Source code for airflow.executors.dask_executor

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import distributed
import subprocess
import warnings

from airflow.configuration import conf
from airflow.executors.base_executor import BaseExecutor


[docs]class DaskExecutor(BaseExecutor): """ DaskExecutor submits tasks to a Dask Distributed cluster. """ def __init__(self, cluster_address=None): if cluster_address is None: cluster_address = conf.get('dask', 'cluster_address') if not cluster_address: raise ValueError( 'Please provide a Dask cluster address in airflow.cfg') self.cluster_address = cluster_address # ssl / tls parameters self.tls_ca = conf.get('dask', 'tls_ca') self.tls_key = conf.get('dask', 'tls_key') self.tls_cert = conf.get('dask', 'tls_cert') super(DaskExecutor, self).__init__(parallelism=0)
[docs] def start(self): if self.tls_ca or self.tls_key or self.tls_cert: from distributed.security import Security security = Security( tls_client_key=self.tls_key, tls_client_cert=self.tls_cert, tls_ca_file=self.tls_ca, require_encryption=True, ) else: security = None self.client = distributed.Client(self.cluster_address, security=security) self.futures = {}
[docs] def execute_async(self, key, command, queue=None, executor_config=None): if queue is not None: warnings.warn( 'DaskExecutor does not support queues. ' 'All tasks will be run in the same cluster' ) def airflow_run(): return subprocess.check_call(command, close_fds=True) future = self.client.submit(airflow_run, pure=False) self.futures[future] = key
[docs] def _process_future(self, future): if future.done(): key = self.futures[future] if future.exception(): self.log.error("Failed to execute task: %s", repr(future.exception())) self.fail(key) elif future.cancelled(): self.log.error("Failed to execute task") self.fail(key) else: self.success(key) self.futures.pop(future)
[docs] def sync(self): # make a copy so futures can be popped during iteration for future in self.futures.copy(): self._process_future(future)
[docs] def end(self): for future in distributed.as_completed(self.futures.copy()): self._process_future(future)
[docs] def terminate(self): self.client.cancel(self.futures.keys()) self.end()

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