What is a container in YARN? Is it same as the child JVM in which the tasks on the nodemanager run or is it different?
There can be multiple containers on a single Node (or a single very big one).
Every node in the system is considered to be composed of multiple containers of minimum size of memory (say 512MB or 1 GB). The ApplicationMaster can request any container as a multiple of the minimum memory size.
Source, see section ResourceManager/Resource Model.
In Hadoop 2.x, Container is a place where a unit of work occurs. For instance each MapReduce task(not the entire job) runs in one container.
An application/job will run on one or more containers.
Set of system resources are allocated for each container, currently CPU core and RAM are supported. Each node in a Hadoop cluster can run several containers.
In Hadoop 1.x a slot is allocated by the JobTracker to run each MapReduce task. Then the TaskTracker spawns a separate JVM for each task(unless JVM reuse is not enabled).
Word 'Container' is used in YARN in two contexts,
Container: Signifies an allocated resources to an ApplicationMaster. ResourceManager is responsible for issuing resource/container to an ApplicationMaster. Check Container API.
Launching a Container: Based on allocated resources (containers) ApplicationMaster request NodeManager to start Containers, resulting in executing task on a node. Check ContainerManager API.
The logical lease on resources and the actual process spawned on the node is used interchangeably. It is same process in which tasks(or AM) runs. To start container we provide container object and CLC (ContainerLaunchContext) in which we set list of commands to run tasks (or AM).
nmClient.startContainer(container, clcObj) ContainerLaunchContext code snippet : <code> . . . /** * Add the list of <em>commands</em> for launching the container. All * pre-existing List entries are cleared before adding the new List * @param commands the list of <em>commands</em> for launching the container */ @Public @Stable public abstract void setCommands(List<String> commands); </code>
According to the size of input data, multiple input splits are created. The MR job need to process this whole data so multiple tasks are being created(map & reduce tasks). So for each input split will be processed by one task. Now how to run this task, is suggested by Resource manager. Resource manager knows which node manager is free and which is busy, its like principal of college and node manager are the class teacher of college and principal knows which teacher is free. So it asks node manager to run that task(small fraction of entire job) in the container i.e. memory area such that jvm. So the job is run as an application master inside the container.
Container is a place where the application runs its task. If you want to know the total no.of running containers in a cluster, then you could check in your cluster Yarn-Resource manager UI.
At the "Running containers" column, the total no. of running containers details is present.
Note: If you are using spark, then the spark executors would be running inside the container. One container can accommodate multiple spark executors.