PipeArch

Kaan Kara, G. Alonso
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引用次数: 1

Abstract

Data processing systems based on FPGAs offer high performance and energy efficiency for a variety of applications. However, these advantages are achieved through highly specialized designs. The high degree of specialization leads to accelerators with narrow functionality and designs adhering to a rigid execution flow. For multi-tenant systems this limits the scope of applicability of FPGA-based accelerators, because, first, supporting a single operation is unlikely to have any significant impact on the overall performance of the system, and, second, serving multiple users satisfactorily is difficult due to simplistic scheduling policies enforced when using the accelerator. Standard operating system and database management system features that would help address these limitations, such as context-switching, preemptive scheduling, and thread migration are practically non-existent in current FPGA accelerator efforts. In this work, we propose PipeArch, an open-source project1 for developing FPGA-based accelerators that combine the high efficiency of specialized hardware designs with the generality and functionality known from conventional CPU threads. PipeArch provides programmability and extensibility in the accelerator without losing the advantages of SIMD-parallelism and deep pipelining. PipeArch supports context-switching and thread migration, thereby enabling for the first time new capabilities such as preemptive scheduling in FPGA accelerators within a high-performance data processing setting. We have used PipeArch to implement a variety of machine learning methods for generalized linear model training and recommender systems showing empirically their advantages over a high-end CPU and even over fully specialized FPGA designs.
PipeArch
基于fpga的数据处理系统为各种应用提供高性能和高能效。然而,这些优势是通过高度专业化的设计实现的。高度的专门化导致功能狭窄的加速器和遵循严格执行流程的设计。对于多租户系统,这限制了基于fpga的加速器的适用范围,因为,首先,支持单个操作不太可能对系统的整体性能产生任何重大影响,其次,由于使用加速器时执行的调度策略过于简单,因此很难满意地为多个用户服务。有助于解决这些限制的标准操作系统和数据库管理系统特性,如上下文切换、抢占式调度和线程迁移,在当前的FPGA加速器工作中实际上是不存在的。在这项工作中,我们提出了PipeArch,这是一个开发基于fpga的加速器的开源项目1,它将专业硬件设计的高效率与传统CPU线程的通用性和功能性相结合。PipeArch在加速器中提供了可编程性和可扩展性,同时又不失simd并行性和深度管道化的优势。PipeArch支持上下文切换和线程迁移,从而首次在高性能数据处理设置中实现FPGA加速器中的抢占式调度等新功能。我们已经使用PipeArch实现了各种用于广义线性模型训练和推荐系统的机器学习方法,从经验上看,它们比高端CPU甚至完全专业的FPGA设计更有优势。
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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