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I've tried using Python + boto + multiprocessing, S3cmd and J3tset but struggling with all of them.

Any suggestions, perhaps a ready-made script you've been using or another way I don't know of?

EDIT:

eventlet+boto is a worthwhile solution as mentioned below. Found a good eventlet reference article here http://web.archive.org/web/20110520140439/http://teddziuba.com/2010/02/eventlet-asynchronous-io-for-g.html

I've added the python script that I'm using right now below.

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Amazon Import/Export aws.amazon.com/importexport :) –  J-16 SDiZ Jan 18 '11 at 5:25
    
How big are the individual objects? –  Amber Jan 18 '11 at 5:25
    
@J.16.SDiZ I can't wait that long :( –  Jagtesh Chadha Jan 18 '11 at 5:29
    
@Amber 10kb-200kb, but most of them are below 100kb –  Jagtesh Chadha Jan 18 '11 at 5:30
    
Was mostly wondering if it'd be worth it to grab an EC2 instance to condense the files on S3 into larger bundles to save on # of requests you have to make. –  Amber Jan 18 '11 at 7:31

3 Answers 3

up vote 15 down vote accepted

Okay, I figured out a solution based on @Matt Billenstien's hint. It uses eventlet library. The first step is most important here (monkey patching of standard IO libraries).

Run this script in the background with nohup and you're all set.

from eventlet import *
patcher.monkey_patch(all=True)

import os, sys, time
from boto.s3.connection import S3Connection
from boto.s3.bucket import Bucket

import logging

logging.basicConfig(filename="s3_download.log", level=logging.INFO)


def download_file(key_name):
    # Its imp to download the key from a new connection
    conn = S3Connection("KEY", "SECRET")
    bucket = Bucket(connection=conn, name="BUCKET")
    key = bucket.get_key(key_name)

    try:
        res = key.get_contents_to_filename(key.name)
    except:
        logging.info(key.name+":"+"FAILED")

if __name__ == "__main__":
    conn = S3Connection("KEY", "SECRET")
    bucket = Bucket(connection=conn, name="BUCKET")

    logging.info("Fetching bucket list")
    bucket_list = bucket.list(prefix="PREFIX")

    logging.info("Creating a pool")
    pool = GreenPool(size=20)

    logging.info("Saving files in bucket...")
    for key in bucket.list():
        pool.spawn_n(download_file, key.key)
    pool.waitall()
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2  
Note, I've had issues if I don't create a connection in each greenlet. Were you table to download all your objects using this? –  Matt Billenstein Jan 18 '11 at 20:13
2  
No. I had issues too. It stopped working after downloading 4000 objects. I didn't have time to debug it, so I ended up using s3cmd get from a shell script for each file. I divided the list of filenames on S3 into several sets and ran the script on 7-8 sets at a time (so I had 7-8 s3cmd get requests at any point of time). Use boto's bucket.list() method to get the filelist and then use the split shell command to create equally sized sets. This might consume more CPU than the eventlet approach but its simple and gets the job done. –  Jagtesh Chadha Jan 22 '11 at 3:25
    
I've edited the code to create a new connection for each file download (this plays nice with green threads). –  Jagtesh Chadha Jan 3 '13 at 8:47
    
added pool.waitall() to the end, otherwise the code did nothing and exited before any download really completed. –  Jan Vlcinsky Mar 20 at 15:41

Use eventlet to give you I/O parallelism, write a simple function to download one object using urllib, then use a GreenPile to map that to a list of input urls -- a pile with 50 to 100 greenlets should do...

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Thanks for the tip. But isn't this something like using multiprocessing.Pool? –  Jagtesh Chadha Jan 18 '11 at 6:02

Here is my code to implement:

import boto
from boto.s3.key import Key
import os

def main():
    s3 = boto.connect_s3()
    b = s3.get_bucket("trainingset")
    path = "netflix/training_set/"
    os.makedirs(path)
    for l in b.list(prefix="netflix/training_set/"):
       key = b.get_key(l.name)
       res = key.get_contents_to_filename(key.name)

if __name__ == "__main__":
    main()

I have 17,770 files on this bucket. I almost take 2 hours to download all. This is my solution. Does anybody have faster method to deal with this kind of thing?

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This should be a new question or a comment. In any case, try the solution posted above. –  Jagtesh Chadha Mar 11 at 16:50

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