基于灵活调用的嵌入式系统DVFS调度深度强化学习

IF 3.6 2区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Computers Pub Date : 2024-09-23 DOI:10.1109/TC.2024.3465933
Jingjin Li;Weixiong Jiang;Yuting He;Qingyu Yang;Anqi Gao;Yajun Ha;Ender Özcan;Ruibin Bai;Tianxiang Cui;Heng Yu
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引用次数: 0

摘要

基于深度强化学习(DRL)的动态电压频率缩放(DVFS)在嵌入式系统节能方面显示出巨大的前景。虽然许多工作致力于验证其有效性或提高其性能,但很少讨论嵌入式计算部署DRL代理的可行性。最先进的方法侧重于智能体推理网络的小型化,如修剪和量化,以最大限度地减少它们的能量和资源消耗。然而,这种基于空间的范式仍然被证明不适合资源紧张的系统。在本文中,我们从时间角度讨论了可行性,其中提出了FiDRL,一个灵活的基于调用的DRL模型,考虑到DRL代理在调用期间产生不可忽略的能量开销,它可以明智地调用自身以最小化整个系统的能量消耗。我们的方法有三个方面:(1)FiDRL,它通过将代理的调用间隔合并到动作空间中来扩展DRL,以实现调用灵活性;(2)基于fidrl的任务间和任务内调度的DVFS方法,使总体执行能耗最小化;(3)基于fidrl的DVFS平台设计和专门用于训练嵌入式系统DRL代理的片上/片外混合算法。实验结果表明,与最先进的方法相比,FiDRL实现了55.1%的代理调用成本降低,而总能量降低了23.3%。
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FiDRL: Flexible Invocation-Based Deep Reinforcement Learning for DVFS Scheduling in Embedded Systems
Deep Reinforcement Learning (DRL)-based Dynamic Voltage Frequency Scaling (DVFS) has shown great promise for energy conservation in embedded systems. While many works were devoted to validating its efficacy or improving its performance, few discuss the feasibility of the DRL agent deployment for embedded computing. State-of-the-art approaches focus on the miniaturization of agents’ inferential networks, such as pruning and quantization, to minimize their energy and resource consumption. However, this spatial-based paradigm still proves inadequate for resource-stringent systems. In this paper, we address the feasibility from a temporal perspective, where FiDRL, a flexible invocation-based DRL model is proposed to judiciously invoke itself to minimize the overall system energy consumption, given that the DRL agent incurs non-negligible energy overhead during invocations. Our approach is three-fold: (1) FiDRL that extends DRL by incorporating the agent's invocation interval into the action space to achieve invocation flexibility; (2) a FiDRL-based DVFS approach for both inter- and intra-task scheduling that minimizes the overall execution energy consumption; and (3) a FiDRL-based DVFS platform design and an on/off-chip hybrid algorithm specialized for training the DRL agent for embedded systems. Experiment results show that FiDRL achieves 55.1% agent invocation cost reduction, under 23.3% overall energy reduction, compared to state-of-the-art approaches.
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来源期刊
IEEE Transactions on Computers
IEEE Transactions on Computers 工程技术-工程:电子与电气
CiteScore
6.60
自引率
5.40%
发文量
199
审稿时长
6.0 months
期刊介绍: The IEEE Transactions on Computers is a monthly publication with a wide distribution to researchers, developers, technical managers, and educators in the computer field. It publishes papers on research in areas of current interest to the readers. These areas include, but are not limited to, the following: a) computer organizations and architectures; b) operating systems, software systems, and communication protocols; c) real-time systems and embedded systems; d) digital devices, computer components, and interconnection networks; e) specification, design, prototyping, and testing methods and tools; f) performance, fault tolerance, reliability, security, and testability; g) case studies and experimental and theoretical evaluations; and h) new and important applications and trends.
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