基于先验特征空间划分的决策森林高性能灵活FPGA推理加速器

Thiem Van Chu, Ryuichi Kitajima, Kazushi Kawamura, Jaehoon Yu, M. Motomura
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引用次数: 2

摘要

最近的研究已经证明了fpga在加速决策森林(DFs)推理计算方面的潜力。然而,设计一个足够灵活的高性能架构以适应FPGA资源需求的各种场景仍然是一个挑战。为了解决这个问题,我们提出了一种DF推理方法,该方法将遍历树转换为遍历特征空间。具体来说,作为预处理步骤,我们基于阈值将每个特征空间划分为多个区域。然后通过(1)确定数据点在每个特征空间中属于哪个区域以及(2)结合这些区域中的推理信息来进行输入数据点的推理任务。计算的规律性允许我们设计DF推理架构,称为FT-DFP(特征空间遍历决策森林处理器),可以灵活地配置不同的性能和FPGA资源使用要求。我们在低端FPGA (Artix-7)板上对FT-DFP进行了原型设计,并使用四个实际数据集对其进行了评估。评估结果表明:(1)FT-DFP的灵活性使我们能够在资源有限的低端FPGA器件中适应各种DF模型;(2) FT-DFP的性能与目前在高端FPGA器件上实现的最佳加速器相当,比在高端GPU上运行的最先进的GPU优化实现Hummingbird高3.04倍;(3) FT-DFP比Hummingbird节能130.96倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A High-Performance and Flexible FPGA Inference Accelerator for Decision Forests Based on Prior Feature Space Partitioning
Recent studies have demonstrated the potential of FPGAs for accelerating the inference computation of decision forests (DFs). However, designing a high-performance architecture that is flexible enough to be adopted in various scenarios of FPGA resource requirements remains a challenge. To address this, we propose a DF inference method that makes a transformation from traversing trees into traversing feature spaces. Specifically, as a preprocessing step, we partition each feature space into multiple regions based on thresholds. The inference task for an input data point is then conducted by (1) determining which region in each feature space the data point belongs to and (2) combining the inference information in these regions. The regularity of the computation allows us to design a DF inference architecture, called FT-DFP (Feature-space Traversing Decision Forest Processor), that can be flexibly configured for different performance and FPGA resource usage requirements. We prototype FT-DFP on a low-end FPGA (Artix-7) board and evaluate it using four real-world datasets. The evaluation results show that (1) the flexibility of FT-DFP allows us to fit a wide variety of DF models into low-end FPGA devices with limited resources; (2) FT-DFP's performance is comparable to the best of existing accelerators implemented on high-end FPGA devices and 3.04 × higher than Hummingbird, a state-of-the-art GPU-optimized implementation, running on a high-end GPU; and (3) FT-DFP is 130.96 × more energy-efficient than Hummingbird.
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