I've been starting to learn hadoop, and currently I'm trying to process log files that are not too well structured - in that the value I normally use for the M/R key is typiclly found at the top of the file (once). So basically my mapping function takes that value as key and then scans the rest of the file to aggregate the values needed to be reduced. So a [fake] log might look like this:
## log.1 SOME-KEY 2012-01-01 10:00:01 100 2012-01-02 08:48:56 250 2012-01-03 11:01:56 212 .... many more rows ## log.2 A-DIFFERENT-KEY 2012-01-01 10:05:01 111 2012-01-02 16:46:20 241 2012-01-03 11:01:56 287 .... many more rows ## log.3 SOME-KEY 2012-02-01 09:54:01 16 2012-02-02 05:53:56 333 2012-02-03 16:53:40 208 .... many more rows
I want to accumulate the 3rd column for each key. I have a cluster of several nodes running this job, and so I was bothered by several issues:
1. File Distribution
Given that hadoop's HDFS works in 64Mb blocks (by default), and every file is distributed over the cluster, can I be sure that the correct key will be matched against the proper numbers? That is, if the block containing the key is in one node, and a block containing data for that same key (a different part of the same log) is on a different machine - how does the M/R framework match the two (if at all)?
2. Block Assignment
For text logs such as the ones described, how is each block's cutoff point decided? Is it after a row ends, or exactly at 64Mb (binary)? Does it even matter? This relates to my #1, where my concern is that the proper values are matched with the correct keys over the entire cluster.
3. File structure
What is the optimal file structure (if any) for M/R processing? I'd probably be far less worried if a typical log looked like this:
A-DIFFERENT-KEY 2012-01-01 10:05:01 111 SOME-KEY 2012-01-02 16:46:20 241 SOME-KEY 2012-01-03 11:01:56 287 A-DIFFERENT-KEY 2012-02-01 09:54:01 16 A-DIFFERENT-KEY 2012-02-02 05:53:56 333 A-DIFFERENT-KEY 2012-02-03 16:53:40 208 ...
However, the logs are huge and it would be very costly (time) to convert them to the above format. Should I be concerned?
4. Job Distribution
Are the jobs assigned such that only a single JobClient handles an entire file? Rather, how are the keys/values coordinated between all the JobClients? Again, I'm trying to guarentee that my shady log structure still yields correct results.
I'd appreciate any input and tips. Thanks!