Scalable Transformer Network-based Reinforcement Learning Method for PSIJ Optimization in HBM

Hyunwook Park, Taein Shin, Seongguk Kim, Daehwan Lho, Boogyo Sim, Jinwook Song, Kyubong Kong, Joungho Kim
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引用次数: 1

Abstract

In this paper, we first propose a scalable transformer network-based reinforcement learning (RL) method for power supply induced jitter (PSIJ) optimization in high bandwidth memory (HBM). The proposed method can provide an optimal power distribution network (PDN) decoupling capacitor (decap) design to satisfy the target PSIJ with the minimum number of NMOS decaps. For the given number of decaps, the network is trained to maximize the impedance reduction from 10 MHz to 20 GHz compared to the initial PDN. Also, the network has scalability on the number of decap assignments. Therefore, for given any number of decaps, the scalable network can provide minimized PDN impedance profiles by one inference without re-training. Then, by increasing the decap assignments, the network can find out the minimum number to meet the given target PSIJ. For verification, the proposed network is applied to the HBM2 I/O interface. The network successfully provides the optimized decap designs to satisfy the given target PSIJ values.
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基于可扩展变压器网络的HBM PSIJ优化强化学习方法
在本文中,我们首先提出了一种基于可扩展变压器网络的强化学习(RL)方法,用于高带宽存储器(HBM)中的电源诱发抖动(PSIJ)优化。该方法可以提供最优的配电网络去耦电容(decap)设计,以最小的NMOS decap数满足目标PSIJ。对于给定数量的decaps,与初始PDN相比,网络被训练以最大限度地将阻抗从10 MHz降低到20 GHz。此外,网络在decap分配的数量上具有可伸缩性。因此,对于给定的任意数目的decaps,可扩展网络可以提供最小的PDN阻抗曲线,而无需重新训练。然后,通过增加decap分配,网络可以找出满足给定目标PSIJ的最小数目。为了验证,将所提出的网络应用于HBM2 I/O接口。该网络成功地提供了满足给定目标PSIJ值的优化封装设计。
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