Towards Efficient Microarchitectural Design for Accelerating Unsupervised GAN-Based Deep Learning

Mingcong Song, Jiaqi Zhang, Huixiang Chen, Tao Li
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引用次数: 51

Abstract

Recently, deep learning based approaches have emerged as indispensable tools to perform big data analytics. Normally, deep learning models are first trained with a supervised method and then deployed to execute various tasks. The supervised method involves extensive human efforts to collect and label the large-scale dataset, which becomes impractical in the big data era where raw data is largely un-labeled and uncategorized. Fortunately, the adversarial learning, represented by Generative Adversarial Network (GAN), enjoys a great success on the unsupervised learning. However, the distinct features of GAN, such as massive computing phases and non-traditional convolutions challenge the existing deep learning accelerator designs. In this work, we propose the first holistic solution for accelerating the unsupervised GAN-based Deep Learning. We overcome the above challenges with an algorithm and architecture co-design approach. First, we optimize the training procedure to reduce on-chip memory consumption. We then propose a novel time-multiplexed design to efficiently map the abundant computing phases to our microarchitecture. Moreover, we design high-efficiency dataflows to achieve high data reuse and skip the zero-operand multiplications in the non-traditional convolutions. Compared with traditional deep learning accelerators, our proposed design achieves the best performance (average 4.3X) with the same computing resource. Our design also has an average of 8.3X speedup over CPU and 6.2X energy-efficiency over NVIDIA GPU.
加速无监督gan深度学习的高效微架构设计
最近,基于深度学习的方法已经成为执行大数据分析不可或缺的工具。通常,深度学习模型首先使用监督方法进行训练,然后部署执行各种任务。监督方法需要大量的人力来收集和标记大规模数据集,这在大数据时代变得不切实际,因为原始数据在很大程度上是未标记和未分类的。幸运的是,以生成式对抗网络(GAN)为代表的对抗学习在无监督学习中取得了巨大的成功。在这项工作中,我们提出了第一个加速无监督gan深度学习的整体解决方案。我们通过算法和架构协同设计方法克服了上述挑战。首先,我们优化训练程序以减少片上存储器的消耗。然后,我们提出了一种新的时间复用设计,以有效地将丰富的计算阶段映射到我们的微架构中。此外,我们设计了高效的数据流,以实现高数据重用,并跳过了非传统卷积中的零操作数乘法。我们的设计还具有比CPU平均8.3倍的加速和比NVIDIA GPU平均6.2倍的能效。
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