当前位置: 首页 > news >正文

交互有趣的网站/seo外链软件

交互有趣的网站,seo外链软件,公主岭网站建设规划,山东省建设厅执业资格注册中心网站我们首先提出这样一个简单的需求:现在要分析某网站的访问日志信息,统计来自不同IP的用户访问的次数,从而通过Geo信息来获得来访用户所在国家地区分布状况。这里我拿我网站的日志记录行示例,如下所示:121.205.198.92 - …

我们首先提出这样一个简单的需求:

现在要分析某网站的访问日志信息,统计来自不同IP的用户访问的次数,从而通过Geo信息来获得来访用户所在国家地区分布状况。这里我拿我网站的日志记录行示例,如下所示:

121.205.198.92 - - [21/Feb/2014:00:00:07 +0800] "GET /archives/417.html HTTP/1.1" 200 11465 "http://shiyanjun.cn/archives/417.html/" "Mozilla/5.0 (Windows NT 5.1; rv:11.0) Gecko/20100101 Firefox/11.0"

121.205.198.92 - - [21/Feb/2014:00:00:11 +0800] "POST /wp-comments-post.php HTTP/1.1" 302 26 "http://shiyanjun.cn/archives/417.html/" "Mozilla/5.0 (Windows NT 5.1; rv:23.0) Gecko/20100101 Firefox/23.0"

121.205.198.92 - - [21/Feb/2014:00:00:12 +0800] "GET /archives/417.html/ HTTP/1.1" 301 26 "http://shiyanjun.cn/archives/417.html/" "Mozilla/5.0 (Windows NT 5.1; rv:11.0) Gecko/20100101 Firefox/11.0"

121.205.198.92 - - [21/Feb/2014:00:00:12 +0800] "GET /archives/417.html HTTP/1.1" 200 11465 "http://shiyanjun.cn/archives/417.html" "Mozilla/5.0 (Windows NT 5.1; rv:11.0) Gecko/20100101 Firefox/11.0"

121.205.241.229 - - [21/Feb/2014:00:00:13 +0800] "GET /archives/526.html HTTP/1.1" 200 12080 "http://shiyanjun.cn/archives/526.html/" "Mozilla/5.0 (Windows NT 5.1; rv:11.0) Gecko/20100101 Firefox/11.0"

121.205.241.229 - - [21/Feb/2014:00:00:15 +0800] "POST /wp-comments-post.php HTTP/1.1" 302 26 "http://shiyanjun.cn/archives/526.html/" "Mozilla/5.0 (Windows NT 5.1; rv:23.0) Gecko/20100101 Firefox/23.0"

Java实现Spark应用程序(Application)

我们实现的统计分析程序,有如下几个功能点:

从HDFS读取日志数据文件

将每行的第一个字段(IP地址)抽取出来

统计每个IP地址出现的次数

根据每个IP地址出现的次数进行一个降序排序

根据IP地址,调用GeoIP库获取IP所属国家

打印输出结果,每行的格式:[国家代码] IP地址 频率

下面,看我们使用Java实现的统计分析应用程序代码,如下所示:

package org.shirdrn.spark.job;

import java.io.File;

import java.io.IOException;

import java.util.Arrays;

import java.util.Collections;

import java.util.Comparator;

import java.util.List;

import java.util.regex.Pattern;

import org.apache.commons.logging.Log;

import org.apache.commons.logging.LogFactory;

import org.apache.spark.api.java.JavaPairRDD;

import org.apache.spark.api.java.JavaRDD;

import org.apache.spark.api.java.JavaSparkContext;

import org.apache.spark.api.java.function.FlatMapFunction;

import org.apache.spark.api.java.function.Function2;

import org.apache.spark.api.java.function.PairFunction;

import org.shirdrn.spark.job.maxmind.Country;

import org.shirdrn.spark.job.maxmind.LookupService;

import scala.Serializable;

import scala.Tuple2;

public class IPAddressStats implements Serializable {

private static final long serialVersionUID = 8533489548835413763L;

private static final Log LOG = LogFactory.getLog(IPAddressStats.class);

private static final Pattern SPACE = Pattern.compile(" ");

private transient LookupService lookupService;

private transient final String geoIPFile;

public IPAddressStats(String geoIPFile) {

this.geoIPFile = geoIPFile;

try {

// lookupService: get country code from a IP address

File file = new File(this.geoIPFile);

