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DRMap: A Generic DRAM Data Mapping Policy for Energy-Efficient Processing of Convolutional Neural Networks

机译:DRMap:用于卷积神经网络节能处理的通用DRAM数据映射策略

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Many convolutional neural network (CNN) accelerators face performance- and energy-efficiency challenges which are crucial for embedded implementations, due to high DRAM access latency and energy. Recently, some DRAM architectures have been proposed to exploit subarray-level parallelism for decreasing the access latency. Towards this, we present a design space exploration methodology to study the latency and energy of different mapping policies on different DRAM architectures, and identify the pareto-optimal design choices. The results show that the energy-efficient DRAM accesses can be achieved by a mapping policy that orderly prioritizes to maximize the row buffer hits, bank- and subarray-level parallelism.
机译:许多卷积神经网络(CNN)加速器都面临着性能和能效方面的挑战,由于高DRAM访问延迟和能耗,这些挑战对于嵌入式实现至关重要。近来,已经提出了一些DRAM架构来利用子阵列级并行性以减少访问等待时间。为此,我们提出了一种设计空间探索方法,以研究不同DRAM体系结构上不同映射策略的延迟和能量,并确定最佳的设计选择。结果表明,可以通过一种映射策略来实现高能效的DRAM访问,该映射策略有序地进行优先级排序以最大化行缓冲区命中率,存储层和子阵列级并行性。

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