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Fork of Cloudera's scripts for running hadoop AMIs on the amazon cloud.
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Hadoop EC2 Control Scripts ========================== You can find the latest version of this documentation at: http://www.cloudera.com/hadoop-ec2 Getting Started =============== First, unpack the scripts on your system. For convenience, you may like to put the top-level directory on your path. You'll also need python (version 2.5 or newer) and the boto and simplejson libraries. After you download boto and simplejson, you can install each in turn by running the following in the directory where you unpacked the distribution: % sudo python setup.py install Alternatively, you might like to use the python-boto and python-simplejson RPM and Debian packages. You need to tell the scripts your AWS credentials. The simplest way to do this is to set the environment variables (but see http://code.google.com/p/boto/wiki/BotoConfig for other options): * AWS_ACCESS_KEY_ID - Your AWS Access Key ID * AWS_SECRET_ACCESS_KEY - Your AWS Secret Access Key To configure the scripts, create a directory called .hadoop-ec2 (note the leading ".") in your home directory. In it, create a file called ec2-clusters.cfg with a section for each cluster you want to control. e.g.: [my-hadoop-cluster] ami=ami-6159bf08 instance_type=c1.medium key_name=tom availability_zone=us-east-1c private_key=PATH_TO_PRIVATE_KEY ssh_options=-i %(private_key)s -o StrictHostKeyChecking=no The AMI chosen here is one with a Fedora OS. You may change this to be one of the following: AMI (bucket/name) ID cloudera-ec2-hadoop-images/cloudera-hadoop-fedora-20090623-i386 ami-6159bf08 cloudera-ec2-hadoop-images/cloudera-hadoop-fedora-20090623-x86_64 ami-2359bf4a cloudera-ec2-hadoop-images/cloudera-hadoop-ubuntu-20090623-i386 ami-ed59bf84 cloudera-ec2-hadoop-images/cloudera-hadoop-ubuntu-20090623-x86_64 ami-8759bfee The architecture must be compatible with the instance type. For m1.small and c1.medium instances use the i386 AMIs, while for m1.large, m1.xlarge, and c1.xlarge instances use the x86_64 AMIs. One of the high CPU instances (c1.medium or c1.xlarge) is recommended. Then you can run the hadoop-ec2 script. It will display usage instructions when invoked without arguments. You can test that it can connect to AWS by typing: % hadoop-ec2 list LAUNCHING A CLUSTER =================== To launch a cluster called "my-hadoop-cluster" with with 10 worker (slave) nodes type: % hadoop-ec2 launch-cluster my-hadoop-cluster 10 This will boot the master node and 10 worker nodes. When the nodes have started and the Hadoop cluster has come up, the console will display a message like Browse the cluster at http://ec2-xxx-xxx-xxx-xxx.compute-1.amazonaws.com/ You can access Hadoop's web UI by visiting this URL. By default, port 80 is opened for access from your client machine. You may change the firewall settings (to allow access from a network, rather than just a single machine, for example) by using the Amazon EC2 command line tools, or by using a tool like Elastic Fox. The security group to change is the one named <cluster-name>-master. For security reasons, traffic from the network your client is running on is proxied through the master node of the cluster using an SSH tunnel (a SOCKS proxy on port 6666). To set up the proxy run the following command: % hadoop-ec2 proxy my-hadoop-cluster Web browsers need to be configured to use this proxy too, so you can view pages served by worker nodes in the cluster. The most convenient way to do this is to use a proxy auto-config (PAC) file, such as this one: http://cloudera-public.s3.amazonaws.com/ec2/proxy.pac If you are using Firefox, then you may find FoxyProxy useful for managing PAC files. (If you use FoxyProxy, then you need to get it to use the proxy for DNS lookups. To do this, go to Tools -> FoxyProxy -> Options, and then under "Miscellaneous" in the bottom left, choose "Use SOCKS proxy for DNS lookups".) PERSISTENT CLUSTERS =================== Hadoop clusters running on EC2 that use local EC2 storage (the default) will not retain data once the cluster has been terminated. It