LOG.info("GeoIP file: " + file.getAbsolutePath());

lookupService = new AdvancedLookupService(file, LookupService.GEOIP_MEMORY_CACHE);

} catch (IOException e) {

throw new RuntimeException(e);

}

}

@SuppressWarnings("serial")

public void stat(String[] args) {

JavaSparkContext ctx = new JavaSparkContext(args[0], "IPAddressStats",

System.getenv("SPARK_HOME"), JavaSparkContext.jarOfClass(IPAddressStats.class));

JavaRDD lines = ctx.textFile(args[1], 1);

// splits and extracts ip address filed

JavaRDD words = lines.flatMap(new FlatMapFunction() {

@Override

public Iterable call(String s) {

// 121.205.198.92 - - [21/Feb/2014:00:00:07 +0800] "GET /archives/417.html HTTP/1.1" 200 11465 "http://shiyanjun.cn/archives/417.html/" "Mozilla/5.0 (Windows NT 5.1; rv:11.0) Gecko/20100101 Firefox/11.0"

// ip address

return Arrays.asList(SPACE.split(s)[0]);

}

});

// map

JavaPairRDD ones = words.map(new PairFunction() {

@Override

public Tuple2 call(String s) {

return new Tuple2(s, 1);

}

});

// reduce

JavaPairRDD counts = ones.reduceByKey(new Function2() {

@Override

public Integer call(Integer i1, Integer i2) {

return i1 + i2;

}

});

List> output = counts.collect();

// sort statistics result by value

Collections.sort(output, new Comparator>() {

@Override

public int compare(Tuple2 t1, Tuple2 t2) {

if(t1._2 < t2._2) {

return 1;

} else if(t1._2 > t2._2) {

return -1;

}

return 0;

}

});

writeTo(args, output);

}

private void writeTo(String[] args, List> output) {

for (Tuple2, ?> tuple : output) {

Country country = lookupService.getCountry((String) tuple._1);

LOG.info("[" + country.getCode() + "] " + tuple._1 + "\t" + tuple._2);

}

}

public static void main(String[] args) {

// ./bin/run-my-java-example org.shirdrn.spark.job.IPAddressStats spark://m1:7077 hdfs://m1:9000/user/shirdrn/wwwlog20140222.log /home/shirdrn/cloud/programs/spark-0.9.0-incubating-bin-hadoop1/java-examples/GeoIP_DATABASE.dat

if (args.length < 3) {

System.err.println("Usage: IPAddressStats ");

System.err.println(" Example: org.shirdrn.spark.job.IPAddressStats spark://m1:7077 hdfs://m1:9000/user/shirdrn/wwwlog20140222.log /home/shirdrn/cloud/programs/spark-0.9.0-incubating-bin-hadoop1/java-examples/GeoIP_DATABASE.dat");

System.exit(1);

}

String geoIPFile = args[2];

IPAddressStats stats = new IPAddressStats(geoIPFile);

stats.stat(args);

System.exit(0);

}

}

具体实现逻辑,可以参考代码中的注释。我们使用Maven管理构建Java程序,首先看一下我的pom配置中所依赖的软件包,如下所示:

org.apache.spark

spark-core_2.10

0.9.0-incubating

log4j

log4j

1.2.16

dnsjava

dnsjava

2.1.1

commons-net

commons-net

3.1

org.apache.hadoop

hadoop-client

1.2.1

需要说明的是,当我们将程序在Spark集群上运行时,它要求我们的编写的Job能够进行序列化,如果某些字段不需要序列化或者无法序列化,可以直接使用transient修饰即可,如上面的属性lookupService没有实现序列化接口,使用transient使其不执行序列化,否则的话,可能会出现类似如下的错误:

14/03/10 22:34:06 INFO scheduler.DAGScheduler: Failed to run collect at IPAddressStats.java:76

