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PowerPlanningDL: Reliability-Aware Framework for On-Chip Power Grid Design using Deep Learning

机译:PowerPlanningDL:使用深度学习进行片上电网设计的可靠性感知框架

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摘要

With the increase in the complexity of chip designs, VLSI physical design has become a time-consuming task, which is an iterative design process. Power planning is that part of the floorplanning in VLSI physical design where power grid networks are designed in order to provide adequate power to all the underlying functional blocks. Power planning also requires multiple iterative steps to create the power grid network while satisfying the allowed worst-case IR drop and Electromigration (EM) margin. For the first time, this paper introduces Deep learning (DL)-based framework to approximately predict the initial design of the power grid network, considering different reliability constraints. The proposed framework reduces many iterative design steps and speeds up the total design cycle. Neural Network-based multi-target regression technique is used to create the DL model. Feature extraction is done, and training dataset is generated from the floorplans of some of the power grid designs extracted from IBM processor. The DL model is trained using the generated dataset. The proposed DL-based framework is validated using a new set of power grid specifications (obtained by perturbing the designs used in the training phase). The results show that the predicted power grid design is closer to the original design with minimal prediction error (~2%). The proposed DL- based approach also improves the design cycle time with a speedup of ~6x for standard power grid benchmarks.
机译:随着芯片设计复杂度的增加,VLSI物理设计已成为一项耗时的任务,这是一个迭代的设计过程。电源规划是VLSI物理设计中布局规划的一部分,在该规划中,设计了电网网络以便为所有基础功能块提供足够的电源。电源规划还需要多个迭代步骤来创建电网网络,同时满足允许的最坏情况下的IR下降和电迁移(EM)余量。本文首次引入了基于深度学习(DL)的框架,以考虑不同的可靠性约束来大致预测电网的初始设计。所提出的框架减少了许多迭代设计步骤,并加快了整个设计周期。基于神经网络的多目标回归技术用于创建DL模型。完成了特征提取,并从从IBM处理器中提取的某些电网设计的平面图生​​成了训练数据集。使用生成的数据集训练DL模型。提议的基于DL的框架使用一组新的电网规范进行了验证(通过扰动训练阶段中使用的设计获得)。结果表明,预测的电网设计更接近于原始设计,具有最小的预测误差(〜2%)。所提出的基于DL的方法还缩短了设计周期,使标准电网基准测试的速度提高了约6倍。

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