Sahara (Data Processing) UI User Guide

This guide assumes that you already have the sahara service and Horizon dashboard up and running. Don’t forget to make sure that sahara is registered in Keystone. If you require assistance with that, please see the installation guide.

The sections below give a panel by panel overview of setting up clusters and running jobs. For a description of using the guided cluster and job tools, look at Launching a cluster via the Cluster Creation Guide and Running a job via the Job Execution Guide.

Launching a cluster via the sahara UI

Registering an Image

  1. Navigate to the “Project” dashboard, then to the “Data Processing” tab, then click on the “Clusters” panel and finally the “Image Registry” tab.

  2. From that page, click on the “Register Image” button at the top right

  3. Choose the image that you’d like to register with sahara

  4. Enter the username of the cloud-init user on the image

  5. Choose plugin and version to make the image available only for the intended clusters

  6. Click the “Done” button to finish the registration

Create Node Group Templates

  1. Navigate to the “Project” dashboard, then to the “Data Processing” tab, then click on the “Clusters” panel and then the “Node Group Templates” tab.

  2. From that page, click on the “Create Template” button at the top right

  3. Choose your desired Plugin name and Version from the dropdowns and click “Next”

  4. Give your Node Group Template a name (description is optional)

  5. Choose a flavor for this template (based on your CPU/memory/disk needs)

  6. Choose the storage location for your instance, this can be either “Ephemeral Drive” or “Cinder Volume”. If you choose “Cinder Volume”, you will need to add additional configuration

  7. Switch to the Node processes tab and choose which processes should be run for all instances that are spawned from this Node Group Template

  8. Click on the “Create” button to finish creating your Node Group Template

Create a Cluster Template

  1. Navigate to the “Project” dashboard, then to the “Data Processing” tab, then click on the “Clusters” panel and finally the “Cluster Templates” tab.

  2. From that page, click on the “Create Template” button at the top right

  3. Choose your desired Plugin name and Version from the dropdowns and click “Next”

  4. Under the “Details” tab, you must give your template a name

  5. Under the “Node Groups” tab, you should add one or more nodes that can be based on one or more templates

  • To do this, start by choosing a Node Group Template from the dropdown and click the “+” button

  • You can adjust the number of nodes to be spawned for this node group via the text box or the “-” and “+” buttons

  • Repeat these steps if you need nodes from additional node group templates

  1. Optionally, you can adjust your configuration further by using the “General Parameters”, “HDFS Parameters” and “MapReduce Parameters” tabs

  2. If you have Designate DNS service you can choose the domain name in “DNS” tab for internal and external hostname resolution

  3. Click on the “Create” button to finish creating your Cluster Template

Launching a Cluster

  1. Navigate to the “Project” dashboard, then to the “Data Processing” tab, then click on the “Clusters” panel and lastly, click on the “Clusters” tab.

  2. Click on the “Launch Cluster” button at the top right

  3. Choose your desired Plugin name and Version from the dropdowns and click “Next”

  4. Give your cluster a name (required)

  5. Choose which cluster template should be used for your cluster

  6. Choose the image that should be used for your cluster (if you do not see any options here, see Registering an Image above)

  7. Optionally choose a keypair that can be used to authenticate to your cluster instances

  8. Click on the “Create” button to start your cluster

  • Your cluster’s status will display on the Clusters table

  • It will likely take several minutes to reach the “Active” state

Scaling a Cluster

  1. From the Data Processing/Clusters page (Clusters tab), click on the “Scale Cluster” button of the row that contains the cluster that you want to scale

  2. You can adjust the numbers of instances for existing Node Group Templates

  3. You can also add a new Node Group Template and choose a number of instances to launch

  • This can be done by selecting your desired Node Group Template from the dropdown and clicking the “+” button

  • Your new Node Group will appear below and you can adjust the number of instances via the text box or the “+” and “-” buttons

  1. To confirm the scaling settings and trigger the spawning/deletion of instances, click on “Scale”

Elastic Data Processing (EDP)

Data Sources

Data Sources are where the input and output from your jobs are housed.

