CycleTandem:具有硬件加速器的实时系统的节能调度

Sandeep M. D'Souza, R. Rajkumar
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引用次数: 5

摘要

自动驾驶汽车等网络物理系统需要实时处理和分析多个传感器数据流。因此,这些系统需要强大的多核平台和硬件加速器,如gp - gpu。这些加速器通常会消耗大量的能量。因此,需要进行电源管理,以确保在满足任务期限的同时保持系统的能量和热限制。在这些系统中,大多数任务使用CPU和加速器资源的组合来执行。因此,需要同时管理CPU和加速器的功率。为了降低能耗,市面上的加速器(如gp - gpu和dsp)都公开了接口,以调整其工作电压和频率。因此,我们提出了CycleTandem静态频率缩放技术来共同优化CPU和硬件加速器的工作频率。基于现实世界平台的实际考虑,我们考虑了各种能量管理场景,其中加速器或CPU频率可能可调,也可能不可调,并提出了CycleSolo系列算法。此外,我们还研究了分区技术,以降低多核处理器与硬件加速器结合使用时的操作频率。实验评估表明,我们提出的技术可以产生显著的节能效果。我们还介绍了一个基于NVIDIA TX2嵌入式平台的案例研究,以说明我们提出的技术所带来的节能效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CycleTandem: Energy-Saving Scheduling for Real-Time Systems with Hardware Accelerators
Cyber-physical systems such as autonomous vehicles need to process and analyze multiple simultaneous streams of sensor data in real-time. Therefore, these systems require powerful multi-core platforms with hardware accelerators such as GP-GPUs. These accelerators generally consume significant amounts of power. Therefore, power management is required to ensure that task deadlines are met while staying within the energy and thermal constraints of the system. In these systems, most tasks execute using a combination of CPU and accelerator resources. Hence, the power of the CPU and the accelerator needs to be managed in tandem. To reduce energy consumption, commercially-available accelerators such as GP-GPUs and DSPs expose interfaces to scale their operating voltage and frequency. Hence, we propose the CycleTandem static frequency-scaling technique to co-optimize the operating frequencies of both the CPU and the hardware accelerator. Based on practical considerations of real-world platforms, we consider various energy-management scenarios where the accelerator or CPU frequencies may or may not be adjustable, and propose the CycleSolo family of algorithms for such contexts. Furthermore, we also study partitioning techniques to reduce the operating frequency when multi-core processors are used in conjunction with hardware accelerators. Experimental evaluations indicate that our proposed techniques can yield significant energy savings. We also present a case-study on the NVIDIA TX2 embedded platform to illustrate the energy savings delivered by our proposed techniques.
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