理解MapReduce计算构架

Posted Zeyixi

tags:

篇首语:本文由小常识网(cha138.com)小编为大家整理,主要介绍了理解MapReduce计算构架相关的知识,希望对你有一定的参考价值。

用Python编写WordCount程序任务

程序

WordCount

输入

一个包含大量单词的文本文件

输出

文件中每个单词及其出现次数(频数),并按照单词字母顺序排序,每个单词和其频数占一行,单词和频数之间有间隔

1.编写map函数,reduce函数

 首先在/home/hadoop路径下建立wc文件夹,在wc文件夹下创建文件mapper.py和reducer.py

cd /home/hadoop
mkdir wc
cd /home/hadoop/wc
touch mapper.py
touch reducer.py

 编写两个函数mapper:

import sys
for line in sys.stdin:
    line = line.strip()
    words = line.split()
    for word in words:
        print \'%s\\t%s\' % (word,1)

                 reduces.py:

from operator import itemgetter
import sys
 
current_word = None
current_count = 0
word=None
 
for line in sys.stdin:
    line = line.strip()
    word, count = line.split(\'\\t\', 1)
    try:
        count=int(count)
    except ValueError:
        continue
 
    if current_word == word:
        current_count += count
    else:
        if current_word:
            print \'%s\\t%s\' % (current_word,  current_count)
        current_count = count
        current_word = word
if current_word == word:
    print \'%s\\t%s\' % (current_word,  current_count)

2.将其权限作出相应修改

chmod a+x /home/hadoop/wc/mapper.py
chmod a+x /home/hadoop/wc/reducer.py

3.本机上测试运行代码

echo "foo foo quux labs foo bar quux" | /home/hadoop/wc/mapper.py
echo "foo foo quux labs foo bar quux" | /home/hadoop/wc/mapper.py | sort -k1,1 | /home/hadoop/wc/reducer.py

 

4.放到HDFS上运行

cd  /home/hadoop/wc
wget http://www.gutenberg.org/files/5000/5000-8.txt
wget http://www.gutenberg.org/cache/epub/20417/pg20417.txt

5.下载并上传文件到hdfs上

hdfs dfs -put /home/hadoop/hadoop/gutenberg/*.txt /user/hadoop/input

6.用Hadoop Streaming命令提交任务:

       寻找你的streaming的jar文件存放地址:

	
cd /usr/local/hadoop/share/hadoop/tools/lib/hadoop-streaming-2.7.1.jar

  打开环境变量配置文件:

gedit ~/.bashrc

  在里面写入streaming路径:

export STREAM=$HADOOP_HOME/share/hadoop/tools/lib/hadoop-streaming-*.jar

  让环境变量生效:

source ~/.bashrc
echo $STREAM

  建立一个shell名称为run.sh来运行:

gedit run.sh
hadoop jar $STREAM
-file /home/hadoop/wc/mapper.py \\
-mapper /home/hadoop/wc/mapper.py \\
-file /home/hadoop/wc/reducer.py \\
-reducer /home/hadoop/wc/reducer.py \\
-input /user/hadoop/input/*.txt \\
-output /user/hadoop/wcoutput

  

以上是关于理解MapReduce计算构架的主要内容,如果未能解决你的问题,请参考以下文章

理解MapReduce计算构架

理解MapReduce计算构架

理解MapReduce计算构架

理解MapReduce计算构架

理解MapReduce计算构架

理解MapReduce计算构架