RaceTrack:通过自适应跟踪有效检测数据竞赛条件

Yuan Yu, T. Rodeheffer, Wei Chen
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引用次数: 414

摘要

多线程程序中由于数据竞争而导致的bug通常表现出不确定性症状,并且非常难以发现。本文描述了RaceTrack,一个动态的比赛检测工具,它可以跟踪程序的动作,并在观察到可疑的活动模式时报告警告。RaceTrack采用一种新颖的混合检测算法,并采用自适应方法,自动将更多的精力引导到更可疑的区域,从而以更少的开销提供更准确的警告。后处理步骤将警告关联起来,并根据代码段在潜在数据竞争中的牵连程度对它们进行排序。我们在Microsoft的公共语言运行时(产品版本v1.1.4322)的虚拟机中实现了RaceTrack,并直接监控了几个主要的、现实世界中的应用程序,而无需进行任何修改。自适应跟踪导致内存密集型程序的减速率约为3倍,而其他程序的减速率通常远低于2倍,内存比率通常低于1.2倍。揭示了几个严重的数据竞争错误,其中一些以前不为人知。
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RaceTrack: efficient detection of data race conditions via adaptive tracking
Bugs due to data races in multithreaded programs often exhibit non-deterministic symptoms and are notoriously difficult to find. This paper describes RaceTrack, a dynamic race detection tool that tracks the actions of a program and reports a warning whenever a suspicious pattern of activity has been observed. RaceTrack uses a novel hybrid detection algorithm and employs an adaptive approach that automatically directs more effort to areas that are more suspicious, thus providing more accurate warnings for much less over-head. A post-processing step correlates warnings and ranks code segments based on how strongly they are implicated in potential data races. We implemented RaceTrack inside the virtual machine of Microsoft's Common Language Runtime (product version v1.1.4322) and monitored several major, real-world applications directly out-of-the-box,without any modification. Adaptive tracking resulted in a slowdown ratio of about 3x on memory-intensive programs and typically much less than 2x on other programs,and a memory ratio of typically less than 1.2x. Several serious data race bugs were revealed, some previously unknown.
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