Spark Structured Streaming框架(2)之数据输入源详解

  Spark Structured Streaming目前的2.1.0版本只支持输入源:File、kafka和socket。

1. Socket

  Socket方式是最简单的数据输入源,如Quick example所示的程序,就是使用的这种方式。用户只需要指定"socket"形式并配置监听的IP和Port即可。

val scoketDF = spark.readStream

.format("socket")

.option("host","localhost")

.option("port", 9999)

.load()

注意:

Socket方式Streaming是接收UTF8的text数据,并且这种方式最后只用于测试,不要用户端到端的项目中。

2. Kafka

  Structured streaming提供接收kafka数据源的接口,用户使用起来也非常方便,只是需要注意开发环境所依赖的特别库,同时streaming运行环境的kafka版本。

2.1 开发环境

  若以kafka作为输入源,那么开发环境需要再引入所依赖的架包。如使用了Spark版本是2.1.0,那么maven的pom.xml文件中需要添加如下的依赖库。

<dependency>

<groupId>org.apache.spark</groupId>

<artifactId>spark-sql-kafka-0.10_2.11</artifactId>

<version>2.1.0</version>

</dependency>

2.2 API

  与使用socket作为输入源类似,只需要指定"kafka"作为输入源,同时传递kafka的server集和topic集。如下所示:

// Subscribe to 1 topic

val df = spark

.readStream

.format("kafka")

.option("kafka.bootstrap.servers", "host1:port1,host2:port2")

.option("subscribe", "topic1")

.load()

df.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

.as[(String, String)]

// Subscribe to multiple topics

val df = spark

.readStream

.format("kafka")

.option("kafka.bootstrap.servers", "host1:port1,host2:port2")

.option("subscribe", "topic1,topic2")

.load()

df.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

.as[(String, String)]

// Subscribe to a pattern

val df = spark

.readStream

.format("kafka")

.option("kafka.bootstrap.servers", "host1:port1,host2:port2")

.option("subscribePattern", "topic.*")

.load()

df.selectExpr("CAST(key AS STRING)", "CAST(value AS STRING)")

.as[(String, String)]

2.3 运行环境

  由于spark 2.1.0使用了kafka的版本是0.10,所以kafka server也要使用同样版本,即发送数据的kafka也需要使用0.10版本。

否则会出现如下的错误:

Spark Structured Streaming框架(2)之数据输入源详解

图 21

3. File

  Structured Streaming可以指定一个目录的文件作为数据输入源,其中支持的文件格式有:text、csv、json、parquet。

如下所示:

object StructuredFile{

def main(args:Array[String]){

val spark = SparkSession

.builder

.appName("StructuredNetWordCount")

.getOrCreate()

val userSchema = new StructType().add("name","string").add("age","integer")

val jsonDF = spark

.readStream

.schema(userSchema)

.json("/root/jar/directory")//Equivalent to format("json").load("/root/jar/directore")

Val query = jsonDF.writeStream

.format(console)

.start()

Query.awaitTermination()

}

}

 1) DataStreamReader接口

  读取文件的接口有5个:

  • format(source).load(path):source参数是指文件的形式,有text、csv、json、parquet四种形式;
  • text(path):其封装了format("text").load(path);
  • json(path):其封装了format("json").load(path);
  • csv(path):其封装了format("csv").load(path);
  • parquet(path):其封装了format("parquet").load(path);

  其中path参数为文件的路径,若该路径发现新增文件,则会被以数据流的形式被获取。但该路径只能是指定的格式文件,不能存放其它文件格式。

注意:

若是以Spark集群方式运行,则路径是hdfs种的文件路径;若是以local方式执行,则路径为本地路径。

 2) schema()方法

  获取的文件形式有四种,但并不是每种格式都需要调用schema()方法来配置文件信息:

  • csv、json、parquet:用户需要通过schema()方法手动配置文件信息;
  • text:不需要用户指定schema,其返回的列是只有一个"value"。

4) 自定义

  若上述Spark Structured Streaming API提供的数据输入源不能满足要求,那么还有一种方法可以使用:修改源码。

如下通过获取"socket"数据源相应类的内容为例,介绍具体使用方式:

