zoukankan      html  css  js  c++  java
  • 【转】RHadoop实践系列之二:RHadoop安装与使用

    RHadoop实践系列之二:RHadoop安装与使用

    RHadoop实践系列文章,包含了R语言与Hadoop结合进行海量数据分析。Hadoop主要用来存储海量数据,R语言完成MapReduce 算法,用来替代Java的MapReduce实现。有了RHadoop可以让广大的R语言爱好者,有更强大的工具处理大数据1G, 10G, 100G, TB, PB。 由于大数据所带来的单机性能问题,可能会一去不复返了。

    RHadoop实践是一套系列文章,主要包括”Hadoop环境搭建”,”RHadoop安装与使用”,R实现MapReduce的协同过滤算法”,”HBase和rhbase的安装与使用”。对于单独的R语言爱好者,Java爱好者,或者Hadoop爱好者来说,同时具备三种语言知识并不容 易。此文虽为入门文章,但R,Java,Hadoop基础知识还是需要大家提前掌握。

    关于作者:

    • 张丹(Conan), 程序员Java,R,PHP,Javascript
    • weibo:@Conan_Z
    • blog: http://blog.fens.me
    • email: bsspirit@gmail.com

    转载请注明出处:
    http://blog.fens.me/rhadoop-rhadoop/

    rhadoop-rhadoop

    第二篇 RHadoop安装与使用部分,分为3个章节。

    1. 环境准备
    2. RHadoop安装
    3. RHadoop程序用例
    

    每一章节,都会分为”文字说明部分”和”代码部分”,保持文字说明与代码的连贯性。

    注:Hadoop环境搭建的详细记录,请查看 同系列上一篇文章 “RHadoop实践系列文章之Hadoop环境搭建”。
    由于两篇文章并非同一时间所写,hadoop版本及操作系统,分步式环境都略有不同。
    两篇文章相互独立,请大家在理解的基础上动手实验,不要完成依赖两篇文章中的运行命令。

    环境准备

    文字说明部分:

    首先环境准备,这里我选择了Linux Ubuntu操作系统12.04的64位版本,大家可以根据自己的使用习惯选择顺手的Linux。

    但JDK一定要用Oracle SUN官方的版本,请从官网下载,操作系统的自带的OpenJDK会有各种不兼容。JDK请选择1.6.x的版本,JDK1.7版本也会有各种的不兼容情况。
    http://www.oracle.com/technetwork/java/javase/downloads/index.html

    Hadoop的环境安装,请参考RHadoop实践系统”Hadoop环境搭建”的一文。

    R语言请安装2.15以后的版本,2.14是不能够支持RHadoop的。
    如果你也使用Linux Ubuntu操作系统12.04,请先更新软件包源,否则只能下载到2.14版本的R。

    代码部分:

    1. 操作系统Ubuntu 12.04 x64

    ~ uname -a
    Linux domU-00-16-3e-00-00-85 3.2.0-23-generic #36-Ubuntu SMP Tue Apr 10 20:39:51 UTC 2012 x86_64 x86_64 x86_64 GNU/Linux
    

    2 JAVA环境

    ~ java -version
    
    java version "1.6.0_29"
    Java(TM) SE Runtime Environment (build 1.6.0_29-b11)
    Java HotSpot(TM) 64-Bit Server VM (build 20.4-b02, mixed mode)
    

    3 HADOOP环境(这里只需要hadoop)

    hadoop-1.0.3  hbase-0.94.2  hive-0.9.0  pig-0.10.0  sqoop-1.4.2  thrift-0.8.0  zookeeper-3.4.4
    

    4 R的环境

    R version 2.15.3 (2013-03-01) -- "Security Blanket"
    Copyright (C) 2013 The R Foundation for Statistical Computing
    ISBN 3-900051-07-0
    Platform: x86_64-pc-linux-gnu (64-bit)
    

    4.1 如果是Ubuntu 12.04,请更新源再下载R2.15.3版本

    sh -c "echo deb http://mirror.bjtu.edu.cn/cran/bin/linux/ubuntu precise/ >>/etc/apt/sources.list"
    apt-get update
    apt-get install r-base
    

