7

I am new to Hadoop ecosystem.

I recently tried Hadoop (2.7.1) on a single-node Cluster without any problems and decided to move on to a Multi-node cluster having 1 namenode and 2 datanodes.

However I am facing a weird issue. Whatever Jobs that I try to run, are stuck with the following message:

on the web interface:

YarnApplicationState: ACCEPTED: waiting for AM container to be allocated, launched and register

and in the cli:

16/01/05 17:52:53 INFO mapreduce.Job: Running job: job_1451083949804_0001

They don't even start and at this point I am not sure what changes I need to make in order to make it work.

Here's what I have tried to resolve:

  1. disabling firewall on all nodes
  2. setting lower resource limits
  3. configuring under different machines, routers and distros

I would really appreciate any help (even a minute hint) in correct direction.

I have followed these instructions (configuration):

6

I finally got this solved. Posting detailed steps for future reference. (only for test environment)

Hadoop (2.7.1) Multi-Node cluster configuration

  1. Make sure that you have a reliable network without host isolation. Static IP assignment is preferable or at-least have extremely long DHCP lease. Additionally all nodes (Namenode/master & Datanodes/slaves) should have a common user account with same password; in case you don't, make such user account on all nodes. Having same username and password on all nodes makes things a bit less complicated.
  2. [on all machines] First configure all nodes for single-node cluster. You can use my script that I have posted over here.
  3. execute these commands in a new terminal

    [on all machines]

    stop-dfs.sh;stop-yarn.sh;jps
    rm -rf /tmp/hadoop-$USER
    

    [on Namenode/master only]

    rm -rf ~/hadoop_store/hdfs/datanode
    

    [on Datanodes/slaves only]

    rm -rf ~/hadoop_store/hdfs/namenode
    
  4. [on all machines] Add IP addresses and corresponding Host names for all nodes in the cluster.

    sudo nano /etc/hosts
    

    hosts

    xxx.xxx.xxx.xxx master
    xxx.xxx.xxx.xxy slave1
    xxx.xxx.xxx.xxz slave2
    # Additionally you may need to remove lines like "xxx.xxx.xxx.xxx localhost", "xxx.xxx.xxx.xxy localhost", "xxx.xxx.xxx.xxz localhost" etc if they exist.
    # However it's okay keep lines like "127.0.0.1 localhost" and others.
    
  5. [on all machines] Configure iptables

    Allow default or custom ports that you plan to use for various Hadoop daemons through the firewall

    OR

    much easier, disable iptables

    • on RedHat like distros (Fedora, CentOS)

      sudo systemctl disable firewalld
      sudo systemctl stop firewalld
      
    • on Debian like distros (Ubuntu)

      sudo ufw disable
      
  6. [on Namenode/master only] Gain ssh access from Namenode (master) to all Datnodes (slaves).

    ssh-copy-id -i ~/.ssh/id_rsa.pub $USER@slave1
    ssh-copy-id -i ~/.ssh/id_rsa.pub $USER@slave2
    

    confirm things by running ping slave1, ssh slave1, ping slave2, ssh slave2 etc. You should have a proper response. (Remember to exit each of your ssh sessions by typing exit or closing the terminal. To be on the safer side I also made sure that all nodes were able to access each other and not just the Namenode/master.)

  7. [on all machines] edit core-site.xml file

    nano /usr/local/hadoop/etc/hadoop/core-site.xml
    

    core-site.xml

    <configuration>
        <property>
            <name>fs.defaultFS</name>
            <value>master:9000</value>
            <description>NameNode URI</description>
        </property>
    </configuration>
    
  8. [on all machines] edit yarn-site.xml file

    nano /usr/local/hadoop/etc/hadoop/yarn-site.xml
    

    yarn-site.xml

    <configuration>
        <property>
            <name>yarn.resourcemanager.hostname</name>
            <value>master</value>
            <description>The hostname of the RM.</description>
        </property>
        <property>
             <name>yarn.nodemanager.aux-services</name>
             <value>mapreduce_shuffle</value>
        </property>
        <property>
             <name>yarn.nodemanager.aux-services.mapreduce.shuffle.class</name>
             <value>org.apache.hadoop.mapred.ShuffleHandler</value>
        </property>
    </configuration>
    
  9. [on all machines] modify slaves file, remove the text "localhost" and add slave hostnames

    nano /usr/local/hadoop/etc/hadoop/slaves
    

    slaves

    slave1
    slave2
    

    (I guess having this only on Namenode/master will also work but I did this on all machines anyway. Also note that in this configuration master behaves only as resource manger, this is how I intent it to be.)

  10. [on all machines] modify hdfs-site.xml file to change the value for property dfs.replication to something > 1 (at-least to the number of slaves in the cluster; here I have two slaves so I would set it to 2)
  11. [on Namenode/master only] (re)format the HDFS through namenode

    hdfs namenode -format
    
  12. [optional]
    • remove dfs.datanode.data.dir property from master's hdfs-site.xml file.
    • remove dfs.namenode.name.dir property from all slave's hdfs-site.xml file.

TESTING (execute only on Namenode/master)

start-dfs.sh;start-yarn.sh

echo "hello world hello Hello" > ~/Downloads/test.txt

hadoop fs -mkdir /input

hadoop fs -put ~/Downloads/test.txt /input

hadoop jar /usr/local/hadoop/share/hadoop/mapreduce/hadoop-mapreduce-examples-*.jar wordcount /input /output

wait for a few seconds and the mapper and reducer should begin.


These links helped me with the issue:

0

I met the same problem when I ran

"hadoop jar hadoop-mapreduce-examples-2.6.4.jar wordcount /calculateCount/ /output"

this command stopped there,

I tracked the job, and find "there are 15 missing blocks, and they are all corrupted"

then I did the following: 1) ran "hdfs fsck / " 2) ran "hdfs fsck / -delete " 3) added "-A INPUT -p tcp -j ACCEPT" to /etc/sysconfig/iptables on the two datanodes 4) ran "stop-all.sh and start-all.sh"

everything goes well

I think the firewall is the key point.

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.