4.1 实现Provider

  首先实现一个Provider,该类会返回一个数据的数据源对象。其中Provider实现类需要实现三个方法:

序号

方法

描述

1

souceSchema

该方法返回一个配置信息的词典,key是字符串,value是StructType对象

2

createSource

该方法返回一个接受数据源的对象,其为Source接口的子类

3

shortName

该方法返回一个数据源的标识符,如上述format()方法传递的参数:"socket"、"json"或"kafka";此时返回的字符串,就是format()方法传递的参数

  如下所示实现一个TextRabbitMQSourceProvider类:

class TextRabbitMQSourceProvider extends StreamSourceProvider with DataSourceRegister with Logging {

private def parseIncludeTimestamp(params: Map[String, String]): Boolean = {

Try(params.getOrElse("includeTimestamp", "false").toBoolean) match {

case Success(bool) => bool

case Failure(_) =>

throw new AnalysisException("includeTimestamp must be set to either \"true\" or \"false\"")

}

}

/** Returns the name and schema of the source that can be used to continually read data. */

override def sourceSchema(

sqlContext: SQLContext,

schema: Option[StructType],

providerName: String,

parameters: Map[String, String]): (String, StructType) = {

logWarning("The socket source should not be used for production applications! " +

"It does not support recovery.")

if (!parameters.contains("host")) {

throw new AnalysisException("Set a host to read from with option(\"host\", ...).")

}

if (!parameters.contains("port")) {

throw new AnalysisException("Set a port to read from with option(\"port\", ...).")

}

val schema =

if (parseIncludeTimestamp(parameters)) {

TextSocketSource.SCHEMA_TIMESTAMP

} else {

TextSocketSource.SCHEMA_REGULAR

}

("textSocket", schema)

}

override def createSource(

sqlContext: SQLContext,

metadataPath: String,

schema: Option[StructType],

providerName: String,

parameters: Map[String, String]): Source = {

val host = parameters("host")

val port = parameters("port").toInt

new TextRabbitMQSource(host, port, parseIncludeTimestamp(parameters), sqlContext)

}

/** String that represents the format that this data source provider uses. */

override def shortName(): String = "RabbitMQ"

}

4.2 实现Source

  用户需要实现一个真正接受数据的类,该类实例是由Provider实现类来实例化,如上述的createSource()方法。其中需要实现Source抽象类的几个方法,从而让Structured Streaming引擎能够调用:

序号

方法

描述

1

getOffset

获取可用的数据偏移量,表明是否有可用的数据

2

getBatch

获取可用的数据,以DataFrame对象形式返回

3

commit

传递已经接收的数据偏移量

4

stop

听着Source数据源

class TextRabbitMQSource(host: String, port: Int, includeTimestamp: Boolean, sqlContext: SQLContext)

extends Source with Logging {

@GuardedBy("this")

private var socket: Socket = null

@GuardedBy("this")

private var readThread: Thread = null

/**

* All batches from `lastCommittedOffset + 1` to `currentOffset`, inclusive.

* Stored in a ListBuffer to facilitate removing committed batches.

*/

@GuardedBy("this")

protected val batches = new ListBuffer[(String, Timestamp)]

@GuardedBy("this")

protected var currentOffset: LongOffset = new LongOffset(-1)

@GuardedBy("this")

protected var lastOffsetCommitted : LongOffset = new LongOffset(-1)

initialize()

private def initialize(): Unit = synchronized {

socket = new Socket(host, port)

val reader = new BufferedReader(new InputStreamReader(socket.getInputStream))

readThread = new Thread(s"TextSocketSource($host, $port)") {

setDaemon(true)

override def run(): Unit = {

try {

while (true) {

val line = reader.readLine()

if (line == null) {

// End of file reached

logWarning(s"Stream closed by $host:$port")

return

}

TextSocketSource.this.synchronized {

val newData = (line,

Timestamp.valueOf(

TextSocketSource.DATE_FORMAT.format(Calendar.getInstance().getTime()))

)

currentOffset = currentOffset + 1

batches.append(newData)

}

}

} catch {

case e: IOException =>

}

}

}

readThread.start()

