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A FeRAM based Volatile/Non-volatile Dual-mode Buffer Memory for Deep Neural Network Training

机译:用于深度神经网络训练的FERAM基于挥发性/非易失性的双模缓冲存储器

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Deep neural network (DNN) training produces a large amount of intermediate data. As off-chip DRAM access is both energy and time consuming, sufficient on-chip buffer is preferred to achieve high energy efficiency for DNN accelerator designs. However, the low integration density and high leakage current of SRAM lead to large area cost and high standby power. The frequent refresh of embedded DRAM (eDRAM) degrades the energy efficiency due to its short refresh interval (40~100µs). In this paper, a dual-mode buffer memory that can operate in both volatile eDRAM mode and non-volatile ferroelectric RAM (FeRAM) mode is proposed, which is based on the CMOS compatible HfZr02 material. The functionality of the proposed dual-mode memory design is verified using SPICE simulation with the multi-domain Preisach model. A data lifetime-aware memory mode configuration protocol is proposed to optimize the buffer access energy. The architectural benchmark for DNN training shows 33.8%, 17.1 % and 109.4% higher energy efficiency than baseline designs with eDRAM, FeRAM and SRAM with the same buffer area, respectively. The chip standby power is reduced by 26.8x~47.5x and 1.5x~10.6x compared with the SRAM and eDRAM baselines. The chip area overhead of the dual-mode buffer design is 5.7%.
机译:深度神经网络(DNN)培训产生大量的中间数据。由于片芯片DRAM接入既有能量和耗时,则优于芯片上的片上缓冲器,以实现DNN加速器设计的高能量效率。然而,SRAM的低积分密度和高漏电流导致大面积成本和高待机功率。由于其短刷新间隔(40〜100μs),嵌入式DRAM(EDRAM)的频繁刷新会降低了能量效率。在本文中,提出了一种可以在易失性Edram模式和非易失性铁电ram(FERAM)模式中操作的双模缓冲存储器,其基于CMOS兼容的HFZR02材料。使用多域Preisach模型的Spice仿真验证了所提出的双模存储器设计的功能。提出了数据寿命感知内存模式配置协议以优化缓冲区访问能量。 DNN培训的建筑基准显示出33.8%,能量效率高于基线设计,分别具有相同的缓冲区的基线设计。与SRAM和EDRAM基线相比,芯片待机电源减少了26.8x〜47.5x和1.5x〜10.6x。双模缓冲器设计的芯片面积开销是5.7

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