How to Install and Set Up a 3-Node Hadoop Cluster
Updated by Linode Contributed by Florent Houbart
What is Hadoop?
Hadoop is an open-source Apache project that allows creation of parallel processing applications on large data sets, distributed across networked nodes. It is composed of the Hadoop Distributed File System (HDFS™) that handles scalability and redundancy of data across nodes, and Hadoop YARN, a framework for job scheduling that executes data processing tasks on all nodes.
Before You Begin
Follow the Getting Started guide to create three (3) Linodes. They’ll be referred to throughout this guide as node-master, node1, and node2. It is recommended that you set the hostname of each Linode to match this naming convention.
Run the steps in this guide from the node-master unless otherwise specified.
Add a Private IP Address to each Linode so that your Cluster can communicate with an additional layer of security.
Follow the Securing Your Server guide to harden each of the three servers. Create a normal user for the Hadoop installation, and a user called
hadoop
for the Hadoop daemons. Do not create SSH keys forhadoop
users. SSH keys will be addressed in a later section.Install the JDK using the appropriate guide for your distribution, Debian, CentOS or Ubuntu, or install the latest JDK from Oracle.
The steps below use example IPs for each node. Adjust each example according to your configuration:
- node-master: 192.0.2.1
- node1: 192.0.2.2
- node2: 192.0.2.3
Note
This guide is written for a non-root user. Commands that require elevated privileges are prefixed withsudo
. If you’re not familiar with thesudo
command, see the Users and Groups guide. All commands in this guide are run with the hadoop user if not specified otherwise.
Architecture of a Hadoop Cluster
Before configuring the master and worker nodes, it’s important to understand the different components of a Hadoop cluster.
A master node maintains knowledge about the distributed file system, like the inode
table on an ext3
filesystem, and schedules resources allocation. node-master will handle this role in this guide, and host two daemons:
- The NameNode manages the distributed file system and knows where stored data blocks inside the cluster are.
- The ResourceManager manages the YARN jobs and takes care of scheduling and executing processes on worker nodes.
Worker nodes store the actual data and provide processing power to run the jobs. They’ll be node1 and node2, and will host two daemons:
- The DataNode manages the physical data stored on the node; it’s named,
NameNode
. - The NodeManager manages execution of tasks on the node.
Configure the System
Create Host File on Each Node
For each node to communicate with each other by name, edit the /etc/hosts
file to add the private IP addresses of the three servers. Don’t forget to replace the sample IP with your IP:
- /etc/hosts
-
1 2 3
192.0.2.1 node-master 192.0.2.2 node1 192.0.2.3 node2
Distribute Authentication Key-pairs for the Hadoop User
The master node will use an SSH connection to connect to other nodes with key-pair authentication. This will allow the master node to actively manage the cluster.
Login to node-master as the
hadoop
user, and generate an SSH key:ssh-keygen -b 4096
When generating this key, leave the password field blank so your Hadoop user can communicate unprompted.
View the node-master public key and copy it to your clipboard to use with each of your worker nodes.
less /home/hadoop/.ssh/id_rsa.pub
In each Linode, make a new file
master.pub
in the/home/hadoop/.ssh
directory. Paste your public key into this file and save your changes.Copy your key file into the authorized key store.
cat ~/.ssh/master.pub >> ~/.ssh/authorized_keys
Download and Unpack Hadoop Binaries
Log into node-master as the hadoop
user, download the Hadoop tarball from Hadoop project page, and unzip it:
cd
wget http://apache.cs.utah.edu/hadoop/common/current/hadoop-3.1.2.tar.gz
tar -xzf hadoop-3.1.2.tar.gz
mv hadoop-3.1.2 hadoop
Set Environment Variables
Add Hadoop binaries to your PATH. Edit
/home/hadoop/.profile
and add the following line:- /home/hadoop/.profile
-
1
PATH=/home/hadoop/hadoop/bin:/home/hadoop/hadoop/sbin:$PATH
Add Hadoop to your PATH for the shell. Edit
.bashrc
and add the following lines:- /home/hadoop/.bashrc
-
1 2
export HADOOP_HOME=/home/hadoop/hadoop export PATH=${PATH}:${HADOOP_HOME}/bin:${HADOOP_HOME}/sbin
Configure the Master Node
Configuration will be performed on node-master and replicated to other nodes.