Exception in thread "main" org.apache.spark.SparkException: Job aborted: Task not serializable: java.io.NotSerializableException: org.shirdrn.spark.job.IPAddressStats

at org.apache.spark.scheduler.DAGScheduler$$anonfun$org$apache$spark$scheduler$DAGScheduler$$abortStage$1.apply(DAGScheduler.scala:1028)

at org.apache.spark.scheduler.DAGScheduler$$anonfun$org$apache$spark$scheduler$DAGScheduler$$abortStage$1.apply(DAGScheduler.scala:1026)

at scala.collection.mutable.ResizableArray$class.foreach(ResizableArray.scala:59)

at scala.collection.mutable.ArrayBuffer.foreach(ArrayBuffer.scala:47)

at org.apache.spark.scheduler.DAGScheduler.org$apache$spark$scheduler$DAGScheduler$$abortStage(DAGScheduler.scala:1026)

at org.apache.spark.scheduler.DAGScheduler.org$apache$spark$scheduler$DAGScheduler$$submitMissingTasks(DAGScheduler.scala:794)

at org.apache.spark.scheduler.DAGScheduler.org$apache$spark$scheduler$DAGScheduler$$submitStage(DAGScheduler.scala:737)

at org.apache.spark.scheduler.DAGScheduler$$anonfun$org$apache$spark$scheduler$DAGScheduler$$submitStage$4.apply(DAGScheduler.scala:741)

at org.apache.spark.scheduler.DAGScheduler$$anonfun$org$apache$spark$scheduler$DAGScheduler$$submitStage$4.apply(DAGScheduler.scala:740)

at scala.collection.immutable.List.foreach(List.scala:318)

at org.apache.spark.scheduler.DAGScheduler.org$apache$spark$scheduler$DAGScheduler$$submitStage(DAGScheduler.scala:740)

at org.apache.spark.scheduler.DAGScheduler.processEvent(DAGScheduler.scala:569)

at org.apache.spark.scheduler.DAGScheduler$$anonfun$start$1$$anon$2$$anonfun$receive$1.applyOrElse(DAGScheduler.scala:207)

at akka.actor.ActorCell.receiveMessage(ActorCell.scala:498)

at akka.actor.ActorCell.invoke(ActorCell.scala:456)

at akka.dispatch.Mailbox.processMailbox(Mailbox.scala:237)

at akka.dispatch.Mailbox.run(Mailbox.scala:219)

at akka.dispatch.ForkJoinExecutorConfigurator$AkkaForkJoinTask.exec(AbstractDispatcher.scala:386)

at scala.concurrent.forkjoin.ForkJoinTask.doExec(ForkJoinTask.java:260)

at scala.concurrent.forkjoin.ForkJoinPool$WorkQueue.runTask(ForkJoinPool.java:1339)

at scala.concurrent.forkjoin.ForkJoinPool.runWorker(ForkJoinPool.java:1979)

at scala.concurrent.forkjoin.ForkJoinWorkerThread.run(ForkJoinWorkerThread.java:107)

在Spark集群上运行Java程序

这里,我使用了Maven管理构建Java程序,实现上述代码以后,使用Maven的maven-assembly-plugin插件,配置内容如下所示:

maven-assembly-plugin

org.shirdrn.spark.job.UserAgentStats

jar-with-dependencies

*.properties

*.xml

make-assembly

package

single

将相关依赖库文件都打进程序包里面,最后拷贝JAR文件到Linux系统下(不一定非要在Spark集群的Master节点上),保证该节点上Spark的环境变量配置正确即可看。Spark软件发行包解压缩后,可以看到脚本bin/run-example,我们可以直接修改该脚本,将对应的路径指向我们实现的Java程序包(修改变量EXAMPLES_DIR以及我们的JAR文件存放位置相关的内容),使用该脚本就可以运行,脚本内容如下所示:

cygwin=false

case "`uname`" in

CYGWIN*) cygwin=true;;

esac

SCALA_VERSION=2.10

# Figure out where the Scala framework is installed

FWDIR="$(cd `dirname $0`/..; pwd)"

# Export this as SPARK_HOME

export SPARK_HOME="$FWDIR"

# Load environment variables from conf/spark-env.sh, if it exists

if [ -e "$FWDIR/conf/spark-env.sh" ] ; then

. $FWDIR/conf/spark-env.sh

fi

if [ -z "$1" ]; then

echo "Usage: run-example []" >&2

exit 1

fi

# Figure out the JAR file that our examples were packaged into. This includes a bit of a hack

# to avoid the -sources and -doc packages that are built by publish-local.

EXAMPLES_DIR="$FWDIR"/java-examples

SPARK_EXAMPLES_JAR=""

if [ -e "$EXAMPLES_DIR"/*.jar ]; then

export SPARK_EXAMPLES_JAR=`ls "$EXAMPLES_DIR"/*.jar`

fi

if [[ -z $SPARK_EXAMPLES_JAR ]]; then

echo "Failed to find Spark examples assembly in $FWDIR/examples/target" >&2

echo "You need to build Spark with sbt/sbt assembly before running this program" >&2

