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这篇文章给大家介绍一下什么是Apache Flink 中Flink DataSet编程,内容非常详细,感兴趣的小伙伴们可以参考借鉴,希望对大家能有所帮助。
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Flink中DataSet编程是非常常规的编程,只需要实现他的数据集的转换(例如filtering, mapping, joining, grouping)。这个数据集最初是通过数据源创建(例如读取文件、本地数据集加载本地集合),转换的结果通过sink返回到本地(或者分布式)的文件系统或者终端。Flink程序可以运行在各种环境中例如单机,或者嵌入其他程序中。执行过程可以在本地JVM中或者集群中。
Source ===> Flink(transformation)===> Sink
readTextFile(path)
/ TextInputFormat
- Reads files line wise and returns them as Strings.
readTextFileWithValue(path)
/ TextValueInputFormat
- Reads files line wise and returns them as StringValues. StringValues are mutable strings.
readCsvFile(path)
/ CsvInputFormat
- Parses files of comma (or another char) delimited fields. Returns a DataSet of tuples or POJOs. Supports the basic java types and their Value counterparts as field types.
readFileOfPrimitives(path, Class)
/ PrimitiveInputFormat
- Parses files of new-line (or another char sequence) delimited primitive data types such as String
or Integer
.
readFileOfPrimitives(path, delimiter, Class)
/ PrimitiveInputFormat
- Parses files of new-line (or another char sequence) delimited primitive data types such as String
or Integer
using the given delimiter.
fromCollection(Collection)
fromCollection(Iterator, Class)
fromElements(T ...)
fromParallelCollection(SplittableIterator, Class)
generateSequence(from, to)
基于集合的数据源往往用来在开发环境中或者程序员学习中,可以随意造我们所需要的数据,因为方式简单。下面从java和scala两种方式来实现使用集合作为数据源。数据源是简单的1到10
import org.apache.flink.api.java.ExecutionEnvironment; import java.util.ArrayList; import java.util.List; public class JavaDataSetSourceApp { public static void main(String[] args) throws Exception { ExecutionEnvironment executionEnvironment = ExecutionEnvironment.getExecutionEnvironment(); fromCollection(executionEnvironment); } public static void fromCollection(ExecutionEnvironment env) throws Exception { Listlist = new ArrayList (); for (int i = 1; i <= 10; i++) { list.add(i); } env.fromCollection(list).print(); } }
import org.apache.flink.api.scala.ExecutionEnvironment object DataSetSourceApp { def main(args: Array[String]): Unit = { val env = ExecutionEnvironment.getExecutionEnvironment fromCollection(env) } def fromCollection(env: ExecutionEnvironment): Unit = { import org.apache.flink.api.scala._ val data = 1 to 10 env.fromCollection(data).print() } }
在本地文件夹:E:\test\input,下面有一个hello.txt,内容如下:
hello world welcome hello welcome
def main(args: Array[String]): Unit = { val env = ExecutionEnvironment.getExecutionEnvironment //fromCollection(env) textFile(env) } def textFile(env: ExecutionEnvironment): Unit = { val filePathFilter = "E:/test/input/hello.txt" env.readTextFile(filePathFilter).print() }
readTextFile方法需要参数1:文件路径(可以使本地,也可以是hdfs://host:port/file/path),参数2:编码(如果不写,默认UTF-8)
是否可以指定文件夹?
