hadoop processing #88
Description
This is an eight unit big data cluster that includes Hadoop 2.7 from Apache Bigtop. Use it to store data in HDFS and run MapReduce analysis jobs. It will run on 5 machines in your cloud.
Overview
The Apache Hadoop software library is a framework that allows for the distributed processing of large data sets across clusters of computers using a simple programming model.
Hadoop is designed to scale from a few servers to thousands of machines, each offering local computation and storage. Rather than rely on hardware to deliver high-availability, Hadoop can detect and handle failures at the application layer. This provides a highly-available service on top of a cluster of machines, each of which may be prone to failure.
This bundle provides a complete deployment of the core Hadoop components of the Apache Bigtop platform to perform distributed data processing at scale. Ganglia and rsyslog applications are also provided to monitor cluster health and syslog activity.
Bundle Composition
The applications that comprise this bundle are spread across 5 machines as follows:
- NameNode v2.7.3
- ResourceManager v2.7.3
- Colocated on the NameNode unit
- Slave (DataNode and NodeManager) v2.7.3
- 3 separate units
- Client (Hadoop endpoint)
- Plugin (Facilitates communication with the Hadoop cluster)
- Colocated on the Client unit
- Ganglia (Web interface for monitoring cluster metrics)
- Colocated on the Client unit
- Rsyslog (Aggregate cluster syslog events in a single location)
- Colocated on the Client unit
Deploying this bundle results in a fully configured Apache Bigtop cluster on any supported cloud, which can be scaled to meet workload demands.
Deploying
This charm requires Juju 2.0 or greater. If Juju is not yet set up, please follow the getting-started instructions prior to deploying this bundle.
Note: This bundle requires hardware resources that may exceed limits of Free-tier or Trial accounts on some clouds. To deploy to these environments, modify a local copy of bundle.yaml with
slave: num_units: 1
andmachines: 'X': constraints: mem=3G
as needed to satisfy account limits.
Deploy this bundle from the Juju charm store with the juju deploy
command:
juju deploy hadoop-processing
Alternatively, deploy a locally modified bundle.yaml
with:
juju deploy /path/to/bundle.yaml
The charms in this bundle can also be built from their source layers in the Bigtop charm repository. See the Bigtop charm README for instructions on building and deploying these charms locally.
Network-Restricted Environments
Charms can be deployed in environments with limited network access. To deploy in this environment, configure a Juju model with appropriate proxy and/or mirror options. See Configuring Models for more information.
Verifying
Status
The applications that make up this bundle provide status messages to indicate when they are ready:
juju status
This is particularly useful when combined with watch
to track the on-going
progress of the deployment:
watch -n 2 juju status
The message for each unit will provide information about that unit's state. Once they all indicate that they are ready, perform application smoke tests to verify that the bundle is working as expected.
Smoke Test
The charms for each core component (namenode, resourcemanager, and slave)
provide a smoke-test
action that can be used to verify the application is
functioning as expected. Note that the 'slave' component runs extensive
tests provided by Apache Bigtop and may take up to 30 minutes to complete.
Run the smoke-test actions as follows:
juju run-action namenode/0 smoke-test
juju run-action resourcemanager/0 smoke-test
juju run-action slave/0 smoke-test
Watch the progress of the smoke test actions with:
watch -n 2 juju show-action-status
Eventually, all of the actions should settle to status: completed
. If
any report status: failed
, that application is not working as expected. Get
more information about a specific smoke test with:
juju show-action-output <action-id>
Utilities
Applications in this bundle include Hadoop command line and web utilities that can be used to verify information about the cluster.
