Noise Aware Scheduling in Data Centers

Hameedah Sultan, Arpit Katiyar, S. Sarangi
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引用次数: 3

Abstract

As the demand for large scale computing is rapidly increasing to serve billions of users across the world, more powerful and densely packed server configurations are being used. Often in developing countries, and in small and medium enterprises, it is hard to place such servers in sound-proof server rooms. Hence, servers are typically placed in close proximity to employees. The noise from the cooling fans in servers adversely affects employees' health, and reduces their productivity. In this paper, we provide a framework for computer architects to measure the acoustic profile in a data center along with the temperature profile, and estimate the sound power levels at points of interest. Additionally, we studied the noise levels obtained upon using algorithms targeted at homogenizing the temperature profile. We found that these algorithms result in high noise levels, sometimes above the permissible levels. So, we propose two heuristics to redistribute workloads in a data center such that noise can be reduced at certain target locations. We obtain a noise reduction of 2-13 dB when compared with uniform workload distribution, and upto 16 dB as compared to temperature aware workload placement, with a reduction of at least 5-6 dB in 75% of the cases. The performance overhead is limited to 1%.
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数据中心噪声感知调度
由于对大规模计算的需求正在迅速增长,以服务于全球数十亿用户,因此正在使用更强大、更密集的服务器配置。通常在发展中国家和中小型企业中,很难将这种服务器放置在隔音的服务器机房中。因此,服务器通常被放置在员工附近。服务器冷却风扇的噪音会影响员工的健康,降低他们的工作效率。在本文中,我们为计算机架构师提供了一个框架来测量数据中心的声学分布以及温度分布,并估计感兴趣点的声功率级。此外,我们研究了使用均匀化温度分布的算法所获得的噪声水平。我们发现这些算法导致高噪音水平,有时超过允许的水平。因此,我们提出了两种启发式方法来重新分配数据中心中的工作负载,以便在某些目标位置减少噪声。与均匀工作负载分布相比,我们获得了2-13 dB的降噪,与温度感知工作负载放置相比,我们获得了高达16 dB的降噪,在75%的情况下至少降低了5-6 dB。性能开销限制在1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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