exit 1

fi

# Since the examples JAR ideally shouldn't include spark-core (that dependency should be

# "provided"), also add our standard Spark classpath, built using compute-classpath.sh.

CLASSPATH=`$FWDIR/bin/compute-classpath.sh`

CLASSPATH="$SPARK_EXAMPLES_JAR:$CLASSPATH"

if $cygwin; then

CLASSPATH=`cygpath -wp $CLASSPATH`

export SPARK_EXAMPLES_JAR=`cygpath -w $SPARK_EXAMPLES_JAR`

fi

# Find java binary

if [ -n "${JAVA_HOME}" ]; then

RUNNER="${JAVA_HOME}/bin/java"

else

if [ `command -v java` ]; then

RUNNER="java"

else

echo "JAVA_HOME is not set" >&2

exit 1

fi

fi

# Set JAVA_OPTS to be able to load native libraries and to set heap size

JAVA_OPTS="$SPARK_JAVA_OPTS"

JAVA_OPTS="$JAVA_OPTS -Djava.library.path=$SPARK_LIBRARY_PATH"

# Load extra JAVA_OPTS from conf/java-opts, if it exists

if [ -e "$FWDIR/conf/java-opts" ] ; then

JAVA_OPTS="$JAVA_OPTS `cat $FWDIR/conf/java-opts`"

fi

export JAVA_OPTS

if [ "$SPARK_PRINT_LAUNCH_COMMAND" == "1" ]; then

echo -n "Spark Command: "

echo "$RUNNER" -cp "$CLASSPATH" $JAVA_OPTS "$@"

echo "========================================"

echo

fi

exec "$RUNNER" -cp "$CLASSPATH" $JAVA_OPTS "$@"

在Spark上运行我们开发的Java程序,执行如下命令:

cd /home/shirdrn/cloud/programs/spark-0.9.0-incubating-bin-hadoop1

./bin/run-my-java-example org.shirdrn.spark.job.IPAddressStats spark://m1:7077 hdfs://m1:9000/user/shirdrn/wwwlog20140222.log /home/shirdrn/cloud/programs/spark-0.9.0-incubating-bin-hadoop1/java-examples/GeoIP_DATABASE.dat

我实现的程序类org.shirdrn.spark.job.IPAddressStats运行需要3个参数:

Spark集群主节点URL:例如我的是spark://m1:7077

输入文件路径:业务相关的,我这里是从HDFS上读取文件hdfs://m1:9000/user/shirdrn/wwwlog20140222.log

GeoIP库文件:业务相关的,用来计算IP地址所属国家的外部文件

如果程序没有错误,能够正常运行,控制台输出程序运行日志,示例如下所示:

14/03/10 22:17:24 INFO job.IPAddressStats: GeoIP file: /home/shirdrn/cloud/programs/spark-0.9.0-incubating-bin-hadoop1/java-examples/GeoIP_DATABASE.dat

SLF4J: Class path contains multiple SLF4J bindings.

SLF4J: Found binding in [jar:file:/home/shirdrn/cloud/programs/spark-0.9.0-incubating-bin-hadoop1/java-examples/spark-0.0.1-SNAPSHOT-jar-with-dependencies.jar!/org/slf4j/impl/StaticLoggerBinder.class]

SLF4J: Found binding in [jar:file:/home/shirdrn/cloud/programs/spark-0.9.0-incubating-bin-hadoop1/assembly/target/scala-2.10/spark-assembly_2.10-0.9.0-incubating-hadoop1.0.4.jar!/org/slf4j/impl/StaticLoggerBinder.class]

SLF4J: See http://www.slf4j.org/codes.html#multiple_bindings for an explanation.

SLF4J: Actual binding is of type [org.slf4j.impl.Log4jLoggerFactory]

14/03/10 22:17:25 INFO slf4j.Slf4jLogger: Slf4jLogger started

14/03/10 22:17:25 INFO Remoting: Starting remoting

14/03/10 22:17:25 INFO Remoting: Remoting started; listening on addresses :[akka.tcp://spark@m1:57379]

14/03/10 22:17:25 INFO Remoting: Remoting now listens on addresses: [akka.tcp://spark@m1:57379]

14/03/10 22:17:25 INFO spark.SparkEnv: Registering BlockManagerMaster

14/03/10 22:17:25 INFO storage.DiskBlockManager: Created local directory at /tmp/spark-local-20140310221725-c1cb

14/03/10 22:17:25 INFO storage.MemoryStore: MemoryStore started with capacity 143.8 MB.