From the command line, show the HDFS dfsadmin report and view the current list of YARN NodeManager units with the following:
juju run --application namenode "su hdfs -c 'hdfs dfsadmin -report'"
juju run --application resourcemanager "su yarn -c 'yarn node -list'"
To access the HDFS web console, find the Public address
of the namenode
application and expose it:
juju status namenode
juju expose namenode
The web interface will be available at the following URL:
http://NAMENODE_PUBLIC_IP:50070
Similarly, to access the Resource Manager web consoles, find the
Public address
of the resourcemanager application and expose it:
juju status resourcemanager
juju expose resourcemanager
The YARN and Job History web interfaces will be available at the following URLs:
http://RESOURCEMANAGER_PUBLIC_IP:8088
http://RESOURCEMANAGER_PUBLIC_IP:19888
Monitoring
This bundle includes Ganglia for system-level monitoring of the namenode,
resourcemanager, slave, and client units. Metrics are sent to a centralized
ganglia unit for easy viewing in a browser. To view the ganglia web interface,
find the Public address
of the Ganglia application and expose it:
juju status ganglia
juju expose ganglia
The web interface will be available at:
http://GANGLIA_PUBLIC_IP/ganglia
Logging
This bundle includes rsyslog to collect syslog data from the namenode, resourcemanager, slave, and client units. These logs are sent to a centralized rsyslog unit for easy syslog analysis of the units that make up the Hadoop cluster. One method of viewing this log data is to simply cat syslog from the rsyslog unit:
juju run --unit rsyslog/0 'sudo cat /var/log/syslog'
Logs may also be forwarded to an external rsyslog processing service. See the Forwarding logs to a system outside of the Juju environment section of the rsyslog README for more information.
Benchmarking
The resourcemanager
charm in this bundle provide several benchmarks to gauge
the performance of the Hadoop cluster. Each benchmark is an action that can be
run with juju run-action
:
$ juju actions resourcemanager
ACTION DESCRIPTION
mrbench Mapreduce benchmark for small jobs
nnbench Load test the NameNode hardware and configuration
smoke-test Run an Apache Bigtop smoke test.
teragen Generate data with teragen
terasort Runs teragen to generate sample data, and then runs terasort to sort that data
testdfsio DFS IO Testing
$ juju run-action resourcemanager/0 nnbench
Action queued with id: 55887b40-116c-4020-8b35-1e28a54cc622
$ juju show-action-output 55887b40-116c-4020-8b35-1e28a54cc622
results:
meta:
composite:
direction: asc
units: secs
value: "128"
start: 2016-02-04T14:55:39Z
stop: 2016-02-04T14:57:47Z
results:
raw: '{"BAD_ID": "0", "FILE: Number of read operations": "0", "Reduce input groups":
"8", "Reduce input records": "95", "Map output bytes": "1823", "Map input records":
"12", "Combine input records": "0", "HDFS: Number of bytes read": "18635", "FILE:
Number of bytes written": "32999982", "HDFS: Number of write operations": "330",
"Combine output records": "0", "Total committed heap usage (bytes)": "3144749056",
"Bytes Written": "164", "WRONG_LENGTH": "0", "Failed Shuffles": "0", "FILE:
Number of bytes read": "27879457", "WRONG_MAP": "0", "Spilled Records": "190",
"Merged Map outputs": "72", "HDFS: Number of large read operations": "0", "Reduce
shuffle bytes": "2445", "FILE: Number of large read operations": "0", "Map output
materialized bytes": "2445", "IO_ERROR": "0", "CONNECTION": "0", "HDFS: Number
of read operations": "567", "Map output records": "95", "Reduce output records":
"8", "WRONG_REDUCE": "0", "HDFS: Number of bytes written": "27412", "GC time
elapsed (ms)": "603", "Input split bytes": "1610", "Shuffled Maps ": "72", "FILE:
Number of write operations": "0", "Bytes Read": "1490"}'
status: completed
timing:
completed: 2016-02-04 14:57:48 +0000 UTC
enqueued: 2016-02-04 14:55:14 +0000 UTC
started: 2016-02-04 14:55:27 +0000 UTC
Scaling
By default, three slave units and one unit of each of the other components are deployed with this bundle. To scale the cluster compute and storage capabilities, simply add more slave units. To add one unit:
juju add-unit slave
Multiple units may be added at once. For example, add four more slave units:
juju add-unit -n4 slave
Issues
Apache Bigtop tracks issues using JIRA (Apache account required). File an issue for this bundle at:
https://issues.apache.org/jira/secure/CreateIssue!default.jspa
Ensure Bigtop
is selected as the project. Typically, bundle issues are filed
in the deployment
component with the latest stable release selected as the
affected version. Any uncertain fields may be left blank.