  1. From the Data Processing/Jobs page (Data Sources tab), click on the “Create Data Source” button at the top right

  2. Give your Data Source a name

  3. Enter the URL of the Data Source

  • For a swift object, enter <container>/<path> (ie: mycontainer/inputfile). sahara will prepend swift:// for you

  • For an HDFS object, enter an absolute path, a relative path or a full URL:

    • /my/absolute/path indicates an absolute path in the cluster HDFS

    • my/path indicates the path /user/hadoop/my/path in the cluster HDFS assuming the defined HDFS user is hadoop

    • hdfs://host:port/path can be used to indicate any HDFS location

  1. Enter the username and password for the Data Source (also see Additional Notes)

  2. Enter an optional description

  3. Click on “Create”

  4. Repeat for additional Data Sources

Job Binaries

Job Binaries are where you define/upload the source code (mains and libraries) for your job.

  1. From the Data Processing/Jobs (Job Binaries tab), click on the “Create Job Binary” button at the top right

  2. Give your Job Binary a name (this can be different than the actual filename)

  3. Choose the type of storage for your Job Binary

  • For “swift”, enter the URL of your binary (<container>/<path>) as well as the username and password (also see Additional Notes)

  • For “manila”, choose the share and enter the path for the binary in this share. This assumes that you have already stored that file in the appropriate path on the share. The share will be automatically mounted to any cluster nodes which require access to the file, if it is not mounted already.

  • For “Internal database”, you can choose from “Create a script” or “Upload a new file” (only API v1.1)

  1. Enter an optional description

  2. Click on “Create”

  3. Repeat for additional Job Binaries

Job Templates (Known as “Jobs” in the API)

Job templates are where you define the type of job you’d like to run as well as which “Job Binaries” are required.

  1. From the Data Processing/Jobs page (Job Templates tab), click on the “Create Job Template” button at the top right

  2. Give your Job Template a name

  3. Choose the type of job you’d like to run

  4. Choose the main binary from the dropdown

    • This is required for Hive, Pig, and Spark jobs

    • Other job types do not use a main binary

  5. Enter an optional description for your Job Template

  6. Click on the “Libs” tab and choose any libraries needed by your job template

    • MapReduce and Java jobs require at least one library

    • Other job types may optionally use libraries

  7. Click on “Create”

Jobs (Known as “Job Executions” in the API)

Jobs are what you get by “Launching” a job template. You can monitor the status of your job to see when it has completed its run

  1. From the Data Processing/Jobs page (Job Templates tab), find the row that contains the job template you want to launch and click either “Launch on New Cluster” or “Launch on Existing Cluster” the right side of that row

  2. Choose the cluster (already running–see Launching a Cluster above) on which you would like the job to run

  3. Choose the Input and Output Data Sources (Data Sources defined above)

  4. If additional configuration is required, click on the “Configure” tab

  • Additional configuration properties can be defined by clicking on the “Add” button

  • An example configuration entry might be mapred.mapper.class for the Name and org.apache.oozie.example.SampleMapper for the Value

  1. Click on “Launch”. To monitor the status of your job, you can navigate to the Data Processing/Jobs panel and click on the Jobs tab.

  2. You can relaunch a Job from the Jobs page by using the “Relaunch on New Cluster” or “Relaunch on Existing Cluster” links

  • Relaunch on New Cluster will take you through the forms to start a new cluster before letting you specify input/output Data Sources and job configuration

  • Relaunch on Existing Cluster will prompt you for input/output Data Sources as well as allow you to change job configuration before launching the job

Example Jobs

There are sample jobs located in the sahara repository. In this section, we will give a walkthrough on how to run those jobs via the Horizon UI. These steps assume that you already have a cluster up and running (in the “Active” state). You may want to clone into https://opendev.org/openstack/sahara-tests/ so that you will have all of the source code and inputs stored locally.

