Source code for pyflink.datastream.execution_mode

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from enum import Enum

from pyflink.java_gateway import get_gateway

__all__ = ['RuntimeExecutionMode']


[docs]class RuntimeExecutionMode(Enum): """ Runtime execution mode of DataStream programs. Among other things, this controls task scheduling, network shuffle behavior, and time semantics. Some operations will also change their record emission behaviour based on the configured execution mode. :data:`STREAMING`: The Pipeline will be executed with Streaming Semantics. All tasks will be deployed before execution starts, checkpoints will be enabled, and both processing and event time will be fully supported. :data:`BATCH`: The Pipeline will be executed with Batch Semantics. Tasks will be scheduled gradually based on the scheduling region they belong, shuffles between regions will be blocking, watermarks are assumed to be "perfect" i.e. no late data, and processing time is assumed to not advance during execution. :data:`AUTOMATIC`: Flink will set the execution mode to BATCH if all sources are bounded, or STREAMING if there is at least one source which is unbounded. """ STREAMING = 0 BATCH = 1 AUTOMATIC = 2 @staticmethod def _from_j_execution_mode(j_execution_mode) -> 'RuntimeExecutionMode': return RuntimeExecutionMode[j_execution_mode.name()] def _to_j_execution_mode(self): gateway = get_gateway() JRuntimeExecutionMode = \ gateway.jvm.org.apache.flink.api.common.RuntimeExecutionMode return getattr(JRuntimeExecutionMode, self.name)