I have a 2 node hadoop (1 is the master/slave and another slave) setup and 4 input files each of size 1GB. When i set dfs.replicate to 2, then the entire data is copied over to both the nodes which is understandable. But my question is that, how do i see an improved performance (almost twice as better) over a single node setup since in the 2 node case, map-reduce will still run over the complete data set on both the systems along with the added overhead of channeling the inputs from 2 mappers to reducers.
Also when i set the replication as 1, the entire data exists only on the master node which is also understandable to avoid ethernet overhead. But even in this case, i see a performance improvement compared to single node setup which i find confusing, since map-reduce runs on local data sets, this scenario should essentially be similar to single node setup with one map-reduce program running on master node on the entire data set ??
Can someone help me understand what i am missing here ???