    RHadoop安装

    文字说明部分:

    RHadoop是RevolutionAnalytics的工程的项目,开源实现代码在GitHub社区可以找到。RHadoop包含三个R包 (rmr,rhdfs,rhbase),分别是对应Hadoop系统架构中的,MapReduce, HDFS, HBase 三个部分。由于这三个库不能在CRAN中找到,所以需要自己下载。
    https://github.com/RevolutionAnalytics/RHadoop/wiki

    接下我们需要先安装这三个库的依赖库。
    首先是rJava,上个章节我们已经配置好了JDK1.6的环境,运行R CMD javareconf命令,R的程序从系统变量中会读取Java配置。然后打开R程序,通过install.packages的方式,安装rJava。

    然后,我还要安装其他的几个依赖库,reshape2,Rcpp,iterators,itertools,digest,RJSONIO,functional,通过install.packages都可以直接安装。

    接下安装rhdfs库,在环境变量中增加 HADOOP_CMD 和 HADOOP_STREAMING 两个变量,可以用export在当前命令窗口中增加。但为下次方便使用,最好把变量增加到系统环境变更/etc/environment文件中。再用 R CMD INSTALL安装rhdfs包,就可以顺利完成了。

    安装rmr库,使用R CMD INSTALL也可以顺利完成了。

    安装rhbase库,后面”HBase和rhbase的安装与使用”文章中会继续介绍,这里暂时跳过。

    最后,我们可以查看一下,RHADOOP都安装了哪些库。
    由于我的硬盘是外接的,使用mount和软连接(ln -s)挂载了R类库的目录,所以是R的类库在/disk1/system下面
    /disk1/system/usr/local/lib/R/site-library/
    一般R的类库目录是/usr/lib/R/site-library或者/usr/local/lib/R/site-library,用户也可以使用whereis R的命令查询,自己电脑上R类库的安装位置

    代码部分:

    1. 下载RHadoop相关的3个程序包

    https://github.com/RevolutionAnalytics/RHadoop/wiki/Downloads

    rmr-2.1.0
    rhdfs-1.0.5
    rhbase-1.1
    

    2. 复制到/root/R目录

    ~/R# pwd
    /root/R
    
    ~/R# ls
    rhbase_1.1.tar.gz  rhdfs_1.0.5.tar.gz  rmr2_2.1.0.tar.gz
    

    3. 安装依赖库

    命令行执行
    ~ R CMD javareconf 
    ~ R
    
    启动R程序
    install.packages("rJava")
    install.packages("reshape2")
    install.packages("Rcpp")
    install.packages("iterators")
    install.packages("itertools")
    install.packages("digest")
    install.packages("RJSONIO")
    install.packages("functional")
    

    4. 安装rhdfs库

    ~ export HADOOP_CMD=/root/hadoop/hadoop-1.0.3/bin/hadoop
    ~ export HADOOP_STREAMING=/root/hadoop/hadoop-1.0.3/contrib/streaming/hadoop-streaming-1.0.3.jar (rmr2会用到)
    ~ R CMD INSTALL /root/R/rhdfs_1.0.5.tar.gz 
    

    4.1 最好把HADOOP_CMD设置到环境变量

    ~ vi /etc/environment
    
        HADOOP_CMD=/root/hadoop/hadoop-1.0.3/bin/hadoop
        HADOOP_STREAMING=/root/hadoop/hadoop-1.0.3/contrib/streaming/hadoop-streaming-1.0.3.jar
    
    . /etc/environment
    

    5. 安装rmr库

    ~  R CMD INSTALL rmr2_2.1.0.tar.gz 
    

    6. 安装rhbase库 (暂时跳过)

    7. 所有的安装包

    ~ ls /disk1/system/usr/local/lib/R/site-library/
    digest  functional  iterators  itertools  plyr  Rcpp  reshape2  rhdfs  rJava  RJSONIO  rmr2  stringr
    

    RHadoop程序用例

    文字说明部分:

    安装好rhdfs和rmr两个包后,我们就可以使用R尝试一些hadoop的操作了。

    首先,是基本的hdfs的文件操作。

    查看hdfs文件目录
    hadoop的命令:hadoop fs -ls /user
    R语言函数:hdfs.ls(”/user/“)