  1. Sample Pig job - https://opendev.org/openstack/sahara-tests/src/branch/master/sahara_tests/scenario/defaults/edp-examples/edp-pig/cleanup-string/example.pig

  • Load the input data file from https://opendev.org/openstack/sahara-tests/src/branch/master/sahara_tests/scenario/defaults/edp-examples/edp-pig/cleanup-string/data/input into swift

    • Click on Project/Object Store/Containers and create a container with any name (“samplecontainer” for our purposes here)

    • Click on Upload Object and give the object a name (“piginput” in this case)

  • Navigate to Data Processing/Jobs/Data Sources, Click on Create Data Source

    • Name your Data Source (“pig-input-ds” in this sample)

    • Type = Swift, URL samplecontainer/piginput, fill-in the Source username/password fields with your username/password and click “Create”

  • Create another Data Source to use as output for the job

    • Name = pig-output-ds, Type = Swift, URL = samplecontainer/pigoutput, Source username/password, “Create”

  • Store your Job Binaries in Swift (you can choose another type of storage if you want)

    • Navigate to Project/Object Store/Containers, choose “samplecontainer”

    • Click on Upload Object and find example.pig at <sahara-tests root>/sahara-tests/scenario/defaults/edp-examples/ edp-pig/cleanup-string/, name it “example.pig” (or other name). The Swift path will be swift://samplecontainer/example.pig

    • Click on Upload Object and find edp-pig-udf-stringcleaner.jar at <sahara-tests root>/sahara-tests/scenario/defaults/edp-examples/ edp-pig/cleanup-string/, name it “edp-pig-udf-stringcleaner.jar” (or other name). The Swift path will be swift://samplecontainer/edp-pig-udf-stringcleaner.jar

    • Navigate to Data Processing/Jobs/Job Binaries, Click on Create Job Binary

    • Name = example.pig, Storage type = Swift, URL = samplecontainer/example.pig, Username = <your username>, Password = <your password>

    • Create another Job Binary: Name = edp-pig-udf-stringcleaner.jar, Storage type = Swift, URL = samplecontainer/edp-pig-udf-stringcleaner.jar, Username = <your username>, Password = <your password>

  • Create a Job Template

    • Navigate to Data Processing/Jobs/Job Templates, Click on Create Job Template

    • Name = pigsample, Job Type = Pig, Choose “example.pig” as the main binary

    • Click on the “Libs” tab and choose “edp-pig-udf-stringcleaner.jar”, then hit the “Choose” button beneath the dropdown, then click on “Create”

  • Launch your job

    • To launch your job from the Job Templates page, click on the down arrow at the far right of the screen and choose “Launch on Existing Cluster”

    • For the input, choose “pig-input-ds”, for output choose “pig-output-ds”. Also choose whichever cluster you’d like to run the job on

    • For this job, no additional configuration is necessary, so you can just click on “Launch”

    • You will be taken to the “Jobs” page where you can see your job progress through “PENDING, RUNNING, SUCCEEDED” phases

    • When your job finishes with “SUCCEEDED”, you can navigate back to Object Store/Containers and browse to the samplecontainer to see your output. It should be in the “pigoutput” folder

  1. Sample Spark job - https://opendev.org/openstack/sahara-tests/src/branch/master/sahara_tests/scenario/defaults/edp-examples/edp-spark You can clone into https://opendev.org/openstack/sahara-tests/ for quicker access to the files for this sample job.

  • Store the Job Binary in Swift (you can choose another type of storage if you want)

    • Click on Project/Object Store/Containers and create a container with any name (“samplecontainer” for our purposes here)

    • Click on Upload Object and find spark-wordcount.jar at <sahara-tests root>/sahara-tests/scenario/defaults/edp-examples/ edp-spark/, name it “spark-wordcount.jar” (or other name). The Swift path will be swift://samplecontainer/spark-wordcount.jar

    • Navigate to Data Processing/Jobs/Job Binaries, Click on Create Job Binary

    • Name = sparkexample.jar, Storage type = Swift, URL = samplecontainer/spark-wordcount.jar, Username = <your username>, Password = <your password>

  • Create a Job Template

    • Name = sparkexamplejob, Job Type = Spark, Main binary = Choose sparkexample.jar, Click “Create”

  • Launch your job

    • To launch your job from the Job Templates page, click on the down arrow at the far right of the screen and choose “Launch on Existing Cluster”

    • Choose whichever cluster you’d like to run the job on

    • Click on the “Configure” tab

    • Set the main class to be: sahara.edp.spark.SparkWordCount

    • Under Arguments, click Add and fill url for the input file, once more click Add and fill url for the output file.

