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I have a MapReduce job defined in file main.py, which imports module lib from file lib.py. I use Hadoop Streaming to submit this job to Hadoop cluster as follows:

hadoop jar /usr/lib/hadoop-mapreduce/hadoop-streaming.jar -files lib.py,main.py 
    -mapper "./main.py map" -reducer "./main.py reduce" 
    -input input -output output

In my understanding, this should put both main.py and lib.py into distributed cache folder on each computing machine and thus make module lib available to main. But it doesn't happen - from log file I see, that files are really copied to the same directory, but main can't import lib, throwing ImportError.

Why does it happen and how can I fix it?

UPD. Adding current directory to the path didn't work:

import sys    
sys.path.append(os.path.realpath(__file__))
import lib
# ImportError

though, loading module manually did the trick:

import imp
lib = imp.load_source('lib', 'lib.py')

But that's not what I want. So why Python interpreter can see other .py files in the same directory, but can't import them? Note, I have already tried adding empty __init__.py file to the same directory without effect.

share|improve this question
    
Have you checked sys.path in main.py to make sure the working directory is included ? –  lmjohns3 Aug 9 '13 at 15:26
    
@lmjohns3: yes, working directory is on the classpath. BTW, isn't it automatically included for running script? (just curious) –  ffriend Aug 9 '13 at 15:32
    
I believe that's true for Python scripts that are started on the command-line, but Hadoop streaming might be starting a Python interpreter in another way (not really sure). Either way, I still think this sounds like a path issue. See litfuel.net/plush/?postid=195 for one possibility to distribute your modules in a different way. Alternatively, try writing your commands into a shell script and passing that for the -mapper and -reducer command-line arguments. –  lmjohns3 Aug 9 '13 at 15:35
    
@lmjohns3: yeah, I have seen the trick with module, but it puts some restrictions on main, while I'm trying to keep importing as simple as possible. The point is to create distributable library that you can just import. –  ffriend Aug 9 '13 at 15:59

1 Answer 1

up vote 3 down vote accepted

I posted the question to Hadoop user list and finally found the answer. It turns out that Hadoop doesn't really copy files to the location where the command runs, but instead creates symlinks for them. Python, in its turn, can't work with symlinks and thus doesn't recognize lib.py as Python module.

Simple workaround here is to put both main.py and lib.py into the same directory, so that symlink to the directory is placed into MR job working directory, while both files are physically in the same directory. So I did the following:

  1. Put main.py and lib.py into app directory.
  2. In main.py I used lib.py directly, that is, import string is just

    import lib

  3. Uploaded app directory with -files option.

So, final command looks like this:

hadoop jar /usr/lib/hadoop-mapreduce/hadoop-streaming.jar -files app 
       -mapper "app/main.py map" -reducer "app/main.py reduce" 
       -input input -output output 
share|improve this answer
    
Using -files option to upload dozens of files did not work in my hadoop environment. –  xiao 啸 Oct 21 '14 at 6:28

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