is possible to use EBS for persistent data, which allows a cluster to be shut down while it is not being used. Note: EBS support is a Beta feature. First create a new section called "my-ebs-cluster" in the .hadoop-ec2/ec2-clusters.cfg file. Now we need to create storage for the new cluster. Create a temporary EBS volume of size 100GiB, format it, and save it as a snapshot in S3. This way, we only have to do the formatting once. % hadoop-ec2 create-formatted-snapshot my-ebs-cluster 100 We create storage for a single master and for two slaves. The volumes to create are described in a JSON spec file, which references the snapshot we just created. Here is the contents of a JSON file, called my-ebs-cluster-storage-spec.json: { "master": [ { "device": "/dev/sdj", "mount_point": "/ebs1", "size_gb": "100", "snapshot_id": "snap-268e704f" }, { "device": "/dev/sdk", "mount_point": "/ebs2", "size_gb": "100", "snapshot_id": "snap-268e704f" } ], "slave": [ { "device": "/dev/sdj", "mount_point": "/ebs1", "size_gb": "100", "snapshot_id": "snap-268e704f" }, { "device": "/dev/sdk", "mount_point": "/ebs2", "size_gb": "100", "snapshot_id": "snap-268e704f" } ] } Each role (here "master" and "slave") is the key to an array of volume specifications. In this example, the "slave" role has two devices ("/dev/sdj" and "/dev/sdk") with different mount points, sizes, and generated from an EBS snapshot. The snapshot is the formatted snapshot created earlier, so that the volumes we create are pre-formatted. The size of the drives must match the size of the snapshot created earlier. Let's create actual volumes using this file. % hadoop-ec2 create-storage my-ebs-cluster master 1 \ my-ebs-cluster-storage-spec.json % hadoop-ec2 create-storage my-ebs-cluster slave 2 \ my-ebs-cluster-storage-spec.json Now let's start the cluster with 2 slave nodes: % hadoop-ec2 launch-cluster my-ebs-cluster 2 Login and run a job which creates some output. % hadoop-ec2 login my-ebs-cluster # hadoop fs -mkdir input # hadoop fs -put /etc/hadoop/conf/*.xml input # hadoop jar /usr/lib/hadoop/hadoop-*-examples.jar grep input output \ 'dfs[a-z.]+' Look at the output: # hadoop fs -cat output/part-00000 | head Now let's shutdown the cluster. % hadoop-ec2 terminate-cluster my-ebs-cluster A little while later we restart the cluster and login. % hadoop-ec2 launch-cluster my-ebs-cluster 2 % hadoop-ec2 login my-ebs-cluster The output from the job we ran before should still be there: # hadoop fs -cat output/part-00000 | head RUNNING JOBS ============ When you launched the cluster, a hadoop-site.xml file was created in the directory ~/.hadoop-ec2/<cluster-name>. You can use this to connect to the cluster by setting the HADOOP_CONF_DIR enviroment variable (it is also possible to set the configuration file to use by passing it as a -conf option to Hadoop Tools): % export HADOOP_CONF_DIR=~/.hadoop-ec2/my-hadoop-cluster Let's try browsing HDFS: % hadoop fs -conf -ls / Running a job is straightforward: % hadoop fs -mkdir input # create an input directory % hadoop fs -conf -put $HADOOP_HOME/LICENSE.txt input # copy a file there % hadoop jar $HADOOP_HOME/hadoop-*-examples.jar wordcount input output % hadoop fs -cat output/part-00000 | head Of course, these examples assume that you have installed Hadoop on your local machine. It is also possible to launch jobs from within the cluster. First log into the master node: % hadoop-ec2 login my-hadoop-cluster Then run a job as before: # hadoop fs -mkdir input # hadoop fs -put /etc/hadoop/conf/*.xml input # hadoop jar /usr/lib/hadoop/hadoop-*-examples.jar grep input output 'dfs[a-z.]