spark操作hbase

来源:互联网 发布:网络监控ip地址冲突 编辑:程序博客网 时间:2024/05/21 17:06

企业中数据源会从HBase取出,这就涉及到了读取hbase数据,本文为了尽可能的让大家能尽快实践和操作Hbase,使用的是Spark Shell 来进行Hbase操作。

一、环境:

Haoop2.2.0

Hbase版本0.96.2-hadoop2, r1581096

Spark1.0.0

本文假设环境已经搭建好,Spark环境搭建可见Spark Haoop集群搭建

Hadoop2.2.0要注意和Hbase的版本兼容,这里Hbase采用0.96.2

二、原理

Spark操作HBase其实是和java client操作HBase的原理是一致的:

scala和java都是基于jvm的语言,只要将hbase的类加载到classpath内,即可调用操作,其它框架类似。

相同点 :即都是当作client来连接HMaster,然后利用hbase的API来对Hbase进行操作。

不同点 :唯一不同的是:Spark可以将Hbase的数据来当作RDD处理,从而利用Spark来进行并行计算。

三、实践

1、首先检查依赖jar包,在这之前如果hbase的jar包不在spark-shell的classpath里,则需要添加进来。

设置方法: 在Spark-evn.sh里添加SPARK_CLASSPATH=/home/victor/software/hbase/lib/*

这样再再启动启动bin/spark-shell, 启动完毕并且Worker成功注册上之后,import jar 包。

2、操作hbase

2.1 Hbase中数据

hbase里有张score表,里面有2个CF,分别为course和grade。数据如下:

hbase(main):001:0> scan 'scores'ROW                                    COLUMN+CELL                                                                                                      Jim                                   column=course:art, timestamp=1404142440676, value=67                                                             Jim                                   column=course:math, timestamp=1404142434405, value=77                                                            Jim                                   column=grade:, timestamp=1404142422653, value=3                                                                  Tom                                   column=course:art, timestamp=1404142407018, value=88                                                             Tom                                   column=course:math, timestamp=1404142398986, value=97                                                            Tom                                   column=grade:, timestamp=1404142383206, value=5                                                                  shengli                               column=course:art, timestamp=1404142468266, value=17                                                             shengli                               column=course:math, timestamp=1404142461952, value=27                                                            shengli                               column=grade:, timestamp=1404142452157, value=8                                                                 3 row(s) in 0.3230 seconds

2.1  初始化连接参数

scala> import org.apache.spark._import org.apache.spark._scala> import org.apache.spark.rdd.NewHadoopRDDimport org.apache.spark.rdd.NewHadoopRDDscala> import org.apache.hadoop.conf.Configuration;  import org.apache.hadoop.conf.Configurationscala> import org.apache.hadoop.hbase.HBaseConfiguration;  import org.apache.hadoop.hbase.HBaseConfigurationscala> import org.apache.hadoop.hbase.mapreduce.TableInputFormatimport org.apache.hadoop.hbase.mapreduce.TableInputFormatscala> val configuration = HBaseConfiguration.create();  //初始化配置configuration: org.apache.hadoop.conf.Configuration = Configuration: core-default.xml, core-site.xml, mapred-default.xml, mapred-site.xml, yarn-default.xml, yarn-site.xml, hbase-default.xml, hbase-site.xmlscala> configuration.set("hbase.zookeeper.property.clientPort", "2181"); //设置zookeeper client端口 scala> configuration.set("hbase.zookeeper.quorum", "localhost");  //设置zookeeper quorumscala> configuration.set("hbase.master", "localhost:60000");  //设置hbase masterscala> configuration.addResource("/home/victor/software/hbase/conf/hbase-site.xml")  //将hbase的配置加载scala> import org.apache.hadoop.hbase.client.HBaseAdminimport org.apache.hadoop.hbase.client.HBaseAdmin
scala> val hadmin = new HBaseAdmin(configuration); //实例化hbase管理2014-07-01 00:39:24,649 INFO  [main] zookeeper.ZooKeeper (ZooKeeper.java:<init>(438)) - Initiating client connection, connectString=localhost:2181 sessionTimeout=90000 watcher=hconnection-0xc7eea5, quorum=localhost:2181, baseZNode=/hbase2014-07-01 00:39:24,707 INFO  [main] zookeeper.RecoverableZooKeeper (RecoverableZooKeeper.java:<init>(120)) - Process identifier=hconnection-0xc7eea5 connecting to ZooKeeper ensemble=localhost:21812014-07-01 00:39:24,753 INFO  [main-SendThread(localhost:2181)] zookeeper.ClientCnxn (ClientCnxn.java:logStartConnect(966)) - Opening socket connection to server localhost/127.0.0.1:2181. Will not attempt to authenticate using SASL (unknown error)2014-07-01 00:39:24,755 INFO  [main-SendThread(localhost:2181)] zookeeper.ClientCnxn (ClientCnxn.java:primeConnection(849)) - Socket connection established to localhost/127.0.0.1:2181, initiating session2014-07-01 00:39:24,938 INFO  [main-SendThread(localhost:2181)] zookeeper.ClientCnxn (ClientCnxn.java:onConnected(1207)) - Session establishment complete on server localhost/127.0.0.1:2181, sessionid = 0x146ed61c4ef0015, negotiated timeout = 40000hadmin: org.apache.hadoop.hbase.client.HBaseAdmin = org.apache.hadoop.hbase.client.HBaseAdmin@1260466
接下来用haoop api来创建一个RDD
scala> val hrdd = sc.newAPIHadoopRDD(configuration, classOf[TableInputFormat],   | classOf[org.apache.hadoop.hbase.io.ImmutableBytesWritable],  | classOf[org.apache.hadoop.hbase.client.Result])2014-07-01 00:51:06,683 WARN  [main] util.SizeEstimator (Logging.scala:logWarning(70)) - Failed to check whether UseCompressedOops is set; assuming yes2014-07-01 00:51:06,936 INFO  [main] storage.MemoryStore (Logging.scala:logInfo(58)) - ensureFreeSpace(85877) called with curMem=0, maxMem=3089104892014-07-01 00:51:06,946 INFO  [main] storage.MemoryStore (Logging.scala:logInfo(58)) - Block broadcast_0 stored as values to memory (estimated size 83.9 KB, free 294.5 MB)hrdd: org.apache.spark.rdd.RDD[(org.apache.hadoop.hbase.io.ImmutableBytesWritable, org.apache.hadoop.hbase.client.Result)] = NewHadoopRDD[0] at newAPIHadoopRDD at <console>:22