    查看hadoop数据文件
    hadoop的命令:hadoop fs -cat /user/hdfs/o_same_school/part-m-00000
    R语言函数:hdfs.cat(”/user/hdfs/o_same_school/part-m-00000″)

    接下来,我们执行一个rmr算法的任务

    普通的R语言程序:

    > small.ints = 1:10
    > sapply(small.ints, function(x) x^2)
    

    MapReduce的R语言程序:

    > small.ints = to.dfs(1:10)
    > mapreduce(input = small.ints, map = function(k, v) cbind(v, v^2))
    > from.dfs("/tmp/RtmpWnzxl4/file5deb791fcbd5")
    

    因为MapReduce只能访问HDFS文件系统,先要用to.dfs把数据存储到HDFS文件系统里。MapReduce的运算结果再用from.dfs函数从HDFS文件系统中取出。

    第二个,rmr的例子是wordcount,对文件中的单词计数

    > input<- '/user/hdfs/o_same_school/part-m-00000'
    > wordcount = function(input, output = NULL, pattern = " "){
    
      wc.map = function(., lines) {
                keyval(unlist( strsplit( x = lines,split = pattern)),1)
        }
    
        wc.reduce =function(word, counts ) {
                keyval(word, sum(counts))
        }         
    
        mapreduce(input = input ,output = output, input.format = "text",
            map = wc.map, reduce = wc.reduce,combine = T)
    }
    
    > wordcount(input)
    > from.dfs("/tmp/RtmpfZUFEa/file6cac626aa4a7")
    

    我在HDFS上提前放置了数据文件/user/hdfs/o_same_school/part-m-00000。写wordcount的MapReduce函数,执行wordcount函数,最后用from.dfs从HDFS中取得结果。

    代码部分:

    1. rhdfs包的使用

    启动R程序
    > library(rhdfs)
    
    Loading required package: rJava
    HADOOP_CMD=/root/hadoop/hadoop-1.0.3/bin/hadoop
    Be sure to run hdfs.init()
    
    > hdfs.init()
    

    1.1 命令查看hadoop目录

    ~ hadoop fs -ls /user
    
    Found 4 items
    drwxr-xr-x   - root supergroup          0 2013-02-01 12:15 /user/conan
    drwxr-xr-x   - root supergroup          0 2013-03-06 17:24 /user/hdfs
    drwxr-xr-x   - root supergroup          0 2013-02-26 16:51 /user/hive
    drwxr-xr-x   - root supergroup          0 2013-03-06 17:21 /user/root
    

    1.2 rhdfs查看hadoop目录

    > hdfs.ls("/user/")
    
      permission owner      group size          modtime        file
    1 drwxr-xr-x  root supergroup    0 2013-02-01 12:15 /user/conan
    2 drwxr-xr-x  root supergroup    0 2013-03-06 17:24  /user/hdfs
    3 drwxr-xr-x  root supergroup    0 2013-02-26 16:51  /user/hive
    4 drwxr-xr-x  root supergroup    0 2013-03-06 17:21  /user/root
    

    1.3 命令查看hadoop数据文件

    ~ hadoop fs -cat /user/hdfs/o_same_school/part-m-00000
    
    10,3,tsinghua university,2004-05-26 15:21:00.0
    23,4007,北京第一七一中学,2004-05-31 06:51:53.0
    51,4016,大连理工大学,2004-05-27 09:38:31.0
    89,4017,Amherst College,2004-06-01 16:18:56.0
    92,4017,斯坦福大学,2012-11-28 10:33:25.0
    99,4017,Stanford University Graduate School of Business,2013-02-19 12:17:15.0
    113,4017,Stanford University,2013-02-19 12:17:15.0
    123,4019,St Paul's Co-educational College - Hong Kong,2004-05-27 18:04:17.0
    138,4019,香港苏浙小学,2004-05-27 18:59:58.0
    172,4020,University,2004-05-27 19:14:34.0
    182,4026,ff,2004-05-28 04:42:37.0
    183,4026,ff,2004-05-28 04:42:37.0
    189,4033,tsinghua,2011-09-14 12:00:38.0
    195,4035,ba,2004-05-31 07:10:24.0
    196,4035,ma,2004-05-31 07:10:24.0
    197,4035,southampton university,2013-01-07 15:35:18.0
    246,4067,美国史丹佛大学,2004-06-12 10:42:10.0
    254,4067,美国史丹佛大学,2004-06-12 10:42:10.0
    255,4067,美国休士顿大学,2004-06-12 10:42:10.0
    257,4068,清华大学,2004-06-12 10:42:10.0
    258,4068,北京八中,2004-06-12 17:34:02.0
    262,4068,香港中文大学,2004-06-12 17:34:02.0
    310,4070,首都师范大学初等教育学院,2004-06-14 15:35:52.0
    312,4070,北京师范大学经济学院,2004-06-14 15:35:52.0
    

