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I-Scheduler: Iterative scheduling for distributed stream processing systems

机译:i-scheduler:分布式流处理系统的迭代调度

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Task allocation in Data Stream Processing Systems (DSPSs) has a significant impact on performance metrics such as data processing latency and system throughput. An application processed by DSPSs can be represented as a Directed Acyclic Craph (DAG), where each vertex represents a task and the edges show the dataflow between the tasks. Task allocation can be defined as the assignment of the vertices in the DAG to the physical compute nodes such that the data movement between the nodes is minimised. Finding an optimal task placement for DSPSs is NP-hard. Thus, approximate scheduling approaches are required to improve the performance of DSPSs. In this paper, we propose a heuristic scheduling algorithm which reliably and efficiently finds highly communicating tasks by exploiting graph partitioning algorithms and a mathematical optimisation software package. We evaluate the communication cost of our method using three micro-benchmarks, showing that we can achieve results that are close to optimal. We further compare our scheduler with two popular existing schedulers, R-Storm and Aniello et al.'s 'Online scheduler' using two real-world applications. Our experimental results show that our proposed scheduler outperforms R-Storm, increasing throughput by up to 30%, and improves on the Online scheduler by 20%-86% as a result of finding a more efficient schedule.'
机译:数据流处理系统(DSPS)中的任务分配对性能度量有重大影响,例如数据处理延迟和系统吞吐量。由DSPS处理的应用程序可以表示为定向的非环Crafh(DAG),其中每个顶点代表任务,边缘显示任务之间的数据流。任务分配可以定义为DAG中的顶点的分配给物理计算节点,使得节点之间的数据移动被最小化。找到DSPS的最佳任务位置是NP-HARD。因此,需要近似调度方法来提高DSPS的性能。在本文中,我们提出了一种启发式调度算法,通过利用图形分区算法和数学优化软件包来可靠和有效地找到高度通信任务。我们使用三个微基准评估我们方法的通信成本,表明我们可以实现接近最佳的结果。我们进一步将Scheduler与两个流行的现有调度员,R-Storm和Aniello等人进行了比较。使用两个现实世界应用程序的“在线调度程序”。我们的实验结果表明,我们所提出的调度器优于R-Storm,将吞吐量提高高达30%,并在网上调度器上提高20%-86%,因为找到了更有效的时间表。“

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