Set JAVA_HOME
Find your Java installation path. This is known as
JAVA_HOME
. If you installed open-jdk from your package manager, you can find the path with the command:update-alternatives --display java
Take the value of the current link and remove the trailing
/bin/java
. For example on Debian, the link is/usr/lib/jvm/java-8-openjdk-amd64/jre/bin/java
, soJAVA_HOME
should be/usr/lib/jvm/java-8-openjdk-amd64/jre
.If you installed java from Oracle,
JAVA_HOME
is the path where you unzipped the java archive.Edit
~/hadoop/etc/hadoop/hadoop-env.sh
and replace this line:export JAVA_HOME=${JAVA_HOME}
with your actual java installation path. On a Debian 9 Linode with open-jdk-8 this will be as follows:
- ~/hadoop/etc/hadoop/hadoop-env.sh
-
1
export JAVA_HOME=/usr/lib/jvm/java-8-openjdk-amd64/jre
Set NameNode Location
Update your ~/hadoop/etc/hadoop/core-site.xml
file to set the NameNode location to node-master on port 9000
:
- ~/hadoop/etc/hadoop/core-site.xml
-
1 2 3 4 5 6 7 8
<?xml version="1.0" encoding="UTF-8"?> <?xml-stylesheet type="text/xsl" href="configuration.xsl"?> <configuration> <property> <name>fs.default.name</name> <value>hdfs://node-master:9000</value> </property> </configuration>
Set path for HDFS
Edit hdfs-site.conf
to resemble the following configuration:
- ~/hadoop/etc/hadoop/hdfs-site.xml
-
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16
<configuration> <property> <name>dfs.namenode.name.dir</name> <value>/home/hadoop/data/nameNode</value> </property> <property> <name>dfs.datanode.data.dir</name> <value>/home/hadoop/data/dataNode</value> </property> <property> <name>dfs.replication</name> <value>1</value> </property> </configuration>
The last property, dfs.replication
, indicates how many times data is replicated in the cluster. You can set 2
to have all the data duplicated on the two nodes. Don’t enter a value higher than the actual number of worker nodes.
Set YARN as Job Scheduler
Edit the mapred-site.xml
file, setting YARN as the default framework for MapReduce operations:
- ~/hadoop/etc/hadoop/mapred-site.xml
-
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18
<configuration> <property> <name>mapreduce.framework.name</name> <value>yarn</value> </property> <property> <name>yarn.app.mapreduce.am.env</name> <value>HADOOP_MAPRED_HOME=$HADOOP_HOME</value> </property> <property> <name>mapreduce.map.env</name> <value>HADOOP_MAPRED_HOME=$HADOOP_HOME</value> </property> <property> <name>mapreduce.reduce.env</name> <value>HADOOP_MAPRED_HOME=$HADOOP_HOME</value> </property> </configuration>
Configure YARN
Edit yarn-site.xml
, which contains the configuration options for YARN. In the value
field for the yarn.resourcemanager.hostname
, replace 203.0.113.0
with the public IP address of node-master:
- ~/hadoop/etc/hadoop/yarn-site.xml
-
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16
<configuration> <property> <name>yarn.acl.enable</name> <value>0</value> </property> <property> <name>yarn.resourcemanager.hostname</name> <value>203.0.113.0</value> </property> <property> <name>yarn.nodemanager.aux-services</name> <value>mapreduce_shuffle</value> </property> </configuration>
Configure Workers
The file workers
is used by startup scripts to start required daemons on all nodes. Edit ~/hadoop/etc/hadoop/workers
to include both of the nodes:
- ~/hadoop/etc/hadoop/workers
-
1 2
node1 node2
Configure Memory Allocation
Memory allocation can be tricky on low RAM nodes because default values are not suitable for nodes with less than 8GB of RAM. This section will highlight how memory allocation works for MapReduce jobs, and provide a sample configuration for 2GB RAM nodes.
The Memory Allocation Properties
A YARN job is executed with two kind of resources:
- An Application Master (AM) is responsible for monitoring the application and coordinating distributed executors in the cluster.
- Some executors that are created by the AM actually run the job. For a MapReduce jobs, they’ll perform map or reduce operation, in parallel.
Both are run in containers on worker nodes. Each worker node runs a NodeManager daemon that’s responsible for container creation on the node. The whole cluster is managed by a ResourceManager that schedules container allocation on all the worker-nodes, depending on capacity requirements and current charge.
