cnn在边缘的优化和部署:ALOHA体验

P. Meloni, Daniela Loi, Paola Busia, Gianfranco Deriu, A. Pimentel, Dolly Sapra, T. Stefanov, S. Minakova, Francesco Conti, L. Benini, Maura Pintor, B. Biggio, Bernhard Moser, Natalia Shepeleva, N. Fragoulis, Ilias Theodorakopoulos, M. Masin, F. Palumbo
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引用次数: 11

摘要

深度学习(DL)算法已经在广泛的应用领域证明了它们的有效性,包括语音识别、自然语言处理和图像分类。为了促进它们在低延迟、隐私问题和数据带宽至关重要的应用程序中的广泛采用,当前的趋势是在边缘执行推理任务。这需要在低能耗和资源受限的计算节点上部署深度学习算法,这些节点通常是异构和并行的,在没有足够的支持和经验的情况下,编程和管理通常更复杂。在本文中,我们提出了ALOHA,这是一个集成的工具流,它试图促进DL应用程序的设计及其在嵌入式异构体系结构上的移植。所提出的工具流旨在使不同的设计步骤自动化并降低开发成本。从预训练超参数优化和算法配置到部署,ALOHA在整个开发过程中都考虑了硬件相关变量以及安全性、能效和自适应等方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization and deployment of CNNs at the edge: the ALOHA experience
Deep learning (DL) algorithms have already proved their effectiveness on a wide variety of application domains, including speech recognition, natural language processing, and image classification. To foster their pervasive adoption in applications where low latency, privacy issues and data bandwidth are paramount, the current trend is to perform inference tasks at the edge. This requires deployment of DL algorithms on low-energy and resource-constrained computing nodes, often heterogenous and parallel, that are usually more complex to program and to manage without adequate support and experience. In this paper, we present ALOHA, an integrated tool flow that tries to facilitate the design of DL applications and their porting on embedded heterogenous architectures. The proposed tool flow aims at automating different design steps and reducing development costs. ALOHA considers hardware-related variables and security, power efficiency, and adaptivity aspects during the whole development process, from pre-training hyperparameter optimization and algorithm configuration to deployment.
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