Metadata-Version: 1.2
Name: sparksteps
Version: 3.0.1
Summary: Workflow tool to launch Spark jobs on AWS EMR
Home-page: https://github.com/jwplayer/sparksteps
Author: Kamil Sindi
Author-email: kamil@jwplayer.com
License: Apache License 2.0
Description: Spark Steps
        ===========
        
        .. image:: https://travis-ci.org/jwplayer/sparksteps.svg?branch=master
            :target: https://travis-ci.org/jwplayer/sparksteps
            :alt: Build Status
        
        .. image:: https://readthedocs.org/projects/spark-steps/badge/?version=latest
            :target: http://spark-steps.readthedocs.io/en/latest/?badge=latest
            :alt: Documentation Status
        
        SparkSteps allows you to configure your EMR cluster and upload your
        spark script and its dependencies via AWS S3. All you need to do is
        define an S3 bucket.
        
        Install
        -------
        
        ::
        
            pip install sparksteps
        
        CLI Options
        -----------
        
        ::
        
            Prompt parameters:
              app                           main spark script for submit spark (required)
              app-args:                     arguments passed to main spark script
              app-list:                     Space delimited list of applications to be installed on the EMR cluster (Default: Hadoop Spark)
              aws-region:                   AWS region name
              bid-price:                    specify bid price for task nodes
              bootstrap-script:             include a bootstrap script (s3 path)
              cluster-id:                   job flow id of existing cluster to submit to
              debug:                        allow debugging of cluster
              defaults:                     cluster configurations of the form "<classification1> key1=val1 key2=val2 ..."
              dynamic-pricing-master:       use spot pricing for the master nodes.
              dynamic-pricing-core:         use spot pricing for the core nodes.
              dynamic-pricing-task:         use spot pricing for the task nodes.
              ebs-volume-size-core:         size of the EBS volume to attach to core nodes in GiB.
              ebs-volume-type-core:         type of the EBS volume to attach to core nodes (supported: [standard, gp2, io1]).
              ebs-volumes-per-core:         the number of EBS volumes to attach per core node.
              ebs-optimized-core:           whether to use EBS optimized volumes for core nodes.
              ebs-volume-size-task:         size of the EBS volume to attach to task nodes in GiB.
              ebs-volume-type-task:         type of the EBS volume to attach to task nodes.
              ebs-volumes-per-task:         the number of EBS volumes to attach per task node.
              ebs-optimized-task:           whether to use EBS optimized volumes for task nodes.
              ec2-key:                      name of the Amazon EC2 key pair
              ec2-subnet-id:                Amazon VPC subnet id
              help (-h):                    argparse help
              jobflow-role:                 Amazon EC2 instance profile name to use (Default: EMR_EC2_DefaultRole)
              service-role:                 AWS IAM service role to use for EMR (Default: EMR_DefaultRole)
              keep-alive:                   whether to keep the EMR cluster alive when there are no steps
              log-level (-l):               logging level (default=INFO)
              instance-type-master:         instance type of of master host (default='m4.large')
              instance-type-core:           instance type of the core nodes, must be set when num-core > 0
              instance-type-task:           instance type of the task nodes, must be set when num-task > 0
              maximize-resource-allocation: sets the maximizeResourceAllocation property for the cluster to true when supplied.
              name:                         specify cluster name
              num-core:                     number of core nodes
              num-task:                     number of task nodes
              release-label:                EMR release label
              s3-bucket:                    name of s3 bucket to upload spark file (required)
              s3-path:                      path within s3-bucket to use when writing assets
              s3-dist-cp:                   s3-dist-cp step after spark job is done
              submit-args:                  arguments passed to spark-submit
              tags:                         EMR cluster tags of the form "key1=value1 key2=value2"
              uploads:                      files to upload to /home/hadoop/ in master instance
              wait:                         poll until all steps are complete (or error)
        
        Example
        -------
        
        ::
        
              AWS_S3_BUCKET = <insert-s3-bucket>
              cd sparksteps/
              sparksteps examples/episodes.py \
                --s3-bucket $AWS_S3_BUCKET \
                --aws-region us-east-1 \
                --release-label emr-4.7.0 \
                --uploads examples/lib examples/episodes.avro \
                --submit-args="--deploy-mode client --jars /home/hadoop/lib/spark-avro_2.10-2.0.2-custom.jar" \
                --app-args="--input /home/hadoop/episodes.avro" \
                --tags Application="Spark Steps" \
                --debug
        
        The above example creates an EMR cluster of 1 node with default instance
        type *m4.large*, uploads the pyspark script episodes.py and its
        dependencies to the specified S3 bucket and copies the file from S3 to
        the cluster. Each operation is defined as an EMR "step" that you can
        monitor in EMR. The final step is to run the spark application with
        submit args that includes a custom spark-avro package and app args
        "--input".
        
        Run Spark Job on Existing Cluster
        ---------------------------------
        
        You can use the option ``--cluster-id`` to specify a cluster to upload
        and run the Spark job. This is especially helpful for debugging.
        
        Dynamic Pricing
        -----------------------
        
        Use CLI option ``--dynamic-pricing-<instance-type>`` to allow sparksteps to dynamically
        determine the best bid price for EMR instances within a certain instance group.
        
        Currently the algorithm looks back at spot history over the last 12
        hours and calculates ``min(0.8 * on_demand_price, 1.2 * max_spot_price)`` to
        determine bid price. That said, if the current spot price is over 80% of
        the on-demand cost, then on-demand instances are used to be
        conservative.
        
        
        Testing
        -------
        
        ::
        
            make test
        
        Blog
        ----
        Read more about sparksteps in our blog post here:
        https://www.jwplayer.com/blog/sparksteps/
        
        License
        -------
        
        Apache License 2.0
        
Keywords: aws,emr,pyspark,spark,boto
Platform: UNKNOWN
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Environment :: Console
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Requires-Python: >=3.6