Four types of resource allocations need to be configured properly for the cluster to work. These are:
How much memory can be allocated for YARN containers on a single node. This limit should be higher than all the others; otherwise, container allocation will be rejected and applications will fail. However, it should not be the entire amount of RAM on the node.
This value is configured in
yarn-site.xml
withyarn.nodemanager.resource.memory-mb
.How much memory a single container can consume and the minimum memory allocation allowed. A container will never be bigger than the maximum, or else allocation will fail and will always be allocated as a multiple of the minimum amount of RAM.
Those values are configured in
yarn-site.xml
withyarn.scheduler.maximum-allocation-mb
andyarn.scheduler.minimum-allocation-mb
.How much memory will be allocated to the ApplicationMaster. This is a constant value that should fit in the container maximum size.
This is configured in
mapred-site.xml
withyarn.app.mapreduce.am.resource.mb
.How much memory will be allocated to each map or reduce operation. This should be less than the maximum size.
This is configured in
mapred-site.xml
with propertiesmapreduce.map.memory.mb
andmapreduce.reduce.memory.mb
.
The relationship between all those properties can be seen in the following figure:
Sample Configuration for 2GB Nodes
For 2GB nodes, a working configuration may be:
Property | Value |
---|---|
yarn.nodemanager.resource.memory-mb | 1536 |
yarn.scheduler.maximum-allocation-mb | 1536 |
yarn.scheduler.minimum-allocation-mb | 128 |
yarn.app.mapreduce.am.resource.mb | 512 |
mapreduce.map.memory.mb | 256 |
mapreduce.reduce.memory.mb | 256 |
Edit
/home/hadoop/hadoop/etc/hadoop/yarn-site.xml
and add the following lines:- ~/hadoop/etc/hadoop/yarn-site.xml
-
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19
<property> <name>yarn.nodemanager.resource.memory-mb</name> <value>1536</value> </property> <property> <name>yarn.scheduler.maximum-allocation-mb</name> <value>1536</value> </property> <property> <name>yarn.scheduler.minimum-allocation-mb</name> <value>128</value> </property> <property> <name>yarn.nodemanager.vmem-check-enabled</name> <value>false</value> </property>
The last property disables virtual-memory checking which can prevent containers from being allocated properly with JDK8 if enabled.
Edit
/home/hadoop/hadoop/etc/hadoop/mapred-site.xml
and add the following lines:- ~/hadoop/etc/hadoop/mapred-site.xml
-
1 2 3 4 5 6 7 8 9 10 11 12 13 14
<property> <name>yarn.app.mapreduce.am.resource.mb</name> <value>512</value> </property> <property> <name>mapreduce.map.memory.mb</name> <value>256</value> </property> <property> <name>mapreduce.reduce.memory.mb</name> <value>256</value> </property>
Duplicate Config Files on Each Node
Copy the Hadoop binaries to worker nodes:
cd /home/hadoop/ scp hadoop-*.tar.gz node1:/home/hadoop scp hadoop-*.tar.gz node2:/home/hadoop
Connect to node1 via SSH. A password isn’t required, thanks to the SSH keys copied above:
ssh node1
Unzip the binaries, rename the directory, and exit node1 to get back on the node-master:
tar -xzf hadoop-3.1.2.tar.gz mv hadoop-3.1.2 hadoop exit
Repeat steps 2 and 3 for node2.
Copy the Hadoop configuration files to the worker nodes:
for node in node1 node2; do scp ~/hadoop/etc/hadoop/* $node:/home/hadoop/hadoop/etc/hadoop/; done
Format HDFS
HDFS needs to be formatted like any classical file system. On node-master, run the following command:
hdfs namenode -format
Your Hadoop installation is now configured and ready to run.
Run and monitor HDFS
This section will walk through starting HDFS on NameNode and DataNodes, and monitoring that everything is properly working and interacting with HDFS data.