+' # hadoop fs -cat output/part-00000 | head TERMINATING A CLUSTER ===================== When you've finished with your cluster you can stop it with the following command. NOTE: ALL DATA WILL BE LOST UNLESS YOU ARE USING EBS! % hadoop-ec2 terminate-cluster my-hadoop-cluster You can then delete the EC2 security groups with: % hadoop-ec2 delete-cluster my-hadoop-cluster AUTOMATIC CLUSTER SHUTDOWN ========================== You may use the --auto-shutdown option to automatically terminate a cluster a given time (specified in minutes) after launch. This is useful for short-lived clusters where the jobs complete in a known amount of time. If you want to cancel the automatic shutdown, then run % hadoop-ec2 exec my-hadoop-cluster shutdown -c % hadoop-ec2 update-slaves-file my-hadoop-cluster % hadoop-ec2 exec my-hadoop-cluster /usr/lib/hadoop/bin/slaves.sh shutdown -c TESTING PIG =========== The scripts install Pig on the master node so you can issue queries in Pig Latin from the master node. Here are a few pointers to get started with using it. To run Pig, just type "pig". This will start the Grunt shell, connected to the cluster. The following runs a simple Pig program against the sample data we loaded into HDFS above: grunt> A = LOAD 'input'; grunt> B = FILTER A BY $0 MATCHES '.*dfs[a-z.]+.*'; grunt> DUMP B; grunt> quit TESTING HIVE ============ The scripts also install Hive on the master node. To run it, type "hive". hive> SHOW TABLES; This should return successfully and show that there are no tables defined. Run through the following commands to load and query some test data. hive> CREATE TABLE test_table (foo INT, bar STRING); hive> LOAD DATA LOCAL INPATH '/usr/share/doc/hive*/examples/files/kv1.txt*' OVERWRITE INTO TABLE test_table; hive> SELECT MAX(foo) FROM test_table; hive> DROP TABLE test_table; CONFIGURATION NOTES =================== It is possible to specify options on the command line: these take precedence over any specified in the configuration file. For example: % hadoop-ec2 launch-cluster --ami ami-2359bf4a --instance-type c1.xlarge \ my-hadoop-cluster 10 This command launches a 10-node cluster using the specified AMI and instance type, overriding the equivalent settings (if any) that are in the "my-hadoop-cluster" section of the configuration file. Note that words in options are separated by hyphens (--instance-type) while the corresponding configuration parameter is are separated by underscores (instance_type). The scripts install Hadoop RPMs or Debian packages (depending on the OS) at instance boot time. By default, CDH1 (http://archive.cloudera.com/docs/_cdh1_march_2009.html) is installed (based on Hadoop 0.18.3). For this release, Hadoop configuration files can be found in /etc/hadoop/conf and logs are in /var/log/hadoop. You can also run other versions of Cloudera's Distribution for Hadoop. For example the following uses the latest 0.20 version from the "testing" repository: % hadoop-ec2 launch-cluster --env REPO=testing --env HADOOP_VERSION=0.20 \ my-hadoop-cluster 10 CUSTOMIZATION ============= You can specify a list of packages to install on every instance at boot time using the --user-packages command-line option (or the user_packages configuration parameter). Packages should be space-separated. Note that package names should reflect the package manager being used to install them (yum or apt-get depending on the OS). Here's an example that installs RPMs for R and git: % hadoop-ec2 launch-cluster --user-packages 'R git-core' my-hadoop-cluster 10 You have full control over the script that is run when each instance boots. The default script, hadoop-ec2-init-remote.sh, may be used as a starting point to add extra configuration or customization of the instance. Make a copy of the script in your home directory, or somewhere similar, and set the --user-data-file command-line option (or the user_data_file configuration parameter) to point to the (modified) copy. hadoop-ec2 will replace "%ENV%" in your user data script with AWS_ACCESS_KEY_ID, AWS_SECRET_ACCESS_KEY, USER_PACKAGES, AUTO_SHUTDOWN, and EBS_MAPPINGS, as well as extra parameters supplied using the --env commandline flag. Another way of customizing the instance, which may be more appropriate for larger changes, is to create you own AMI using one of the base images listed in the table above. It's possible to use any AMI, as long as it i) runs (gzip compressed) user data on boot, and ii) has Java installed. RESOURCES ========= * Hadoop: http://hadoop.apache.org/ * Pig: http://hadoop.apache.org/pig/ * Hive: http://hadoop.apache.org/hive/ * Hadoop on Amazon EC2: http://wiki.apache.org/hadoop/AmazonEC2 * Cloudera's Distribution for Hadoop: http://www.cloudera.com/hadoop
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