读取记录:

这里我们take 1 条数据,可以看到格式是按照我们设定的HadoopRDD。key是一个不变的ImmutableBytesWritable,value是Hbase的Result

scala> hrdd take 12014-07-01 00:51:50,371 INFO  [main] spark.SparkContext (Logging.scala:logInfo(58)) - Starting job: take at <console>:252014-07-01 00:51:50,423 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Got job 0 (take at <console>:25) with 1 output partitions (allowLocal=true)2014-07-01 00:51:50,425 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Final stage: Stage 0(take at <console>:25)2014-07-01 00:51:50,426 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Parents of final stage: List()2014-07-01 00:51:50,477 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Missing parents: List()2014-07-01 00:51:50,478 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Computing the requested partition locally2014-07-01 00:51:50,509 INFO  [Local computation of job 0] rdd.NewHadoopRDD (Logging.scala:logInfo(58)) - Input split: localhost:,2014-07-01 00:51:50,894 INFO  [main] spark.SparkContext (Logging.scala:logInfo(58)) - Job finished: take at <console>:25, took 0.522612687 sres5: Array[(org.apache.hadoop.hbase.io.ImmutableBytesWritable, org.apache.hadoop.hbase.client.Result)] = Array((4a 69 6d,keyvalues={Jim/course:art/1404142440676/Put/vlen=2/mvcc=0, Jim/course:math/1404142434405/Put/vlen=2/mvcc=0, Jim/grade:/1404142422653/Put/vlen=1/mvcc=0}))
找到Result对象
scala> val res = hrdd.take(1)2014-07-01 01:09:13,486 INFO  [main] spark.SparkContext (Logging.scala:logInfo(58)) - Starting job: take at <console>:242014-07-01 01:09:13,487 INFO  [spark-akka.actor.default-dispatcher-15] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Got job 4 (take at <console>:24) with 1 output partitions (allowLocal=true)2014-07-01 01:09:13,487 INFO  [spark-akka.actor.default-dispatcher-15] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Final stage: Stage 4(take at <console>:24)2014-07-01 01:09:13,487 INFO  [spark-akka.actor.default-dispatcher-15] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Parents of final stage: List()2014-07-01 01:09:13,488 INFO  [spark-akka.actor.default-dispatcher-15] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Missing parents: List()2014-07-01 01:09:13,488 INFO  [spark-akka.actor.default-dispatcher-15] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Computing the requested partition locally2014-07-01 01:09:13,488 INFO  [Local computation of job 4] rdd.NewHadoopRDD (Logging.scala:logInfo(58)) - Input split: localhost:,2014-07-01 01:09:13,504 INFO  [main] spark.SparkContext (Logging.scala:logInfo(58)) - Job finished: take at <console>:24, took 0.018069267 sres: Array[(org.apache.hadoop.hbase.io.ImmutableBytesWritable, org.apache.hadoop.hbase.client.Result)] = Array((4a 69 6d,keyvalues={Jim/course:art/1404142440676/Put/vlen=2/mvcc=0, Jim/course:math/1404142434405/Put/vlen=2/mvcc=0, Jim/grade:/1404142422653/Put/vlen=1/mvcc=0}))scala> res(0)res33: (org.apache.hadoop.hbase.io.ImmutableBytesWritable, org.apache.hadoop.hbase.client.Result) = (4a 69 6d,keyvalues={Jim/course:art/1404142440676/Put/vlen=2/mvcc=0, Jim/course:math/1404142434405/Put/vlen=2/mvcc=0, Jim/grade:/1404142422653/Put/vlen=1/mvcc=0})scala> res(0)._2res34: org.apache.hadoop.hbase.client.Result = keyvalues={Jim/course:art/1404142440676/Put/vlen=2/mvcc=0, Jim/course:math/1404142434405/Put/vlen=2/mvcc=0, Jim/grade:/1404142422653/Put/vlen=1/mvcc=0}scala> val rs = res(0)._2rs: org.apache.hadoop.hbase.client.Result = keyvalues={Jim/course:art/1404142440676/Put/vlen=2/mvcc=0, Jim/course:math/1404142434405/Put/vlen=2/mvcc=0, Jim/grade:/1404142422653/Put/vlen=1/mvcc=0}scala> rs.asInstanceOf             cellScanner              containsColumn           containsEmptyColumn      containsNonEmptyColumn   copyFrom                 getColumn                getColumnCells           getColumnLatest          getColumnLatestCell      getExists                getFamilyMap             getMap                   getNoVersionMap          getRow                   getValue                 getValueAsByteBuffer     isEmpty                  isInstanceOf             list                     listCells                loadValue                raw                      rawCells                 setExists                size                     toString                 value

