I have data sets in a magnitude of 3-digit GBs or even 1 or 2-digit TB. The input files are therefore a list of files, each sized like 10GB. My map reduce job in hadoop processes all these files and then gives only one output file (with the aggregated information).
My questions are:
What is the appropriate file size for tuning up the hadoop/mapreduce framework from Apache? I hear that bigger file sizes are more preferred than the small ones. Have any ideas? The only thing I know for sure is that hadoop reads blocks, each with 64MB by default. So it would be good if the file size is kind of multiplicator of 64MB.
At the moment, my application is writing the output file into only one file. The file size is then of course 3-digit gigabit. I am wondering how efficiently I can partition the file. Of course I can just use some unix tools to do this job. But is it preferred to do this directly in hadoop?
Thx for your comments!
P.S.: I am not compressing the files. The file format of the input files is text/csv.