YARN and the Hadoop Ecosystem
The new Apache Hadoop YARN resource manager is introduced in this chapter. In addition to allowing non-MapReduce tasks to work within a Hadoop installation, YARN provides several other advantages over the previous version of Hadoop including better scalability, cluster utilization, and user agility.
YARN also brings with it several new services that separate it from the standard Hadoop MapReduce model. A new ResourceManger acting as a pure resource scheduler is the sole arbitrator of cluster resources. User applications, including MapReduce jobs, ask for specific resource requests via the new ApplicationMaster component, which in in-turn negotiates with the ResourceManager to create an application container within the cluster.
By incorporating MapReduce as a YARN framework, YARN also provides full backward compatible with existing MapReduce tasks and applications,More info go through big data hadoop course.
Beyond MapReduce
The Apache Hadoop ecosystem continues to grow beyond the simple MapReduce job. Although MapReduce is still at the core of many Hadoop 1.0 tasks, the introduction of YARN has expanded the capability of a Hadoop environment to move beyond the basic MapReduce process.
The basic structure of Hadoop with Apache Hadoop MapReduce v1 (MRv1) can be seen in Figure 2.1. The two core services, HDFS and MapReduce, form the basis for almost all Hadoop functionality. All other components are built around these services and must use MapReduce to run Hadoop jobs.
Figure 2.1. The Hadoop 1.0 ecosystem, MapReduce and HDFS are the core components, while other are built around the core.
Apache Hadoop provides a basis for large scale MapReduce processing and has spawned a big data ecosystem of tools, applications, and vendors. While MapReduce methods enable the users to focus on the problem at hand rather than the underlying processing mechanism, they do limit some of the problem domains that can run in the Hadoop framework.
To address these needs, the YARN (Yet Another Resource Negotiator) project was started by the core development team to give Hadoop the ability to run non-MapReduce jobs within the Hadoop framework. YARN provides a generic resource management framework for implementing distributed applications. Starting with Apache Hadoop version 2.0, MapReduce has undergone a complete overhaul and is now re-architected as an application on YARN to be called MapReduce version 2 (MRv2). YARN provides both full compatibility with existing MapReduce applications and new support for virtually any distributed application. Figure 2.2illustrates how YARN fits into the new Hadoop ecosystem.
Figure 2.2. YARN adds a more general interface to run non-MapReduce jobs within the Hadoop framework
The introduction of YARN does not change the capability of Hadoop to run MapReduce jobs. It does, however, position MapReduce as merely one of the application frameworks within Hadoop, which works the same as it did in MRv1. The new capability offered by YARN is the use of new non-MapReduce frameworks that add many new capabilities to the Hadoop ecosystem.
The MapReduce Paradigm
The MapReduce processing model consists of two separate steps. The first step is an embarrassingly parallel map phase where input data is split into discreet chunks that can be processed independently. The second and final step is a reduce phase where the output of the map phase is aggregated to produce the desired result. The simple, and fairly restricted, nature of the programming model lends itself to very efficient and extremely large-scale implementations across thousands of low cost commodity servers (or nodes).
When MapReduce is paired with a distributed file-system such as Apache Hadoop HDFS (Hadoop File System), which can provide very high aggregate I/O bandwidth across a large cluster of commodity servers, the economics of the system are extremely compelling—a key factor in the popularity of Hadoop.
One of the keys to Hadoop performance is the lack of data motion where compute tasks are moved to the servers on which the data reside and not the other way around (i.e., large data movement to compute servers is minimized or eliminated). Specifically, the MapReduce tasks can be scheduled on the same physical nodes on which data are resident in HDFS, which exposes the underlying storage layout across the cluster. This design significantly reduces the network I/O patterns and keeps most of the I/O on the local disk or on a neighboring server within the same server rack.
Apache Hadoop MapReduce
To understand the new YARN process flow, it will be helpful to review the original Apache Hadoop MapReduce design. As part of the Apache Software Foundation, Apache Hadoop MapReduce has evolved and improved as an open-source project. The project is an implementation of the MapReduce programming paradigm described above. The Apache Hadoop MapReduce project itself can be broken down into the following major facets:
• The end-user MapReduce API for programming the desired MapReduce application.
• The MapReduce framework, which is the run-time implementation of various phases such as the map phase, the sort/shuffle/merge aggregation and the reduce phase.
• The MapReduce system, which is the back-end infrastructure required to run the user’s MapReduce application, manage cluster resources, schedule thousands of concurrent jobs etc.
This separation of concerns has significant benefits, particularly for end-users where they can completely focus on their application via the API and let the combination of the MapReduce Framework and the MapReduce System deal with the complex details such as resource management, fault-tolerance, and scheduling.
The current Apache Hadoop MapReduce system is composed of the several high level elements as shown in Figure 2.3. The master process is the JobTracker, which is the clearing house for all MapReduce jobs on in the cluster. Each Node has a TaskTracker process that manages tasks on the individual node. The TaskTrakers communicate with and are controlled by the JobTracker.
