基于多域电压频率标度的GPGPU功率建模

J. Guerreiro, A. Ilic, N. Roma, P. Tomás
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引用次数: 37

摘要

图形处理单元(gpu)组件上的动态电压和频率缩放(DVFS)是最有前途的电源管理策略之一,因为它具有显著的功耗和节能潜力。然而,对于一组不同电压和频率水平下的GPU功耗估算,目前仍然缺乏简单可靠的模型。在此基础上,提出了一种同时考虑内核和存储器频率缩放的GPU功耗估计模型。该模型结合了来自GPU架构和执行GPU应用程序的信息,并考虑了GPU电压在核心和内存频率缩放时的非线性变化。模型参数是使用83个微基准的集合来估计的,这些微基准是精心设计的,以强调主要GPU组件。基于在单一频率配置下GPU应用程序执行期间收集的硬件性能事件,所提出的模型允许在广泛的频率配置下预测应用程序的功耗,以及分解GPU管道不同部分对总体功耗的贡献。在来自最新NVIDIA微架构(Pascal, Maxwell和Kepler)的3个GPU设备上进行验证,通过使用26个标准基准测试,所提出的模型能够为目标GPU (Titan Xp, GTX Titan X和Tesla K40c)获得准确的结果(7%,6%和12%的平均绝对误差)。
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GPGPU Power Modeling for Multi-domain Voltage-Frequency Scaling
Dynamic Voltage and Frequency Scaling (DVFS) on Graphics Processing Units (GPUs) components is one of the most promising power management strategies, due to its potential for significant power and energy savings. However, there is still a lack of simple and reliable models for the estimation of the GPU power consumption under a set of different voltage and frequency levels. Accordingly, a novel GPU power estimation model with both core and memory frequency scaling is herein proposed. This model combines information from both the GPU architecture and the executing GPU application and also takes into account the non-linear changes in the GPU voltage when the core and memory frequencies are scaled. The model parameters are estimated using a collection of 83 microbenchmarks carefully crafted to stress the main GPU components. Based on the hardware performance events gathered during the execution of GPU applications on a single frequency configuration, the proposed model allows to predict the power consumption of the application over a wide range of frequency configurations, as well as to decompose the contribution of different parts of the GPU pipeline to the overall power consumption. Validated on 3 GPU devices from the most recent NVIDIA microarchitectures (Pascal, Maxwell and Kepler), by using a collection of 26 standard benchmarks, the proposed model is able to achieve accurate results (7%, 6% and 12% mean absolute error) for the target GPUs (Titan Xp, GTX Titan X and Tesla K40c).
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