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MemGANs: Memory Management for Energy-Efficient Acceleration of Complex Computations in Hardware Architectures for Generative Adversarial Networks

机译:MemGANs:用于生成对抗网络的硬件体系结构中节能高效加速复杂计算的内存管理

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Generative Adversarial Networks (GANs) have gained importance because of their tremendous unsupervised learning capability and enormous applications in data generation, for example, text to image synthesis, synthetic medical data generation, video generation, and artwork generation. Hardware acceleration for GANs become challenging due to the intrinsic complex computational phases, which require efficient data management during the training and inference. In this work, we propose a distributed on-chip memory architecture, which aims at efficiently handling the data for complex computations involved in GANs, such as strided convolution or transposed convolution. We also propose a controller that improves the computational efficiency by pre-arranging the data from either the off-chip memory or the computational units before storing it in the on-chip memory. Our architectural enhancement supports to achieve 3.65x performance improvement in state-of-the-art, and reduces the number of read accesses and write accesses by 85% and 75%, respectively.
机译:生成对抗网络(GANs)由于其强大的无监督学习能力以及在数据生成中的大量应用而变得越来越重要,例如,文本到图像合成,合成医学数据生成,视频生成和艺术品生成。由于固有的复杂计算阶段,GAN的硬件加速变得具有挑战性,这需要在训练和推理过程中进行有效的数据管理。在这项工作中,我们提出了一种分布式片上存储器架构,旨在有效处理GAN中涉及的复杂计算(如大步卷积或转置卷积)的数据。我们还提出了一种控制器,该控制器通过将来自片外存储器或计算单元的数据预先存储在片上存储器中,从而提高计算效率。我们的体系结构增强功能支持在最新技术中实现3.65倍的性能提升,并将读访问和写访问的数量分别减少了85%和75%。

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