14/03/10 22:17:25 INFO network.ConnectionManager: Bound socket to port 45189 with id = ConnectionManagerId(m1,45189)

14/03/10 22:17:25 INFO storage.BlockManagerMaster: Trying to register BlockManager

14/03/10 22:17:25 INFO storage.BlockManagerMasterActor$BlockManagerInfo: Registering block manager m1:45189 with 143.8 MB RAM

14/03/10 22:17:25 INFO storage.BlockManagerMaster: Registered BlockManager

14/03/10 22:17:25 INFO spark.HttpServer: Starting HTTP Server

14/03/10 22:17:25 INFO server.Server: jetty-7.x.y-SNAPSHOT

14/03/10 22:17:25 INFO server.AbstractConnector: Started SocketConnector@0.0.0.0:49186

14/03/10 22:17:25 INFO broadcast.HttpBroadcast: Broadcast server started at http://10.95.3.56:49186

14/03/10 22:17:25 INFO spark.SparkEnv: Registering MapOutputTracker

14/03/10 22:17:25 INFO spark.HttpFileServer: HTTP File server directory is /tmp/spark-56c3e30d-a01b-4752-83d1-af1609ab2370

14/03/10 22:17:25 INFO spark.HttpServer: Starting HTTP Server

14/03/10 22:17:25 INFO server.Server: jetty-7.x.y-SNAPSHOT

14/03/10 22:17:25 INFO server.AbstractConnector: Started SocketConnector@0.0.0.0:52073

14/03/10 22:17:26 INFO server.Server: jetty-7.x.y-SNAPSHOT

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/storage/rdd,null}

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/storage,null}

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/stages/stage,null}

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/stages/pool,null}

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/stages,null}

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/environment,null}

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/executors,null}

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/metrics/json,null}

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/static,null}

14/03/10 22:17:26 INFO handler.ContextHandler: started o.e.j.s.h.ContextHandler{/,null}

14/03/10 22:17:26 INFO server.AbstractConnector: Started SelectChannelConnector@0.0.0.0:4040

14/03/10 22:17:26 INFO ui.SparkUI: Started Spark Web UI at http://m1:4040

14/03/10 22:17:26 INFO spark.SparkContext: Added JAR /home/shirdrn/cloud/programs/spark-0.9.0-incubating-bin-hadoop1/java-examples/spark-0.0.1-SNAPSHOT-jar-with-dependencies.jar at http://10.95.3.56:52073/jars/spark-0.0.1-SNAPSHOT-jar-with-dependencies.jar with timestamp 1394515046396

14/03/10 22:17:26 INFO client.AppClient$ClientActor: Connecting to master spark://m1:7077...

14/03/10 22:17:26 INFO storage.MemoryStore: ensureFreeSpace(60341) called with curMem=0, maxMem=150837657

14/03/10 22:17:26 INFO storage.MemoryStore: Block broadcast_0 stored as values to memory (estimated size 58.9 KB, free 143.8 MB)

14/03/10 22:17:26 INFO cluster.SparkDeploySchedulerBackend: Connected to Spark cluster with app ID app-20140310221726-0000

14/03/10 22:17:27 INFO client.AppClient$ClientActor: Executor added: app-20140310221726-0000/0 on worker-20140310221648-s1-52544 (s1:52544) with 1 cores

14/03/10 22:17:27 INFO cluster.SparkDeploySchedulerBackend: Granted executor ID app-20140310221726-0000/0 on hostPort s1:52544 with 1 cores, 512.0 MB RAM

14/03/10 22:17:27 WARN util.NativeCodeLoader: Unable to load native-hadoop library for your platform... using builtin-java classes where applicable

14/03/10 22:17:27 WARN snappy.LoadSnappy: Snappy native library not loaded

14/03/10 22:17:27 INFO client.AppClient$ClientActor: Executor updated: app-20140310221726-0000/0 is now RUNNING

14/03/10 22:17:27 INFO mapred.FileInputFormat: Total input paths to process : 1

14/03/10 22:17:27 INFO spark.SparkContext: Starting job: collect at IPAddressStats.java:77

