I'm having trouble figuring out the best way to configure my Hadoop cluster (CDH4), running MapReduce1. I'm in a situation where I need to run both mappers that require such a large amount of Java heap space that I couldn't possible run more than 1 mapper per node - but at the same time I want to be able to run jobs that can benefit from many mappers per node.
I'm configuring the cluster through the Cloudera management UI, and the Max Map Tasks and mapred.map.child.java.opts appear to be quite static settings.
What I would like to have is something like a heap space pool with X GB available, that would accommodate both kinds of jobs without having to reconfigure the MapReduce service each time. If I run 1 mapper, it should assign X GB heap - if I run 8 mappers, it should assign X/8 GB heap.
I have considered both the Maximum Virtual Memory and the Cgroup Memory Soft/Hard limits, but neither will get me exactly what I want. Maximum Virtual Memory is not effective, since it still is a per task setting. The Cgroup setting is problematic because it does not seem to actually restrict the individual tasks to a lower amount of heap if there is more of them, but rather will allow the task to use too much memory and then kill the process when it does.
Can the behavior I want to achieve be configured?