Start and Stop HDFS
Start the HDFS by running the following script from node-master:
start-dfs.sh
This will start NameNode and SecondaryNameNode on node-master, and DataNode on node1 and node2, according to the configuration in the
workers
config file.Check that every process is running with the
jps
command on each node. On node-master, you should see the following (the PID number will be different):21922 Jps 21603 NameNode 21787 SecondaryNameNode
And on node1 and node2 you should see the following:
19728 DataNode 19819 Jps
To stop HDFS on master and worker nodes, run the following command from node-master:
stop-dfs.sh
Monitor your HDFS Cluster
You can get useful information about running your HDFS cluster with the
hdfs dfsadmin
command. Try for example:hdfs dfsadmin -report
This will print information (e.g., capacity and usage) for all running DataNodes. To get the description of all available commands, type:
hdfs dfsadmin -help
You can also automatically use the friendlier web user interface. Point your browser to http://node-master-IP:9870, where node-master-IP is the IP address of your node-master, and you’ll get a user-friendly monitoring console.
Put and Get Data to HDFS
Writing and reading to HDFS is done with command hdfs dfs
. First, manually create your home directory. All other commands will use a path relative to this default home directory:
hdfs dfs -mkdir -p /user/hadoop
Let’s use some textbooks from the Gutenberg project as an example.
Create a books directory in HDFS. The following command will create it in the home directory,
/user/hadoop/books
:hdfs dfs -mkdir books
Grab a few books from the Gutenberg project:
cd /home/hadoop wget -O alice.txt https://www.gutenberg.org/files/11/11-0.txt wget -O holmes.txt https://www.gutenberg.org/files/1661/1661-0.txt wget -O frankenstein.txt https://www.gutenberg.org/files/84/84-0.txt
Put the three books through HDFS, in the
books
directory:hdfs dfs -put alice.txt holmes.txt frankenstein.txt books
List the contents of the
book
directory:hdfs dfs -ls books
Move one of the books to the local filesystem:
hdfs dfs -get books/alice.txt
You can also directly print the books from HDFS:
hdfs dfs -cat books/alice.txt
There are many commands to manage your HDFS. For a complete list, you can look at the Apache HDFS shell documentation, or print help with:
hdfs dfs -help
Run YARN
HDFS is a distributed storage system, and doesn’t provide any services for running and scheduling tasks in the cluster. This is the role of the YARN framework. The following section is about starting, monitoring, and submitting jobs to YARN.
Start and Stop YARN
Start YARN with the script:
start-yarn.sh
Check that everything is running with the
jps
command. In addition to the previous HDFS daemon, you should see a ResourceManager on node-master, and a NodeManager on node1 and node2.To stop YARN, run the following command on node-master:
stop-yarn.sh
Monitor YARN
The
yarn
command provides utilities to manage your YARN cluster. You can also print a report of running nodes with the command:yarn node -list
Similarly, you can get a list of running applications with command:
yarn application -list
To get all available parameters of the
yarn
command, see Apache YARN documentation.As with HDFS, YARN provides a friendlier web UI, started by default on port
8088
of the Resource Manager. Point your browser to http://node-master-IP:8088, where node-master-IP is the IP address of your node-master, and browse the UI:
Submit MapReduce Jobs to YARN
YARN jobs are packaged into jar
files and submitted to YARN for execution with the command yarn jar
. The Hadoop installation package provides sample applications that can be run to test your cluster. You’ll use them to run a word count on the three books previously uploaded to HDFS.
Submit a job with the sample
jar
to YARN. On node-master, run:yarn jar ~/hadoop/share/hadoop/mapreduce/hadoop-mapreduce-examples-3.1.2.jar wordcount "books/*" output
The last argument is where the output of the job will be saved - in HDFS.
After the job is finished, you can get the result by querying HDFS with
hdfs dfs -ls output
. In case of a success, the output will resemble:Found 2 items -rw-r--r-- 2 hadoop supergroup 0 2019-05-31 17:21 output/_SUCCESS -rw-r--r-- 2 hadoop supergroup 789726 2019-05-31 17:21 output/part-r-00000
Print the result with:
hdfs dfs -cat output/part-r-00000 | less
Next Steps
Now that you have a YARN cluster up and running, you can:
- Learn how to code your own YARN jobs with Apache documentation.
- Install Spark on top on your YARN cluster with Linode Spark guide.
More Information
You may wish to consult the following resources for additional information on this topic. While these are provided in the hope that they will be useful, please note that we cannot vouch for the accuracy or timeliness of externally hosted materials.
- YARN Command Reference
- HDFS Shell Documentation
- core-site.xml properties
- hdfs-site.xml properties
- mapred-site.xml properties
- core-site.xml properties
Join our Community
Find answers, ask questions, and help others.
This guide is published under a CC BY-ND 4.0 license.