airflow.contrib.hooks.spark_submit_hook¶
Module Contents¶
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class airflow.contrib.hooks.spark_submit_hook.SparkSubmitHook(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='default-name', num_executors=None, status_poll_interval=1, application_args=None, env_vars=None, verbose=False, spark_binary=None)[source]¶
- Bases: - airflow.hooks.base_hook.BaseHook,- airflow.utils.log.logging_mixin.LoggingMixin- 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 to be supplied. - Parameters
- conf (dict) – Arbitrary Spark configuration properties 
- conn_id (str) – The connection id as configured in Airflow administration. When an invalid connection_id is supplied, it will default to yarn. 
- files (str) – 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. 
- py_files (str) – Additional python files used by the job, can be .zip, .egg or .py. 
- driver_class_path (str) – Additional, driver-specific, classpath settings. 
- jars (str) – Submit additional jars to upload and place them in executor classpath. 
- java_class (str) – the main class of the Java application 
- packages (str) – Comma-separated list of maven coordinates of jars to include on the driver and executor classpaths 
- exclude_packages (str) – Comma-separated list of maven coordinates of jars to exclude while resolving the dependencies provided in ‘packages’ 
- repositories (str) – Comma-separated list of additional remote repositories to search for the maven coordinates given with ‘packages’ 
- total_executor_cores (int) – (Standalone & Mesos only) Total cores for all executors (Default: all the available cores on the worker) 
- executor_cores (int) – (Standalone, YARN and Kubernetes only) Number of cores per executor (Default: 2) 
- executor_memory (str) – Memory per executor (e.g. 1000M, 2G) (Default: 1G) 
- driver_memory (str) – Memory allocated to the driver (e.g. 1000M, 2G) (Default: 1G) 
- keytab (str) – Full path to the file that contains the keytab 
- principal (str) – The name of the kerberos principal used for keytab 
- proxy_user (str) – User to impersonate when submitting the application 
- name (str) – Name of the job (default airflow-spark) 
- num_executors (int) – Number of executors to launch 
- status_poll_interval (int) – Seconds to wait between polls of driver status in cluster mode (Default: 1) 
- application_args (list) – Arguments for the application being submitted 
- env_vars (dict) – Environment variables for spark-submit. It supports yarn and k8s mode too. 
- verbose (bool) – Whether to pass the verbose flag to spark-submit process for debugging 
- spark_binary (str) – The command to use for spark submit. Some distros may use spark2-submit. 
 
- Param
- archives: Archives that spark should unzip (and possibly tag with #ALIAS) into the application working directory. 
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_resolve_should_track_driver_status(self)[source]¶
- Determines whether or not this hook should poll the spark driver status through subsequent spark-submit status requests after the initial spark-submit request :return: if the driver status should be tracked 
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_build_spark_submit_command(self, application)[source]¶
- Construct the spark-submit command to execute. - Parameters
- application (str) – command to append to the spark-submit command 
- Returns
- full command to be executed 
 
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_build_track_driver_status_command(self)[source]¶
- Construct the command to poll the driver status. - Returns
- full command to be executed 
 
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submit(self, application='', **kwargs)[source]¶
- Remote Popen to execute the spark-submit job - Parameters
- application (str) – Submitted application, jar or py file 
- kwargs – extra arguments to Popen (see subprocess.Popen) 
 
 
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_process_spark_submit_log(self, itr)[source]¶
- Processes the log files and extracts useful information out of it. - If the deploy-mode is ‘client’, log the output of the submit command as those are the output logs of the Spark worker directly. - Remark: If the driver needs to be tracked for its status, the log-level of the spark deploy needs to be at least INFO (log4j.logger.org.apache.spark.deploy=INFO) - Parameters
- itr – An iterator which iterates over the input of the subprocess 
 
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_process_spark_status_log(self, itr)[source]¶
- parses the logs of the spark driver status query process - Parameters
- itr – An iterator which iterates over the input of the subprocess 
 
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_start_driver_status_tracking(self)[source]¶
- Polls the driver based on self._driver_id to get the status. Finish successfully when the status is FINISHED. Finish failed when the status is ERROR/UNKNOWN/KILLED/FAILED. - Possible status: - SUBMITTED
- Submitted but not yet scheduled on a worker 
- RUNNING
- Has been allocated to a worker to run 
- FINISHED
- Previously ran and exited cleanly 
- RELAUNCHING
- Exited non-zero or due to worker failure, but has not yet started running again 
- UNKNOWN
- The status of the driver is temporarily not known due to master failure recovery 
- KILLED
- A user manually killed this driver 
- FAILED
- The driver exited non-zero and was not supervised 
- ERROR
- Unable to run or restart due to an unrecoverable error (e.g. missing jar file)