使用硬件性能计数器的需求驱动软件竞态检测

J. Greathouse, Zhiqiang Ma, M. Frank, R. Peri, T. Austin
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引用次数: 43

摘要

动态数据竞争检测器是创建健壮并行程序的重要机制。软件竞争检测器检测被测程序,观察每次内存访问,并监视可能导致并发错误的线程间数据共享。虽然这种寻找bug的方法可以找到通常很难观察到的种族,但它也有很高的运行时开销。商用赛跑检测器经历300倍的减速并不罕见,这限制了它们的使用。本文提出了一种硬件辅助的需求驱动竞赛检测器。通过利用现代商业微处理器上可用的硬件,我们能够观察到指示线程之间数据共享的缓存事件。我们使用它们来构建一个竞争检测器,该检测器仅在可能发生线程间数据共享时启用。当很少发生共享时,这种需求驱动的分析比当前的连续分析工具要快得多,而不会大大降低检测精度。我们修改了Intel®Inspector XE中的竞赛检测器,以利用我们基于硬件的共享指示器,并且能够在两个并行基准套件中实现3倍和10倍的性能提升,并在一个特定程序中实现51倍的性能提升。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Demand-driven software race detection using hardware performance counters
Dynamic data race detectors are an important mechanism for creating robust parallel programs. Software race detectors instrument the program under test, observe each memory access, and watch for inter-thread data sharing that could lead to concurrency errors. While this method of bug hunting can find races that are normally difficult to observe, it also suffers from high runtime overheads. It is not uncommon for commercial race detectors to experience 300× slowdowns, limiting their usage. This paper presents a hardware-assisted demand-driven race detector. We are able to observe cache events that are indicative of data sharing between threads by taking advantage of hardware available on modern commercial microprocessors. We use these to build a race detector that is only enabled when it is likely that inter-thread data sharing is occurring. When little sharing takes place, this demand-driven analysis is much faster than contemporary continuous-analysis tools without a large loss of detection accuracy. We modified the race detector in Intel® Inspector XE to utilize our hardware-based sharing indicator and were able to achieve performance increases of 3× and 10× in two parallel benchmark suites and 51× for one particular program.
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