首页> 外文会议>Computer Architecture, 2008. ISCA '08 >Learning and Leveraging the Relationship between Architecture-Level Measurements and Individual User Satisfaction
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Learning and Leveraging the Relationship between Architecture-Level Measurements and Individual User Satisfaction

机译:学习和利用体系结构级别的度量与个人用户满意度之间的关系

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The ultimate goal of computer design is to satisfy the end-user. In particular computing domains, such as interactive applications, there exists a variation in user expectations and user satisfaction relative to the performance of existing computer systems. In this work, we leverage this variation to develop more efficient architectures that are customized to end-users. We first investigate the relationship between microarchitectural parameters and user satisfaction. Specifically, we analyze the relationship between hardware performance counter (HPC) readings and individual satisfaction levels reported by users for representative applications. Our results show that the satisfaction of the user is strongly correlated to the performance of the underlying hardware. More importantly, the results show that user satisfaction is highly user-dependent. To take advantage of these observations, we develop a framework called Individualized Dynamic Voltage and Frequency Scaling (iDVFS). We study a group of users to characterize the relationship between the HPCs and individual user satisfaction levels. Based on this analysis, we use artificial neural networks to model the function from HPCs to user satisfaction for individual users. This model is then used online to predict user satisfaction and set the frequency level accordingly. A second set of user studies demonstrates that iDVFS reduces the CPU power consumption by over 25% in representative applications as compared to the Windows XP DVFS algorithm.
机译:计算机设计的最终目标是满足最终用户的需求。在特定的计算领域(例如交互式应用程序)中,相对于现有计算机系统的性能,用户期望和用户满意度存在差异。在这项工作中,我们利用这种变化来开发针对最终用户定制的更有效的体系结构。我们首先研究微体系结构参数与用户满意度之间的关系。具体来说,我们分析了硬件性能计数器(HPC)读数与用户针对代表性应用报告的个人满意度之间的关系。我们的结果表明,用户的满意度与底层硬件的性能密切相关。更重要的是,结果表明用户满意度高度依赖于用户。为了利用这些观察结果,我们开发了一个称为个性化动态电压和频率缩放(iDVFS)的框架。我们研究了一组用户,以描述HPC与个人用户满意度之间的关系。基于此分析,我们使用人工神经网络来建模从HPC到个人用户的用户满意度的功能。然后将该模型在线用于预测用户满意度并相应地设置频率水平。第二组用户研究表明,与Windows XP DVFS算法相比,iDVFS在代表性应用程序中将CPU功耗降低了25%以上。

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