Source code for apache_beam.transforms.periodicsequence

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import math
import time

import apache_beam as beam
import apache_beam.runners.sdf_utils as sdf_utils
from apache_beam.io.restriction_trackers import OffsetRange
from apache_beam.io.restriction_trackers import OffsetRestrictionTracker
from apache_beam.transforms import core
from apache_beam.transforms import window
from apache_beam.transforms.ptransform import PTransform
from apache_beam.transforms.window import TimestampedValue
from apache_beam.utils import timestamp
from apache_beam.utils.timestamp import MAX_TIMESTAMP
from apache_beam.utils.timestamp import Timestamp


[docs]class ImpulseSeqGenRestrictionProvider(core.RestrictionProvider):
[docs] def initial_restriction(self, element): start, end, interval = element if isinstance(start, Timestamp): start = start.micros / 1000000 if isinstance(end, Timestamp): end = end.micros / 1000000 assert start <= end assert interval > 0 total_outputs = math.ceil((end - start) / interval) return OffsetRange(0, total_outputs)
[docs] def create_tracker(self, restriction): return OffsetRestrictionTracker(restriction)
[docs] def restriction_size(self, unused_element, restriction): return restriction.size()
[docs]class ImpulseSeqGenDoFn(beam.DoFn): ''' ImpulseSeqGenDoFn fn receives tuple elements with three parts: * first_timestamp = first timestamp to output element for. * last_timestamp = last timestamp/time to output element for. * fire_interval = how often to fire an element. For each input element received, ImpulseSeqGenDoFn fn will start generating output elements in following pattern: * if element timestamp is less than current runtime then output element. * if element timestamp is greater than current runtime, wait until next element timestamp. ImpulseSeqGenDoFn can't guarantee that each element is output at exact time. ImpulseSeqGenDoFn guarantees that elements would not be output prior to given runtime timestamp. '''
[docs] def process( self, element, restriction_tracker=beam.DoFn.RestrictionParam( ImpulseSeqGenRestrictionProvider())): ''' :param element: (start_timestamp, end_timestamp, interval) :param restriction_tracker: :return: yields elements at processing real-time intervals with value of target output timestamp for the element. ''' start, _, interval = element if isinstance(start, Timestamp): start = start.micros / 1000000 assert isinstance(restriction_tracker, sdf_utils.RestrictionTrackerView) current_output_index = restriction_tracker.current_restriction().start current_output_timestamp = start + interval * current_output_index current_time = time.time() while current_output_timestamp <= current_time: if restriction_tracker.try_claim(current_output_index): yield current_output_timestamp current_output_index += 1 current_output_timestamp = start + interval * current_output_index current_time = time.time() else: return restriction_tracker.defer_remainder( timestamp.Timestamp(current_output_timestamp))
[docs]class PeriodicSequence(PTransform): ''' PeriodicSequence transform receives tuple elements with three parts: * first_timestamp = first timestamp to output element for. * last_timestamp = last timestamp/time to output element for. * fire_interval = how often to fire an element. For each input element received, PeriodicSequence transform will start generating output elements in following pattern: * if element timestamp is less than current runtime then output element. * if element timestamp is greater than current runtime, wait until next element timestamp. PeriodicSequence can't guarantee that each element is output at exact time. PeriodicSequence guarantees that elements would not be output prior to given runtime timestamp. ''' def __init_(self): pass
[docs] def expand(self, pcoll): return ( pcoll | 'GenSequence' >> beam.ParDo(ImpulseSeqGenDoFn()) | 'MapToTimestamped' >> beam.Map(lambda tt: TimestampedValue(tt, tt)))
[docs]class PeriodicImpulse(PTransform): ''' PeriodicImpulse transform generates an infinite sequence of elements with given runtime interval. PeriodicImpulse transform behaves same as {@link PeriodicSequence} transform, but can be used as first transform in pipeline. ''' def __init__( self, start_timestamp=Timestamp.now(), stop_timestamp=MAX_TIMESTAMP, fire_interval=360.0, apply_windowing=False): ''' :param start_timestamp: Timestamp for first element. :param stop_timestamp: Timestamp after which no elements will be output. :param fire_interval: Interval at which to output elements. :param apply_windowing: Whether each element should be assigned to individual window. If false, all elements will reside in global window. ''' self.start_ts = start_timestamp self.stop_ts = stop_timestamp self.interval = fire_interval self.apply_windowing = apply_windowing
[docs] def expand(self, pbegin): result = ( pbegin | 'ImpulseElement' >> beam.Create( [(self.start_ts, self.stop_ts, self.interval)]) | 'GenSequence' >> beam.ParDo(ImpulseSeqGenDoFn()) | 'MapToTimestamped' >> beam.Map(lambda tt: TimestampedValue(tt, tt))) if self.apply_windowing: result = result | 'ApplyWindowing' >> beam.WindowInto( window.FixedWindows(self.interval)) return result