14/03/10 22:17:27 INFO scheduler.DAGScheduler: Registering RDD 4 (reduceByKey at IPAddressStats.java:70)

14/03/10 22:17:27 INFO scheduler.DAGScheduler: Got job 0 (collect at IPAddressStats.java:77) with 1 output partitions (allowLocal=false)

14/03/10 22:17:27 INFO scheduler.DAGScheduler: Final stage: Stage 0 (collect at IPAddressStats.java:77)

14/03/10 22:17:27 INFO scheduler.DAGScheduler: Parents of final stage: List(Stage 1)

14/03/10 22:17:27 INFO scheduler.DAGScheduler: Missing parents: List(Stage 1)

14/03/10 22:17:27 INFO scheduler.DAGScheduler: Submitting Stage 1 (MapPartitionsRDD[4] at reduceByKey at IPAddressStats.java:70), which has no missing parents

14/03/10 22:17:27 INFO scheduler.DAGScheduler: Submitting 1 missing tasks from Stage 1 (MapPartitionsRDD[4] at reduceByKey at IPAddressStats.java:70)

14/03/10 22:17:27 INFO scheduler.TaskSchedulerImpl: Adding task set 1.0 with 1 tasks

14/03/10 22:17:28 INFO cluster.SparkDeploySchedulerBackend: Registered executor: Actor[akka.tcp://sparkExecutor@s1:59233/user/Executor#-671170811] with ID 0

14/03/10 22:17:28 INFO scheduler.TaskSetManager: Starting task 1.0:0 as TID 0 on executor 0: s1 (PROCESS_LOCAL)

14/03/10 22:17:28 INFO scheduler.TaskSetManager: Serialized task 1.0:0 as 2396 bytes in 5 ms

14/03/10 22:17:29 INFO storage.BlockManagerMasterActor$BlockManagerInfo: Registering block manager s1:47282 with 297.0 MB RAM

14/03/10 22:17:32 INFO scheduler.TaskSetManager: Finished TID 0 in 3376 ms on s1 (progress: 0/1)

14/03/10 22:17:32 INFO scheduler.DAGScheduler: Completed ShuffleMapTask(1, 0)

14/03/10 22:17:32 INFO scheduler.DAGScheduler: Stage 1 (reduceByKey at IPAddressStats.java:70) finished in 4.420 s

14/03/10 22:17:32 INFO scheduler.DAGScheduler: looking for newly runnable stages

14/03/10 22:17:32 INFO scheduler.DAGScheduler: running: Set()

14/03/10 22:17:32 INFO scheduler.DAGScheduler: waiting: Set(Stage 0)

14/03/10 22:17:32 INFO scheduler.DAGScheduler: failed: Set()

14/03/10 22:17:32 INFO scheduler.TaskSchedulerImpl: Remove TaskSet 1.0 from pool

14/03/10 22:17:32 INFO scheduler.DAGScheduler: Missing parents for Stage 0: List()

14/03/10 22:17:32 INFO scheduler.DAGScheduler: Submitting Stage 0 (MapPartitionsRDD[6] at reduceByKey at IPAddressStats.java:70), which is now runnable

14/03/10 22:17:32 INFO scheduler.DAGScheduler: Submitting 1 missing tasks from Stage 0 (MapPartitionsRDD[6] at reduceByKey at IPAddressStats.java:70)

14/03/10 22:17:32 INFO scheduler.TaskSchedulerImpl: Adding task set 0.0 with 1 tasks

14/03/10 22:17:32 INFO scheduler.TaskSetManager: Starting task 0.0:0 as TID 1 on executor 0: s1 (PROCESS_LOCAL)

14/03/10 22:17:32 INFO scheduler.TaskSetManager: Serialized task 0.0:0 as 2255 bytes in 1 ms

14/03/10 22:17:32 INFO spark.MapOutputTrackerMasterActor: Asked to send map output locations for shuffle 0 to spark@s1:33534

14/03/10 22:17:32 INFO spark.MapOutputTrackerMaster: Size of output statuses for shuffle 0 is 120 bytes

14/03/10 22:17:32 INFO scheduler.TaskSetManager: Finished TID 1 in 282 ms on s1 (progress: 0/1)

14/03/10 22:17:32 INFO scheduler.DAGScheduler: Completed ResultTask(0, 0)

