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from airflow.contrib.hooks.spark_submit_hook import SparkSubmitHook
from airflow.models import BaseOperator
from airflow.settings import WEB_COLORS
from airflow.utils.decorators import apply_defaults
[docs]class SparkSubmitOperator(BaseOperator):
    """
    This hook is a wrapper around the spark-submit binary to kick off a spark-submit job.
    It requires that the "spark-submit" binary is in the PATH or the spark-home is set
    in the extra on the connection.
    :param application: The application that submitted as a job, either jar or py file. (templated)
    :type application: str
    :param conf: Arbitrary Spark configuration properties (templated)
    :type conf: dict
    :param conn_id: The connection id as configured in Airflow administration. When an
                    invalid connection_id is supplied, it will default to yarn.
    :type conn_id: str
    :param files: Upload additional files to the executor running the job, separated by a
                  comma. Files will be placed in the working directory of each executor.
                  For example, serialized objects. (templated)
    :type files: str
    :param py_files: Additional python files used by the job, can be .zip, .egg or .py. (templated)
    :type py_files: str
    :param jars: Submit additional jars to upload and place them in executor classpath. (templated)
    :type jars: str
    :param driver_class_path: Additional, driver-specific, classpath settings. (templated)
    :type driver_class_path: str
    :param java_class: the main class of the Java application
    :type java_class: str
    :param packages: Comma-separated list of maven coordinates of jars to include on the
                     driver and executor classpaths. (templated)
    :type packages: str
    :param exclude_packages: Comma-separated list of maven coordinates of jars to exclude
                             while resolving the dependencies provided in 'packages' (templated)
    :type exclude_packages: str
    :param repositories: Comma-separated list of additional remote repositories to search
                         for the maven coordinates given with 'packages'
    :type repositories: str
    :param total_executor_cores: (Standalone & Mesos only) Total cores for all executors
                                 (Default: all the available cores on the worker)
    :type total_executor_cores: int
    :param executor_cores: (Standalone & YARN only) Number of cores per executor (Default: 2)
    :type executor_cores: int
    :param executor_memory: Memory per executor (e.g. 1000M, 2G) (Default: 1G)
    :type executor_memory: str
    :param driver_memory: Memory allocated to the driver (e.g. 1000M, 2G) (Default: 1G)
    :type driver_memory: str
    :param keytab: Full path to the file that contains the keytab (templated)
    :type keytab: str
    :param principal: The name of the kerberos principal used for keytab (templated)
    :type principal: str
    :param proxy_user: User to impersonate when submitting the application (templated)
    :type proxy_user: str
    :param name: Name of the job (default airflow-spark). (templated)
    :type name: str
    :param num_executors: Number of executors to launch
    :type num_executors: int
    :param application_args: Arguments for the application being submitted (templated)
    :type application_args: list
    :param env_vars: Environment variables for spark-submit. It supports yarn and k8s mode too. (templated)
    :type env_vars: dict
    :param verbose: Whether to pass the verbose flag to spark-submit process for debugging
    :type verbose: bool
    :param spark_binary: The command to use for spark submit.
                         Some distros may use spark2-submit.
    :type spark_binary: string
    """
[docs]    template_fields = ('_application', '_conf', '_files', '_py_files', '_jars', '_driver_class_path',
                       '_packages', '_exclude_packages', '_keytab', '_principal', '_proxy_user', '_name',
                       '_application_args', '_env_vars') 
[docs]    ui_color = WEB_COLORS['LIGHTORANGE'] 
    @apply_defaults
    def __init__(self,
                 application='',
                 conf=None,
                 conn_id='spark_default',
                 files=None,
                 py_files=None,
                 archives=None,
                 driver_class_path=None,
                 jars=None,
                 java_class=None,
                 packages=None,
                 exclude_packages=None,
                 repositories=None,
                 total_executor_cores=None,
                 executor_cores=None,
                 executor_memory=None,
                 driver_memory=None,
                 keytab=None,
                 principal=None,
                 proxy_user=None,
                 name='airflow-spark',
                 num_executors=None,
                 application_args=None,
                 env_vars=None,
                 verbose=False,
                 spark_binary="spark-submit",
                 *args,
                 **kwargs):
        super(SparkSubmitOperator, self).__init__(*args, **kwargs)
        self._application = application
        self._conf = conf
        self._files = files
        self._py_files = py_files
        self._archives = archives
        self._driver_class_path = driver_class_path
        self._jars = jars
        self._java_class = java_class
        self._packages = packages
        self._exclude_packages = exclude_packages
        self._repositories = repositories
        self._total_executor_cores = total_executor_cores
        self._executor_cores = executor_cores
        self._executor_memory = executor_memory
        self._driver_memory = driver_memory
        self._keytab = keytab
        self._principal = principal
        self._proxy_user = proxy_user
        self._name = name
        self._num_executors = num_executors
        self._application_args = application_args
        self._env_vars = env_vars
        self._verbose = verbose
        self._spark_binary = spark_binary
        self._hook = None
        self._conn_id = conn_id
[docs]    def execute(self, context):
        """
        Call the SparkSubmitHook to run the provided spark job
        """
        self._hook = SparkSubmitHook(
            conf=self._conf,
            conn_id=self._conn_id,
            files=self._files,
            py_files=self._py_files,
            archives=self._archives,
            driver_class_path=self._driver_class_path,
            jars=self._jars,
            java_class=self._java_class,
            packages=self._packages,
            exclude_packages=self._exclude_packages,
            repositories=self._repositories,
            total_executor_cores=self._total_executor_cores,
            executor_cores=self._executor_cores,
            executor_memory=self._executor_memory,
            driver_memory=self._driver_memory,
            keytab=self._keytab,
            principal=self._principal,
            proxy_user=self._proxy_user,
            name=self._name,
            num_executors=self._num_executors,
            application_args=self._application_args,
            env_vars=self._env_vars,
            verbose=self._verbose,
            spark_binary=self._spark_binary
        )
        self._hook.submit(self._application) 
[docs]    def on_kill(self):
        self._hook.on_kill()