异步混合深度学习(AHDL):基于深度学习的DVFS移动mpsoc资源映射

Somdip Dey, Suman Saha, A. Singh, K. Mcdonald-Maier
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引用次数: 0

摘要

为了在嵌入式/边缘设备上获得性能、能源效率、降低峰值温度等,准确地将资源映射到任务是一个巨大的挑战。机器学习已被证明在基于启发式资源映射方法的学习中是有效的,但其成功与否取决于特征提取的质量。此外,这些方法中的特征提取不仅需要专家领域知识和人力,同时还需要针对这些过程对应用程序(任务)进行分析。因此,这种资源映射方法的有效性取决于专业知识、技能、分析时间和系统的体系结构。在本文中,我们提出了一种新的方法,异步混合深度学习(AHDL),它为使用深度学习方法将资源映射到应用程序(任务)设置了一个新的范例。在我们的方法中,我们利用任务分析方法来实现精确的映射,以便从系统中获得更大的回报,但同时能够将资源分配给未被分析的应用程序(任务),而不需要由领域专家手动提取特征。与最先进的方法相比,我们提出的方法能够获得具有竞争力的结果,而无需手动特征提取等常见的相关挑战。
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Asynchronous Hybrid Deep Learning (AHDL): A Deep Learning Based Resource Mapping in DVFS Enabled Mobile MPSoCs
Mapping resources to tasks accurately in order to gain performance, energy efficiency, reduction in peak temperature, etc. on an embedded/Edge device is a big challenge. Machine learning has proven to be effective in learning heuristics based resource mapping approaches, but its success is bound by the quality of feature extraction. Additionally, feature extraction in such approaches not just requires expert domain knowledge and human effort, but at the same time requires the application (tasks) to be profiled for such processes. Therefore, the efficacy of such resource mapping methodologies depends on expertise, skills, profiling time and architecture of the system. In this paper, we propose a novel methodology, Asynchronous Hybrid Deep Learning (AHDL), which sets a new paradigm of using Deep Learning approaches to map resources to application (tasks). In our approach, we leverage task profiling methodologies to achieve accurate mapping in order to achieve greater reward from the system, but at the same time is able to allocate resources to unprofiled application (tasks) at the same time without the need of manual feature extraction by domain experts. Our proposed methodology is able to achieve competitive results in comparison with the state-of- the-art without the usual associated challenges such as manual feature extraction.
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