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hadoop 程式開發 (eclipse plugin)
}}} = 零. 環境配置 = == 0.1 環境說明 == * ubuntu 8.10 * sun-java-6 * [http://www.java.com/zh_TW/download/linux_manual.jsp?locale=zh_TW&host=www.java.com:80 java 下載處] * [https://cds.sun.com/is-bin/INTERSHOP.enfinity/WFS/CDS-CDS_Developer-Site/en_US/-/USD/ViewProductDetail-Start?ProductRef=jdk-6u10-docs-oth-JPR@CDS-CDS_Developer JavaDoc ] * eclipse 3.3.2 * eclipse 各版本下載點 [http://archive.eclipse.org/eclipse/downloads/] * hadoop 0.18.3 * hadoop 各版本下載點 [http://ftp.twaren.net/Unix/Web/apache/hadoop/core/] == 0.2 目錄說明 == * 使用者:hadoop * 使用者家目錄: /home/hadooper * 專案目錄 : /home/hadooper/workspace * hadoop目錄: /opt/hadoop = 一、安裝 = 安裝的部份沒必要都一模一樣,僅提供參考,反正只要安裝好java , hadoop , eclipse,並清楚自己的路徑就可以了 == 1.1. 安裝java == 首先安裝java 基本套件 {{{ $ sudo apt-get install java-common sun-java6-bin sun-java6-jdk sun-java6-jre }}} == 1.1.1. 安裝sun-java6-doc == 1 將javadoc (jdk-6u10-docs.zip) 下載下來放在 /tmp/ 下 * 教學環境內,已經存在於 /home/hadooper/tools/ ,將其複製到 /tmp {{{ $ cp /home/hadooper/tools/jdk-*-docs.zip /tmp/ }}} * 或是到官方網站將javadoc (jdk-6u10-docs.zip) 下載下來放到 /tmp [https://cds.sun.com/is-bin/INTERSHOP.enfinity/WFS/CDS-CDS_Developer-Site/en_US/-/USD/ViewProductDetail-Start?ProductRef=jdk-6u10-docs-oth-JPR@CDS-CDS_Developer 下載點] [[Image(wiki:waue/2009/0617:1-1.png)]] 2 執行 {{{ $ sudo apt-get install sun-java6-doc $ sudo ln -sf /usr/share/doc/sun-java6-jdk/html /usr/lib/jvm/java-6-sun/docs }}} == 1.2. ssh 安裝設定 == [http://trac.nchc.org.tw/cloud/wiki/Hadoop_Lab1 詳見實作一] == 1.3. 安裝hadoop == [http://trac.nchc.org.tw/cloud/wiki/Hadoop_Lab1 詳見實作一] == 1.4. 安裝eclipse == * 取得檔案 eclipse 3.3.2 (假設已經下載於/home/hadooper/tools/ 內),執行下面指令: {{{ $ cd ~/tools/ $ tar -zxvf eclipse-SDK-3.3.2-linux-gtk.tar.gz $ sudo mv eclipse /opt $ sudo ln -sf /opt/eclipse/eclipse /usr/local/bin/ }}} = 二、 建立專案 = == 2.1 安裝hadoop 的 eclipse plugin == * 匯入hadoop eclipse plugin {{{ $ cd /opt/hadoop $ sudo cp /opt/hadoop/contrib/eclipse-plugin/hadoop-0.18.3-eclipse-plugin.jar /opt/eclipse/plugins }}} 補充: 可斟酌參考eclipse.ini內容(非必要) {{{ $ sudo cat /opt/eclipse/eclipse.ini }}} {{{ #!sh -showsplash org.eclipse.platform -vmargs -Xms40m -Xmx256m }}} == 2.2 開啟eclipse == * 打開eclipse {{{ $ eclipse & }}} 一開始會出現問你要將工作目錄放在哪裡:在這我們用預設值 [[Image(wiki:waue/2009/0617:2-1.png)]] ------- '''PS: 之後的說明則是在eclipse 上的介面操作''' ------- == 2.3 選擇視野 == || window -> || open pers.. -> || other.. -> || map/reduce|| [[Image(wiki:waue/2009/0617:win-open-other.png)]] ------- 設定要用 Map/Reduce 的視野 [[Image(wiki:waue/2009/0617:2-2.png)]] --------- 使用 Map/Reduce 的視野後的介面呈現 [[Image(wiki:waue/2009/0617:2-3.png)]] -------- == 2.4 建立專案 == || file -> || new -> || project -> || Map/Reduce -> || Map/Reduce Project -> || next || [[Image(wiki:waue/2009/0617:file-new-project.png)]] -------- 建立mapreduce專案(1) [[Image(wiki:waue/2009/0617:2-4.png)]] ----------- 建立mapreduce專案的(2) {{{ #!sh project name-> 輸入 : icas (隨意) use default hadoop -> Configur Hadoop install... -> 輸入: "/opt/hadoop" -> ok Finish }}} [[Image(wiki:waue/2009/0617:2-4-2.png)]] -------------- == 2.5 設定專案 == 由於剛剛建立了icas這個專案,因此eclipse已經建立了新的專案,出現在左邊視窗,右鍵點選該資料夾,並選properties -------------- Step1. 