FLOWER:用于高级合成的综合数据流编译器

Puya Amiri, Arsène Pérard-Gayot, Richard Membarth, P. Slusallek, Roland Leißa, Sebastian Hack
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引用次数: 2

摘要

fpga已经作为加速卡进入数据中心,使可重构计算更容易用于高性能应用。与此同时,新的高级合成编译器(如Xilinx Vitis)和运行时库(如XRT)吸引软件程序员进入可重构领域。虽然软件程序员熟悉任务级和数据并行编程,但fpga通常需要不同类型的并行性。例如,为了获得令人满意的流水线数据流架构硬件设计,数据驱动的并行性是必需的。然而,软件程序员通常不熟悉数据流架构,这导致了糟糕的硬件设计。在这项工作中,我们介绍了FLOWER,这是一个全面的编译器基础设施,它为来自特定领域库的高级合成提供了自动规范转换。这使得程序员可以专注于算法实现,而不是数据流架构的底层优化。我们表明,FLOWER可以在图像处理和计算机视觉的背景下,为针对片上系统和FPGA加速卡的高性能流应用程序合成有效的实现。
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FLOWER: A comprehensive dataflow compiler for high-level synthesis
FPGAs have found their way into data centers as accelerator cards, making reconfigurable computing more accessible for high-performance applications. At the same time, new high-level synthesis compilers like Xilinx Vitis and runtime libraries such as XRT attract software programmers into the reconfigurable domain. While software programmers are familiar with task-level and data-parallel programming, FPGAs often require different types of parallelism. For example, data-driven parallelism is mandatory to obtain satisfactory hardware designs for pipelined dataflow architectures. However, software programmers are often not acquainted with dataflow architectures— resulting in poor hardware designs. In this work we present FLOWER, a comprehensive compiler infrastructure that provides automatic canonical transformations for high-level synthesis from a domain-specific library. This allows programmers to focus on algorithm implementations rather than low-level optimizations for dataflow architectures. We show that FLOWER allows to synthesize efficient implementations for high-performance streaming applications targeting System-on-Chip and FPGA accelerator cards, in the context of image processing and computer vision.
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