Figure 2.3. Current Hadoop MapReduce Control Elements
The JobTracker is responsible for resource management (managing the worker server nodes i.e. TaskTrackers), tracking resource consumption/availability and also job life-cycle management (scheduling individual tasks of the job, tracking progress, providing fault-tolerance for tasks. etc).
The TaskTracker has simple responsibilities—launch/teardown tasks on orders from the JobTracker and provide task-status information to the JobTracker periodically.
The Apache Hadoop MapReduce framework has exhibited some growing pains. In particular, with regards to the JobTracker, several aspects including scalability, cluster utilization, capability for users to control upgrades to the stack, i.e., user agility and, support for workloads other than MapReduce itself have been identified as desirable features.
The Need for Non-MapReduce Workloads
MapReduce is great for many applications, but not everything; other programming models better serve requirements such as graph processing (e.g., Google Pregel/Apache Giraph) and iterative modeling using Message Passing Interface (MPI). As is often the case, much of the enterprise data is already available in Hadoop HDFS and having multiple paths for processing is critical and a clear necessity. Furthermore, since MapReduce is essentially batch-oriented, support for real-time and near real-time processing has become an important issue for the user base. A more robust computing environment within Hadoop enables organizations to see an increased return on the Hadoop investments by lowering operational costs for administrators, reducing the need to move data between Hadoop HDFS and other storage systems, providing other such efficiencies.
Addressing Scalability
The processing power available in data-centers continues to increase rapidly. As an example, consider the additional hardware capability offered by a commodity server over a three-year period:
• 2009 – 8 cores, 16GB of RAM, 4x1TB disk
• 2012 – 16+ cores, 72GB of RAM, 12x3TB of disk.
These new servers are often available at the same price-point as those of previous generations. In general, servers are twice as capable today as they were 2-3 years ago—on every single dimension. Apache Hadoop MapReduce is known to scale to production deployments of approximately 5000 server nodes of 2009 vintage. Thus, for the same price the number of CPU cores, amount of RAM, and local storage available to the user will put continued pressure on the scalability of new Apache Hadoop installations.
Improved Utilization
In the current system, the JobTracker views the cluster as composed of nodes (managed by individual TaskTrackers) with distinct map slots and reduce slots, which are not fungible. Utilization issues occur because maps slots might be ‘full’ while reduce slots are empty (and vice-versa). Improving this situation is necessary to ensure the entire system could be used to its maximum capacity for high utilization and applying resources when needed.
User Agility
In real-world deployments, Hadoop is very commonly offered as a shared, multi-tenant system. As a result, changes to the Hadoop software stack affect a large cross-section of, if not the entire, enterprise. Against that backdrop, users are very keen on controlling upgrades to the software stack as it has a direct impact on their applications. Thus, allowing multiple, if limited, number of versions of the MapReduce framework is critical for Hadoop.
Apache Hadoop YARN
The fundamental idea of YARN is to split up the two major responsibilities of the JobTracker, in other words resource management and job scheduling/monitoring, into separate daemons: a global ResourceManager and per-application ApplicationMaster (AM). The ResourceManager and per-node slave, the NodeManager (NM), form the new, and generic, operating system for managing applications in a distributed manner.
The ResourceManager is the ultimate authority that arbitrates resources among all the applications in the system. The per-application ApplicationMaster is, in effect, a framework specific entity and is tasked with negotiating resources from the ResourceManager and working with the NodeManager(s) to execute and monitor the component tasks.
The ResourceManager has a pluggable scheduler component, which is responsible for allocating resources to the various running applications subject to familiar constraints of capacities, queues etc. The Scheduler is a pure scheduler in the sense that it performs no monitoring or tracking of status for the application, offering no guarantees on restarting failed tasks either due to application failure or hardware failures. The scheduler performs its scheduling function based on the resource requirements of an application by using the abstract notion of a resource container, which incorporates resource dimensions such as memory, CPU, disk, network etc.
The NodeManager is the per-machine slave, which is responsible for launching the applications’ containers, monitoring their resource usage (CPU, memory, disk, network), and reporting the same to the ResourceManager.
The per-application ApplicationMaster has the responsibility of negotiating appropriate resource containers from the Scheduler, tracking their status and monitoring for progress. From the system perspective, the ApplicationMaster itself runs as a normal container. An architectural view of YARN is provided in Figure 2.4.
Figure 2.4. New Yarn Control Elements
One of the crucial implementation details for MapReduce within the new YARN system is the reuse of the existing MapReduce framework without any major surgery. This step was very important to ensure compatibility for existing MapReduce applications and users.
YARN Components
By adding new functionality, YARN brings in new components into the Apache Hadoop workflow. These components provide a finer grain of control for the end user and at the same time offer more advanced capabilities to the Hadoop ecosystem.
