基于紧凑铁电场效应晶体管内容可寻址存储器的节能数据搜索设计与优化

Jiahao Cai, M. Imani, K. Ni, Grace Li Zhang, Bing Li, Ulf Schlichtmann, Cheng Zhuo, Xunzhao Yin
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引用次数: 3

摘要

内容寻址存储器(CAM)由于具有高度并行的模式匹配能力,被广泛用于高级机器学习模型和数据密集型应用中的关联搜索任务。大多数最先进的CAM设计都致力于通过利用非易失性存储器(NVMs)来减小CAM单元面积。对于优化基于NVM的cam的设计和能效,以便在边缘设备和人工智能硬件中实际部署,目前的研究很少。在本文中,我们提出了一种通用的紧凑节能的CAM设计方案,该方案通过在单元中仅使用一个NVM设备来减轻设计开销。我们还提出了一种自适应匹配线(ML)预充放电方案,通过充分减小ML电压摆动进一步优化搜索能量。我们将铁电场效应晶体管(fefet)作为NVM的代表,并提出了一个2T-1FeFET CAM阵列,其中包括一个实现所提出的ML方案的感测放大器。评估结果表明,与CMOS/ReRAM/STT-MRAM/2FeFET CAM阵列相比,我们提出的2T-1FeFET CAM阵列的能量效率提高了6.64×/4.74×/9.14×/3.02×。基准测试结果表明,在加速查询处理应用中,我们的方法比2T-2R/2FeFET CAM提供了3.3倍/2.1倍的能量延迟产品改进。
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Energy efficient data search design and optimization based on a compact ferroelectric FET content addressable memory
Content Addressable Memory (CAM) is widely used for associative search tasks in advanced machine learning models and data-intensive applications due to the highly parallel pattern matching capability. Most state-of-the-art CAM designs focus on reducing the CAM cell area by exploiting the nonvolatile memories (NVMs). There exists only little research on optimizing the design and energy efficiency of NVM based CAMs for practical deployment in edge devices and AI hardware. In this paper, we propose a general compact and energy efficient CAM design scheme that alleviates the design overhead by employing just one NVM device in the cell. We also propose an adaptive matchline (ML) precharge and discharge scheme that further optimizes the search energy by fully reducing the ML voltage swing. We consider Ferroelectric field effect transistors (FeFETs) as the representative NVM, and present a 2T-1FeFET CAM array including a sense amplifier implementing the proposed ML scheme. Evaluation results suggest that our proposed 2T-1FeFET CAM design achieves 6.64×/4.74×/9.14×/3.02× better energy efficiency compared with CMOS/ReRAM/STT-MRAM/2FeFET CAM arrays. Benchmarking results show that our approach provides 3.3×/2.1× energy-delay product improvement over the 2T-2R/2FeFET CAM in accelerating query processing applications.
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