可扩展通信跟踪压缩

S. Krishnamoorthy, Khushbu Agarwal
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引用次数: 16

摘要

通过跟踪来描述并行程序的通信行为可以帮助理解应用程序的特征,为其性能建模,并预测未来系统的行为。然而,无损通信跟踪可能会变得非常大,导致程序员求助于各种其他技术。在本文中,我们提出了一种新的无损通信跟踪压缩方法。我们对sequitur压缩算法进行了扩充,将其应用于并行程序的通信跟踪压缩。我们提供的优化可以减少内存开销,减少生成的跟踪文件的大小,并在并行程序中支持跨多个进程的压缩。评估显示,与其他方法相比,压缩得到了改善,开销也减少了,NAS MG基准测试的改进幅度高达3个数量级。我们还观察到,与现有方案不同,跟踪文件大小和所产生的内存开销对NAS基准测试的问题大小不那么敏感(如果不是独立的话)。
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Scalable Communication Trace Compression
Characterizing the communication behavior of parallel programs through tracing can help understand an application’s characteristics, model its performance, and predict behavior on future systems. However, lossless communication traces can get prohibitively large, causing programmers to resort to variety of other techniques. In this paper, we present a novel approach to lossless communication trace compression. We augment the sequitur compression algorithm to employ it in communication trace compression of parallel programs. We present optimizations to reduce the memory overhead, reduce size of the trace files generated, and enable compression across multiple processes in a parallel program. The evaluation shows improved compression and reduced overhead over other approaches, with up to 3 orders of magnitude improvement for the NAS MG benchmark. We also observe that, unlike existing schemes, the trace files sizes and the memory overhead incurred are less sensitive to, if not independent of, the problem size for the NAS benchmarks.
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