I am analyzing a large amount of files in a Hadoop MapReduce job, with the input files being in .txt format. Both my mapper and my reducer are written in Python.
However, my mapper module requires access to the contents of an external csv-file, which is basically just a large table to look up reference values for a transformation that the mapper is performing.
Up until now, I just had the mapper load the file into memory from a local directory to make it available as a Python variable. Since the file is quite large, though (several thousand rows and columns), it takes a relatively long time to be loaded (about 10 seconds, too long for my purposes). The problem is that Hadoop seems to re-execute the mapper-script for every new input-file or it splits large input files into smaller ones, causing my csv-file to be unnecessarily loaded into memory again and again each time a new input-file is processed.
Is there a way to have Hadoop load the file only once and somehow make it "globally" available? Upon googling names like Hive, Pig, sqlite were popping up, but I never saw any examples to check if these are actually useful for this purpose.
Basically, I would just need some kind of database or dictionary to be accessed quickly while running my Hadoop job. The format of my reference table, doesn't have to be CSV, I am pretty flexible in transforming that data to different formats.