AutoScaleDSE:用于高级综合的可扩展设计空间探索引擎

IF 3.1 4区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE ACM Transactions on Reconfigurable Technology and Systems Pub Date : 2023-02-15 DOI:10.1145/3572959
Hyegang Jun, Hanchen Ye, Hyunmin Jeong, Deming Chen
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引用次数: 4

摘要

高级综合(HLS)使用户能够从设计的行为描述中快速开发针对FPGA的设计。然而,为了合成能够更好地利用目标FPGA的最佳设计,需要付出相当大的努力来将初始行为描述转换为能够捕获所需并行水平的形式。因此,需要一种能够优化大型复杂设计的设计空间探索(DSE)引擎来实现这一目标。我们提出了一种新的DSE引擎,它能够考虑代码转换、编译器指令(pragma)以及这些优化的兼容性。为了实现这一点,我们最初将输入代码的结构表示为图,以指导探索过程。为了适当地转换代码,我们利用了基于多级编译器基础设施(MLIR)的ScaleHLS。最后,我们发现了限制现有DSE可扩展性的问题,我们将其命名为“设计空间合并问题”。我们通过使用随机森林分类器来解决这个问题,该分类器可以成功地减少无效设计点的数量,而无需调用HLS编译器作为验证工具。我们将DSE引擎与ScaleHLS DSE进行了对比评估,最大性能超过了它59倍。此外,我们还通过将DSE应用于大规模HLS设计,展示了我们设计的可扩展性,为MachSuite和Rodinia集合中的基准实现了12倍的最大加速。
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AutoScaleDSE: A Scalable Design Space Exploration Engine for High-Level Synthesis
High-Level Synthesis (HLS) has enabled users to rapidly develop designs targeted for FPGAs from the behavioral description of the design. However, to synthesize an optimal design capable of taking better advantage of the target FPGA, a considerable amount of effort is needed to transform the initial behavioral description into a form that can capture the desired level of parallelism. Thus, a design space exploration (DSE) engine capable of optimizing large complex designs is needed to achieve this goal. We present a new DSE engine capable of considering code transformation, compiler directives (pragmas), and the compatibility of these optimizations. To accomplish this, we initially express the structure of the input code as a graph to guide the exploration process. To appropriately transform the code, we take advantage of ScaleHLS based on the multi-level compiler infrastructure (MLIR). Finally, we identify problems that limit the scalability of existing DSEs, which we name the “design space merging problem.” We address this issue by employing a Random Forest classifier that can successfully decrease the number of invalid design points without invoking the HLS compiler as a validation tool. We evaluated our DSE engine against the ScaleHLS DSE, outperforming it by a maximum of 59×. We additionally demonstrate the scalability of our design by applying our DSE to large-scale HLS designs, achieving a maximum speedup of 12× for the benchmarks in the MachSuite and Rodinia set.
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来源期刊
ACM Transactions on Reconfigurable Technology and Systems
ACM Transactions on Reconfigurable Technology and Systems COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-
CiteScore
4.90
自引率
8.70%
发文量
79
审稿时长
>12 weeks
期刊介绍: TRETS is the top journal focusing on research in, on, and with reconfigurable systems and on their underlying technology. The scope, rationale, and coverage by other journals are often limited to particular aspects of reconfigurable technology or reconfigurable systems. TRETS is a journal that covers reconfigurability in its own right. Topics that would be appropriate for TRETS would include all levels of reconfigurable system abstractions and all aspects of reconfigurable technology including platforms, programming environments and application successes that support these systems for computing or other applications. -The board and systems architectures of a reconfigurable platform. -Programming environments of reconfigurable systems, especially those designed for use with reconfigurable systems that will lead to increased programmer productivity. -Languages and compilers for reconfigurable systems. -Logic synthesis and related tools, as they relate to reconfigurable systems. -Applications on which success can be demonstrated. The underlying technology from which reconfigurable systems are developed. (Currently this technology is that of FPGAs, but research on the nature and use of follow-on technologies is appropriate for TRETS.) In considering whether a paper is suitable for TRETS, the foremost question should be whether reconfigurability has been essential to success. Topics such as architecture, programming languages, compilers, and environments, logic synthesis, and high performance applications are all suitable if the context is appropriate. For example, an architecture for an embedded application that happens to use FPGAs is not necessarily suitable for TRETS, but an architecture using FPGAs for which the reconfigurability of the FPGAs is an inherent part of the specifications (perhaps due to a need for re-use on multiple applications) would be appropriate for TRETS.
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