184QPS/W 64Mb/mm23D逻辑- dram混合键合推荐系统的进程-近内存引擎

Dimin Niu, Shuangchen Li, Yuhao Wang, Wei Han, Zhe Zhang, Yijin Guan, Tianchan Guan, F. Sun, Fei Xue, Lide Duan, Yuanwei Fang, Hongzhong Zheng, Xiping Jiang, Song Wang, Fengguo Zuo, Yubing Wang, Bing Yu, Qiwei Ren, Yuan Xie
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引用次数: 34

摘要

人工智能计算时代对传统计算机系统提出了重大挑战。如图29.1.1所示,虽然AI模型的计算需求每两年增加750x,但我们只观察到存储系统在容量和带宽方面的能力提高非常缓慢。有许多与内存相关的应用,如自然语言处理、推荐系统、图形分析、图形神经网络以及多任务在线推理,成为现代云数据中心中主导的人工智能应用。当前支持人工智能系统和应用的主要存储技术包括片上存储器(SRAM)、2.5D集成存储器(HBM[1])和片外存储器(DDR、LPDDR或GDDR SDRAM)。尽管与片外存储器相比,片上存储器具有较低的能量访问,但由于片外存储器访问密集且昂贵,有限的片上存储器容量阻碍了大型AI模型的有效采用。此外,片外存储器解决方案(HBM和DRAM)的数据移动能耗比片上存储器大几个数量级,这给人工智能系统带来了众所周知的“存储器墙[2]”问题。近年来,进程-近内存(PNM)和内存中计算(CIM)已成为解决“内存墙”问题的有希望的候选方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
184QPS/W 64Mb/mm23D Logic-to-DRAM Hybrid Bonding with Process-Near-Memory Engine for Recommendation System
The era of AI computing brings significant challenges to traditional computer systems. As shown in Fig. 29.1.1, while the AI model computation requirement increases 750x every two years, we only observe a very slow-paced improvement of memory system capability in terms of both capacity and bandwidth. There are many memory-bound applications, such as natural language processing, recommendation systems, graph analytics, graph neural networks, as well as multi-task online inference, that become dominating AI applications in modern cloud datacenters. Current primary memory technologies that power AI systems and applications include on-chip memory (SRAM), 2.5D integrated memory (HBM [1]), and off-chip memory (DDR, LPDDR, or GDDR SDRAM). Although on-chip memory enjoys low energy access compared to off-chip memory, limited on-chip memory capacity prevents the efficient adoption of large AI models due to intensive and costly off-chip memory access. In addition, the energy consumption of data movement of off-chip memory solutions (HBM and DRAM) is several orders of magnitude larger than that of on-chip memory, bringing the well-known “memory wall [2]“problem to AI systems. Process-near-memory (PNM) and computing-in-memory (CIM) have become promising candidates to tackle the “memory wall” problem in recent years.
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