基于结构网格的显式数值求解高级FPGA加速器设计

Kamalavasan Kamalakkannan, G. Mudalige, I. Reguly, Suhaib A. Fahmy
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引用次数: 7

摘要

本文提出了一种用于合成基于结构化网格的模板应用的近最优FPGA实现的工作流。它利用应用程序类的关键特征及其计算通信模式和FPGA的体系结构功能来加速高性能计算应用程序的求解器。工作流的主要新特性是:(1)将标准的最先进技术与许多高增益优化(如批处理和空间阻塞/平铺)相统一,这是由现实工作负载的吞吐量增加所驱动的;(2)开发和使用预测分析模型来探索设计空间,并获得资源和性能估计。在赛灵思Alveo U280 FPGA上使用设计工作流实现了三个代表性应用,展示了近乎最佳的性能和超过85%的预测模型准确性。将这些应用程序与现代高性能计算机级gpu (Nvidia V100)上相同应用程序的同等高度优化实现进行比较,分析解决方案所需的时间、带宽和能耗。性能结果表明,与V100 GPU相当的运行时间,在FPGA上最大的非平凡应用程序节省了超过2倍的能源。我们的调查显示了与传统架构相比,在当前一代fpga上实现高性能的挑战。我们讨论了给定模板代码的决定因素,以适应FPGA实现,提供了对设计的可行性和盈利能力及其产生的性能的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Level FPGA Accelerator Design for Structured-Mesh-Based Explicit Numerical Solvers
This paper presents a workflow for synthesizing near-optimal FPGA implementations of structured-mesh based stencil applications for explicit solvers. It leverages key characteristics of the application class and its computation-communication pattern and the architectural capabilities of the FPGA to accelerate solvers for high-performance computing applications. Key new features of the workflow are (1) the unification of standard state-of-the-art techniques with a number of high-gain optimizations such as batching and spatial blocking/tiling, motivated by increasing throughput for real-world workloads and (2) the development and use of a predictive analytical model to explore the design space, and obtain resource and performance estimates. Three representative applications are implemented using the design workflow on a Xilinx Alveo U280 FPGA, demonstrating near-optimal performance and over 85% predictive model accuracy. These are compared with equivalent highly-optimized implementations of the same applications on modern HPC-grade GPUs (Nvidia V100), analyzing time to solution, bandwidth, and energy consumption. Performance results indicate comparable runtimes with the V100 GPU, with over 2× energy savings for the largest non-trivial application on the FPGA. Our investigation shows the challenges of achieving high performance on current generation FPGAs compared to traditional architectures. We discuss determinants for a given stencil code to be amenable to FPGA implementation, providing insights into the feasibility and profitability of a design and its resulting performance.
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