Causal fault localisation in dataflow systems

Andrei Paleyes, Neil D. Lawrence
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引用次数: 1

Abstract

Dataflow computing was shown to bring significant benefits to multiple niches of systems engineering and has the potential to become a general-purpose paradigm of choice for data-driven application development. One of the characteristic features of dataflow computing is the natural access to the dataflow graph of the entire system. Recently it has been observed that these dataflow graphs can be treated as complete graphical causal models, opening opportunities to apply causal inference techniques to dataflow systems. In this demonstration paper we aim to provide the first practical validation of this idea with a particular focus on causal fault localisation. We provide multiple demonstrations of how causal inference can be used to detect software bugs and data shifts in multiple scenarios with three modern dataflow engines.
数据流系统中的因果故障定位
数据流计算为系统工程的多个领域带来了显著的好处,并且有潜力成为数据驱动应用程序开发的通用范例。数据流计算的特征之一是可以自然地访问整个系统的数据流图。最近,人们观察到这些数据流图可以被视为完整的图形因果模型,这为将因果推理技术应用于数据流系统提供了机会。在这篇演示论文中,我们的目标是提供这个想法的第一个实际验证,特别关注因果故障定位。我们提供了多个演示,说明因果推理如何使用三个现代数据流引擎在多个场景中检测软件错误和数据转移。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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