我们直接传递文件夹路径
def main(args: Array[String]): Unit = { val env = ExecutionEnvironment.getExecutionEnvironment //fromCollection(env) textFile(env) } def textFile(env: ExecutionEnvironment): Unit = { //val filePathFilter = "E:/test/input/hello.txt" val filePathFilter = "E:/test/input" env.readTextFile(filePathFilter).print() }
运行结果正常。说明readTextFile方法传入文件夹,也没有问题,它将会遍历文件夹下面的所有文件
public static void main(String[] args) throws Exception { ExecutionEnvironment executionEnvironment = ExecutionEnvironment.getExecutionEnvironment(); // fromCollection(executionEnvironment); textFile(executionEnvironment); } public static void textFile(ExecutionEnvironment env) throws Exception { String filePath = "E:/test/input/hello.txt"; // String filePath = "E:/test/input"; env.readTextFile(filePath).print(); }
同样的道理,java中也可以指定文件或者文件夹,如果指定文件夹,那么将遍历文件夹下面的所有文件。
创建一个CSV文件,内容如下:
name,age,job Tom,26,cat Jerry,24,mouse sophia,30,developer
读取csv文件方法readCsvFile,参数如下:
filePath: String, lineDelimiter: String = "\n", fieldDelimiter: String = ",", 字段分隔符 quoteCharacter: Character = null, ignoreFirstLine: Boolean = false, 是否忽略第一行 ignoreComments: String = null, lenient: Boolean = false, includedFields: Array[Int] = null, 读取文件的哪几列 pojoFields: Array[String] = null)
读取csv文件代码如下:
def csvFile(env:ExecutionEnvironment): Unit = { import org.apache.flink.api.scala._ val filePath = "E:/test/input/people.csv" env.readCsvFile[(String, Int, String)](filePath, ignoreFirstLine = true).print() }
如何只读前两列,就需要指定includedFields了,
env.readCsvFile[(String, Int)](filePath, ignoreFirstLine = true, includedFields = Array(0, 1)).print()
之前使用Tuple方式指定类型,如何指定自定义的一个case class?
def csvFile(env: ExecutionEnvironment): Unit = { import org.apache.flink.api.scala._ val filePath = "E:/test/input/people.csv" // env.readCsvFile[(String, Int, String)](filePath, ignoreFirstLine = true).print() // env.readCsvFile[(String, Int)](filePath, ignoreFirstLine = true, includedFields = Array(0, 1)).print() env.readCsvFile[MyCaseClass](filePath, ignoreFirstLine = true, includedFields = Array(0, 1)).print() } case class MyCaseClass(name: String, age: Int)
如何指定POJO?
新建一个POJO类,people
public class People { private String name; private int age; private String job; @Override public String toString() { return "People{" + "name='" + name + '\'' + ", age=" + age + ", job='" + job + '\'' + '}'; } public String getName() { return name; } public void setName(String name) { this.name = name; } public int getAge() { return age; } public void setAge(int age) { this.age = age; } public String getJob() { return job; } public void setJob(String job) { this.job = job; } }
env.readCsvFile[People](filePath, ignoreFirstLine = true, pojoFields = Array("name", "age", "job")).print()
public static void csvFile(ExecutionEnvironment env) throws Exception { String filePath = "E:/test/input/people.csv"; DataSource> types = env.readCsvFile(filePath).ignoreFirstLine().includeFields("11").types(String.class, Integer.class); types.print(); }
只取出第一列和第二列的数据。
读取POJO数据:
env.readCsvFile(filePath).ignoreFirstLine().pojoType(People.class, "name", "age", "job").print();
def main(args: Array[String]): Unit = { val env = ExecutionEnvironment.getExecutionEnvironment //fromCollection(env) // textFile(env) // csvFile(env) readRecursiveFiles(env) } def readRecursiveFiles(env: ExecutionEnvironment): Unit = { val filePath = "E:/test/nested" val parameter = new Configuration() parameter.setBoolean("recursive.file.enumeration", true) env.readTextFile(filePath).withParameters(parameter).print() }
def readCompressionFiles(env: ExecutionEnvironment): Unit = { val filePath = "E:/test/my.tar.gz" env.readTextFile(filePath).print() }
可以直接读取压缩文件。因为提高了空间利用率,但是却导致CPU的压力也提升了。因此需要一个权衡。需要调优,在各种情况下去选择更合适的方式。不是任何一种优化都能带来想要的结果。如果本身集群的CPU压力就高,那么就不应该读取压缩文件了。
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