I am planning to write a batch distributed computing system that will use about 10-20 computers. The data flow in certain parts of the system will be about ~50GB, and in other parts considerably smaller ~1GB.
I am thinking about using Hadoop. The scalability is not important, but I really like the fault tolerance and speculative run features that Hadoop framewok offers. Frameworks like MPI or gearman don't seem to provide such mechanisms, and I will have to implement them by myself.
However, I have some doubts because it seems to be optimized for larger data amounts and possibly more computers. For example, the book Hadoop the Definitive Guide mentions explicitly:
The High Performance Computing (HPC) and Grid Computing communities have been doing large-scale data processing for years, using such APIs as Message Passing Interface (MPI). Broadly, the approach in HPC is to distribute the work across a cluster of machines, which access a shared filesystem, hosted by a SAN. This works well for predominantly compute-intensive jobs, but becomes a problem when nodes need to access larger data volumes (hundreds of gigabytes, the point at which MapReduce really starts to shine), since the network bandwidth is the bottleneck and compute nodes become idle.
My questions are:
- Does Hadoop have a considerable overhead when using it with relatively small amount of data and/or computers?
- Is there another framework that provides fault-tolerance handling in any way close to Hadoop?