    1.4 rhdfs查看hadoop数据文件

    >  hdfs.cat("/user/hdfs/o_same_school/part-m-00000")
    
     [1] "10,3,tsinghua university,2004-05-26 15:21:00.0"
     [2] "23,4007,北京第一七一中学,2004-05-31 06:51:53.0"
     [3] "51,4016,大连理工大学,2004-05-27 09:38:31.0"
     [4] "89,4017,Amherst College,2004-06-01 16:18:56.0"
     [5] "92,4017,斯坦福大学,2012-11-28 10:33:25.0"
     [6] "99,4017,Stanford University Graduate School of Business,2013-02-19 12:17:15.0"
     [7] "113,4017,Stanford University,2013-02-19 12:17:15.0"
     [8] "123,4019,St Paul's Co-educational College - Hong Kong,2004-05-27 18:04:17.0"
     [9] "138,4019,香港苏浙小学,2004-05-27 18:59:58.0"
    [10] "172,4020,University,2004-05-27 19:14:34.0"
    [11] "182,4026,ff,2004-05-28 04:42:37.0"
    [12] "183,4026,ff,2004-05-28 04:42:37.0"
    [13] "189,4033,tsinghua,2011-09-14 12:00:38.0"
    [14] "195,4035,ba,2004-05-31 07:10:24.0"
    [15] "196,4035,ma,2004-05-31 07:10:24.0"
    [16] "197,4035,southampton university,2013-01-07 15:35:18.0"
    [17] "246,4067,美国史丹佛大学,2004-06-12 10:42:10.0"
    [18] "254,4067,美国史丹佛大学,2004-06-12 10:42:10.0"
    [19] "255,4067,美国休士顿大学,2004-06-12 10:42:10.0"
    [20] "257,4068,清华大学,2004-06-12 10:42:10.0"
    [21] "258,4068,北京八中,2004-06-12 17:34:02.0"
    [22] "262,4068,香港中文大学,2004-06-12 17:34:02.0"
    [23] "310,4070,首都师范大学初等教育学院,2004-06-14 15:35:52.0"
    [24] "312,4070,北京师范大学经济学院,2004-06-14 15:35:52.0"
    

    2. rmr2包的使用

    启动R程序
    > library(rmr2)
    
    Loading required package: Rcpp
    Loading required package: RJSONIO
    Loading required package: digest
    Loading required package: functional
    Loading required package: stringr
    Loading required package: plyr
    Loading required package: reshape2
    

    2.1 执行r任务

    > small.ints = 1:10
    > sapply(small.ints, function(x) x^2)
    
    [1]   1   4   9  16  25  36  49  64  81 100
    

    2.2 执行rmr2任务

    > small.ints = to.dfs(1:10)
    
    13/03/07 12:12:55 INFO util.NativeCodeLoader: Loaded the native-hadoop library
    13/03/07 12:12:55 INFO zlib.ZlibFactory: Successfully loaded & initialized native-zlib library
    13/03/07 12:12:55 INFO compress.CodecPool: Got brand-new compressor
    
