FASE: A Fast, Accurate and Seamless Emulator for Custom Numerical Formats

John Osorio Ríos, Adrià Armejach, E. Petit, G. Henry, Marc Casas
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引用次数: 1

Abstract

Deep Neural Networks (DNNs) have become ubiquitous in a wide range of application domains. Despite their success, training DNNs is an expensive task that has motivated the use of reduced numerical precision formats to improve performance and reduce power consumption. Emulation techniques are a good fit to understand the properties of new numerical formats on a particular workload. However, current SoA techniques are not able to perform these tasks quickly and accurately on a wide variety of workloads.We propose FASE, a Fast, Accurate, and Seamless Emulator that leverages dynamic binary translation to enable emulation of custom numerical formats. FASE is fast: allowing emulation of large unmodified workloads; accurate: emulating at the instruction operand level; and seamless: as it does not require any code modifications and works on any application or DNN framework without any language, compiler, or source code access restrictions.
FASE:一个快速,准确和无缝的自定义数字格式模拟器
深度神经网络(dnn)在广泛的应用领域中无处不在。尽管它们取得了成功,但训练dnn是一项昂贵的任务,这促使人们使用降低数值精度的格式来提高性能并降低功耗。仿真技术非常适合理解特定工作负载上新数字格式的属性。然而,当前的SoA技术无法在各种工作负载上快速、准确地执行这些任务。我们提出FASE,一个快速,准确和无缝的模拟器,利用动态二进制转换来实现自定义数字格式的仿真。FASE速度快:允许模拟大型未修改的工作负载;准确:在指令操作数层面进行仿真;无缝:因为它不需要任何代码修改,可以在任何应用程序或DNN框架上工作,没有任何语言,编译器或源代码访问限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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