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Optimizing Exploratory Workflows for Embedded Platform Trace Analysis and Its Application to Mobile Devices

机译:为嵌入式平台跟踪分析优化探索性工作流程及其在移动设备中的应用

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As 5G wireless communication technology is currently deployed, an increasing amount of data is available from mobile devices out in the field. Exploiting this data, also called system traces, recent investigations show the potential to improve the wireless modem design and performance using data-centric approaches. Such data-centric workflows are exploratory and iterative by nature. For instance, time pattern identification is performed by domain experts to derive assumptions on potential optimizations and these assumptions are continuously refined during multiple iterations of data collection, visualization and exploration. In this context, we propose three optimizations to increase the exploration speed in iterative data-centric workflows. First, we present a methodology based on persistent memoization in order to minimize the data processing duration when additional event sequences need to be extracted from a trace. We show that up to 84.5% of the event extraction time can be spared for a typical modem trace data set. Secondly, we present a novel entropy-based data interaction technique for visual exploration of event sequences and finally, a similarity measure to perform subsequence matching in order to assist the user when identifying frequent time patterns in a trace.
机译:随着5G无线通信技术的当前部署,越来越多的数据可从现场的移动设备获得。利用此数据(也称为系统跟踪),最近的研究表明,使用以数据为中心的方法可以改善无线调制解调器的设计和性能。这种以数据为中心的工作流程本质上是探索性的和迭代式的。例如,时间模式识别由领域专家执行,以得出有关潜在优化的假设,并且在数据收集,可视化和探索的多次迭代过程中不断完善这些假设。在这种情况下,我们提出了三种优化措施,以提高以数据为中心的迭代工作流程的探索速度。首先,我们提出了一种基于持久记忆的方法,以便在需要从跟踪中提取其他事件序列时,将数据处理时间减至最少。我们显示,典型的调制解调器跟踪数据集可以节省多达84.5%的事件提取时间。其次,我们提出了一种新颖的基于熵的数据交互技术,用于对事件序列进行可视化探索,最后,提出了一种执行子序列匹配的相似性度量,以帮助用户识别轨迹中的频繁时间模式。

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