Flink--输入数据集Data Sources

时间:2021-05-03 05:21:06

flink在批处理中常见的source

flink在批处理中常见的source主要有两大类。

1.基于本地集合的source(Collection-based-source)

2.基于文件的source(File-based-source)

在flink最常见的创建DataSet方式有三种。

1.使用env.fromElements(),这种方式也支持Tuple,自定义对象等复合形式。

2.使用env.fromCollection(),这种方式支持多种Collection的具体类型

3.使用env.generateSequence()方法创建基于Sequence的DataSet

基于本地集合的

import org.apache.flink.api.scala.{DataSet, ExecutionEnvironment, _}
import scala.collection.immutable.{Queue, Stack}
import scala.collection.mutable
import scala.collection.mutable.{ArrayBuffer, ListBuffer} object DataSource001 {
def main(args: Array[String]): Unit = {
val env = ExecutionEnvironment.getExecutionEnvironment
//0.用element创建DataSet(fromElements)
val ds0: DataSet[String] = env.fromElements("spark", "flink")
ds0.print() //1.用Tuple创建DataSet(fromElements)
val ds1: DataSet[(Int, String)] = env.fromElements((1, "spark"), (2, "flink"))
ds1.print() //2.用Array创建DataSet
val ds2: DataSet[String] = env.fromCollection(Array("spark", "flink"))
ds2.print() //3.用ArrayBuffer创建DataSet
val ds3: DataSet[String] = env.fromCollection(ArrayBuffer("spark", "flink"))
ds3.print() //4.用List创建DataSet
val ds4: DataSet[String] = env.fromCollection(List("spark", "flink"))
ds4.print() //5.用List创建DataSet
val ds5: DataSet[String] = env.fromCollection(ListBuffer("spark", "flink"))
ds5.print() //6.用Vector创建DataSet
val ds6: DataSet[String] = env.fromCollection(Vector("spark", "flink"))
ds6.print() //7.用Queue创建DataSet
val ds7: DataSet[String] = env.fromCollection(Queue("spark", "flink"))
ds7.print() //8.用Stack创建DataSet
val ds8: DataSet[String] = env.fromCollection(Stack("spark", "flink"))
ds8.print() //9.用Stream创建DataSet(Stream相当于lazy List,避免在中间过程中生成不必要的集合)
val ds9: DataSet[String] = env.fromCollection(Stream("spark", "flink"))
ds9.print() //10.用Seq创建DataSet
val ds10: DataSet[String] = env.fromCollection(Seq("spark", "flink"))
ds10.print() //11.用Set创建DataSet
val ds11: DataSet[String] = env.fromCollection(Set("spark", "flink"))
ds11.print() //12.用Iterable创建DataSet
val ds12: DataSet[String] = env.fromCollection(Iterable("spark", "flink"))
ds12.print() //13.用ArraySeq创建DataSet
val ds13: DataSet[String] = env.fromCollection(mutable.ArraySeq("spark", "flink"))
ds13.print() //14.用ArrayStack创建DataSet
val ds14: DataSet[String] = env.fromCollection(mutable.ArrayStack("spark", "flink"))
ds14.print() //15.用Map创建DataSet
val ds15: DataSet[(Int, String)] = env.fromCollection(Map(1 -> "spark", 2 -> "flink"))
ds15.print() //16.用Range创建DataSet
val ds16: DataSet[Int] = env.fromCollection(Range(1, 9))
ds16.print() //17.用fromElements创建DataSet
val ds17: DataSet[Long] = env.generateSequence(1,9)
ds17.print()
}
}

基于文件的source(File-based-source)

(1):读取本地文件
//TODO 使用readTextFile读取本地文件
//TODO 初始化环境
val environment: ExecutionEnvironment = ExecutionEnvironment.getExecutionEnvironment
//TODO 加载数据
val datas: DataSet[String] = environment.readTextFile("data.txt")
//TODO 指定数据的转化
val flatmap_data: DataSet[String] = datas.flatMap(line => line.split("\\W+"))
val tuple_data: DataSet[(String, Int)] = flatmap_data.map(line => (line , 1))
val groupData: GroupedDataSet[(String, Int)] = tuple_data.groupBy(line => line._1)
val result: DataSet[(String, Int)] = groupData.reduce((x, y) => (x._1 , x._2+y._2))
result.print()
(2):读取hdfs数据
//TODO readTextFile读取hdfs数据
//todo 初始化环境
val environment: ExecutionEnvironment = ExecutionEnvironment.getExecutionEnvironment
//TODO 加载数据 val file: DataSet[String] = environment.readTextFile("hdfs://hadoop01:9000/README.txt")
val flatData: DataSet[String] = file.flatMap(line => line.split("\\W+"))
val map_data: DataSet[(String, Int)] = flatData.map(line => (line , 1))
val groupdata: GroupedDataSet[(String, Int)] = map_data.groupBy(line => line._1)
val result_data: DataSet[(String, Int)] = groupdata.reduce((x, y) => (x._1 , x._2+y._2))
result_data.print()
(3):读取CSV数据
//TODO 读取csv数据
val environment: ExecutionEnvironment = ExecutionEnvironment.getExecutionEnvironment
val path = "data2.csv"
val ds3 = environment.readCsvFile[(String, String, String, String,String,Int,Int,Int)](
filePath = path,
lineDelimiter = "\n",
fieldDelimiter = ",",
lenient = false,
ignoreFirstLine = true,
includedFields = Array(0, 1, 2, 3 , 4 , 5 , 6 , 7))
val first = ds3.groupBy(0 , 1).first(50)
first.print()

基于文件的source(遍历目录)

flink支持对一个文件目录内的所有文件,包括所有子目录中的所有文件的遍历访问方式。

对于从文件中读取数据,当读取的数个文件夹的时候,嵌套的文件默认是不会被读取的,只会读取第一个文件,其他的都会被忽略。所以我们需要使用recursive.file.enumeration进行递归读取

val env = ExecutionEnvironment.getExecutionEnvironment
val parameters = new Configuration
// recursive.file.enumeration 开启递归
parameters.setBoolean("recursive.file.enumeration", true)
val ds1 = env.readTextFile("test").withParameters(parameters)
ds1.print()

读取压缩文件

对于以下压缩类型,不需要指定任何额外的inputformat方法,flink可以自动识别并且解压。但是,压缩文件可能不会并行读取,可能是顺序读取的,这样可能会影响作业的可伸缩性。

//TODO  读取压缩文件
val env = ExecutionEnvironment.getExecutionEnvironment
val file = env.readTextFile("test/data1/zookeeper.out.gz").print() tar -czvf ***.tar.gz