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Here is my problem: I have a file in HDFS which can potentially be huge (=not enough to fit all in memory)

What I would like to do is avoid having to cache this file in memory, and only process it line by line like I would do with a regular file:

for line in open("myfile", "r"):
    # do some processing

I am looking to see if there is an easy way to get this done right without using external libraries. I can probably make it work with libpyhdfs or python-hdfs but I'd like if possible to avoid introducing new dependencies and untested libs in the system, especially since both of these don't seem heavily maintained and state that they shouldn't be used in production.

I was thinking to do this using the standard "hadoop" command line tools using the Python subprocess module, but I can't seem to be able to do what I need since there is no command line tools that would do my processing and I would like to execute a Python function for every linein a streaming fashion.

Is there a way to apply Python functions as right operands of the pipes using the subprocess module? Or even better, open it like a file as a generator so I could process each line easily?

cat = subprocess.Popen(["hadoop", "fs", "-cat", "/path/to/myfile"], stdout=subprocess.PIPE)

If there is another way to achieve what I described above without using an external library, I'm also pretty open.

Thanks for any help !

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You could use bitbucket.org/turnaev/cyhdfs i released it few days ago and it is used in production. PyPI link pypi.python.org/pypi/cyhdfs/0.1.2 is slightly older bu ok. –  Turnaev Evgeny Sep 19 '12 at 6:13

3 Answers 3

up vote 9 down vote accepted

You want xreadlines, it reads lines from a file without loading the whole file into memory.


Now I see your question, you just need to get the stdout pipe from your Popen object:

cat = subprocess.Popen(["hadoop", "fs", "-cat", "/path/to/myfile"], stdout=subprocess.PIPE)
for line in cat.stdout:
    print line
share|improve this answer
How is this different from doing a for line in open("myfile")? I think the difficulty here is that I'm not dealing with a regular file, but a file that is in HDFS and I'm wondering if there's a way I can make the subprocess module (or something else) process it line by line with some Python code. (I didn't downvote) –  Charles Menguy Sep 18 '12 at 22:08
I guess I misunderstood your question then. Don't you want to process it line by line in python? Doesn't HDFS have a way to cat a file? (I hope it does.) Just call that as a subprocess and wrap the result in an xreadlines or a for line in.... –  Keith Randall Sep 18 '12 at 22:12
Yes you can cat a file with hadoop fs -cat /path/to/myfile, as I've written in the little subprocess statement above. Maybe I'm missing something, but objects returned by subprocess.Popen are not iterable file-like objects, right? I've tried doing a for line in ... on my cat object above but all I get is TypeError: 'Popen' object is not iterable. Am I misunderstanding something? It would be awesome if you could show a little example of what you're thinking of. –  Charles Menguy Sep 18 '12 at 22:18
Ah, now I see your problem. See my edit. –  Keith Randall Sep 18 '12 at 22:22
Note that, since 2.3, xreadlines is deprecated (just use for line in file, as in your Edit). –  Adam Monsen Feb 15 '13 at 18:27

If you want to avoid adding external dependencies at any cost, Keith's answer is the way to go. Pydoop, on the other hand, could make your life much easier:

import pydoop.hdfs as hdfs
with hdfs.open('/user/myuser/filename') as f:
    for line in f:

Regarding your concerns, Pydoop is actively developed and has been used in production for years at CRS4, mostly for computational biology applications.


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+1 for pydoop i'll give it a try –  Charles Menguy Jan 19 '13 at 3:01

In the last two years, there has been a lot of motion on Hadoop-Streaming. This is pretty fast according to Cloudera: http://blog.cloudera.com/blog/2013/01/a-guide-to-python-frameworks-for-hadoop/ I've had good success with it.

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