I am new in hadoop and i am not yet familiar to its configuration.

I just want to ask the maximum container per node.

I am using a single node cluster (6GB ram laptop)

and below is my mapred and yarn configuration:

map-mb : 4096 opts:-Xmx3072m
reduce-mb : 8192 opts:-Xmx6144m

resource memory-mb : 40GB
min allocation-mb : 1GB

The above setup can only run 4 to 5 jobs. and max of 8 container.


Maximum containers that run on a single NodeManager (hadoop worker) depends on lot of factors like how much memory is assigned for the NodeManager to use and also depends on application specific requirements.

The defaults for yarn.scheduler.*-allocation-* are: 1GB (minimum allocation), 8GB (maximum allocation), 1 core and 32 cores. So, minimum and maximum allocation, affects number of containers per node.

So, if you have 6GB RAM and 4 virtual cores, here is how the YARN configuration should look like:

yarn.scheduler.minimum-allocation-mb: 128
yarn.scheduler.maximum-allocation-mb: 2048
yarn.scheduler.minimum-allocation-vcores: 1
yarn.scheduler.maximum-allocation-vcores: 2
yarn.nodemanager.resource.memory-mb: 4096
yarn.nodemanager.resource.cpu-vcores: 4

The above configuration tells hadoop to use atmost 4GB and 4 virtual cores and that each container can have between 128 MB and 2 GB of memory and between 1 and 2 virtual cores, with these settings you could run upto 2 containers with maximum resources at a time.

Now, for MapReduce specific configuration:

yarn.app.mapreduce.am.resource.mb: 1024
yarn.app.mapreduce.am.command-opts: -Xmx768m
mapreduce.[map|reduce].cpu.vcores: 1
mapreduce.[map|reduce].memory.mb: 1024
mapreduce.[map|reduce].java.opts: -Xmx768m

With this configuration, you could theoretically have up to 4 mappers/reducers running simultaneously in 4 1GB containers. In practice, the MapReduce application master will use a 1GB container so the actual number of concurrent mappers and reducers will be limited to 3. You can play around with the memory limits but it might require some experimentation to find the best ones.

As a rule of thumb, you should limit the heap-size to about 75% of the total memory available to ensure things run more smoothly.

You could also set memory per container using yarn.scheduler.minimum-allocation-mb property.

For more detail configuration for production systems use this document from hortonworks as a reference.

  • There is one master node with 8GB RAM and 8VCPU cores and 10 slave nodes with 2GB RAM and 1VCPU core on each in my Hadoop 2.5.2 cluster. 5 Inputsplits are created for the MapReduce application. One container is running on one slave node only. What confgiuration will enable my applciaton to use all/ masx slave ndoes. I aim to run my application with 50 slave ndoes. – Tariq Feb 11 '15 at 11:09

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.