右鍵點選project的properties做細部設定 [[Image(wiki:waue/2009/0617:2-5.png)]] ---------- Step2. 進入專案的細部設定頁 hadoop的javadoc的設定(1) [[Image(wiki:waue/2009/0617:2-5-1.png)]] * java Build Path -> Libraries -> hadoop0.18.3-ant.jar * java Build Path -> Libraries -> hadoop0.18.3-core.jar * java Build Path -> Libraries -> hadoop0.18.3-tools.jar * 以 hadoop0.18.3-core.jar 的設定內容如下,其他依此類推 {{{ #!sh source ...-> 輸入:/opt/hadoop/src/core javadoc ...-> 輸入:file:/opt/hadoop/docs/api/ }}} ------------ Step3. hadoop的javadoc的設定完後(2) [[Image(wiki:waue/2009/0617:2-5-2.png)]] ------------ Step4. java本身的javadoc的設定(3) * javadoc location -> 輸入:file:/usr/lib/jvm/java-6-sun/docs/api/ [[Image(wiki:waue/2009/0617:2-5-3.png)]] ----- 設定完後回到eclipse 主視窗 == 2.6 連接hadoop server == -------- Step1. 視窗右下角黃色大象圖示"Map/Reduce Locations tag" -> 點選齒輪右邊的藍色大象圖示: [[Image(wiki:waue/2009/0617:2-6.png)]] ------------- Step2. 進行eclipse 與 hadoop 間的設定(2) [[Image(wiki:waue/2009/0617:2-6-1.png)]] {{{ #!sh Location Name -> 輸入:hadoop (隨意) Map/Reduce Master -> Host-> 輸入:localhost -> Port-> 輸入:9001 DFS Master -> Host-> 輸入:9000 Finish }}} ---------------- 設定完後,可以看到下方多了一隻藍色大象,左方展開資料夾也可以秀出在hdfs內的檔案結構 [[Image(wiki:waue/2009/0617:2-6-2.png)]] ------------- = 三、 撰寫範例程式 = * 之前在eclipse上已經開了個專案icas,因此這個目錄在: * /home/hadooper/workspace/icas * 在這個目錄內有兩個資料夾: * src : 用來裝程式原始碼 * bin : 用來裝編譯後的class檔 * 如此一來原始碼和編譯檔就不會混在一起,對之後產生jar檔會很有幫助 * 在這我們編輯一個範例程式 : WordCount == 3.1 mapper.java == 1. new || File -> || new -> || mapper || [[Image(wiki:waue/2009/0617:file-new-mapper.png)]] ----------- 2. create [[Image(wiki:waue/2009/0617:3-1.png)]] {{{ #!sh source folder-> 輸入: icas/src Package : Sample Name -> : mapper }}} ---------- 3. modify {{{ #!java package Sample; import java.io.IOException; import java.util.StringTokenizer; import org.apache.hadoop.io.IntWritable; import org.apache.hadoop.io.LongWritable; import org.apache.hadoop.io.Text; import org.apache.hadoop.mapred.MapReduceBase; import org.apache.hadoop.mapred.Mapper; import org.apache.hadoop.mapred.OutputCollector; import org.apache.hadoop.mapred.Reporter; public class mapper extends MapReduceBase implements Mapper { private final static IntWritable one = new IntWritable(1); private Text word = new Text(); public void map(LongWritable key, Text value, OutputCollector output, Reporter reporter) throws IOException { String line = value.toString(); StringTokenizer tokenizer = new StringTokenizer(line); while (tokenizer.hasMoreTokens()) { word.set(tokenizer.nextToken()); output.collect(word, one); } } } }}} 建立mapper.java後,貼入程式碼 [[Image(wiki:waue/2009/0617:3-2.png)]] ------------ == 3.2 reducer.java == 1. new * File -> new -> reducer [[Image(wiki:waue/2009/0617:file-new-reducer.png)]] ------- 2. create [[Image(wiki:waue/2009/0617:3-3.png)]] {{{ #!sh source folder-> 輸入: icas/src Package : Sample Name -> : reducer }}} ----------- 3. modify {{{ #!java package Sample; import java.io.IOException; import java.util.Iterator; import org.apache.hadoop.io.IntWritable; import org.apache.hadoop.io.Text; import org.apache.hadoop.mapred.MapReduceBase; import org.apache.hadoop.mapred.OutputCollector; import org.apache.hadoop.mapred.Reducer; import org.apache.hadoop.mapred.Reporter; public class reducer extends MapReduceBase implements Reducer { public void reduce(Text key, Iterator values, OutputCollector output, Reporter reporter) throws IOException { int sum = 0; while (values.hasNext()) { sum += values.next().get(); } output.collect(key, new IntWritable(sum)); } } }}} * File -> new -> Map/Reduce Driver [[Image(wiki:waue/2009/0617:file-new-mr-driver.png)]] ---------- == 3.3 WordCount.java (main function) == 1. new 建立WordCount.java,此檔用來驅動mapper 與 reducer,因此選擇 Map/Reduce Driver [[Image(wiki:waue/2009/0617:3-4.png)]] ------------ 2. create {{{ #!sh source folder-> 輸入: icas/src Package : Sample Name -> : WordCount.java }}} ------- 3. modify {{{ #!java package Sample; import org.apache.hadoop.fs.Path; import org.apache.hadoop.io.IntWritable; import org.apache.hadoop.io.Text; import org.apache.hadoop.mapred.FileInputFormat; import org.apache.hadoop.mapred.FileOutputFormat; import org.apache.hadoop.mapred.JobClient; import org.apache.hadoop.mapred.JobConf; import org.apache.hadoop.mapred.TextInputFormat; import org.apache.hadoop.mapred.TextOutputFormat; public class WordCount { public static void main(String[] args) throws Exception { JobConf conf = new JobConf(WordCount.class); conf.setJobName("wordcount"); conf.setOutputKeyClass(Text.class); conf.setOutputValueClass(IntWritable.class); conf.setMapperClass(mapper.class); conf.setCombinerClass(reducer.class); conf.setReducerClass(reducer.class); conf.setInputFormat(TextInputFormat.class); conf.setOutputFormat(TextOutputFormat.class); FileInputFormat.setInputPaths(conf, new Path("/user/hadooper/input")); FileOutputFormat.setOutputPath(conf, new Path("lab5_out2")); JobClient.runJob(conf); } } }}} 三個檔完成後並存檔後,整個程式建立完成 [[Image(wiki:waue/2009/0617:3-5.png)]] ------- * 三個檔都存檔後,可以看到icas專案下的src,bin都有檔案產生,我們用指令來check {{{ $ cd workspace/icas $ ls src/Sample/ mapper.java reducer.java WordCount.java $ ls bin/Sample/ mapper.class reducer.class WordCount.class }}} = 四、測試範例程式 = 在此提供兩種方法來run我們從eclipse 上編譯出的code。 方法一是直接在eclipse上用圖形介面操作,參閱 4.1 在eclipse上操作 方法二是產生jar檔後搭配自動編譯程式Makefile,參閱4.2 == 4.1 法一:在eclipse上操作 == * 右鍵點選專案資料夾:icas -> run as -> run on Hadoop [[Image(wiki:waue/2009/0617:run-on-hadoop.png)]]