芯片多处理器的编译器辅助数据分发

Yong Li, Ahmed Abousamra, R. Melhem, A. Jones
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引用次数: 48

摘要

数据访问延迟是芯片多处理器性能的一个限制因素,在分布式缓存银行的非统一缓存架构中,随着内核数量的增加,数据访问延迟会显著增加。为了减轻这种影响,有必要利用数据访问局部性并选择最佳数据放置位置。当需要考虑缓存容量、一致性消息和运行时开销等其他约束时,实现这一点尤其具有挑战性。本文提出了一种基于编译器的方法来分析多线程应用程序中的数据访问行为。提出的实验性编译器框架采用新颖的编译技术来发现和表示多线程内存访问模式(mmap)。在运行时,符号mmap被解析并由分区算法使用,以便在分析的应用程序中的分叉线程中选择已分配内存块的分区。该分区用于通过将数据与执行拥有数据的线程的核心关联来强制数据所有权。我们将演示如何在实验架构中使用这些信息来加速应用程序。特别是,我们的编译器辅助方法比共享缓存加速20%,比最接近的运行时近似(“第一次接触”)加速5%。
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Compiler-assisted data distribution for chip multiprocessors
Data access latency, a limiting factor in the performance of chip multiprocessors, grows significantly with the number of cores in non-uniform cache architectures with distributed cache banks. To mitigate this effect, it is necessary to leverage the data access locality and choose an optimum data placement. Achieving this is especially challenging when other constraints such as cache capacity, coherence messages and runtime overhead need to be considered. This paper presents a compiler-based approach used for analyzing data access behavior in multi-threaded applications. The proposed experimental compiler framework employs novel compilation techniques to discover and represent multi-threaded memory access patterns (MMAPs). At run time, symbolic MMAPs are resolved and used by a partitioning algorithm to choose a partition of allocated memory blocks among the forked threads in the analyzed application. This partition is used to enforce data ownership by associating the data with the core that executes the thread owning the data. We demonstrate how this information can be used in an experimental architecture to accelerate applications. In particular, our compiler assisted approach shows a 20% speedup over shared caching and 5% speedup over the closest runtime approximation, “first touch”.
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