Chiplet Heterogeneous-Integration AI Processor

Youngsu Kwon, Jinho Han, Yongcheol Peter Cho, Juyeob Kim, Jaehoon Chung, Jaewoong Choi, Sujin Park, Igyeong Kim, Hyunjeong Kwon, Jinkyu Kim, Hyun-Mi Kim, Won Jeon, Youngdeuk Jeon, Minhyung Cho, Minseok Choi
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Abstract

The scale of neural networks for Artificial Intelligence is ever increasing to achieve human-level intelligence. The era of data explosion computing is evolving with the advent of the huge AI network operating on huge amount of data including parameters, images, sentences, and etc. Designing AI processor which is the computational foundation of the data explosion computing is facing physical limitation of semiconductors as well as skyrocketing cost. The chiplet processor integrating multiple dies into a single chip is a viable solution to deal with AI processors for data explosion computing. The chiplet-based design compared to IP-based design provides much higher performance with lower cost. In this paper, we present design aspects of chiplet AI processor including the architecture design for incorporating NPU chiplets, HBM chiplets, and 2.5D interposers, signal integrity for high-speed interconnections on the interposer, PDN for chiplets, chiplet-bonding reliability, thermal stability, and chiplet link for inter-chiplet data transfer on heterogeneous integration architecture.
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芯片异构集成AI处理器
人工智能的神经网络规模不断扩大,以达到人类的智能水平。随着庞大的人工智能网络的出现,包括参数、图像、句子等海量数据的运行,数据爆炸计算时代正在发展。作为数据爆炸计算的计算基础,人工智能处理器的设计面临着半导体的物理限制和成本的飞涨。将多个芯片集成到一个芯片上的芯片处理器是应对人工智能处理器数据爆炸计算的可行解决方案。与基于ip的设计相比,基于芯片的设计提供了更高的性能和更低的成本。在本文中,我们介绍了芯片AI处理器的设计方面,包括集成NPU芯片、HBM芯片和2.5D中间层的架构设计,中间层上高速互连的信号完整性,小芯片的PDN,芯片绑定可靠性,热稳定性以及在异构集成架构上用于芯片间数据传输的芯片链路。
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