I am running some experiments to benchmark the time it takes (by map-reduce) to read and process data stored on HDFS with varying parameters. I use pig script to launch map-reduce jobs. Since I am working with the same set of files frequently, my results may get affected because of file/block caching.
I want to understand the various caching techniques employed in a map-reduce environment.
Lets say that a file
foo (contains some data to be procesed) stored on HDFS occupies
1 HDFS block and it gets stored in machine
STORE. During a map-reduce task, machine
COMPUTE reads that block over network and processes it. Caching can happen at two levels:
- Cached in memory of machine
STORE(in-memory file cache)
- Cached in memory/disk of machine
I am pretty sure that
#1 caching happens. I want to ensure whether something like
#2 happens? From the post here, it looks like there is no client level caching going on since it is very unlikely that the block cached by
COMPUTE will be needed again in the same machine before the cache is flushed.
Also, is the hadoop distributed cache used only to distribute any application specific files (not task specific input data files) to all task tracker nodes? Or is the task specific input file data (like the
foo file block) cached in the distributed cache? I assume
local.cache.size and related parameters only control the distributed cache.