    • Click on Launch

    • You will be taken to the “Jobs” page where you can see your job progress through “PENDING, RUNNING, SUCCEEDED” phases

    • When your job finishes with “SUCCEEDED”, you can see your results in your output file.

    • The stdout and stderr files of the command used for executing your job are located at /tmp/spark-edp/<name of job template>/<job id> on Spark master node in case of Spark clusters, or on Spark JobHistory node in other cases like Vanilla, CDH and so on.

Additional Notes

  1. Throughout the sahara UI, you will find that if you try to delete an object that you will not be able to delete it if another object depends on it. An example of this would be trying to delete a Job Template that has an existing Job. In order to be able to delete that job, you would first need to delete any Job Templates that relate to that job.

  2. In the examples above, we mention adding your username/password for the swift Data Sources. It should be noted that it is possible to configure sahara such that the username/password credentials are not required. For more information on that, please refer to: Sahara Advanced Configuration Guide

Launching a cluster via the Cluster Creation Guide

  1. Under the Data Processing group, choose “Clusters” and then click on the “Clusters” tab. The “Cluster Creation Guide” button is above that table. Click on it.

  2. Click on the “Choose Plugin” button then select the cluster type from the Plugin Name dropdown and choose your target version. When done, click on “Select” to proceed.

  3. Click on “Create a Master Node Group Template”. Give your template a name, choose a flavor and choose which processes should run on nodes launched for this node group. The processes chosen here should be things that are more server-like in nature (namenode, oozieserver, spark master, etc). Optionally, you can set other options here such as availability zone, storage, security and process specific parameters. Click on “Create” to proceed.

  4. Click on “Create a Worker Node Group Template”. Give your template a name, choose a flavor and choose which processes should run on nodes launched for this node group. Processes chosen here should be more worker-like in nature (datanode, spark slave, task tracker, etc). Optionally, you can set other options here such as availability zone, storage, security and process specific parameters. Click on “Create” to proceed.

  5. Click on “Create a Cluster Template”. Give your template a name. Next, click on the “Node Groups” tab and enter the count for each of the node groups (these are pre-populated from steps 3 and 4). It would be common to have 1 for the “master” node group type and some larger number of “worker” instances depending on you desired cluster size. Optionally, you can also set additional parameters for cluster-wide settings via the other tabs on this page. Click on “Create” to proceed.

  6. Click on “Launch a Cluster”. Give your cluster a name and choose the image that you want to use for all instances in your cluster. The cluster template that you created in step 5 is already pre-populated. If you want ssh access to the instances of your cluster, select a keypair from the dropdown. Click on “Launch” to proceed. You will be taken to the Clusters panel where you can see your cluster progress toward the Active state.

Running a job via the Job Execution Guide

  1. Under the Data Processing group, choose “Jobs” and then click on the “Jobs” tab. The “Job Execution Guide” button is above that table. Click on it.

  2. Click on “Select type” and choose the type of job that you want to run.

  3. If your job requires input/output data sources, you will have the option to create them via the “Create a Data Source” button (Note: This button will not be shown for job types that do not require data sources). Give your data source a name and choose the type. If you have chosen swift, you may also enter the username and password. Enter the URL for your data source. For more details on what the URL should look like, see Data Sources.

  4. Click on “Create a job template”. Give your job template a name. Depending on the type of job that you’ve chosen, you may need to select your main binary and/or additional libraries (available from the “Libs” tab). If you have not yet uploaded the files to run your program, you can add them via the “+” icon next to the “Choose a main binary” select box.

  5. Click on “Launch job”. Choose the active cluster where you want to run you job. Optionally, you can click on the “Configure” tab and provide any required configuration, arguments or parameters for your job. Click on “Launch” to execute your job. You will be taken to the Jobs tab where you can monitor the state of your job as it progresses.