I wrote a simple Map/Reduce program in Java for the relational join operation for two text files. The algorithm is as described in many places, that doing the join in the Reduce tasks.
I want to tune it to have better performance. The first thing is to try different number of Reduce tasks. For now I only run in a single computer with 4-core, but really in distributed file system.
I meet the strange phenomenon, is that, the wall-time (time stat till time finish) is even a little longer if I run 4, or 32 reduce tasks, than the time that I run only 1 reduce task:
1 reducer: 22.4 seconds 4 reducer: 23.3 seconds 32 reducer: 26.1 seconds
By looking at this trend, I can not really explain. The first impression is that the bottleneck would be in the I/O, because I am running in a single machine, the high I/O operation is not really paralleled. However by looking at the CPU stat, the i/o wait time is very small (and the input data is only several Mega bytes in my test data), so it does not look like a good explanation.
One thing to mention is that I monitor the CPU usage of different cores while running the map/reduce program, and I found most of the time the CPU usage is limited to one core, and does not look like in paralleled very much.
I also suspect that the benefit of running more reducers is eliminated by the extra of the map/reduce overhead.
What do you think about this?
[Update] I found out the statement (also proved by some timing observation) that in single JVM, the map and reduce task only runs in serial but not multi-threaded. That will explain why the results are more time with more reducer tasks.
I see the multi-threaded mapper is supported by Hadoop using the MultithreadedMapper class, and I tried, unfortunately the result becomes once again even a little worse.
But I don't know why there is a class called MultithreadedMapper, but why there is another like MultithreadedReducer?