分布式应用的轻量级任务图推理

Bin Xin, P. Eugster, X. Zhang, Jinlin Yang
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引用次数: 4

摘要

最近分布式计算中的范式转变(例如云计算的出现)对分布式执行的分析提出了新的挑战。一个重要的新特征是计算平台的管理人员和应用程序的开发人员被公司边界分开。最终的结果是,一旦应用程序出错,开发人员最容易获得的调试辅助工具是应用程序的可见输出和在执行过程中收集的任何日志文件。在本文中,我们提出了任务图的概念作为表示分布式执行的基础,并提出了一种从事件日志文件中推断任务图的低开销算法。直观地说,任务代表线程内的一个自治的计算段。任务之间的边界表示它们之间的交互,并保留了程序员对数据和控制流的概念。我们的技术在可用的情况下利用现有的日志支持,或者使用基于方面的插装对其进行扩充,以收集一组预定义类型的事件。我们展示了任务图如何在面向请求的现场软件分析中提高异常检测的精度,并帮助程序员了解Hadoop分布式文件系统(HDFS)的运行情况。
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Lightweight Task Graph Inference for Distributed Applications
Recent paradigm shifts in distributed computing such as the advent of cloud computing pose new challenges to the analysis of distributed executions. One important new characteristic is that the management staff of computing platforms and the developers of applications are separated by corporate boundaries. The net result is that once applications go wrong, the most readily available debugging aids for developers are the visible output of the application and any log files collected during their execution. In this paper, we propose the concept of task graphs as a foundation to represent distributed executions, and present a low overhead algorithm to infer task graphs from event log files. Intuitively, a task represents an autonomous segment of computation inside a thread. Edges between tasks represent their interactions and preserve programmers’ notion of data and control flows. Our technique leverages existing logging support where available or otherwise augments it with aspect-based instrumentation to collect events of a set of predefined types. We show how task graphs can improve the precision of anomaly detection in a request-oriented analysis of field software and help programmers understand the running of the Hadoop Distributed File System (HDFS).
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