Learning transfer-based adaptive energy minimization in embedded systems

IEEE Trans. on CAD of Integrated Circuits and Systems(2016)

引用 82|浏览64
暂无评分
摘要
Embedded systems execute applications with varying performance requirements. These applications exercise the hardware differently depending on the computation task, generating varying workloads with time. Energy minimization with such workload and performance variations within (intra) and across (inter) applications is particularly challenging. To address this challenge, we propose an online approach, capable of minimizing energy through adaptation to these variations. At the core of this approach is a reinforcement learning algorithm that suitably selects the appropriate voltage/frequency scaling (VFS) based on workload predictions to meet the applications’ performance requirements. The adaptation is then facilitated and expedited through learning transfer, which uses the interaction between the application, runtime, and hardware layers to adjust the VFS. The proposed approach is implemented as a power governor in Linux and extensively validated on an ARM Cortex-A8 running different benchmark applications. We show that with intra- and inter-application variations, our proposed approach can effectively minimize energy consumption by up to 33% compared to the existing approaches. Scaling the approach to multicore systems, we also demonstrate that it can minimize energy by up to 18% with $2{times }$ reduction in the learning time when compared with an existing approach.
更多
查看译文
关键词
Dynamic voltage/frequency scaling (DVFS),Energy-efficiency,dynamic voltage/frequency scaling,energy efficiency,reinforcement learning,reinforcement learning (RL)
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要