0基础学习PyFlink——个数滑动窗口(Sliding Count Windows)

大纲

  • 滑动(Sliding)和滚动(Tumbling)的区别
  • 样例
    • 窗口为2,滑动距离为1
    • 窗口为3,滑动距离为1
    • 窗口为3,滑动距离为2
    • 窗口为3,滑动距离为3
  • 完整代码
  • 参考资料

在 《0基础学习PyFlink——个数滚动窗口(Tumbling Count Windows)》一文中,我们介绍了滚动窗口。本节我们要介绍滑动窗口。

滑动(Sliding)和滚动(Tumbling)的区别

正如其名,“滑动”是指这个窗口沿着一定的方向,按着一定的速度“滑行”。
0基础学习PyFlink——个数滑动窗口(Sliding Count Windows)_第1张图片
而滚动窗口,则是一个个“衔接着”,而不是像上面那样交错着。
0基础学习PyFlink——个数滑动窗口(Sliding Count Windows)_第2张图片
它们的相同之处就是:只有窗口内的事件数量到达窗口要求的数值时,这些窗口才会触发计算。

样例

我们只要对《0基础学习PyFlink——个数滚动窗口(Tumbling Count Windows)》中的代码做轻微的改动即可。为了简化样例,我们只看Key为E的元素的滑动。

word_count_data = [("E",3),("E",1),("E",4),("E",2),("E",6),("E",5)]

def word_count():
    env = StreamExecutionEnvironment.get_execution_environment()
    env.set_runtime_mode(RuntimeExecutionMode.STREAMING)
    # write all the data to one file
    env.set_parallelism(1)

    source_type_info = Types.TUPLE([Types.STRING(), Types.INT()])
    # define the source
    # mappging
    source = env.from_collection(word_count_data, source_type_info)
    # source.print()

    # keying
    keyed=source.key_by(lambda i: i[0]) 

窗口为2,滑动距离为1

count_window会根据传入的第二参数决定是构建滚动(CountTumblingWindowAssigner)窗口还是滑动(CountSlidingWindowAssigner)窗口。

    def count_window(self, size: int, slide: int = 0):
        """
        Windows this KeyedStream into tumbling or sliding count windows.

        :param size: The size of the windows in number of elements.
        :param slide: The slide interval in number of elements.

        .. versionadded:: 1.16.0
        """
        if slide == 0:
            return WindowedStream(self, CountTumblingWindowAssigner(size))
        else:
            return WindowedStream(self, CountSlidingWindowAssigner(size, slide))

我们只要给count_window第二个参数传递一个不为0的值,即可达到滑动效果。

    # reducing
    windows_size = 2
    sliding_size = 1
    reduced=keyed.count_window(windows_size, sliding_size) \
                .apply(SumWindowFunction(),
                       Types.TUPLE([Types.STRING(), Types.INT()]))

    # # define the sink
    reduced.print()

    # submit for execution
    env.execute()

(E,2)
(E,2)
(E,2)
(E,2)
(E,2)

0基础学习PyFlink——个数滑动窗口(Sliding Count Windows)_第3张图片

窗口为3,滑动距离为1

    # reducing
    windows_size = 3
    sliding_size = 1
    reduced=keyed.count_window(windows_size, sliding_size) \
                .apply(SumWindowFunction(),
                       Types.TUPLE([Types.STRING(), Types.INT()]))

(E,3)
(E,3)
(E,3)
(E,3)

0基础学习PyFlink——个数滑动窗口(Sliding Count Windows)_第4张图片

窗口为3,滑动距离为2

    # reducing
    windows_size = 3
    sliding_size = 2
    reduced=keyed.count_window(windows_size, sliding_size) \
                .apply(SumWindowFunction(),
                       Types.TUPLE([Types.STRING(), Types.INT()]))

(E,3)
(E,3)

0基础学习PyFlink——个数滑动窗口(Sliding Count Windows)_第5张图片

窗口为3,滑动距离为3

这个就等效于滚动窗口了,因为“滑”过了窗口大小。

    # reducing
    windows_size = 3
    sliding_size = 3
    reduced=keyed.count_window(windows_size, sliding_size) \
                .apply(SumWindowFunction(),
                       Types.TUPLE([Types.STRING(), Types.INT()]))

(E,3)
(E,3)

0基础学习PyFlink——个数滑动窗口(Sliding Count Windows)_第6张图片

完整代码

from typing import Iterable

from pyflink.common import Types
from pyflink.datastream import StreamExecutionEnvironment, RuntimeExecutionMode, WindowFunction
from pyflink.datastream.window import CountWindow

class SumWindowFunction(WindowFunction[tuple, tuple, str, CountWindow]):
    def apply(self, key: str, window: CountWindow, inputs: Iterable[tuple]):
        return [(key,  len([e for e in inputs]))]


word_count_data = [("E",3),("E",1),("E",4),("E",2),("E",6),("E",5)]

def word_count():
    env = StreamExecutionEnvironment.get_execution_environment()
    env.set_runtime_mode(RuntimeExecutionMode.STREAMING)
    # write all the data to one file
    env.set_parallelism(1)

    source_type_info = Types.TUPLE([Types.STRING(), Types.INT()])
    # define the source
    # mappging
    source = env.from_collection(word_count_data, source_type_info)
    # source.print()

    # keying
    keyed=source.key_by(lambda i: i[0]) 
    
    # reducing
    windows_size = 3
    sliding_size = 1
    reduced=keyed.count_window(windows_size, sliding_size) \
                .apply(SumWindowFunction(),
                       Types.TUPLE([Types.STRING(), Types.INT()]))

    # # define the sink
    reduced.print()

    # submit for execution
    env.execute()

if __name__ == '__main__':
    word_count()

参考资料

  • https://nightlies.apache.org/flink/flink-docs-release-1.18/zh/docs/learn-flink/streaming_analytics/

你可能感兴趣的:(大数据,大数据,python,flink)