基于动态热模型的数据中心热感知任务布置

Zhigang Jiang, Wei Huang, I. You, Zhuzhong Qian, Sanglu Lu
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引用次数: 5

摘要

冷却系统是数据中心的关键部件之一,其能耗占数据中心总能耗的近一半。为了保证数据中心的安全、高效运行,冷却系统需要保证所有服务器都在合适的温度下运行。因此,随着热点的出现,冷却效率会降低,因为整个冷却系统会相应地在强冷却模式下工作,从而导致过冷。解决这个问题的关键挑战之一是建立一个有效和高效的在线任务调度来平衡数据中心服务器的入口温度。本文研究了数据中心的热模型,并将任务布置问题转化为一个优化问题,目的是使所有服务器的最大入口温度最小。为了获得更高的精度,我们提出了一种基于温度传感器真实数据的动态热模型。我们用近似的方法解决了公式化的问题,并在CPU预算的思想下设计了一种第一拟合递减任务布置算法。最后,在实际测试台上进行了实验,验证了算法的有效性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thermal-Aware Task Placement with Dynamic Thermal Model in an Established Datacenter
Cooling system is one of the key components in data centers and consumes nearly half of the total energy. For the safety and efficiency of a data enter, cooling system should guarantee all the servers running in a suitable temperature. Thus, the cooling efficiency becomes lower as the occurrence of hot spots, because the whole cooling system will accordingly work in a strong cooling mode, which leads to overcooling. One of the key challenges toward this problem is to build an effective and efficient online task scheduling to balance the inlet temperature of the servers in a data enter. In this paper, we investigate the thermal model in a data enter, and we formulate the task placement problem to an optimization problem with the purpose to minimize the maximum inlet temperature of all servers. To get higher accuracy, we proposed a dynamic thermal model updated with the real data from temperature sensors. We solve the formulated problem in an approximate way and design a first-fit decreasing task placement algorithm with the idea of CPU budget. Finally, the effectiveness and accuracy of our algorithm are confirmed by experiments on a real test bed.
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