Poster: Twins, a Middleware for Adaptive Streaming Provenance at the Edge

Mikael Gordani Shahri, A. Erlandsson, Dimitris Palyvos-Giannas, Vincenzo Gulisano
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Abstract

Data streaming applications process continuous flows of data to detect unusual/critical events. When it is beneficial to further analyze the source data leading to such events, fine-grained streaming provenance can be used to link each event back to its contributing data. Existing provenance tools, though, (i) can be computationally heavy, especially for applications deployed on resource-constrained devices at the edge of Cyber-Physical Systems, and (ii) cannot activate/deactivate provenance recording based on user-defined rules. To cover such gaps, we present Twins, a new adaptive provenance tool that leverages APIs found in state-of-the-art streaming frameworks to allow for custom conditions to activate/deactivate provenance recording. Our preliminary results, based on an implementation on top of Apache Flink and GeneaLog show that Twins can match, during the periods in which provenance is inactive, the performance of queries that do not record provenance at all.
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海报:Twins,边缘自适应流来源的中间件
数据流应用程序处理连续的数据流,以检测异常/关键事件。当需要进一步分析导致此类事件的源数据时,可以使用细粒度流来源将每个事件链接回其贡献数据。然而,现有的溯源工具(i)计算量很大,特别是对于部署在网络物理系统边缘资源受限设备上的应用程序,以及(ii)无法根据用户定义的规则激活/停用溯源记录。为了弥补这些差距,我们提出了Twins,这是一种新的自适应来源工具,它利用在最先进的流框架中发现的api来允许自定义条件来激活/关闭来源记录。基于Apache Flink和GeneaLog之上的实现,我们的初步结果表明,Twins可以在不活动来源期间匹配根本不记录来源的查询的性能。
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