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I'm a python developer with pretty good RDBMS experience. I need to process a fairly large amount of data (approx 500GB). The data is sitting in approximately 1200 csv files in s3 buckets. I have written a script in Python and can run it on a server. However, it is way too slow. Based on the current speed and the amount of data it will take approximately 50 days to get through all of the files (and of course, the deadline is WELL before that).

Note: the processing is sort of your basic ETL type of stuff - nothing terrible fancy. I could easily just pump it into a temp schema in PostgreSQL, and then run scripts onto of it. But, again, from my initial testing, this would be way to slow.

Note: A brand new PostgreSQL 9.1 database will be it's final destination.

So, I was thinking about trying to spin up a bunch of EC2 instances to try and run them in batches (in parallel). But, I have never done something like this before so I've been looking around for ideas, etc.

Again, I'm a python developer, so it seems like Fabric + boto might be promising. I have used boto from time to time, but never any experience with Fabric.

I know from reading/research this is probably a great job for Hadoop, but I don't know it and can't afford to hire it done, and the time line doesn't allow for a learning curve or hiring someone. I should also not, that it's kind of a one time deal. So, I don't need to build a really elegant solution. I just need for it to work and be able to get through all of the data by the end of the year.

Also, I know this is not a simple stackoverflow-kind of question (something like "how can I reverse a list in python"). But, what I'm hoping for is someone to read this and "say, I do something similar and use XYZ... it's great!"

I guess what I'm asking is does anybody know of any thing out there that I could use to accomplish this task (given that I'm a Python developer and I don't know Hadoop or Java - and have a tight timeline that prevents me learning a new technology like Hadoop or learning a new language)

Thanks for reading. I look forward to any suggestions.

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fabric+boto indeed looks like a good combination for this task. It may be worthwhile to parallelize the task on each instances too (unless you're expecting to have 1200 instances, one per file), maybe by using a Pool from the multiprocessing module. Also, the way you parse the file and edit the results is probably going to have a lot of impact in the total time. Have you looked into numpy? –  goncalopp Dec 22 '12 at 20:40
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So no-one tries to repeat possible suggestions - could you describe what you've done in your existing script that's too slow - so we know not to go down that route :) –  Jon Clements Dec 22 '12 at 20:45
    
@JonClements - seems like a fair request. Bascially, I've tried two approaches. I've tried puting the data into a temp schema and indexing it (as needed) and running queries against it to "massage" the data and get it into the requested format. That was too slow because I believe the indexes were much bigger than PostgreSQL cache. Note: I have a small PostgreSQL instance running on Heroku. (will continue in next comment) –  David S Dec 23 '12 at 18:05
    
Then I tried to load all of the data that I needed into python dictionaries and process the files by pulling them off of s3, and loading them and then spitting them back out in the correct CSV format and then doing a "copy" into the target table. This works but is too slow with only 1 server. However, I think if I take this and run it on 100 servers it will get the job down within my deadline. –  David S Dec 23 '12 at 18:06
    
Note to all. I've taken a little time off for the holidays but am back at work now. I will select an answer (or post what I did) once the project is complete. Thanks to all for comments/answers. –  David S Dec 27 '12 at 18:20

5 Answers 5

up vote 2 down vote accepted

I often use a combination of SQS/S3/EC2 for this type of batch work. Queue up messages in SQS for all of the work that needs to be performed (chunked into some reasonably small chunks). Spin up N EC2 instances that are configured to start reading messages from SQS, performing the work and putting results into S3, and then, and only then, delete the message from SQS.

You can scale this to crazy levels and it has always worked really well for me. In your case, I don't know if you would store results in S3 or go right to PostgreSQL.

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Just out of curiosity, how would you get your script(s) to the EC2 instance? Would you have them pull from a git repo? Or just scp the script(s) over? –  David S Dec 27 '12 at 18:19
    
I've used a number of techniques. You could write Paramiko-based scripts to scp the files over. You could use cloud-init and pull the scripts from S3. You could use Fabric. You could use CloudFormation templates. There are lots of choices. –  garnaat Dec 27 '12 at 19:09
    
Thanks for the reply. Yeah; seems like a lot of options. As I mentioned in my original question, I'm leaning towards using Fabric, but was wondering what you did here. –  David S Dec 27 '12 at 19:30

Did you do some performance measurements: Where are the bottlenecks? Is it CPU bound, IO bound, DB bound?

When it is CPU bound, you can try a python JIT like pypy.

When it is IO bound, you need more HDs (and put some striping md on them).

When it is DB bound, you can try to drop all the indexes and keys first.

Last week I imported the Openstreetmap DB into a postgres instance on my server. The input data were about 450G. The preprocessing (which was done in JAVA here) just created the raw data files which could be imported with postgres 'copy' command. After importing the keys and indices were generated.

Importing all the raw data took about one day - and then it took several days to build keys and indices.

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I did something like this some time ago, and my setup was like

  • one multicore instance (x-large or more), that converts raw source files (xml/csv) into an intermediate format. You can run (num-of-cores) copies of the convertor script on it in parallel. Since my target was mongo, I used json as an intermediate format, in your case it will be sql.

  • this instance has N volumes attached to it. Once a volume becomes full, it gets detached and attached to the second instance (via boto).

  • the second instance runs a DBMS server and a script which imports prepared (sql) data into the db. I don't know anything about postgres, but I guess it does have a tool like mysql or mongoimport. If yes, use that to make bulk inserts instead of making queries via a python script.

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You might benefit from hadoop in form of Amazon Elastic Map Reduce. Without getting too deep it can be seen as a way to apply some logic to massive data volumes in parralel (Map stage).
There is also hadoop technology called hadoop streaming - which enables to use scripts / executables in any languages (like python).
Another hadoop technology you can find useful is sqoop - which moves data between HDFS and RDBMS.

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Thanks for the answer. DEEEEEP down inside me, I know that Hadoop and Elastic MapReduce is the right thing to use here. However, I just can't wrap my head around how it would work with what I'm trying to accomplish. Part of my problem is that virtually every example I've ever seen is the same silly word-counting problem. Mine really is more of an ETL (extract, transform, load) problem. I can easily imagine the Map function handling most of the transforms. But, the transforms are customer dependent. So, it's not a simple calculation (eg. (x*y)/2). –  David S Dec 28 '12 at 19:57

You can also use ipython's parallel computing very easily on EC2 with StarCluster
StarCluster is a utility for creating and managing distributed computing clusters hosted on Amazon's EC2.

http://ipython.org/ipython-doc/stable/parallel/parallel_demos.html
http://star.mit.edu/cluster/docs/0.93.3/index.html
http://star.mit.edu/cluster/docs/0.93.3/plugins/ipython.html

share|improve this answer
    
Thanks for the post! I've never even heard of this! I'll check it out! Thanks again! –  David S Dec 23 '12 at 17:58

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