迈向 3D AI 硬件:用于异构系统集成和人工智能系统的三维堆栈的细粒度硬件特性分析

Eren Kurshan, Paul Franzon
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引用次数: 0

摘要

三维集成在提高系统性能和效率方面具有关键优势,可满足 "规模末期 "时代的需求。此外,人工智能对更高计算能力、更大 GPU 缓存容量、能效和低功耗定制人工智能硬件集成的需求都是三维集成的驱动力。尽管 3D 的优势(如增强的互联性和更高的性能)已通过众多技术网站得到证实,但异构 3D 系统设计仍存在许多未解之谜。其中最主要的挑战是系统组件之间复杂的交互模式所导致的温度和寿命可靠性问题。目前的建模工具难以对这种相互作用进行建模,需要进行详细的硬件表征。本研究介绍了三维集成的最新驱动力以及由此产生的对硬件仿真框架的需求。然后,它介绍了一种用于功率、温度、噪声、层间带宽和寿命可靠性特征描述的设计,可以模拟各种堆叠替代方案。该框架允许在宏观层面控制活动水平,同时采用定制的传感器基础设施来描述热传播、层间噪声、功率传输、可靠性和互连性,以及关键设计目标之间的相互作用。
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Towards 3D AI Hardware: Fine-Grain Hardware Characterization of 3D Stacks for Heterogeneous System Integration & AI Systems
3D integration offers key advantages in improving system performance and efficiency for the End-of-Scaling era. It enables the incorporation of heterogeneous system components and disparate technologies, eliminates off-chip communication constraints, reduces on-chip latency and total power dissipation. Moreover, AIs demand for increased computational power, larger GPU cache capacity, energy efficiency and low power custom AI hardware integration all serve as drivers for 3D integration. Although 3D advantages such as enhanced interconnectivity and increased performance have been demonstrated through numerous technology sites, heterogeneous 3D system design raises numerous unanswered questions. Among the primary challenges are the temperature and lifetime reliability issues caused by the complex interaction patterns among system components. Such interactions are harder to model with current modeling tools and require detailed hardware characterization. This study presents the latest drivers for 3D integration and the resulting need for hardware emulation frameworks. It then presents a design to profile power, temperature, noise, inter-layer bandwidth and lifetime reliability characterization that can emulate a wide range of stacking alternatives. This framework allows for controlling activity levels at the macro-level, along with customized sensor infrastructure to characterize heat propagation, inter-layer noise, power delivery, reliability and inter-connectivity as well as the interactions among critical design objectives.
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