首页> 外文会议>IEEE/ACM International Conference On Computer Aided Design >Full-Chip Thermal Map Estimation for Commercial Multi-Core CPUs with Generative Adversarial Learning**This work is supported in part by NSF grants under No. CCF-1816361, in part by NSF grant under No. CCF-2007135 and No. OISE-1854276.
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Full-Chip Thermal Map Estimation for Commercial Multi-Core CPUs with Generative Adversarial Learning**This work is supported in part by NSF grants under No. CCF-1816361, in part by NSF grant under No. CCF-2007135 and No. OISE-1854276.

机译:具有生成对抗性学习功能的商用多核CPU的全芯片热图估计**这项工作部分由CSF-1816361的NSF资助,部分由CCF-2007135和OISE-的NSF资助支持。 1854276。

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In this paper, we propose a novel transient full-chip thermal map estimation method for multi-core commercial CPU based on the data-driven generative adversarial learning method. We treat the thermal modeling problem as an image-generation problem using the generative neural networks. In stead of using traditional functional unit powers as input, the new models are directly based on the measurable real-time high level chip utilizations and thermal sensor information of commercial chips without any assumption of additional physical sensors requirement. The resulting thermal map estimation method, called ThermGAN can provide tool-accurate full-chip transient thermal maps from the given performance monitor traces of commercial off-the-shelf multi-core processors. In our work, both generator and discriminator are composed of simple convolutional layers with Wasserstein distance as loss function. ThermGAN can provide the transient and real-time thermal map without using any historical data for training and inferences, which is contrast with a recent RNN-based thermal map estimation method in which historical data is needed. Experimental results show the trained model is very accurate in thermal estimation with an average RMSE of 0.47°C, namely, 0.63% of the full-scale error. Our data further show that the speed of the model is faster than 7.5ms per inference, which is two orders of magnitude faster than the traditional finite element based thermal analysis. Furthermore, the new method is ~4x more accurate than recently proposed LSTM-based thermal map estimation method and has faster inference speed. It also achieves ~2x accuracy with much less computational cost than a state-of-the-art pre-silicon based estimation method.
机译:在本文中,我们提出了一种基于数据驱动的生成对抗性学习方法的多核商用CPU瞬态全芯片热图估计新方法。我们将热建模问题视为使用生成神经网络的图像生成问题。代替使用传统的功能单元电源作为输入,新模型直接基于可测量的实时高级芯片利用率和商业芯片的热传感器信息,而无需任何额外的物理传感器要求。最终的热图估计方法称为ThermGAN,它可以从商用的现成多核处理器的给定性能监控器轨迹中提供工具精确的全芯片瞬态热图。在我们的工作中,生成器和鉴别器均由简单的卷积层组成,其中Wasserstein距离为损失函数。 ThermGAN可以提供瞬态和实时热图,而无需使用任何历史数据进行训练和推论,这与最近的基于RNN的热图估计方法(需要历史数据)形成对比。实验结果表明,经过训练的模型在热估计方面非常准确,平均RMSE为0.47°C,即满量程误差的0.63%。我们的数据进一步表明,该模型的速度高于每次推断7.5ms,这比基于传统有限元的热分析要快两个数量级。此外,新方法比最近提出的基于LSTM的热图估计方法精确约4倍,并且推理速度更快。与最新的基于硅的估算方法相比,它还可以以大约2倍的精度实现计算所需的成本。

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