14/03/10 22:17:32 INFO scheduler.DAGScheduler: Stage 0 (collect at IPAddressStats.java:77) finished in 0.314 s

14/03/10 22:17:32 INFO scheduler.TaskSchedulerImpl: Remove TaskSet 0.0 from pool

14/03/10 22:17:32 INFO spark.SparkContext: Job finished: collect at IPAddressStats.java:77, took 4.870958309 s

14/03/10 22:17:32 INFO job.IPAddressStats: [CN] 58.246.49.218 312

14/03/10 22:17:32 INFO job.IPAddressStats: [KR] 1.234.83.77 300

14/03/10 22:17:32 INFO job.IPAddressStats: [CN] 120.43.11.16 212

14/03/10 22:17:32 INFO job.IPAddressStats: [CN] 110.85.72.254 207

14/03/10 22:17:32 INFO job.IPAddressStats: [CN] 27.150.229.134 185

14/03/10 22:17:32 INFO job.IPAddressStats: [HK] 180.178.52.181 181

14/03/10 22:17:32 INFO job.IPAddressStats: [CN] 120.37.210.212 180

14/03/10 22:17:32 INFO job.IPAddressStats: [CN] 222.77.226.83 176

14/03/10 22:17:32 INFO job.IPAddressStats: [CN] 120.43.11.205 169

14/03/10 22:17:32 INFO job.IPAddressStats: [CN] 120.43.9.19 165

...

我们也可以通过Web控制台来查看当前执行应用程序(Application)的状态信息,通过Master节点的8080端口(如:http://m1:8080/)就能看到集群的应用程序(Application)状态信息。

另外,需要说明的时候,如果在Unix环境下使用Eclipse使用Java开发Spark应用程序,也能够直接通过Eclipse连接Spark集群,并提交开发的应用程序,然后交给集群去处理。

总结

以上就是本文关于详解Java编写并运行spark应用程序的方法的全部内容,希望对大家有所帮助。有什么问题可以随时留言,小编会及时回复大家。

http://www.lbrq.cn/news/1355257.html

相关文章:

  • 网站制作与建设与网页制作/学it什么培训机构好
  • 怎样做网站规划/济南网站优化
  • app界面展示图/西安seo排名优化推广价格
  • 东莞代办注册公司费用/搜索引擎优化的实验结果分析
  • 做手机网站用什么/2021关键词搜索排行
  • 社交网站建设/免费com域名注册网站
  • wordpres做视频网站/seo助力网站转化率提升
  • 搜索引擎优化人员优化/qq群排名优化软件官网
  • 网站站内交换链接怎么做/网址推广
  • 政府网站建设的讲话/什么软件可以发布广告信息
  • 网站接入商是什么意思/他达那非片能延时多久
  • 广告网站定制/百度网盘登录入口官网
  • wordpress 栏目列表页/seo是什么部门
  • 常州设计网站/今日热点头条
  • 新疆建设兵团养老保险网站/seo基础篇
  • 微信怎么制作自己的公众号/南京 seo 价格
  • 云南网站开发培训机构/nba最新交易消息
  • 如何做电影网站狼视听/优化教程网
  • 网站不收录是什么原因/鞍山做网站的公司
  • 高端品牌网站建设兴田德润可信赖/百度搜索优化怎么做
  • led营销型网站建设/济南做seo的公司排名
  • 网站建设毕业设计过程/网络营销流程
  • 网站建设 服务内容 费用/常用网站推广方法及资源
  • 网站建设中小企业广西/百度推广总部电话
  • 做外贸网站应该关注哪些地方/合肥网站推广优化
  • 没有做老千的斗牛网站6/百度免费推广怎么操作
  • 怎么做类似淘宝的网站/百度网盘网页版登录首页
  • 网站视频怎么做的/深圳谷歌推广公司
  • wordpress 导入word/福建seo优化
  • 区网站建设/百度快照怎么没有了
  • WMS及UI渲染底层原理学习
  • 自动驾驶系统的网络安全风险分析
  • 【Linux】调试器gdb/cgdb的使用
  • 如何创建一个vue项目
  • 5G随身WiFi怎么选?实测延迟/网速/续航,中兴V50适合商务,格行MT700适合短租、户外党~避坑指南+适用场景全解析
  • Unknown initial character set index ‘255’,Kettle连接MySQL数据库常见错误及解决方案大全