对三维CIM系统性能的电阻性Synaptic器件的热可靠性考虑

Ankit Kaul, Yandong Luo, Xiaochen Peng, Shimeng Yu, M. Bakir
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引用次数: 2

摘要

3D异构集成(3D- hi)是一种很有前途的方法,可以在最先进的内存中计算(CIM)人工智能加速器中堆叠大量嵌入式内存。虽然嵌入式非易失性存储器,如电阻性RAM (RRAM),由于高密度、低泄漏和非破坏性读取,是SRAM/DRAM作为CIM突触器件的一个有前途的替代品,但热诱导电导漂移仍然是一个挑战。由于体积功率的增加,在高温下较低的保留率在高密度存储逻辑3D集成中更为重要,这在以前的工作中尚未研究过。这项工作的范围是量化不同3D-HI架构对用于CIM应用的3d集成双极RRAM器件可靠性的热影响。我们提出了一种设备-系统-应用级可靠性评估方法,使用该方法对3D集成架构和逻辑内存分区配置进行基准测试。在10年的时间里,使用传统的冷却方法,CIM推理精度的降低在单片3D中约为53%,而在基于硅通孔的3D堆叠中约为10%。我们证明,设备保留和CIM推理精度的长期退化可以通过更有效的冷却架构(如微流体冷却)来缓解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thermal Reliability Considerations of Resistive Synaptic Devices for 3D CIM System Performance
3D Heterogeneous integration (3D-HI) is a promising approach to stack a large amount of embedded memory required in state-of-the-art compute in-memory (CIM) AI accelerators. While embedded nonvolatile memory, such as resistive RAM (RRAM), is a promising alternative to SRAM/DRAM as a CIM synaptic device owing to high density, low leakage, and nondestructive read, thermal-induced conductance drift remains a challenge. Lower retention at higher temperatures can be more significant in dense memory-logic 3D integration due to increased volumetric power which has not been studied in prior work. The scope of this work is to quantify the thermal impact of different 3D-HI architectures on the reliability of 3D-integrated bipolar RRAM devices for CIM applications. We propose a device-system-application-level reliability evaluation methodology, using which 3D integration architectures and logic-memory partitioning configurations are benchmarked. The reduction in CIM inference accuracy at 10 years using conventional cooling was observed to be ≈53% for monolithic 3D compared to ≈10% for through-silicon via based 3D stacking. We demonstrate that long-term degradation in device retention and CIM inference accuracy can be mitigated with more efficient cooling architectures such as microfluidic cooling.
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