利用并行架构减少边缘图像识别的推理延迟

Ramyad Hadidi, Jiashen Cao, M. Ryoo, Hyesoon Kim
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引用次数: 1

摘要

满足现代深度学习架构的高计算需求是实现低推理延迟的挑战。当前减少延迟的方法只增加了层内的并行性。这是因为体系结构通常捕获单链依赖模式,这阻碍了具有更高并发性的有效分布(即,在设备之间同时执行一个推理)。这种单链依赖关系是如此普遍,甚至隐含地影响了最近的神经结构搜索(NAS)研究。在这篇有远见的论文中,我们提请注意一个全新的NAS空间,它放松了单链依赖,提供更高的并发性和分发机会。为了定量地比较这些体系结构,我们提出了一个包含通信、并发性和负载平衡等关键指标的分数。此外,我们提出了一个新的生成器和转换块,与当前最先进的方法相比,它始终提供优越的架构。最后,我们的初步结果表明,这些新的架构减少了推理延迟,值得更多的关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing Inference Latency with Concurrent Architectures for Image Recognition at Edge
Satisfying the high computation demand of modern deep learning architectures is challenging for achieving low inference latency. The current approaches in decreasing latency only increase parallelism within a layer. This is because architectures typically capture a single-chain dependency pattern that prevents efficient distribution with a higher concurrency (i.e., simultaneous execution of one inference among devices). Such single-chain dependencies are so widespread that even implicitly biases recent neural architecture search (NAS) studies. In this visionary paper, we draw attention to an entirely new space of NAS that relaxes the single-chain dependency to provide higher concurrency and distribution opportunities. To quantitatively compare these architectures, we propose a score that encapsulates crucial metrics such as communication, concurrency, and load balancing. Additionally, we propose a new generator and transformation block that consistently deliver superior architectures compared to current state-of-the-art methods. Finally, our preliminary results show that these new architectures reduce the inference latency and deserve more attention.
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