Three-layer optimizations for fast GMM computations on GPU-like parallel processors

Kshitij Gupta, John Douglas Owens
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引用次数: 21

Abstract

In this paper we focus on optimizing compute and memory-bandwidth-intensive GMM computations for low-end, small-form-factor devices running on GPU-like parallel processors. With special emphasis on tackling the memory bandwidth issue that is exacerbated by a lack of CPU-like caches providing temporal locality on GPU-like parallel processors, we propose modifications to three well-known GMM computation reduction techniques. We find considerable locality at the frame, CI-GMM, and mixture layers of GMM compute, and show how it can be extracted by following a chunk-based technique of processing multiple frames for every load of a GMM. On a 1,000- word, command-and-control, continuous-speech task, we are able to achieve compute and memory bandwidth savings of over 60% and 90% respectively, with some degradation in accuracy, when compared to existing GPU-based fast GMM computation techniques.
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在类似gpu的并行处理器上进行快速GMM计算的三层优化
在本文中,我们专注于为运行在类似gpu的并行处理器上的低端、小尺寸设备优化计算和内存带宽密集型GMM计算。由于缺乏类cpu的缓存,在类gpu的并行处理器上提供时间局域性,我们特别强调解决内存带宽问题,我们提出了对三种著名的GMM计算减少技术的修改。我们在GMM计算的帧、CI-GMM和混合层上发现了相当大的局部性,并展示了如何通过基于块的技术为每次GMM负载处理多个帧来提取它。与现有的基于gpu的快速GMM计算技术相比,在1000字、命令和控制、连续语音任务上,我们能够分别节省超过60%和90%的计算和内存带宽,但准确性有所下降。
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