smt感知的瞬时内存占用优化

Probir Roy, Xu Liu, S. Song
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引用次数: 1

摘要

现代体系结构使用同步多线程(SMT)来增加线程级别的并行性。SMT线程共享许多功能单元和物理核心的整个内存层次结构。如果没有仔细的代码设计,SMT线程很容易相互争夺这些共享资源,从而导致严重的性能下降。对于运行在专用平台上的HPC应用程序,最小化SMT线程争用是非常具有挑战性的,因为它们通常会在单程序多数据(SPMD)模型中产生线程。由于这些线程具有相似的资源需求,因此无法通过简单的线程调度轻松缓解它们的争用。为了解决这一重要问题,我们首先对三种主流SMT架构上具有代表性的HPC和CMP应用进行了广泛的系统性能评估,并量化了它们对SMT效应的性能敏感性。然后,我们介绍了一个简单的SMT感知代码优化方案,旨在减少SMT线程之间的内存争用。最后,我们开发了一个名为SMTAnalyzer的轻量级性能工具,以有效地识别多线程程序源代码中的优化机会。在三种SMT架构(即Intel Xeon、IBM POWER7和Intel Xeon Phi)上的实验表明,我们提出的SMT感知优化方案可以显着提高一般HPC应用程序的性能。
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SMT-Aware Instantaneous Footprint Optimization
Modern architectures employ simultaneous multithreading (SMT) to increase thread-level parallelism. SMT threads share many functional units and the entire memory hierarchy of a physical core. Without a careful code design, SMT threads can easily contend with each other for these shared resources, causing severe performance degradation. Minimizing SMT thread contention for HPC applications running on dedicated platforms is very challenging because they typically spawn threads within Single Program Multiple Data (SPMD) models. Since these threads have similar resource requirements, their contention cannot be easily mitigated through simple thread scheduling. To address this important issue, we first vigorously conduct a systematic performance evaluation on a wide-range of representative HPC and CMP applications on three mainstream SMT architectures, and quantify their performance sensitivity to SMT effects. Then we introduce a simple scheme for SMT-aware code optimization which aims to reduce the memory contention across SMT threads. Finally, we develop a lightweight performance tool, named SMTAnalyzer, to effectively identify the optimization opportunities in the source code of multithreaded programs. Experiments on three SMT architectures (i.e., Intel Xeon, IBM POWER7, and Intel Xeon Phi) demonstrate that our proposed SMT-aware optimization scheme can significantly improve the performance for general HPC applications.
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