Resource Manager
As mentioned, the YARN ResourceManager is primarily a pure scheduler. It is strictly limited to arbitrating available resources in the system among the competing applications. It optimizes for cluster utilization (keeps all resources in use all the time) against various constraints such as capacity guarantees, fairness, and SLAs. To allow for different policy constraints the ResourceManager has a pluggable scheduler that enables different algorithms such as capacity and fair scheduling to be used as necessary.
ApplicationMaster
An important new concept in YARN is the ApplicationMaster. The ApplicationMaster is, in effect, an instance of a framework-specific library and is responsible for negotiating resources from the ResourceManager and working with the NodeManager(s) to execute and monitor the containers and their resource consumption. It has the responsibility of negotiating appropriate resource containers from the ResourceManager, tracking their status and monitoring progress.
The ApplicationMaster design enables YARN to offer the following important new features:
• Scale: The Application Master provides much of the functionality of the traditional ResourceManager so that the entire system can scale more dramatically. Simulations have shown jobs scaling to 10,000 node clusters composed of modern hardware without significant issue. As a pure scheduler the ResourceManager does not, for example, have to provide fault-tolerance for resources across the cluster. By shifting fault tolerance to the ApplicationMaster instance, control becomes local and not global. Furthermore, since there is an instance of an ApplicationMaster per application, the ApplicationMaster itself isn’t a common bottleneck in the cluster.
• Open: Moving all application framework specific code into the ApplicationMaster generalizes the system so that we can now support multiple frameworks such as MapReduce, MPI and Graph Processing.
These features were the result of some key YARN design decisions:
• Move all complexity (to the extent possible) to the ApplicationMaster while providing sufficient functionality to allow application-framework authors sufficient flexibility and power.
• Since it is essentially user-code, do not trust the ApplicationMaster(s). In other words. no ApplicationMaster is a privileged service.
• The YARN system (ResourceManager and NodeManager) has to protect itself from faulty or malicious ApplicationMaster(s) and resources granted to them at all costs.
It’s useful to remember that, in reality, every application has its own instance of an ApplicationMaster. However, it’s completely feasible to implement an ApplicationMaster to manage a set of applications (e.g., ApplicationMaster for Pig or Hive to manage a set of MapReduce jobs). Furthermore, this concept has been stretched to manage long-running services, which manage their own applications (e.g., launch HBase in YARN via a hypothetical HBaseAppMaster).
Resource Model
YARN supports a very general resource model for applications. An application (via the ApplicationMaster) can request resources with highly specific requirements such as:
• Resource-name (including hostname, rackname and possibly complex network topologies)
• Amount of Memory
• CPUs (number/type of cores)
• Eventually resources like disk/network I/O, GPUs, etc.
ResourceRequest and Containers
YARN is designed to allow individual applications (via the ApplicationMaster) to utilize cluster resources in a shared, secure and multi-tenant manner. It also remains aware of cluster topology in order to efficiently schedule and optimize data access (i.e., reduce data motion for applications to the extent possible).
In order to meet those goals, the central Scheduler (in the ResourceManager) has extensive information about an application’s resource needs, which allows it to make better scheduling decisions across all applications in the cluster. This leads us to the ResourceRequest and the resulting Container.
Essentially an application can ask for specific resource requests via the ApplicationMaster to satisfy its resource needs. The Scheduler responds to a resource request by granting a container, which satisfies the requirements laid out by the ApplicationMaster in the initial ResourceRequest.
A ResourceRequest has the following form:
<resource-name, priority, resource-requirement, number-of-containers>
These components are described as follows:
• Resource-name is either hostname, rackname or * to indicate no preference. Future plans may support even more complex topologies for virtual machines on a host, more complex networks, etc.
• Priority is intra-application priority for this request (not across multiple applications).
• Resource-requirement is required capabilities such as memory, CPU, etc. (currently YARN only supports memory and CPU).
• Number-of-containers is just a multiple of such containers.
Essentially, the Container is the resource allocation, which is the successful result of the ResourceManager granting a specific ResourceRequest. A Container grants rights to an application to use a specific amount of resources (memory, CPU etc.) on a specific host.
The ApplicationMaster has to take the Container and present it to the NodeManager managing the host, on which the container was allocated, to use the resources for launching its tasks. For security reasons, the Container allocation is verified, in the secure mode, to ensure that ApplicationMaster(s) cannot fake allocations in the cluster.
Container Specification
While a Container, as described above, is merely a right to use a specified amount of resources on a specific machine (NodeManager) in the cluster, the ApplicationMaster has to provide considerably more information to the NodeManager to actually launch the container. YARN allows applications to launch any process and, unlike existing Hadoop MapReduce, it isn’t limited to Java applications.
The YARN Container launch specification API is platform agnostic and contains:
• Command line to launch the process within the container.
• Environment variables.
• Local resources necessary on the machine prior to launch, such as jars, shared-objects, auxiliary data files etc.
• Security-related tokens.
This design allows the ApplicationMaster to work with the NodeManager to launch containers ranging from simple shell scripts to C/Java/Python processes on Unix/Windows to full-fledged virtual machines.
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