    > mapreduce(input = small.ints, map = function(k, v) cbind(v, v^2))
    
    packageJobJar: [/tmp/RtmpWnzxl4/rmr-local-env5deb2b300d03, /tmp/RtmpWnzxl4/rmr-global-env5deb398a522b, /tmp/RtmpWnzxl4/rmr-streaming-map5deb1552172d, /root/hadoop/tmp/hadoop-unjar7838617732558795635/] [] /tmp/streamjob4380275136001813619.jar tmpDir=null
    13/03/07 12:12:59 INFO mapred.FileInputFormat: Total input paths to process : 1
    13/03/07 12:12:59 INFO streaming.StreamJob: getLocalDirs(): [/root/hadoop/tmp/mapred/local]
    13/03/07 12:12:59 INFO streaming.StreamJob: Running job: job_201302261738_0293
    13/03/07 12:12:59 INFO streaming.StreamJob: To kill this job, run:
    13/03/07 12:12:59 INFO streaming.StreamJob: /disk1/hadoop/hadoop-1.0.3/libexec/../bin/hadoop job  -Dmapred.job.tracker=hdfs://r.qa.tianji.com:9001 -kill job_201302261738_0293
    13/03/07 12:12:59 INFO streaming.StreamJob: Tracking URL: http://192.168.1.243:50030/jobdetails.jsp?jobid=job_201302261738_0293
    13/03/07 12:13:00 INFO streaming.StreamJob:  map 0%  reduce 0%
    13/03/07 12:13:15 INFO streaming.StreamJob:  map 100%  reduce 0%
    13/03/07 12:13:21 INFO streaming.StreamJob:  map 100%  reduce 100%
    13/03/07 12:13:21 INFO streaming.StreamJob: Job complete: job_201302261738_0293
    13/03/07 12:13:21 INFO streaming.StreamJob: Output: /tmp/RtmpWnzxl4/file5deb791fcbd5
    
    > from.dfs("/tmp/RtmpWnzxl4/file5deb791fcbd5")
    
    $key
    NULL
    
    $val
           v
     [1,]  1   1
     [2,]  2   4
     [3,]  3   9
     [4,]  4  16
     [5,]  5  25
     [6,]  6  36
     [7,]  7  49
     [8,]  8  64
     [9,]  9  81
    [10,] 10 100
    

    2.3 wordcount执行rmr2任务

    > input<- '/user/hdfs/o_same_school/part-m-00000'
    > wordcount = function(input, output = NULL, pattern = " "){
    
        wc.map = function(., lines) {
                keyval(unlist( strsplit( x = lines,split = pattern)),1)
        }
    
        wc.reduce =function(word, counts ) {
                keyval(word, sum(counts))
        }         
    
        mapreduce(input = input ,output = output, input.format = "text",
            map = wc.map, reduce = wc.reduce,combine = T)
    }
    
    > wordcount(input)
    
    packageJobJar: [/tmp/RtmpfZUFEa/rmr-local-env6cac64020a8f, /tmp/RtmpfZUFEa/rmr-global-env6cac73016df3, /tmp/RtmpfZUFEa/rmr-streaming-map6cac7f145e02, /tmp/RtmpfZUFEa/rmr-streaming-reduce6cac238dbcf, /tmp/RtmpfZUFEa/rmr-streaming-combine6cac2b9098d4, /root/hadoop/tmp/hadoop-unjar6584585621285839347/] [] /tmp/streamjob9195921761644130661.jar tmpDir=null
    13/03/07 12:34:41 INFO util.NativeCodeLoader: Loaded the native-hadoop library
    13/03/07 12:34:41 WARN snappy.LoadSnappy: Snappy native library not loaded
    13/03/07 12:34:41 INFO mapred.FileInputFormat: Total input paths to process : 1
    13/03/07 12:34:41 INFO streaming.StreamJob: getLocalDirs(): [/root/hadoop/tmp/mapred/local]
    13/03/07 12:34:41 INFO streaming.StreamJob: Running job: job_201302261738_0296
    13/03/07 12:34:41 INFO streaming.StreamJob: To kill this job, run:
    13/03/07 12:34:41 INFO streaming.StreamJob: /disk1/hadoop/hadoop-1.0.3/libexec/../bin/hadoop job  -Dmapred.job.tracker=hdfs://r.qa.tianji.com:9001 -kill job_201302261738_0296
    13/03/07 12:34:41 INFO streaming.StreamJob: Tracking URL: http://192.168.1.243:50030/jobdetails.jsp?jobid=job_201302261738_0296
    13/03/07 12:34:42 INFO streaming.StreamJob:  map 0%  reduce 0%
    13/03/07 12:34:59 INFO streaming.StreamJob:  map 100%  reduce 0%
    13/03/07 12:35:08 INFO streaming.StreamJob:  map 100%  reduce 17%
    13/03/07 12:35:14 INFO streaming.StreamJob:  map 100%  reduce 100%
    13/03/07 12:35:20 INFO streaming.StreamJob: Job complete: job_201302261738_0296
    13/03/07 12:35:20 INFO streaming.StreamJob: Output: /tmp/RtmpfZUFEa/file6cac626aa4a7
    