遍历这条记录,取出每个cell的值:

scala> val kv_array = rs.rawwarning: there were 1 deprecation warning(s); re-run with -deprecation for detailskv_array: Array[org.apache.hadoop.hbase.KeyValue] = Array(Jim/course:art/1404142440676/Put/vlen=2/mvcc=0, Jim/course:math/1404142434405/Put/vlen=2/mvcc=0, Jim/grade:/1404142422653/Put/vlen=1/mvcc=0)

遍历记录

scala> for(keyvalue <- kv) println("rowkey:"+ new String(keyvalue.getRow)+ " cf:"+new String(keyvalue.getFamily()) + " column:" + new String(keyvalue.getQualifier) + " " + "value:"+new String(keyvalue.getValue()))warning: there were 4 deprecation warning(s); re-run with -deprecation for detailsrowkey:Jim cf:course column:art value:67rowkey:Jim cf:course column:math value:77rowkey:Jim cf:grade column: value:3

查询记录个数

scala> hrdd.count2014-07-01 01:26:03,133 INFO  [main] spark.SparkContext (Logging.scala:logInfo(58)) - Starting job: count at <console>:252014-07-01 01:26:03,134 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Got job 5 (count at <console>:25) with 1 output partitions (allowLocal=false)2014-07-01 01:26:03,134 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Final stage: Stage 5(count at <console>:25)2014-07-01 01:26:03,134 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Parents of final stage: List()2014-07-01 01:26:03,135 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Missing parents: List()2014-07-01 01:26:03,166 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Submitting Stage 5 (NewHadoopRDD[0] at newAPIHadoopRDD at <console>:22), which has no missing parents2014-07-01 01:26:03,397 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Submitting 1 missing tasks from Stage 5 (NewHadoopRDD[0] at newAPIHadoopRDD at <console>:22)2014-07-01 01:26:03,401 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.TaskSchedulerImpl (Logging.scala:logInfo(58)) - Adding task set 5.0 with 1 tasks2014-07-01 01:26:03,427 INFO  [spark-akka.actor.default-dispatcher-16] scheduler.FairSchedulableBuilder (Logging.scala:logInfo(58)) - Added task set TaskSet_5 tasks to pool default2014-07-01 01:26:03,439 INFO  [spark-akka.actor.default-dispatcher-5] scheduler.TaskSetManager (Logging.scala:logInfo(58)) - Starting task 5.0:0 as TID 0 on executor 0: 192.168.2.105 (PROCESS_LOCAL)2014-07-01 01:26:03,469 INFO  [spark-akka.actor.default-dispatcher-5] scheduler.TaskSetManager (Logging.scala:logInfo(58)) - Serialized task 5.0:0 as 1305 bytes in 7 ms2014-07-01 01:26:11,015 INFO  [Result resolver thread-0] scheduler.TaskSetManager (Logging.scala:logInfo(58)) - Finished TID 0 in 7568 ms on 192.168.2.105 (progress: 1/1)2014-07-01 01:26:11,017 INFO  [Result resolver thread-0] scheduler.TaskSchedulerImpl (Logging.scala:logInfo(58)) - Removed TaskSet 5.0, whose tasks have all completed, from pool default2014-07-01 01:26:11,036 INFO  [spark-akka.actor.default-dispatcher-4] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Completed ResultTask(5, 0)2014-07-01 01:26:11,057 INFO  [spark-akka.actor.default-dispatcher-4] scheduler.DAGScheduler (Logging.scala:logInfo(58)) - Stage 5 (count at <console>:25) finished in 7.605 s2014-07-01 01:26:11,067 INFO  [main] spark.SparkContext (Logging.scala:logInfo(58)) - Job finished: count at <console>:25, took 7.933270634 sres71: Long = 3

四、总结

Spark操作Hbase其实和java client操作Hbas大体流程是一致的,都是客户端去连接HMaster,最终利用java api来操作hbase。

只不过Spark提供了一种与RDD结合的概念,并且利用scala的语法简洁性,提高了编程效率。

——EOF——

0 0
原创粉丝点击