k1")).option("fetchSize",1000).load() println(df.count()) println(df.rdd.partitions.size) df.show(5) } //5.加载条件查询后的数据 def method5(): Unit ={ //经过predicates将数据根据akc194分为2个区 val query="SELECT id,aac003,id_drg,name_drg from t_kc21k1 where id>50000" //定要用左右括号包起来,由于dbtable的value会被当成一张table做查询,mysql connector会自动dbtable后面加上where 1=1 val df = spark.read.format("jdbc").options(Map("url"->url,"dbtable"->s"($query)kc21k1")).load() println(df.count()) println(df.rdd.partitions.size) df.show(5) }
经过增长分区读取数据,只是增长了并行度,但若是对单机版的spark,仍是不能减小内存的使用,spark读取数据库的规则就是该数据提取至内存,再作内存计算。sql
问题:数据库
windows上使用单机版spark,不依赖hive环境,读取mysql数据表很大的时候,作join操做,sparksql容易发生内存溢出,apache
1.目前只能经过减小数据的读取方式方式内存爆炸----好比:根据结果只选取须要的字段。windows
2.能够同配置使用hive环境,sparksql将会借助hive环境,而不依赖本地内存作计算,防止内存溢出。fetch