基树数据结构的平台感知动态数据类型细化方法

Thomas Papastergiou, Lazaros Papadopoulos, D. Soudris
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引用次数: 3

摘要

现代嵌入式系统现在能够执行复杂且要求苛刻的应用程序,这些应用程序通常基于大型数据结构。应用程序关键数据结构的设计直接影响到整个系统的性能和内存需求。动态数据结构细化方法提供了基于应用程序的特性和访问模式的优化,主要针对列表和数组数据结构。在这项工作中,我们扩展了该方法的各个方面:首先,我们集成了基树优化。然后,我们提供了一组平台感知的数据结构实现,用于基于硬件特性执行优化。我们使用一系列广泛的综合基准和真实世界的基准来评估扩展的方法,在这些基准中,我们实现了高达29.6%的性能和内存折衷。此外,以前的方法无法实现的帕累托最优数据结构实现与扩展的方法一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Platform-aware dynamic data type refinement methodology for radix tree Data Structures
Modern embedded systems are now capable of executing complex and demanding applications that are often based on large data structures. The design of the critical data structures of the application affects the performance and the memory requirements of the whole system. Dynamic Data Structure Refinement methodology provides optimizations, mainly in list and array data structures, which are based on the application's features and access patterns. In this work, we extend various aspects of the methodology: First, we integrate radix tree optimizations. Then, we provide a set of platform-aware data structure implementations, for performing optimizations based on the hardware features. The extended methodology is evaluated using a wide set of synthetic and real-world benchmarks, in which we achieved performance and memory trade-offs up to 29.6%. Additionally, Pareto optimal data structure implementations that were not available by the previous methodology, are identified with the extended one.
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