    > from.dfs("/tmp/RtmpfZUFEa/file6cac626aa4a7")
    
    $key
     [1] "-"
     [2] "04:42:37.0"
     [3] "06:51:53.0"
     [4] "07:10:24.0"
     [5] "09:38:31.0"
     [6] "10:33:25.0"
     [7] "10,3,tsinghua"
     [8] "10:42:10.0"
     [9] "113,4017,Stanford"
    [10] "12:00:38.0"
    [11] "12:17:15.0"
    [12] "123,4019,St"
    [13] "138,4019,香港苏浙小学,2004-05-27"
    [14] "15:21:00.0"
    [15] "15:35:18.0"
    [16] "15:35:52.0"
    [17] "16:18:56.0"
    [18] "172,4020,University,2004-05-27"
    [19] "17:34:02.0"
    [20] "18:04:17.0"
    [21] "182,4026,ff,2004-05-28"
    [22] "183,4026,ff,2004-05-28"
    [23] "18:59:58.0"
    [24] "189,4033,tsinghua,2011-09-14"
    [25] "19:14:34.0"
    [26] "195,4035,ba,2004-05-31"
    [27] "196,4035,ma,2004-05-31"
    [28] "197,4035,southampton"
    [29] "23,4007,北京第一七一中学,2004-05-31"
    [30] "246,4067,美国史丹佛大学,2004-06-12"
    [31] "254,4067,美国史丹佛大学,2004-06-12"
    [32] "255,4067,美国休士顿大学,2004-06-12"
    [33] "257,4068,清华大学,2004-06-12"
    [34] "258,4068,北京八中,2004-06-12"
    [35] "262,4068,香港中文大学,2004-06-12"
    [36] "312,4070,北京师范大学经济学院,2004-06-14"
    [37] "51,4016,大连理工大学,2004-05-27"
    [38] "89,4017,Amherst"
    [39] "92,4017,斯坦福大学,2012-11-28"
    [40] "99,4017,Stanford"
    [41] "Business,2013-02-19"
    [42] "Co-educational"
    [43] "College"
    [44] "College,2004-06-01"
    [45] "Graduate"
    [46] "Hong"
    [47] "Kong,2004-05-27"
    [48] "of"
    [49] "Paul's"
    [50] "School"
    [51] "University"
    [52] "university,2004-05-26"
    [53] "university,2013-01-07"
    [54] "University,2013-02-19"
    [55] "310,4070,首都师范大学初等教育学院,2004-06-14"
    
    $val
     [1] 1 2 1 2 1 1 1 4 1 1 2 1 1 1 1 2 1 1 2 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1
    [39] 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1
    

    转载请注明出处:
    http://blog.fens.me/rhadoop-rhadoop/

  • 相关阅读:
    BZOJ3771 Triple
    BZOJ3451 Normal
    Luogu6271 [湖北省队互测2014]一个人的数论
    BZOJ3309 DZY loves Maths
    Luogu1829 JZPTAB
    Luogu3704 SDOI2017数字表格
    Luogu3312 SDOI2014数表
    【学习笔记】莫比乌斯反演
    Luogu4762 [CERC2014]Virus synthesis
    Power BI新主页将使内容的导航和发现变得轻而易举!
  • 原文地址:https://www.cnblogs.com/zhengrunjian/p/4530827.html
Copyright © 2011-2022 走看看