I have used Pig and Hive before but am new to Hadoop MapReduce. I need to write an application which has multiple small sized files as input (say 10). They have different file structures, so I want to process them parallelly on separate nodes so that they can be processed quickly. I know that the strong point of Hadoop is processing large data but these input files, though small, require a lot of processing so I was hoping to leverage Hadoop's parallel computing prowess. Is this possible?
It is possible but you're probably not going to get much value. You have these forces against you:
You'll need to write a mapper which can handle all of the different input formats (either by detecting the input format, or using the filename of the input to decide which format to expect)
You need to either use the slightly tricky multiple output file handling functionality of Hadoop or write your output as a side effect of the reducer (or mapper if you can be sure that each file will go to a different node)
High Cost of initialization
Every hadoop map reduce job comes with a hefty start up cost, about 30 seconds on a small cluster, much more on a larger cluster. This point alone probably will lose you more time than you could ever hope to gain by parallelism.
In brief: give a try to
There is no problem to copy all your input files to all nodes (you can put them to distributed cache if you like). What you really want to distribute is check processing.
With Hadoop you can create (single!) input control file in the format (filename,check2run) or (filename,format,check2run) and use
Note: Hadoop input format determines how splits are calculated;
Depending on the nature of your checks you may be able to compute linespermap value to cover all files/checks in one wave of mappers (or may be unable to use this approach at all :) )
I was able to do this by reading the whole file as the value. Please refer my answer for Getting Filename/FileData as key/value input for Map when running a Hadoop MapReduce Job on StackOverflow.