}

/** Returns the schema of the data from this source */

override def schema: StructType = if (includeTimestamp) TextSocketSource.SCHEMA_TIMESTAMP

else TextSocketSource.SCHEMA_REGULAR

override def getOffset: Option[Offset] = synchronized {

if (currentOffset.offset == -1) {

None

} else {

Some(currentOffset)

}

}

/** Returns the data that is between the offsets (`start`, `end`]. */

override def getBatch(start: Option[Offset], end: Offset): DataFrame = synchronized {

val startOrdinal =

start.flatMap(LongOffset.convert).getOrElse(LongOffset(-1)).offset.toInt + 1

val endOrdinal = LongOffset.convert(end).getOrElse(LongOffset(-1)).offset.toInt + 1

// Internal buffer only holds the batches after lastOffsetCommitted

val rawList = synchronized {

val sliceStart = startOrdinal - lastOffsetCommitted.offset.toInt - 1

val sliceEnd = endOrdinal - lastOffsetCommitted.offset.toInt - 1

batches.slice(sliceStart, sliceEnd)

}

import sqlContext.implicits._

val rawBatch = sqlContext.createDataset(rawList)

// Underlying MemoryStream has schema (String, Timestamp); strip out the timestamp

// if requested.

if (includeTimestamp) {

rawBatch.toDF("value", "timestamp")

} else {

// Strip out timestamp

rawBatch.select("_1").toDF("value")

}

}

override def commit(end: Offset): Unit = synchronized {

val newOffset = LongOffset.convert(end).getOrElse(

sys.error(s"TextSocketStream.commit() received an offset ($end) that did not " +

s"originate with an instance of this class")

)

val offsetDiff = (newOffset.offset - lastOffsetCommitted.offset).toInt

if (offsetDiff < 0) {

sys.error(s"Offsets committed out of order: $lastOffsetCommitted followed by $end")

}

batches.trimStart(offsetDiff)

lastOffsetCommitted = newOffset

}

/** Stop this source. */

override def stop(): Unit = synchronized {

if (socket != null) {

try {

// Unfortunately, BufferedReader.readLine() cannot be interrupted, so the only way to

// stop the readThread is to close the socket.

socket.close()

} catch {

case e: IOException =>

}

socket = null

}

}

override def toString: String = s"TextSocketSource[host: $host, port: $port]"

}

4.3 注册Provider

  由于Structured Streaming引擎会根据用户在format()方法传递的数据源类型来寻找具体数据源的provider,即在DataSource.lookupDataSource()方法中寻找。所以用户需要将上述实现的Provider类注册到Structured Streaming引擎中。所以用户需要将provider实现类的完整名称添加到引擎中的某个,这个地方就是在Spark SQL工程中的\spark-2.2.0\sql\core\src\main\resources\META-INF\services\org.apache.spark.sql.sources.DataSourceRegister文件中。用户通过将Provider实现类名称添加到该文件中,从而完成Provider类的注册工作。

如下所示在文件最后一行添加,我们自己自定义的实现类完整路径和名称:

org.apache.spark.sql.execution.datasources.csv.CSVFileFormat

org.apache.spark.sql.execution.datasources.jdbc.JdbcRelationProvider

org.apache.spark.sql.execution.datasources.json.JsonFileFormat

org.apache.spark.sql.execution.datasources.parquet.ParquetFileFormat

org.apache.spark.sql.execution.datasources.text.TextFileFormat

org.apache.spark.sql.execution.streaming.ConsoleSinkProvider

org.apache.spark.sql.execution.streaming.TextSocketSourceProvider

org.apache.spark.sql.execution.streaming.RateSourceProvider

org.apache.spark.sql.execution.streaming.TextRabbitMQSourceProvider

4.4 使用API

  再Spark SQL源码重新编译后,并肩其jar包丢进Spark的jars路径下。从而用户就能够像使用Structured Streaming自带的数据输入源一样,使用用户自定义的"RabbitMQ"数据输入源了。即用户只需将RabbitMQ字符串传递给format()方法,其使用方式和"socket"方式一样,因为上述的数据源内容其实是Socket方式的实现内容。

5. 参考文献

[1]. Structured Streaming Programming Guide.

上一篇:3DMark Sky Driver


下一篇:Ceph性能优化总结(v0.94)