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An Application-Specific VLIW Processor with Vector Instruction Set for CNN Acceleration

机译:具有矢量指令集的特定于应用程序的VLIW处理器,用于CNN加速度

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In recent years, neural networks have surpassed classical algorithms in areas such as object recognition, e.g. in the well-known ImageNet challenge. As a result, great effort is being put into developing fast and efficient accelerators, especially for Convolutional Neural Networks (CNNs). In this work we present ConvAix, a fully C-programmable processor, which - contrary to many existing architectures - does not rely on a hard-wired array of multiply-and-accumulate (MAC) units. Instead it maps computations onto independent vector lanes making use of a carefully designed vector instruction set. The presented processor is targeted towards latency-sensitive applications and is capable of executing up to 192 MAC operations per cycle. ConvAix operates at a target clock frequency of 400 MHz in 28nm CMOS, thereby offering state-of-the-art performance with proper flexibility within its target domain. Simulation results for several 2D convolutional layers from well known CNNs (AlexNet, VGG-16) show an average ALU utilization of 72.5% using vector instructions with 16 bit fixed-point arithmetic. Compared to other well-known designs which are less flexible, ConvAix offers competitive energy efficiency of up to 497 GOP/s/W while even surpassing them in terms of area efficiency and processing speed.
机译:近年来,神经网络在诸如物体识别等领域的古典算法超越了古典算法,例如,在众所周知的想象成挑战中。因此,巨大的努力正在进行快速高效的加速器,特别是对于卷积神经网络(CNNS)。在这项工作中,我们展示了一个完全C可编程处理器的Convaix,它 - 与许多现有的架构相反 - 不依赖于乘法和累积(MAC)单元的硬连线阵列。相反,它将计算映射到独立的向量车道上,利用精心设计的矢量指令集。所呈现的处理器针对延迟敏感的应用程序,并且能够每周期执行高达192个MAC操作。 Convaix在28nm CMOS中以400 MHz的目标时钟频率运行,从而为其目标域内提供了最先进的性能,具有适当的灵活性。来自已知CNNS(亚历纳特,VGG-16)的几个2D卷积层的仿真结果显示使用具有16位定点算术的矢量指令的平均ALU利用率为72.5%。与其他众所周知的设计相比,不太灵活,Convaix提供高达497个GOP / S / W的竞争能效,甚至在面积效率和加工速度方面超越了它们。

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